Coding with OpenAI o1

OpenAI Blog News

Summary

OpenAI announces capabilities and applications of the o1 model for coding tasks, highlighting how AI can enable developers to build more consistently and at greater scale.

Scott Wu, CEO and Co-Founder of Cognition, explains how OpenAI o1 makes coding decisions in a more human-like way.
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# Coding with OpenAI o1 Source: [https://openai.com/index/o1-coding/](https://openai.com/index/o1-coding/) OpenAISeptember 12, 2024 ChatGPT ## Scott Wu: OpenAI o1 & Coding > "It takes a lot of effort to build code that runs consistently and works very well\. And I think the thing that's really, really exciting now is every human is going to be able to build way more\." Scott Wu, CEO and Co\-Founder of Cognition

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