#!/usr/bin/env python2 # -*-coding:UTF-8 -* """ Sentiment analyser module. It takes its inputs from 'global'. The content analysed comes from the pastes with length of the line above a defined threshold removed (get_p_content_with_removed_lines). This is done because NLTK sentences tokemnizer (sent_tokenize) seems to crash for long lines (function _slices_from_text line#1276). nltk.sentiment.vader module credit: Hutto, C.J. & Gilbert, E.E. (2014). VADER: A Parsimonious Rule-based Model for Sentiment Analysis of Social Media Text. Eighth International Conference on Weblogs and Social Media (ICWSM-14). Ann Arbor, MI, June 2014. """ import time import datetime import calendar import redis import json from pubsublogger import publisher from Helper import Process from packages import Paste from nltk.sentiment.vader import SentimentIntensityAnalyzer from nltk import tokenize # Config Variables accepted_Mime_type = ['text/plain'] size_threshold = 250 line_max_length_threshold = 1000 def Analyse(message, server): #print 'analyzing' path = message paste = Paste.Paste(path) # get content with removed line + number of them num_line_removed, p_content = paste.get_p_content_with_removed_lines(line_max_length_threshold) provider = paste.p_source p_date = str(paste._get_p_date()) p_MimeType = paste._get_p_encoding() # Perform further analysis if p_MimeType == "text/plain": if isJSON(p_content): p_MimeType = "JSON" if p_MimeType in accepted_Mime_type: print 'Processing', path the_date = datetime.date(int(p_date[0:4]), int(p_date[4:6]), int(p_date[6:8])) #print 'pastedate: ', the_date the_time = datetime.datetime.now() the_time = datetime.time(getattr(the_time, 'hour'), 0, 0) #print 'now: ', the_time combined_datetime = datetime.datetime.combine(the_date, the_time) #print 'combined: ', combined_datetime timestamp = calendar.timegm(combined_datetime.timetuple()) #print 'timestamp: ', timestamp sentences = tokenize.sent_tokenize(p_content.decode('utf-8', 'ignore')) #print len(sentences) if len(sentences) > 0: avg_score = {'neg': 0.0, 'neu': 0.0, 'pos': 0.0, 'compoundPos': 0.0, 'compoundNeg': 0.0} neg_line = 0 pos_line = 0 sid = SentimentIntensityAnalyzer() for sentence in sentences: ss = sid.polarity_scores(sentence) for k in sorted(ss): if k == 'compound': if ss['neg'] > ss['pos']: avg_score['compoundNeg'] += ss[k] neg_line += 1 else: avg_score['compoundPos'] += ss[k] pos_line += 1 else: avg_score[k] += ss[k] #print('{0}: {1}, '.format(k, ss[k])) for k in avg_score: if k == 'compoundPos': avg_score[k] = avg_score[k] / (pos_line if pos_line > 0 else 1) elif k == 'compoundNeg': avg_score[k] = avg_score[k] / (neg_line if neg_line > 0 else 1) else: avg_score[k] = avg_score[k] / len(sentences) # In redis-levelDB: {} = set, () = K-V # {Provider_set -> provider_i} # {Provider_TimestampInHour_i -> UniqID_i}_j # (UniqID_i -> PasteValue_i) server.sadd('Provider_set', provider) #print 'Provider_set', provider provider_timestamp = provider + '_' + str(timestamp) #print provider_timestamp server.incr('UniqID') UniqID = server.get('UniqID') print provider_timestamp, '->', UniqID, 'dropped', num_line_removed, 'lines' server.sadd(provider_timestamp, UniqID) server.set(UniqID, avg_score) #print UniqID, '->', avg_score else: print 'Dropped:', p_MimeType def isJSON(content): try: json.loads(content) return True except Exception,e: return False if __name__ == '__main__': # If you wish to use an other port of channel, do not forget to run a subscriber accordingly (see launch_logs.sh) # Port of the redis instance used by pubsublogger publisher.port = 6380 # Script is the default channel used for the modules. publisher.channel = 'Script' # Section name in bin/packages/modules.cfg config_section = 'SentimentAnalysis' # Setup the I/O queues p = Process(config_section) # Sent to the logging a description of the module publisher.info("") # REDIS_LEVEL_DB # server = redis.StrictRedis( host=p.config.get("Redis_Level_DB_Sentiment", "host"), port=p.config.get("Redis_Level_DB_Sentiment", "port"), db=p.config.get("Redis_Level_DB_Sentiment", "db")) # Endless loop getting messages from the input queue while True: # Get one message from the input queue message = p.get_from_set() if message is None: publisher.debug("{} queue is empty, waiting".format(config_section)) time.sleep(1) continue # Do something with the message from the queue Analyse(message, server)