# Linear interpolation on fixed dates using Python

Say for example I have a set of dates and a set of numbers of those days which are taken at different intervals.

Just for illustration sake, let's say the numbers are daily from today (September 29) until three months from now (December 29), monthly from three months after to say two years, quarterly from two to 10 years and yearly after that for another 50 years.

Now the requirements is such that we still follow all the date intervals "pattern" but instead the time series should start at each end of the quarter (so Mar 31, Jun 30, Sept 30 and Dec 31), with the numbers linearly interpolated in-between. Thus, using the example above, my new series should be daily numbers from September 30 (first end of quarter) to Dec 31, monthly from Dec 31 2012 to Dec 31 2014, quarterly from Dec 31 2014 to Dec 31 2022 and yearly after, all prices in the new time series that are not in the old time series are calculated using linear interpolation).

Is there any way we could do it efficiently and is there any code example I can make use of?

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Have you checked what the `pandas` package offers? They should have some pretty good coverage of time series manipulation (they use the code from the `scikits.timeseries` for that). –  Pierre GM Sep 29 '12 at 14:06
no luck with Panda since it is a third party package and is not available on our production servers (IT won't install those), any other suggestions? –  AZhu Oct 2 '12 at 2:30

Here's a way to do it just with `datetime` and `calendar`. It's rather lengthy though, beware.

## First, we need a method to make the desired time series

Months and quarters are a bit tricky, which date is one month after January 31, for example? But a method could look like this:

For testing, I included the generation of random values that belong with the dates.

``````from datetime import datetime, timedelta, date
import calendar
from random import random

def makeseries(startdate):
datesA = [startdate] # collect the dates in this list
valsA = [random()]   # and the randomly generated 'data' in this one
date = startdate

step = timedelta(1)
while date - startdate <= timedelta(91):
date += step
datesA += [date]
valsA += [random()]

step = timedelta(30)
while date - startdate <= timedelta(2*365):
if date.month in [1,3,5,7,8,10,12]:
date += timedelta(1)
elif date.month == 2:
date -= timedelta(2)
date += step
datesA += [date]
valsA += [random()]

step = timedelta(91)
while date - startdate <= timedelta(int(365*10)):
date += step
if date.year % 4 == 0:
date += timedelta(1)
datesA += [date]
valsA += [random()]

step = timedelta(365)
while date - startdate <= timedelta(int(365*50)):
date += step
if date.year % 4 == 0:
date += timedelta(1)
datesA += [date]
valsA += [random()]

return datesA, valsA
``````

## Then, a simple method to find the nearest date to a given date in a series of dates

``````def findIndexOfNearest(series, D):
# returns the index of the date in series that is closest to, but greater than D
for i, date in enumerate(series):
if date > D:
return i
return None
``````

## Generate the two time series, plus some mock date for the first series

``````thisyear = datetime.today().year
quarterEndMonth = (datetime.today().month+2)//3*3
quarterEndDay = calendar.monthrange(thisyear, quarterEndMonth)[1]

d1,v1 = makeseries(date.today())
d2,_ = makeseries(date(thisyear,quarterEndMonth, quarterEndDay))
v2 = []
``````

## Interpolate using timedeltas and print the interpolated values

``````for d in d2:
i = findIndexOfNearest(d1, d)
if i:
prev = d1[i-1]
next = d1[i]
prevRatio = 1-(d-prev).total_seconds()/(next-prev).total_seconds()
nextRatio = 1-(next-d).total_seconds()/(next-prev).total_seconds()
interp = prevRatio*v1[i-1] + nextRatio*v1[i]
v2 += [interp]
print("%s = %.2f * %s + %.2f * %s" % (d, prevRatio, prev, nextRatio, next))
print("%17.2f * %10.2f + %.2f * %10.2f = %.2f" % \
(prevRatio, v1[i-1], nextRatio, v1[i], interp))
else: # date to be interpolated is past last original date
v2 += [v1[-1]]
print("%s = 1.00 * %s = %24.2f" % (d,d1[-1],v1[-1]))
``````

## Some example output:

Here, the original series just switched to 3-month gaps, with one date in November, and another in February the next year. The date for which we are interpolating is in December.

``````                     original           original
date                date
v                   v
2014-12-02 = 0.69 * 2014-11-04 + 0.31 * 2015-02-03
^       0.69 *       0.95 + 0.31 *       0.10 = 0.69
|         ^           ^       ^           ^       ^
|         |        original   |       original   interpolated
date from      |         value     |         value       value
2nd series   weight              weight
``````
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