Scaling AI: From Activity to Impact
Claude and Codex have a relatively new feature — `/goal` — that lets you set a completion condition and keep the AI running autonomously until it's met. This capability exposes a real challenge with agentic AI and explains why its shifting the bottleneck to its assymetric capabilities in different stages and domains of value creation. 00:09 The new /goal capability — what it does and how it works 02:07 What the official examples reveal: all output, no outcome 03:02 The missing examples — what outcome-oriented goals would actually look like 04:00 Output vs. outcome: why the gap matters for AI impact 04:45 The real bottleneck — observability and closing the feedback loop 05:45 Live demo: setting an outcome-oriented /goal on a blog post 08:30 What the loop did — changes made, open items, what's next Are your AI goals output-oriented or outcome-oriented? What are you doing to enable outcome-oriented goals in your AI sessions? And as a final thought - What would happen if your human teams were empowered to seek a /goal? Insights on Scaling AI from Activity to Impact [yuvalyeret.com/insights] Join the Activity to Impact Conversation on Linkedin [https://www.linkedin.com/in/yuvalyeret/]
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