AI demands more engineering discipline, not less
As AI systems scale in production, the engineering rigor required to deploy them safely has increased, not decreased. Teams building with large language models need stricter testing, monitoring, and rollback procedures.
The common narrative around AI development treats it as a departure from traditional software engineering. Move fast, iterate on prompts, let the model handle the rest. That framing is backwards. The reality is that AI systems in production demand more engineering discipline than the code that prece...
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- Hacker News · Front Page
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