# python pylab plot normal distribution

Given a mean and a variance is there a simple pylab function call which will plot a normal distribution?

Or do I need to make one myself?

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## 4 Answers

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

mean = 0
variance = 1
sigma = math.sqrt(variance)
x = np.linspace(-3,3,100)
plt.plot(x,mlab.normpdf(x,mean,sigma))

plt.show()
``````

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Thanks for the correction, @platinor. –  unutbu Jul 30 '12 at 8:52

I don't think there is a function that does all that in a single call. However you can find the Gaussian probability density function in `scipy.stats`.

So the simplest way I could come up with is:

``````import numpy as np
import matplotlib.pyplot as plt
from scipy.stats import norm

# Plot between -10 and 10 with .001 steps.
range = np.arange(-10, 10, 0.001)
# Mean = 0, SD = 2.
plt.plot(range, norm.pdf(range,0,2))
``````

Sources:

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You don't need to use list comprehension. `norm.pdf` can work on a `numpy.array`. So, you can write `plt.plot(range, norm.pdf(range, 0, 2))`. –  Avaris Apr 13 '12 at 9:41
@Avaris: that's awesome, thanks for the tip. Edited my answer. –  lum Apr 13 '12 at 9:47

Unutbu answer is correct. But becouse our mean can be more or less than zero I would still like to change this :

``````x = np.linspace(-3,3,100)
``````

to this :

``````x = np.linspace(-3+mean,3+mean,100)
``````
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Use numpy.random.normal function to create the distribution. Then plot it.

For eg:

import matplotlib.pyplot as plt

dist = numpy.random.normal(mean,variance,number_of_points_reqd)

plt.plot(range(number_of_points_reqd,dist)

plt.show()

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This answer wouldn't work because: `numpy.random.normal` will generate random values from a normal distribution that you specify. It is like picking values from the graph based on their probability, what the OP wants is the complete graph itself. (This comment was suggested as an edit) –  laggingreflex Jan 30 at 7:56