Stratola Spectrum - Tech Conversations about AI, Data, and Automation
Everyone has been chasing smarter models. Bigger context windows. Faster inference. But the agents enterprises are deploying are still getting things wrong. Not because the models are not good enough. Because they do not understand the business. In this episode of Stratola Spectrum, Dinesh Chandrasekhar sits down with Prukalpa Sankar, founder and co-CEO of Atlan, to talk about the problem sitting underneath almost every failed enterprise AI deployment right now: * Why AI today is valuable but not useful and what the difference actually means. * What the question "what are my top 10 customers" reveals about how unprepared most enterprises actually are. * Why the bottleneck in enterprise AI is no longer technology and what is actually slowing deployments down. * How Atlan went from five months in testing hell to five days in production for their customers. 🎙️ Prukalpa Sankar, Founder and Co-CEO, Atlan🎙️ Dinesh Chandrasekhar, Chief Analyst and Founder, Stratola🔗 https://www.stratola.com 00:00 — Introduction: Dinesh opens with the real question behind enterprise AI today. 00:23 — The Real Fault Line in Enterprise AI: Why the conversation is shifting from model performance to context. 02:13 — Meet Prukalpa Sankar, Atlan: Founder and Co-CEO of Atlan, co-founder of Social Corps the world's largest government data lake, Forbes 30 Under 30 and Fortune 40 Under 40. 03:40 — What Context Actually Is at a Systems Level: Why context is not just better retrieval or a larger token window. 04:09 — Why Onboarding an Agent Should Look Like Onboarding a Human: The parallel between how companies build institutional knowledge in human employees. 06:59 — AGI Is Already Here. It Is Just Not Useful: Why Prukalpa believes the intelligence problem is largely solved. 07:59 — The Five Layers of Context Explained: Using the question "what are my top 10 customers" to show why context is a stack of user intent, knowledge, meaning, semantics and data, not a single layer. 11:19 — Why Metadata Alone Was Never Going to Be Enough: How Atlan started as a data team solving its own problems. 13:41 — Why AI Agents Need Fundamentally Different Infrastructure: Every agent action starts with a context search and the latency. 15:11 — Atlan's Autonomous Workflow Milestone: The first week where autonomous workflows created more context than humans and AI-assisted workflows combined. 19:04 — Why Ontology Is Re-Emerging Right Now: The shift from bounded use cases like dashboards to unbounded agent use cases brought ontology back from niche construct to production requirement. 21:38 — We Are at the Worst AI Intelligence We Will Ever See: Why the current moment is the floor not the ceiling. 25:49 — The Difference Between Context for Data and Context for AI: Why having metadata, lineage and a business glossary is a necessary foundation but still not enough to take AI reliably into production. 32:31 — Why Shared Context Layers Collapse and How to Prevent It: The lesson from Looker. 35:19 — Centralized Platform, Federated Context: How Prukalpa thinks about ownership and governance architecture for context at scale across multiple agents and systems. 35:44 — MCP and Why Protocol Lock-In Is the Biggest Risk Right Now: Why the worst thing any leader can do today is commit to any single framework. 38:50 — Where a CIO Should Actually Start: Not with the context layer but with the top business problems that need solving in the next three to six months. 41:07 — From Five Months in Testing to Five Days in Production: Why the bottleneck in enterprise AI is no longer technology and what organizational change, ownership questions. 44:06 — What Breaks First When You Have 500 Agents: The three failure modes Prukalpa sees most often across enterprise AI deployments and how to build foundations that prevent each one. 47:11 — What Prukalpa Is Most Excited About in the Next 12 Months: The emotional journey organizations go through from fear to joy as they start giving AI more control.
12 episodios
Comentarios
0Sé la primera persona en comentar
¡Regístrate ahora y únete a la comunidad de Stratola Spectrum - Tech Conversations about AI, Data, and Automation!