Tech Council

How AI Is Disrupting Software Development in 2026 | Episode 36

Duncan Mapes, Jason Ehmke Episode 36

Use Left/Right to seek, Home/End to jump to start or end. Hold shift to jump forward or backward.

0:00 | 37:27

Everyone says AI is making software development easier.

That’s only partially true.

While AI accelerates the act of writing code, it also amplifies existing problems. Poor inputs produce poor outputs faster. Weak specifications lead to larger-scale inefficiencies. And teams that prioritize speed without clarity often end up with more rework, not less.

This episode challenges the idea that AI is purely a productivity multiplier. Instead, it explores how AI is exposing deeper issues in how software is planned, validated, and maintained.

AI is unlocking new capabilities, but it’s also introducing new complexity that teams must learn to manage.


Top Takeaways:

  • Garry Tan's public statements about his coding activity and the backlash he received for the perceived quality of his code
  • Relevance of lines of code as a metric for productivity, especially in the context of AI and automation
  • Shifting focus from code quantity to business outcomes and customer acquisition 
  • How coding practices have evolved with more capable browsers and computers, reducing the need for extreme optimization
  • Importance of aligning engineering efforts with business goals and outcomes
  • Trend towards open-source models and the challenges of maintaining proprietary advantages
  • Cost of AI models and the economic implications of using different models
  • Strategies for managing technical debt through automation and the balance between shipping quickly and maintaining quality


Connect with us:

Duncan Mapes

Jason Ehmke

DevGrid.io

DevGrid on LinkedIn

DevGrid on X