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Responsible AI Data Scientist

FactSet
City of London
5 days ago
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FactSet creates flexible, open data and software solutions for over 200,000 investment professionals worldwide, providing instant access to financial data and analytics that investors use to make crucial decisions.


The Opportunity

We are seeking a Responsible AI Data Scientist to help drive FactSet’s Responsible AI (RAI) strategy. This role combines data science expertise, statistical evaluation, and risk management with the ability to work across teams to ensure AI solutions are developed and deployed responsibly.


What You’ll Do

  • Participate in the RAI intake and risk assessment process, identifying product deficiencies and risks.
  • Apply data science methods to evaluate AI/ML models, their performance, and potential biases.
  • Suggest experiments, define standards, and build/run risk reduction tools to help teams meet RAI standards.
  • Work with engineering teams to create tools for high-risk areas (e.g., model explainability, bias detection).
  • Partner with project teams and business units to ensure corrective actions are implemented.
  • Help establish the RAI intake process and contribute to setting up the risk assessment framework as a product capability.
  • Support teams in adopting RAI principles and practices.

Minimum Requirements

  • Data Science experience or degree.
  • AI/ML technical background, including experience with LLMs.
  • Python programming skills.
  • 3+ years of stakeholder management across technical and non-technical teams.
  • Awareness of the legislative landscape and regulations related to AI and data privacy.

Critical Skills

  • Strong ability to evaluate and explain models (statistical and ML-based).
  • Experience building or using risk assessment frameworks for AI/ML.
  • Strong understanding of RAI, MLOps, and Data Science fundamentals.
  • Excellent collaboration, communication, and project management skills.

Nice to Have

  • Experience with PyTorch or other ML frameworks.
  • Prior experience in risk management or compliance.
  • Experience building explainability tools or model monitoring systems.

What's In It For You

  • Contribution to a firm with over 40 years of consecutive growth, named a 2023 Best Place to Work by Glassdoor.
  • Support for your total well-being: health, life, and disability insurance, retirement savings plans, discounted employee stock purchase program, and paid time off for holidays, family leave, and companywide wellness days.
  • Flexible work accommodations.
  • A global community dedicated to volunteerism, sustainability, and inclusivity.
  • Career progression plans with learning and development time.
  • Employee-led Business Resource Groups aligned with our DE&I strategy.

Company Overview

FactSet (NYSE:FDS | NASDAQ:FDS) helps the financial community by delivering financial data, analytics, and open technology to more than 8,200 global clients, including over 200,000 individual users. As a member of the S&P 500, we are committed to sustainable growth and have been recognized as a Best Place to Work in 2023.


Location: London, England, United Kingdom.


Qualification Statement: At FactSet, we celebrate difference of thought, experience, and perspective. Qualified applicants will be considered for employment without regard to characteristics protected by law.


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