Manager- Data Analytics & Data Modelling

Genpact
Glasgow
6 days ago
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With us, you’ll learn fast, work smart, and make a difference. You'll build a career that matters.

Ready to shape the future of work?

At Genpact, we don’t just adapt to change—we drive it. 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, tech-driven environment, love solving real-world problems, and want to be part of a team that’s shaping the future, 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 .

Inviting applications for the role of Manager , Data Analytics & D ata Modelling !

In this role, we are looking for an experienced and results-driven Senior Manager – Data Analytics & Science to lead high-impact data initiatives across our organization. The ideal candidate will have a strong foundation in data analytics, data science, and data modelling, as well as proven experience in building data models and managing data dictionaries and data lineage. This role also requires the ability to work strategically, collaborating with business stakeholders to deliver data-driven insights that influence key decisions.

Responsibilities

Lead and manage a team of data professionals in executing complex analytics, modeling, and data science projects.

Design, develop, and maintain scalable data models that support business intelligence, forecasting, and decision-making processes.

Oversee implementation and governance of data lineage and data dictionary frameworks to ensure transparency, compliance, and data quality.

Collaborate with cross-functional teams and senior stakeholders on strategic data projects , ensuring alignment with business goals.

Provide thought leadership on data science methodologies and analytics best practices.

Translate business requirements into technical solutions through advanced analytics and predictive modeling.

Drive adoption of data-driven culture across the organization by delivering actionable insights and engaging storytelling through data visualizations.

Manage data assets, ensuring proper documentation, security, and accessibility.

Monitor performance of analytics solutions and models and refine based on business needs or new data availability.

Qualifications we seek in you!Minimum Qualifications
  • Bachelor’s degree in Data Science , Computer Science, Statistics, Mathematics, Engineering, or a related field.
  • R elevant experience in data analytics, data science, and data modeling.
  • Proven experience in building and maintaining enterprise-level data models.
  • Strong working knowledge of data lineage and data dictionary management.
  • Proficiency in SQL, Python, R, or other data science tools and frameworks.
  • Experience leading data or analytics teams and mentoring junior staff.
  • Strong communication and stakeholder management skills.
Working experience of below skill sets -
  • Data Analytics
  • Data Science
  • Building of data models
  • Working knowledge of implementation of Strategic project.
  • Experience in Data Visualization and Transformation .
Preferred Qualifications/ Skills
  • Master’s degree in Data Science , Business Analytics, or related field.
  • Experience working on strategic, cross-functional data initiatives with C-level stakeholders.
  • Familiarity with cloud data platforms (e.g., Azure, AWS, GCP, Snowflake).
  • Knowledge of data governance standards, regulatory compliance, and metadata management.
  • Experience with BI and visualization tools such as Power BI, Tableau, or Looker.
  • Certification in data science, analytics, or cloud technologies (e.g., Microsoft, AWS, Google).

Be a transformation leader – Work at the cutting edge of AI, automation, and digital innovation

Make an impact – Drive change for global enterprises and solve business challenges that matter

Accelerate your career – Get hands-on experience, mentorship, and continuous learning opportunities

Work with the best – Join 140,000+ bold thinkers and problem-solvers who push boundaries every day

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 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.


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