I have a server set up on my Ubuntu OS which has two directories 'dumped' and 'processed'. As soon as Excel files are copied into the 'dumped' folder, my script processes them in order to push them into a MS SQL database and afterwards moves those files to 'processed'. Should I create some sort of pipeline for a case when 100's of files are present for processing ? Is there a more efficient way to go about this ?
Currently, what I am doing is getting names of all newly added files into a dict. Then, the script fetches one file at a time and processes it. This is a modified version of Tim Golden's code from this post
def monitor_dumped(): """Returns the files added to dump folder since its last modification time in the form of a dict """ mod_time = os.path.getmtime(folder_to_monitor) # no. of seconds since epoch m = datetime.datetime.fromtimestamp(mod_time) # change time format for difference computation currentDT = datetime.datetime.now() # current system time tslm = currentDT - m # time_since_last_modification need = False before = dict(\[(f, None) for f in os.listdir(folder_to_monitor)\]) if (tslm.seconds > 5): need = True else: print("It hasn't been 5 seconds yet.") while need: time.sleep(10) after = dict(\[(f, None) for f in os.listdir(folder_to_monitor)\]) added = \[f for f in after if not f in before\] if added: print("Added: ", ", ".join(added)) before = after need = False return before
I hope to achieve this same functionality with better modularity and performance.