I have a large tab delimited file containing about 1.4 million lines and 50 columns. Before I do anything with the data contained in the file I want to split this large file into about a few thousand smaller files. The first column of my file contains position information, and I want each smaller file to be a specific interval based on this information. In separate lists I have the start and stop of each interval that I want to split the larger file by. Here is the part of my code that does this operation, the start and stop positions are contained in lists called start_L and stop_L:
for i in range(len(id)): out1=((file%s.txt)%(id[i])) table=open('largefile.tsv',"r") start=int(start_L[i]) stop=int(stop_L[i]) table.next() temp_out=open(out1,"w") reader=csv.reader(table,delimiter="\t") for line in reader: if int(line) in range(start,stop): for y in line: temp_out.write(("%s\t")%(y)) temp_out.write("\n") else: if int(line) > stop: break else: pass print "temporary file..." , id[i]
The above code achieves what I want, but is extremely slow. It can process the first hundred or so intervals in a matter of minutes, but gets exponentially slower with each passing interval, so it takes days to run. Is there a faster, or more efficient way of doing this? I believe the problem is that it has to scan over the entire file to find the positions within the specified interval each time through the loop.