I am trying to teach myself Python by working through some problems I came up with, and I need some help understanding how to pass functions.

Let's say I am trying to predict tomorrow's temperature based on today's and yesterday's temperature, and I have written the following function:

```
def predict_temp(temp_today, temp_yest, k1, k2):
return k1*temp_today + k2*temp_yest
```

And I have also written an error function to compare a list of predicted temperatures with actual temperatures and return the mean absolute error:

```
def mean_abs_error(predictions, expected):
return sum([abs(x - y) for (x,y) in zip(predictions,expected)]) / float(len(predictions))
```

Now if I have a list of daily temperatures for some interval in the past, I can see how my prediction function would have done **with specific k1 and k2 parameters** like this:

```
>>> past_temps = [41, 35, 37, 42, 48, 30, 39, 42, 33]
>>> pred_temps = [predict_temp(past_temps[i-1],past_temps[i-2],0.5,0.5) for i in xrange(2,len(past_temps))]
>>> print pred_temps
[38.0, 36.0, 39.5, 45.0, 39.0, 34.5, 40.5]
>>> print mean_abs_error(pred_temps, past_temps[2:])
6.5
```

**But how do I design a function to minimize my parameters k1 and k2 of my predict_temp function given an error function and my past_temps data?**

Specifically I would like to write a function minimize(args*) that takes a prediction function, an error function, some training data, and that uses some search/optimization method (gradient descent for example) to estimate and return the values of k1 and k2 that minimize my error given the data?

I am not asking how to implement the optimization method. Assume I can do that. Rather, I would just like to know **how to pass my predict and error functions** (and my data) to my minimize function, and **how to tell my minimize function that it should optimize the parameters k1 and k2**, so that my minimize function can automatically search a bunch of different settings of k1 and k2, applying my prediction function with those parameters each time to the data and computing error (like I did manually for k1=0.5 and k2=0.5 above) and then return the best results.

I would like to be able to pass these functions so I can easily swap in different prediction and error functions (differing by more than just parameter settings that is). Each prediction function might have a different number of free parameters.

My minimize function should look something like this, but I don't know how to proceed:

```
def minimize(prediction_function, which_args_to_optimize, error_function, data):
# 1: guess initial parameters
# 2: apply prediction function with current parameters to data to compute predictions
# 3: use error function to compute error between predictions and data
# 4: if stopping criterion is met, return parameters
# 5: update parameters
# 6: GOTO 2
```

Edit: It's that easy?? This is no fun. I am going back to Java.

On a more serious note, I think I was also getting hung up on how to use different prediction functions with different numbers of parameters to tune. If I just take all the free parameters in as one tuple I can keep the form of the function the same so it easy to pass and use.

args, not args.