About this role
Choosing Capgemini means choosing a company where you will be empowered to shape your career in the way you’d like. You’ll be supported and inspired by a collaborative community of colleagues around the world. Join us to help leading organizations unlock the value of technology.
Collaborate with business stakeholders and analysts to identify, define, and prioritize Generative AI opportunities. Conduct frontend feasibility and scope assessments, evaluating use case suitability, data readiness, risk, and value potential. Filter out misscoped or unfeasible requirements before AI engineering engagement.
Partner with Generative AI engineers to research, design, and refine solutions addressing business needs. Work closely with technology and AI teams to clarify issues and ensure solutions meet business intent. Help business analysts and users during UAT, advising on solution behavior and root causes.
Research latest Generative AI trends, emerging technologies, and market best practices. Contribute to enterprise AI frameworks, playbooks, and standards. Design and develop machine learning models using enterprise platforms for automation and insights.
Requirements
- Bachelor's or Master's degree in Data Science, Computer Science, Artificial Intelligence, Engineering, Statistics, or related quantitative discipline
- 3-7 years of applied experience in AI, machine learning, analytics, and Generative AI roles
- Hands-on experience with Generative AI solutions e.g. chatbots, copilots, LLM-based tools, agentic assistants in enterprise environments
- Strong understanding of the end-to-end AI lifecycle including use case definition, feasibility assessment, evaluation, and continuous improvement
- Experience working in Agile delivery environments collaborating with product owners, business analysts, and technology teams
- Deep understanding of Generative AI models, behavior, limitations, and application frameworks
- Familiarity with cloud-based AI platforms preferably Microsoft ecosystem e.g. Azure Copilot Studio, AI Foundry
- Understanding of banking products and operating context
Responsibilities
- Collaborate with business stakeholders and analysts to identify, define, and prioritize Generative AI opportunities
- Conduct frontend feasibility and scope assessments evaluating use case suitability, data readiness, risk considerations, and value potential
- Partner with Generative AI engineers to research, design, and refine AI solutions addressing business needs
- Analyze model and solution behaviors to identify limitations like hallucinations or edge case failures and implement improvements
- Help business analysts and users during UAT for Generative AI solutions and advise on behavior root causes
- Work closely with technology and AI engineering teams to clarify issues and formalize fixes
- Design and develop machine learning models for automation, insights, and use cases
- Leverage enterprise machine learning platforms to build and deploy models effectively
Benefits
- Empowered to shape your career in the way you’d like
- Supported and inspired by a collaborative community of colleagues around the world
- Reimagine what’s possible and unlock the value of technology
- Help build a more sustainable, more inclusive world
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