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The Quant Developer will build and maintain data pipelines, improve the backtesting framework, and productionize signals into the live trading stack. They will also collaborate with researchers to translate hypotheses into robust experiments.
Candidates should have fluency in Python and SQL, experience with data engineering tools, and familiarity with cloud environments. A Bachelor's degree in a computationally heavy subject is required, with a preference for finance knowledge.
Quant Developer – Systematic Commodities Hedge Fund Moreton Capital Partners is seeking a talented Quant Developer to join our team at the ground floor of an ambitious build. We are launching live trading across global commodity futures, supported by an investment process rooted in machine learning. This is a unique opportunity to work directly with the CIO and Head of Quant Research, owning infrastructure that takes research ideas to production in a fast-moving, real capital environment. Key Responsibilities Build and maintain data pipelines ingesting futures, options, and alternative datasets (from price data from Bloomberg and vendor feeds to unstructured data). Improve backtesting framework (event-driven simulations, realistic slippage/costs, walk-forward validation, portfolio performance analysis). Support research tooling: feature libraries, experiment tracking, artefact storage. Machine learning cloud and local execution and optimization setup. Productionize signals into the live trading stack with CI/CD, monitoring, and version control. Develop dashboards and alerting for data quality, latency, and model drift. Collaborate with researchers to translate hypotheses into robust, testable experiments, as well as enhance proposed process computationally. Fluency in Python and SQL; clean, testable code is a must. Experience with data engineering (Airflow, Snowflake, pandas, polars workflows). Prior exposure to systematic trading, backtesting, or market data pipelines. Familiarity with cloud environments (AWS), containers (Docker), and CI/CD. Self-starter with the ability to work autonomously in a lean, high-ownership environment. Bachelors in CS/Comp-Eng or computationally heavy subject matter, and ideally, a minor in Finance. Bonus points for: Commodities or macro markets exposure. Systematic medium term investment exposure. Experience with ML Ops tools (MLflow, Weights & Biases), feature stores, or model monitoring. Front-end skills (TypeScript/React) to help build researcher dashboards. Impact from day one: You’ll be building mission-critical infrastructure for a fund that begins live trading this year for large institutional investors. Direct exposure: Work alongside the CIO and senior researchers, with a direct line to decision-making. Learning curve: Deep exposure to commodity markets, ML research workflows, and institutional-grade trading systems. Growth trajectory: Clear path to increased scope and compensation as the fund scales with institutional AUM. Attractive compensation: Highly competitive base salary and annual bonus that scales as the business grows. Hybrid role: Work from home and a co-work space office can be provided. Positive, inclusive and encouraging work environment.
This job posting was last updated on 9/5/2025