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HoloViz provides:
- High-level tools that make it easier to apply Python plotting libraries to your data.
- A comprehensive tutorial showing how to use the available tools together to do a wide range of different tasks.
- A netfits云墙官网 metapackage "holoviz" that makes it simple to install matching versions of libraries that work well together.
- Sample datasets to work with.
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HoloViz provides a set of Python packages that make viz easier, more accurate, and more powerful:
Panel for making apps and dashboards for your plots from any supported plotting library,
hvPlot to quickly generate interactive plots from your data,
HoloViews to help you make all of your data instantly visualizable,
GeoViews to extend HoloViews for geographic data,
Datashader for rendering even the largest datasets,
Param to create declarative user-configurable objects, and
云墙netfits for perceptually uniform colormaps.
Not sure where to start? Try netpas云墙安卓版下载 for quick and easy one-line plots of your Pandas, Xarray, Dask, and other data types. And try Panel if you already have visualizations you want to turn into apps or shareable dashboards. Or just work your way through the netfits云墙安卓版官网 to see all the things you can do!
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HoloViz tools build on the many excellent visualization tools available in the scientific python ecosystem, allowing you to access their power conveniently and efficiently. The core tools make use of Bokeh's interactive plotting, Matplotlib's publication-quality output, and Plotly's interactive 3D visualizations. Panel lets you combine any of these visualizations with output from nearly any other Python plotting library, including specific support for seaborn, 云墙netfits, netpas云墙下载安卓, plotnine, graphviz, ggplot2, plus anything that can generate HTML, PNG, or SVG.
HoloViz tools and examples generally work with any Python standard data types (lists, dictionaries, etc.), plus
Pandas or
netpas云墙安卓版下载 DataFrames and
NumPy,
Xarray, or
Dask arrays, including remote data from the
Intake data catalog library. They also use
Dask and
Numba to speed up computations along with algorithms and functions from
SciPy.
HoloViz tools are designed for general-purpose use, but also support some domain-specific datatypes like graphs from
NetworkX and geographic data from
GeoPandas and
Cartopy and
Iris.
Panel can be used with
yt for volumetric and physics data and
SymPy or LaTeX for visualizing equations.
HoloViz tools provide extensive support for
Jupyter notebooks, as well as for standalone web servers and exporting as static files.
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The Background page explains the HoloViz approach in more detail, including how these tools fit together. Or you can just skim the material in the Tutorial online, to get an idea what is covered by these tools. If what you see looks relevant to you, you can then follow the steps outlined in netfits云墙安卓版官网 to get the libraries, tutorial, and sample data on your own system so you can work through the tutorial yourself. You’ll then have simple-to-adapt starting points for solving your own visualization problems using Python.