Systematic Quantitative Researcher

Anson McCade
London
4 days ago
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Systematic Quantitative ResearcherAnson McCade London, United Kingdom

Job Type:In-Office Job, Permanent

Compensation:Market Leading Base + Bonus

Our client is a leading, multi-strategy hedge fund with offices globally - engaging in systematic, process-driven proprietary trading. They build systematic strategies to capture alphas / market inefficiencies across various asset classes and horizons (HFT to LFT). This is an opportunity to be a part of a collaborative team, focusing on alpha research, and systematic strategy development.

Your future role

  • Your core objective is to create high quality predictive signals.
  • By leveraging access to large and diversified datasets you will identify statistical patterns and opportunities.
  • Share and discuss research results, methodology, data sets and processes with other researchers.
  • Implement the signals and the relevant datasets within the global execution platform.
  • Monitor signal behaviour and model performance over time.
  • You would lead the full strategy research cycle from signal generation to implementation.

Minimum Requirements

  • Min 4 years of relevant experience.
  • Advanced degree in a quantitative field such as data science, statistics, mathematics, physics or engineering.
  • Strong knowledge in statistics, machine learning, NLP or AI techniques is a plus.
  • Coding skills required in at least one leading programming language (Python, R, Matlab and/or C++, C#).
  • Experience in exploring large datasets across multiple time frames is a plus.
  • Intellectual curiosity to explore new data sets, solve complex problems, drive innovative processes and connect the dots between multiple fields.
  • Capacity to work with autonomy within a collegial and collaborative environment.
  • Strong capacity to communicate with technologists, data scientists and traders across the globe.
  • Proven track record in delivering successful systematic strategies.

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