# interpolate number sequence

I am trying to complete an uncomplete list of numbers, I couldn't find any pythonic way to do it. I have a sequence of days from 1 to 31, and for each day, I have a float value.

``````#dictionnary{day: value}
monthvalues = {1: 1.12, 2: 3.24, 3: 2.23, 5: 2.10, 7: 4.97} etc.. to 31st day
``````

but my data is uncomplete, and some days are missing! therefore I want to fill the missing picture mathematically this way:

sample month1:

``````{16: 2.00, 18: 4.00}
#==> I want to add to the dictionnary 17: 3.00
``````

sample month2:

``````{10: 2.00, 14: 4.00}
#==> I want to add to the dictionnary 11: 2.25, 12: 2.50, 13: 2.75
``````

sounds simple but I have litteraly millions of rows to treat from an uncomplete sql database and for the moment I am quite lost in for xrange() loops... Maybe there is a method in the math lib but I couldn't find it.

EDIT: I want to interpolate the numbers, but as far as I know, only numpy/scipy have these kind of math functions, and im using Pypy which is not compatible with numpy/scipy.

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How would you write it in pseudo-code? –  Andrew Morton Oct 19 '12 at 21:40
What are these numbers? –  Andy Hayden Oct 19 '12 at 21:45
The word you're looking for is "interpolate". I'm not a python guru, but I think looking for that might find you some tools. –  Don Roby Oct 19 '12 at 21:47
@AndrewMorton its actually quite hard to visualize in pseudo code, but as DonRoby said, its interpolation, unfortunately, python modules that interpolate are numpy/scipy and im using Pypy –  kingpin Oct 19 '12 at 21:50
What do you want to interpolate with if you're missing data at the start or end of the month? –  Russell Borogove Oct 19 '12 at 21:51

You just need some simple looping and good old programming logic. The one caveat in this logic is that you need a start and end number in order for it to work. I don't know if that makes sense for your data, but interpolation requires that.

Setup:

``````# Keeps track of the last "seen" day
lastday=0

# Default 1st day if missing
if 1 not in monthvalues:
monthvalues[1] = 1.23 #you need a default

# Default 31st day if missing
if 31 not in monthvalues:
monthvalues[31] = 1.23 #you need a default
``````

Processing:

``````# Loop from 1 to 31
for thisday in range(1,32):

# If we do not encounter thisday in the monthvalues, then skip and keep looping
if thisday not in monthvalues:
continue

# How far ago was the last day seen?
gap = thisday - lastday

# If the last day was more than 1 ago, it means there is at least one day amis
if gap > 1:

# This is the amount of the last "seen" day
last_amt = monthvalues[lastday]

# this is the difference between the current day and the last day
diff = monthvalues[thisday] - last_amt

# This is how much you want to interpolate per day in-between
amt_per_day = diff/gap

# there is a gap of missing days, let's fill them
# Start at 1 because we start at the day after the last seen day
for n in range(1, gap):

# Fill the missing days with an interpolated value
monthvalues[lastday+n] = last_amt + amt_per_day * n

# For the next iteration of the loop, this is the last seen day.
lastday = thisday
``````
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thanks for your time and explanation –  kingpin Oct 19 '12 at 22:16
@Kingpin, where should I send the invoice? :) Why is it more fun to help people on SO than to do the work that I need to be doing (that pays) ? lol. –  gahooa Oct 19 '12 at 22:32
as long as your work is creative and involve reflection, it is always interesting, if not just change now, we live only once ;) AI is a nice field in programming for instance. btw i tested the code and it seems that it fill with the last known value, im workin on it atm –  kingpin Oct 19 '12 at 22:41
actually it came from amt_per_day = diff/gap : i tested it with a little integer sample and the / truncated the result, your code works fine on floats. nite –  kingpin Oct 19 '12 at 22:48

Consider using `pandas` for this, the `interpolate` method makes it easy:

``````In [502]: import pandas

In [503]: s = pandas.Series({1: 1.12, 2: 3.24, 3: 2.23,5: 2.10,7:4.97}, index=range(1,8))

In [504]: s
Out[504]:
1    1.12
2    3.24
3    2.23
4     NaN
5    2.10
6     NaN
7    4.97

In [505]: s.interpolate()
Out[505]:
1    1.120
2    3.240
3    2.230
4    2.165
5    2.100
6    3.535
7    4.970
``````

And with multiple missing values:

``````In [506]: s2 = pandas.Series({10: 2.00, 14: 4.00},index=range(10,15))

In [507]: s2
Out[507]:
10     2
11   NaN
12   NaN
13   NaN
14     4

In [508]: s2.interpolate()
Out[508]:
10    2.0
11    2.5
12    3.0
13    3.5
14    4.0
``````

And you can convert it back to a dict if you need to:

``````In [511]: s2.to_dict()
Out[511]: {10: 2.0, 11: 2.5, 12: 3.0, 13: 3.5, 14: 4.0}
``````
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looks very hawt but doesn't work on pypy, ty tho –  kingpin Oct 19 '12 at 22:09
consider migrating for this task, you can return with the dicts:) –  root Oct 19 '12 at 22:14
@Kingpin Why write it yourself when someone else has written it better and more generally :) –  Andy Hayden Oct 20 '12 at 13:25
becoz i am crazy –  kingpin Oct 20 '12 at 13:58