""" =============================================== Creating a timeline with lines, dates, and text =============================================== How to create a simple timeline using Matplotlib release dates. Timelines can be created with a collection of dates and text. In this example, we show how to create a simple timeline using the dates for recent releases of Matplotlib. First, we'll pull the data from GitHub. """ import matplotlib.pyplot as plt import numpy as np import matplotlib.dates as mdates from datetime import datetime try: # Try to fetch a list of Matplotlib releases and their dates # from https://api.github.com/repos/matplotlib/matplotlib/releases import urllib.request import json url = 'https://api.github.com/repos/matplotlib/matplotlib/releases' url += '?per_page=100' data = json.loads(urllib.request.urlopen(url, timeout=.4).read().decode()) dates = [] names = [] for item in data: if 'rc' not in item['tag_name'] and 'b' not in item['tag_name']: dates.append(item['published_at'].split("T")[0]) names.append(item['tag_name']) # Convert date strings (e.g. 2014-10-18) to datetime dates = [datetime.strptime(d, "%Y-%m-%d") for d in dates] except Exception: # In case the above fails, e.g. because of missing internet connection # use the following lists as fallback. names = ['v2.2.4', 'v3.0.3', 'v3.0.2', 'v3.0.1', 'v3.0.0', 'v2.2.3', 'v2.2.2', 'v2.2.1', 'v2.2.0', 'v2.1.2', 'v2.1.1', 'v2.1.0', 'v2.0.2', 'v2.0.1', 'v2.0.0', 'v1.5.3', 'v1.5.2', 'v1.5.1', 'v1.5.0', 'v1.4.3', 'v1.4.2', 'v1.4.1', 'v1.4.0'] dates = ['2019-02-26', '2019-02-26', '2018-11-10', '2018-11-10', '2018-09-18', '2018-08-10', '2018-03-17', '2018-03-16', '2018-03-06', '2018-01-18', '2017-12-10', '2017-10-07', '2017-05-10', '2017-05-02', '2017-01-17', '2016-09-09', '2016-07-03', '2016-01-10', '2015-10-29', '2015-02-16', '2014-10-26', '2014-10-18', '2014-08-26'] # Convert date strings (e.g. 2014-10-18) to datetime dates = [datetime.strptime(d, "%Y-%m-%d") for d in dates] ############################################################################## # Next, we'll create a stem plot with some variation in levels as to # distinguish even close-by events. We add markers on the baseline for visual # emphasis on the one-dimensional nature of the time line. # # For each event, we add a text label via `~.Axes.annotate`, which is offset # in units of points from the tip of the event line. # # Note that Matplotlib will automatically plot datetime inputs. # Choose some nice levels levels = np.tile([-5, 5, -3, 3, -1, 1], int(np.ceil(len(dates)/6)))[:len(dates)] # Create figure and plot a stem plot with the date fig, ax = plt.subplots(figsize=(8.8, 4), constrained_layout=True) ax.set(title="Matplotlib release dates") ax.vlines(dates, 0, levels, color="tab:red") # The vertical stems. ax.plot(dates, np.zeros_like(dates), "-o", color="k", markerfacecolor="w") # Baseline and markers on it. # annotate lines for d, l, r in zip(dates, levels, names): ax.annotate(r, xy=(d, l), xytext=(-3, np.sign(l)*3), textcoords="offset points", horizontalalignment="right", verticalalignment="bottom" if l > 0 else "top") # format xaxis with 4 month intervals ax.get_xaxis().set_major_locator(mdates.MonthLocator(interval=4)) ax.get_xaxis().set_major_formatter(mdates.DateFormatter("%b %Y")) plt.setp(ax.get_xticklabels(), rotation=30, ha="right") # remove y axis and spines ax.get_yaxis().set_visible(False) for spine in ["left", "top", "right"]: ax.spines[spine].set_visible(False) ax.margins(y=0.1) plt.show() ############################################################################# # # ------------ # # References # """""""""" # # The use of the following functions, methods and classes is shown # in this example: import matplotlib matplotlib.axes.Axes.annotate matplotlib.axes.Axes.vlines matplotlib.axis.Axis.set_major_locator matplotlib.axis.Axis.set_major_formatter matplotlib.dates.MonthLocator matplotlib.dates.DateFormatter