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Endigest AI Core Summary
Amazon SageMaker AI introduces serverless customization to streamline fine-tuning of popular AI models including Amazon Nova, DeepSeek, Llama, and Qwen.
•Supports four fine-tuning techniques: Supervised Fine-Tuning, Direct Preference Optimization, Reinforcement Learning from Verifiable Rewards (RLVR), and Reinforcement Learning from AI Feedback (RLAIF)
•Serverless mode automatically provisions compute resources based on model and data size, eliminating infrastructure management
•UI-based workflow covers model selection, hyperparameter configuration, training job submission, evaluation, and deployment in a few clicks
•Includes a serverless MLflow integration for automatic experiment metric logging and rich visualizations without code changes
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Trained models can be deployed to Amazon Bedrock for serverless inference or to SageMaker AI endpoints for controlled instance-level deployment
This summary was automatically generated by AI based on the original article and may not be fully accurate.