pandas.DataFrame.plot.line¶
-
DataFrame.plot.
line
(x=None, y=None, **kwargs)[source]¶ Plot Series or DataFrame as lines.
This function is useful to plot lines using DataFrame’s values as coordinates.
- Parameters
- xlabel or position, optional
Allows plotting of one column versus another. If not specified, the index of the DataFrame is used.
- ylabel or position, optional
Allows plotting of one column versus another. If not specified, all numerical columns are used.
- colorstr, array_like, or dict, optional
The color for each of the DataFrame’s columns. Possible values are:
- A single color string referred to by name, RGB or RGBA code,
for instance ‘red’ or ‘#a98d19’.
- A sequence of color strings referred to by name, RGB or RGBA
code, which will be used for each column recursively. For instance [‘green’,’yellow’] each column’s line will be filled in green or yellow, alternatively.
- A dict of the form {column namecolor}, so that each column will be
colored accordingly. For example, if your columns are called a and b, then passing {‘a’: ‘green’, ‘b’: ‘red’} will color lines for column a in green and lines for column b in red.
New in version 1.1.0.
- **kwargs
Additional keyword arguments are documented in
DataFrame.plot()
.
- Returns
- matplotlib.axes.Axes or np.ndarray of them
An ndarray is returned with one
matplotlib.axes.Axes
per column whensubplots=True
.
See also
matplotlib.pyplot.plot
Plot y versus x as lines and/or markers.
Examples
>>> s = pd.Series([1, 3, 2]) >>> s.plot.line()
The following example shows the populations for some animals over the years.
>>> df = pd.DataFrame({ ... 'pig': [20, 18, 489, 675, 1776], ... 'horse': [4, 25, 281, 600, 1900] ... }, index=[1990, 1997, 2003, 2009, 2014]) >>> lines = df.plot.line()
An example with subplots, so an array of axes is returned.
>>> axes = df.plot.line(subplots=True) >>> type(axes) <class 'numpy.ndarray'>
Let’s repeat the same example, but specifying colors for each column (in this case, for each animal).
>>> axes = df.plot.line( ... subplots=True, color={"pig": "pink", "horse": "#742802"} ... )
The following example shows the relationship between both populations.
>>> lines = df.plot.line(x='pig', y='horse')