# Scipy minimize fmin - problems with syntax

I have a function which takes several arguments (one array and two floats) and returns a scalar (float). Now I want to minimize this function by varying two of the arguments: the two floats. The array is "unpacked" inside the function at its contents (arrays and floats) are then used.

How can this be done using SciPy's fmin function? I am having a very hard time figuring out the right syntax for this..

The function is something like:

``````def func(x, y, data)
data1=data[0]
data2=data[...]
...
...
result = ...x...y...data1...data2... #result is a scalar (float)
return result
``````

What should `scipy.optimize.fmin` look like in this case?

``````optimize.fmin(func, ???)
``````

All the best, p.p.

-

`scipy` assumes that the arguments are in an array. You can define a helper function:

``````def helper(xy):
return func(xy[0], xy[1], data)
``````

and minimize it with `optimize.fmin`:

``````optimize.fmin(helper, np.array([x0, y0]), ...)
``````
-
Thank you! I managed to sort it out and tried to answer my own question, but "Users with less than 10 reputation can't answer their own question for 8 hours after asking". I'll post the answer tomorrow. – user1987501 Jan 17 '13 at 17:54

I found the answer in SciPy's documentation! I am just not used to the programming "lingo" of the documentation... (although the documentation has been VERY useful for a newbie as myself).

So, the way to do it is the following:

• Instead of defining the function (to be minimized) as in my question, it should be defined as

``````def func(x, *args) #it is literally "*args"!
y=x[0]
z=x[1]
data1=data[0]
data2=data[...]
...
result = ...y...z...data1...data2... #result is a scalar (float)
return result
``````
• Now, the `optimize.fmin` function should be

``````optimize.fmin(func, x0=[y_estimate, z_estimate], args=(data))
``````

Apparently (maybe I'm wrong) when you provide the array `x0` (initial guess) to the `optimize.fmin` function, it then knows that the it will have to optimize an array with the "size" of `x0`. All other data you need in your function has to be given in the tuple `args` (in this example there is only one array in the tuple `args`, but it could be `args=(data1, data2, ...)`, in which case you wouldn't need to unpack it inside the function).

Summary: the initial guess `x0` is just an array; the extra arguments `args` is just a tuple; the function should be (literally!) defined as def `func(x, *args)`; the array `x` and the tuple `args` can then be 'unpacked' inside the function (with `y=x[0]`, `z=x[1]`, ... and `data1=args[0]`, `data2=args[1]`, ...).

-
Minor point but I think you mean data1=args[0], data2=args[...] in your definition of func above. – pjc42 Jul 9 '15 at 0:29