
ClearML
The key features of ClearML’s open source, end-to-end MLOPs Platform are: ClearML Experiment – ClearML Experiment allows you to track every part of the ML experimentation process and automate tasks. With it, you can log, share and version all experiments and instantly orchestrate pipelines. ClearML Orchestrate – With ClearML Orchestrate DevOps and data scientists are empowered through autonomy and control over compute resources. The cloud native solution also enables kubernetes and bare-metal resource scheduling with a simple and unified interface to control costs and workloads. ClearML DataOps – ClearML DataOps delivers data store automation. Automate data collection into searchable, accessible, and ML-ready data repositories through cutting-edge MLOps technology. ClearML Hyper-Datasets – ClearML Hyper-Datasets allows MLOps teams to build data-centric AI workflows. Make the most out of unstructured-data using queryable datasets, made possible through ClearML Hyper-Datasets. ClearML Deploy – ClearML Deploy delivers a unifying model repository, custom pipelines, and model serving. This allows MLOps teams to Transition from model development to production and gain full workflow visibility with seamless integration to the experiment manager and orchestration. Every component of ClearML integrates seamlessly with each other, delivering cross-department visibility in research, development, and production.