### Using scipy.interpolate.interp1d

You can also use `scipy.interpolate`

package to do such conversions (if you don't mind dependency on SciPy):

```
>>> from scipy.interpolate import interp1d
>>> m = interp1d([1,512],[5,10])
>>> m(256)
array(7.4951076320939336)
```

or to convert it back to normal float from 0-rank scipy array:

```
>>> float(m(256))
7.4951076320939336
```

You can do also multiple conversions in one command easily:

```
>>> m([100,200,300])
array([ 5.96868885, 6.94716243, 7.92563601])
```

As a bonus, you can do non-uniform mappings from one range to another, for intance if you want to map [1,128] to [1,10], [128,256] to [10,90] and [256,512] to [90,100] you can do it like this:

```
>>> m = interp1d([1,128,256,512],[1,10,90,100])
>>> float(m(400))
95.625
```

`interp1d`

creates piecewise linear interpolation objects (which are callable just like functions).

### Using numpy.interp

As noted by *~unutbu*, `numpy.interp`

is also an option (with less dependencies):

```
>>> from numpy import interp
>>> interp(256,[1,512],[5,10])
7.4951076320939336
```