In [1]: import pandas as pd
In [2]: import matplotlib.pyplot as plt
-
Air quality data
For this tutorial, air quality data about \(NO_2\) is used, made available by openaq and using the py-openaq package. The
To raw dataair_quality_no2.csv
data set provides \(NO_2\) values for the measurement stations FR04014, BETR801 and London Westminster in respectively Paris, Antwerp and London.In [3]: air_quality = pd.read_csv("data/air_quality_no2.csv", index_col=0, parse_dates=True) In [4]: air_quality.head() Out[4]: station_antwerp station_paris station_london datetime 2019-05-07 02:00:00 NaN NaN 23.0 2019-05-07 03:00:00 50.5 25.0 19.0 2019-05-07 04:00:00 45.0 27.7 19.0 2019-05-07 05:00:00 NaN 50.4 16.0 2019-05-07 06:00:00 NaN 61.9 NaN
Note
The usage of the
index_col
andparse_dates
parameters of theread_csv
function to define the first (0th) column as index of the resultingDataFrame
and convert the dates in the column toTimestamp
objects, respectively.
How to create plots in pandas?¶
I want a quick visual check of the data.
In [5]: air_quality.plot() Out[5]: <AxesSubplot:xlabel='datetime'>
With a
DataFrame
, pandas creates by default one line plot for each of the columns with numeric data.
I want to plot only the columns of the data table with the data from Paris.
In [6]: air_quality["station_paris"].plot() Out[6]: <AxesSubplot:xlabel='datetime'>
To plot a specific column, use the selection method of the subset data tutorial in combination with the
plot()
method. Hence, theplot()
method works on bothSeries
andDataFrame
.
I want to visually compare the \(N0_2\) values measured in London versus Paris.
In [7]: air_quality.plot.scatter(x="station_london", y="station_paris", alpha=0.5) Out[7]: <AxesSubplot:xlabel='station_london', ylabel='station_paris'>
Apart from the default line
plot when using the plot
function, a
number of alternatives are available to plot data. Let’s use some
standard Python to get an overview of the available plot methods:
In [8]: [
...: method_name
...: for method_name in dir(air_quality.plot)
...: if not method_name.startswith("_")
...: ]
...:
Out[8]:
['area',
'bar',
'barh',
'box',
'density',
'hexbin',
'hist',
'kde',
'line',
'pie',
'scatter']
Note
In many development environments as well as IPython and
Jupyter Notebook, use the TAB button to get an overview of the available
methods, for example air_quality.plot.
+ TAB.
One of the options is DataFrame.plot.box()
, which refers to a
boxplot. The box
method is applicable on the air quality example data:
In [9]: air_quality.plot.box()
Out[9]: <AxesSubplot:>
For an introduction to plots other than the default line plot, see the user guide section about supported plot styles.
I want each of the columns in a separate subplot.
In [10]: axs = air_quality.plot.area(figsize=(12, 4), subplots=True)
Separate subplots for each of the data columns are supported by the
subplots
argument of theplot
functions. The builtin options available in each of the pandas plot functions that are worthwhile to have a look.
Some more formatting options are explained in the user guide section on plot formatting.
I want to further customize, extend or save the resulting plot.
In [11]: fig, axs = plt.subplots(figsize=(12, 4)) In [12]: air_quality.plot.area(ax=axs) Out[12]: <AxesSubplot:xlabel='datetime'> In [13]: axs.set_ylabel("NO$_2$ concentration") Out[13]: Text(0, 0.5, 'NO$_2$ concentration') In [14]: fig.savefig("no2_concentrations.png")
Each of the plot objects created by pandas is a matplotlib object. As Matplotlib provides plenty of options to customize plots, making the link between pandas and Matplotlib explicit enables all the power of matplotlib to the plot. This strategy is applied in the previous example:
fig, axs = plt.subplots(figsize=(12, 4)) # Create an empty matplotlib Figure and Axes
air_quality.plot.area(ax=axs) # Use pandas to put the area plot on the prepared Figure/Axes
axs.set_ylabel("NO$_2$ concentration") # Do any matplotlib customization you like
fig.savefig("no2_concentrations.png") # Save the Figure/Axes using the existing matplotlib method.
REMEMBER
The
.plot.*
methods are applicable on both Series and DataFramesBy default, each of the columns is plotted as a different element (line, boxplot,…)
Any plot created by pandas is a Matplotlib object.
A full overview of plotting in pandas is provided in the visualization pages.