# add line based on slope and intercept in matplotlib?

In R, there is a function called `abline` in which a line can be drawn on a plot based on specification of intercept (first argument) slope (second argument). For instance,

``````plot(1:10,1:10)
abline(0,1)
``````

where the line with intercept of 0 and slope of 1 spans the entire range of the plot. Is there such a function in `matplotlib.pyplot`?

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No, there's not. It would be a handy function to have. There's `axvline`, `axvspan`, `axhline`, and `axhspan`, which are similar vertical and horizontal functions, but the usual way in matplotlib is to just plot a line at the given slope (which means that you'll eventually zoom beyond it, if you're working interactively.). The "correct" way of doing it (i.e. so that it's always spans the axis no matter where you zoom) is actually a bit complicated, though the framework (`matplotlib.transforms`) is there. – Joe Kington Oct 29 '11 at 21:11
Yes, that's unfortunate... Matlab does not have this function either. On the other hand, R's plots are static (the `base` graphics system for which `abline` exists) so less to worry about there (it's a good and bad thing I suppose). – crippledlambda Oct 29 '11 at 21:36

I know this question is a couple years old, but since there is no accepted answer, I'll add what works for me.

You could just plot the values in your graph, and then generate another set of values for the coordinates of the best fit line and plot that over your original graph. For example, see the following code:

``````import matplotlib.pyplot as plt
import numpy as np

# Some dummy data
x = [1,2,3,4,5,6,7]
y = [1,3,3,2,5,7,9]

# Find the slope and intercept of the best fit line
slope,intercept=np.polyfit(x,y,1)

# Create a list of values in the best fit line
ablineValues = []
for i in x:
ablineValues.append(slope*i+intercept)

# Plot the best fit line over the actual values
plt.plot(x,y,'--')
plt.plot(x, ablineValues, 'b')
plt.title(slope)
plt.show()
``````
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I couldn't figure a way to do it without resorting to callbacks, but this seems to work fairly well.

``````import numpy as np
from matplotlib import pyplot as plt

class ABLine2D(plt.Line2D):

"""
Draw a line based on its slope and y-intercept. Additional arguments are
passed to the <matplotlib.lines.Line2D> constructor.
"""

def __init__(self, slope, intercept, *args, **kwargs):

# get current axes if user has not specified them
if not 'axes' in kwargs:
kwargs.update({'axes':plt.gca()})
ax = kwargs['axes']

# if unspecified, get the current line color from the axes
if not ('color' in kwargs or 'c' in kwargs):
kwargs.update({'color':ax._get_lines.color_cycle.next()})

# init the line, add it to the axes
super(ABLine2D, self).__init__([], [], *args, **kwargs)
self._slope = slope
self._intercept = intercept

# cache the renderer, draw the line for the first time
ax.figure.canvas.draw()
self._update_lim(None)

# connect to axis callbacks
self.axes.callbacks.connect('xlim_changed', self._update_lim)
self.axes.callbacks.connect('ylim_changed', self._update_lim)

def _update_lim(self, event):
""" called whenever axis x/y limits change """
x = np.array(self.axes.get_xbound())
y = (self._slope * x) + self._intercept
self.set_data(x, y)
self.axes.draw_artist(self)
``````
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small improvement: swap the lines: ax.figure.canvas.draw() and self._update_lim(None) so the plot is actually updated without having to click the window – tal Jul 22 at 1:04
@tal At last on my version of matplotlib (1.4.3) it's necessary to render the parent axes at least once before calling `self.axes.draw_artist(self)`, otherwise I get an `AssertionError` on the line `assert self._cachedRenderer is not None` in `Axes.draw_artist`. You could always insert an additional draw after `_update_lim` has been called. I usually initialize the `ABLine` from inside a convenience function that does this for me, rather than instantiating it directly. – ali_m Jul 22 at 8:16

I suppose for the case of `(intercept, slope)` of `(0, 1)` the following function could be used and extended to accommodate other slopes and intercepts, but won't readjust if axis limits are changed or autoscale is turned back on.

``````def abline():
gca = plt.gca()
gca.set_autoscale_on(False)
gca.plot(gca.get_xlim(),gca.get_ylim())

import matplotlib.pyplot as plt
plt.scatter(range(10),range(10))
abline()
plt.draw()
``````
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Well, if you just want a line that goes from the lower-left corner to the upper-right corner, no matter how you zoom, then you can just do `plt.plot([0,1],[0,1], transform=plt.gca().transAxes)`. This won't represent a 1 to 1 slope in data coordinates, though, and it will always go from the lower left corner to the upper right, wherever you zoom to... Like you said, though, a more general `abline` replacement is more difficult for interactive use... – Joe Kington Oct 29 '11 at 21:55
Ah, this is quite interesting the transAxes. I can imagine that I will be making use of it at some point... (I often have many plots where xlim=ylim, or should be). – crippledlambda Oct 30 '11 at 0:54
``````X = np.array([1, 2, 3, 4, 5, 6, 7])
Y = np.array([1.1,1.9,3.0,4.1,5.2,5.8,7])

scatter (X,Y)
slope, intercept = np.polyfit(X, Y, 1)
plot(X, X*slope + intercept, 'r')
``````
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