⚡ Getting Started
Get up and running with FlowyML Notebook in under 60 seconds. No Docker, no cloud signup, no configuration needed.
Installation
Minimal Install
Just need the core notebook? Run pip install flowyml-notebook — you can add extras later.
What's Included
| Package | What You Get |
|---|---|
| Core | Reactive DAG engine, editor, recipes, reports, app publishing |
[ai] |
|
[sql] |
|
[exploration] |
|
[all] |
Launch
That's it. Your browser opens to http://localhost:8880 and you're ready to build.
CLI Options
Your First Reactive Notebook
1. Start with Data
Click Demo in the toolbar to load a full end-to-end example, or add cells manually:
2. Get Instant Insights
Every DataFrame automatically gets rich profiling — statistics, charts, correlations, and ML recommendations:
3. Experience Reactivity
Change anything in Cell 1 → Cell 2 automatically re-executes.
That's the power of the reactive DAG engine. No stale state. No "restart and run all."
4. Visualize Dependencies
Open the DAG tab to see how your cells connect:
5. Ship to Production
When you're happy with your analysis:
Export Report — Generate HTML/PDF with one click
Publish as App — Turn it into an interactive web dashboard
Promote to Pipeline — Convert to a production FlowyML pipeline
Connect to FlowyML (Optional)
For experiment tracking, model registry, and pipeline deployment, connect to a FlowyML instance:
Or configure from the Env panel in the sidebar.
What's Next?
| Explore | Description |
|---|---|
| Complete visual tour of every capability | |
| 39 built-in code templates for ML workflows | |
| GitHub-powered team workflows | |
| Pipelines, deploy, and asset management | |
| Deep dive into DataFrame profiling |
Need Help?