LLaMA in R with Keras and TensorFlow

Implementation and walk-through of LLaMA, a Large Language Model, in R, with TensorFlow and Keras.

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What Is Keras Core?

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Interfaces for Explaining Transformer Language Models

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PyMC Open Source Development

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