I am trying to find the best fit parameters for a function by scipy.optimize.curve_fit here is the code

```
def y_position(b, E, time):
a = 0.75/100
b = 40
T = 40
dty = 7*60
e=pickle.load(open("aclass.die", "rb"))
array = []
return_y = 0
for f in e.frag:
t = 0
while t < time:
f.position_in_y(f.num, a, E, dty, b, T)
t += dty
array.append(f.ypos)
#rescale
minus = max(array)
for j in range(len(array)):
array[j] = array[j]-minus
divid = min(array)
for i in range(len(array)):
array[i] = array[i]/divid
for n in range(len(e.frag)):
if e.frag[n].num == b:
return_y = array[n]
return return_y
exper_y=[0, 1.0, 0.780, 0.640, 0.240, 0.680]
x =[638, 78, 643, 71, 534, 303]
po = [28, 500]
po, cov = optimize.curve_fit(y_position, x, exper_y, p0=po)
print po
exit()
```

I've defined the classes needed in other files and import that at the beginning for sure. The `position_in_y`

is a function in frag class
my function is a bit complex but still logical I guess.
I got the error:

```
TypeError: unsupported operand type(s) for -: 'int' and 'list'
```

after I run it. I cannot understand why it got that. Any help please!!! Thanks in advance

`array[j] = array[j]-minus`

which in that case, I would look at what`array.append(f.ypos)`

really is. It would seem`f.ypos`

is a`list`

, not an`int`

. – bnlucas Jun 18 '13 at 3:04