I need to match two very large Numpy arrays (one is 20000 rows, another about 100000 rows) and I am trying to build a script to do it efficiently. Simple looping over the arrays is incredibly slow, can someone suggest a better way? Here is what I am trying to do: array datesSecondDict
and array pwfs2Dates
contain datetime values, I need to take each datetime value from array pwfs2Dates
(smaller array) and see if there is a datetime value like that (plus minus 5 minutes) in array datesSecondDict
(there might be more than 1). If there is one (or more) I populate a new array (of the same size as array pwfs2Dates
) with the value (one of the values) from array valsSecondDict
(which is just the array with the corresponding numerical values to datesSecondDict
). Here is a solution by @unutbu and @joaquin that worked for me (thanks guys!):
import time
import datetime as dt
import numpy as np
def combineArs(dict1, dict2):
"""Combine data from 2 dictionaries into a list.
dict1 contains primary data (e.g. seeing parameter).
The function compares each timestamp in dict1 to dict2
to see if there is a matching timestamp record(s)
in dict2 (plus/minus 5 minutes).
==If yes: a list called data gets appended with the
corresponding parameter value from dict2.
(Note that if there are more than 1 record matching,
the first occuring value gets appended to the list).
==If no: a list called data gets appended with 0."""
# Specify the keys to use
pwfs2Key = 'pwfs2:dc:seeing'
dimmKey = 'ws:seeFwhm'
# Create an iterator for primary dict
datesPrimDictIter = iter(dict1[pwfs2Key]['datetimes'])
# Take the first timestamp value in primary dict
nextDatePrimDict = next(datesPrimDictIter)
# Split the second dictionary into lists
datesSecondDict = dict2[dimmKey]['datetime']
valsSecondDict = dict2[dimmKey]['values']
# Define time window
fiveMins = dt.timedelta(minutes = 5)
data = []
#st = time.time()
for i, nextDateSecondDict in enumerate(datesSecondDict):
try:
while nextDatePrimDict < nextDateSecondDict - fiveMins:
# If there is no match: append zero and move on
data.append(0)
nextDatePrimDict = next(datesPrimDictIter)
while nextDatePrimDict < nextDateSecondDict + fiveMins:
# If there is a match: append the value of second dict
data.append(valsSecondDict[i])
nextDatePrimDict = next(datesPrimDictIter)
except StopIteration:
break
data = np.array(data)
#st = time.time() - st
return data
Thanks, Aina.