From databricks-skills
Develops and deploys Lakeflow Jobs on Databricks using CLI bundles for data engineering with notebooks, Python wheels, or SQL tasks. Invoke before implementation.
How this skill is triggered — by the user, by Claude, or both
Slash command
/databricks-skills:databricks-jobsThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
**FIRST**: Use the parent `databricks-core` skill for CLI basics, authentication, profile selection, and data exploration commands.
FIRST: Use the parent databricks-core skill for CLI basics, authentication, profile selection, and data exploration commands.
Lakeflow Jobs are scheduled workflows that run notebooks, Python scripts, SQL queries, and other tasks on Databricks.
Use databricks bundle init with a config file to scaffold non-interactively. This creates a project in the <project_name>/ directory:
databricks bundle init default-python --config-file <(echo '{"project_name": "my_job", "include_job": "yes", "include_pipeline": "no", "include_python": "yes", "serverless": "yes"}') --profile <PROFILE> < /dev/null
project_name: letters, numbers, underscores onlyAfter scaffolding, create CLAUDE.md and AGENTS.md in the project directory. These files are essential to provide agents with guidance on how to work with the project. Use this content:
# Declarative Automation Bundles Project
This project uses Declarative Automation Bundles (formerly Databricks Asset Bundles) for deployment.
## Prerequisites
Install the Databricks CLI (>= v0.288.0) if not already installed:
- macOS: `brew tap databricks/tap && brew install databricks`
- Linux: `curl -fsSL https://raw.githubusercontent.com/databricks/setup-cli/main/install.sh | sh`
- Windows: `winget install Databricks.DatabricksCLI`
Verify: `databricks -v`
## For AI Agents
Read the `databricks-core` skill for CLI basics, authentication, and deployment workflow.
Read the `databricks-jobs` skill for job-specific guidance.
If skills are not available, install them: `databricks experimental aitools install`
my-job-project/
├── databricks.yml # Bundle configuration
├── resources/
│ └── my_job.job.yml # Job definition
├── src/
│ ├── my_notebook.ipynb # Notebook tasks
│ └── my_module/ # Python wheel package
│ ├── __init__.py
│ └── main.py
├── tests/
│ └── test_main.py
└── pyproject.toml # Python project config (if using wheels)
Edit resources/<job_name>.job.yml to configure tasks:
resources:
jobs:
my_job:
name: my_job
tasks:
- task_key: my_notebook
notebook_task:
notebook_path: ../src/my_notebook.ipynb
- task_key: my_python
depends_on:
- task_key: my_notebook
python_wheel_task:
package_name: my_package
entry_point: main
Task types: notebook_task, python_wheel_task, spark_python_task, pipeline_task, sql_task
Parameters defined at job level are passed to ALL tasks (no need to repeat per task):
resources:
jobs:
my_job:
parameters:
- name: catalog
default: ${var.catalog}
- name: schema
default: ${var.schema}
Access parameters in notebooks with dbutils.widgets.get("catalog").
# Read parameters
catalog = dbutils.widgets.get("catalog")
schema = dbutils.widgets.get("schema")
# Read tables
df = spark.read.table(f"{catalog}.{schema}.my_table")
# SQL queries
result = spark.sql(f"SELECT * FROM {catalog}.{schema}.my_table LIMIT 10")
# Write output
df.write.mode("overwrite").saveAsTable(f"{catalog}.{schema}.output_table")
resources:
jobs:
my_job:
trigger:
periodic:
interval: 1
unit: DAYS
Or with cron:
schedule:
quartz_cron_expression: "0 0 2 * * ?"
timezone_id: "UTC"
resources:
jobs:
my_pipeline_job:
tasks:
- task_key: extract
notebook_task:
notebook_path: ../src/extract.ipynb
- task_key: transform
depends_on:
- task_key: extract
notebook_task:
notebook_path: ../src/transform.ipynb
- task_key: load
depends_on:
- task_key: transform
notebook_task:
notebook_path: ../src/load.ipynb
Run unit tests locally:
uv run pytest
databricks bundle validate --profile <profile>databricks bundle deploy -t dev --profile <profile>databricks bundle run <job_name> -t dev --profile <profile>databricks jobs get-run --run-id <id> --profile <profile>npx claudepluginhub databricks/databricks-agent-skillsManages Databricks Jobs: create, list, run, update, delete multi-task DAG workflows with schedules, notifications using Python SDK, CLI, or Asset Bundles.
Deploys Databricks jobs, DLT pipelines, and ML models using Declarative Automation Bundles for multi-environment IaC management.
Create, configure, validate, deploy, run, and manage Databricks Declarative Automation Bundles (DABs) for resources like dashboards, jobs, pipelines, alerts, volumes, and apps.