Metadata-Version: 2.1
Name: altair
Version: 4.2.2
Summary: Altair: A declarative statistical visualization library for Python.
Home-page: http://altair-viz.github.io
Download-URL: http://github.com/altair-viz/altair/
Author: Brian E. Granger / Jake VanderPlas
Author-email: jakevdp@gmail.com
License: BSD 3-clause
Classifier: Development Status :: 5 - Production/Stable
Classifier: Environment :: Console
Classifier: Intended Audience :: Science/Research
Classifier: License :: OSI Approved :: BSD License
Classifier: Natural Language :: English
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Classifier: Programming Language :: Python :: 3.9
Classifier: Programming Language :: Python :: 3.10
Requires-Python: >=3.7
Description-Content-Type: text/markdown
License-File: LICENSE
Requires-Dist: entrypoints
Requires-Dist: jinja2
Requires-Dist: jsonschema (>=3.0)
Requires-Dist: numpy
Requires-Dist: pandas (>=0.18)
Requires-Dist: toolz
Provides-Extra: dev
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Requires-Dist: mistune (<2.0.0) ; extra == 'dev'
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# Altair <a href="https://altair-viz.github.io/"><img align="right" src="https://altair-viz.github.io/_static/altair-logo-light.png" height="50"></img></a>
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[![Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/altair-viz/altair_notebooks/blob/master/notebooks/Index.ipynb)
[https://altair-viz.github.io](https://altair-viz.github.io)
**Altair** is a declarative statistical visualization library for Python. With Altair, you can spend more time understanding your data and its meaning. Altair's
API is simple, friendly and consistent and built on top of the powerful
[Vega-Lite](https://github.com/vega/vega-lite) JSON specification. This elegant
simplicity produces beautiful and effective visualizations with a minimal amount of code. *Altair is developed by [Jake Vanderplas](https://github.com/jakevdp) and [Brian
Granger](https://github.com/ellisonbg) in close collaboration with the [UW
Interactive Data Lab](https://idl.cs.washington.edu/).*
## Altair Documentation
See [Altair's Documentation Site](https://altair-viz.github.io),
as well as Altair's [Tutorial Notebooks](https://github.com/altair-viz/altair_notebooks).
## Example
Here is an example using Altair to quickly visualize and display a dataset with the native Vega-Lite renderer in the JupyterLab:
```python
import altair as alt
# load a simple dataset as a pandas DataFrame
from vega_datasets import data
cars = data.cars()
alt.Chart(cars).mark_point().encode(
x='Horsepower',
y='Miles_per_Gallon',
color='Origin',
)
```
![Altair Visualization](https://raw.githubusercontent.com/altair-viz/altair/master/images/cars.png)
One of the unique features of Altair, inherited from Vega-Lite, is a declarative grammar of not just visualization, but _interaction_.
With a few modifications to the example above we can create a linked histogram that is filtered based on a selection of the scatter plot.
```python
import altair as alt
from vega_datasets import data
source = data.cars()
brush = alt.selection(type='interval')
points = alt.Chart(source).mark_point().encode(
x='Horsepower',
y='Miles_per_Gallon',
color=alt.condition(brush, 'Origin', alt.value('lightgray'))
).add_selection(
brush
)
bars = alt.Chart(source).mark_bar().encode(
y='Origin',
color='Origin',
x='count(Origin)'
).transform_filter(
brush
)
points & bars
```
![Altair Visualization Gif](https://raw.githubusercontent.com/altair-viz/altair/master/images/cars_scatter_bar.gif)
## Getting your Questions Answered
If you have a question that is not addressed in the documentation, there are several ways to ask:
- open a [Github Issue](https://github.com/altair-viz/altair/issues)
- post a [StackOverflow Question](https://stackoverflow.com/questions/tagged/altair) (be sure to use the `altair` tag)
- ask on the [Altair Google Group](https://groups.google.com/forum/#!forum/altair-viz)
We'll do our best to get your question answered
## A Python API for statistical visualizations
Altair provides a Python API for building statistical visualizations in a declarative
manner. By statistical visualization we mean:
* The **data source** is a `DataFrame` that consists of columns of different data types (quantitative, ordinal, nominal and date/time).
* The `DataFrame` is in a [tidy format](https://vita.had.co.nz/papers/tidy-data.pdf)
where the rows correspond to samples and the columns correspond to the observed variables.
* The data is mapped to the **visual properties** (position, color, size, shape,
faceting, etc.) using the group-by data transformation.
The Altair API contains no actual visualization rendering code but instead
emits JSON data structures following the
[Vega-Lite](https://github.com/vega/vega-lite) specification. The resulting
Vega-Lite JSON data can be rendered in the following user-interfaces:
* [Jupyter Notebook](https://github.com/jupyter/notebook) (by installing [ipyvega](https://github.com/vega/ipyvega)).
* [JupyterLab](https://github.com/jupyterlab/jupyterlab) (no additional dependencies needed).
* [nteract](https://github.com/nteract/nteract) (no additional dependencies needed).
## Features
* Carefully-designed, declarative Python API based on
[traitlets](https://github.com/ipython/traitlets).
* Auto-generated internal Python API that guarantees visualizations are type-checked and
in full conformance with the [Vega-Lite](https://github.com/vega/vega-lite)
specification.
* Auto-generate Altair Python code from a Vega-Lite JSON spec.
* Display visualizations in the live Jupyter Notebook, JupyterLab, nteract, on GitHub and
[nbviewer](https://nbviewer.jupyter.org/).
* Export visualizations to PNG/SVG images, stand-alone HTML pages and the
[Online Vega-Lite Editor](https://vega.github.io/editor/#/).
* Serialize visualizations as JSON files.
* Explore Altair with dozens of examples in the [Example Gallery](https://altair-viz.github.io/gallery/index.html)
## Installation
To use Altair for visualization, you need to install two sets of tools
1. The core Altair Package and its dependencies
2. The renderer for the frontend you wish to use (i.e. `Jupyter Notebook`,
`JupyterLab`, or `nteract`)
Altair can be installed with either ``pip`` or with ``conda``.
For full installation instructions, please see
https://altair-viz.github.io/getting_started/installation.html
## Example and tutorial notebooks
We maintain a separate Github repository of Jupyter Notebooks that contain an
interactive tutorial and examples:
https://github.com/altair-viz/altair_notebooks
To launch a live notebook server with those notebook using [binder](https://mybinder.org/) or
[Colab](https://colab.research.google.com), click on one of the following badges:
[![Binder](https://beta.mybinder.org/badge.svg)](https://beta.mybinder.org/v2/gh/altair-viz/altair_notebooks/master)
[![Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/altair-viz/altair_notebooks/blob/master/notebooks/Index.ipynb)
## Project philosophy
Many excellent plotting libraries exist in Python, including the main ones:
* [Matplotlib](https://matplotlib.org/)
* [Bokeh](https://bokeh.pydata.org/en/latest/)
* [Seaborn](https://seaborn.pydata.org/)
* [Lightning](https://github.com/lightning-viz/lightning)
* [Plotly](https://plot.ly/)
* [Pandas built-in plotting](https://pandas.pydata.org/pandas-docs/stable/visualization.html)
* [HoloViews](https://holoviews.org)
* [VisPy](https://vispy.org/)
* [pygg](https://www.github.com/sirrice/pygg)
Each library does a particular set of things well.
### User challenges
However, such a proliferation of options creates great difficulty for users
as they have to wade through all of these APIs to find which of them is the
best for the task at hand. None of these libraries are optimized for
high-level statistical visualization, so users have to assemble their own
using a mishmash of APIs. For individuals just learning data science, this
forces them to focus on learning APIs rather than exploring their data.
Another challenge is current plotting APIs require the user to write code,
even for incidental details of a visualization. This results in an unfortunate
and unnecessary cognitive burden as the visualization type (histogram,
scatterplot, etc.) can often be inferred using basic information such as the
columns of interest and the data types of those columns.
For example, if you are interested in the visualization of two numerical
columns, a scatterplot is almost certainly a good starting point. If you add
a categorical column to that, you probably want to encode that column using
colors or facets. If inferring the visualization proves difficult at times, a
simple user interface can construct a visualization without any coding.
[Tableau](https://www.tableau.com/) and the [Interactive Data
Lab's](https://idl.cs.washington.edu/)
[Polestar](https://github.com/vega/polestar) and
[Voyager](https://github.com/vega/voyager) are excellent examples of such UIs.
### Design approach and solution
We believe that these challenges can be addressed without the creation of yet
another visualization library that has a programmatic API and built-in
rendering. Altair's approach to building visualizations uses a layered design
that leverages the full capabilities of existing visualization libraries:
1. Create a constrained, simple Python API (Altair) that is purely declarative
2. Use the API (Altair) to emit JSON output that follows the Vega-Lite spec
3. Render that spec using existing visualization libraries
This approach enables users to perform exploratory visualizations with a much
simpler API initially, pick an appropriate renderer for their usage case, and
then leverage the full capabilities of that renderer for more advanced plot
customization.
We realize that a declarative API will necessarily be limited compared to the
full programmatic APIs of Matplotlib, Bokeh, etc. That is a deliberate design
choice we feel is needed to simplify the user experience of exploratory
visualization.
## Development install
Altair requires the following dependencies:
* [pandas](https://pandas.pydata.org/)
* [traitlets](https://github.com/ipython/traitlets)
* [IPython](https://github.com/ipython/ipython)
If you have cloned the repository, run the following command from the root of the repository:
```
pip install -e .[dev]
```
If you do not wish to clone the repository, you can install using:
```
pip install git+https://github.com/altair-viz/altair
```
## Testing
To run the test suite you must have [py.test](https://pytest.org/latest/) installed.
To run the tests, use
```
py.test --pyargs altair
```
(you can omit the `--pyargs` flag if you are running the tests from a source checkout).
## Feedback and Contribution
See [`CONTRIBUTING.md`](https://github.com/altair-viz/altair/blob/master/CONTRIBUTING.md)
## Citing Altair
[![JOSS Paper](https://joss.theoj.org/papers/10.21105/joss.01057/status.svg)](https://joss.theoj.org/papers/10.21105/joss.01057)
If you use Altair in academic work, please consider citing https://joss.theoj.org/papers/10.21105/joss.01057 as
```bib
@article{VanderPlas2018,
doi = {10.21105/joss.01057},
url = {https://doi.org/10.21105/joss.01057},
year = {2018},
publisher = {The Open Journal},
volume = {3},
number = {32},
pages = {1057},
author = {Jacob VanderPlas and Brian Granger and Jeffrey Heer and Dominik Moritz and Kanit Wongsuphasawat and Arvind Satyanarayan and Eitan Lees and Ilia Timofeev and Ben Welsh and Scott Sievert},
title = {Altair: Interactive Statistical Visualizations for Python},
journal = {Journal of Open Source Software}
}
```
Please additionally consider citing the [vega-lite](https://vega.github.io/vega-lite/) project, which Altair is based on: https://dl.acm.org/doi/10.1109/TVCG.2016.2599030
```bib
@article{Satyanarayan2017,
author={Satyanarayan, Arvind and Moritz, Dominik and Wongsuphasawat, Kanit and Heer, Jeffrey},
title={Vega-Lite: A Grammar of Interactive Graphics},
journal={IEEE transactions on visualization and computer graphics},
year={2017},
volume={23},
number={1},
pages={341-350},
publisher={IEEE}
}
```
## Whence Altair?
Altair is the [brightest star](https://en.wikipedia.org/wiki/Altair) in the constellation Aquila, and along with Deneb and Vega forms the northern-hemisphere asterism known as the [Summer Triangle](https://en.wikipedia.org/wiki/Summer_Triangle).