Data Scientist (Mid level)

Ravelin Technology
London
5 days ago
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Who are we?

Hi! 👋 We are Ravelin! We're a fraud detection company using advanced machine learning and network analysis technology to solve big problems. Our goal is to make online transactions safer and help our clients feel confident serving their customers. We have fun in the meantime! We are a friendly bunch and pride ourselves in having a strong culture and adhering to our values of empathy, ambition, unity and integrity. We really value work/life balance and we embrace a flat hierarchy structure company-wide. Join us and you'll learn fast about cutting‑edge tech and work with some of the brightest and nicest people around – check out our Glassdoor reviews.


If this sounds like your cup of tea, we would love to hear from you! For more information check out our blog to see if you would like to help us prevent crime and protect the world's biggest online businesses.


The Team

You will be joining the Detection team. The Detection team is responsible for keeping fraud rates low — and clients happy — by continuously training and deploying machine learning models. We aim to make model deployments as easy and error‑free as code deployments. Google's Best Practices for ML Engineering is our bible. Our models are trained to spot multiple types of fraud, using a variety of data sources and techniques in real time. The prediction pipelines are under strict SLAs; every prediction must be returned in under 300ms. When models are not performing as expected, it is down to the Detection team to investigate why. The Detection team is core to Ravelin's success. They work closely with the Data Engineering Team who build infrastructure and the Intelligence & Investigations Team who liaise with clients.


The Role

We are currently looking for a Data Scientist to help train, deploy, debug and evaluate our fraud detection models. Our ideal candidate is pragmatic, approachable and filled with knowledge tempered by past failures. Evaluating fraud models is hard; often we do not even get labels for three months. You’ll need to use your judgement when investigating cases of ambiguous fraud and when you’re investigating the veracity of the model itself. We have to build robust models that are capable of updating their beliefs when they encounter new methods of fraud: our clients expect us to be one step ahead of fraud, not behind. You will be given the equipment, space and guidance you need to build world‑class fraud detection models. The work is not all green‑field research. The everyday work is about making safe incremental progress towards better models for our clients. The ideal candidate is willing to get involved in both aspects of the job – and understand why both are important.


Responsibilities

  • Build out our model evaluation and training infrastructure
  • Develop and deploy new models to detect fraud whilst maintaining SLAs
  • Write new features in our production infrastructure
  • Research new techniques to disrupt fraudulent behaviour
  • Investigate model performance issues (using your experience of debugging models)
  • Mentor junior members of the team

Requirements

  • Significant experience building and deploying ML models using the Python data stack (numpy, pandas, sklearn)
  • Understand software engineering best practices (version control, unit tests, code reviews, CI/CD) and how they apply to machine learning engineering
  • Strong analytical skills
  • Being a strong collaborator with colleagues outside of your immediate team, for example with client support teams or engineering
  • Being skilled at communicating complex technical ideas to a range of audiences
  • The ability to prioritise and to manage your workload
  • Being comfortable working with a hybrid team

Nice to haves

  • Experience with Docker, Kubernetes and ML production infrastructure
  • Tensorflow and deep learning experience
  • Experience using dbt
  • Experience with Go, C++, Java or another systems language

Benefits

  • Flexible Working Hours & Remote‑First Environment – Work when and where you're most productive, with flexibility and support
  • Comprehensive BUPA Health Insurance – Stay covered with top‑tier medical care for your peace of mind
  • ÂŁ1,000 Annual Wellness and Learning Budget – Prioritise your health, well‑being and learning needs with funds for fitness, mental health, and more
  • Monthly Wellbeing and Learning Day – Take every last Friday of the month off to recharge or learn something new, up to you
  • 25 Days Holiday + Bank Holidays + 1 Extra Cultural Day – Enjoy generous time off to rest, travel, or celebrate what matters to you
  • Mental Health Support via Spill – Access professional mental health services when you need them
  • Aviva Pension Scheme – Plan for the future with our pension program
  • Ravelin Gives Back – Join monthly charitable donations and volunteer opportunities to make a positive impact
  • Fortnightly Randomised Team Lunches – Connect with teammates from across the company over in person or remote lunches every other week on us!
  • Cycle‑to‑Work Scheme – Save on commuting costs while staying active
  • BorrowMyDoggy Access – Love dogs? Spend time with a furry friend through this unique perk
  • Weekly Board Game Nights & Social Budget – Unwind with weekly board games or plan your own socials, supported by a company budget
  • Job offers may be withdrawn if candidates do not meet our pre‑employment checks: unspent criminal convictions, employment verification, and right to work.

Seniority level

Mid‑Senior level


Employment type

Full‑time


Job function

Other


Industries

IT Services and IT Consulting


Location

London, England, United Kingdom


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