We talked about a similar idea here on the Briefing before – we called it the “bifurcation of intelligence”: a world in which some companies deploy Copilot and call it a day, while others are rethinking their business models in an age of AI agents (and the rest of it). Robert Glaser digs deeper into this idea:
But the interesting AI work does not wait for the next community meeting. It appears inside a code review, a sales proposal, a research task, a product prototype, a production incident, a test strategy, a compliance question. Or when someone figures out that for a certain class of product components, they can set up something close to a dark factory: write the intent, let the agent run a very loose loop, apply enough backpressure to keep it on track, evaluate the outcome against strong scenarios, refine the intent, and repeatedly get high-quality results. By the time the story is cleaned up enough to become a best-practice slide, the important learning has often lost its teeth. What made it useful was the friction: the missing context, the test that failed, the weird API behavior, the moment where the agent sprawled into nonsense and someone had to pull it back.
And to stay in the theme of my new book OUTLEARN:
The next advantage is learning velocity. Who finds the real patterns faster? Who moves discoveries from individuals to teams to organizational capabilities? Who builds backpressure into agentic loops, so agents can’t sprawl? Who distributes useful agent capabilities without turning them into monolithic enterprise agents that fit nobody? Who finally uses agentic engineering to make agile real, instead of just slapping AI onto the old ceremonies?