My code takes about two hours to process. The bottleneck is in for loop and if statements (see comment in code). I'm beginner with python :) Can anyone recommend an efficient python way to replace the nested for and if statements?
I have tables of ~30 million rows, each row with (x,y,z) values:
20.0 11.3 7
21.0 11.3 0
22.0 11.3 3
My desired output is a table in the form x, y, min(z), count(min(z)). The last column is a final count of the least z values at that (x,y). Eg:
20.0 11.3 7 7
21.0 11.3 0 10
22.0 11.3 3 1
There's only about 600 unique coordinates, so the output table will be 600x4. My code:
import numpy as np file = open('input.txt','r'); coordset = set() data = np.zeros((600,4))*np.nan irow = 0 ctr = 0 for row in file: item = row.split() x = float(item) y = float(item) z = float(item) # build unique grid of coords if ((x,y)) not in coordset: data[irow] = x data[irow] = y data[irow] = z irow = irow + 1 # grows up to 599 # lookup table of unique coords coordset.add((x,y)) # BOTTLENECK. replace ifs? for? for i in range(0, irow): if data[i]==x and data[i]==y: if z > data[i]: continue elif z==data[i]: ctr = ctr + 1 data[i]=ctr if z < data[i]: data[i] = z ctr = 1 data[i]=ctr
edit: For reference the approach by @Joowani computes in 1m26s. My original approach, same computer, same datafile, 106m23s. edit2: @Ophion and @Sibster thanks for suggestions, I don't have enough credit to +1 useful answers.