OpenClawBrain
Memory and learned routing for OpenClaw. It gives repeated workflows durable local memory, keeps retrieval bounded at runtime, and improves route quality in the background from traces and corrections.
I build AI systems that learn from repeated work.
I design and operate agentic systems for code, research, operations, and markets. My current focus is OpenClawBrain, a memory and learned-routing layer for OpenClaw.
Previously ML Engineer at Instacart. PhD Economics, UCLA. BA Statistics & Economics, UC Berkeley.
Memory and learned routing for OpenClaw. It gives repeated workflows durable local memory, keeps retrieval bounded at runtime, and improves route quality in the background from traces and corrections.
Always-on AI operator for real workflows. Runs 24/7 on a headless Mac Mini via OpenClaw, managing code deployments, monitoring, triage, and sub-agent coordination.
Biotech intelligence agent turning signals into briefings. Ingests feeds, triages trial events, tracks FDA catalysts, and writes pre-market briefings for a biotech-focused asset manager.
ML-driven options trading system. Handles ingestion, feature engineering, training, calibration, and autonomous execution in one pipeline.
Neighborhood produce sharing web app. Built with React 19, Express, Postgres, and Cloudflare, with an AI agent managing development workflows.
Machine Learning Engineer