Quantitative Analyst – Club Football

Company: Smartodds
Apply for the Quantitative Analyst – Club Football
Location: Greater London
Job Description:

We have a fantastic new opportunity to join our team at Smartodds as a Club Football Quantitative Analyst. Based in North London, Smartodds provides in‑depth research and analysis on sporting events around the world, supported by world‑class, bespoke software platforms. We are proud of our collaborative and dynamic culture, grounded in our core values of Boldness, Open‑mindedness, Ownership, and Togetherness. We are a supportive and collaborative team – our environment is open, inclusive, and focused on doing great work together.

About the role

As a member of the Quant Team, you will join an exciting environment predicting outcomes of professional sports on behalf of our clients. We focus on football, baseball, basketball, cricket, tennis, American football, ice hockey, horseracingand golf.

In this role, you will join our newly created Club Football team – a specialised sub‑team within the Quant Team – developing statistical models exclusively for football. You will work closely with our partner clubs, including Brentford FC and Mérida AD, to improve performance through two core areas:

  • In‑game strategy optimisation
  • Ratings players for the purpose of recruitment and development

This role combines rigorous statistical modelling with production engineering. You will take models from research through to deployment, writing well‑tested, documented code that integrates into our internal libraries. The atmosphere is collaborative and academic – peer reviews, research talks, and further education opportunities – but unlike academia, the market and club performance provide immediate feedback on model quality. This makes the job challenging but also very exciting.

You will have plenty of autonomy to execute your models from idea to code to validation to (hopefully) deployment. However, this autonomy operates within a structured framework: established coding patterns, weekly check‑ins, high test coverage, and strict reproducibility standards.

We highly value the personal development of our team members and you will therefore be allocated dedicated time to improve your skills and gain the necessary experience that will enable you to progress into more senior roles.

While we are open to applications from anyone who meets the minimum requirements, we would be especially keen to hear from applicants with substantial research experience and a demonstrable passion for football analytics.

Key Responsibilities

  • Contribute to identifying promising research directions; ensure research is carried out to the highest standard
  • Build models for in‑game tactical optimisation
  • Develop player recruitment models based on client needs, including player rating systems to quantify ability and performance
  • Contribute to discussions and efforts to identify weaknesses and potential improvements in existing models across all sports
  • Support club clients and internal stakeholders by developing, maintaining and supporting the mathematical libraries behind our range of tools and models, and software that delivers model predictions into production
  • Perform statistical analysis of datasets, testing well‑defined hypotheses and effectively communicating results to various stakeholders

Skills & Experience

Required

Technical

  • Either MSc in Statistics or a related field (e.g., Data Science or Mathematics) with 3+ years of relevant work experience (e.g., sports quantitative analyst for a club, betting syndicate, or bookmaker; or a PhD or equivalent). Candidates from adjacent fields (Computer Science, Engineering, Finance) are welcome provided they have solid applied statistics experience.
  • Applied statistics: solid understanding of GAMs, GLMs and ideally state‑space models.
  • Model diagnostics: ability to evaluate predictive model performance using appropriate metrics, quantify and communicate predictive uncertainty.
  • Strong programming skills in a high‑level language such as R (preferred) or Python. Must write production‑quality code, not just analysis scripts.
  • Clear written communication and documentation (including mathematical), can implement formulas from specs and code from formulas.
  • Demonstrated passion for working in sports modelling and sports analytics: evidenced by personal projects, MSc project in a related area, or statistical analyses of sports or teams.

Working style

  • Collaborative team player, with a constructive approach to receiving and applying feedback.
  • Understands the importance of reproducible research and properly tested code.
  • Thorough and reliable, with a verification mindset.
  • Ability to work autonomously while communicating proactively any blockers when needed.
  • Self‑directed researcher who generates hypotheses worth testing and sees connections across domain.

Others

  • Ability to work in the UK.

Preferred

Domain

  • A strong interest in football demonstrated by previous attempts to model outcomes or analyse data.
  • Experience with player‑level modelling.
  • Exposure to tracking data (physical metrics, positional data).
  • Good understanding of sports betting markets.

Technical

  • Comfortable in R, in particular with data.table, mgcv and testthat for unit testing.
  • Engineering discipline: unit testing, config‑driven pipelines, clean git workflow. Willing to write tests, document as you go, and follow strict code style.
  • Uses AI coding assistants as a development accelerator, not a replacement for understanding. Writes precise instructions, reviews AI‑generated diffs critically, and verifies behaviour before committing.
  • Experience with and/or knowledge of Bayesian models, state‑space models, filtering and smoothing, computational statistics and approximate inference methods.
  • Experience with and/or knowledge of machine and statistical learning, deep neural networks, feature engineering, reinforcement learning, dynamic optimisation and optimal control.
  • Experience with version control, code reviews and merge requests.
  • Experience with any additional programming languages (e.g., Python, C++ or Julia).
  • Familiarity with database technologies, e.g., SQL, MongoDB, Redis, Postgres.

What you can expect in return – Our Benefits

From Day One

  • 30 days holiday (in addition to bank & public holidays)
  • In‑house chef*
  • In‑house masseuse*
  • Team sporting events
  • 25% discount on Brentford Football Club merchandise
  • Cycle to work scheme
  • Employee Assistance Programme
  • Interest‑free travel season ticket loan
  • Offsite trips

*Available on selected days

After 3 Months

  • Pension – Employer Contribution starting at 5.5%, and employee starting at 2.5%
  • Income protection – 75% of salary (subject to terms & conditions)

After Probation

  • Dedicated time for professional development – conferences, courses, meet‑ups, networking events (at least one annually)
  • Private Medical Insurance – including coverage of any excess payment
  • Health Cash Plan via Medicash
  • Life Assurance (4 x times earnings at time of death)
  • Enhanced Company Sick Pay
  • A discretionary annual bonus

After 2 Years

  • Increase in Employer Pension to 6% (to a minimum employee contribution of 3%)
  • Enhanced Maternity Pay
  • Enhanced Paternity Pay

After 4 Years

  • Increase in Employer’s Pension to 7% (to a minimum employee contribution of 3.5%)

If this sounds like the right fit, we would love to hear from you. Please submit your CV and a cover letter explaining your interest in football analytics and highlighting relevant technical experience.

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Posted: March 28th, 2026