We are building the AI Operator for growth to replace the traditional ad agency with autonomous code. We apply the quant rigor of high-frequency trading to optimize ad spend, delivering a massive 20-50% upside in efficiency for our partners.
We are already managing critical spend for global category leaders like Cider and Cupshe with a clear path to managing billions of dollars in autonomous volume. We are backed by Quiet Capital and are looking for early engineers to join us in San Francisco.
We are looking for a Machine Learning Engineer to build the models, optimization systems and algorithms that drive our autonomous decision engine.
You will not just build models; you will design the core financial strategies that dictate how millions of dollars are deployed and the execution layer that carries them out. Your role is to find inefficiencies in the ad markets, translate them into automated trading strategies and build the write-path integrations that execute those decisions in the real world.
We are looking for builders who can bridge the gap between theoretical research and production systems. You are pragmatic enough to ship an 80% solution in a week to capture immediate value but disciplined enough to evolve that solution into a robust, generalized platform that manages risk at scale.
Design the Trading Strategies: Build the core algorithms that govern our decision-making. You will develop value models that predict customer LTV, risk-aware optimizers that allocate budget across channels and detection systems that identify creative fatigue before it kills performance.
Build the Execution Layer: You won't just predict the optimal bid; you will write the integrations that execute it. You will build the API connectors for Meta, Google and TikTok that robustly update bids, budgets and targets in real-time.
Deploy and Monitor at Scale: You own the model lifecycle from notebook to production. You will build the observability infrastructure to detect concept drift, monitor inference latency and ensure our trading decisions remain stable as market conditions change.
Backtest and Verify: Build the simulation infrastructure required to prove your strategies work before capital is deployed. You will ensure our logic is robust to market volatility and generalizes across different client verticals.
A Senior Practitioner: You have 4+ years of experience applying machine learning and optimization to real-world problems. You understand that Deep Learning is a tool, not a religion, and you are equally comfortable with classical ML, regression analysis and control theory.
A System Builder: You view problems as opportunities to build platform capabilities, not one-off scripts. You have extensive experience deploying models into high-throughput production environments and know how to handle API rate limits, retries and failure states.
Math Fluent: You have a strong grasp of probability, statistics and linear algebra. You can read a research paper and implement it, but you know when a simple heuristic is the better engineering choice.
Pragmatic: You prioritize velocity and P&L impact. You ship fast to validate hypotheses and iterate based on live feedback from the market.
Mathematical Depth: You have taken a rigorous course in Convex Optimization and understand how to formulate and solve complex constraint problems.
AI-Native Workflow: You are an accelerator who uses tools like Cursor, Claude Code or Codex to write boilerplate and tests so you can focus on high-level logic.
Domain Experience: Experience in quantitative finance, algorithmic trading or programmatic advertising (RTB).
Salary: $160,000 – $240,000
Equity: Significant equity package
Food: Daily lunch and (optional) dinner
Relocation: Relocation support for candidates moving to the Bay Area
Benefits: Comprehensive health, dental, vision and unlimited PTO
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