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First Step: How to USE GEMMA with KerasNLP on Colab (Free GPU!) 

Tirendaz AI
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Keras is an awesome deep-learning framework. This tutorial teaches you how to use the Gemma model with KerasNLP on Colab with the PyTorch backend.
00:01 Intro
00:31 Setup
03:48 Load a model
05:06 Generate text
07:51 Prompt template
🔗 Notebook: github.com/TirendazAcademy/Ge...
🚀 Medium: / tirendazacademy
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🚀 Linkedin: / tirendaz-academy
▶️ LangChain Tutorials:
• LangChain Tutorials
▶️ Generative AI Tutorials:
• Generative AI Tutorials
▶️ LLMs Tutorials:
• LLMs Tutorials
▶️ HuggingFace Tutorials:
• HuggingFace Tutorials ...
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#ai #gemma #generativeai

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23 фев 2024

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Комментарии : 4   
@manjupratuv
@manjupratuv 4 месяца назад
Thank you
@TirendazAI
@TirendazAI 4 месяца назад
You're welcome
@gokulakrishnanm
@gokulakrishnanm 4 месяца назад
i think google going to kill tensorflow and bring jax to spotlight what do you think about it
@TirendazAI
@TirendazAI 4 месяца назад
It could be. TensorFlow is not as popular as it used to be. Keras can now be used with PyTorch and Jax. Models are no longer trained from scratch. With the emergence of LLMs, frameworks like HuggingFace have become more used.
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