Operationalize Machine Learning at Scale

ModelOps, a derivative of DataOps, frees teams from the daily frustrations of operationalizing ML and AI models and empowers them to deliver continuous business value. The DataKitchen DataOps Platform simplifies the process by orchestrating your end-to-end ML pipelines for seamless collaboration, training, deployment, monitoring, and governance.

Safely Develop and Train New Models

With the DataKitchen Platform, quickly spinup aligned, fit-for-purpose ‘Kitchens’ where Data Scientists can experiment, test, and train models, safely and independently.

Related Content

Deploy Seamlessly

Say goodbye to the days when ML models wither on the vine waiting to be deployed to production. When new models are ready, Kitchens streamline deployments to different release environments by remapping to toolchain connections – wherever they are located (cloud, hybrid, on-prem). The DataKitchen Platform automates manual deployment steps so that your process evolves from patchwork to a true continuous deployment pipeline. 

Related Content

Monitor Model Performance

DataKitchen’s Platform enables you to continuously test and monitor your models in production.  Customize alerts so your teams are instantly notified when models drift or underperform so you can get a head start on retraining.  

Related Content

Automate Governance

Securely govern machine learning operations. The DataKitchen Platform provides control over who can run or update a model, as well as unprecedented visibility into usage metadata, lineage, and order run history. When a rule is violated, send alerts or automatically revoke access.

Related Content

Orchestrate Across Your Entire Data Ecosystem

Your model is not an island. Data Science requires a high level of technical collaboration with other parts of the data organization. The DataKitchen Platform orchestrates your entire pipeline – from data access to value delivery – for seamless integration of all the heterogeneous data centers, tools, infrastructure, and workflows required for successful model development and deployment. The Platform’s single view also provides end-to-end visibility into the entire pipeline so teams can collaborate effectively.  

Related Content

A Great Model is Not Enough: Deploying AI Without Technical Debt


Evaluating Machine Learning Models with ModelOps and the DataKitchen Platform »


Your Model is Not An Island: Operationalize Machine Learning at Scale with ModelOps »


Deliver ML and AI Models at Scale With ModelOps »

Want to See Our Platform in Action?


Sign the DataOps Manifesto

Join the 10,000+ others who have commited to developing and delivering analytics in a better way.

By DataOps Phase

Go from zero to DataOps in four incremental phases
Lean DataOps Overview Production DataOps Development DataOps Measurement DataOps Enterprise DataOps

By Buzzword

DataOps is the foundation for these common use cases

Data Observability
Data Mesh
Self-Service Operations

By Platform

DataOps brings agility to any environment

Hybrid Cloud DataOps
Cloud DataOps

By Team

DataOps makes any team more productive

Business Analytics
Central Data/IT
Data Science/AI

DataOps FAQ

All the basics on DataOps

DataOps 101 Training

Get certified in DataOps

Customer Stories

See how customers are using our DataOps Platform

Upcoming Events

Join us to discuss DataOps

Maturity Model Assessment

Assess how your organization is doing with DataOps