I am very confused about how to sample measurement error using normal distribution (Gaussian pdf) in Python.

What I want to do is just to create noise (error) under Gaussian pdf and add it to measured values. In short, I put the problem as follows:

**Inputs:**

- M(i) - measurement value; i = 1...n,
`n`

- number of measurements;

**Output:**

M_noisy(i) = M(i) + noise(i);

where,

`noise(i)`

- noise in measurement;`M(i)`

- measurement value.

**Important:** This noise should be as a zero-mean Gaussian noise with variance equal to, 10 % of the measurement value.

I put the following code but I could not continue...

**My code:**

`import numpy as np`

```
# sigma - standard deviation of M
# mu - mean value of M
# n - number of measurements
# I dont know if this is correct or not:
noise = sigma * np.random.randn(n) + mu;
## M_noisy(i) - ?
```

Thanks for any answers/suggestions in advance.