Numpy doesn't care what the axes of your matplotlib graph are.

I presume that you think `log(y)`

is some polynomial function of `log(x)`

, and you want to find that polynomial? If that is the case, then run `numpy.polyfit`

on the logarithms of your data set:

```
import numpy as np
logx = np.log(x)
logy = np.log(y)
coeffs = np.polyfit(logx,logy,deg=3)
poly = np.poly1d(coeffs)
```

`poly`

is now a polynomial in `log(x)`

that returns `log(y)`

. To get the fit to predict `y`

values, you can define a function that just exponentiates your polynomial:

```
yfit = lambda x: np.exp(poly(np.log(x))
```

You can now plot your fitted line on your matplotlib `loglog`

plot:

```
plt.loglog(x,yfit(x))
```