Fine-tune and deploy language models with Amazon SageMaker Canvas and Amazon Bedrock
Machine Learning Blog
This article demonstrates how to fine-tune and deploy large language models (LLMs) with Amazon Bedrock and Amazon SageMaker Canvas. It explains the process step-by-step, from preparing a dataset to creating a custom model, fine-tuning it, analyzing its performance, testing, and deploying it as an API endpoint.
Specifically, the article covers:
- Solution overview and prerequisites
- How to prepare a dataset for fine-tuning
- Creating a new model and importing the dataset in SageMaker Canvas
- Selecting a foundation model like Amazon Titan Text G1-Express LLM
- Analyzing the fine-tuned model's performance metrics
- Testing the model in the Canvas playground
- Deploying the model as an API endpoint with Amazon Bedrock
- Using the deployed model in application code
- Conclusion highlighting the potential applications
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