# -*- coding: utf-8 -*- """ Use torchMoji to predict emojis from a single text input """ from __future__ import print_function, division, unicode_literals import example_helper import json import csv import argparse import numpy as np import emoji from torchmoji.sentence_tokenizer import SentenceTokenizer from torchmoji.model_def import torchmoji_emojis from torchmoji.global_variables import PRETRAINED_PATH, VOCAB_PATH # Emoji map in emoji_overview.png EMOJIS = ":joy: :unamused: :weary: :sob: :heart_eyes: \ :pensive: :ok_hand: :blush: :heart: :smirk: \ :grin: :notes: :flushed: :100: :sleeping: \ :relieved: :relaxed: :raised_hands: :two_hearts: :expressionless: \ :sweat_smile: :pray: :confused: :kissing_heart: :heartbeat: \ :neutral_face: :information_desk_person: :disappointed: :see_no_evil: :tired_face: \ :v: :sunglasses: :rage: :thumbsup: :cry: \ :sleepy: :yum: :triumph: :hand: :mask: \ :clap: :eyes: :gun: :persevere: :smiling_imp: \ :sweat: :broken_heart: :yellow_heart: :musical_note: :speak_no_evil: \ :wink: :skull: :confounded: :smile: :stuck_out_tongue_winking_eye: \ :angry: :no_good: :muscle: :facepunch: :purple_heart: \ :sparkling_heart: :blue_heart: :grimacing: :sparkles:".split(' ') def top_elements(array, k): ind = np.argpartition(array, -k)[-k:] return ind[np.argsort(array[ind])][::-1] if __name__ == "__main__": argparser = argparse.ArgumentParser() argparser.add_argument('--text', type=str, required=True, help="Input text to emojize") argparser.add_argument('--maxlen', type=int, default=30, help="Max length of input text") args = argparser.parse_args() # Tokenizing using dictionary with open(VOCAB_PATH, 'r') as f: vocabulary = json.load(f) st = SentenceTokenizer(vocabulary, args.maxlen) # Loading model model = torchmoji_emojis(PRETRAINED_PATH) # Running predictions tokenized, _, _ = st.tokenize_sentences([args.text]) # Get sentence probability prob = model(tokenized)[0] # Top emoji id emoji_ids = top_elements(prob, 5) # map to emojis emojis = map(lambda x: EMOJIS[x], emoji_ids) print(emoji.emojize("{} {}".format(args.text,' '.join(emojis)), use_aliases=True))