AWS ML Blog

Reinforcement fine-tuning for Amazon Nova: Teaching AI through feedback

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TL;DR

In this post, we explore reinforcement fine-tuning (RFT) for Amazon Nova models, which can be a powerful customization technique that learns through evaluation rather than imitation. We'll cover how RFT works, when to use it versus supervised fine-tuning, real-world applications from code generation...

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