talk-data.com talk-data.com

Elisa Sai

Speaker

Elisa Sai

2

talks

Vice President - Analytics & AI Capgemini

Over the years, Elisa has worked with many organisations across the public and private sector leading numerous data, analytics and AI programmes. Elisa has explored different career paths (including oboe player and art historians!) before deciding to focus on delivering organisational and societal value through the insight provided by data. All these different life and career experiences have proved vital in shaping her values and determination to achieve her objectives, whilst also balancing family and personal life. Currently, she is a member of the leadership team in the Analytics & AI team in Capgemini Invent mainly focusing on advisory and strategy projects. As a strong advocate of gender diversity in the data space, she leads the Women in Analytics & AI community and Capgemini partnership with Women in Data®.

Bio from: Big Data LDN 2025

Frequent Collaborators

Filter by Event / Source

Talks & appearances

2 activities · Newest first

Search activities →
Face To Face
with Sian Thomas (Department for Business and Trade) , Elisa Sai (Capgemini) , Morgan Rees (Capgemini) , Emily Ball (Department for Science, Innovation and Technology) , Aimee Reed (Metropolitan Police Service)

Agentic AI is developing fast. Agents are not just a tool; they are learning, adapting, and making decisions alongside us. Integrating Agents into teams is not just a technical challenge, it’s a cultural one. Teams need the space to experiment, the confidence to trust AI where it helps, and the right conditions to learn together. When adoption is thoughtful and inclusive, agentic AI can become a powerful extension of how teams think, decide, and deliver.

In the era of artificial intelligence (AI), the data function within organisations plays a critical role in ensuring that AI systems are trustworthy, ethical, and aligned with business objectives. This panel discussion will delve into the essential responsibilities and contributions of data teams in the development and deployment of AI technologies, the success factors and the risk management required.