
Machine Learning Specialist – Systematic Trading
at Durlston Partners
Posted 19 hours ago
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A leading systematic hedge fund is hiring a Machine Learning Specialist to apply advanced ML techniques across alpha generation, execution, and risk. You will act as the subject-matter expert on ML, owning end-to-end research pipelines from feature extraction to production deployment and collaborating with quant researchers, traders, and engineers across multiple asset classes. The role emphasizes deep learning, NLP, reinforcement learning, scalable feature engineering, and deployment in high-performance trading environments.
A leading systematic hedge fund, known for its collaborative, research-driven culture, is seeking a Machine Learning Specialist to apply cutting-edge ML techniques to enhance trading strategies and infrastructure.
This is a first-of-its-kind role, where you will act as a subject matter expert in ML, working across asset classes and strategies to develop scalable, high-impact solutions.
With a highly selective team (predominantly Ivy League/Oxbridge grads) and a multi-strat, multi-asset approach, this firm offers a unique opportunity to shape the future of machine learning in systematic finance.
Key Responsibilities:
- Develop & Apply Machine Learning Solutions: Identify opportunities to integrate ML into alpha generation, execution, and risk management.
- Cross-Team Collaboration: Work with quant researchers, traders, and engineers across equities, macro, and volatility strategies.
- End-to-End Implementation: Own the ML research pipeline, from feature extraction to production deployment.
- Stay at the Cutting Edge: Leverage advancements in deep learning, NLP, reinforcement learning, and other AI techniques to enhance systematic trading.
- Multi-Asset Coverage: Apply ML methodologies across equities, vol (rates/converts), commodities, FX, and credit.
Ideal Profile:
- PhD or Master’s in Machine Learning, Computer Science, Applied Mathematics, or a related field, with a strong publication record in top ML/AI conferences.
- First-Principles Thinker: Ability to craft ML solutions tailored to high-performance trading environments.
- Extensive NLP & Feature Engineering Experience: Strong focus on scalable data analysis for signal generation.
- Strong Programming & ML Stack: Proficiency in Python, TensorFlow, PyTorch, Scikit-learn, and distributed computing.
- Quantitative Finance Exposure: Preference for candidates with quant experience, not just pure AI/ML backgrounds.





