CloudSeals’ standardized AI/MLOps framework industrializes machine learning deployments for improved efficiency, applicability, and reliability of ML solutions. The modular MLOps architecture introduces consistency spanning model development from training to deployment with end-to-end automation, strict versioning, and governance.
Improved Efficiency
Applicability
Reliability of ML Solutions
Operationalizing robust workflows for data preparation, feature engineering, model evaluation, and monitoring – all tailored for the cloud. This framework powered by their REMOVE platform leverages reusable components, and enforces uniformity in development patterns allowing seamless integration between tools and owners while guaranteeing model transparency, explainability, and fairness.
Compliance and ethical oversight are ingrained throughout the cycle. With automation taking care of repeatable tasks, data scientists can focus exclusively on value-add. Their specialized AI Ops services ensure the last mile delivery, managing updates and continuity of productionized models.
Let us know if you need any elaboration or additional details on their industrialized MLOps practice.