Running an AI-native engineering org

Claude · Intermediate ·🧠 Large Language Models ·1mo ago

About this lesson

When agentic coding goes from individual tool to org-wide default, the tool isn't the hard part…your processes are. Fiona Fung, Leader for Engineering and Product for Claude Code and Cowork, walks through how the bottlenecks changed at Anthropic (review, ownership, hiring) and the norms we rewrote to keep shipping.

Original Description

When agentic coding goes from individual tool to org-wide default, the tool isn't the hard part…your processes are. Fiona Fung, Leader for Engineering and Product for Claude Code and Cowork, walks through how the bottlenecks changed at Anthropic (review, ownership, hiring) and the norms we rewrote to keep shipping.
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