Data Scientist

DeepRec.ai
London
2 weeks ago
Create job alert

With recent significant investment and a strong focus on machine learning-driven credit decisions, our FS client is currently expanding their team and looking for talented data scientists to join them.


They offer hybrid and remote-first work, with their engineering and data teams officially based in London but flexible depending on experience level.


Their hiring bar is high, but they foster an incredible data-driven culture, operating in cross-functional agile teams of 5-6 members.


They are particularly interested in candidates with:

✅ A strong academic background (Maths BSc + MSc but open to others)

✅ 3+ years of commercial experience in data science

✅ Strong skills in probability, statistics, and mathematical modelling

✅ Proficiency in Python, Pandas, NumPy, SciPy, R, and other scientific computing tools

✅ Experience implementing data-driven solutions in a production environment

✅ Hands-on expertise with statistical modelling, feature engineering, and A/B testing

✅ Experience with machine learning model development, including Bayesian methods and stochastic processes

✅ Understanding of financial modelling concepts, deterministic cash flow calculations (a plus, but not required)

✅ A research-driven mindset, with the ability to translate complex mathematical concepts into real-world applications


They are offering competitive salaries plus excellent benefits. The interview process includes a quick test, a take-home task, and discussions with the hiring team.

Would love to share more details—let me know if you’d be open to a quick chat!

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