Human + AI Impact Initiative

When Productivity Doesn't Switch Off: The Hidden Cost of AI Flow (with Anthony Cannon)

14 min · 19. maj 2026
episode When Productivity Doesn't Switch Off: The Hidden Cost of AI Flow (with Anthony Cannon) cover

Description

AI is making work faster, more creative but harder to stop. In this episode of Human+AI Impact, Dr. Sabrina Anjara is joined by Anthony Cannon to explore a less visible side of AI productivity: the rise of “always-on” work. As AI collapses the gap between idea and execution, it creates powerful flow states that can drive output, but also extend effort beyond sustainable limits. They unpack what this new pattern of work feels like in practice, why traditional signs of burnout don’t apply, and how leaders need to rethink productivity design. Sabrina proposes stopping rules, flow boundaries, and new signals of over-engagement. Because the next challenge in AI-enabled work isn’t just performance, it’s knowing when to stop.

Comments

0

Be the first to comment

Sign up now and become a member of the Human + AI Impact Initiative community!

Get Started

1 month for 9 kr.

Then 99 kr. / month · Cancel anytime.

  • Podcasts kun på Podimo
  • 20 lydbogstimer pr. måned
  • Gratis podcasts

All episodes

6 episodes

episode When Productivity Doesn't Switch Off: The Hidden Cost of AI Flow (with Anthony Cannon) artwork

When Productivity Doesn't Switch Off: The Hidden Cost of AI Flow (with Anthony Cannon)

AI is making work faster, more creative but harder to stop. In this episode of Human+AI Impact, Dr. Sabrina Anjara is joined by Anthony Cannon to explore a less visible side of AI productivity: the rise of “always-on” work. As AI collapses the gap between idea and execution, it creates powerful flow states that can drive output, but also extend effort beyond sustainable limits. They unpack what this new pattern of work feels like in practice, why traditional signs of burnout don’t apply, and how leaders need to rethink productivity design. Sabrina proposes stopping rules, flow boundaries, and new signals of over-engagement. Because the next challenge in AI-enabled work isn’t just performance, it’s knowing when to stop.

19. maj 202614 min