# Plot Normal distribution with Matplotlib [duplicate]

DATA:

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

h = [186, 176, 158, 180, 186, 168, 168, 164, 178, 170, 189, 195, 172,
187, 180, 186, 185, 168, 179, 178, 183, 179, 170, 175, 186, 159,
161, 178, 175, 185, 175, 162, 173, 172, 177, 175, 172, 177, 180]

std = np.std(h)
mean = np.mean(h)
plt.plot(norm.pdf(h,mean,std))
``````

output:

``````Standard Deriviation = 8.54065575872
mean = 176.076923077
``````

the plot is incorrect, what is wrong with my code?

• Note: This solution is using `pylab`, not `matplotlib.pyplot`

You may try using `hist` to put your data info along with the fitted curve as below:

``````import numpy as np
import scipy.stats as stats
import pylab as pl

h = sorted([186, 176, 158, 180, 186, 168, 168, 164, 178, 170, 189, 195, 172,
187, 180, 186, 185, 168, 179, 178, 183, 179, 170, 175, 186, 159,
161, 178, 175, 185, 175, 162, 173, 172, 177, 175, 172, 177, 180])  #sorted

fit = stats.norm.pdf(h, np.mean(h), np.std(h))  #this is a fitting indeed

pl.plot(h,fit,'-o')

pl.hist(h,normed=True)      #use this to draw histogram of your data

pl.show()                   #use may also need add this
``````

• normed has been deprecated and should now be replaced by density, but it works well: pl.hist(h,normed=True) Aug 6, 2020 at 18:11

Assuming you're getting `norm` from `scipy.stats`, you probably just need to sort your list:

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

h = [186, 176, 158, 180, 186, 168, 168, 164, 178, 170, 189, 195, 172,
187, 180, 186, 185, 168, 179, 178, 183, 179, 170, 175, 186, 159,
161, 178, 175, 185, 175, 162, 173, 172, 177, 175, 172, 177, 180]
h.sort()
hmean = np.mean(h)
hstd = np.std(h)
pdf = stats.norm.pdf(h, hmean, hstd)
plt.plot(h, pdf) # including h here is crucial
``````

And so I get: