Dr. Jonathan Louis Gu Economist & Machine Learning Engineer

Building systems that fuse rigorous economic theory with production-ready machine learning. Currently at Instacart in San Francisco, focusing on marketplace optimization, availability forecasting, and growth experimentation—systems that handle billions in GMV and touch millions of customers.

Causal Inference
A/B design, guardrails, heterogeneous effects, ROI modeling.
λML Systems
JSON‑configured training, eval harnesses, feature stores, observability.
Mechanisms
Auctions, multi‑agent incentives, policy robustness.
Product
Hypothesis framing → shipped decisions → measurable impact.

About

Dr. Jonathan Louis Gu is an economist and machine learning engineer who builds systems that fuse rigorous economic theory with production-ready machine learning. Currently based in San Francisco and working at Instacart, he focuses on marketplace optimization, availability forecasting, and growth experimentation—systems that handle billions in GMV and touch millions of customers. His work sits at the point where experimental design, causal inference, and large-scale engineering meet, ensuring that complex marketplaces not only function but deliver reliably on what customers expect.

Jonathan's professional approach is defined by breadth and precision. He has designed and deployed causal measurement frameworks that capture subtle, long-term effects without sacrificing decision speed. His economic mechanism work draws on auction theory, multi-agent incentives, and market design, enabling robust policy choices that perform well in dynamic, competitive environments. In machine learning systems engineering, he favors reproducible pipelines, JSON-configured training, and feature store integration—making high-impact models auditable, observable, and low-maintenance.

With a PhD in Economics from UCLA and a BA in Statistics and Economics from UC Berkeley, Jonathan brings an academic depth that is rare in industry. His doctoral work corrected conventional update rules in reinforcement learning to better capture long-run value across states. His research also includes regression discontinuity designs and control-function approaches for education policy, as well as the optimization of bidding strategies in search auctions.

Jonathan's professional philosophy is grounded in adaptability and interdisciplinary thinking, shaped by a multicultural life across Hong Kong, California, and Boston. He believes in "树挪死, 人挪活" ("Tree Move Dead, Man Move Live")—a readiness to change environments, tools, and perspectives in pursuit of better solutions. In his view, the most valuable systems are those that endure with minimal upkeep, because they are designed from the start to work with the grain of human and market behavior.

What I Do

Product & Data Science

Frame hypotheses, design trustworthy A/Bs, and translate results into product and policy. Write clear memos with decision ranges and risks.

A/BROIGuardrails

Marketplace Reliability

Availability/forecasting pipelines that are reproducible, auditable, and fast to iterate—so reliability is a habit, not a quarterly project.

ForecastingFeature StoreSLA

Economic Mechanisms

Auctions and multi‑agent incentives. Long‑run value beats short‑term hacks; simulate sequences, not snapshots.

AuctionsPolicySimulation

ML Systems

Python/SQL/Julia. Evaluation harnesses, drift checks, and low‑maintenance production.

PythonSQLJulia

Case Studies

"First Month Free" — From Signups to Retention

Experiment design · Causal modeling · Decision memo

Designed a full‑funnel study of a subscription promotion, modeled day‑of‑week effects, and presented a decision range with risks and guardrails.

Outcome: clear ROI ranges, simplified guardrails, faster approvals.
A/BCausalROI

Reproducible Training for Availability Forecasting

JSON configs · Feature tables · Eval harness

Standardized training via JSON configs tied to feature tables; added eval harnesses and alerts so on‑call knew when, why, and how to retrain.

Outcome: fewer out‑of‑stock surprises; faster retrains; clearer on‑call.
ForecastingFeature StoreObservability

Auctions & Mechanism Design

Search auctions · Multi‑agent incentives · Policy

Worked with research groups on search auction mechanisms and bidding strategies. Emphasis on long‑run value, incentive alignment, and policy robustness.

AuctionsEconSimulation

Research & Writing

Reinforcement Learning: Corrected Update Rules

Explores update rules that prioritize long‑term value across states over immediate rewards.

Education Policy: RDD & Control Functions

Applied causal designs to student decision‑making and outcomes.

Man Move Live (树挪死,人挪活)

On adaptation across disciplines and cultures—why movement creates life.

Background

Instacart — Machine Learning Engineer

Item availability ML system and marketplace optimization (San Francisco)

Building ML systems with max reliability, speed, and low latency. Customers know when items are in stock with pinpoint accuracy. Translate experiments and models into shipped product decisions. Focus on reliability, measurement quality, and speed of iteration.

ExperimentsForecastingMechanisms

PhD, Economics

UCLA (2014–2020)

BA, Statistics & Economics

UC Berkeley (2007–2011)

Everest & Frankie (Fetch)

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Contact