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Enterprise MLOps platform by Dataiku

Deploy, monitor, and manage machine learning (ML) models seamlessly throughout the AI lifecycle with Dataiku.

Deploy anywhere

Push models to production across SageMaker, AzureML, Databricks, Snowflake, and more from one place.

Automated compliance

Automatically generate model documentation, run stress tests, and maintain version control for every deployment.

Active monitoring

Track performance metrics, catch drift early, and automate retraining to keep models accurate in production.

Integrate MLOps across your Enterprise ML ecosystem

Integrate MLOps in Dataiku seamlessly with leading platforms (including AWS SageMaker, AzureML, Databricks, Google VertexAI, and Snowflake) for full, ecosystem-wide visibility to manage diverse projects without compromising on governance or control. Dataiku Unified Monitoring provides a centralized view of model health and drift status, ensuring that teams stay informed on all deployments, no matter the infrastructure.

Unlock Ecosystem Flexibility Across Platforms
Automate Documentation & Stress-Testing for Compliance

Ensure governed, compliant MLOps with automated documentation and stress-testing

Dataiku simplifies model governance by automatically generating documentation, ensuring compliance and making every project reproducible. Dataiku allows users to conduct model stress-testing before deployment, helping teams validate performance and identify potential vulnerabilities — ensuring reliable outcomes.

Integrate MLOps pipelines with existing CI/CD workflows

With the Dataiku Python API, IT teams and engineers can execute Dataiku tasks programmatically and integrate them into existing DevOps pipelines using tools like Jenkins, GitLabCI, Travis CI, or Azure DevOps. Have continuous delivery by enabling model deployment and monitoring workflows to operate alongside established development practices, ensuring that AI projects remain agile and aligned with software engineering processes.

Deploy to Production With One Click
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Deploy machine learning models reliably at scale

Deploy and manage models for both real-time and batch use cases across various infrastructures and environments. Whether models require real-time predictions via APIs or scheduled batch processing, Dataiku ensures smooth deployments with full configuration to maintain operational stability.

Monitor Performance Metrics & Detect Drift

Monitor ML model performance and detect model drift

The Dataiku model evaluation store captures key metrics for visualizing model behavior over time. That means insights into when models might drift or deteriorate, allowing for proactive interventions. With these metrics, teams can create checks and automate alerts for drift detection to take timely actions (e.g., retraining), keeping models accurate and aligned with business outcomes.

Version, retrain, and compare ML models

With Dataiku, maintain version control over all models and easily evaluate different versions through champion/challenger comparison. This ensures that model updates are intentional and measurable, supporting better decision making. In case of performance issues or drift, teams can easily revert to previous versions, ensuring continuity and minimizing risks in production environments.

Retrain and Compare Models with Versions Control

Loved by customers and recognized by analysts

Dataiku named a Gartner® Magic Quadrant™ Leader

Dataiku was recognized as a Leader for the fourth time in the 2025 Gartner® Magic Quadrant™ for data science & ML platforms.

“The platform is intuitive, collaborative, and streamlines workflows from data prep to model deployment. Dataiku has truly transformed how we handle data!”

Data scientist

Retail

Dataiku named a Gartner® Magic Quadrant™ Leader

Dataiku was recognized as a Leader for the fourth time in the 2025 Gartner® Magic Quadrant™ for data science & ML platforms.

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