I'm trying to calculate daily sums of values using pandas. Here's the test file - http://pastebin.com/uSDfVkTS
This is the code I came up so far:
import numpy as np import datetime as dt import pandas as pd f = np.genfromtxt('test', dtype=[('datetime', '|S16'), ('data', '<i4')], delimiter=',') dates = [dt.datetime.strptime(i, '%Y-%m-%d %H:%M') for i in f['datetime']] s = pd.Series(f['data'], index = dates) d = s.resample('D', how='sum')
Using the given test file this produces:
2012-01-02 1128 Freq: D
First problem is that calculated sum corresponds to the next day. I've been able to solve that by using parameter loffset='-1d'.
Now the actual problem is that the data may start not from 00:30 of a day but at any time of a day. Also the data has gaps filled with 'nan' values.
That said, is it possible to set a lower threshold of number of values that are necessary to calculate daily sums? (e.g. if there're less than 40 values in a single day, then put NaN instead of a sum)
I believe that it is possible to define a custom function to do that and refer to it in 'how' parameter, but I have no clue how to code the function itself.