<p>To go deeper on our new Life Sciences model series, research lead <a href="https://nitter.net/joyjiao12" title="Joy Jiao">@joyjiao12</a> and product lead Yunyun Wang joined <a href="https://nitter.net/AndrewMayne" title="Andrew Mayne">@AndrewMayne</a> on the OpenAI Podcast to discuss how we’re building models for biology, drug discovery, and translational medicine.<br>

<br>

They cover both the opportunity and the responsibility ahead: better research workflows today, more autonomous labs over time, and careful deployment from day one.</p>

<a href="https://nitter.net/OpenAI/status/2044938017530577210#m">

<br>Video<br>

<img src="https://nitter.net/pic/amplify_video_thumb%2F2044919392019062784%2Fimg%2F1k9A9JlliDTHOaRd.jpg" style="max-width:250px;" />

</a>

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<b>OpenAI (@OpenAI)</b>

<p>

<p>Introducing GPT-Rosalind, our frontier reasoning model built to support research across biology, drug discovery, and translational medicine.</p>

<a href="https://nitter.net/OpenAI/status/2044861690911850863#m">

<br>Video<br>

<img src="https://nitter.net/pic/amplify_video_thumb%2F2044853802382303232%2Fimg%2FFXPdvXAOs9eaxQhX.jpg" style="max-width:250px;" />

</a>

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<footer>

— <cite><a href="https://nitter.net/OpenAI/status/2044861690911850863#m">https://nitter.net/OpenAI/status/2044861690911850863#m</a>

</footer>

</blockquote>

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