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Aquarel
Aquarel is a lightweight templating engine and wrapper around Matplotlibs' rcparams
to make styling plots simple.
Aquarel templates can be defined programmatically and be serialized and shared in a JSON format.
Full documentation is available at aquarel.readthedocs.io.
Installation
Install via pip:
python -m pip install aquarel
Usage
Applying a style
Styles can be either applied globally
from aquarel import load_theme
theme = load_theme("arctic_light")
theme.apply()
# ... plotting code here
theme.apply_transforms()
...or with a context manager:
from aquarel import load_theme
with load_theme("arctic_light"):
figure = # ... plotting code here
Transforms
Themes may specify transforms. Transforms are functions applied on the finished plot to achieve aesthetics that are not possibly by means of rcparams
only.
For example, to trim the axes, one could apply the trim
transform:
from aquarel import load_theme
with load_theme("arctic_light").set_transforms(trim=True):
figure = # ... plotting code here
# plt.show() or savefig() have to be called outside the context manager to have the transforms correctly applied.
figure.savefig()
However, there is one important thing to keep in mind: since transforms require the matplotlib figure/axes object to be present and finished, they have to be applied after the plotting code.
When using a theme with a context manager, this is automatically done in the __exit__
call. If global usage is desired, Theme.apply_transforms()
has to be called after every figure.
This also means that calls that make use of the finished figure, i.e. plt.show
or plt.savefig
have to commence after transform application, so outside the context manager.
Customization & Theme Creation
Besides loading a predefined theme, you can create a new theme
from aquarel import Theme
theme = (
Theme(name="demo", description="A demo theme.")
.set_grid(draw=True, width=0.5)
.set_font(family="monospace")
.set_color(grid_color="blue")
)
...modify an existing one
from aquarel import load_theme
theme = (
load_theme("arctic_light")
.set_grid(width=2)
)
...and write and load your custom styles to and from disk:
from aquarel import Theme
theme = Theme.from_file("custom.json")
theme.save("custom.json")
If the simplified API of aquarel is not sufficient for your use-case, you can also directly modify the underlying rcparams
with overrides:
from aquarel import load_theme
theme = load_theme("arctic_light").set_overrides({
"ytick.minor.visible": False,
"xtick.minor.visible": True
})
Themes
aquarel ships with several pre-defined themes that are designed to showcase its templating capabilities. Add your own with a pull request!
Name | Description | Preview |
---|---|---|
arctic_dark |
Frosty dark theme based on the nord color scheme | |
arctic_light |
Frosty dark theme based on the nord color scheme | |
boxy_dark |
Dark theme with enclosing box and grid | |
boxy_light |
Light theme with enclosing box and grid | |
gruvbox_dark |
Dark theme with pastel retro groove colors | |
gruvbox_light |
Light theme with pastel retro groove colors | |
minimal_dark |
Dark theme with minimal visual elements | |
minimal_light |
Light theme with minimal visual elements | |
scientific |
Space-efficient and color-blind friendly theme for printing on paper | |
umbra_dark |
Balanced dark theme based on the penumbra color scheme | |
umbra_light |
Balanced light theme based on the penumbra color scheme |
FAQ
How is this different from matplotlib style sheets?
aquarel
is a wrapper around the stylesheets, so everything you can do with stylesheets can be achieved with aquarel
. However there are some notable shortcomings of stylesheets that aquarel
adresses:
- On-the-fly templating – the stylesheets are applied once and are then used for every plot in the current plotting context (py-file, notebook, ipython session, ...).
aquarel
takes a different approach here and aims to provide per-plot styling with optional temporary changes. The styleaquarel
applies lasts throughout the context manager (with aquarel.Theme:
), and switches back to whatever is the global default style outside of it. This allows you to do plot-level temporary changes. You have one plot in your notebook that needs no minor ticks? justwith theme.set_ticks():
for this plot only. - Simplified templating: matplotlib stylesheets have a lot of redundant keys for most applications. For example, you rarely want to have different colors for both axes; while possible with a stylefile, its cumbersome to change all the different keys to achieve a uniform look.
aquarel
simplifies this with e.x. a singleset_color(ticks="#eee")
call, which changes all related and relevant keys for ticks. Note that this simplifies the API, but does not restrict capabilities: theset_overrides
method accepts every possible stylefile key if you want to access low-level styling. - Transforms: some style elements, like trimmed axes, are not achievable with stylesheets alone (see README for more informations).
aquarel
defines a few of these transforms (and hopefully many more in the future), and makes them persistable and shareable through aquarel themes. Instead of having to apply a seaborn despine after every plot, you can have a global style that specifies a trim, and have consistent styling throughout with minimal code repetition.