I have a pandas dataframe indexed by time: (using python 3.X)
2012-01-01 00:00:00 38406 2012-01-01 01:00:00 36501 2012-01-01 02:00:00 35305 ... 2012-12-31 09:00:00 43121 2012-12-31 10:00:00 44549 2012-12-31 11:00:00 45635
All I need is a list of lists containing the consumption values in hourly resolution:
data =[[ 38406, 36501, 35305,...], [ x, y, z,...], [ ],....[ ]]
In other words: I need a list for each day: containing 24 values (one value for each hour of the day). And they should all be packed together in a list.
So data would give me a list containing the 24 consumption values of the first day.
What i have done yet:
For one month instead of the whole year, it could look like this:
clusterInput=[None]*31 for i in range(31): a="2012-1-"+str(i+1) subset=data[a] clusterInput[i]=subset.values
For the whole year it can be done similar with more than one for loop or a switch case statement to take the different months (28/29/30/31 days) into account.
But I'm pretty sure there has to be an easier way, due to the time index. I have also tried to use but without success
[list(x) for x in dt.T.iterrows()] /tuples and /items
I'd be very glad for some hints how to do this efficiently