You can pass a `weights`

argument to `hist`

instead of using `normed`

. For example, if your bins cover the interval `[minval, maxval]`

, you have `n`

bins, and you want to normalize the area to `A`

, then I think

```
weights = np.empty_like(x)
weights.fill(A * n / (maxval-minval) / x.size)
plt.hist(x, bins=n, range=(minval, maxval), weights=weights)
```

should do the trick.

EDIT: The `weights`

argument must be the same size as `x`

, and its effect is to make each value in x contribute the corresponding value in `weights`

towards the bin count, instead of 1.

I think the `hist`

function could probably do with a greater ability to control normalization, though. For example, I think as it stands, values outside the binned range are ignored when normalizing, which isn't generally what you want.