import pickle import pandas as pd import numpy #import logging, os #logging.disable(logging.WARNING) #os.environ["TF_CPP_MIN_LOG_LEVEL"] = "3" import tensorflow as tf import tensorflow_text as tf_text from metaphone import doublemetaphone import re with open('vocab_data.pkl', 'rb') as fp: hin_vocab = pickle.load(fp) vocab_keys=[l for l in hin_vocab] #all_data_vocab_53k_mixed_batch_v2 reloaded = tf.saved_model.load("translator") def t_text(line): line=re.sub("[.!?\\-\'\"]", "",line).lower().strip() string='' for j in line.split(' '): if doublemetaphone(j)[0]+'*'+doublemetaphone(j[::-1])[0]+'*'+j[:2]+'*'+j[len(j)-1:] in vocab_keys: string=string+list(hin_vocab[doublemetaphone(j)[0]+'*'+doublemetaphone(j[::-1])[0]+'*'+j[:2]+'*'+j[len(j)-1:]])[0]+' ' else: string=string+j+' ' return string.lower().strip() def outcome(input): trans_text=t_text(input) result=reloaded.tf_translate(tf.constant([trans_text]))['text'][0].numpy().decode() return result #print(outcome("Please timer ko rokey"))