Over two decades of experience in ML/NLP, including finetuning transformer models, designing production-ready LLM and RAG systems, implementing guardrails and safety mechanisms, prompt engineering, and technical leadership across complex AI initiatives
Led the development of a scientific study/learning copilot designed to help researchers and scientific advisors navigate current literature, compare findings, and understand shifts in scientific consensus — including RAG pipelines, evaluation frameworks, guardrails, and observability
Built ethically aligned AI applications to support psychotherapy and Internal Family Systems (IFS)-inspired workflows, prioritizing human agency, safety, and responsible technology use
Conducted transformer-based machine learning research for predicting ADMET properties from SMILES molecular representations, contributing directly to drug-discovery and molecular-behavior modeling
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