Exploring Project Jupyter, Apache Superset & Visivo
Project Jupyter vs. Apache Superset vs. Visivo
Compare key features, capabilities, and differentiators between Project Jupyter, Apache Superset, Visivo. This comprehensive analysis will help you make an informed decision for your data visualization needs.
Quick Comparison
Key features and capabilities at a glance
| Feature | Project Jupyter | Apache Superset | Visivo |
|---|---|---|---|
| Deployment Model | Open-source (local), Jupyter server, JupyterHub deployment | Self-host (Apache OSS), Preset Cloud (managed), Docker deployment | Open-source, Cloud Service, Self-hosted |
| Pricing | Free (BSD license) | Open-source (Apache 2.0); Preset Cloud offers paid hosting/support | Open source (GPL-3.0) |
| Cost | $ | $ | $ |
| Git Integration | |||
| CI/CD & Testing | |||
| Real-time | |||
| AI Features | |||
| Visual to Code | |||
| DAG-Based |
Target Users & Use-Cases
Each BI tool is designed with specific user personas in mind.
Project Jupyter
Apache Superset
Visivo
Ease of Development & Deployment
Development experience directly impacts team productivity and time-to-value.
Project Jupyter
Apache Superset
Visivo
Key Integrations & Ecosystem
A robust ecosystem of integrations is essential for modern BI tools.
Project Jupyter
Apache Superset
Visivo
Visualization Capabilities
The ability to create compelling visualizations is key to data storytelling.
Project Jupyter
Not a conventional BI tool – it's a computing environment. Visuals come from libraries (Matplotlib, Plotly, etc.) within code cells. Highly flexible outputs (any HTML/JS). Sharing typically static (not interactive unless using Voila or similar to create dashboards).
Apache Superset
Rich set of visualizations (bar, line, time-series, big number, etc.) via built-in plugins. Dashboards support filters and cross-highlighting. Customization is decent (colors, chart options) but not as polished as Tableau. Can create custom viz plugins with React/D3 if needed.
Visivo
Highly custom UI with easy defaults
Detailed Differentiators
Each platform's unique strengths and limitations.
Project Jupyter
Apache Superset
Visivo
Security & Architecture
Critical considerations for enterprise deployments.
Project Jupyter
DB Access: If a notebook connects to a DB, it does so directly (with credentials in code or config). Virtualization: No – but you could use tools like Trino via Python to virtualize in code. Push: No, unless custom code to push data. Other: Jupyter itself has no auth (except if behind JupyterHub). Security concerns if sharing notebooks with sensitive data output.
Apache Superset
DB Access: Yes, connects directly to databases with provided creds (queries run in DB). Virtualization: No internal data storage beyond caches – queries are delegated to sources. Push: No, data is pulled via queries on demand or scheduled caching. Other: Supports row-level security filters and role-based access to datasets/dashboards. Uses your DB's security for data access (you supply read-only creds).
Visivo
No db access required. Very strong security features due to the DAG-based access controls and the push based deployment model.
Why Visivo Stands Out
While each platform has its strengths, Visivo offers unique advantages for modern data teams.
Ready to Experience Modern BI?
Try Visivo today and see how it transforms your data analytics workflow.
$ curl -fsSL https://visivo.sh | bash
