The following code helped me to solve,when given a vector what is the likelihood that vector is in a multivariate normal distribution.

```
import numpy as np
from scipy.stats import multivariate_normal
```

# data with all vectors

```
d= np.array([[1,2,1],[2,1,3],[4,5,4],[2,2,1]])
```

# mean of the data in vector form, which will have same length as input vector(here its 3)

```
mean = sum(d,axis=0)/len(d)
OR
mean=np.average(d , axis=0)
mean.shape
```

# finding covarianve of vectors which will have shape of [input vector shape X input vector shape] here it is 3x3

```
cov = 0
for e in d:
cov += np.dot((e-mean).reshape(len(e), 1), (e-mean).reshape(1, len(e)))
cov /= len(d)
cov.shape
```

# preparing a multivariate Gaussian distribution from mean and co variance

```
dist = multivariate_normal(mean,cov)
```

# finding probability distribution function.

```
print(dist.pdf([1,2,3]))
3.050863384798471e-05
```

The above value gives the likelihood.