Some useful extensions for Matplotlib.

Overview

mplx

Some useful extensions for Matplotlib.

PyPi Version PyPI pyversions GitHub stars Downloads

gh-actions codecov LGTM Code style: black

Contour plots for functions with discontinuities

plt.contour mplx.contour(max_jump=1.0)

Matplotlib has problems with contour plots of functions that have discontinuities. The software has no way to tell discontinuities and very sharp, but continuous cliffs apart, and contour lines will be drawn along the discontinuity.

mplx improves upon this by adding the parameter max_jump. If the difference between two function values in the grid is larger than max_jump, a discontinuity is assumed and no line is drawn. Similarly, min_jump can be used to highlight the discontinuity.

As an example, take the function imag(log(Z)) for complex values Z. Matplotlib's contour lines along the negative real axis are wrong.

import matplotlib.pyplot as plt
import numpy as np

import mplx

x = np.linspace(-2.0, 2.0, 100)
y = np.linspace(-2.0, 2.0, 100)

X, Y = np.meshgrid(x, y)
Z = X + 1j * Y

vals = np.imag(np.log(Z))

# plt.contour(X, Y, vals, levels=[-2.0, -1.0, 0.0, 1.0, 2.0])  # draws wrong lines
mplx.contour(X, Y, vals, levels=[-2.0, -1.0, 0.0, 1.0, 2.0], max_jump=1.0)
mplx.contour(X, Y, vals, levels=[0.0], min_jump=1.0, linestyles=":")

plt.gca().set_aspect("equal")
plt.show()

Relevant discussions:

License

This software is published under the MIT license.

Comments
  • Remove some typing hint to support older numpy ?

    Remove some typing hint to support older numpy ?

    Hello, I got an error ModuleNotFoundError: No module named 'numpy.typing' due to the typing hint from numpy.typing import ArrayLike.

    Would you mind remove this hint to support older numpy version like 1.19.* ? It seems no performance issue after remove it.

    opened by ProV1denCEX 5
  • Support for horizontal barchart

    Support for horizontal barchart

    This PR solves #30 by adding an alignment argument to show_bar_values defaulting to "vertical".

    I couldn't think of a robust way of determining the alignment automatically. Checking if the width of the bar is greater or lower than its height seemed a bit dodgy in some cases... I don't know. What do you think @nschloe ?

    Usage (adapted from README demo):

    import matplotlib.pyplot as plt
    import matplotx
    
    labels = ["Australia", "Brazil", "China", "Germany", "Mexico", "United\nStates"]
    vals = [21.65, 24.5, 6.95, 8.40, 21.00, 8.55]
    ypos = range(len(vals))
    
    
    with plt.style.context(matplotx.styles.dufte_bar):
        plt.barh(ypos, vals)
        plt.yticks(ypos, labels)
        matplotx.show_bar_values("{:.2f}", alignment="horizontal")
        plt.title("average temperature [°C]")
        plt.tight_layout()
        plt.show()
    

    Produces: Figure_1

    opened by RemDelaporteMathurin 3
  • Support for horizontal barchart

    Support for horizontal barchart

    matplotx.show_bar_values works perfectly with vertical bar charts but not with horizontal bar charts.

    These are often used with long text labels.

    import matplotlib.pyplot as plt
    import matplotx
    
    labels = ["Australia", "Brazil", "China", "Germany", "Mexico", "United\nStates"]
    vals = [21.65, 24.5, 6.95, 8.40, 21.00, 8.55]
    ypos = range(len(vals))
    
    with plt.style.context(matplotx.styles.dufte_bar):
        plt.barh(ypos, vals)
        plt.yticks(ypos, labels)
        matplotx.show_bar_values("{:.2f}")
        plt.title("average temperature [°C]")
        plt.tight_layout()
        plt.show()
    
    

    Produces: image

    I can write a PR and add a show_hbar_values() function that works with horizontal bar charts and produces: image

    Or it can also be an argument of matplotx.show_bar_value defaulting to "vertical" like show_bar_value(alignement="horizontal")

    What do you think @nschloe ?

    opened by RemDelaporteMathurin 2
  • Citation

    Citation

    Great package! Thank you so much it really helps!

    I will surely use this in my next paper/talk. How can I cite this package?

    Do you plan on adding a Zenodo DOI?

    Cheers Remi

    opened by RemDelaporteMathurin 2
  • Some styles are broken

    Some styles are broken

    Using the code example in the readme:

    import matplotlib.pyplot as plt
    import matplotx
    plt.style.use(matplotx.styles.ayu)
    

    I get this error:

    File ~/.conda/envs/.../lib/python3.10/site-packages/matplotlib/style/core.py:117, in use(style)
        115 for style in styles:
        116     if not isinstance(style, (str, Path)):
    --> 117         _apply_style(style)
        118     elif style == 'default':
        119         # Deprecation warnings were already handled when creating
        120         # rcParamsDefault, no need to reemit them here.
        121         with _api.suppress_matplotlib_deprecation_warning():
    
    File ~/.conda/envs/.../lib/python3.10/site-packages/matplotlib/style/core.py:62, in _apply_style(d, warn)
         61 def _apply_style(d, warn=True):
    ---> 62     mpl.rcParams.update(_remove_blacklisted_style_params(d, warn=warn))
    
    File ~/.conda/envs/.../lib/python3.10/_collections_abc.py:994, in MutableMapping.update(self, other, **kwds)
        992 if isinstance(other, Mapping):
        993     for key in other:
    --> 994         self[key] = other[key]
        995 elif hasattr(other, "keys"):
        996     for key in other.keys():
    
    File ~/.conda/envs/.../lib/python3.10/site-packages/matplotlib/__init__.py:649, in RcParams.__setitem__(self, key, val)
        647     dict.__setitem__(self, key, cval)
        648 except KeyError as err:
    --> 649     raise KeyError(
        650         f"{key} is not a valid rc parameter (see rcParams.keys() for "
        651         f"a list of valid parameters)") from err
    
    KeyError: 'dark is not a valid rc parameter (see rcParams.keys() for a list of valid parameters)'
    

    Lib versions:

    matplotlib-base           3.5.2           py310h5701ce4_1    conda-forge
    matplotx                  0.3.7                    pypi_0    pypi
    

    This happens with aura, ayu, github, gruvbox and others.

    Some of the themes working are: challenger_deep, dracula, dufte, nord, tab10

    opened by floringogianu 1
  • Support for subplots

    Support for subplots

    Related to the issue I opened. It seems that small changes already go quite a long way towards support for subplots. This does not yet work for the style.

    For the original code, everything was correctly calculated with the axes in mind, but then it was applied to plt instead of ax, even if an ax parameter was supplied for line_labels, it was still applied to plt.

    The code changes should have no effect when there are no subplots. When there are subplots, the code now offers better support.

    import matplotlib.pyplot as plt
    import matplotx
    import numpy as np
    
    # create data
    rng = np.random.default_rng(0)
    offsets = [1.0, 1.50, 1.60]
    labels = ["no balancing", "CRV-27", "CRV-27*"]
    names = ["Plot left", "Plot right"]
    x0 = np.linspace(0.0, 3.0, 100)
    y = [offset * x0 / (x0 + 1) + 0.1 * rng.random(len(x0)) for offset in offsets]
    
    fig, axes = plt.subplots(2,1)                                           
    
    for ax, name in zip(axes, names):                                                         
        with plt.style.context(matplotx.styles.dufte):
            for yy, label in zip(y, labels):
                ax.plot(x0, yy, label=label)                                
            ax.set_xlabel("distance [m]")                                   
        matplotx.ylabel_top(name)    
        matplotx.line_labels(ax=ax)
    

    Original code

    image

    New code

    image

    opened by mitchellvanzuijlen 1
  • dufte.legend allow plt.text kwargs

    dufte.legend allow plt.text kwargs

    To draw the legend dufte uses plt.text() https://github.com/nschloe/dufte/blob/main/src/dufte/main.py#L196

    plt.text() allows for additional kwargs to customize the text https://matplotlib.org/stable/api/_as_gen/matplotlib.pyplot.text.html

    If possible, could you loop through the additional text kwargs to allow for a higher customizable legend?

    opened by exc4l 0
  • Improper ylabel_top placement

    Improper ylabel_top placement

    I've been using matplotx.ylabel_top and just noticed an issue with the label placement after setting the y tick labels explicitly. A working example is below.

    import numpy as np
    from seaborn import scatterplot
    import matplotx
    
    rng = np.random.default_rng(42)
    x = rng.random(100)
    y = -2*x + rng.normal(0, 0.5, 100)
    ax = scatterplot(
        x=x,
        y=y
    )
    ax.set_yticks([0, -1, -2])
    matplotx.ylabel_top('Example\nLabel')
    

    example

    i'm using

    numpy==1.23.4
    seaborn==0.12.1
    matplotx==0.3.10
    
    opened by markmbaum 0
  • First example images not properly clickable in readme

    First example images not properly clickable in readme

    I just came across this project, looks really neat. Especially the smooth contourf got me curious.

    I've noticed in the readme that (at least on firefox) if I click any of the three images, the link that opens (even with the "open image in new tab" context menu option) is https://github.com/nschloe/matplotx/blob/main/tests/dufte_comparison.py. In contrast, the contourf images open just fine, for instance.

    I assume the reason for this is the enclosing a tag for the first example: https://github.com/nschloe/matplotx/blob/c767b08ea91492b1db9626b8b2c8786b4bc99458/README.md?plain=1#L39

    In case this is not just a firefox thing, I would recommend trying to make the first three images clickable on their own right.

    opened by adeak 0
  • Adapt `line_labels` for `PolyCollections`

    Adapt `line_labels` for `PolyCollections`

    I'm keen on making a PR to adapt line_labels to make it work with fill_between objects (PolyCollection)

    This would be the usage and output:

    import matplotlib.pyplot as plt
    import matplotx
    import numpy as np
    
    x = np.linspace(0, 1)
    y1 = np.linspace(1, 2)
    y2 = np.linspace(2, 4)
    
    plt.fill_between(x, y1, label="label1")
    plt.fill_between(x, y1, y2, label="label1")
    
    matplotx.label_fillbetween()
    plt.show()
    

    image

    @nschloe would you be interested in this feature?

    opened by RemDelaporteMathurin 0
  • Support for subplots

    Support for subplots

    Perhaps this is already implemented and I'm just unable to find it. I think this package in general is great; very easy to use and very beautiful. Thank you for your time making it.

    I'm unable to get matplotx working properly when using subplots. Adapting the Clean line plots (dufte) example to include two subplots (side-by-side, or one-below-the-other) appears not to work.

    import matplotlib.pyplot as plt
    import matplotx
    import numpy as np
    
    # create data
    rng = np.random.default_rng(0)
    offsets = [1.0, 1.50, 1.60]
    labels = ["no balancing", "CRV-27", "CRV-27*"]
    x0 = np.linspace(0.0, 3.0, 100)
    y = [offset * x0 / (x0 + 1) + 0.1 * rng.random(len(x0)) for offset in offsets]
    
    fig, axes = plt.subplots(2,1)                                           # add subplots
    
    for ax in axes:                                                         # Let's make two identical subplots
        with plt.style.context(matplotx.styles.dufte):
            for yy, label in zip(y, labels):
                ax.plot(x0, yy, label=label)                                # changed plt. to ax.
            ax.set_xlabel("distance [m]")                                   # changed plt. to ax.
            matplotx.ylabel_top("voltage [V]")                              # move ylabel to the top, rotate
            matplotx.line_labels()                                          # line labels to the right
            #plt.show()                                                     # Including this adds the 'pretty axis' below the subplots.                             
    

    image

    opened by mitchellvanzuijlen 2
Releases(v0.3.10)
Owner
Nico Schlömer
Mathematics, numerical analysis, scientific computing, Python. Always interested in new problems.
Nico Schlömer
Machine learning beginner to Kaggle competitor in 30 days. Non-coders welcome. The program starts Monday, August 2, and lasts four weeks. It's designed for people who want to learn machine learning.

30-Days-of-ML-Kaggle 🔥 About the Hands On Program 💻 Machine learning beginner → Kaggle competitor in 30 days. Non-coders welcome The program starts

Roja Achary 145 Jan 01, 2023
Pglive - Pglive package adds support for thread-safe live plotting to pyqtgraph

Live pyqtgraph plot Pglive package adds support for thread-safe live plotting to

Martin Domaracký 15 Dec 10, 2022
CLAHE Contrast Limited Adaptive Histogram Equalization

A simple code to process images using contrast limited adaptive histogram equalization. Image processing is becoming a major part of data processig.

Happy N. Monday 4 May 18, 2022
China and India Population and GDP Visualization

China and India Population and GDP Visualization Historical Population Comparison between India and China This graph shows the population data of Indi

Nicolas De Mello 10 Oct 27, 2021
This tool is designed to help administrators get an overview of their Active Directory structure.

This tool is designed to help administrators get an overview of their Active Directory structure. In the group view you can see all elements of an AD (OU, USER, GROUPS, COMPUTERS etc.). In the user v

deexno 2 Oct 30, 2022
Tools for calculating and visualizing Elo-like ratings of MLB teams using Retosheet data

Overview This project uses historical baseball games data to calculate an Elo-like rating for MLB teams based on regular season match ups. The Elo rat

Lukas Owens 0 Aug 25, 2021
Datapane is the easiest way to create data science reports from Python.

Datapane Teams | Documentation | API Docs | Changelog | Twitter | Blog Share interactive plots and data in 3 lines of Python. Datapane is a Python lib

Datapane 744 Jan 06, 2023
Gallery of applications built using bqplot and widget libraries like ipywidgets, ipydatagrid etc.

bqplot Gallery This is a gallery of bqplot examples. View the gallery at https://bqplot.github.io/bqplot-gallery. Contributing new examples Clone this

8 Aug 23, 2022
Time series visualizer is a flexible extension that provides filling world map by country from real data.

Time-series-visualizer Time series visualizer is a flexible extension that provides filling world map by country from csv or json file. You can know d

Long Ng 3 Jul 09, 2021
Create 3d loss surface visualizations, with optimizer path. Issues welcome!

MLVTK A loss surface visualization tool Simple feed-forward network trained on chess data, using elu activation and Adam optimizer Simple feed-forward

7 Dec 21, 2022
A python-generated website for visualizing the novel coronavirus (COVID-19) data for Greece.

COVID-19-Greece A python-generated website for visualizing the novel coronavirus (COVID-19) data for Greece. Data sources Data provided by Johns Hopki

Isabelle Viktoria Maciohsek 23 Jan 03, 2023
A grammar of graphics for Python

plotnine Latest Release License DOI Build Status Coverage Documentation plotnine is an implementation of a grammar of graphics in Python, it is based

Hassan Kibirige 3.3k Jan 01, 2023
GitHub Stats Visualizations : Transparent

GitHub Stats Visualizations : Transparent Generate visualizations of GitHub user and repository statistics using GitHub Actions. ⚠️ Disclaimer The pro

YuanYap 7 Apr 05, 2022
Practical-statistics-for-data-scientists - Code repository for O'Reilly book

Code repository Practical Statistics for Data Scientists: 50+ Essential Concepts Using R and Python by Peter Bruce, Andrew Bruce, and Peter Gedeck Pub

1.7k Jan 04, 2023
Implement the Perspective open source code in preparation for data visualization

Task Overview | Installation Instructions | Link to Module 2 Introduction Experience Technology at JP Morgan Chase Try out what real work is like in t

Abdulazeez Jimoh 1 Jan 23, 2022
With Holoviews, your data visualizes itself.

HoloViews Stop plotting your data - annotate your data and let it visualize itself. HoloViews is an open-source Python library designed to make data a

HoloViz 2.3k Jan 02, 2023
📊 Charts with pure python

A zero-dependency python package that prints basic charts to a Jupyter output Charts supported: Bar graphs Scatter plots Histograms 🍑 📊 👏 Examples

Max Humber 54 Oct 04, 2022
Process dataframe in a easily way.

Popanda Written by Shengxuan Wang at OSU. Used for processing dataframe, especially for machine learning. The name is from "Po" in the movie Kung Fu P

ShawnWang 1 Dec 24, 2021
visualize_ML is a python package made to visualize some of the steps involved while dealing with a Machine Learning problem

visualize_ML visualize_ML is a python package made to visualize some of the steps involved while dealing with a Machine Learning problem. It is build

Ayush Singh 164 Dec 12, 2022
Flow-based visual scripting for Python

A simple visual node editor for Python Ryven combines flow-based visual scripting with Python. It gives you absolute freedom for your nodes and a simp

Leon Thomm 3.1k Jan 06, 2023