What is SageMaker notebooks?
Launch fully managed JupyterLab from Amazon SageMaker Studio in seconds. Use the integrated development environment (IDE) for notebooks, code, and data. You can use the quick start, collaborative notebooks in the IDE to access purpose-built ML tools in SageMaker and other AWS services for your complete ML development, from preparing data at petabyte scale using Spark on Amazon EMR, to training and debugging models, deploying and monitoring models and managing pipelines – all in one web-based visual interface. Easily dial compute resources up or down without interrupting your work.
Benefits of SageMaker notebooks
Build ML at scale
Quick start
Elastic compute
Boost ML development productivity
Data preparation
Notebook jobs
AI-powered tools
Amazon Q Developer provides ‘how-to’ guidance on SageMaker features, code generation assistance, and support for troubleshooting in the JupyterLab environment. Simply ask your questions in natural language, such as "How do I deploy my model on a SageMaker endpoint for real-time inference?", and Amazon Q Developer will provide step-by-step instructions and code to get you started. When you encounter errors while executing the code, the Amazon Q Developer is there to lend a helping hand. Just ask it to fix the error, and it will provide detailed steps to debug and resolve the issue.