Poesis

Founding Quant Developer

Poesis Remote Today
engineering

About Poesis
Poesis is the AI-native investment manager pioneering a new foundation model for investing in U.S. equities. We're building modular AI systems to predict market movements and outperform legacy managers. This is frontier research with immediate real-world validation. Your work will directly shape investment decisions and portfolio performance.

Location & Workstyle
San Francisco Bay Area (near Stanford). Hybrid: several days on-site per week.

Relocation available.

About the Role

Poesis is building an ML-driven hedge fund focused on ML driven trading. We’re hiring a Founding Quant Engineer to help turn research ideas into production-grade code. You’ll work alongside the Head of Engineering and Chief Scientist to build data pipelines, implement models, and ensure results are clean, reproducible, and explainable.

This is a hands-on, high-learning-curve role ideal for someone with strong technical fundamentals who wants exposure to both engineering and quantitative finance in a startup setting. This is a highly execution-oriented role: you’ll receive strong direction from Poesis’ Chief Scientist and CEO and be responsible for turning their research ideas and specifications into tested, production-ready code.

Responsibilities

  • Rapidly implement and iterate on research ideas and model prototypes.

  • Clean, process, and join financial and fundamental datasets from both professional and public sources.

  • Build and maintain scripts for feature generation, back-testing, and model evaluation.

  • Run experiments, summarize quantitative results, and report findings to leadership.

  • Contribute to code quality: testing, documentation, and integration into shared systems.

  • Support the Head of Engineering in defining data schemas, APIs, and reproducibility standards.

  • Directly support the Chief Scientist (CSO) and Chief Executive Officer (CEO) by implementing, testing, and refining models, signals, and analytical workflows.

  • Maintain a consistent cadence of deliverables—focusing on iteration speed and reliability.

Required Competencies

  • BS or MS in Computer Science, Mathematics, Statistics, Physics, Finance or related quantitative field.

  • Strong Python skills (pandas, numpy, scipy, matplotlib); comfort with SQL.

  • Experience working with real-world datasets and building reproducible analyses or pipelines.

  • Basic understanding of statistics, regression, optimization, and ML fundamentals.

  • Clear communicator who can explain technical findings to non-specialists.

  • Willingness to work in-person in the Bay Area and collaborate closely with a small founding team.

  • Professional experience in financial data science.

Preferred Competencies

  • Prior internship or project experience in finance, data science, or ML engineering.

  • Familiarity with APIs from Bloomberg, CapIQ, FactSet, or Refinitiv.

  • Exposure to portfolio optimization, risk modeling, or financial time-series.

  • Experience with git, Docker, and modern orchestration tools (Prefect, Airflow, etc.).

  • Early-stage startup experience or demonstrated builder mindset.

Profile

  • You’re early in your career but serious about mastering both data engineering and quantitative modeling.

  • You want to see your code directly influence trading and investment decisions.

  • You thrive in a small, fast-moving environment with direct mentorship and high ownership.

  • You care about correctness, clarity, and learning the “why” behind financial data.

Benefits: High quality dental, vision, and health care

Current legal authorization to work in the US required; visa sponsorship considered later for full-time employees.

Sponsored

Explore Engineering

Skills in this job

People also search for