- run ~40 huge queries in a db using SQLAlchemy with Threads or Processes, put the corresponding SQLA ResultProxies in a Queue.Queue (being handled by multiprocessing.Manager)
- at the same time, write the results to .csv files with a number of Processes that consume said Queue
- QueryThread and WriteThread classes that run the queries and write the data; since the queries take some time to run, there is no significant performance loss due to how the GIL handles threading
- writing the files on the other hand takes forever; in fact, even though the original idea was to run multiple threads of the WriteThread class, the best performance is obtained with a single thread.
Hence the idea to use multiprocessing; I want to be able to write the output concurrently and not be CPU bound but rather I/O bound.
Background aside, here's the issue (which is essentially a design question) - the multiprocessing library works by pickling objects and then piping the data to other spawned processes; but the ResultProxy objects and shared Queue that I'm trying to use in the WriteWorker Process aren't picklable, which results in the following message (not verbatim, but close enough):
pickle.PicklingError: Can't pickle object in WriteWorker.start()
So the question for you helpful folks is, any ideas on a potential design pattern or approach that would avoid this issue? This seems like a simple, classic producer-consumer problem, I imagine the solution is straightforward and I'm just overthinking it
any help or feedback is appreciated! thanks :)
edit: here's some relevant snippets of code, let me know if there's any other context I can provide
from the parent class:
#init manager and queues self.manager = multiprocessing.Manager() self.query_queue = self.manager.Queue() self.write_queue = self.manager.Queue() def _get_data(self): #spawn a pool of query processes, and pass them query queue instance for i in xrange(self.NUM_QUERY_THREADS): qt = QueryWorker.QueryWorker(self.query_queue, self.write_queue, self.config_values, self.args) qt.daemon = True # qt.setDaemon(True) qt.start() #populate query queue self.parse_sql_queries() #spawn a pool of writer processes, and pass them output queue instance for i in range(self.NUM_WRITE_THREADS): wt = WriteWorker.WriteWorker(self.write_queue, self.output_path, self.WRITE_BUFFER, self.output_dict) wt.daemon = True # wt.setDaemon(True) wt.start() #wait on the queues until everything has been processed self.query_queue.join() self.write_queue.join()
and from the QueryWorker class:
def run(self): while True: #grabs host from query queue query_tupe = self.query_queue.get() table = query_tupe query = query_tupe query_num = query_tupe if query and table: #grab connection from pool, run the query connection = self.engine.connect() print 'Running query #' + str(query_num) + ': ' + table try: result = connection.execute(query) except: print 'Error while running query #' + str(query_num) + ': \n\t' + str(query) + '\nError: ' + str(sys.exc_info()) #place result handle tuple into out queue self.out_queue.put((table, result)) #signals to queue job is done self.query_queue.task_done()