I am trying to process over 1.3 mil files using deephashes (SSDEEP) http://code.google.com/p/pyssdeep
What it does is ,. it generates Hashes (1.3 mil generated within 3-6 minutes) and then compare each other to get similarity results.Comparison is very fast but just running single process wont make things finish.So we put in Python Multiprocessing module to get things done.
Result is 1.3 mil text files done within 30 mins . using 18 cores (Quad Xeon processors ,. totalling 24 CPUS)
Here is how each process works :
- Generate SSDEEP Sums.
- Split those list of sums into 5000 group of chunks.
- Compare each chunks 1 vs 5000 within 18 process : 18 sums compared each iteration.
- Group the Results based on Similarity score (Default is 75)
- Removed the files which are already checked for next iteration.
- Start with next file which is < 75% score for next group
- Repeat until all groups are done.
- If there are files which are not included (not similar to any files) they are added to remaining list.
When all processed are done the remaining files are combined and compared against each other recursively until there is no result left.
The problem is, when list of files are chunked into smaller (5000) files . There are files which included in first 5000 chunk but not included in another group , making the groups incomplete.
If i run without chunking it takes very long time for a loop to complete . over 18 hrs and not done ,. do not know how long.
Please advice me.
Modules used : multiprocessing.Pool , ssdeep python
def ssdpComparer(lst, threshold): s = ssdeep() check_file =  result_data =  lst1 = lst set_lst = set(lst) print '>>>START' for tup1 in lst1: if tup1 in check_file: continue for tup2 in set_lst: score = s.compare(tup1, tup2) if score >= threshold: result_data.append((score, tup1, tup2)) #Score, GroupID, FileID check_file.append(tup2) set_lst = set_lst.difference(check_file) print """####### DONE #######""" remain_lst = set(lst).difference(check_file) return (result_data, remain_lst) def parallelProcessing(tochunk_list, total_processes, threshold, source_path, mode, REMAINING_LEN = 0): result =  remainining =  pooled_lst =  pair =  chunks_toprocess =  print 'Total Files:', len(tochunk_list) if mode == MODE_INTENSIVE: chunks_toprocess = groupWithBlockID(tochunk_list) #blockID chunks elif mode == MODE_THOROUGH: chunks_toprocess = groupSafeLimit(tochunk_list, TOTAL_PROCESSES) #Chunks by processes elif mode == MODE_FAST: chunks_toprocess = groupSafeLimit(tochunk_list) #5000 chunks print 'No. of files group to process: %d' % (len(chunks_toprocess)) pool_obj = Pool(processes = total_processes, initializer = poolInitializer, initargs = [None, threshold, source_path, mode]) pooled_lst = pool_obj.map(matchingProcess, chunks_toprocess) #chunks_toprocess tmp_rs, tmp_rm = getResultAndRemainingLists(pooled_lst) result += tmp_rs remainining += tmp_rm print 'RESULT LEN: %s, REMAINING LEN: %s, P.R.L: %s' % (len(result), len(remainining), REMAINING_LEN) tmp_r_len = len(remainining) if tmp_r_len != REMAINING_LEN and len(result) > 0 : result += parallelProcessing(remainining, total_processes, threshold, source_path, mode, tmp_r_len) else: result += [('','', rf) for rf in remainining] return result def getResultAndRemainingLists(pooled_lst): g_result =  g_remaining =  for tup_result in pooled_lst: tmp_result, tmp_remaining = tup_result g_result += tmp_result if tmp_remaining: g_remaining += tmp_remaining return (g_result, g_remaining)