databricks-jobs
π―Skillfrom databricks-solutions/ai-dev-kit
Automate, manage, and monitor Databricks job workflows with advanced scheduling, error handling, and performance tracking capabilities
Part of
databricks-solutions/ai-dev-kit(9 items)
Installation
npx skills add https://github.com/databricks-solutions/ai-dev-kit --skill databricks-jobsNeed more details? View full documentation on GitHub β
More from this repository8
Simplifies Databricks API interactions with Python, enabling seamless cluster management, job scheduling, and workspace resource operations.
Streamlines asset management and versioning for machine learning models, enabling efficient packaging, distribution, and deployment of AI artifacts.
Generates comprehensive documentation and code samples for Databricks projects, streamlining technical writing and knowledge sharing across data engineering workflows.
Simplifies Spark data pipeline development with declarative configuration, enabling rapid, maintainable ETL workflows across complex data transformations.
Streamlines machine learning model evaluation and tracking using MLflow, enabling comprehensive performance metrics and experiment management.
Automates Databricks lakehouse infrastructure provisioning with standardized configurations, security settings, and resource management.
Streamlines Databricks application development with automated provisioning, configuration management, and deployment workflows for complex AI and data projects.
Automates Databricks workspace configuration, managing clusters, secrets, and infrastructure-as-code for consistent and reproducible data environments.