dependabot[bot] 1aac48aacb Bump word-wrap from 1.2.3 to 1.2.4 in /examples/javascript (#281)
Bumps [word-wrap](https://github.com/jonschlinkert/word-wrap) from 1.2.3 to 1.2.4.
- [Release notes](https://github.com/jonschlinkert/word-wrap/releases)
- [Commits](https://github.com/jonschlinkert/word-wrap/compare/1.2.3...1.2.4)

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updated-dependencies:
- dependency-name: word-wrap
  dependency-type: indirect
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HiPlot - High dimensional Interactive Plotting CircleCI

Logo

Support Ukraine License: MIT PyPI download month PyPI version docs Open In Colab

HiPlot is a lightweight interactive visualization tool to help AI researchers discover correlations and patterns in high-dimensional data using parallel plots and other graphical ways to represent information.

Try a demo now with sweep data or upload your CSV or Open In Colab

There are several modes to HiPlot:

  • As a web-server (if your data is a CSV for instance)
  • In a jupyter notebook (to visualize python data), or in Streamlit apps
  • In CLI to render standalone HTML
pip install -U hiplot  # Or for conda users: conda install -c conda-forge hiplot

If you have a jupyter notebook, you can get started with something as simple as:

import hiplot as hip
data = [{'dropout':0.1, 'lr': 0.001, 'loss': 10.0, 'optimizer': 'SGD'},
        {'dropout':0.15, 'lr': 0.01, 'loss': 3.5, 'optimizer': 'Adam'},
        {'dropout':0.3, 'lr': 0.1, 'loss': 4.5, 'optimizer': 'Adam'}]
hip.Experiment.from_iterable(data).display()

See the live result

Result

Citing

@misc{hiplot,
    author = {Haziza, D. and Rapin, J. and Synnaeve, G.},
    title = {{Hiplot, interactive high-dimensionality plots}},
    year = {2020},
    publisher = {GitHub},
    journal = {GitHub repository},
    howpublished = {\url{https://github.com/facebookresearch/hiplot}},
}

Credits

Inspired by and based on code from Kai Chang, Mike Bostock and Jason Davies.

External contributors (please add your name when you submit your first pull request):

License

HiPlot is MIT licensed, as found in the LICENSE file.

Description
Mirror of facebookresearch/hiplot (GitHub)
Readme MIT 527 MiB
Languages
TypeScript 65%
Python 26.4%
SCSS 5.4%
JavaScript 2.4%
HTML 0.5%
Other 0.3%