LogoLogo
  • Datafold
  • Introduction
    • Data Diff
      • Continuous Integration
      • Manual Data Diff
      • Diff Results
    • Column-level lineage
      • Usage, popularity, & impact per table or column
    • Alerting
  • ⏱️Quickstart Guide
  • Getting Started
    • Data Warehouses
      • Snowflake
      • BigQuery
      • Redshift
      • Postgres
      • Databricks
    • Configuration
      • Indexing
      • Filtering
      • Profiling
      • Lineage
    • On-prem Deployment
      • AWS
      • GCP
    • SSO
      • Okta
      • Google OAuth
      • SAML
  • Integrations
    • Continuous Integration
      • Source Control with Git
        • GitHub
          • On-prem Github
        • GitLab
      • dbt Cloud
      • dbt Core / datafold-sdk
        • GitHub example
        • GitLab example
      • dbt Configurations
      • datafold-sdk
    • Alert Integrations
      • Slack integration
        • Slack Alerts
        • On-prem Slack Integration
      • Alerting webhooks
    • Data Apps
      • Mode
      • Hightouch
  • Developer
    • Datafold API
      • Alerting
      • GraphQL Metadata API
      • Data Diff
      • Error handling
    • Security
      • GDPR
      • Network Security
Powered by GitBook
On this page

Was this helpful?

  1. Integrations
  2. Continuous Integration

Source Control with Git

Using git integrations to become proactive about data quality

PreviousContinuous IntegrationNextGitHub

Last updated 2 years ago

Was this helpful?

One of the most powerful features of Datafold is our ability to integrate with your source control system and display potential data issues before changes are made. Pull requests with Datafold now alert when there are downstream changes or unintended data issues coming through.

Presently, you can set up continuous integration with:

GitHub
GitLab