AI foundation models may revolutionize neuroscience, Brown researchers say - The Brown Daily Herald
<a href="https://news.google.com/rss/articles/CBMiogFBVV95cUxQalpYNUx6RG53UTh3MjkxYzFmdnV1T3o2d2lTR1ktXzBkeFpDaW9OQ1RQMnk3aVNzMjlhTERFMnRJYzRFdUNzZFRPYlRINncweGoybWxDV3JfTHpOR0phWHFXaWRudmY2aWw2c25WZFM5TXR3LVp4dGZfNS1QcVFKa3k4SXg0YW1ZeXoybVl3UVRpemxBemRTcWtzSENjRDZ1VWc?oc=5" target="_blank">AI foundation models may revolutionize neuroscience, Brown researchers say</a> <font color="#6f6f6f">The Brown Daily Herald</font>
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AutoPK: Leveraging LLMs and a Hybrid Similarity Metric for Advanced Retrieval of Pharmacokinetic Data from Complex Tables and Documents
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AutoPK: Leveraging LLMs and a Hybrid Similarity Metric for Advanced Retrieval of Pharmacokinetic Data from Complex Tables and Documents
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