Agent systems and memory
OpenClawBrain is local-first AI assistant memory: retrieval, scoped memory, learned routing, calibrated abstention, replay, proof surfaces, and rollback.
I am a machine learning engineer and PhD economist focused on applied AI systems: ads bidding, ranking, agents, memory, retrieval, forecasting, experimentation, and marketplace decisions that have to work under production constraints.
At Instacart, that meant building systems for bids, rankings, availability, causal measurement, and fulfillment. One major proof point is the first optimized ads automated bidding system, now covering roughly 70% of Sponsored Products spend, about $700M annualized.
Outside work, I build OpenClawBrain, Bountiful Garden, and Project Pelican: products about trust, memory, learned routing, and decisions under uncertainty.
Bidding, ranking, auction design, pacing, causal measurement, and marketplace decision loops.
PhD Economics, UCLA. BA Statistics & Economics, UC Berkeley. Causal thinking applied in production.
Products that must decide: what to bid, what to remember, what to show, and when to route.
My work sits at the point where models stop being demos and start becoming product behavior. The common thread is building systems that choose an action, measure the outcome, and stay understandable enough to debug.
OpenClawBrain is local-first AI assistant memory: retrieval, scoped memory, learned routing, calibrated abstention, replay, proof surfaces, and rollback.
At Instacart, I built systems for bidding, ranking, forecasting, availability, fulfillment, and marketplace decisions where model outputs become real actions.
My economics background shows up in causal measurement, counterfactual thinking, calibration, experiments, monitoring, and rollout under uncertainty.
My Instacart work spans automated bidding, ranking, causal marketing measurement, availability prediction, fulfillment, and production ML. A score is not enough. The system has to decide, run reliably, and measure what happened.
I own the full loop: problem framing, data, features, model and control design, serving, experiments, rollout, monitoring, debugging, and migration.
Weekly-budget optimization, ROAS estimation, pacing, bid simulation, and bidding loops for a real ads marketplace.
Coupon and in-app marketing systems where incrementality and selection bias matter.
Models and serving paths for product-store availability, forecasting, calibration, and operational signals.
These projects share a pattern: turn fuzzy intent into systems that decide, preserve trust, and show their work.
Bountiful Garden helps neighbors share backyard produce before it goes to waste. The goal is simple: make a local exchange happen.
It is founder-shaped work: product design, trust, and marketplace mechanics for ordinary neighborhood life.
OpenClawBrain gives OpenClaw agents local, inspectable memory. The current release turns the learning loop into a production route function, so the agent learns when memory should matter, not just what to store.
The spine is deliberately accountable: LLMs propose semantic meaning, code enforces trust boundaries, SQLite stores the graph and evidence, shadow replay tests candidate policies, route-policy-v3 serves only when confidence is calibrated, and v2/heuristics remain rollback paths. Current public release: 0.2.21.
Project Pelican is a private autonomous options research system. It joins data, forecasting, risk controls, execution, and monitoring.
It is still internal. It reflects the same interest: systems that keep making measured decisions under uncertainty.
The patent portfolio reflects applied ML systems that made production decisions across bidding, marketplace design, causal targeting, retailer intelligence, and fulfillment optimization.
Issued Dec. 30, 2025. Covers reinforcement-learning control for automated bidding in content campaigns. The practical work translated advertiser objectives and outcomes into bidding policy updates for a real ads marketplace. Assignee: Maplebear Inc.; inventors include Jonathan Gu.
Additional filed or submitted work covers double-wide ad auctions, causal targeting, dynamic offers, retailer classification with LLMs, fulfillment optimization, replacement agents, and item display decisions.
Writing is where I make the logic visible: what shipped, what failed, and what still seems true after the numbers come in.
Three applied economics chapters on school grants, returns to education, and minimum wage policy.
Bayesian and instrumental-variables analysis of heterogeneous returns to education.
An older paper behind part of my learning direction. Local PDF mirror.
I am interested in applied ML, agent infrastructure, marketplace design, local software, and systems that make real decisions.
Email is best for thoughtful notes about projects, collaboration, or roles that fit.