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Turn even the largest data into images, accurately
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What is it?
Datashader is a data rasterization pipeline for automating the process of
creating meaningful representations of large amounts of data. Datashader
breaks the creation of images of data into 3 main steps:
Projection
Each record is projected into zero or more bins of a nominal plotting grid
shape, based on a specified glyph.
Aggregation
Reductions are computed for each bin, compressing the potentially large
dataset into a much smaller aggregate array.
Transformation
These aggregates are then further processed, eventually creating an image.
Using this very general pipeline, many interesting data visualizations can be
created in a performant and scalable way. Datashader contains tools for easily
creating these pipelines in a composable manner, using only a few lines of code.
Datashader can be used on its own, but it is also designed to work as
a pre-processing stage in a plotting library, allowing that library
to work with much larger datasets than it would otherwise.
Installation
Datashader supports Python 3.10, 3.11, 3.12, and 3.13 on Linux, Windows, or
Mac and can be installed with conda:
conda install datashader
or with pip:
pip install datashader
For the best performance, we recommend using conda so that you are sure
to get numerical libraries optimized for your platform. The latest
releases are avalailable on the pyviz channel conda install -c pyviz datashader and the latest pre-release versions are avalailable on the
dev-labelled channel conda install -c pyviz/label/dev datashader.
Fetching Examples
Once you've installed datashader as above you can fetch the examples:
datashader examples
cd datashader-examples
This will create a new directory called
datashader-examples with all the data
needed to run the examples.
To run all the examples you will need some extra dependencies. If you
installed datashader within a conda environment, with that
environment active run:
Put the datashader directory into the Python path in this
environment:
pip install --no-deps -e .
Learning more
After working through the examples, you can find additional resources linked
from the datashader documentation,
including API documentation and papers and talks about the approach.
Some Examples
About
Quickly and accurately render even the largest data.