Practice Lead - Data Science_ UK

Infosys Limited
London
1 day ago
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Responsibilities

Serve as the primary point of contact for senior client stakeholders. Understand client business objectives and translate them into actionable analytics strategies. Drive account growth through consultative selling and solutioning.



  • Analytics & Technical Leadership: Oversee design and delivery of advanced analytics, AI/ML models, and data-driven solutions.
  • Guide technical teams on architecture, data engineering, and model development best practices.
  • Ensure compliance with data privacy, security, and regulatory standards.
  • Team Leadership & Enablement: Mentor and coach analytics professionals to build capability within the team.
  • Foster a culture of innovation, collaboration, and continuous improvement.

Qualifications

  • Preferred: Azure data science and OpenAI.
  • Proven experience in client-facing analytics leadership roles (preferably in healthcare or public sector).
  • Strong knowledge of data platforms (Azure), AI/ML frameworks, and visualization tools.
  • Expertise in stakeholder management, solution architecture, and project governance.
  • Understanding of Responsible AI, data ethics, and regulatory compliance.
  • Excellent communication, presentation, and influencing skills.

About Infosys

Today, the corporate landscape is dynamic, and the world ahead is full of possibilities. Infosys is a global leader in next-generation digital services and consulting, enabling clients in more than 50 countries to navigate their digital transformation. With four decades of experience, we steer our clients through their digital journey by enabling the enterprise with an AI-powered core and agile digital at scale. We emphasize continuous learning and a merit-based, inclusive environment. Infosys is an equal opportunity employer.


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