Visualize node-link graphs using Graphistry's cloud
Project description
**PyGraphistry** is a visual graph analytics library to extract, transform, and
load big graphs into `Graphistry's<http://www.graphistry.com>`_ GPU-cloud-accelerated
explorer.
PyGraphistry is...
- **Fast & Gorgeous**: Cluster, filter, and inspect large amounts of data at
interactive speed. We layout graphs with a descendant of the gorgeous
ForceAtlas2 layout algorithm introduced in Gephi. Our data explorer connects
to Graphistry's GPU cluster to layout and render hundreds of thousand of
nodes+edges in your browser at unparalleled speeds.
- **Notebook Friendly**: PyGraphistry plays well with interactive notebooks
like IPython/Juypter, Zeppelin, and Databricks: Process, visualize, and drill
into with graphs directly within your notebooks.
- **Batteries Included**: PyGraphistry works out-of-the-box with popular data
science and graph analytics libraries. It is also very easy to use. To create
the visualization shown above, download this dataset of Facebook communities
from SNAP and load it with your favorite library
Try It Out!
-----------
Tutorial and API docs are on
`https://github.com/graphistry/pygraphistry<https://github.com/graphistry/pygraphistry>`_
load big graphs into `Graphistry's<http://www.graphistry.com>`_ GPU-cloud-accelerated
explorer.
PyGraphistry is...
- **Fast & Gorgeous**: Cluster, filter, and inspect large amounts of data at
interactive speed. We layout graphs with a descendant of the gorgeous
ForceAtlas2 layout algorithm introduced in Gephi. Our data explorer connects
to Graphistry's GPU cluster to layout and render hundreds of thousand of
nodes+edges in your browser at unparalleled speeds.
- **Notebook Friendly**: PyGraphistry plays well with interactive notebooks
like IPython/Juypter, Zeppelin, and Databricks: Process, visualize, and drill
into with graphs directly within your notebooks.
- **Batteries Included**: PyGraphistry works out-of-the-box with popular data
science and graph analytics libraries. It is also very easy to use. To create
the visualization shown above, download this dataset of Facebook communities
from SNAP and load it with your favorite library
Try It Out!
-----------
Tutorial and API docs are on
`https://github.com/graphistry/pygraphistry<https://github.com/graphistry/pygraphistry>`_
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
graphistry-0.9.7.tar.gz
(8.8 kB
view hashes)