Modular AI coding agent skills for ZenML workflows. Add the marketplace to your AI coding tool and install skills that guide you through implementing ZenML features.
# Add the ZenML skills marketplace
/plugin marketplace add zenml-io/skills
# Install a skill (e.g. quick-wins)
/plugin install zenml-quick-wins@zenml
# Use it — navigate to your ZenML project and run:
/zenml-quick-winsPlugin docs · Marketplace docs
Ask the built-in skill installer to fetch skills from this repo:
$skill-installer install the zenml skills from github.com/zenml-io/skills
- Open Cursor Settings (
Cmd+Shift+J/Ctrl+Shift+J) - Navigate to Rules → Project Rules → Add Rule
- Choose Remote Rule (GitHub) and enter
https://github.com/zenml-io/skills
| Skill | Description | Install |
|---|---|---|
zenml-quick-wins |
Analyze your setup, recommend high-impact improvements, and implement features like metadata logging, experiment tracking, alerts, and model governance | /plugin install zenml-quick-wins@zenml |
zenml-scoping |
Scope and decompose ML workflow ideas into realistic ZenML pipeline architectures through a structured interview process | /plugin install zenml-scoping@zenml |
zenml-pipeline-authoring |
Author ZenML pipelines with steps, artifacts, Docker settings, materializers, metadata, secrets, YAML config, and visualizations | /plugin install zenml-pipeline-authoring@zenml |
These skills are best used when you already have real source material from another workflow system — code, YAML, JSON job specs, pipeline definitions, or project config — and you want help translating it into idiomatic ZenML rather than doing a superficial syntax swap.
A few important caveats:
- They classify source concepts as direct, approximate, or unsupported rather than pretending every platform feature has a safe 1:1 ZenML equivalent.
- They are most helpful when you can provide the actual workflow code/config, not just a vague description.
- Some migrations will be partial by design: the skill may generate working ZenML code for the cleanly mappable parts and a migration report for the pieces that need redesign.
- After a migration, the best follow-up is usually
zenml-quick-winsfor production improvements andzenml-pipeline-authoringfor deeper customization.
| Skill | Description | Install |
|---|---|---|
zenml-airflow-migration |
Migrate Apache Airflow DAGs to idiomatic ZenML pipelines with concept mapping, code translation, severity-classified flagging, and redesign suggestions | /plugin install zenml-airflow-migration@zenml |
zenml-argo-migration |
Migrate Argo Workflows to idiomatic ZenML pipelines with concept mapping, code translation, Kubernetes-native pattern flagging, and redesign guidance | /plugin install zenml-argo-migration@zenml |
zenml-databricks-migration |
Migrate Databricks Workflows (Lakeflow Jobs) to idiomatic ZenML pipelines with notebook refactoring, concept mapping, code translation, and unsupported pattern flagging | /plugin install zenml-databricks-migration@zenml |
zenml-prefect-migration |
Migrate Prefect flows and workflows to idiomatic ZenML pipelines with concept mapping, dynamic-execution analysis, code translation, and unsupported pattern flagging | /plugin install zenml-prefect-migration@zenml |
zenml-vertexai-migration |
Migrate Vertex AI Pipelines (KFP v2 / PipelineJob workflows) to idiomatic ZenML pipelines with concept mapping, artifact-contract translation, GCPC rewrite guidance, and unsupported pattern flagging | /plugin install zenml-vertexai-migration@zenml |
zenml-azureml-migration |
Migrate Azure Machine Learning SDK v2 pipelines to idiomatic ZenML pipelines with concept mapping, Azure-aware compute translation, code patterns, and unsupported pattern flagging | /plugin install zenml-azureml-migration@zenml |
zenml-dagster-migration |
Migrate Dagster assets, ops, jobs, and asset-graph workflows to idiomatic ZenML pipelines with concept mapping, pipeline-boundary planning, code translation, and unsupported pattern flagging | /plugin install zenml-dagster-migration@zenml |
zenml-flyte-migration |
Migrate Flyte workflows, tasks, and LaunchPlans to idiomatic ZenML pipelines with concept mapping, special-type planning, code translation, and unsupported pattern flagging | /plugin install zenml-flyte-migration@zenml |
zenml-kedro-migration |
Migrate Kedro pipelines and projects to idiomatic ZenML pipelines with Data Catalog to artifact translation, concept mapping, code translation, and unsupported pattern flagging | /plugin install zenml-kedro-migration@zenml |
zenml-metaflow-migration |
Migrate Metaflow flows to idiomatic ZenML pipelines with FlowSpec mapping, artifact translation, control-flow redesign notes, and unsupported pattern flagging | /plugin install zenml-metaflow-migration@zenml |
zenml-sagemaker-migration |
Migrate Amazon SageMaker Pipelines to idiomatic ZenML pipelines with concept mapping, artifact-model rewrites, runtime-setting translation, and unsupported pattern flagging | /plugin install zenml-sagemaker-migration@zenml |
- Debugging — Investigate pipeline failures and performance issues
For the best AI-assisted ZenML experience, pair skills with MCP servers:
# Add ZenML docs MCP (Claude Code)
claude mcp add zenmldocs --transport http https://docs.zenml.io/~gitbook/mcpThis gives your AI assistant both structured workflows (skills) and doc-grounded answers (MCP).
- ZenML Documentation
- LLM Tooling Reference — Full guide to MCP servers, llms.txt, and skills