2026 Research Projects
Projects are posted below; new projects will continue to be posted. To learn more about the type of research conducted by undergraduates, view the archived symposium booklets and search the past SURF projects.
This is a list of research projects that may have opportunities for undergraduate students. Please note that it is not a complete list of every SURF project. Undergraduates will discover other projects when talking directly to Purdue faculty.
You can browse all the projects on the list or view only projects in the following categories:
All Research Projects (257)
Characterization of Liquid Sprays in a Small-Scale Annular Gas Turbine
- Mechanical Engineering
- Aeronautical and Astronautical Engineering
Experimental Solid Particle Erosion Testing
- Mechanical Engineering
- Aeronautical and Astronautical Engineering
A Foundation Model Approach to Crop Monitoring and Agroecosystem Analytics
• Develop and evaluate a multimodal self-supervised representation learning pipeline for agricultural Earth observation.
• Integrate spectral (Sentinel-2), radar (Sentinel-1), and climate variables at the pixel level.
• Explore temporal prediction using next-embedding objectives and phenology-aware timing.
• Assess model performance under real-world agricultural conditions: sparse labels, irregular sampling, and sensor dropout.
• Demonstrate use for downstream agricultural tasks such as stress detection or yield-related proxies.
• Document technical work, results, and research outcomes in a final written report.
The selected student will work hands-on with multi-sensor satellite datasets to implement self-supervised learning methods and evaluate representation quality for agricultural applications. The student will experiment with spectral and radar data, integrate environmental variables, and assess generalization across temporal, spatial, and crop conditions. Additional activities include embedding visualization and interpretation, controlled experiments on sensor dropout and sparse temporal sampling, and communicating results through a poster /oral presentation and a technical report. The project is well-suited for students interested in machine learning, remote sensing, computer vision, geospatial analytics, or agricultural engineering.
- Computer Science and Artificial Intelligence, Computer Engineering
AI and Human Factors in Healthcare
develop semi-autonomous systems. These user-aware, adaptive
systems that can enhance human-human/ human-robot training and
performance
- No Major Restriction
More information: https://engineering.purdue.edu/IE/summer_intern./8
AI-Driven Multi-Scale Modeling for Advanced Electronic Packages
Student Role & Responsibilities: Working alongside a graduate student mentor, the undergraduate researcher will:
1. Generate Simulation Data: Use MATLAB to run finite element simulations of chip structures to create a training dataset.
2. Develop AI Models: Assist in training and testing neural networks to interpret stress fields as images.
3. Analyze Results: Compare the AI predictions against ground-truth physics simulations to determine if AI can accurately predict mechanical failure in microelectronics.
Required Skills: Basic Python and MATLAB experience; interest in Finite Element Analysis and Machine Learning.
- No Major Restriction
AI-based detection of prognostic markers in malignant and benign laryngeal disease
Ideal candidates meet the following expectations:
* Basic programming skills (Python, pytorch, numpy)
* Interest in clinical applications of Artificial Intelligence
* Ability to work independently and in a team setting and communicate effectively
This SURF project will focus on the identification of predictive and prognostic biomarkers in patients with benign and malignant head and neck disease from a large clinical dataset encompassing tabular, imaging, audio, and video data. The SURF student(s) will work closely with a graduate mentor during the fellowship and will work on an independent/standalone sub-project.
General information about the lab:
The Translational Medical Image Computing (TMIC) Lab led by Dr. Kolbinger uses computational approaches to extract actionable knowledge from clinical datasets in the fields of surgery and interventional medicine. Our interdisciplinary research focuses on developing AI-based tools for surgery and evaluating these tools in early-phase clinical trials, thereby translating computational advancements into tangible patient benefits.
Ultimately, our goal is to translate technological innovations, such as Artificial Intelligence, into clinically valuable tools for medical decision support. By doing so, our research strives to personalize treatment approaches and make surgeries and medical care safer and more effective.
The lab's research addresses two key areas:
(1) Prediction of disease trajectories and outcomes: By predicting disease courses and outcomes from routinely available data acquired at earlier timepoints, we develop prediction models that help allocate the right treatment to the right patient at the right time to minimize complications and maximize patients' quality of life.
(2) Intraoperative decision support for increased safety and accuracy of minimally invasive surgeries: While computational image analysis is already clinically approved in fields like radiology or endoscopy, its application to surgical video has so far resulted in negligible patient benefit. Our team develops applications related to surgical safety and accuracy, for example visualization of vulnerable structures like blood vessels and nerves during surgeries and evaluates these systems in clinical routine. Our overarching goal is to integrate Artificial Intelligence-based image analysis into minimally invasive surgical systems and thereby set new standards for patient care.
The TMIC Lab currently comprises three graduate and five undergraduate researchers. Methodologies that all team members will interact with comprise advanced Artificial Intelligence methods for imaging and tabular data analysis, clinical imaging methods (i.e., MRI, CT, video data), advanced statistics, data visualization, conceptualization of and contribution to user studies and clinical research, and qualitative studies.
- No Major Restriction
More information: https://fionakolbinger.github.io/
AI-driven smart monitoring and data analytics
- Industrial Engineering
- Mechanical Engineering
- Computer Engineering
- Computer Science
More information: https://purduelamm.github.io/home/
AI-enabled Personalized Metabolic Digital Twin
The student will participate in the AI model development, verification and validation of the developed model using the clinical datasets, and document the results into a journal publication.
- No Major Restriction
AI-guided Drug Development
- No Major Restriction
Accelerating RTL-to-GDSII Design Flows with Optimization and Active Learning on nanoHUB
This project focuses on developing and evaluating an optimization loop around open EDA tools available on nanoHUB to accelerate RTL-to-GDSII workflows. The student will work with an end-to-end design flow deployed on nanoHUB and investigate how data-driven optimization and active learning techniques can reduce the number of required design iterations while maintaining or improving design quality.
The student will help construct an automated pipeline that runs EDA tools, collects design metrics (such as timing, power, and area), and uses those results to guide subsequent design choices. By leveraging nanoHUB’s computational infrastructure, data management capabilities, and openly available EDA tools, the project will demonstrate how iterative hardware design can be made faster, more systematic, and more reproducible.
- Electrical Engineering
- Computer Engineering
- Computer Science
- Engineering (First Year)
Additive Manufacturing of Energetic Materials
- No Major Restriction
Additive Manufacturing to Fabricate Pharmaceutical Tablets
- No Major Restriction
More information: https://www.tandfonline.com/doi/full/10.3109/03639045.2015.1120743#d1e149
Adhesion Problems in Plant Cell Biomechanics
Mechanical Engineering skills in mechanics of materials and finite element analysis are essential for the analysis of adhesion problems.
A student will use ImageJ for image processing and ABAQUS for model development and analysis.
Skills from this project will translate well to the mechanics of engineered cellular solids as common in packaging applications.
- Mechanical Engineering
More information: NA
Agentic AI in computational mechanics
- No Major Restriction
More information: https://engineering.purdue.edu/gomez/
Air Quality modeling: Incorporating stable isotopes into the US-EPA CMAQ air quality model
- Computer Science
- Computer and Information Technology
- Mathematics - Computer Science
Application and impact of augmented reality on student learning and public engagement in engineering
- No Major Restriction
Artificial Intelligence for Musicians
(1) Music Score Follower and Error Detector
This app listens to live musical performance, tracks the performer’s location in the score in real time, and identifies performance errors such as incorrect notes, durations that are too long or too short, and other deviations. The development requires technologies including audio signal processing, user interface design, user experience evaluation, and mobile app engineering.
(2) Posture Recommender
This app analyzes video of musicians and provides personalized recommendations to improve playing posture. The development incorporates technologies such as computer vision, user interface design, user experience evaluation, and mobile app engineering.
- Computer Science
- Computer Engineering
- Computer and Information Technology
- Computer Engineering Technology
- Data Science
- Electrical Engineering
- Electrical Engineering Technology
More information: https://ai4musicians.org/
Assessing Radiation-Drug Interactions
- No Major Restriction
More information: https://hhs.purdue.edu/scarpellilab/
Atomistic modeling of radiation damage in semiconductors
This project uses molecular dynamics simulations to study how high-energy nuclei interact with semiconductor and metallic materials, with a focus on the formation of permanent radiation damage. The work will examine how interfaces, defects, and other microstructural features influence damage creation and evolution, helping connect atomic-scale mechanisms to material behavior.
The student will play an active role in designing and running radiation damage simulations, defining simulation inputs, selecting material systems, and analyzing collision cascades and defect formation. Through this work, the student will develop practical skills in molecular dynamics, scientific programming, and data analysis while gaining experience working with modern computational research tools.
By the end of the project, the student will have hands-on experience in computational materials research and radiation damage modeling, contributing to efforts to design materials and electronic components that are more resilient to radiation.
- Computer Science
- Aeronautical and Astronautical Engineering
- Mechanical Engineering
- Materials Engineering
More information: https://www.strachanlab.org/
Augmenting Manual Inspection Using Wearable VR/AR-Based Automated Visual Inspection
Our objective is to investigate the feasibility of applying AVI algorithms to analyze video feeds captured by VR/AR glasses for defect detection. Locations of possible defects can then be communicated back to the human inspector in real time, thereby enhancing and augmenting existing manual inspection pipelines.
Detecting defects from human-captured video presents greater analysis challenges than from machine-captured imagery. Machine-acquired images are typically consistent in viewpoint, lighting, and positioning, whereas video captured by human inspectors can vary substantially due to natural movement and perspective changes. Furthermore, AVI processing must operate at sufficiently high speed to avoid slowing down the inspector’s workflow. Despite these challenges, successfully addressing these issues could significantly strengthen AVI capabilities while meaningfully enhancing human performance in manual inspection.
Activities will include recording data for positive and negative control samples during expert manual visual inspection under realistic workplace conditions, training and testing of agile machine learning architectures for defect identification, and development of augmented reality visualization architectures for supplementing manual human inspection.
- No Major Restriction
More information: https://younginstitute.research.purdue.edu/
Automated Characterization Platform for Beyond-Silicon "CMOS+X" AI Hardware Prototypes
The rapid growth of artificial intelligence (AI), especially with large foundation models, is driving urgent demand for new, energy-efficient AI hardware built not only with advanced silicon CMOS, but also with next-generation transistor and memory device technologies in three-dimensional (3D) integrated "CMOS+X" systems, through monolithic 3D integration and advanced packaging. A key bottleneck in this exciting "lab-to-fab" transition to real-world impact is fast and robust characterization and testing of these CMOS+X dies, packaged chips, and multi-chip systems.
2. What Will You Do?
In Summer 2026, the SURF researcher will gain hands-on laboratory experience at Purdue’s Birck Nanotechnology Center, working with a National Instruments (NI) PXIe characterization system that integrates multiple modules (embedded FPGA, digital pattern instrument, and 10‑pA precision SMU). The student will help develop a comprehensive testing+analysis software framework to enable robust and high-performance testing and validation of AI hardware prototypes (silicon CMOS + emerging devices, with 3D integration).
3. Project Phases
Phase 1 (engineering foundation): Build an automated testing framework
- Develop a robust, reusable automation framework for chip characterization using the NI-PXIe characterization system.
- Contribute to PCB design/testing related tasks for the silicon and CMOS+X hardware prototypes from the team.
Phase 2 (exploratory): Build an LLM-powered AI copilot as the “Digital Twin”
- Explore APIs to build LLM-based agent/copilot with the automated testing workflow wrapped in its "sandbox".
- Explore this "digital twin" approach to accelerate testing, data analytics, and debugging.
- No Major Restriction
More information: https://engineering.purdue.edu/NanoX/
Automated Measurement System Developmnent for Chips and Wafers
- Electrical Engineering
- Computer Engineering
More information: https://engineering.purdue.edu/RISE-Lab
Automated Radio Evaluation Suite: Modular Testing Architecture
This work advances ARES from a function-oriented architecture where measurement logic was tightly coupled to specific instrument sets to an object-oriented design with abstract interfaces for instrument control. As VISA/SCPI commands are model-specific, using a modular architecture will allow for drop-in support of new instrument command sets without invasive code changes by encapsulating instruments in modular driver controllers. The new architecture potentially enables simulated instruments, bypassing VISA drivers when virtually testing and debugging new features. Collectively, these enhancements expand device compatibility and accelerate data collection and visualization.
- Electrical Engineering
- Computer Engineering
More information: https://aresapp.readthedocs.io/latest/home.html
Automation Methods for Gamma Ray Spectroscopy and Data Analysis
- No Major Restriction
- Physics
- Computer Science
- Nuclear Engineering
- Mathematics - Computer Science
More information: https://www.physics.purdue.edu/jung/
Battery safety for electrified aircraft
- No Major Restriction
More information: qiaoresearchgroup.com
Behavior and analysis of structural connections under earthquake
The student will work closely with graduate students, laboratory technicians, and faculty to develop experimental setups, fabricate test specimens, and conduct laboratory testing on small- and large-scale structural components. In parallel, the student will gain exposure to numerical modeling by assisting with finite element simulations to better understand load transfer and failure mechanisms.
The project emphasizes both technical and professional development. Students will present their work in a poster format and may have the opportunity to contribute as a co-author on a research publication, providing valuable preparation for graduate studies or industry careers.
- No Major Restriction
More information: https://www.akanshusharma.com/
Behavior of structural connections under earthquake
The student will work closely with graduate students, laboratory technicians, and faculty to develop experimental setups, fabricate test specimens, and conduct laboratory testing on small- and large-scale structural components. In parallel, the student will gain exposure to numerical modeling by assisting with finite element simulations to better understand load transfer and failure mechanisms.
The project emphasizes both technical and professional development. Students will present their work in a poster format and may have the opportunity to contribute as a co-author on a research publication, providing valuable preparation for graduate studies or industry careers.
- No Major Restriction
More information: https://www.akanshusharma.com/
Beyond the Audiogram: Anatomical Changes Following Noise Exposure and Traumatic Brain Injury.
disabilities affecting over 4.5 million veterans. Service members often struggle to
understand speech in noisy environments despite having normal audiometric hearing
thresholds. Current diagnostics do not have the sensitivity required to detect subtle but
significant functional changes in the injured auditory system. Our project investigates
functional and structural changes in the peripheral and central auditory system following
noise exposure and traumatic brain injury (TBI) using a preclinical model (chinchilla
lanigera).
Functional auditory assessment has been previously performed in all animals. The
selected student is only expected to perform histological work. Histology may be
performed on brain and/or temporal bone (i.e., cochlea) that has been previously
collected. The selected student is expected to learn basic histological techniques—tissue
preparation, cryogenic sectioning, immunofluorescence staining, and multi-channel
confocal microscopy. Additionally, the student is expected to learn how to use stereology
software to quantify structural changes at the cellular level (e.g., cell death, synapse loss,
dendrite morphology, cell body, etc.). Overall, the selected student will help establish a
robust histological protocol that current and future students can easily implement to
support electrophysiological measures with histological markers. Combining functional
measures and histological markers will contribute to the development of more sensitive
diagnostics.
- No Major Restriction
More information: https://engineering.purdue.edu/HeinzLab
Biofilm remediation using electric fields
Student role: The student will help design and run experiments, build/modify a small benchtop testbed, and develop analysis pipelines. They will gain skills in microfluidic handling, optical microscopy (time-lapse imaging), basic instrumentation/electronics integration, and quantitative data analysis in Python/Matlab (image processing, curve fitting, statistics), using standard lab tools plus automated acquisition and scripted analysis workflows.
- No Major Restriction
Biophysical and analytical characterization of ligand interactions with MYC Promoter G-quadruplex DNA for anti-cancer drug development.
Project Description. Biophysical characterization of ligand interactions with MYC Promoter G-quadruplex DNA for anti-cancer drug development.
Expected Deliverables: 1) Measure binding affinity of G-quadruplex ligands to MycG4 DNA using fluorescence spectroscopy binding assay. 2) Measure effect of G-quadruplex ligands on MycG4 thermal stability using circular dichroism spectroscopy. 3) Record and organize the binding data and analyze the data in correlation with compound structures. Lorelei will work under the supervision of my graduate student, Jinho Jang and Rongxue Zhang.
- No Major Restriction
Bladeless Mixing of Energetic Materials
- Chemical Engineering
- Chemistry
- Materials Engineering
- Mechanical Engineering
Build the Future with AI: Robotics, Coding, and Security Projects
*** Possible industry involvement: Some of these projects are funded by Meta/Facebook research awards and J.P.Morgan AI research awards.
*** We especially encourage applications from women, Aboriginal peoples, and other groups underrepresented in computing.
*** Project 1. Robotics Manipulation and Navigation, Vision-Language-Action and Reinforcement Learning
Vision-Language-Action (VLA) models have recently demonstrated strong capabilities in robotic manipulation by leveraging large-scale multimodal pretraining. However, applying reinforcement learning (RL) to improve these models remains computationally expensive.
In this project, we will develop a sample-efficient RL approach for VLA models, aiming to reduce training cost while improving policy robustness and generalization. Our ultimate goal is to enable scalable and efficient RL for VLA models in real-world robotic manipulation.
Early work and background can be found here:
SELP: Generating Safe and Efficient Task Plans for Robot Agents with Large Language Models ICRA 2025 https://lt-asset.github.io/selp/
*** Project 2. Agents and LLMs for Sofware Engineering including Detecting and Fixing Software Bugs and Vulnerabilities
In this project, we will develop machine learning approaches including agents and large language models for the entire processes of software engineering, including requirements, design, code generation, test generation, code review, and detection and fixing of software bugs and security vulnerabilities. We will also build benchmarks for such coding and engineering tasks.
Early work and background can be found here:
Unified Software Engineering Agent as AI Software Engineer ICSE 2026: https://arxiv.org/pdf/2506.14683
Can Language Models Replace Programmers for Coding? 🐟 RepoCod Says 'Not Yet' ACL 2025 https://lt-asset.github.io/REPOCOD/
TENET: Leveraging Tests Beyond Validation for Code Generation https://arxiv.org/abs/2509.24148
Impact of Code Language Models on Automated Program Repair. ICSE 2023. https://www.cs.purdue.edu/homes/lintan/publications/clm-icse23.pdf
KNOD: Domain Knowledge Distilled Tree Decoder for Automated Program Repair. ICSE 2023. https://www.cs.purdue.edu/homes/lintan/publications/knod-icse23.pdf
*** Project 3. Binary Recovery and Foundation Models
Binary code analysis is the foundation of crucial security and development tasks, including legacy software maintenance, vulnerability detection, malware detection, and binary recovery. Combined with the sophistication of cybercrime that poses threats worldwide (e.g., cybercrime is predicted to cost $10.5 trillion annually by 2025), effective binary analysis techniques are in high demand. Existing models do not understand the syntax or semantics of binaries. The idea is to build binary foundation models considering syntaxes, compiler optimizations, hardware, etc. Our recent binary foundation model Nova is one of the first. Our CCS 2024 paper recovers data structures and identifier names from binaries, which could be useful for identifier recovery and renaming.
Our recent prior work and background can be found here:
https://www.cs.purdue.edu/homes/lintan/publications/nova-iclr25.pdf
https://www.cs.purdue.edu/homes/lintan/publications/resym-ccs24.pdf
https://www.cs.purdue.edu/homes/lintan/publications/gennm-ndss25.pdf
https://corebench.github.io/
*** Project 4. Autoformalization: Inferring Specifications from Software Text for Finding Bugs and Vulnerabilities
A fundamental challenge of detecting or preventing software bugs and vulnerabilities is understanding programmers’ intentions, formally called specifications. If we know the specification of a program (e.g., where a lock is needed, what input a deep learning model expects, etc.), a bug detection tool can check if the code matches the specification.
Building upon our expertise as being the first to extract specifications from code comments to automatically detect software bugs and bad comments, in this project, we will analyze various new sources of software textual information (such as API documents and StackOverflow Posts) to extract specifications for bug detection. For example, the API documents of deep learning libraries such as TensorFlow and PyTorch contain a lot of input constraint information about tensors. Language models may be explored.
Early work and background can be found here:
https://www.cs.purdue.edu/homes/lintan/projects.html
- Computer Science
- Computer Engineering
More information: https://lt-asset.github.io/
Building Agentic AI Systems for Mixed Reality Applications
The undergraduate researcher will contribute to the design and development of MR applications that incorporate AI-driven interaction, including implementing interaction logic, prototyping user interfaces, and integrating AI models into real-time systems. The student will also assist in evaluating the system through user testing and iterative refinement.
Through this project, the student will gain hands-on experience in mixed reality development (e.g., Unity and Meta Quest), multimodal interaction design, and AI-powered systems, as well as exposure to research in human-computer interaction and intelligent interfaces.
- No Major Restriction
More information: https://engineering.purdue.edu/cdesign/wp/
Building Intelligent Composite Manufacturing Systems with Physics Models and Real-Time Data
Skills the student will develop: (1) Fundamental understanding of composites manufacturing processes; (2) Basics of heat transfer and material behavior modeling; (3) Experience with data analysis and visualization; (4) Introduction to model–experiment integration and engineering problem solving.
Tools and technologies: (1) Programming tools such as MATLAB or Python for data analysis; (2) FEA and CFD simulation tools (e.g., Abaqus, ConvergeCFD)
(3) Experimental equipment and sensors (e.g., thermal cameras or in-situ monitoring systems); (4) Data processing and visualization tools
- No Major Restriction
Building Ultra-Fast Edge AI Brains for Autonomous Robots
- No Major Restriction
- Computer Engineering
- Computer Science
- Electrical Engineering
More information: https://ideas.cs.purdue.edu/
Building a novel database of 3D immune selection profiles of antigen surfaces from common pathogens
Undergraduate students are expected to help graduate students gather and curate antigen, taxon, and genetic resources for human pathogens, compute immune selection profiles across all antigen surfaces, and compare them with pathogens for which immunodominance information is known. They will develop skills in reading primary literature, data mining from protein and genetic databases, writing and running data analytical scripts. They will be using Pymol, R, and bash scripting.
- Biology
Building morphosyntactic networks for precision assessment and intervention
- No Major Restriction
CISTAR: Deep Operator Networks for Secure and Efficient Chemical Engineering Application
In chemical engineering, this is especially compelling for transport and reaction systems where classical simulation is accurate but too slow for many-query tasks (design, control, inference), and where stiffness is a dominant bottleneck. Recent work shows operator learning can surrogate stiff chemical kinetics propagators, using DeepONet variants to advance thermochemical states efficiently after offline training, with the explicit goal of accelerating reactive computational fluid dynamics (CFD) workflows.
Motivated by industrial-scale surrogate modeling efforts that emphasize efficiency on modern GPU stacks, this project will develop operator networks that are both computationally efficient and deployment-safe for chemical engineering models governed by PDEs.
The work plan centers on a rigorous data and evaluation pipeline, since recent editorial criticism has highlighted that claimed advantages of ML PDE surrogates depend strongly on realistic evaluation protocols and, often, much larger datasets. We will generate benchmark-quality training sets using established PDE data-generation practices and tooling and incorporate large, diverse simulation corpora where appropriate, including reaction–diffusion style systems. To improve “security” in the engineering sense of trustworthy decisions under uncertainty and limited high-fidelity data, we will pursue uncertainty-aware, multifidelity operator learning directions, and we will incorporate physics-inspired operator learning extensions to reduce sample complexity.
This project is offered by the NSF engineering research center CISTAR. Students working on this project will also participate in information sessions, tours, and informal mentoring with CISTAR's partner companies. Participants will join STEM teachers to offer two outreach events in Indianapolis in July, to help kids get excited about careers in STEM.
- Computer Science
- Chemical Engineering
- Computer Engineering
More information: https://engineering.purdue.edu/ChE/people/ptProfile?resource_id=286478
CISTAR: Design of stable zeolite catalysts for fuel and chemical production
Zeolite catalysts are ubiquitous in the conversion of light hydrocarbons to useful chemical and transportation fuel products. However, protocols used to regenerate zeolite catalysts over repeated cycles leads to long-term structural changes that lead to irreversible catalyst deactivation. Recent work has shown that inorganic components and additives can be incorporated onto zeolite catalysts to stabilize them through the reaction and regeneration processes they encounter during operation. This project will work on developing post-synthetic modifications of zeolites to increase their structural stability, characterizing their surface and active site properties, and studying their catalytic reactivity and stability.
This project is offered by the NSF engineering research center CISTAR. Students working on this project will also participate in information sessions, tours, and informal mentoring with CISTAR's partner companies. Participants will join STEM teachers to offer two outreach events in Indianapolis in July, to help kids get excited about careers in STEM.
- Chemical Engineering
- Chemistry
More information: https://sites.google.com/site/rgounder/
CISTAR: Examining how residual H2O (from CO2 conversion chemistry) influences methanol upgrading processes in zeolite catalysts
This project is offered by the NSF engineering research center CISTAR. Students working on this project will also participate in information sessions, tours, and informal mentoring with CISTAR's partner companies. Participants will join STEM teachers to offer two outreach events in Indianapolis in July, to help kids get excited about careers in STEM.
- Chemical Engineering
- Chemistry
More information: https://engineering.purdue.edu/ChE/people/ptProfile?resource_id=306454#research-interests-page
CISTAR: Gaining insights into polymer upcycling reactions using through model gas alkane hydrogenolysis
This project is offered by the NSF engineering research center CISTAR. Students working on this project will also participate in information sessions, tours, and informal mentoring with CISTAR's partner companies. Participants will join STEM teachers to offer two outreach events in Indianapolis in July, to help kids get excited about careers in STEM.
- Chemistry
- Chemical Engineering
More information: https://engineering.purdue.edu/ChE/people/ptProfile?resource_id=306454#research-interests-page
CISTAR: Modeling Palladium Speciation for Nanoparticle Synthesis and Hydrogen Sensor Development
- No Major Restriction
CISTAR: Modeling diffusion-limited reactions in zeolite crystals to advance crystallite development
This project is offered by the NSF engineering research center CISTAR. Students working on this project will also participate in information sessions, tours, and informal mentoring with CISTAR's partner companies. Participants will join STEM teachers to offer two outreach events in Indianapolis in July, to help kids get excited about careers in STEM.
- Chemical Engineering
- Chemistry
More information: https://engineering.purdue.edu/ChE/people/ptProfile?resource_id=306454#research-interests-page
CISTAR: Privacy-Preserving Machine Learning for Predicting Compressor Failures in Energy-Intensive Chemical Processes
In this project, we propose using federated learning, a modern machine learning approach that enables collaborative model training without sharing raw industrial data, to predict compressor failures before they occur. Traditional machine learning methods require collecting large amounts of operational data in a centralized location, which is often impractical in industry due to data privacy, intellectual property concerns, and cybersecurity risks. Federated learning addresses this challenge by allowing each plant or company to train a local model on its own data and share only model updates rather than sensitive data itself.
By learning from diverse compressor operating conditions across multiple sites while preserving data privacy, the federated model can identify early warning signs of mechanical degradation, abnormal energy consumption, and impending failure. The outcome of this research will be a scalable, privacy-preserving framework for predictive maintenance that reduces unplanned shutdowns, improves energy efficiency, and supports CISTAR’s mission of advancing sustainable and reliable energy systems for the chemical industry.
Undergraduate researchers will gain hands-on experience at the intersection of energy systems, chemical engineering, and artificial intelligence, working on a real-world problem with direct impact on industrial sustainability and decarbonization.
This project is offered by the NSF engineering research center CISTAR. Students working on this project will also participate in information sessions, tours, and informal mentoring with CISTAR's partner companies. Participants will join STEM teachers to offer two outreach events in Indianapolis in July, to help kids get excited about careers in STEM.
- Chemical Engineering
- Industrial Engineering
- Electrical Engineering
- Computer Science
More information: https://cistar.us/
CISTAR: Synthesis of zeolite catalysts with tailored diffusion and reaction properties
This project is offered by the NSF engineering research center CISTAR. Students working on this project will also participate in information sessions, tours, and informal mentoring with CISTAR's partner companies. Participants will join STEM teachers to offer two outreach events in Indianapolis in July, to help kids get excited about careers in STEM.
- Chemical Engineering
- Chemistry
More information: https://sites.google.com/site/rgounder/
Catalyst Development for Asymmetric Hydroamination Reactions
Undergraduate researchers will play a central and hands-on role in this project. Students will be responsible for the design, synthesis, purification, and evaluation of chiral ligands used to generate enantioselective cobalt catalysts. Working closely with graduate mentors, students will first survey existing ligand frameworks and asymmetric catalyst precedents using chemical literature and structure databases (e.g., SciFinder and related chemical databases). Based on this analysis, they will propose new ligand structures aimed at improving catalytic activity and enantioselectivity.
Students will then develop synthetic routes to prepare enantiomerically pure ligands, carrying out multi-step organic synthesis, purification, and optimization. The prepared ligands will be coordinated to cobalt and evaluated in asymmetric hydroamination reactions, allowing students to directly connect molecular design with catalytic performance.
Throughout the project, students will gain extensive training in modern experimental techniques and data analysis, including:
• Reaction planning and retrosynthetic analysis
• Use of chemical literature and database searching tools
• Air- and moisture-sensitive synthesis (as appropriate)
• Purification techniques such as column chromatography and recrystallization
• Structural and purity characterization using NMR spectroscopy, UPLC–MS, HPLC, and GC–MS
• Analysis of enantioselectivity and reaction outcomes
By the end of the project, students will have developed strong technical proficiency in asymmetric synthesis and catalysis, as well as transferable skills in problem-solving, experimental design, data interpretation, and scientific communication. This experience will prepare them for advanced coursework, graduate research, or careers in the chemical sciences.
- Chemistry
More information: https://www.ngaigroup.com/
Cellular basis for fibrotic remodeling after injury in skeletal muscle
The SURF project will involve identification of various cellular players involved in the wound healing process, through training and implementation of immunofluorescence staining, imaging, flow cytometry, and quantitative analysis of tissue structural remodeling. Through this project, the student will develop experience in regenerative therapies, cellular bioengineering, and extracellular matrix remodeling.
- Biomedical Engineering
- Cell Molecular and Developmental Biology
- Biological Engineering - multiple concentrations
- Biochemistry (Biology)
More information: www.qazi-lab.com
Characterization of an effector involved in host-pathogen interaction
Adenosine Diphosphate (ADP) ribosylation is a reversible posttranslational modification involved in the regulation of numerous cellular processes. Enzymes that function as ADPribosyl (ADPr) transferases (ARTs) and/or ADPr glycohydrolases have been found in bacteria. These enzymes, through their coordinated activity of addition or removal of the ADPr group, are known to manipulate host target proteins. In silico analyses revealed the presence of another Legionella effector with putative ART activity. This effector, known as Lem26 (lpg2523), aligns to bacterial toxins like the cholera toxin and iota toxin. The project aims at characterizing the catalytic activity of this effector.
Campus: West Lafayette
Research Categories: Structure-function characterization
Preferred Major(s): Biochemistry (Department of Chemistry)
Desired experience: Be available to work in person in the lab over the summer
School/Dept.: Department of Chemistry
Professor: Chittaranjan Das
- No Major Restriction
Characterize behavioral differences of infant Fmr1 KO rats across sleep and wake
The student’s primary role will be to use DeepLabCut, an open-source machine learning toolkit for markerless pose estimation, to track the kinematics of limb and body movements from neonatal rat videos. They will assist in generating training datasets, refining labeling accuracy, and running trained networks to extract movement trajectories. Through this process, the student will gain hands-on experience with machine learning pipelines, data curation, video analysis, and reproducible research practices in Python. They will also develop skills in behavioral quantification, dataset management, and interpreting movement features in the context of early brain development.
By producing high-quality movement-tracking datasets, the student will play an essential role in evaluating how knocking out Fmr1 alters the developmental organization of sleep-related and wake-related movements—key behavioral readouts that inform downstream neural analyses in motor cortex and red nucleus.
- No Major Restriction
More information: www.dooleylab.com
Characterizing multi-scale viscoelasticity in de novo pericellular matrix of chondrocyte-seeded hydrogels
- Biomedical Engineering
- Mechanical Engineering
- Biological Engineering - multiple concentrations
More information: engineering.purdue.edu/ChanLab
Characterizing the injectability and rheological behavior of biomaterials for tissue repair
In this SURF project, the goal is to use a microfluidics approach to create microparticles with varying features including size and shape, and investigating how changes in these features impact hydrogel porosity and rheological behavior.
The student will perform hydrogel fabrication using microfluidic devices and characterization of porosity, rheological behavior and mechanics. The student will learn how to use soft lithography to make microfluidic devices, how to operate these devices to make microparticles, and how to process and characterize the properties of these biomaterials.
- No Major Restriction
More information: www.qazi-lab.com
Cochlea and brain histology to index plasticity of the lateral olivocochlear efferent system
- No Major Restriction
Collective Brownian motion under temperature fields
- Mechanical Engineering
- Materials Engineering
- Electrical Engineering
More information: https://www.jingangli.org/
Compliant Robots for Contact-Enabled Detumbling and Capturing of Space Objects
The student will contribute to the design, prototyping, and experimental testing of an origami-inspired compliant manipulator for safely interacting with tumbling, non-cooperative space objects. Expected tasks include designing manipulator concepts with targeted compliance and energy-absorption performance, building and refining prototypes, conducting experiments on an air-bearing low-friction table, and analyzing contact, detumbling, and capture behavior. Through the project, the student will develop skills in space robotics, compliant mechanism design, prototyping, dynamics and control, and experimental data analysis, while gaining experience with CAD tools, 3D printing, sensing and actuation hardware, motion tracking, and microgravity-inspired robotic testbeds.
- Robotics Engineering Technology
- Aeronautical and Astronautical Engineering
- Mechanical Engineering
More information: https://engineering.purdue.edu/AOL/research
Computational Investigation of the Actin Cytoskeleton in Plant Cells
- Biomedical Engineering
More information: https://engineering.purdue.edu/mct
Computational Modeling and AI for Biological Systems
Depending on their interests, students may develop graphical user interfaces (GUIs), evaluate and compare computational methods, or build models to simulate biological processes such as BMP–Smad signaling and tissue dynamics. The program emphasizes reproducible research, code development, and interdisciplinary collaboration. Students will present their work through reports, software tools, and a final presentation at the end of the program.
- No Major Restriction
Computational Modeling of Interface Usability
We are interested in a investigating several directions. These include: i) evaluating and training code generation models ii) evaluating and training computer use agents (CUA) models, and iii) building tools for designers and developers based on AI models.
Students will learn and apply skills in the scientific research process including project ideation, literature search, project discussions, experimental design/execution, data analysis, and results presentation. Different technologies that may be helpful, depending on eventual project direction may be useful: Python, JavaScript, React.js, coding agents, HuggingFace Transformers, PyTorch, and Docker. Prior experience with these is appreciated but not required, and students will develop their technical implementation skills. Students must have experience or interest in human-computer interaction and machine learning.
- No Major Restriction
More information: https://ciderlab.org/
Computer vision and image segmentation of erosive particle breakup behavior under dynamic impact conditions
Students will use ImageJ, Python, MATLAB, and image segmentation algorithms to generate displacement/velocity fields via high-speed images of ballistic impact. Understanding how to implement image registration may be necessary to generate 3D visualization of impact
- No Major Restriction
- Computer Science
- Mathematics - Computer Science
Contractile Behaviors of the Actin Cytoskeleton
- Biomedical Engineering
- Mechanical Engineering
More information: https://engineering.purdue.edu/mct
Contribution of roots vs. shoots to locally adaptive cold acclimation in Arabidopsis thaliana
This project seeks to understand the relative contributions of roots vs. shoots to benefits and costs associated with CBF2-mediated cold acclimation in an ecologically relevant study system. By measuring freezing tolerance and traits putatively linked to fitness effects associated with cold acclimation, the student will partition contributions of roots and shoots to fitness trade-offs in order to draw conclusions about future plant responses to fluctuating soil temperatures as winters warm. The student will learn protocols for root imaging (WinRHIZO root imaging system), measurement of osmotic potential using an osmometer, and the electrolyte leakage method for assaying freezing tolerance. Basic data collection and analysis techniques will also be taught using the statistical software JMP.
- No Major Restriction
More information: https://btny.purdue.edu/labs/oakley/
Controlled stimulus delivery from hydrogels for tissue repair
For more information, visit our website: www.qazi-lab.com
- No Major Restriction
More information: www.qazi-lab.com
Convolutional Neural Network for Thermal Image Analysis
This project focuses on developing a Convolutional Neural Network (CNN) capable of analyzing both raw optical and thermal flame images to automatically extract and quantify combustion-relevant features. Building on recent work applying neural networks to flame diagnostics, the project aims to design and implement an image-analysis model that improves classification accuracy and physical interpretability.
In this project, the student will participate in dataset exploration, model architecture design, and training of CNNs using labeled experimental thermal imaging data. The student will evaluate model performance a testing dataset, visualize feature activations, and refine processing pipelines for thermal image analysis.
Through this work, the student will gain hands-on experience with machine learning for scientific imaging, including data handling, neural network implementation in Python, and performance benchmarking. They will also develop an understanding of how AI can support combustion diagnostics by reducing human effort and improving reliability.
By the end of the project, the student will have contributed to the development of an AI-enabled diagnostic tool for combustion research, while gaining practical skills in deep learning, image analysis, and scientific computing applicable across engineering and applied sciences.
- Computer Engineering
- Computer Science
- Materials Engineering
- Mechanical Engineering
- Aeronautical and Astronautical Engineering
- Engineering (First Year)
More information: https://www.strachanlab.org/
Convolutional Neural Network for Thermal Image Analysis
This project focuses on developing a Convolutional Neural Network (CNN) capable of analyzing both raw optical and thermal flame images to automatically extract and quantify combustion-relevant features. Building on recent work applying neural networks to flame diagnostics, the project aims to design and implement an image-analysis model that improves classification accuracy and physical interpretability.
In this project, the student will participate in dataset exploration, model architecture design, and training of CNNs using labeled experimental thermal imaging data. The student will evaluate model performance a testing dataset, visualize feature activations, and refine processing pipelines for thermal image analysis.
Through this work, the student will gain hands-on experience with machine learning for scientific imaging, including data handling, neural network implementation in Python, and performance benchmarking. They will also develop an understanding of how AI can support combustion diagnostics by reducing human effort and improving reliability.
By the end of the project, the student will have contributed to the development of an AI-enabled diagnostic tool for combustion research, while gaining practical skills in deep learning, image analysis, and scientific computing applicable across engineering and applied sciences.
- Computer Science
- Materials Engineering
- Aeronautical and Astronautical Engineering
- Mechanical Engineering
- Engineering (First Year)
- Computer Engineering
More information: https://www.strachanlab.org/
Creating VR Experiences for Geoscience Informal and Formal Learning
- No Major Restriction
- Computer Science
- Planetary Sciences
- Geology and Geophysics
Creating VR Experiences for Geoscience Informal and Formal Learning
- No Major Restriction
Damping Characteristics of Additively Manufactured Tennis Racket Handle Pallets
Within this project you would work to create a model, perform simulations, manufacture and test prototypes. Throughout this project you will have the opportunity to use CAD software, simulation software, and multiple 3D printing technologies (FDM, SLA).
- Mechanical Engineering
- Materials Engineering
More information: https://engineering.purdue.edu/Engr/Ewry
Damping Characteristics of Additively Manufactured Tennis Racket Handle Pallets
Within this project you would work to create a model, perform simulations, manufacture and test prototypes. Throughout this project you will have the opportunity to use CAD software, simulation software, and multiple 3D printing technologies (FDM, SLA).
- No Major Restriction
- Mechanical Engineering
- Materials Engineering
More information: https://engineering.purdue.edu/Engr/Ewry
Data & Participant Engagement in Digital Phenotyping of Early Development in Neurogenetic Conditions
The student will prepare and manage assessment materials and contribute to data processing tasks, including coding behavioral and physiological data; segmenting videos; conducting fidelity coding; and cleaning legacy datasets.
Through this role, the student will develop skills in research methodology, human subjects compliance, data management, behavioral coding, attention to detail, and reproducible research practices. The student will gain hands-on experience with tools such as behavioral coding software, physiological data processing platforms, eye-tracking analysis systems, spreadsheet/database management software (e.g., Excel), and video editing software.
- No Major Restriction
More information: https://kelleherlab.weebly.com/
Deformation in alloys and high entropy alloys
Participants will investigate:
• The formation and evolution of extended dislocations in both matrix and precipitate phases
• Dislocation–precipitate interactions and precipitate shearing mechanisms
• The development of planar faults within precipitates
This work aims to deliver mechanistic insight and predictive capability for strengthening in complex alloy systems, supporting the design of higher-performance materials for extreme environments.
- No Major Restriction
More information: https://koslowskigroup.org
Design and Control of a Bipedal Walking Character
- No Major Restriction
More information: https://commalab.org
Design and Prototyping of a Portable Birdcage Antenna System for Non-Invasive Neuromodulation Applications in Alzheimers Disease
Through this project, students will develop skills in RF and antenna characterization, embedded systems and microcontrollers (C/C++, Python, MATLAB), data acquisition and feedback control, electromagnetic and thermal simulation (HFSS/COMSOL/ANSYS), and CAD-based mechanical design with 3D printing. All work will be conducted at the benchtop level using simulation, prototyping, and controlled testing only, with possible human or animal subjects involved.
- Electrical Engineering
- Mechanical Engineering
- Biomedical Engineering
More information: https://ieeexplore.ieee.org/abstract/document/10962220
Design and fabrication untethered soft robots
Physical nonlinearities in soft robotic architectures have provided a solution to address existing limitations by utilizing the robots' structure for physical control [11]. Elements such as snap-through instabilities, rate dependencies, and responsiveness to external stimuli have been integrated into soft robotics architectures to improve performance, functionality, and embodied control. By leveraging the system's mechanical response, various outputs can be encoded into the system through logic operations [11], [12], [13], alternating cycles [14], object size classification [15], [16], and an overall enhancement in robot performance [16]. However, such robotic architecture currently lacks autonomy and often demonstrate low performance when untethered. A significant factor contributing to this issue is the added mass from pneumatic systems, which typically constitutes the majority of the robot's structure. This work aims to explore, analyze, and design various pneumatic actuation systems to be integrated into soft robotic architectures, facilitating their untethered operation.
Among the existing architectures, we will analyze self-regulating oscillators [17], sequence-driven actuators [18], and pneumatic logic systems [12], [19], [20], offering insights into various soft logic and control devices and how to incorporate them into larger soft machines or systems.
References
[1] P. Polygerinos et al., “Soft Robotics: Review of Fluid-Driven Intrinsically Soft Devices; Manufacturing, Sensing, Control, and Applications in Human-Robot Interaction,” Adv. Eng. Mater., vol. 19, no. 12, p. 1700016, Dec. 2017, doi: 10.1002/ADEM.201700016.
[2] S. Kim, C. Laschi, and B. Trimmer, “Soft robotics: a bioinspired evolution in robotics,” Trends Biotechnol., vol. 31, no. 5, pp. 287–294, May 2013, doi: 10.1016/J.TIBTECH.2013.03.002.
[3] C. Majidi, “Soft-Matter Engineering for Soft Robotics,” Adv. Mater. Technol., vol. 4, no. 2, Feb. 2019, doi: 10.1002/ADMT.201800477.
[4] D. Rus and M. T. Tolley, “Design, fabrication and control of soft robots,” Nature, vol. 521, no. 7553, pp. 467–475, May 2015, doi: 10.1038/nature14543.
[5] C. Laschi, B. Mazzolai, and M. Cianchetti, “Soft robotics: Technologies and systems pushing the boundaries of robot abilities,” Sci. Robot., vol. 1, no. 1, p. eaah3690, Dec. 2016, doi: 10.1126/scirobotics.aah3690.
[6] R. Pfeifer, M. Lungarella, and F. Iida, “The challenges ahead for bio-inspired ‘soft’ robotics,” Commun. ACM, vol. 55, no. 11, pp. 76–87, Nov. 2012, doi: 10.1145/2366316.2366335.
[7] D. Trivedi, C. D. Rahn, W. M. Kier, and I. D. Walker, “Soft Robotics: Biological Inspiration, State of the Art, and Future Research,” Appl. Bionics Biomech., vol. 5, no. 3, pp. 99–117, 2008, doi: 10.1080/11762320802557865.
[8] R. L. Truby et al., “Soft Somatosensitive Actuators via Embedded 3D Printing,” Adv. Mater., vol. 30, no. 15, p. 1706383, Apr. 2018, doi: 10.1002/ADMA.201706383.
[9] K. Chin, T. Hellebrekers, and C. Majidi, “Machine Learning for Soft Robotic Sensing and Control,” Adv. Intell. Syst., vol. 2, no. 6, p. 1900171, June 2020, doi: 10.1002/AISY.201900171.
[10] T. G. Thuruthel, B. Shih, C. Laschi, and M. T. Tolley, “Soft robot perception using embedded soft sensors and recurrent neural networks,” Sci. Robot., vol. 4, no. 26, p. eaav1488, Jan. 2019, doi: 10.1126/scirobotics.aav1488.
[11] E. Milana, C. D. Santina, B. Gorissen, and P. Rothemund, “Physical control: A new avenue to achieve intelligence in soft robotics,” Sci. Robot., 2025.
[12] S. Conrad et al., “3D-printed digital pneumatic logic for the control of soft robotic actuators,” Sci. Robot., vol. 9, no. 86, p. eadh4060, Jan. 2024, doi: 10.1126/scirobotics.adh4060.
[13] Y. Zhai et al., “Desktop fabrication of monolithic soft robotic devices with embedded fluidic control circuits,” Sci. Robot., vol. 8, no. 79, p. eadg3792, June 2023, doi: 10.1126/scirobotics.adg3792.
[14] D. Drotman, S. Jadhav, D. Sharp, C. Chan, and M. T. Tolley, “Electronics-free pneumatic circuits for controlling soft-legged robots,” Sci. Robot., vol. 6, no. 51, p. 2627, Feb. 2021, doi: 10.1126/SCIROBOTICS.AAY2627/SUPPL_FILE/AAY2627_SM.PDF.
[15] S. Zou, S. Picella, J. De Vries, V. G. Kortman, A. Sakes, and J. T. B. Overvelde, “A retrofit sensing strategy for soft fluidic robots,” Nat. Commun., vol. 15, no. 1, p. 539, Jan. 2024, doi: 10.1038/s41467-023-44517-z.
[16] J. C. Osorio, J. S. Rincon, H. Morgan, and A. F. Arrieta, “Embodying Control in Soft Multistable Robots from Morphofunctional Co‐design,” Adv. Sci., p. e03206, July 2025, doi: 10.1002/advs.202503206.
[17] L. C. Van Laake, J. De Vries, S. Malek Kani, and J. T. B. Overvelde, “A fluidic relaxation oscillator for reprogrammable sequential actuation in soft robots,” Matter, vol. 5, no. 9, pp. 2898–2917, Sept. 2022, doi: 10.1016/j.matt.2022.06.002.
[18] B. Van Raemdonck, E. Milana, M. De Volder, D. Reynaerts, and B. Gorissen, “Nonlinear Inflatable Actuators for Distributed Control in Soft Robots,” Adv. Mater., p. 2301487, July 2023, doi: 10.1002/adma.202301487.
[19] K. Boddapati, J. C. Osorio, and A. F. Arrieta, “On the Loss of Stability of Bistable Laminates due to Clamping”.
[20] P. Rothemund et al., “A soft, bistable valve for autonomous control of soft actuators,” Sci. Robot., vol. 3, no. 16, p. eaar7986, Mar. 2018, doi: 10.1126/scirobotics.aar7986.
- No Major Restriction
More information: https://engineering.purdue.edu/ProgrammableStructures/
Design of Learning Modules in Physics Introductory Courses Aligned with Students Epistemic Profiles
The student will work with a postdoctoral research scholar and fellow graduate students in designing the modules, collecting and analyzing data, along with publishing findings in leading peer-reviewed conference proceedings and journals.
- No Major Restriction
Design, analysis, and fabrication of elastic light scattering system for airborne particulate matter
- Mechanical Engineering
- Electrical Engineering
Detection of protein biomarkers for disease diagnosis
To address these challenges, simultaneous multi-factor detection (detecting protein and nucleic acid biomarkers in the same sample) has the potential to increase specificity and sensitivity of disease detection by leveraging signal amplifications from both biomarker types. Ideally these testing platforms would have broad applications and have the potential to be manufactured in handheld and portable formats for use in low resource settings or at the point-of-need. Our group is poised to develop a technology platform that can address the barriers. We have previously achieved highly sensitive detection of malaria (3 parasite/µL of blood) from patient samples with 89% sensitivity and 100% specificity when compared to quantitative polymerase chain reaction (qPCR) (Colbert et al., 2021). In more recent work, we have used PD to detect protein-protein interactions for fundamental studies of protein binding kinetics (Ma et al., 2024, 2022), demonstrating the versatility of PD as a sensing modality. We have also demonstrated that PD-based pathogen detection can be performed on a hand-held portable system (Colbert et al., 2021).
In this application we propose to use particle diffusometry (PD) and optimize test conditions and PD detection algorithms for simultaneous multi-factor (nucleic acid and protein) pathogen detection. We will exploit relative changes in both particle size and solution viscosity in a dual use platform, which is expected to significantly increase the sensitivity of detection. We will demonstrate detection of Plasmodium falciparum (Pf) in blood, plasma, and saliva at levels consistent with asymptomatic carriers of the malarial pathogen. An advantage of our PD platform is that the principles that we establish in this work for malaria biomarker detection platform can be easily adapted for detection of other infectious diseases. Additionally, the protein detection technology can be extended into applications beyond rapid point-of-care (POC) diagnostics, such as sensing protein aggregation of biopharmaceuticals at the point-of-production, point-of-testing for produce freshness or point-of-injury for emergency care personnel.
Detection of protein biomarkers for disease diagnosis
To address these challenges, simultaneous multi-factor detection (detecting protein and nucleic acid biomarkers in the same sample) has the potential to increase specificity and sensitivity of disease detection by leveraging signal amplifications from both biomarker types. Ideally these testing platforms would have broad applications and have the potential to be manufactured in handheld and portable formats for use in low resource settings or at the point-of-need. Our group is poised to develop a technology platform that can address the barriers. We have previously achieved highly sensitive detection of malaria (3 parasite/µL of blood) from patient samples with 89% sensitivity and 100% specificity when compared to quantitative polymerase chain reaction (qPCR) (Colbert et al., 2021). In more recent work, we have used PD to detect protein-protein interactions for fundamental studies of protein binding kinetics (Ma et al., 2024, 2022), demonstrating the versatility of PD as a sensing modality. We have also demonstrated that PD-based pathogen detection can be performed on a hand-held portable system (Colbert et al., 2021).
In this application we propose to use particle diffusometry (PD) and optimize test conditions and PD detection algorithms for simultaneous multi-factor (nucleic acid and protein) pathogen detection. We will exploit relative changes in both particle size and solution viscosity in a dual use platform, which is expected to significantly increase the sensitivity of detection. We will demonstrate detection of Plasmodium falciparum (Pf) in blood, plasma, and saliva at levels consistent with asymptomatic carriers of the malarial pathogen. An advantage of our PD platform is that the principles that we establish in this work for malaria biomarker detection platform can be easily adapted for detection of other infectious diseases. Additionally, the protein detection technology can be extended into applications beyond rapid point-of-care (POC) diagnostics, such as sensing protein aggregation of biopharmaceuticals at the point-of-production, point-of-testing for produce freshness or point-of-injury for emergency care personnel.
- No Major Restriction
- Biochemistry (Chemistry)
- Biomedical Engineering
- Biological Engineering - multiple concentrations
- Chemical Engineering
- Biochemistry
- Biochemistry (Biology)
Determining the Elastic Constants of Rock
- No Major Restriction
Developing Soft Growing Robot Delivery of Insect Scale Robots for Non-Destructive Inspection
- Mechanical Engineering
- Electrical Engineering
More information: https://purdueraadlab.wixsite.com/website-1
Development and application of nuclear techniques and machine learning in human health
Student can select to work on: make standards for elemental quantification, conduct Monte Carlo simulations on radiation transportation, radiation instrumentation design and development, perform experiments with the neutron generator, x-ray devices, and radiation detectors available in Dr. Nie’s lab, conduct experiments at the advanced photon source (APS) synchrotron facility at Argonne National Lab, x-ray and gamma ray spectroscopy, spectral fitting, statistical data analysis, and machine learning applications.
- No Major Restriction
- Physics
- Radiological Health Sciences
- Computer Science
- Nuclear Engineering
- Biomedical Engineering
Development and characterization of low noise voltage and current amplifiers
- Electrical Engineering
More information: http://www.physics.purdue.edu/leogroup
Development of Catalytic Methods for the Synthesis of Pharmaceutical Building Blocks
- No Major Restriction
More information: https://www.chem.purdue.edu/uyeda/
Development of DNA Nanomaterials for miRNA Delivery across the Blood-Brain Barrier
The students are expected to contribute to the work of characterization of individual nanostructures for miRNA in vitro delivery, the influence of functionalization methods on the delivery, or the delivery of miRNA in new cells lines. The students will perform experimental work to make the nanostructures, use them to deliver miRNA, evaluate the results, and process them. The techniques expected to be learned and be used are gel electrophoresis, DNA nanomaterials assembly, cell tissue culture, PCR confocal microscopy, image processing, and statistics. If preferred, coarse-grain and atomistic simulations of DNA nanomaterials in solution and potentially interacting with the cellular surface is possible.
- Biomedical Engineering
- Biochemistry
- Chemistry
- Biology
- Biological Engineering - multiple concentrations
- Agricultural Engineering
More information: https://engineering.purdue.edu/ursemlab/index.html
Development of DNA Nanomaterials for miRNA Delivery across the Blood-Brain Barrier and Testing Cellular Pores
The students are expected to contribute to the work of characterization of individual nanostructures for miRNA in vitro delivery, the influence of functionalization methods on the delivery, or the delivery of miRNA in new cells lines. The students will perform experimental work to make the nanostructures, use them to deliver miRNA, evaluate the results, and process them. The techniques expected to be learned and be used are gel electrophoresis, DNA nanomaterials assembly, cell tissue culture, PCR confocal microscopy, image processing, and statistics. If preferred, coarse-grain and atomistic simulations of DNA nanomaterials in solution and potentially interacting with the cellular surface is possible.
- Biomedical Engineering
- Biological Engineering - multiple concentrations
- Chemistry
- Pharmacy
- Biology
More information: https://www.gar-nano.com/
Development of LENN Materials for Targeted mRNA Delivery
- No Major Restriction
More information: www.chem.purdue.edu/thompson
Development of Sustainably Sourced, High Performance Materials
- No Major Restriction
More information: https://www.chem.purdue.edu/wilker/
Development of a Comfortable, Wearable, Cut-Resistant Hockey Neck Guard
The multilayer material stack necessary to achieve these targets is currently being developed. During this process samples of the material will be evaluated for cut resistance and basic material properties.
Students involved with this project over Summer ‘26 will be involved in any additional material characteization found to be necessary and initial 3D forming trials of the guard. This will provide students with an opportunity to gain familiarity with polymer-composite manufacturing techniques and material characterization
- No Major Restriction
More information: https://engineering.purdue.edu/Engr/Ewry
Development of a Drone-Based Synthetic Aperture Radar System for Agricultural Applications
The radar system is fully integrated with a UAV platform, featuring an advanced positioning system and cutting-edge digital signal processing algorithms. We have developed robust calibration methods to ensure accurate quantitative surface measurements. During the summer, the project will focus on development and delivery data products for soil moisture and biomass estimation through extensive data collection, processing, and algorithm refinement.
This is a collaborative research project between the Laboratory for Applications of Remote Sensing and the Radio Navigation Lab at Purdue University, focusing on navigation and signals of opportunity for Earth remote sensing.
- Electrical Engineering
- Geomatics
- Aeronautical and Astronautical Engineering
- Agriculture and Biological Engineering
More information: https://iot4ag.us/
Digital Twin Modeling of Capacitorless Power Converters for Reliable Electric Energy Systems
This research project investigates capacitorless power converter topologies that eliminate the need for large capacitors while maintaining performance and reliability. The project will also develop a digital twin (digital clone) of the converter to predict failures and estimate converter lifetime using data-driven models.
The undergraduate researcher will assist in building experimental prototypes and collecting data from power converters operating under different environmental stresses such as temperature, vibration, humidity, and load cycling. The collected data will be used to train machine learning models that estimate time-to-failure and predict reliability under real operating conditions.
The student will participate in several research tasks including:
1. Simulating power converters in MATLAB/Simulink
2. Assisting with hardware testing of DC-DC converters
3. Collecting electrical measurements such as voltage, current, and temperature
4. Analyzing converter performance under different environmental conditions
5. Supporting the development of a digital twin model for reliability prediction
The research aims to create tools that allow engineers to predict failures before they occur, improving reliability in applications such as electric vehicles, aircraft power systems, and renewable energy installations.
Students will gain hands-on experience in:
1. Power electronics hardware
2. Embedded measurement systems
3. Data acquisition and experimental testing
4. Machine learning for engineering systems
5. Reliability analysis of electrical systems
- Electrical Engineering or Computer Engineering
More information: https://ieeexplore.ieee.org/abstract/document/10861665
Digital Twins and IoT design for product/equipment
- No Major Restriction
More information: https://medium.com/purdue-engineering/digital-twins-smart-manufacturings-dna-for-a-bright-future-960882ab03ad
Digital Twins and IoT design for product/equipment
More information: https://medium.com/purdue-engineering/digital-twins-smart-manufacturings-dna-for-a-bright-future-960882ab03ad
Disease ecology in freshwater systems
- No Major Restriction
More information: https://www.bio.purdue.edu/lab/searle/
Effects of colliding deflagration waves
This project focuses on using molecular dynamics (MD) simulations to quantify the thermal and structural evolution of colliding hotspots in RDX. Building on recent theoretical work investigating ignition and growth mechanisms, the goal is to characterize how localized heating, stress, and chemical reactivity change during deflagration onset.
In this project, the student will design atomistic simulations that model hotspot formation and collision under controlled thermodynamic conditions. They will calculate local temperature distributions, track reaction progression using reactive force fields, and analyze the energetics of the interface region where collisions occur.
The student will gain hands-on experience with molecular dynamics simulation tools, data analysis of reaction processes, and visualization of temperature and energy fields. They will also develop an understanding of how microscopic reaction mechanisms connect to macroscopic ignition behavior in energetic materials.
By the end of the project, the student will have contributed to a quantitative, molecular-level understanding of hotspot coalescence and early-stage deflagration dynamics in RDX, gaining practical skills applicable to computational materials science, chemical physics, and energetic materials research.
- Mechanical Engineering
- Materials Engineering
- Aeronautical and Astronautical Engineering
- Computer Science
More information: https://www.strachanlab.org/
Efficient and sustainable water technology
- Mechanical Engineering
- Materials Engineering
- Environmental and Ecological Engineering
- Chemical Engineering
- Chemistry
More information: www.warsinger.com
Electrochemistry for selective synthesis of biomolecules
- Chemistry
- Chemical Engineering
Energy Quantification of High Strain Rate Impact Testing
- No Major Restriction
More information: https://www.sciencedirect.com/science/article/pii/S0263224125024078
Energy Quantification of High Strain Rate Impact Testing
More information: https://www.sciencedirect.com/science/article/pii/S0263224125024078
Energy Quantification of High Strain Rate Impact Testing
More information: https://www.sciencedirect.com/science/article/pii/S0263224125024078
Energy Storage Analytics
- Mechanical Engineering
- Chemical Engineering
More information: https://engineering.purdue.edu/ETSL/
Engineered Energetic Fuel Particles
- No Major Restriction
More information: https://engineering.purdue.edu/Energetics
Engineering Dual Inhibitors of HDAC3 and HIV Protease Towards a Cure for HIV
- Chemistry
Enhancing AI-Based Interaction with the Materials Project
This project focuses on the enhancement and extension of an AI agent within the Autonomous Universal Research Assistant (AURA) framework that can interact with the Materials Project in more flexible and expressive ways than current implementations. The work will explore how improved prompting strategies, tool design, and agent logic can enable richer queries, including multi-criteria searches, property comparisons, and more complex materials exploration workflows.
AURA Paper: https://chemrxiv.org/doi/full/10.26434/chemrxiv-2025-rs07k
The student will play an active role in designing prompts, developing and testing tools, and evaluating agent behavior when interacting with the Materials Project. This includes identifying limitations in existing query capabilities, extending tool interfaces to expose additional information, and systematically testing the agent’s responses for correctness, robustness, and usability. Through this work, the student will gain hands-on experience with large language models, scientific APIs, and modern software development practices. The project supports broader goals of making data-driven materials research more accessible and effective.
- Materials Engineering
- Mechanical Engineering
- Computer Science
- Engineering (First Year)
- Computer Engineering
More information: https://www.strachanlab.org/
Epitaxial growth of wafer scale semiconductor thin films
- Physics
- Materials Engineering
- Electrical Engineering
More information: https://sites.google.com/view/zhulab/home
Evaluating Microvascular and Oxygenation Responses of the Plantar Foot to Heat-Based Therapeutic Strategies in Type 2 Diabetes and Peripheral Artery Disease
Our research group recently completed several studies measuring how the small blood vessels in the foot respond to heating and changes in blood flow. We examined how fast oxygen returns to the foot after briefly stopping circulation and how the body reacts when heat and gentle compression are applied to the lower leg. In these studies, individuals with PAD showed much slower and smaller improvements in blood flow and oxygenation, while people with diabetes showed intermediate responses.
The goal of this SURF project is to build on these findings by studying how heat-based treatments influence foot circulation in the short term. The student will help measure changes in skin blood flow, tissue oxygen levels, and leg blood flow while participants undergo controlled heating or brief blood flow occlusion. To do this, we will use noninvasive tools such as near-infrared light sensors, laser-based blood flow monitors, and ultrasound. The results of this project will help us understand whether simple warming strategies could support foot health in people who are at risk for poor circulation.
- No Major Restriction
Evaluating the Metabolic and Skeletal Outcomes in a Novel Murine Model of Alcohol Use Disorder and Type 2 Diabetes
- Biomedical Engineering
More information: https://engineering.purdue.edu/BBML/
Evalutation of novel radiotherapeutic agents in dogs.
Excellent organizational skills and reliability in following protocols.
- No Major Restriction
More information: https://www.chem.purdue.edu/low/index.html
Expanding and Evaluating Autonomous Scientific Workflows on nanoHUB
In this project, the student will play an active role in developing new computational workflows that expand the range of scientific tasks AURA can perform. The student will help design these workflows, define their required inputs and outputs, and deploy them on the nanoHUB platform. This work will give the student hands-on experience translating scientific ideas into usable computational tools.
The student will develop practical skills in Python programming, scientific computing, and workflow automation, as well as experience working with modern research software platforms. They will test how AURA uses the new workflows autonomously and compare AI-driven execution with manual execution to evaluate accuracy, speed, and reliability.
By the end of the project, the student will have gained experience in AI-enabled research, reproducible computational workflows, and evaluation of automated systems. Their contributions will directly support ongoing research infrastructure development on nanoHUB while preparing them for future work in computational science, data science, or engineering research.
- Materials Engineering
- Mechanical Engineering
- Computer Engineering
- Computer Science
- Aeronautical and Astronautical Engineering
- Engineering (First Year)
More information: https://www.strachanlab.org/
Experimental Analysis of Granular Flow in Hoppers
- Mechanical Engineering
- Chemical Engineering
Experimental and numerical characterization of low-GWP working fluids for thermal systems
- Testing support
- Test stand modification
- Post-processing of experimental results
- Development of semi-empirical correlations of results
- No Major Restriction
Exploring Ultrasound Contrast Agents
- No Major Restriction
FDM 3D Printing of Energetics
- No Major Restriction
More information: https://engineering.purdue.edu/Energetics
Fabrication of atomic clean 2D heterostructures
- Physics
More information: https://sites.google.com/view/zhulab/home
Fracture Networks Under Stress
A SURF student working on this project would learn 3D printing to create fracture networks with multiple topological elements, 3D X-ray imaging and image analysis to extract the change in the topological elements that compose the network. An understanding of X-ray imaging and fracture interactions would be acquired during the project. No prior knowledge is needed.
- No Major Restriction
From fracture to flow: how calving ice sheet affect ocean dynamics
- No Major Restriction
More information: https://olivmeng.github.io/
Functional genomic screening to define PFAS neurotoxic mechanism conferring AD risk
- No Major Restriction
Generative AI for the discovery of new drugs
- No Major Restriction
Gradual Verification: Assuring Programs Incrementally
Software verification is the process of ensuring that a piece of software does what it is intended to do (i.e., ensuring the code adheres to its specification). Software verification is important for all software systems, but particularly so, for critical systems such as control systems for aircraft and nuclear power plants. However, static verification---the technique often applied to such systems---cannot support incrementality. It involves writing detailed specifications (often in a formal logic) on system components, such as pre- and postconditions for functions. To prove that a function adheres to its postcondition (e.g. that a findMax function returns the maximal element of a list), tools demand many additional specifications. Worse even, is that a single specification cannot be checked for correctness without providing all the required specifications.
The idea of Gradual verification [1,2,3,4] was introduced to solve this problem and make static verification more useful in practice. Gradual verification supports the incremental specification and verification of programs through the sound and principled application of static (at compile-time) and dynamic (at run-time) techniques---static techniques are applied where possible and dynamic ones where necessary. As a result, a gradual verifier allows developers to pick and choose which properties and components of their system to specify without any unnecessary effort and receive immediate verification feedback. Since the introduction of gradual verification [1], we have extended the approach to support more practical programs, such as those containing recursive heap data structures (trees, graphs, lists, etc.) [2,3,4].
Student Involvement:
Students who work with me this summer will have the opportunity to work on a gradual verification project of their choosing. I have several interesting new projects for gradual verification that involve theory, building tools, and/or studying human behavior. For example, I am interested in how machine learning and large language models can be used to generate specifications supported by gradual verification. I am also interested in building a gradual verifier for the C programming language and exploring the educational impact of gradual verification through user studies. See the projects page on my website for detailed project information: https://jennalwise.github.io/projects/. Each of these endeavors will allow students to gain experience with programming language design, software development, theory, formal reasoning, logic, and empirical studies. Additionally, my goal is for students who work with me this summer to present and/or publish their work at conferences (as many of my students have done in the past).
[1] Johannes Bader, Jonathan Aldrich, and Éric Tanter. "Gradual Program Verification." In International Conference on Verification, Model Checking, and Abstract Interpretation, pp. 25-46. Springer, Cham, 2018.
[2] Jenna Wise, Johannes Bader, Cameron Wong, Jonathan Aldrich, Éric Tanter, and Joshua Sunshine. "Gradual verification of recursive heap data structures." Proceedings of the ACM on Programming Languages 4, no. OOPSLA (2020): 1-28.
[3] Jenna DiVincenzo, Ian McCormack, Conrad Zimmerman, Hemant Gouni, Jacob Gorenburg, Jan-Paul Ramos-Dávila, Mona Zhang, Joshua Sunshine, Éric Tanter, and Jonathan Aldrich. “Gradual C0: Symbolic Execution for Gradual Verification.” ACM Trans. Program. Lang. Syst. 46, 4, Article 14 (December 2024), 57 pages. https://doi.org/10.1145/3704808
[4] Conrad Zimmerman, Jenna DiVincenzo, and Jonathan Aldrich. "Sound Gradual Verification with Symbolic Execution." Proceedings of the ACM on Programming Languages 8, no. POPL (2024): 2547-2576.
- Computer Science
- Computer Engineering
- Mathematics - Computer Science
More information: https://jennalwise.github.io/projects/
Heat-shock in Colombian Phureja Potato
thermotolerance in traditional potato varieties. The student will gain experience in high-performance computing, big-data analysis, differential expression analysis, gene annotation, and analysis of the causal mechanisms underlying the observed thermotolerance.
- No Major Restriction
High efficiency HVAC membranes
The student who joins this lab will be expected to attend weekly lab meetings and sub-group meetings. They will be focusing on prototype development and evaluation. Contributions will include 3D CAD modeling, framework manufacturing, system control and data acquisition design, membrane material fabrication and testing, and ample opportunities to assist with technical writing efforts (journal articles, conference papers, grant submissions, and patent application). Once the prototype device is developed and optimized, the student will be able to assist with experiments and will be taught to run some of the experiments on their own as well. The student will be expected to give weekly progress updates and will have the opportunity to present their projects at different symposiums and conferences. The student should also be eager to collaborate with other researchers outside of mechanical engineering to draw from a broad range of expertise in pursuing our research goals.
- No Major Restriction
More information: https://www.warsinger.com/
High-throughput Electrocatalysis with Metal Oxides
- Chemistry
- Chemical Engineering
More information: https://www.chem.purdue.edu/li/
HumanAI Collaboration for Physical Task Support
Undergraduate students will contribute primarily to system development, including building AR applications and implementing computer vision features for object recognition and state tracking. They will use tools and technologies such as Unity, AR frameworks, and vision models for real-time interaction. Through this work, they will develop skills in interactive system prototyping, human-centered AI design, and HCI research methods, including user study design and evaluation.
- No Major Restriction
Identifying drug treatments for functional recovery after spinal cord injury
- No Major Restriction
More information: https://suterlab.bio.purdue.edu
Image-Based Modeling of Blood Flow and Transport in the Brain
Work in this project will involve developing patient-specific computational models of blood flow and transport using medical images of cerebral blood vessels. Using Magnetic Resonance Imaging (MRI) data, vascular geometries will be segmented and used to construct three-dimensional models of the cerebral vasculature. These models will then be used to simulate blood flow and the coupled transport of contrast agents and drugs through cerebral blood vessels.
The student will gain hands-on experience in medical image processing, vascular segmentation, three-dimensional modeling, and computational simulations of coupled flow and transport processes. The project will provide exposure to interdisciplinary research at the interface of biomedical engineering, medical imaging, and computational flow modeling.
- No Major Restriction
More information: https://engineering.purdue.edu/CFML
Immunoengineering for next-generation immunotherapies
- No Major Restriction
More information: www.matoseviclab.com
In-vivo assessment of low frequency alternating current modulation of peripheral nerve activity using dual electrode stimulation
- No Major Restriction
- Biomedical Engineering
Independent Component Analysis of fMRI time-series
- Biomedical Engineering
- Industrial Engineering
- Electrical Engineering
- Computer Engineering
More information: https://engineering.purdue.edu/ConnplexityLab
Inertial Microfluidics: Analyzing Flow Visualization Data from the NIST Cytometer
A key open question is: at what spatial scale does the particle’s inertial migration influence the surrounding flow field? To investigate this, and in collaboration with NIST Gaithersburg, we have collected fluorescence video data of particles moving through a microfluidic channel. The images reveal a characteristic U-shaped depletion zone around the particle.
The goal of this project is to analyze the experimental video data, compare it to existing finite-element simulations, and to develop a reduced-order MATLAB model to better understand the underlying flow physics. Students will gain experience in image processing, computational modeling, and interpreting fluid-mechanical experiments.
- No Major Restriction
Inertial Microfluidics: Analyzing Flow Visualization Data from the NIST Cytometer
A key open question is: at what spatial scale does the particle’s inertial migration influence the surrounding flow field? To investigate this, and in collaboration with NIST Gaithersburg, we have collected fluorescence video data of particles moving through a microfluidic channel. The images reveal a characteristic U-shaped depletion zone around the particle.
The goal of this project is to analyze the experimental video data, compare it to existing finite-element simulations, and to develop a reduced-order MATLAB model to better understand the underlying flow physics. Students will gain experience in image processing, computational modeling, and interpreting fluid-mechanical experiments.
- No Major Restriction
Investigating Bolted Connections for SpeedCore Steel Coupling Beams
The student will work at Robert L. and Terry L. Bowen Laboratory supporting ongoing research aimed at further improving the SpeedCore system. Responsibilities will include assisting graduate research assistants in constructing large‑scale test specimens for destructive testing, helping set up instrumentation, contributing to data collection and interpretation, and engaging in research discussions throughout the project. This role provides hands‑on experience with experimental structural engineering and exposure to cutting‑edge innovations in steel‑concrete composite systems.
- No Major Restriction
- Civil Engineering
More information: https://engineering.purdue.edu/Bowen
Investigating Calcium-dependence signaling in a protein pathway and their effect on actin remodeling in the egg-to-embryo transition of mammalian eggs
- No Major Restriction
More information: https://engineering.purdue.edu/ursemlab
Investigating SLGT-2i Efficacy in Treating Cardiomyopathy in Duchenne Muscular Dystrophy
- No Major Restriction
More information: https://engineering.purdue.edu/cvirl
Investigating the Anti-cancer Role of Vitamin C
- No Major Restriction
More information: https://www.mcmp.purdue.edu/faculty/zhengqf
Investigating the Expansion of Thermally Expandable Materials
- No Major Restriction
Investigating the Oncogenic Function of a Neurotransmitter
- No Major Restriction
More information: https://www.mcmp.purdue.edu/faculty/zhengqf
Investigation of Undergraduate Problem-Solving Approaches in Interdisciplinary Contexts
Student role/expectations: By participating in this project the student will build foundational qualitative research skills. This includes how to deductively and inductively analyze qualitative data via the QDATA software NVIVO, how to properly handle human subjects research data, and how to properly record qualitative analysis/data interpretations. They will also assist in the cleaning of think aloud interview transcripts prior to analysis.
- No Major Restriction
More information: https://www.bio.purdue.edu/lab/gardner/
IoT4Ag: AgBot Field Operations
- Mechanical Engineering
- Electrical Engineering
- Computer Engineering
- Computer Science
- Agricultural Engineering
More information: https://iot4ag.us/
Iron deficiency and quality of life in perimenopausal women
Student role in the project:
The undergraduate mentee will be expected to actively contribute to various aspects of the project, gaining exposure to micronutrient research. Key responsibilities include: 1. Engagement in development of research protocols: The mentee will be introduced to study design, randomization, and regulatory aspects, including ethical considerations. 2. Interacting with participant and data collection: The mentee will assist in participant recruitment, scheduling, and data collection, including the informed consent process, collection of health history, demographic information, assessment of mood and quality of family relationships, and measurements of cognitive abilities. 3. Data processing (laboratory techniques): The mentee will gain hands-on experience with blood processing and measurement of iron biomarkers via standard laboratory procedures, including ELISAs. 4. Data management and analysis: Mentee will be involved with data entry, cleaning, and preliminary analysis and will be expected to contribute to the interpretation of outcomes. 5. Collaboration and dissemination of findings: Mentee is expected to actively participate in lab meetings, present findings, collaborate with the research team, and aid in the write-up and publication of the findings.
- No Major Restriction
More information: https://hhs.purdue.edu/directory/laura-murray-kolb/
Isolation of a Monoester from other Esterification Products
- No Major Restriction
Joint solar energy harvesting and wireless communications
- Electrical Engineering Technology
- Electrical Engineering
- computer engineering
Large Language Models (LLMs) Fine-Tuning for Biological Engineering Education
Key Tasks:
1. Perform a literature search and extract meaningful action points for Socratic learning using LLMs
2. Enhance an existing LLM using a curriculum learning approach
3. Evaluate model performance on advanced evaluation tasks
4. Compare with general-purpose LLMs and traditional teaching methods
Outcome: Specialized LLM for improved Biological Engineering education. This internship offers hands-on experience in AI and Biological Engineering, which is ideal for engineering students interested in EdTech and Biological Engineering and Sciences.
Preferable majors: Biological Engineering, Agricultural Engineering, Computer Science.
- No Major Restriction
Large Language Models (LLMs) for Personalized Tutoring
Key tasks:
1. Conduct a focused literature review on LLM-based AI tutoring systems and identify feasible enhancement opportunities.
2. Design and implement research-informed feature enhancements to an existing LLM tutor.
3. Develop and execute a basic evaluation protocol to assess functionality and usability.
4. Contribute to frontend development using React and assist with GPU-enabled deployment on Purdue’s Anvil platform.
5. Document technical work, evaluation results, and research outcomes in a final written report.
- No Major Restriction
Laser Ignition of Boron Doped Particle
- No Major Restriction
More information: https://www.sciencedirect.com/science/article/pii/S0010218025000732
Learning Optimization Through Play: Designing Decision-Driven Educational Games for STEM Education
This undergraduate research project explores how digital games can be used to teach core Mathematical Optimization concepts through interactive decision-making. Students will design and develop playable game modules where players implicitly solve optimization problems—such as inventory control, routing, or competitive decision-making—through gameplay mechanics rather than traditional equations.
The project blends computer science, game design, and applied mathematics, allowing students to translate abstract optimization principles into engaging, intuitive player experiences.
________________________________________
Research Objectives:
1. Translate optimization problems into gameplay mechanics
Investigate how classical optimization topics (e.g., inventory management, routing, Stackelberg games) can be represented as meaningful player decisions.
2. Design and implement educational game modules
Develop one or more digital game prototypes that embed optimization logic within gameplay.
3. Evaluate learning and engagement outcomes
Study whether players improve their understanding of optimization concepts through gameplay.
________________________________________
Core Research Questions:
• How can mathematical optimization principles be embedded into game mechanics without requiring formal math notation?
• Which types of gameplay (turn-based, real-time, competitive, collaborative) best convey optimization trade-offs?
• Does gameplay-based learning improve conceptual understanding and decision-making intuition in STEM topics?
________________________________________
Technical Implementation:
Students will:
• Use Unity, Godot, Unreal Engine, or Blender for game development.
• Implement optimization logic using object-oriented programming (e.g., C#, Python, GDScript, C++).
• Develop AI agents using rule-based or heuristic optimization approaches.
• Integrate data tracking to log player decisions and outcomes.
________________________________________
Skills Students Will Develop:
• Game design and prototyping
• Object-oriented and logic programming
• Applied optimization modeling
• User experience (UX) and learning assessment
• Interdisciplinary research communication
________________________________________
Suitable For:
• Junior and senior undergraduates
• Majors in Computer Science, Computer Engineering, Software Engineering, or Applied Math
• Students interested in game development, AI, simulation, or educational technology
- No Major Restriction
Learning for humanoid robot whole-body control
- Mechanical Engineering
- Electrical Engineering
- Computer Science
- Computer Engineering
- Mathematics - Computer Science
More information: https://www.thetracelab.com/
Light-weight dual-use detector support structure for Particle Physics
Students will execute and implement finite element analysis of stave/dee structures able to cool detectors and as a first step also verify deflection remain minimal under load. Software such as Ansys will be provided, access to lab space for eventual prototypes and cooling labs, mechanical test setup all exists as part of the Jung lab.
- Physics
More information: https://www.physics.purdue.edu/jung/
Liquid Level Meter for a Dark Matter R&D Detector
- Physics
Lithographic Processing of Ferroelectric Oxides
Research Topic, Ferroelectric Memory: The microelectronics game remains the same as it has for decades. Do more, faster, under more extreme conditions and in a smaller footprint. For memory, demands have especially intensified. The push for near-, or in-memory, compute along with application drivers for systems that operate in ever more severe environments requires alternative approaches. In response, emergent ferroelectric memory technologies based on wurtzite and fluorite crystal structures are being increasingly pursued. Fluorite ferroelectrics based on hafnia (e.g. Hf(Zr)O2), meanwhile, exhibit requisite scaling and are CMOS compatible suggesting a way to shrink the process-memory gap. Despite this promise, each technology remains unable to meet endurance targets. It is therefore necessary to “find and fix” the defect(s) limiting lifetime. To do so, methods of processing these materials must be developed that “help” them work more than “hurt” them.
What’ You’ll Do: Team members will be responsible for developing lithographic processing recipes for optimizing the performance of both planar and non-planar ferroelectric hafnia devices. This will require demonstrated lithographic ability to be employed in Birck Nanotechnology Center. In addition, Specifically, you will use photoluminescence (fancy for glow in the dark) to assess defects induced during the processing. Direct mentoring from Dr. B will build your skills in advanced spectroscopic tools (Raman, photoluminescence), coding, technical communication and professional development. In addition, you will have the chance to participate in writing journal articles and pursuing patents based on your work.
Who we are… Specere is a latin word that means “to look or behold.” That’s what we do. We look, explore, and examine different ways to: (1) move energy with light and (2) get information from light. More specifically, we are a light lab employing physics to create spectroscopic, thermal, and sensing solutions.
- Industrial Engineering
- Materials Engineering
- Mechanical Engineering
More information: www.specere.org
Machine Learning for Semiconductor Packaging Automation
- No Major Restriction
Machine LearningDriven Reconstruction of Cardiac Flow MRI: Harmonization, Training, and Quantification
- Biomedical Engineering
- Computer Science
- Mechanical Engineering
More information: https://predictivesciencelab.org/
Making Invisible Sleep Signals Visible: Multisensory State Estimation Using Smart Textiles
- No Major Restriction
Mass spectrometry of biomolecules and nanoclusters
- No Major Restriction
More information: https://www.chem.purdue.edu/jlaskin/
Material properties of fish skin mucus
- No Major Restriction
More information: https://www.dylanwainwright.com/
Mathematical modeling to forecast the 2026 US Elections
- No Major Restriction
More information: https://c-r-u-d.gitlab.io/2024/
Micro Morphing Aircraft
Students in this role will contribute to the full research cycle: conceiving and refining morphing concepts; fabricating lightweight mechanisms and skins; integrating low-SWaP avionics, GPS/IMU sensing, and micro-actuation; and implementing onboard guidance and control algorithms suitable for resource-constrained hardware.
- Aeronautical and Astronautical Engineering
- Mechanical Engineering
- Electrical Engineering
- Robotics Engineering Technology
- Computer Science
Microbiome mediated stress resilience in tomato
- No Major Restriction
Microbiomes of Controlled Environment Agriculture
- No Major Restriction
Microfluidic system for studying the transport of therapeutics
- No Major Restriction
More information: https://engineering.purdue.edu/ComplexFlowLab/research
Modelica to Embedded C-Code Generation for Aerial Robotics with the Rumoca Compiler
The student will contribute to the development and integration of model-generated software components for use with the **Zephyr RTOS** and **Cognipilot’s Cerebri flight-control software**. The work will support drone and autonomous vehicle applications, with an emphasis on connecting high-level physical and control models to deployable embedded software.
A major part of the project will involve **firmware-in-the-loop simulation** and testing. The student will help interface embedded flight software with native simulation environments in which **sensor behavior is emulated by setting registers in the native binary**, allowing flight code to be exercised and evaluated without requiring full hardware deployment. The fellowship may also include support for drone experiments, software integration, and validation of generated components in simulated and real-world settings.
The student’s role will be hands-on and development-oriented, contributing to software integration, testing, debugging, and experimental validation across the modeling, compilation, and embedded deployment workflow. This work will help advance a toolchain for bringing model-based methods into real-time aerial robotics systems.
- Aeronautical and Astronautical Engineering
- Computer Engineering
- Electrical Engineering
- Computer Science
More information: engineering.purdue.edu/PURT
Modeling catalyst-support interaction in hydrogen fuel cells
- Chemical Engineering
- Chemistry
- Materials Engineering
- Physics
More information: https://scholar.google.com/citations?user=RprmJAsAAAAJ&hl=en
Multi-Robot Coordination for Maritime Environments
- No Major Restriction
Multimodal Perception for Robots in Occluded Environments
- No Major Restriction
More information: https://engineering.purdue.edu/ARIES
MycoBotic MIND: Bio-Hybrid Intelligent Sensing via Mycelial Integrated neuro-Electrophysiological Detection for Real-Time Environmental Monitoring in Autonomous Systems
- No Major Restriction
Neutral atom array trapping on nanophotonic circuits for quantum science and applications
- Physics
- Electrical Engineering
- Computer Engineering
More information: https://ultracold.physics.purdue.edu
Neutrophil engager to treat tumor
- No Major Restriction
More information: https://www.denglab.us/
Next-generation compact and robust 2D and 3D imaging system development
- Computer Engineering
- Electrical Engineering
- Computer Science
- Mechanical Engineering
More information: https://www.qiguo.org/
Nondestructive characterization for hybrid additive manufacturing
The project addresses the challenge of resilient manufacturing in space. We leverage ultrasonics to characterize the mechanical properties of multi-material samples made using metal additive manufacturing and strengthened with secondary processing. The samples combine recycled metal and lunar soil simulant. Researchers will help elucidate the effect of composition and processing on the resulting material properties towards safe and sustainable space manufacturing.
- No Major Restriction
Novel Deep Learning Models Informed by Physics and Domain Knowledge
- Computer Science
- Industrial Engineering
- Electrical Engineering
- Mathematics
- Chemical Engineering
Novel radiation sensors
Students are expected to have a basic nuclear engineering/physics background and be willing and able to be qualified/trained for conducting experiments with radiation sources.
- No Major Restriction
Operation and characterization of SPT-100 Hall thruster
In this project student will work with Hall thruster SPT-100. The project will include operating the thruster and hollow cathode neutralizer, and measurements of electrical parameters of the thruster, exhaust plasma jet properties, and thrust. The student will use Langmuir probes (and other diagnostics) for measurements of plasma parameters and hanging pendulum thrust stand for the thrust measurements. In addition, the student is going to prepare and update related documentation for AAE 521 Plasma Lab.
- No Major Restriction
More information: https://engineering.purdue.edu/EPPL
Optimization of Next-Generation Heat Exchangers to Enable Ultra-Efficient Data Centers
This specific project project aims to develop a new generation of compact heat exchangers (HX) that improves performance while increasing overall compactness (surface area to volume ratio) compared to conventional designs. Such heat exchangers can enable improved efficiency in the thermal management of high-power AI computing data centers. Fabrication of these heat exchangers is enabled by additive manufacturing of the complex geometries, and the exploration of new design spaces is enabled by advanced topology optimization techniques. Throughout this project, the student will gain experience with OpenFOAM, an open-source simulation library, and perform various heat transfer analysis. Also, the student will get exposed to numerical methods for generating/manipulating minimal surfaces to build heat exchangers and physical process for fabricating such objects with additive manufacturing.
- Mechanical Engineering
- Aeronautical and Astronautical Engineering
- Chemical Engineering
- Nuclear Engineering
More information: https://engineering.purdue.edu/CTRC/research/index.php; https://engineering.purdue.edu/Herrick/research
Optimize Cancer Prevention and Screening Adherence among Breast Cancer Survivors
Under faculty mentorship, the student will:
Participate in literature review
Assist with survey data analysis
Contribute to manuscripts and conference poster presentations
Work collaboratively with faculty and interdisciplinary research teams
Participate in research meetings and scholarly activities
Skills the student will develop:
Evidence synthesis and critical appraisal of scientific literature
Quantitative research skills, including survey data analysis
Understanding of cancer prevention, survivorship research
Tools and technologies may include:
Citation management software/database (e.g., EndNote, Zotero, Scite)
Statistical and data analysis tools (e.g., Excel, SPSS, R)
Survey platforms (e.g., REDCap, Qualtrics)
Data visualization tools (e.g., Excel, R)
- Nursing
- Public Health
Optimizing Resource Allocation in Time-Sensitive E-Commerce Logistics
Using examples from e-commerce fulfillment and last-mile delivery operations, the project will develop mathematical models (e.g., for order processing, dispatching, and routing) that explicitly incorporate tight time constraints and uncertainty in demand. The student is expected to use mathematical programming to study system performance under different policies, then implement and test these strategies computationally to quantify trade-offs between speed, cost, and resource utilization.
They will develop skills in: (1) Mathematical programming (e.g., linear/integer optimization), (2) Queuing theory applied to real logistics systems, (3) Programming and data analysis, using tools such as Python, optimization libraries, and optimization solver (e.g., Gurobi/CPLEX).
- No Major Restriction
Optogenetic Control of BMP Signaling and pSmad Imaging in Zebrafish Embryos
Students will gain experience in developmental biology techniques, including embryo handling, microinjection, optogenetic stimulation, and fluorescence imaging. The project also includes basic data processing and analysis of spatial signaling patterns. This work will contribute to understanding how signaling dynamics and noise influence tissue patterning during development.
- No Major Restriction
Optomechanics with Nanostructured Membranes, Super-Resolution Optical Imaging through Scatter, and Optical Imaging for Neuroscience
One project relates to optomechanics, here meaning the study of the mechanical properties of light. The group’s work includes theoretical and numerical modeling of light-matter interactions, as well as experimental work involving thin membranes. This line of investigation relates to potential applications in engineering, such as sensing and actuation, and has impacts in the fundamental sciences regarding the physics of optical forces on small length scales. The student will work on experimental aspects, including writing scripts for automating experiments and analyzing the data.
Another project involves the investigation of enhancing optical imaging and sensing capabilities. Conventional optical imaging has a theoretical limit on its spatial resolution of about one half of the wavelength, and many applications can benefit from higher resolution. This project involves the fabrication of subwavelength structures and experiments with laser illumination and relative motion between the laser the sample to access super resolution information and could involve simulation studies. Imaging through random scatter using laser light has many applications if adequate resolution can be achieved. We are currently investigating the use of pulsed laser light for imaging through scatter using speckle information, and initial results are promising.
The third project relates to the development of a fluorescence lifetime imaging framework that allows us to quantitatively track protein aggregation in microscopy studies and in vivo studies to better understand the cause of Parkinson’s disease. The primary effort relates to monitoring alpha-synuclein in live neurons and tissue phantom experiments. The work can encompass experiments using an ultrafast laser and gated camera, to capture fluorescence information, and related imaging processing studies.
- Electrical Engineering
- Physics
- Mechanical Engineering
Organelle Doppler Frequency for Tissue Dynamics Spectroscopy
- No Major Restriction
More information: https://www.physics.purdue.edu/nlo/
Origins of Life and Astrobiology Research Assistant
Potential directions include:
• Developing new Liquid Chromatography/Orbitrap-Mass Spectrometry methods to detect prebiotic species of interest.
• Modeling the thermodynamics and kinetics of biomolecule formation under planetary conditions.
• Studying microbial motility and responses to environmental stress using microscopy.
• Assisting in laboratory simulations of atmospheric, aqueous, and/or freeze–thaw environments.
The ideal student is curious, self-motivated, and excited to contribute to cutting-edge astrobiology research. A passion for astrobiology and a willingness to learn are essential; prior research experience is helpful but not required.
- No Major Restriction
More information: www.benkdpearce.com
Particle Combustion in Post-Detonation Flow
- Mechanical Engineering
- Aeronautical and Astronautical Engineering
- Chemical Engineering
More information: https://engineering.purdue.edu/GuildenbecherLab
Pattern Analysis of Player Movement for Space Creation in Soccer
The student should also have a basic understanding of soccer, including the rules of the game, player positions, and general tactical concepts such as possession, pressing, and spacing. This background is important for correctly interpreting movement patterns and placing the results in realistic game contexts.
The project will introduce the student to pattern recognition and machine learning techniques applied to sports data. These may include clustering methods (e.g., K-means, DBSCAN), dimensionality reduction techniques (e.g., PCA, UMAP), classification models, and time-series approaches such as Hidden Markov Models and recurrent neural networks. Not all techniques will necessarily be used; instead, different methods will be explored and evaluated to determine which best captures meaningful movement patterns. Through this work, the student will gain experience in data-driven sports analytics and spatio-temporal modeling.
- No Major Restriction
Pattern Analysis of Player Movement for Space Creation in Soccer
The student should also have a basic understanding of soccer, including the rules of the game, player positions, and general tactical concepts such as possession, pressing, and spacing. This background is important for correctly interpreting movement patterns and placing the results in realistic game contexts.
The project will introduce the student to pattern recognition and machine learning techniques applied to sports data. These may include clustering methods (e.g., K-means, DBSCAN), dimensionality reduction techniques (e.g., PCA, UMAP), classification models, and time-series approaches such as Hidden Markov Models and recurrent neural networks. Not all techniques will necessarily be used; instead, different methods will be explored and evaluated to determine which best captures meaningful movement patterns. Through this work, the student will gain experience in data-driven sports analytics and spatio-temporal modeling.
- No Major Restriction
Pharmacodynamic modeling of tuberculosis
- No Major Restriction
Photosensor Calibration for Dark Matter Detection
- No Major Restriction
Physical AI for manufacturing with digital twin and data analytics
- Computer Engineering
- Mechanical Engineering
- Electrical Engineering
More information: https://purduelamm.github.io/home/
Physically intelligent underactuated Structures
Physical nonlinearities in soft robotic architectures have provided a solution to address existing limitations by utilizing the robots' structure for physical control [11]. Elements such as snap-through instabilities, rate dependencies, and responsiveness to external stimuli have been integrated into soft robotics architectures to improve performance, functionality, and embodied control. By leveraging the system's mechanical response, various outputs can be encoded into the system through logic operations [11], [12], [13], alternating cycles [14], object size classification [15], [16], and an overall enhancement in robot performance [16]. However, some of these robotic architectures cannot interact with the environment and cannot use environmental changes as control signals to evolve and adapt. This work aims to design structures that interact and change in response to different environments. Specifically, we focus on structures and systems that can mechanically sense contact and, when integrated with larger systems, enable complex behaviors.
References
[1] P. Polygerinos et al., “Soft Robotics: Review of Fluid-Driven Intrinsically Soft Devices; Manufacturing, Sensing, Control, and Applications in Human-Robot Interaction,” Adv. Eng. Mater., vol. 19, no. 12, p. 1700016, Dec. 2017, doi: 10.1002/ADEM.201700016.
[2] S. Kim, C. Laschi, and B. Trimmer, “Soft robotics: a bioinspired evolution in robotics,” Trends Biotechnol., vol. 31, no. 5, pp. 287–294, May 2013, doi: 10.1016/J.TIBTECH.2013.03.002.
[3] C. Majidi, “Soft-Matter Engineering for Soft Robotics,” Adv. Mater. Technol., vol. 4, no. 2, Feb. 2019, doi: 10.1002/ADMT.201800477.
[4] D. Rus and M. T. Tolley, “Design, fabrication and control of soft robots,” Nature, vol. 521, no. 7553, pp. 467–475, May 2015, doi: 10.1038/nature14543.
[5] C. Laschi, B. Mazzolai, and M. Cianchetti, “Soft robotics: Technologies and systems pushing the boundaries of robot abilities,” Sci. Robot., vol. 1, no. 1, p. eaah3690, Dec. 2016, doi: 10.1126/scirobotics.aah3690.
[6] R. Pfeifer, M. Lungarella, and F. Iida, “The challenges ahead for bio-inspired ‘soft’ robotics,” Commun. ACM, vol. 55, no. 11, pp. 76–87, Nov. 2012, doi: 10.1145/2366316.2366335.
[7] D. Trivedi, C. D. Rahn, W. M. Kier, and I. D. Walker, “Soft Robotics: Biological Inspiration, State of the Art, and Future Research,” Appl. Bionics Biomech., vol. 5, no. 3, pp. 99–117, 2008, doi: 10.1080/11762320802557865.
[8] R. L. Truby et al., “Soft Somatosensitive Actuators via Embedded 3D Printing,” Adv. Mater., vol. 30, no. 15, p. 1706383, Apr. 2018, doi: 10.1002/ADMA.201706383.
[9] K. Chin, T. Hellebrekers, and C. Majidi, “Machine Learning for Soft Robotic Sensing and Control,” Adv. Intell. Syst., vol. 2, no. 6, p. 1900171, June 2020, doi: 10.1002/AISY.201900171.
[10] T. G. Thuruthel, B. Shih, C. Laschi, and M. T. Tolley, “Soft robot perception using embedded soft sensors and recurrent neural networks,” Sci. Robot., vol. 4, no. 26, p. eaav1488, Jan. 2019, doi: 10.1126/scirobotics.aav1488.
[11] E. Milana, C. D. Santina, B. Gorissen, and P. Rothemund, “Physical control: A new avenue to achieve intelligence in soft robotics,” Sci. Robot., 2025.
[12] S. Conrad et al., “3D-printed digital pneumatic logic for the control of soft robotic actuators,” Sci. Robot., vol. 9, no. 86, p. eadh4060, Jan. 2024, doi: 10.1126/scirobotics.adh4060.
[13] Y. Zhai et al., “Desktop fabrication of monolithic soft robotic devices with embedded fluidic control circuits,” Sci. Robot., vol. 8, no. 79, p. eadg3792, June 2023, doi: 10.1126/scirobotics.adg3792.
[14] D. Drotman, S. Jadhav, D. Sharp, C. Chan, and M. T. Tolley, “Electronics-free pneumatic circuits for controlling soft-legged robots,” Sci. Robot., vol. 6, no. 51, p. 2627, Feb. 2021, doi: 10.1126/SCIROBOTICS.AAY2627/SUPPL_FILE/AAY2627_SM.PDF.
[15] S. Zou, S. Picella, J. De Vries, V. G. Kortman, A. Sakes, and J. T. B. Overvelde, “A retrofit sensing strategy for soft fluidic robots,” Nat. Commun., vol. 15, no. 1, p. 539, Jan. 2024, doi: 10.1038/s41467-023-44517-z.
[16] J. C. Osorio, J. S. Rincon, H. Morgan, and A. F. Arrieta, “Embodying Control in Soft Multistable Robots from Morphofunctional Co‐design,” Adv. Sci., p. e03206, July 2025, doi: 10.1002/advs.202503206.
[17] L. C. Van Laake, J. De Vries, S. Malek Kani, and J. T. B. Overvelde, “A fluidic relaxation oscillator for reprogrammable sequential actuation in soft robots,” Matter, vol. 5, no. 9, pp. 2898–2917, Sept. 2022, doi: 10.1016/j.matt.2022.06.002.
[18] B. Van Raemdonck, E. Milana, M. De Volder, D. Reynaerts, and B. Gorissen, “Nonlinear Inflatable Actuators for Distributed Control in Soft Robots,” Adv. Mater., p. 2301487, July 2023, doi: 10.1002/adma.202301487.
[19] K. Boddapati, J. C. Osorio, and A. F. Arrieta, “On the Loss of Stability of Bistable Laminates due to Clamping”.
[20] P. Rothemund et al., “A soft, bistable valve for autonomous control of soft actuators,” Sci. Robot., vol. 3, no. 16, p. eaar7986, Mar. 2018, doi: 10.1126/scirobotics.aar7986.
- Mechanical Engineering
More information: https://engineering.purdue.edu/ProgrammableStructures/
Physics-Informed Machine Learning to Improve the Predictability of Extreme Weather Events
Traditionally, prediction of extreme weather events is based on direct numerical simulation of regional or global atmospheric models, which are expensive to conduct and involve a large number of tunable parameters. However, with the rapid rise of data science and machine learning in recent years, this proposed work will apply convolutional neural network to an idealized atmospheric model to conduct predictability analysis of extreme weather events within this model. With this proposed machine-learning algorithm, our project will provide a robust forecast of heat waves and atmospheric blocking with a lead-time of a few weeks. With more frequent record-breaking heat waves in the future, such a prediction will offer a crucial period of time (a few weeks) for our society to take proper preparedness steps to protect our vulnerable citizens.
This project is based on developing and verifying the machine learning algorithm for detecting extreme weather events in an idealized model. We will use Purdue’s supercomputer Bell to conduct the simulations. The undergraduate student will play an active and important role in running the idealized model, and participate in developing the algorithms. As an important component of climate preparedness, the proposed work aims to develop a physics-informed machine learning framework to improve predictability of extreme weather events.
Closely advised by Prof. Wang, the student will conduct numerical simulations of an idealized and very simple climate model, and use python-based machine learning tools to predict extreme weather events within the model. Prof. Wang will provide weekly tutorial sessions to teach key techniques along with interactive hands-on sessions. The students will get access to the big datasets on Purdue’s Data Depot, analyze and visualize data of an idealized atmospheric model. The student will use convolutional neural networks (CNNs) to train and assess a Machine-Learning model. The student will further use feature tracking algorithm to backward identify the physical structure in the atmosphere that is responsible for the onset of extreme weather events.
- No Major Restriction
- Computer Science
- Physics
- Atmospheric Science/Meteorology
More information: https://www.leiw.org
Portable AI-Empowered Tactile Sensing for Real-Time Healthcare Palpation
- No Major Restriction
More information: https://www.purduemars.com/home
Predictive modeling of aortic root dilation progression in pediatric patients
In this project, the student will contribute to building a predictive model of aortic root dilation using ultrasound imaging data and computational analysis. This is an excellent opportunity for students interested in clinically meaningful applications of machine learning in biomedical imaging.
The student will take on hands-on components of the research pipeline, such as:
Cleaning and organizing echocardiographic datasets (cine loops and diameter tracings)
Extracting quantitative features from images using existing Python tools
Training baseline predictive models (e.g., regression, random forests, or simple neural networks)
Evaluating model performance, visualizing time-series diameter curves and identifying which imaging features best capture disease progression
Contributing to the development of a preliminary manuscript or abstract for a future conference
Skills Student Will Develop:
Understanding of cardiovascular physiology and pediatric aortic disease
Practical experience working with biomedical imaging data
Using Python and associated libraries/packages
Experience with data preprocessing, feature engineering, and basic supervised learning
Scientific presentation and communication skills (student will present at the SURF symposium)
- No Major Restriction
- Biomedical Engineering
- Computer Science
- Computer Engineering
More information: https://www.youtube.com/watch?v=HkxSvFNhubg
Probing transitions in motor learning via physics-informed state-space models
Behavioral and cognitive functions emerge from the dynamic interactions of many neurons in the mammalian brain. These neural dynamics are intrinsically routed through evolutionarily preserved circuits, and understanding how circuit connectivity gives rise to neural dynamics and behavior is a central goal in systems neuroscience. For instance, humans can retain learned motor skills for many years, which requires preserved yet flexible neural codes that evolve daily as new skills are acquired. How the brain enables this flexible learning strategy under network constraints remains elusive, in part due to limitations of chronic recording technologies and scalable inference methods that can dissect how neural dynamics change as a function of underlying connectivity.
In the Nano Neurotechnology Lab, we combine innovative multimodal approaches to understand brain dynamics during skillful movement. In particular, we are interested in how emergent dynamics in the motor cortex evolve during specific transitions in motor skill acquisition and how these dynamics change over time. This project focuses on building a physics-informed inference pipeline that integrates multimodal datasets into interpretable state-space models, leveraging tools such as latent linear dynamical systems and recurrent neural network–based state-space models. The students' expected role will be to explore methods, including hidden Markov models, Bayesian state-space inference, Gaussian process priors over latent trajectories, and switching dynamical systems constrained by biophysical properties of cortical circuits. By integrating surface potentials organized as wave-like patterns with population-wide cellular recordings, these models will infer low-dimensional latent states, identify transition structure between skill phases, and link changes in connectivity to shifts in latent dynamics. The anticipated outcome of this project is a validated modeling framework and open-source toolkit that can predict learning-related transitions from ongoing neural activity and guide the design of adaptive, closed-loop BCI strategies for motor rehabilitation.
By the end of this project the student would have gained a deep knowledge on neural dynamics, latent variable analysis, and closed-loop control.
- No Major Restriction
Project Polaris: ROS2-Based Autonomous Navigation for Off-Road Agricultural Vehicles
This project will develop and validate a robust ROS2-based navigation and control stack using a scaled mini-robot operating on deformable and uneven terrain. Emphasis will be placed on terrain-aware perception, state estimation under slip conditions, and modeling dynamic load effects. The resulting software framework will be modular, simulation-compatible, and designed for seamless transfer to the full-scale Polaris Ranger platform.
- No Major Restriction
More information: https://oatscenter.org/
Project Polaris: ROS2-Based Autonomous Navigation for Off-Road Agricultural Vehicles - Telecommunication Track
This project will develop and validate a robust ROS2-based navigation and control stack using a scaled mini-robot operating on deformable and uneven terrain. Emphasis will be placed on terrain-aware perception, state estimation under slip conditions, and modeling dynamic load effects. The resulting software framework will be modular, simulation-compatible, and designed for seamless transfer to the full-scale Polaris Ranger platform.
- No Major Restriction
More information: https://oatscenter.org/
Quantum Materials for Neuromorphic Computing
- Physics
More information: https://www.physics.purdue.edu/~erica/index.html
Quantum Visual Computing
- Computer Science
- Computer and Information Technology
Quartz particle shaping and impact experiments to inform ANSYS CFX simulations
- Aeronautical and Astronautical Engineering
- Mechanical Engineering
- Materials Engineering
Radiation and Agglomeration in Metalized Solid Fuel Propulsion Environments
Metalized solid fuels, commonly containing aluminum or other reactive metals, are widely used to enhance propulsion performance. During combustion, metal particles produce intense thermal radiation that can significantly influence fuel burn rates. Despite its importance, this radiative feedback mechanism remains poorly quantified. The goal of this project is to develop and apply advanced optical diagnostics to directly measure radiative heat flux and particle properties in these extreme environments, and to connect experimental results with physics-based models.
The undergraduate researcher will contribute to experimental and analytical tasks that may include:
• Design and assembly of experimental components for combustion diagnostics
• Optical measurements of particle-laden flames (imaging, extinction, holography)
• Data processing and analysis using Python or MATLAB
• Thermal modeling related to particle combustion and radiation
• Support of laboratory experiments involving solid fuel combustion
The exact scope will be tailored to the student’s background and interests.
- Mechanical Engineering
- Aeronautical and Astronautical Engineering
- Chemical Engineering
More information: https://engineering.purdue.edu/GuildenbecherLab
Reaction Syntheses of Porous Surfaces on Dense Fe-based and Ni-based Materials
One student will focus on Fe-based materials and the other student will focus on Ni-based materials. Each student will conduct a series of reactions with powders and foils. After each reaction step, each student will evaluate changes in the morphology, phase content, and compositions of the powders and foils using optical microscopy, electron microscopy (SEM), X-ray diffraction, and (for powders) nitrogen adsorption (BET/BJH) analyses. The students will develop skills in the characterization and reaction processing of metal powders and foils.
- Materials Engineering
Real-Time FPGA Acceleration of Attention-Based Bidirectional LSTM Networks
The student will first develop and train machine-learning models using Python-based frameworks on time-series data representing analog signals. They will implement and compare baseline recurrent neural networks (LSTM) with attention-augmented bidirectional LSTM architectures, gaining experience in sequence modeling, hyperparameter optimization, and model evaluation. High-performance computing resources will be used to accelerate training and enable systematic benchmarking across model variants.
Following software validation, the student will translate the trained models to edge-computing platforms. They will deploy the models on an embedded GPU platform (e.g., NVIDIA Jetson Nano) to evaluate real-time inference performance, latency, and power consumption. In parallel, the student will assist in implementing quantized or fixed-point versions of the models on an FPGA-based platform, learning how algorithmic design choices translate into hardware constraints such as timing determinism, bandwidth, and resource utilization.
Throughout the project, the student will develop practical skills in machine learning, signal processing, embedded systems, and hardware–software co-design. Tools and technologies used in the project will include Python, PyTorch/TensorFlow, MATLAB (for signal analysis), FPGA development tools (e.g., Vivado), embedded GPU platforms, and basic instrumentation for signal generation and measurement. The project will provide hands-on experience with end-to-end system design, from data-driven modeling to real-time hardware implementation, preparing the student for future research or industry roles in AI-driven cyber-physical systems and edge computing.
- Computer Science
- Computer Engineering
Real-Time Transient Forecasting & Space Telescope Data Analysis
REFITT is an autonomous strategy-developer that uses signal prediction, probabilistic forecasting, utility estimation, and large-scale data analytics to guide global networks of telescopes toward the most scientifically valuable transient targets. It designs optimal observing strategies in real time, balancing scientific benefit, instrument capability, and observational cost to avoid duplicative efforts and maximize community scientific return.
This project will involve:
1. Integrating REFITT with LSST-scale, high-volume real-time alert streams
Developing methods for on-the-fly estimation of physical parameters from sparse, low-latency data
2. Enhancing REFITT’s forecasting, prioritization, and telescope-allocation algorithms
Building and testing simulation pipelines to evaluate and validate performance
3. Conducting scientific analysis of observations from the Hubble Space Telescope (HST) and James Webb Space Telescope (JWST)
This position offers rigorous training in modern time-domain astrophysics and also develops highly transferable computing and analytical skills sought after in industry roles involving data engineering, AI, real-time analytics, and autonomous decision-making systems.
- Physics
Regenerative Pharmaceutical Production from Fungal Mycelium in Resource-Limited Environments
producƟon in space and other environments with limited resources is a criƟcal challenge that
must be addressed. This project aims to improve the producƟon and hygienic collecƟon of
bioacƟve exudates from fungal mycelium as a potenƟal regeneraƟve plaƞorm for supplement
generaƟon.
The project will culƟvate mulƟple fungal strains, including variaƟons of Pleurotus, within
controlled mycoponic tube systems designed to support conƟnuous growth and secreƟon. The
first objecƟve will develop and evaluate sterile methods for collecƟng fungal exudates while
prevenƟng contaminaƟon. The collecƟon system will focus on extracƟng the exudates that
accumulate at the boƩom of the jar aŌer they have been secreted by the fungi. In order to
reduce the amount of liquid media that mixes with the exudates at the boƩom of the jar, an
automated pump system will be implemented for controlled media delivery, providing enough
nutrients for healthy mycelial growth while avoiding oversaturaƟon.
The second objecƟve will idenƟfy environmental and biochemical condiƟons that increase
exudate producƟon. The experiment will expose fungal cultures to controlled ultraviolet light
treatments using three wavelength ranges, UVA, UVB, and UVC. These treatments will test
whether photo stress sƟmulates metabolic secreƟon. Exudate volume, producƟon frequency,
exudate concentraƟon per mL, and mycelial growth will be recorded and compared across
treatments in order to determine which condiƟons promote the highest producƟon and the
most concentrated exudates. To further invesƟgate mechanisms of secreƟon control, the project
will integrate electrodes within the mycoponic tube system. The electrodes will monitor
environmental sƟmuli received by the fungi and may help detect differences in fungal responses
under varying light wavelengths.
Signals associated with stress responses are expected, along with measurable differences in
secreƟon behavior under different environmental condiƟons. The study will compare
producƟon across mulƟple fungal strains to determine whether different species produce
disƟnct exudates or exhibit different secreƟon rates under idenƟcal condiƟons
- Biological Engineering - multiple concentrations
- Horticulture (multiple concentrations)
Research Dissemination & Digital Engagement With Focus on Wellbeing of Caregivers of Children With Rare Genetic Conditions
The intern will also identify appropriate dissemination outlets and smaller grant opportunities to support future initiatives. In addition, the student will create visually engaging social media posts that translate research findings into accessible, shareable content.
The internship will help the student build competencies in the process of scientific writing, data management, research translation, presentation development, digital content creation, and strategic communication. The student will work with spreadsheet software, presentation tools, online funding databases, and graphic design platforms to produce professional dissemination materials.
- No Major Restriction
More information: https://kelleherlab.weebly.com/
Resource allocation to mitochondria at slow growth rates
- No Major Restriction
More information: https://ecsolab.com/
Rheo-physical measurements of surfactant pastes
- No Major Restriction
Robust Machine Learning Research
Can causality help us understand and mitigate ML robustness issues?
What is the interplay between ML explanations and robustness?
How can we perform robust collaborative learning on a dynamic network of edge devices?
Can we find robust distribution matching methods to alleviate distribution shifts?
Specific project details will be decided closer to the start date, sometimes in collaboration with the student.
- No Major Restriction
More information: https://www.davidinouye.com/
Rydberg Photonics: Combining the Best of Both Worlds for the Next Quantum Revolution
At the Quantum Nano-Photonics (QNP) Laboratory, we employ high-resolution laser spectroscopy at cryogenic temperatures, adapting techniques originally developed for atomic physics, to probe and quantify Rydberg exciton interactions in Cu₂O. Building on this foundation, we design and fabricate nanophotonic circuits—including waveguides, resonators, and beam splitters—to couple light to Rydberg excitons and exert precise control over their properties directly on a chip. In addition, we use ultrafast pulsed laser spectroscopy to excite Rydberg excitons and study their relaxation pathways and temporal dynamics. Through this unique integration of atomic-inspired spectroscopy with solid-state nanophotonics, our work establishes Cu₂O Rydberg excitons as a powerful platform for next-generation quantum photonic technologies.
- Physics
- Electrical Engineering
More information: https://engineering.purdue.edu/qnp
SCALE HI-AP: Atomistic Modeling of MXenes for Electronic Applications
MXenes are a new class of 2D metal carbides, as shown in Figure 1. Their range of chemistries and metallic conductivity makes them ideal candidates for a range of electronic applications.
Figure 1: MXene layered structures.
(Please see: https://nanohub.org/groups/scale/research/purdue/surf for the full SCALE project descriptions including images.
This project will use electronic structure calculations to characterize optical and electronic characteristics of MXenes.
Type of work
The student will play an active role in designing and running DFT simulations, defining simulation inputs, selecting materials systems, and analyzing structural, energetic and electronic properties. Through this work, the student will develop practical skills in materials modeling, scientific programming, and data analysis while gaining experience working with modern computational research tools.
By the end of the project, the student will have hands-on experience in computational materials research and machine learning, contributing to efforts to design materials and electronic components.
- Mechanical Engineering
- Materials Engineering
- Aeronautical and Astronautical Engineering
- Physics
More information: https://engineering.purdue.edu/MSE/people/ptProfile?id=33239
SCALE HI-AP: Engineering Materials for Thermal Transport for Semiconductor Packaging
Does your phone or laptop ever get too hot to touch? Within electronic devices, heat generated by the components doing calculations must be dissipated to through the electronics package to the environment to prevent failure and to protect the users. This project focuses on engineering materials with either high thermal conductivity to effectively dissipate the heat or extremely low thermal conductivity to isolate and protect delicate components in the system (or combinations of material properties that enable routing of heat within the system). A combination of experimental property measurements, microstructural analysis, and performance tests will help identify routes to achieve better performance.
Type of work
Students in this project will fabricate new materials, measure their thermal properties, analyze their microstructures, integrate them into electronic packages, and/or test their thermal performance. Note that multiple students may contribute to the project in collaboration with graduate student mentoring.
Qualifications
You must be a SCALE student to be considered for this project.
If you are not yet a SCALE student, you can concurrently apply to SCALE and to this FTR project.
Read more about SCALE and access the SCALE application link here: https://www.scale4me.org/students.
Students are not required to have prior heat transfer or materials experience to apply for and excel at this research project! It is beneficial, but not required, for students to have taken thermodynamics, fluid dynamics, and/or heat transfer courses. Programming and experimental skills are a plus.
- All Engineering Majors
More information: https://engineering.purdue.edu/MTEC
SCALE HI-AP: Interconnect Schemes for 3D Heterogeneous Integration and Advanced Packaging
As the demand for high performance computing increases, interconnect and die attach materials are needed to meet the requirements of 0.5 µm line width, sub-10 µm bump pitch, high I/O density, and power density for 1 nm Silicon Node and beyond (Figure 1). Cu-pillar or micro-bump technology with hybrid bonding has achieved sub-1 µm bump pitch posing several benefits such as increased I/O density, increased bandwidth, improved 3D stacking, enhanced power efficiency, and reduced parasitics and thermal resistance attributed to the absence of underfill. Although wafer-to-wafer (W2W) hybrid bonding can achieve 50 nm alignment accuracy; thermal budget, reliability, and chip-to-substrate hybrid bonding remain as drawbacks of this technology. In this study, novel Cu-pillar (micro-bump) bonding methods will be developed for chip-to-package interconnections at 10 µm bump pitch. Co-Packaged Optics (CPO) is an advanced heterogeneous integration of optics and silicon on a single packaged substrate aimed at addressing next generation bandwidth and power challenges. Here, bonding methodologies for CPO will be developed. Process recipes, test structures and reliability testing will be developed for fine-pitch Cu-microbumps, through Si and through glass vias and CPO for long-term reliability.
See the full project description at https://nanohub.org/groups/scale/research/purdue/surf for the image.
Type of work
Students in this project will develop new bonding methods for Cu-microbumps and evaluate reliability of test structures. Note that multiple students may contribute to the project in collaboration with graduate student mentoring.
- All Engineering
More information: https://engineering.purdue.edu/EMRSL
SCALE HI-AP: Multijunction devices for electroluminescent on-chip cooling of 3D Stacked-Die Assembly
Rapid and continuing growth of compact 3D heterogeneously integrated (3D-HI) microsystems is limited by inadequate thermal management, which requires rejecting heat from semiconductor devices. 3D-HI microsystems employed in high-performance computing (HPC) typically consists of single layer of logic with stacked memory, but stacking of multiple-tiers of logic is limited due to lack of heat dissipation from hot-spots. State-of-the-art cooling technologies have a significant footprint that constrains the size, weight, and power (SWaP) of microsystems in high performance computing, including in artificial intelligence and machine learning applications. Electroluminescence, the underlying operating principle of light-emitting diodes (LEDs), is a phenomenon where the semiconductor emits light as a result of radiative recombination of injected charge carriers. Electroluminescence in LEDs can be a cooling process, as each electron-hole pair needs to absorb additional energy in the form of thermal lattice vibrations from semiconductor lattice to emit photons equivalent to the electronic bandgap energy of the semiconductor [1].
[1] Y. Park, S. Fui, “Multijunction Electroluminescent Cooling”, PRX Energy, 3, 033002 (2024).
Type of work
Students in this project will model a multi-junction halide perovskite LEDs as a proof-of-concept for electroluminescent cooling. Note that multiple students may contribute to the project in collaboration with graduate student mentoring.
- Any Engineering
More information: https://engineering.purdue.edu/EMRSL
SCALE HI-AP: Multiphysics Simulation of Solder Separation During Surface Mount Reflow in BGA Packages
Advanced semiconductor packaging requirements for increased functionality and faster performance continue to grow for consumer devices, including automotive, medical, and mobile applications. Exposure to harsh environments in these applications requires evaluating the robustness of semiconductor packages during and after assembly. Board-level reliability testing (BLRT) evaluates the reliability of a semiconductor package once the device is soldered to a printed circuit board (PCB). While BLRT has focused mostly on thermal fatigue, failure during assembly remains a less explored critical problem. A reliability issue observed during assembly is solder separation post surface mount onto a PCB, in which a crack is observed along the interface between the intermetallic compound (IMC) and the solder ball. During the post-surface mount reflow, the solder next to the ball grid array (BGA) substrate is still molten, while the solder next to the PCB is solidified due to higher thermal dissipation on that side. This thermal gradient creates an inhomogeneous distribution of thermal expansion that produces internal stresses in the solder during solidification. These stresses may cause separation between the solder and the pad. Furthermore, due to the difference in the coefficient of thermal expansion with the BGA pad, localized stresses develop close to the BGA substrate. This may result in fracture along the interface between the intermetallic compound layer and the Sn solder ball.
In this project, 3D finite-element simulations will be used to study the mechanisms that may cause solder separation of flip chip ball grid array (FCBGA) IC packages. The numerical model will include solder solidification, IMC growth, thermal transport to account for temperature gradients and cooling rate, and mechanical response for different geometries and solder materials.
Type of work
The undergraduate researcher will focus on identifying and compiling the necessary thermodynamic, kinetic, and interfacial parameters for different solder materials from the literature and available experimental datasets, implementing these parameters in the existing simulation framework and running controlled simulation studies that vary cooling rate, thermal gradient magnitude, pad/substrate material properties, different geometries to quantify stress evolution during solidification and identify conditions that promote IMC/solder interfacial separation.
- Any Engineering
More information: https://koslowskigroup.org
SCALE RH: Advancing X-ray Spectroscopy and Radiation Shielding Solutions
Dr. Specht's interdisciplinary research spans exposure assessment, epidemiology, and physics. His projects focus on instrumentation development and optimization for application in broader health studies with a focus on the kinetics, storage, and transport of toxicants in the body for accurate implementation of novel instruments in health studies. He has projects spanning nuclear engineering, working with doctors in a clinic, or measuring live animals in the countryside. A aspect of radiation and electronics centers in his work identifying how electric fields interact with X-ray and gamma shielding design. Utilizing these fields for potential in radiation dose reduction or enhancement in the presence of varying electric fields, which has broad applications in radiation hardening of electronics.
Type of work
The student will aid in experiment design, data collection, and analysis including: gamma spectroscopy and fitting procedures; basic statistical testing; data cleaning and presentation; experiment design.
- Any Engineering
- Nuclear Engineering
More information: https://hhs.purdue.edu/directory/aaron-specht/
SCALE RH: Atomistic Modeling of Radiation Damage in Semiconductors
Understanding how radiation interacts with materials is increasingly important for technologies operating in extreme environments such as space systems, nuclear energy, and radiation-hardened electronics. High-energy particles can create permanent atomic-scale damage that alters material performance in ways that are difficult to study experimentally. Molecular dynamics simulations provide a powerful approach for modeling these processes directly.
This project uses molecular dynamics simulations to study how high-energy nuclei interact with semiconductor and metallic materials, with a focus on the formation of permanent radiation damage. The work will examine how interfaces, defects, and other microstructural features influence damage creation and evolution, helping connect atomic-scale mechanisms to material behavior.
Type of work
The student will play an active role in designing and running radiation damage simulations, defining simulation inputs, selecting materials systems, and analyzing collision cascades and defect formation. Through this work, the student will develop practical skills in molecular dynamics, scientific programming, and data analysis while gaining experience working with modern computational research tools.
By the end of the project, the student will have hands-on experience in computational materials research and radiation damage modeling, contributing to efforts to design materials and electronic components that are more resilient to radiation.
- Mechanical Engineering
- Materials Engineering
- Aeronautical and Astronautical Engineering
- Physics
More information: https://engineering.purdue.edu/MSE/people/ptProfile?id=33239
SCALE RH: Development and Application of Nuclear Techniques and Machine Learning to Study Metals and Human Health
Metals play a pivotal role in human health. On one hand, humans rely on the intake of essential metals to survive; on the other hand, exposure to toxic or nonessential metals, as well as overexposure to essential metals, leads to a myriad of diseases and adverse health outcomes such as neurodegeneration, diabetes, and cancer.
(See figure 1 in the pdf description of this research in the SCALE group in nanoHUB - to be posted shortly - https://nanohub.org/groups/scale/research/purdue/surf)
Figure 1: Nuclear Techniques in Human Health: Synchrotron X-ray Fluorescence, High Yield Deuterium-Deuterium (DD) Neutron Generator, Monte Carlo Simulation, K-x-ray Fluorescence for Bone Metal Quantification, Advanced Photon Source (APS) at Argonne National Laboratory (ANL), In Vivo Neutron Activation Analysis (IVNAA)
Dr. Nie’s group focuses on developing radiation-based instruments and methodologies for applications in human health. Students in her lab work on projects that advance neutron and X-ray technologies for measuring metals and trace elements in human bones and tissues in vivo. They also participate in high-resolution mapping of elemental concentrations and speciation in human and animal brains using state-of-the-art synchrotron facilities. These innovative approaches are applied to study metal exposure and its impact on health, the relationship between nutrition and health, and the links between metal exposure and neurodegeneration. As part of their research, students engage in Monte Carlo simulations, laboratory experiments, and data analysis. A new research direction involves leveraging artificial intelligence, particularly machine learning, to detect metal deposition patterns in healthy and neurodegenerative brains and to explore the connections between metal exposure, brain metal accumulation, and neurodegeneration.
Type of work
Students can select to work on development of novel neutron activation analysis technologies, applying machine learning in elemental mapping, or data analysis. Specifically, students can choose to: make standards for elemental quantification; conduct Monte Carlo simulations on radiation transportation; radiation instrumentation design and development; perform experiments with the neutron generator, x-ray devices, and radiation detectors available in Dr. Nie’s lab; conduct experiments at the advanced photon source (APS) synchrotron facility at Argonne National Lab; x-ray and gamma ray spectroscopy, spectral fitting, statistical data analysis; and machine learning applications.
To Apply:
In your SURF application, be sure to discuss this specific project and state how you meet the project requirements and how this project relates to your academic and professional goals.
By applying to any SCALE project, you can be considered for multiple SCALE projects with one application. Please include a short paragraph for each SCALE project that you are interested in, ranked by interest, starting with the project you are most interested in. You can view all SURF SCALE projects here: https://nanohub.org/groups/scale/research/purdue/surf.
- applied nuclear physics
- radiation sciences
- biomedical engineering
- computer science
- Engineering Majors
More information: https://hhs.purdue.edu/directory/linda-nie/
SCALE RH: Hybrid Radiation Shielding Design and Multi-objective Optimization
Microelectronics, Radiation Hardening, radiation shielding, Monte Carlo simulations, Materials
Description
Since there are multiple types of radiation in space environments, it is important to shield against these different sources. However, different materials have different levels of shielding against different radiation sources. In this project, we will devise a hybrid shielding material to protect against multiple sources of radiation (e.g., neutrons and protons). Enabling simulation tools for this study will primarily include Stopping Range of Ions in Matter (SRIM) and Geant4.
Type of work
Students will primarily use established simulation tools (such as Geant4 or SRIM) or may perform experiments to assess shielding effectiveness.
- All Engineering Majors
- Nuclear Engineering
- Electrical Engineering
- Mechanical Engineering
- Materials Engineering
SCALE RH: Modeling Radiation Effects on Semiconductor Diodes
Microelectronics, Radiation Hardening, Semiconductor Modeling, Electron Emission, Space-charge Limited Current, Theory, Device Reliability
Description
One of the important limits for semiconductor device operation is the space-charge limit, which corresponds to the maximum allowed current before no more electrons can be emitted into a diode. This limit is given by the Mott-Gurney law in a trap-free solid or the Mark-Helfrich law for a solid with traps distributed exponentially in energy. Because ionizing radiation will create electrons and ions in a semiconductor device, this project will involve elucidating the effect of these charges on these limits. This may include using simulations to characterize behavior or adapting analytic theories to include ionizing radiation effects.
Figure 1: (go to the project description in nanoHUB to view the image) Fowler-Nordheim (FN) plot demonstrating breakdown of a nanoscale device in atmospheric pressure as indicated by the spike deviating from the FN equation for field emission (in red) [H. Wang, R. S. Brayfield II, A. M. Loveless, A. M. Darr, and A. L. Garner, “Experimental study of gas breakdown and electron emission in nanoscale gaps at atmospheric pressure,” Appl. Phys. Lett. 120, 124103 (2022)]
Type of work
Some combination of analytic theory (deriving equations and using Mathematica or MATLAB to analyze performance) and simulation using commercial software depending on students’ interest and skillsets.
- All Engineering Majors
- Mathematics
- Physics
- Computer Science
More information: https://sites.google.com/site/garnerresearchgroup/
SCALE RH: Monitoring of Ionizing Radiation Dose in Impacted Electronic Components
Ionizing radiation is well-known to lead to atomic displacements/secondary radiation and malfunction of sensitive electronic components that use semiconductor chips, as well as possible degradation of structural (e.g., 3D printed) materials from lack of ductility, etc. One such area of relevance to the Department of War (DoW) would be space-based systems (manned and unmanned); these venues involve cosmic and galactic (neutron, gamma, alpha) radiation fields that can damage biological specimens and alter the performance. The dose levels may extend from the nGy (e.g., process upsets in chips due to alpha activity) and above into the kGy (0.1 MRad) and above range, from a collection of different types of high-energy (MeV+) radiation, such as gamma rays, neutrons, protons, alphas, and other charge particles. The ability to closely monitor the radiation dose comports with the mission requirements. Having an integrated sensor (either active or passive – i.e., one requiring electric power or not) alongside the system would prove valuable in this regard to help understand the life-span in real-world terrestrial and extraterrestrial locations.
To monitor for electronic component upset from alpha radiation in chips, the main emitters are isotopes of ppm quantities of U and Th in silicon chips. For such systems, students would deploy the Tensioned Metastable Fluid Detector (TMFD) technology in which a small (< 0.01g) quantity of chip is entered into the sensing fluid of the TMFD to count for alpha activity with ~100% intrinsic efficiency – and 100% blindness to beta-gamma radiation.
Figures 1 & 2 are illustrations relating to tensioned metastable fluid detector (TMFD) sensors. (Please go to the SCALE SURF research page to view the full project description, including figures).
Figure 1 depicts a Centrifugally Tensioned Metastable Fluid Detector (CTMFD) and an Acoustically Tensioned Metastable Fluid Detector (ATMFD). Figure 2 provides a comparison of the intrinsic neutron detection efficiency for TMFDs versus other state-of-the-art neutron detector types. Figure 3 presents evidence for 1 keV resolved alpha spectroscopy to enable discerning between Pu-239 and Pu-240 isotopes.
Figure 1: (A) Centrifugally Tensioned Metastable Fluid Detector (CTMFD), (B) Acoustically Tensioned Metastable Fluid Detector (ATMFD). Tensioned metastable fluid detector sensing technology for multifarious-multiscale applications in the nuclear fuel cycle. Journal of Radioanalytical and Nuclear Chemistry, 334(2), 1139–1156 (2025). https://doi.org/10.1007/s10967-024-09583-7
Figure 2. Intrinsic neutron detection efficiency comparisons between TMFD and state-of-the-art detectors. NE-213 represents a fast neutron detector; BF3 is a thermal neutron detector, and SDD is a superheated drop detector. JRANC (2025).
Figure 3: TMFD-based 1-keV resolved alpha spectroscopic identification of Pu-239 vs Pu-240. JRANC (2025).
The SCALE-SURF project will also involve adapting the novel, ultra-low cost ($0.1/unit), VOC-free, renewable polylactic acid biopolymer sensor technology referred to as PLAD to monitor for space-related higher radiation dose levels from the Gy to kGy range – involving massless photons (e.g., MeV gammas) and mass-bearing particles (neutrons and/or recoil protons) to be able to use simple laboratory techniques to adjudicate for the radiation dose. The ability to distinguish between gamma and neutron doses would be a major plus, extending that capability to also monitor the performance of future nuclear-powered propulsion and energy systems.
Figure 4: $0.1/PLAD neutron-gamma sensor beads (Left); GammaCellTM Irradiator (Right). Jiang, W., Miller, T., Barlow, T., Boyle, N., & Taleyarkhan, R. P. (2023). A Novel, Rapid Response Renewable Biopolymer Neutron and Gamma Radiation Solid-State Detector for Dosimetry and Nuclear Reactor Flux-Power Mapping. Instruments (Basel), 7(3), 26. https://doi.org/10.3390/instruments7030026.
Figure 4 shows the size and shape of PLA biopolymer resin beads (left), and Purdue University’s GammaCellTM irradiator used for gamma dosimetry. Figure 5 presents results of variation in the ratio of PLA bead mass dissolved vs. dose (neutron plus gamma radiation from Purdue University’s PUR-1 fission nuclear reactor, and gamma radiation alone. The cited reference in Instruments (2023) provides further details on how one can conduct neutron vs. gamma dosimetry.
Total Dose (kGy)
Figure 5: Illustrative results of GammaCellTM (gamma only) and PUR-1 (neutron & gamma) irradiation dose monitoring via mass dissolution physical metric – Instruments (2023).
Type of work
The selected student(s) would work in a team environment alongside experienced students and post-doctoral scholars to conduct irradiations in Purdue’s Co-60 (calibrated-certified) GammaCellTM irradiator over the Gy to kGy dose levels and then develop mathematical relations connecting physical changes in key properties of the PLAD detector (such as hardness, relative viscosity, color, hydrolysis, and swelling) with the radiation dose field using previously irradiated PLAD samples in PUR-1 (Purdue’s 10-kW research reactor) the technique(s) for near real-time readout. Separately, for ultra-low dose levels, the TMFD sensor technology will be utilized to develop a protocol for sensing the presence of alpha activity at 10-3-4 Bq type levels.
- No Major Restriction
More information: https://engineering.purdue.edu/NE/people?group_id=2780&resource_id=3700
SCALE RH: Testing Radiation Effects on Microelectronics
Microelectronics, Radiation Hardening, Failure Mechanisms, Device Reliability
Description
Commercial off-the-shelf electronics are appealing for satellite applications because of their high capabilities (e.g., processing speed or memory). While they are generally tested for reliability for terrestrial applications, most manufacturers don’t have time to test or qualify them for space applications. In this project, we’ll select a novel commercial device to test, and develop a test procedure for testing. Candidates include various types of read-only memory, microcontroller-based systems, and optical transceivers. While this work will not in itself provide spaceflight qualification, the insights provided will help inform such work at DoD, NASA, and other major entities launching space vehicles.
Type of work
We will utilize a Subcritical Assembly to expose the devices to a thermal neutron flux. The failure rate of the devices under test controlled by time and neutron flux will be studied. Using previously collected neutron flux information, several devices will be tested at once at varying neutron fluxes and durations. The devices will be initialized, and data will be collected after the irradiation to characterize the degradation. This experiment design allows for observation of varying degradation between different memory capacities, package types, neutron fluxes, and irradiation times. If time and personnel allow, we may also explore the potential effects and benefits of radiation shielding.
- Any Engineering Major
- Math
- Physics
- Computer Science
More information: https://www.scale4me.org/radiation-hardening
SCALE SoC: SoC design, verification, programming, and test
All questions about this project should go to the faculty and mentor listed on the project description.
System on Chip Extension Technologies (SoCET) is a long-running chip design team intended primarily for undergraduates to get experience in as many aspects of chip design, fabrication, and test as possible. Work on SoCET directly supports the SCALE program for which System on Chip design is one of the five specialty areas specifically targeted by SCALE.
The team is organized like a small company with sub-teams for logic design, verification, chip-layout, analog design, printed circuit board (PCB) design, test, software, and research collaborations. Research projects include AI hardware accelerators, GPU architecture, hardware security, and signal processing for space applications. Some project areas have very specific prerequisite requirements, so team leaders will work with you to evaluate your background and interests and assign you to an appropriate sub-team or special project. Almost any kind of background in circuit design, logic design, circuit simulation, computer architecture, and microcontroller programming will be useful in some but not all parts of the team. For more details on possible projects and sub-teams, see https://engineering.purdue.edu/SoC-Team.
As an example project, figure 1 illustrates how SoCET designs might use chiplets. Modern high performance SoCs are split across multiple pieces of Silicon referred to as chiplets.
Type of work:
The expected contributions will depend on the area of the SoCET to which you are assigned. Depending on your background, part of the work will involve learning skills necessary for the assignment project. Possible contributions include creation of subsystems to be used in a future chip design, creation of circuit layouts for an IC design, writing software to be used on an existing System on Chip design, FPGA prototyping, design of printed circuit boards, for IC testing, or participation in research collaborations with other faculty. See https://engineering.purdue.edu/SoC-Team for more examples.
- No Major Restriction
- Electrical Engineering
- Computer Engineering
- Computer Science
More information: https://engineering.purdue.edu/SoC-Team
Scanning Thermal Microscopy for Studying Defects in Solids
- Materials Engineering
More information: https://engineering.purdue.edu/RISE-Lab
Sensors, Computer Vision, and AI techniques for human factors engineering
- No Major Restriction
More information: https://engineering.purdue.edu/YuGroup
Sensors, Computer Vision, and AI techniques for human factors engineering
More information: https://engineering.purdue.edu/YuGroup
Sex-based differences in the gut-joint axis
- Biomedical Engineering
- Biology
- Microbiology
- Biochemistry (Biology)
- Biological Engineering - multiple concentrations
More information: engineering.purdue.edu/ChanLab
Shock wave interaction with droplets and ice crystals
- Aeronautical and Astronautical Engineering
- Mechanical Engineering
More information: https://engineering.purdue.edu/AAE/people/ptProfile?resource_id=221718
Small Scale Investigations Into Modernizing Manufacturing of Critical Salts
- No Major Restriction
Small molecule inducers of Streptomyces natural products
- No Major Restriction
More information: https://www.parkinsonlaboratory.com/
Solutions towards returning chemically contaminated infrastructure to safe use
This project will involve a student assisting a graduate student design and conduct experiments that explore how organic chemicals interact with piping materials and biofilms. This work is a results of 10+ years of experience by the research team assisting public works and public health professionals respond to and recover from disasters.
Analytical methods for the summer experiments have already been developed and optimized by the graduate student mentor. The SURF student would learn and apply these methods that include basic chemical laboratory practices and microbiological practices. Data interpretation and analysis would be carried-out based on these experiments.
- No Major Restriction
More information: https://engineering.purdue.edu/PlumbingSafety
Stem cell immunoengineering for targeted cancer therapy
genetically-enhanced immune cells from continuously renewable human pluripotent stem cell (hPSC) lines offers the potential to develop a true off-the-shelf cellular immunotherapy. While functional CAR-T and NK cells have been successfully derived from hPSCs, a significant gap remains in the scalability, time-consuming (5 or more weeks), purity and robustness of the differentiation methods due to the cumbersome use of serum, and/or feeder cells, which will incur potential risk for contamination and may cause batch-dependency in the treatment. This project thus aims to develop a novel, chemically-defined platform for robust production of CAR-T and CAR-NK cells from hPSCs. The students recruited will help to engineer stem cells with gene editing tools, differentiate stem cells into immune cells, and perform molecular and cellular assays to characterize the cells.
- No Major Restriction
More information: https://sites.google.com/view/xiaoping-bao/home
Study of quantum properties of 2d materials
- No Major Restriction
Studying the quantum properties of 2d materials
- No Major Restriction
More information: https://sites.google.com/view/zenglab2024/home
Supply Chain Management doe Resiliency
- No Major Restriction
Supply Chain Management for Resiliency
- Industrial Engineering
Sustainable Recovery of Lithium-Ion Battery Cathode Materials
- No Major Restriction
More information: https://engineering.purdue.edu/GEMSlab
Swimming efficiency of chiral microswimmers in viscosity gradients
This project studies chiral microswimmers—swimmers whose geometry or motion has a handedness (like a helix). Chirality is common in nature: it lets swimmers convert rotation into forward propulsion, and it can dramatically change how swimmers respond to their environment. Experiments have explored chiral swimmers such as E. coli, yet much of the existing theory still concentrates on non-chiral models. Our goal is to develop theory to answer how viscosity gradients change the power dissipation and swimming efficiency of chiral microswimmers. Understanding this could help explain the swimming behaviours of microswimmers in real aquatic environments and guide the design of efficient microrobots for biomedical or environmental applications.
- Chemical Engineering
- Biological Engineering - multiple concentrations
- Physics
- Chemistry
- Mathematics
More information: https://viveknarsimhan.wixsite.com/website
Synergistic effect of nanosilica and Type IL cement on concretes containing nontraditional and natural pozzolans
This project, conducted in collaboration with the Center of Durable and Resilient Transportation Infrastructure, investigates the combined effects of nanosilica and limestone content in Type IL cement on the performance of concrete incorporating NNPs. Previous mortar-scale studies have identified optimal material combinations; this phase focuses on evaluating concrete performance, including fresh properties, mechanical strength, and durability.
The undergraduate researcher will play an active role in laboratory experimentation. Responsibilities include preparing aggregates, mixing concrete, casting specimens, and conducting fresh property tests such as workability. The student will also assist in evaluating hardened properties (e.g., compressive strength) and durability performance, as well as preparing samples for microstructural analysis.
Through this experience, the student will develop hands-on skills in standardized concrete testing, experimental procedures, and laboratory safety. The project will also provide training in data analysis, visualization, and interpretation of engineering results. By the end of the program, the student will gain a strong foundation in sustainable construction materials and contribute to generating performance-based data that supports the implementation of low-carbon concrete in infrastructure applications.
- Civil Engineering, materials engineering, environmenta
Synthesis of novel 2D materials
In this project, undergraduate researchers will work on synthesizing new families of MXenes, including double transition-metal and high-entropy MXenes, and optimizing their synthesis conditions. The resulting multi-layered and few-layered MXene flakes will be characterized to understand their structure, stability, and surface properties. Students will then explore how these properties relate to MXene applications across different fields, for example, electrocatalysis for hydrogen generation, energy storage in batteries and supercapacitors, shielding against electromagnetic waves, and potential use in extreme environments.
This research will give students hands-on experience in nanomaterials synthesis, advanced characterization techniques, and application-oriented testing, while contributing to the discovery and development of next-generation materials.
Type of student work:
Synthesis of novel two-dimensional MXenes
Optimizing synthesis conditions (e.g., reaction time, temperature)
- No Major Restriction
More information: www.babakanasori.com
Synthesis of zeolite catalysts with tailored diffusion and reaction properties
- Chemical Engineering
- Chemistry
More information: https://sites.google.com/site/rgounder/
Tactile-based reactive control for robotic manipulation
More information: www.purduemars.com
Teaching Robots to See, Understand, and Predict Human Motion in 3D
- No Major Restriction
- Computer Science
- Electrical Engineering
- Computer Engineering
More information: https://ideas.cs.purdue.edu/
Technology and Society: impacts and interventions
- No Major Restriction
The Deliberate Innovation of Fusion Power: An Overview of Key Technologies and The Critical Role of Neutron Detectors
- Electrical Engineering
The biochemical and electrophysiological mechanism of post-TBI neuronal degeneration using TBI-on-a-chip
- No Major Restriction
The impact of avocado consumption on inter- and intra-individual healthoutcome responses in post-menopausal women: a pilot study
remodeling, cardiovascular health, and kidney function, increasing the risk of debilitating conditions such as osteoporosis, cardiovascular disease, and chronic kidney disease. Food-based interventions, particularly those rich in fruits and vegetables, have been shown to preserve bone mineral density, improve vascular health, and slow the decline in kidney function. These beneficial effects may be mediated through their impact on the gut microbiome, including increased short-chain fatty acid (SCFA) production. Avocados are nutrient-dense foods high in dietary fiber and other beneficial nutrients. Specifically, one medium avocado provides 10g of total fiber, with approximately 3g of this fiber being pectin. Pectin is a fermentable, viscous fiber that may provide benefits to bone, vascular, and kidney health through the production of SCFAs. However, the impact of daily avocado consumption on these health outcomes has not been explored in postmenopausal women. The goal of this proposal is to perform a pilot study evaluating the short-term effects of consuming meals with and without one medium avocado daily, providing approximately one-third of the adequate intake of dietary fiber on the gut microbiota composition, fecal SCFA, and markers of bone, vascular, and kidney health in postmenopausal women using a randomized, controlled, crossover design. Data collected will be utilized for a power analysis necessary for future grant applications. The student will be involved with data collection, analysis, and abstract/poster presentation.
- Nutrition Science
More information: https://hhs.purdue.edu/directory/annabel-biruete/
The interfaces project and AI-ready datasets
- No Major Restriction
The oocyte-to-egg and egg-to-embryo transitions in mammalian female gametes
- No Major Restriction
Thermal Cycling of Interconnects in 3D Heterogenous Integration in Packaging
- No Major Restriction
More information: https://engineering.purdue.edu/ChawlaResGroup
Tumor Stromal Targeting
- No Major Restriction
UPWARDS: AI-Assisted Design Automation of Integrated Circuits and Systems
- Electrical Engineering
- Computer Engineering
- Computer Science
More information: https://engineering.purdue.edu/~djiao/
Ultrafast Squeezed Light Generation and Control
- No Major Restriction
More information: https://ultrafast.physics.purdue.edu/
Understanding carbohydrate storage across diverse plant species
- No Major Restriction
More information: www.morganfurze.com
Underwater Robotic Manipulation
- No Major Restriction
More information: https://www.purduemars.com/home
Unraveling the mechanisms by which BAM mediates OMP biogenesis
- No Major Restriction
More information: https://www.noinajlab.com/
Untitled Project
- No Major Restriction
Using network science for precision learning intervention
- No Major Restriction
VAP 3D Printing of Energetics
- No Major Restriction
More information: https://engineering.purdue.edu/Energetics
VPS35 mediated trafficking in AD
- No Major Restriction
Velocity and depth estimation of particle rebound using computer vision and machine learning
- No Major Restriction
Video analytics for dairy feed management
dairy cattle, and automating a video system that assesses the texture consistency of feed during the mixing and preparation processes. These video systems need to be robust and accurate even in challenging environments with various illumination and shadows.
The goal of this summer project is to explore computer vision methods to incorporate into these systems. The student will implement and conduct experiments using computer vision methods applied to a relevant set of videos. Depending on the project, the student may need to label with some videos with corresponding ground truth. The student will discuss their updates at weekly meetings and will present their findings with a written report and oral presentation. The student will end the summer with a greater understanding of how video analytics can assist precision agriculture, and particularly, dairy production.
- Electrical Engineering Technology
- Computer Engineering
- Computer Science
Visual learning paradigms in mouse models of autism spectrum disorders
- No Major Restriction
More information: https://chubykinlab.wixsite.com/chubykinlab
Volumetric Imaging of Mineral Precipitation on RoughFracture Surfaces in Rock
- No Major Restriction
Wireless Synchronized Smart Wearable Network for Continuous Cardiovascular Health Monitoring in Daily Life
By measuring photoplethysmography (PPG) at distal sites (e.g., fingernails and earlobe) and synchronizing it with ECG recorded at the chest, we can compute Pulse Transit Time (PTT)—the time it takes for the arterial pulse wave to travel from the heart to peripheral sites. PTT is inversely correlated with blood pressure and serves as a key indicator of vascular health. Unlike cuff-based systems, this approach enables continuous, longitudinal blood pressure trend monitoring in everyday settings without user intervention.
The project aims to build and validate a wireless, synchronized smart jewelry network for multi-site physiological sensing and longitudinal vascular monitoring in daily life.
Student Role:
The student will analyze multi-site time-series PPG data to:
• Develop signal processing pipelines for precise synchronization and PTT extraction
• Model relationships between PTT, blood pressure trends, posture, daily activities, and nutritional factors (e.g., caffeine intake)
• Design machine learning models to predict longitudinal cardiovascular patterns
Through this project, the student will gain experience in physiological signal processing, time-series modeling, wearable sensing systems, and machine learning tools and frameworks (e.g., PyTorch or TensorFlow).
- Computer Science
- Computer Engineering
- Electrical Engineering
- Biomedical Engineering
More information: https://xueqiuyue.com/
microfluidic manipulation of biological systems
- No Major Restriction
More information: https://www.zhanlab.org/home