We have hosted the application sagemaker experiments python sdk in order to run this application in our online workstations with Wine or directly.


Quick description about sagemaker experiments python sdk:

Experiment tracking in SageMaker Training Jobs, Processing Jobs, and Notebooks. SageMaker Experiments is an AWS service for tracking machine learning Experiments. The SageMaker Experiments Python SDK is a high-level interface to this service that helps you track Experiment information using Python. Experiment tracking powers the machine learning integrated development environment Amazon SageMaker Studio. Experiment: A collection of related Trials. Add Trials to an Experiment that you wish to compare together. Trial: A description of a multi-step machine learning workflow. Each step in the workflow is described by a Trial Component. There is no relationship between Trial Components such as ordering. Trial Component: A description of a single step in a machine learning workflow. For example data cleaning, feature extraction, model training, model evaluation, etc.

Features:
  • Python context-manager for logging information about a single TrialComponent
  • Manage Experiments, Trials, and Trial Components within Python scripts, programs, and notebooks
  • Add tracking information to a SageMaker notebook, allowing you to model your notebook in SageMaker Experiments as a multi-step ML workflow
  • Record experiment information from inside your running SageMaker Training and Processing Jobs
  • This library is licensed under the Apache 2.0 License
  • AWS account credentials are available in the environment for the boto3 client to use


Programming Language: Python.
Categories:
Logging

Page navigation:

©2024. Winfy. All Rights Reserved.

By OD Group OU – Registry code: 1609791 -VAT number: EE102345621.