Skip to content
Home
Research Areas
Our People
Current
Alumni
Projects
Publications
Teaching
Books
Introduction to Data Science
Introduction to Scientific Machine Learning
Advanced Scientific Machine Learning
Home
Research Areas
Our People
Current
Alumni
Projects
Publications
Teaching
Books
Introduction to Data Science
Introduction to Scientific Machine Learning
Advanced Scientific Machine Learning
Research Areas
Our People
Current
Alumni
Projects
Publications
Teaching
Books
Contact Us
Home
»
Our People
Our People
Meet the team behind the Predictive Science Laboratory — faculty, postdoctoral researchers, and students advancing scientific machine learning and engineering innovation.
Current Members
Faculty
Ilias Bilionis
Professor of Mechanical Engineering
School of Mechanical Engineering, Purdue University
Scientific machine learning, uncertainty quantification, information field theory
ibilion@purdue.edu
Research Scientists
Atharva Hans
Research Scientist
Regenstrief Center for Healthcare Engineering, Purdue University
Scientific machine learning, uncertainty quantification, physics-informed deep learning, 4D flow MRI, cardiovascular hemodynamics, medical image analysis, agentic AI for scientific workflows
hans1@purdue.edu
Postdoctoral Researchers
Alex Alberts
Postdoctoral Researcher
School of Mechanical Engineering, Purdue University
Information field theory, inverse problems, uncertainty quantification, Gaussian processes, scientific machine learning
albert31@purdue.edu
Manoja Rajalakshmi Aravindakshan
Postdoctoral Researcher
School of Mechanical Engineering, Purdue University
Lumped parameter modelling, Organ-on-chip models, Scientific machine learning
maravind@purdue.edu
Graduate Students
Abhishek Singh
PhD Student in Mechanical Engineering
School of Mechanical Engineering, Purdue University
Inverse problems; Bayesian inference; uncertainty quantification; data assimilation; physics-informed ML; volumetric PIV/PTV; 4D Flow MRI; spatiotemporal flow reconstruction
sing1062@purdue.edu
Andrew Voss
MS Student, Mechanical Engineering
McCallie School
Bayesian Optimal Experiment Design, Additive Manufacturing, Aerospace Structures, Loads, and Dynamics, and curriculum design
voss35@purdue.edu
Angkon Biswas
PhD Student in Biomedical Engineering
Weldon School of Biomedical Engineering
Biomedical Imaging, Computer Vision, Deep Learning, Biofluid mechanics, Computational Fluid Dynamics, Particle Imaging Velocimetry
biswas61@purdue.edu
Anubhav Dey
PhD Student in Mechanical Engineering
School of Mechanical Engineering, Purdue University
Scientific machine learning, uncertainty quantification, Bayesian inverse problems
dey24@purdue.edu
Ben C. Wassgren
MS Student, Mechanical Engineering
School of Mechanical Engineering, Purdue University
bwassgre@purdue.edu
Jaehyun Go
PhD Student in Civil Engineering
Lyles School of Civil Engineering, Purdue University
Building energy modeling, Bayesian decision-making, uncertainty quantification, smart building systems
go16@purdue.edu
Mark Wilkinson
PhD Student in Mechanical Engineering
School of Mechanical Engineering, Purdue University
Scientific machine learning, Finite elements, Solid mechanics, Bayesian Inverse problems, Group theory
wilki114@purdue.edu
Maxwell Bolt
PhD Student in Mechanical Engineering
School of Mechanical Engineering, Purdue University
Scientific machine learning, AI agents for scientific discovery, stochastic differential equations
boltm@purdue.edu
Motahareh Mirfarah
PhD Student in Mechanical Engineering
School of Mechanical Engineering, Purdue University
Scientific machine learning, Bayesian inverse problems, uncertainty quantification, model form uncertainty, cyber-physical systems
mmirfara@purdue.edu
Rohan Dekate
PhD Student in Mechanical Engineering
School of Mechanical Engineering, Purdue University
Operator Learning, Scientific Machine Learning, Uncertainty Quantification, Bayesian Inverse Problems, Computer Vision, Computational Imaging, Numerical Optimization
dekate@purdue.edu
Shrenik Zinage
PhD Student in Mechanical Engineering
School of Mechanical Engineering, Purdue University
Scientific Machine Learning, Uncertainty Quantification, Causality, Digital Twins, Control
szinage@purdue.edu
Sreehari Manikkan
PhD Student in Mechanical Engineering
School of Mechanical Engineering, Purdue University
Bayesian inverse problems, Dynamics discovery, Autonomous cyber physical systems, Digital twins
smanikka@purdue.edu
Wesley Holt
PhD Student
Mechanical Engineering
Scientific machine learning, Bayesian hierarchical modeling, information field theory, agentic AI, pharmacokinetic modeling
holtw@purdue.edu
Undergraduate Students
Aryan Goel
Undergraduate Research Assistant
School of Science, Purdue University
Computational graph frameworks, Domain-specific languages for AI
goel137@purdue.edu
Christian Riddle
Undergraduate Research Assistant
School of Mechanical Engineering, Purdue University
Causality, Scientific Machine Learning
riddle37@purdue.edu
Darian Clarke Douglas
Undergraduate Research Assistant
College of Engineering, Purdue University
Extraterrestrial Habitats, Damage Prediction in Space, Category Theory
dougl154@purdue.edu
Hudson Schneider
Undergraduate Research Assistant
Department of Agricultural and Biological Engineering, Purdue University
Bayesian computation, agentic AI, pharmacokinetic modeling and calibration, compartmental pharmacokinetic analysis
schne167@purdue.edu
Jonathan Baldini
Undergraduate Research Assistant
School of Mechanical Engineering, Purdue University
Uncertainty quantification, sensitivity analysis
jbaldin@purdue.edu
Jordan Reynolds
Undergraduate Research Assistant
Department of Mathematics, Purdue University
AI-assisted scientific software development, dynamical systems modeling, pharmacokinetic modeling workflows
reyno223@purdue.edu
Maurice Reimer
Undergraduate Research Assistant
School of Mechanical Engineering, Purdue University
LLM agents
reimerm@purdue.edu
Rachel D’Souza
Undergraduate Research Assistant
Elmore Family School of Electrical and Computer Engineering, Purdue University
Optical/photonic device testing & lifetime measurements, Experimental design & quantitative data analysis, Proteomics data preprocessing & normalization (R), Statistical testing & biomarker discovery modeling, Computational biology visualization & interpretation, Scientific writing & research communication, Cross-disciplinary research integration
dsouza36@purdue.edu
Saivisvesh (Sai) Karthik
Undergraduate Research Assistant
School of Biomedical Engineering, Purdue University
karthik9@purdue.edu
Sophia Vlachos
Undergraduate Research Assistant
School of Biomedical Engineering, Purdue University
svlachos@purdue.edu
Virginia Luo
Undergraduate Research Assistant
College of Science, Purdue University
luo590@purdue.edu