The AI Paradox: Why Your Data Team’s Workload is About to Explode

Your video will begin in 10
Skip ad (5)
Everwebinar  30 day trial Link

Thanks! Share it with your friends!

You disliked this video. Thanks for the feedback!

Added by admin
7 Views
Chris Child, VP of Product, Data Engineering at Snowflake, joins High Signal to deliver a new playbook for data leaders based on his recent MIT report, revealing why AI is paradoxically creating more work for data teams, not less. He explains how the function is undergoing a forced evolution from back-office “plumbing” to the strategic core of the enterprise, determining whether AI initiatives succeed or fail. The conversation maps the new skills and organizational structures required to navigate this shift.

We dig into why off-the-shelf LLMs consistently fail to generate useful SQL without a semantic layer to provide business context, and how the most effective data engineers must now operate like product managers to solve business problems. Chris provides a clear framework on the shift from writing code to managing a portfolio of AI agents, why solving for AI risk is an extension of existing data governance, and the counterintuitive strategy of moving slowly on foundations to unlock rapid, production-grade deployment.

00:00 Introduction to Data Engineering Challenges
01:04 The Role of Data Engineers in AI
02:09 Chris Child's Insights on AI and Data Engineering
02:14 MIT Report and Data Engineering Evolution
03:12 The Growing Demands on Data Engineering
05:29 AI's Impact on Data Engineering Workloads
07:56 The Future of Data Engineering with AI
10:55 Challenges in AI-Assisted Data Engineering
21:12 Business Leaders' Perspectives on Data Engineering
26:03 Evaluating Business Value in Data Pipelines
27:33 The Evolving Role of Data Engineers
28:17 Addressing Risks and Governance in AI
31:55 Speed vs. Quality in AI Data Applications
35:32 Organizational Changes in an AI-First World
43:28 Career Advice for Data Engineers
45:48 Making Organizations AI Ready
49:14 Conclusion and Final Thoughts
Category
Artificial Intelligence & Business

Post your comment

Comments

Be the first to comment