| ID | Title | Description |
|---|---|---|
| CCC.MLDE.CP01 | Managed Notebook Environments | Provides fully managed notebook instances specifically designed for machine learning development, eliminating the need to manage underlying infrastructure. |
| CCC.MLDE.CP02 | Pre-configured Machine Learning Libraries | Offers environments pre-installed with popular machine learning libraries and frameworks such as TensorFlow, PyTorch, and Scikit-learn, optimized for ML tasks. |
| CCC.MLDE.CP03 | Integrated Experiment Management | Facilitates tracking and management of machine learning experiments, including parameters, metrics, and artifacts, within the development environment. |
| CCC.MLDE.CP04 | Model Training and Deployment Integration | Supports seamless transition from model development to training and deployment, allowing models to be trained and deployed directly from the MLDE. |
| CCC.MLDE.CP05 | Automated Machine Learning (AutoML) Capabilities | Offers AutoML functionalities to automatically build, train, and optimize machine learning models with minimal manual intervention. |
| CCC.MLDE.CP06 | GPU/Specialized Hardware Support | Provides access to GPU instances and specialized ML acceleration hardware (TPUs, FPGAs) with automated driver and runtime management. |
| CCC.MLDE.CP07 | Data Pipeline Integration | Supports integration with data preparation and feature engineering pipelines, including versioning of datasets and capabilities used in ML experiments. |
| CCC.MLDE.CP08 | Model Registry | Provides centralized storage and versioning for trained models, including metadata about training runs, model artifacts, and deployment history. |
| CCC.MLDE.CP09 | Collaborative Development Support | Enables multiple data scientists to work on the same project with version control integration, shared notebooks, and resource management. |
| CCC.MLDE.CP10 | Model Monitoring and Drift Detection | Supports monitoring of deployed models for performance degradation, data drift, and concept drift with automated alerting capabilities. |
| CCC.MLDE.CP11 | Reproducibility Capabilities | Provides capability to capture and version all components needed to reproduce an ML experiment, including code, data, and environment configurations. |
| CCC.MLDE.CP12 | Resource Scheduling and Optimization | Supports scheduling and optimization of compute resources for training jobs, including spot instance usage and auto-scaling capabilities. |
| CCC.MLDE.CP13 | Security and Compliance Controls | Provides specific controls for ML workflows including model governance, bias detection, and compliance documentation for regulated industries. |
AI/ML / Mlde
Capabilities
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