
ClearML : End-to-end experiment tracking and orchestration for ML
ClearML: in summary
ClearML is an open-source and enterprise-ready platform designed for experiment tracking, orchestration, model management, and data versioning in machine learning workflows. It enables data scientists, ML engineers, and research teams to efficiently manage their entire development lifecycle—from prototype experiments to automated pipelines.
The platform supports real-time logging, resource allocation, and reproducibility, making it suitable for both research environments and production-grade ML systems. ClearML’s modular structure allows teams to use it as a lightweight experiment tracker or as a full MLOps stack, depending on their needs.
Key benefits:
Unified platform for tracking, scheduling, and model lifecycle management
Designed for collaboration, scalability, and auditability
Integrates easily with Python workflows and major ML frameworks
What are the main features of ClearML?
Experiment tracking with live logging
ClearML tracks all aspects of machine learning experiments:
Logs hyperparameters, metrics, resource usage, and code versions
Captures stdout, stderr, GPU utilization, and other live signals
Automatically snapshots the code environment and configuration
Enables filtering, searching, and comparing experiments from a web UI
Task and pipeline orchestration
Automates model training, evaluation, and deployment workflows:
Define tasks and build pipelines via Python scripts or UI
Schedule jobs across on-premise or cloud compute resources
Supports autoscaling with dynamic resource allocation
Enables reproducible, modular pipelines with version control
Model registry and deployment management
Centralized registry to manage the entire model lifecycle:
Store, tag, and version trained models and artifacts
Track lineage from model to training data, code, and configuration
Integrate model serving into workflows or external systems
Visual traceability for compliance and auditing
Data management and versioning
Supports reproducibility by handling datasets and data access:
Register datasets and versions used in each experiment
Tracks data provenance and dependency relationships
Offers data deduplication and cache management
Integrates with local and remote storage systems
Collaboration and enterprise features
Built for team-based workflows in regulated environments:
Shared projects, user roles, and access controls
REST API and SDKs for automation and integration
Activity logs, tagging, and annotations for traceability
Available as a managed service or self-hosted deployment
Why choose ClearML?
Complete lifecycle management: from experiment tracking to deployment
Flexible modularity: use only the components you need
Reproducibility by default: all artifacts, code, and data are versioned
Python-native: easy to integrate with existing ML workflows
Scalable and enterprise-ready: for both research and production use
ClearML: its rates
Standard
Rate
On demand
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