Developed Artificially Intelligent (AI) workflows that leverage Large Language Models (LLMs) to guide users and streamline chemical analyses, integrating Python scripts for process automation alongside evolutionary and Bayesian optimization algorithms for efficiently exploring complex experimental search spaces.
Finishing Ph.D. at Purdue University (Chopra Lab). Exploring opportunities starting in 2026 (analytical, computational, or AI‑driven R&D).
End‑to‑end automation for lipidomics MRM: worklist generation, QC agents, parsing, stats, and visualization.
Paper · Code · Project Page
Paddy is a versatile, biologically inspired evolutionary algorithm designed to efficiently optimize complex chemical systems while avoiding local minima.
Paper · Code · Project Page
An LLM-driven AI agent framework for chip-based nanoESI-MS/MS automates experimental and analytical tasks while remaining accessible, adaptable, and informed by both literature and lab-specific knowledge. Manuscript in preparation.
AI-powered LC-OzESI-MRM enables rapid, accessible, and isomer-specific fatty acid profiling to drive biomarker discovery and precision lipidomics.
Contact: SanjayIyer01@gmail.com iyer95@purdue.edu
For consulting or collaborations, include a brief summary and timeline.