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Databricks scientist: Companies finding AI value through experimentation, not buzzwords
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Databricks‘s chief AI scientist reveals that companies are still learning through experimentation where artificial intelligence can most effectively solve business problems, beyond the hype of buzzwords like “agentic AI.” This trial-and-error approach highlights a practical shift in enterprise AI adoption, as organizations seek to identify the specific applications where AI delivers meaningful value rather than pursuing trendy concepts.

The big picture: Generative AI is enabling a new form of enterprise analytics by making previously unusable unstructured data valuable for business insights.

  • Data that was once considered “useless” in traditional analytics frameworks—like Word documents, images, and videos—has become “incredibly valuable” with the emergence of large language models.
  • This transformation represents a fundamental shift in how companies can extract meaningful features and insights from their vast stores of unstructured information.

Why this matters: Companies are moving beyond AI buzzwords to discover practical applications through hands-on experimentation rather than theoretical implementations.

  • The focus has shifted from chasing trending concepts to identifying specific use cases where AI technology can demonstrably solve real business problems.
  • This pragmatic approach reflects the maturing enterprise AI market, where value is increasingly measured by practical outcomes rather than technological novelty.

Key details: Databricks is witnessing firsthand how businesses are systematically testing AI applications to find the optimal use cases.

  • Jonathan Frankle, Databricks’s chief AI scientist, emphasized that companies are actively searching for the “sweet spot” where AI provides genuine problem-solving capabilities.
  • The company’s perspective comes from its position as a major data tools provider with visibility across numerous enterprise AI implementations.

Reading between the lines: The industry appears to be entering a more practical phase of AI adoption, prioritizing tangible results over speculative implementations.

  • This signals a potential shift away from the investment-driving hype cycle toward more sustainable, results-oriented AI deployment strategies.
  • Companies may increasingly demand demonstrable ROI before committing to large-scale AI projects, regardless of how trendy the underlying technology might be.
Generative AI is finally finding its sweet spot, says Databricks chief AI scientist

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