I am looking for any script (preferably Python) to calculate the two dimensional normal distribution function of series of three dimensional data. If one does not exist, I would appreciate any code, or pseudocode, someone could provide.

The input will be a list of triples like so

```
[[x1, y1, z1], [x2, y2, z2], [x3, y3, z3],..., [xn, yn, zn]]
```

What I need is the mean and standard deviation/variance of the two dimensional normal distribution that most closely represents the data, so as to be able to manipulate it, and, later, recreate it.

**example**

For the sake of simplicity I will defer to using a one dimensional normal function. If I have the following two dimensional data points

```
[
[-4, 0.0001],
[-3, 0.0044],
[-2, 0.054 ],
[-1, 0.242 ],
[0 , 0.3989],
[1 , 0.242 ],
[2 , 0.054 ],
[3 , 0.0044],
[4 , 0.0001]
]
```

I expect the script to output

```
mean = 0.0
standard deviation = 1.0
variance = 1.0
```

That way, if I want to, for example, change the standard deviation from `sd = 1.0`

to `sd = 2.0`

, I can modify the curve, recreate it, sample the points `-4...4`

, and rewrite the values to the data like so.

```
[
[-4, 0.027 ],
[-3, 0.0648],
[-2, 0.121 ],
[-1, 0.176 ],
[0 , 0.1995],
[1 , 0.176 ],
[2 , 0.121 ],
[3 , 0.0648],
[4 , 0.027 ]
]
```

Now my question is: how do I do that with a list of three dimensional points which closely represent a two dimensional normal distribution?

I would prefer to do this in Python, or to call a shell script. However, I would not be against using a program like MatLab or Maple.