Even though it's late, this answer might help someone else.

In the part of your code.

```
... + (1-yval)* np.log(1-sigmoid(np.dot(w.transpose(), xi.transpose())))
```

may be the `np.dot(w.transpose(), xi.transpose())`

function is spitting larger values(above 40 or so), resulting in the output of `sigmoid( )`

to be `1`

. And then you're basically taking `np.log`

of `1-1`

that is `0`

. And as DevShark has mentioned above, it causes the `RuntimeWarning: Divide by zero...`

error.

How I came up with the number 40 you might ask, well, it's just that for values above 40 or so sigmoid function in python(numpy) returns `1.`

.

Looking at your implementation, it seems you're dealing with the Logistic Regression algorithm, in which case(I'm under the impression that) **feature scaling is very important**.

Since I'm writing answer for the first time, It is possible I may have violated some rules/regulations, if that is the case I'd like to apologise.