# Mapping a range of values to another

I am looking for ideas on how to translate one range values to another in Python. I am working on hardware project and am reading data from a sensor that can return a range of values, I am then using that data to drive an actuator that requires a different range of values.

For example lets say that the sensor returns values in the range 1 to 512, and the actuator is driven by values in the range 5 to 10. I would like a function that I can pass a value and the two ranges and get back the value mapped to the second range. If such a function was named `translate` it could be used like this:

``````sensor_value = 256
actuator_value = translate(sensor_value, 1, 512, 5, 10)
``````

In this example I would expect the output `actuator_value` to be `7.5` since the `sensor_value` is in the middle of the possible input range.

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Thanks for all the answers folks, I accepted Adam Luchjenbroers' answer as it is closely aligned with what I was thinking, without bringing in third party libraries for a relatively simple task. –  Tendayi Mawushe Dec 28 '09 at 13:39

One solution would be:

``````def translate(value, leftMin, leftMax, rightMin, rightMax):
# Figure out how 'wide' each range is
leftSpan = leftMax - leftMin
rightSpan = rightMax - rightMin

# Convert the left range into a 0-1 range (float)
valueScaled = float(value - leftMin) / float(leftSpan)

# Convert the 0-1 range into a value in the right range.
return rightMin + (valueScaled * rightSpan)
``````

You could possibly use algebra to make it more efficient, at the expense of readability.

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Easy, documented, compact, thats a good answer! –  user1767754 Oct 8 '14 at 12:04
@Adam thank you for your answer. I had the same problem and it took me some time to find the right solution. Then I wanted to post new question on sf with my solution and ask if it is possible to solve it in more efficient way. Could you please show the solution by using algebra? –  Matt Nov 28 '14 at 11:05

### 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
``````
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You could also use `numpy.interp(256,[1,512],[5,10])`, to reduce the dependency to numpy. –  unutbu Dec 28 '09 at 12:54
Yes, good suggestion! I added it to the answer. –  sastanin Dec 28 '09 at 13:08
To convert `array([ 5.96868885, 6.94716243, 7.92563601])` to a list, use `m([100,200,300]).tolist()`. –  zanetu Apr 6 '14 at 5:26
Also, `scipy.interpolate.interp1d` can be much slower than `numpy.interp`. (See this question.) Benchmark you code first if you are concerned with performance. –  zanetu Apr 6 '14 at 5:56

This would actually be a good case for creating a closure, that is write a function that returns a function. Since you probably have many of these values, there is little value in calculating and recalculating these value spans and factors for every value, nor for that matter, in passing those min/max limits around all the time.

``````def make_interpolater(left_min, left_max, right_min, right_max):
# Figure out how 'wide' each range is
leftSpan = left_max - left_min
rightSpan = right_max - right_min

# Compute the scale factor between left and right values
scaleFactor = float(rightSpan) / float(leftSpan)

# create interpolation function using pre-calculated scaleFactor
def interp_fn(value):
return right_min + (value-left_min)*scaleFactor

return interp_fn
``````

Now you can write your processor as:

``````# create function for doing interpolation of the desired
# ranges
scaler = make_interpolater(1, 512, 5, 10)

# receive list of raw values from sensor, assign to data_list

# now convert to scaled values using map
scaled_data = map(scaler, data_list)

# or a list comprehension, if you prefer
scaled_data = [scaler(x) for x in data_list]
``````
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``````def translate(sensor_val, in_from, in_to, out_from, out_to):
out_range = out_to - out_from
in_range = in_to - in_from
in_val = sensor_val - in_from
val=(float(in_val)/in_range)*out_range
out_val = out_from+val
return out_val
``````
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You can find implementation of this problem in more programming languages here

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