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Junior Quantitative Researcher – Sports Betting/ London/ $ 75K+ - Eka Finance

Jobs via eFinancialCareers
City of London
1 week ago
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Junior Quantitative Researcher – Sports Betting – London – Eka Finance

Leading sports betting fund is seeking a Junior Quantitative Researcher to join its expanding quantitative research team. This role offers an opportunity for an analytically minded individual with a passion for sports modelling, data science, and statistics to contribute to cutting-edge research and model development.


Responsibilities

  • Assist senior quantitative researchers in delivering research and model development projects.
  • Support clients and internal teams by developing, maintaining, and improving mathematical libraries powering predictive models and analytical tools.
  • Build and maintain software systems that deliver model outputs into production.
  • Perform statistical analysis of datasets, test hypotheses, and communicate findings effectively to key stakeholders.
  • Contribute to the ongoing enhancement of core programming libraries.
  • Participate in at least one professional development event annually focused on areas like sports analytics, statistics, machine learning, or gambling.

Skills & Experience

  • MSc in Statistics, Data Science, Mathematics, or another quantitative discipline (e.g., Computer Science, Engineering, Finance) with a strong statistical component.
  • Prior experience in a role involving significant statistical analysis.
  • Programming experience and a willingness to learn and work in R.
  • Demonstrated passion for sports modelling through projects, research, or independent analyses.
  • Commitment to continuous learning and professional growth.
  • Curiosity and enthusiasm for exploring new technologies and programming languages.
  • Eligibility to work in the UK.

Preferred

  • Strong interest in horse racing, supported by prior modelling or data analysis projects.
  • Understanding of sports betting markets.
  • Familiarity with statistical and machine learning methods (e.g., GBM, Torch, CNN, LSTM, NLP, GNN).
  • Experience with additional programming languages (e.g., Python, C++, Julia).
  • Working knowledge of database systems (e.g., SQL, MongoDB, Redis, Postgres).
  • Experience with version control, code reviews, and merge requests.
  • Familiarity with CI/CD pipelines and test-driven development (TDD).

Additional information

  • Seniority level: Internship
  • Employment type: Full-time
  • Job function: Finance and Sales


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