I can't figure out a way to reduce memory usage for this program further. Basically, I'm reading from JSON log files into a pandas dataframe, but:
- the list
appendfunction is what is causing the issue. It creates two different objects in memory, causing huge memory usage.
.to_picklemethod of pandas is also a huge memory hog, because the biggest spike in memory is when writing to the pickle.
Here is my most efficient implementation to date:
columns = ['eventName', 'sessionId', "eventTime", "items", "currentPage", "browserType"] df = pd.DataFrame(columns=columns) l =  for i, file in enumerate(glob.glob("*.log")): print("Going through log file #%s named %s..." % (i+1, file)) with open(file) as myfile: l += [json.loads(line) for line in myfile] tempdata = pd.DataFrame(l) for column in tempdata.columns: if not column in columns: try: tempdata.drop(column, axis=1, inplace=True) except ValueError: print ("oh no! We've got a problem with %s column! It don't exist!" % (badcolumn)) l =  df = df.append(tempdata, ignore_index = True) # very slow version, but is most memory efficient # length = len(df) # length_temp = len(tempdata) # for i in range(1, length_temp): # update_progress((i*100.0)/length_temp) # for column in columns: # df.at[length+i, column] = tempdata.at[i, column] tempdata = 0 print ("Data Frame initialized and filled! Now Sorting...") df.sort(columns=["sessionId", "eventTime"], inplace = True) print ("Done Sorting... Changing indices...") df.index = range(1, len(df)+1) print ("Storing in Pickles...") df.to_pickle('data.pkl')
Is there an easy way to reduce memory? The commented code does the job but takes 100-1000x longer. I'm currently at 45% memory usage at max during the
.to_pickle part, 30% during the reading of the logs. But the more logs there are, the higher that number goes.