Insight On
Most organizations are sitting on fragmented data from dozens of sources with no fast way to normalize it, query it, or get answers. MERGE had the same problem — and what they built to fix it internally became a product their clients needed too. In this conversation, Jason Dittmer, SVP of TechOps at MERGE, explains how his team built an automated pipeline on Google Cloud (BigQuery, Looker, Gemini, Google SecOps) to solve their own data fragmentation problem — cutting normalization time from weeks to minutes. Then they heard the same pain from clients and shipped it as a marketplace product. One healthcare client now runs 30 disparate data sources through the same pipeline. If you're thinking about how to productize your own internal AI work, this breakdown of moving from efficiency to revenue is worth reading alongside the episode: https://www.insight.com/en_US/content-and-resources/blog/from-efficiency-to-revenue-productizing-enterprise-ai.html [https://www.insight.com/en_US/content-and-resources/blog/from-efficiency-to-revenue-productizing-enterprise-ai.html] Jason also breaks down MERGE's "Drink Your Own Champagne" philosophy — the idea that you should prove a solution internally before ever bringing it to a client. He shares what it takes to move past the pilot phase, and how MERGE's Humanity Suite puts the human factor at the center of AI-powered marketing. If you're still sorting out what AI agents can actually do in this context, the AI agent cheat sheet is a good companion: https://www.insight.com/en_US/content-and-resources/guide/the-ai-agent-cheat-sheet.html [https://www.insight.com/en_US/content-and-resources/guide/the-ai-agent-cheat-sheet.html] This is the second episode in a series on organizations building AI solutions from the inside out. In the first, Joseph Schultz at JE Dunn Construction explains how field workers with no coding background are building their own AI-powered tools: https://youtu.be/rf8MyG22FnA?si=bs2jyJ2u_1_PO66N [https://youtu.be/rf8MyG22FnA?si=bs2jyJ2u_1_PO66N] Book an Insight AI Readiness and Governance Workshop because you'll get a clear framework for moving your AI projects from pilot to production: https://www.insight.com/en_US/content-and-resources/solution-briefs/ai-adoption-with-ai-readiness-governance-workshop.html [https://www.insight.com/en_US/content-and-resources/solution-briefs/ai-adoption-with-ai-readiness-governance-workshop.html] Subscribe to Insight On for more conversations with the leaders building what's next. Chapters (5–12) * 00:00 — Welcome and introduction * 01:32 — What MERGE does and what's on Jason's desk * 03:17 — Drink Your Own Champagne explained * 05:06 — The internal data problem that started it all * 08:27 — What made this solvable on Google Cloud * 10:50 — Three months from idea to internal product * 12:14 — Surprising insights from contextually aware data * 13:13 — The Humanity Suite and infinite individualism * 16:07 — Could this have happened a year ago * 17:30 — How AI perception changed inside MERGE * 18:30 — What's next for MERGE * 19:22 — Advice for leaders stuck in the pilot phase #AIDataPipeline #GoogleCloud #EnterpriseAI #AIPilotToProduction #InsightOn
32 episoder
Kommentarer
0Vær den første til at kommentere
Tilmeld dig nu og bliv en del af Insight On-fællesskabet!