Letter "Dear friends" from Andrew Ng in *The Batch* (DeepLearning.AI, issue 359) on **loop engineering** applied to **0-to-1** product development. Ng shares his **3 key loops** — agentic coding loop (~minutes), developer feedback loop (~hours), external feedback loop (~days) — nested by increasing time scale, connecting *coding agent → product spec/evals → developer vision → external feedback*. Central thesis: humans retain a **context advantage** (rather than a "taste") that makes human-in-the-loop indispensable; engineers take on a partial product management role. Domain: coding agents, product engineering, agentic methodology.
LinkedIn post by Fred Plais (CEO of Archie, ex-Platform.sh): AI made engineers so fast that the **bottleneck moved upstream**, to a place nobody is watching. With execution no longer the slow part, the thinking time that used to exist "while the code was being built" has vanished — the right vision now has to be formed and the right decisions made in a fraction of the time. Two rare profiles are emerging: the one who can **articulate a vision precise enough** for an agent to execute without derailing, and the one who knows how to **orchestrate agents** (anticipating their failures, chaining them, catching an error before it propagates). Hiring for "code output" is becoming obsolete: that is precisely what has stopped being rare. Final thesis: "thinking clearly was always the job — speed just made it impossible to fake".