CI/CD for Databricks: Advanced Asset Bundles and GitHub Actions

Databricks Asset Bundles (DABs) provide a way to use the command line to deploy and run a set of Databricks assets — like notebooks, Python code, DLT pipelines and workflows. To automate deployments, you create a deployment pipeline that uses the power of DABs along with other validation steps to ensure high quality deployments. In this session you will learn how to automate CI/CD processes for Databricks while following best practices to keep deployments easy to scale and maintain. After a brief explanation of why Databricks Asset Bundles are a good option for CI/CD, we will walk through a working project including advanced variables, target-specific overrides, linting, integration testing and automatic deployment upon code review approval. You will leave the session clear on how to build your first GitHub Action using DABs. Talk By: Dustin Vannoy, Sr. Specialist Solutions Architect, Databricks Here’s more to explore: Production ready data pipelines for analytics and AI: https://www.databricks.com/solutions/... The Big Book of Data Engineering: https://www.databricks.com/resources/... See all the product announcements from Data + AI Summit: https://www.databricks.com/events/dat... Connect with us: Website: https://databricks.com Twitter:   / databricks   LinkedIn:   / databricks   Instagram:   / databricksinc   Facebook:   / databricksinc  

Databricks Asset Bundles: A Unifying Tool for Deployment on Databricks
▶︎

Databricks Asset Bundles: A Unifying Tool for Deployment on Databricks

Power Apps and Power Automate in Microsoft Teams [Full Course]
▶︎

Power Apps and Power Automate in Microsoft Teams [Full Course]

Building Enterprise-Ready Agents using Agent Bricks
▶︎

Building Enterprise-Ready Agents using Agent Bricks

Complete GitHub Actions Course - From BEGINNER to PRO
▶︎

Complete GitHub Actions Course - From BEGINNER to PRO

Lakeflow in Production: CI/CD, Testing and Monitoring at Scale
▶︎

Lakeflow in Production: CI/CD, Testing and Monitoring at Scale

Learn Practical Techniques for Applying Data Quality in the Lakehouse with Databricks
▶︎

Learn Practical Techniques for Applying Data Quality in the Lakehouse with Databricks

Databricks Asset Bundles: A Standard, Unified Approach to Deploying Data Products on Databricks
▶︎

Databricks Asset Bundles: A Standard, Unified Approach to Deploying Data Products on Databricks

Efficient MLOps: Developing and Deploying ML Models with Databricks
▶︎

Efficient MLOps: Developing and Deploying ML Models with Databricks

A Technical Deep Dive into Unity Catalog's Practitioner Playbook
▶︎

A Technical Deep Dive into Unity Catalog's Practitioner Playbook

CICD process in Databricks with Declarative Automation Bundles (DABs)| Demo in Free Edition
▶︎

CICD process in Databricks with Declarative Automation Bundles (DABs)| Demo in Free Edition

Authoring Data Pipelines With the New Lakeflow Declarative Pipelines Editor
▶︎

Authoring Data Pipelines With the New Lakeflow Declarative Pipelines Editor

Deploying Databricks Asset Bundles (DABs) at Scale
▶︎

Deploying Databricks Asset Bundles (DABs) at Scale

CLAUDE CODE ADVANCED FULL COURSE (3 HOURS)
▶︎

CLAUDE CODE ADVANCED FULL COURSE (3 HOURS)

Turn Genie Into an Agent Using Conversation APIs
▶︎

Turn Genie Into an Agent Using Conversation APIs

Databricks CI/CD pipelines with GitHub Actions to separate environments
▶︎

Databricks CI/CD pipelines with GitHub Actions to separate environments

Exploring MLOps and LLMOps: Architectures and Best Practices
▶︎

Exploring MLOps and LLMOps: Architectures and Best Practices

Databricks Asset Bundle Full Course [2025 JOB READY] | Databricks CI/CD
▶︎

Databricks Asset Bundle Full Course [2025 JOB READY] | Databricks CI/CD

Data Modeling 101 for Data Lakehouse Demystified
▶︎

Data Modeling 101 for Data Lakehouse Demystified

Complete CI/CD Implementation for Databricks with Azure DevOps and Asset Bundles | Step-by-Step Demo
▶︎

Complete CI/CD Implementation for Databricks with Azure DevOps and Asset Bundles | Step-by-Step Demo

Building Tool-Calling Agents With Databricks Agent Framework and MCP
▶︎

Building Tool-Calling Agents With Databricks Agent Framework and MCP