# 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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``````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

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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