Data Governance

Genpact
Milton Keynes
1 month ago
Applications closed

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At Genpact, we don’t just keep up with technology—we set the pace. AI and digital innovation are redefining industries, and we’re leading the charge. Genpact’s AI Gigafactory, our industry‑first accelerator, is an example of how we’re scaling advanced technology solutions to help global enterprises work smarter, grow faster, and transform at scale. From large‑scale models to agentic AI, our breakthrough solutions tackle companies’ most complex challenges.


If you thrive in a fast‑moving, innovation‑driven environment, love building and deploying cutting‑edge AI solutions, and want to push the boundaries of what’s possible, this is your moment.


Genpact (NYSE: G) is an advanced technology services and solutions company that delivers lasting value for leading enterprises globally. Through our deep business knowledge, operational excellence, and cutting‑edge solutions – we help companies across industries get ahead and stay ahead. Powered by curiosity, courage, and innovation, our teams implement data, technology, and AI to create tomorrow, today. Get to know us at genpact.com and on LinkedIn, X, YouTube, and Facebook.


Job Title: Data Governance tooling and Metadata Management


Location: Milton Keynes


Role Focus:


Hands‑on Data Governance tooling expert with strong metadata management experience.


Key Responsibilities:

  • Maintain and manage business metadata definitions, business rules, and reference data.
  • Support implementation and rollout of data catalogues and manage change control for metadata.
  • Promote adoption of consistent data definitions across the organization.

Tooling Expertise:

  • Experience with Collibra, Atlan, Informatica, Alation, and open‑source governance tools.
  • Familiarity with OneSource and multiple databases (Oracle, SQL Server, Snowflake, DB2).

Additional Notes:

  • Immediate requirement for 6‑month engagement with potential to scale.
  • Work directly with Head of Governance at a leading global financial institution.
  • Lead AI‑first transformation – Build and scale AI solutions that redefine industries
  • Make an impact – Drive change for global enterprises and solve business challenges that matter
  • Accelerate your career – Gain hands‑on experience, world‑class training, mentorship, and AI certifications to advance your skills
  • Grow with the best – Learn from top engineers, data scientists, and AI experts in a dynamic, fast‑moving workplace
  • Committed to ethical AI – Work in an environment where governance, transparency, and security are at the core of everything we build
  • Thrive in a values‑driven culture – Our courage, curiosity, and incisiveness - built on a foundation of integrity and inclusion - allow your ideas to fuel progress

Come join the 140,000+ coders, tech shapers, and growth makers at Genpact and take your career in the only direction that matters: Up.


Let’s build tomorrow together.


Genpact is an Equal Opportunity Employer and considers applicants for all positions without regard to race, color, religion or belief, sex, age, national origin, citizenship status, marital status, military/veteran status, genetic information, sexual orientation, gender identity, physical or mental disability or any other characteristic protected by applicable laws. Genpact is committed to creating a dynamic work environment that values respect and integrity, customer focus, and innovation.


Furthermore, please do note that Genpact does not charge fees to process job applications and applicants are not required to pay to participate in our hiring process in any other way. Examples of such scams include purchasing a 'starter kit,' paying to apply, or purchasing equipment or training.


Seniority level:

Mid‑Senior level


Employment type:

Full‑time


Job function:

Information Technology


Industries:

Information Services


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