Responsible AI Data Scientist - FACTSET

FACTSET
London
4 months ago
Applications closed

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Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Associate Director, AI & Advanced Analytics

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.

At FactSet, our values are the foundation of everything we do. They express how we act and operate , serve as a compass in our decision-making, and play a big role in how we treat each other, our clients, and our communities. We believe that the best ideas can come from anyone, anywhere, at any time, and that curiosity is the key to anticipating our clients' needs and exceeding their expectations.

About FactSet

FactSet creates flexible, open data and software solutions for over 180,000 investment professionals around the globe. We stay ahead of global market trends, power robust company and industry research, and provide comprehensive data with our market-leading solutions.

We believe today's talent powers tomorrow's innovations. As a globally inclusive community, we bring our whole selves to work, and encourage employees to join in, be heard, contribute, and grow.

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 that AI solutions are developed and deployed responsibly.

You'll design and run experiments, develop risk reduction tools, and participate in our RAI risk assessment process. Working closely with project teams, product managers, and software engineers, you will play a central role in embedding RAI principles into our products, processes, and culture.

What You'll Do

  • Evaluate and manage risks: Participate in the RAI intake and risk assessment process, identifying product deficiencies and risks.
  • Statistical analysis & modeling: Apply data science methods to evaluate AI/ML models, their performance, and potential biases.
  • Experimentation & best practices: Suggest experiments, define standards, and build/run risk reduction tools that help teams meet RAI standards.
  • Tooling & automation: Work with engineering teams to create tools for areas of high risk (e.g. model explainability, bias detection).
  • Stakeholder collaboration: Partner with project teams and business units to ensure corrective actions are implemented.
  • Process development: Help establish the RAI intake process and contribute to setting up the risk assessment framework as a product capability.
  • Training & guidance: 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+Experience in 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

At FactSet, our people are our greatest asset, and our culture is our biggest competitive advantage. Being a FactSetter means:

  • Contributing to a firm with over 40 years of consecutive growth, named a 2023 Best Place to Work by Glassdoor and led by a top-rated CEO Talent Champion .
  • Support for your total well-being. This includes health, life, and disability insurance, as well as retirement savings plans and a discounted employee stock purchase program, plus paid time off for holidays, family leave, and companywide wellness days.
  • Flexible work accommodations. We value work/life harmony and offer our employees a range of accommodations to help them achieve success both at work and in their personal lives.
  • A global community dedicated to volunteerism , sustainability , and inclusivity , where collaboration is always encouraged, and individuality drives solutions.
  • Career progression plans with dedicated time each month for learning and development.
  • Employee-led Business Resource Groups that align with our DE&I strategy and are wholly supported by Executive Management.

Learn more about our benefits here .

Company Overview:

FactSet ( NYSE:FDS | NASDAQ:FDS ) helps the financial community to see more, think bigger, and work better. Our digital platform and enterprise solutions deliver financial data, analytics, and open technology to more than 8,200 global clients, including over 200,000 individual users. Clients across the buy-side and sell-side, as well as wealth managers, private equity firms, and corporations, achieve more every day with our comprehensive and connected content, flexible next-generation workflow solutions, and client-centric specialized support. As a member of the S&P 500, we are committed to sustainable growth and have been recognized among the Best Places to Work in 2023 by Glassdoor as a Glassdoor Employees' Choice Award winner. Learn more at www.factset.com and follow us on X and LinkedIn .

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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