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Large language models with Keras
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The latest Keras 3 machine learning framework lets you write and run your code in JAX, Pytorch, or Tensorflow. Learn about Gemma, the large language model family of open models from Google. We will teach you basic and advanced LLM workflows, including chat generation, LoRA fine-tuning, model parallelism to train on large-scale infrastructure, style alignment, model surgery, and more.
Speakers: Martin Gorner, Gabriel Rasskin, Samaneh Saadat
Watch more:
#GoogleIO
Event: Google I/O 2024
Speakers: Martin Gorner, Gabriel Rasskin, Samaneh Saadat
Watch more:
#GoogleIO
Event: Google I/O 2024
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