Create reusable data transformation workflows to shorten data collection lead time. Iteratively set up and test ML pipelines with Airflow, GCP Cloud Composer, Dbt, Spark, and other ETL tools instead of waiting for the lengthy original data access procedures.
DevOps-friendly API-driven framework to create tabular data and databases in minutes using YAML config files and Python DSL.
Improved data quality
Our machine learning models learn statistical properties in a table and across tables to help create high-quality data, often better than production data.
"Data as Code" approach enables you to codify complex compliance requirements into concrete data transformations.
Fast and easy deployments
Simple API to integrate into your CI/CD or data pipeline, both on-premise and cloud. Supports all relational databases and data governance platforms (BigID, Collibra, Zaloni) and deployments using Kubernetes, OpenShift, and Docker.
Awards & Recognition
Join our DataOps community on Slack
Learn about modern DataOps practices and connect directly with your peers, Synthesized users, and our engineers.