Builders by Proxify

The AI race has officially changed

45 min · 6. maj 2026
episode The AI race has officially changed cover

Beskrivelse

AI, Data Innovation, Data Strategy, and AI Leadership are redefining how companies compete. In this episode of Builders, Goran Cvetanovski, founder & CEO of Hyperite, shares key insights from the Data Innovation Summit in Stockholm, from operationalizing AI and building scalable data infrastructure to AI governance, leadership alignment, and the future of enterprise transformation.Why are some companies turning AI into a strategic advantage while others are stuck in endless experimentation?Goran breaks down: * Why AI operationalization is the next big challenge * How leadership teams should approach AI adoption * The real value of data ecosystems and infrastructure * Whether companies should build or rent AI capabilities * The biggest hiring and talent shifts happening in AI right now * What separates future AI winners from everyone else If you’re leading digital transformation, building AI products, or preparing your company for the next wave of Generative AI, this episode is packed with practical insights. Subscribe to Builders for more conversations with founders, operators, and tech leaders shaping the future. #AI #DataInnovation #GenerativeAI #AILeadership #DataStrategy #DigitalTransformation Chapters (00:00) Why the Data Innovation Summit Matters in 2026 (02:28) AI’s Biggest Shift: From Experimentation to Real Operations (05:52) How Companies Are Restructuring Around AI (10:53) Why AI and Data Are Becoming Core Business Assets (13:16) Should Companies Build or Rent Their AI Stack? (18:20) The Hidden Challenges of Data Management and AI Leadership (24:14) Why Leadership Determines AI Success or Failure (27:42) The Biggest AI Trends Emerging From the Summit (32:25) AI Hiring Trends: The Skills Companies Need Most (39:12) What Will Separate AI Winners From Everyone Else?

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episode The AI race has officially changed cover

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