

Is Your Data Ready for AI? Assessment Guide
The Make-or-Break Factor: Why 73% of AI Projects Fail Due to Poor Data
AI is only as good as the data you feed it, and that’s where most companies fall short. In fact, a staggering 73% of AI projects fail due to messy, incomplete, or siloed data that was never ready for automation in the first place.
In this strategy session, we’ll walk you through a practical assessment guide to evaluate whether your data is AI-ready, before you invest time and money in automation or agent deployment.
What you'll learn:
Why even the best AI fails without clean, structured data
What “AI-ready” data actually looks like, across documents, APIs, and workflows
How to assess your existing systems and identify data blockers
How Beam uses task mining and tool instrumentation to automate messy processes anyway
A step-by-step checklist to prepare your team for agent deployment
Bonus: Get the guide for free
About the Host
Derya Firat (GTM Lead, Beam AI): Derya draws on enterprise experience at Microsoft and Oracle and a founder’s perspective from Antler to scale AI agents into market-ready solutions.