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Jane Smith

Speaker

Jane Smith

2

talks

Field Chief Data & AI Officer ThoughtSpot

Jane is Field Chief Data & AI Officer at ThoughtSpot, the world's leading Agentic Analytics platform. Jane was previously Chief Data Officer at Simply Business, a leading InsureTech and has held data leadership positions at GlaxoSmithKline and Ipsos. Jane is also a keynote speaker focusing on business adoption of AI as well as the broader societal, ethical and philosophical implications of AI.

Bio from: Big Data LDN 2025

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Buckle up for a bold ride into the future of performance intelligence. In this session, Keyloop - one of the world’s top digital innovators in automotive retail shares how it’s putting data in the driver’s seat to revolutionise decision-making.

Powered by ThoughtSpot and AWS first-party technologies, get an inside look at VEGA, their next-gen AI-powered performance intelligence platform. No dashboards. No bottlenecks. Just real-time, actionable insights that surface hidden issues, suggest smarter actions, and boost performance, profit, and customer experience.

If you're ready to see what happens when AI meets speed, scale, and simplicity, this is your green light.

Face To Face
with Sam Khalil (ekona.ai) , Kshitij Kumar (Data-Hat AI) , David Reed (DataIQ) , Jane Smith (ThoughtSpot) , Dr. Joe Perez (NC Dept of Health & Human Services) , Anusha Adige (EY)

As AI agents become embedded in everyday workflows — from healthcare diagnostics to financial services chatbots — the line between human and machine continues to blur. This panel brings together industry leaders to tackle the tough questions:

• How do we trust AI agents in high-risk environments?

• What are the new rules of ownership and accountability when autonomous systems act on data?

• Is AI replacing or enhancing the human workforce — and how do we keep the balance right?

We'll unpack how AI agents are evolving across sectors, debate whether the current LLM paradigm is enough, and explore the new guardrails needed to futureproof agentic AI — without losing control.