Summary of Scalable Fine-tuning From Multiple Data Sources: a First-order Approximation Approach, by Dongyue Li et al.
Scalable Fine-tuning from Multiple Data Sources: A First-Order Approximation Approachby Dongyue Li, Ziniu Zhang, Lu…
Scalable Fine-tuning from Multiple Data Sources: A First-Order Approximation Approachby Dongyue Li, Ziniu Zhang, Lu…
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Implementing NLPs in industrial process modeling: Addressing Categorical Variablesby Eleni D. Koronaki, Geremy Loachamin Suntaxi,…
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Chebyshev Feature Neural Network for Accurate Function Approximationby Zhongshu Xu, Yuan Chen, Dongbin XiuFirst submitted…
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