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AI/ML / Mlde

Capabilities

Version:
IDTitleDescription
CCC.MLDE.CP01Managed Notebook EnvironmentsProvides fully managed notebook instances specifically designed for machine learning development, eliminating the need to manage underlying infrastructure.
CCC.MLDE.CP02Pre-configured Machine Learning LibrariesOffers environments pre-installed with popular machine learning libraries and frameworks such as TensorFlow, PyTorch, and Scikit-learn, optimized for ML tasks.
CCC.MLDE.CP03Integrated Experiment ManagementFacilitates tracking and management of machine learning experiments, including parameters, metrics, and artifacts, within the development environment.
CCC.MLDE.CP04Model Training and Deployment IntegrationSupports seamless transition from model development to training and deployment, allowing models to be trained and deployed directly from the MLDE.
CCC.MLDE.CP05Automated Machine Learning (AutoML) CapabilitiesOffers AutoML functionalities to automatically build, train, and optimize machine learning models with minimal manual intervention.
CCC.MLDE.CP06GPU/Specialized Hardware SupportProvides access to GPU instances and specialized ML acceleration hardware (TPUs, FPGAs) with automated driver and runtime management.
CCC.MLDE.CP07Data Pipeline IntegrationSupports integration with data preparation and feature engineering pipelines, including versioning of datasets and capabilities used in ML experiments.
CCC.MLDE.CP08Model RegistryProvides centralized storage and versioning for trained models, including metadata about training runs, model artifacts, and deployment history.
CCC.MLDE.CP09Collaborative Development SupportEnables multiple data scientists to work on the same project with version control integration, shared notebooks, and resource management.
CCC.MLDE.CP10Model Monitoring and Drift DetectionSupports monitoring of deployed models for performance degradation, data drift, and concept drift with automated alerting capabilities.
CCC.MLDE.CP11Reproducibility CapabilitiesProvides capability to capture and version all components needed to reproduce an ML experiment, including code, data, and environment configurations.
CCC.MLDE.CP12Resource Scheduling and OptimizationSupports scheduling and optimization of compute resources for training jobs, including spot instance usage and auto-scaling capabilities.
CCC.MLDE.CP13Security and Compliance ControlsProvides specific controls for ML workflows including model governance, bias detection, and compliance documentation for regulated industries.