Seq2SeqNMT/seq2seq_nmt.py (231 lines of code) (raw):

# based on https://pytorch.org/tutorials/intermediate/seq2seq_translation_tutorial.html from __future__ import unicode_literals, print_function, division from io import open import unicodedata import string import re import random import torch import torch.nn as nn from torch import optim import torch.nn.functional as F device = torch.device("cuda" if torch.cuda.is_available() else "cpu") SOS_token = 0 EOS_token = 1 class Lang: def __init__(self, name): self.name = name self.word2index = {} self.word2count = {} self.index2word = {0: "SOS", 1: "EOS"} self.n_words = 2 # Count SOS and EOS def addSentence(self, sentence): for word in sentence.split(' '): self.addWord(word) def addWord(self, word): if word not in self.word2index: self.word2index[word] = self.n_words self.word2count[word] = 1 self.index2word[self.n_words] = word self.n_words += 1 else: self.word2count[word] += 1 # Turn a Unicode string to plain ASCII, thanks to # https://stackoverflow.com/a/518232/2809427 def unicodeToAscii(s): return ''.join( c for c in unicodedata.normalize('NFD', s) if unicodedata.category(c) != 'Mn' ) def normalizeString(s): s = unicodeToAscii(s.lower().strip()) s = re.sub(r"([.!?])", r" \1", s) s = re.sub(r"[^a-zA-Z.!?]+", r" ", s) return s def readLangs(lang1, lang2, reverse=False): print("Reading lines...") # Read the file and split into lines lines = open('data/%s-%s.txt' % (lang1, lang2), encoding='utf-8').\ read().strip().split('\n') # Split every line into pairs and normalize pairs = [[normalizeString(s) for s in l.split('\t')] for l in lines] # Reverse pairs, make Lang instances if reverse: pairs = [list(reversed(p)) for p in pairs] input_lang = Lang(lang2) output_lang = Lang(lang1) else: input_lang = Lang(lang1) output_lang = Lang(lang2) return input_lang, output_lang, pairs MAX_LENGTH = 50 def filterPair(p): return len(p[0].split(' ')) < MAX_LENGTH and \ len(p[1].split(' ')) < MAX_LENGTH def filterPairs(pairs): return [pair for pair in pairs if filterPair(pair)] def prepareData(lang1, lang2, reverse=False): input_lang, output_lang, pairs = readLangs(lang1, lang2, reverse) print("Read %s sentence pairs" % len(pairs)) pairs = filterPairs(pairs) print("Trimmed to %s sentence pairs" % len(pairs)) print("Counting words...") for pair in pairs: input_lang.addSentence(pair[0]) output_lang.addSentence(pair[1]) print("Counted words:") print(input_lang.name, input_lang.n_words) print(output_lang.name, output_lang.n_words) return input_lang, output_lang, pairs input_lang, output_lang, pairs = prepareData('eng', 'fra', True) print(random.choice(pairs)) class EncoderRNN(nn.Module): def __init__(self, input_size, hidden_size): super(EncoderRNN, self).__init__() self.hidden_size = hidden_size self.embedding = nn.Embedding(input_size, hidden_size) self.gru = nn.GRU(hidden_size, hidden_size) def forward(self, input, hidden): embedded = self.embedding(input).view(1, 1, -1) output = embedded output, hidden = self.gru(output, hidden) return output, hidden def initHidden(self): return torch.zeros(1, 1, self.hidden_size, device=device) class AttnDecoderRNN(nn.Module): def __init__(self, hidden_size, output_size, dropout_p=0.1, max_length=MAX_LENGTH): super(AttnDecoderRNN, self).__init__() self.hidden_size = hidden_size self.output_size = output_size self.dropout_p = dropout_p self.max_length = max_length self.embedding = nn.Embedding(self.output_size, self.hidden_size) self.attn = nn.Linear(self.hidden_size * 2, self.max_length) self.attn_combine = nn.Linear(self.hidden_size * 2, self.hidden_size) self.dropout = nn.Dropout(self.dropout_p) self.gru = nn.GRU(self.hidden_size, self.hidden_size) self.out = nn.Linear(self.hidden_size, self.output_size) def forward(self, input, hidden, encoder_outputs): embedded = self.embedding(input).view(1, 1, -1) embedded = self.dropout(embedded) attn_weights = F.softmax( self.attn(torch.cat((embedded[0], hidden[0]), 1)), dim=1) attn_applied = torch.bmm(attn_weights.unsqueeze(0), encoder_outputs.unsqueeze(0)) output = torch.cat((embedded[0], attn_applied[0]), 1) output = self.attn_combine(output).unsqueeze(0) output = F.relu(output) output, hidden = self.gru(output, hidden) output = F.log_softmax(self.out(output[0]), dim=1) return output, hidden, attn_weights def initHidden(self): return torch.zeros(1, 1, self.hidden_size, device=device) def indexesFromSentence(lang, sentence): return [lang.word2index[word] for word in sentence.split(' ')] def tensorFromSentence(lang, sentence): indexes = indexesFromSentence(lang, sentence) indexes.append(EOS_token) return torch.tensor(indexes, dtype=torch.long, device=device).view(-1, 1) def tensorsFromPair(pair): input_tensor = tensorFromSentence(input_lang, pair[0]) target_tensor = tensorFromSentence(output_lang, pair[1]) return (input_tensor, target_tensor) teacher_forcing_ratio = 0.5 def train(input_tensor, target_tensor, encoder, decoder, encoder_optimizer, decoder_optimizer, criterion, max_length=MAX_LENGTH): encoder_hidden = encoder.initHidden() encoder_optimizer.zero_grad() decoder_optimizer.zero_grad() input_length = input_tensor.size(0) target_length = target_tensor.size(0) encoder_outputs = torch.zeros(max_length, encoder.hidden_size, device=device) loss = 0 for ei in range(input_length): encoder_output, encoder_hidden = encoder( input_tensor[ei], encoder_hidden) encoder_outputs[ei] = encoder_output[0, 0] decoder_input = torch.tensor([[SOS_token]], device=device) decoder_hidden = encoder_hidden use_teacher_forcing = True if random.random() < teacher_forcing_ratio else False if use_teacher_forcing: # Teacher forcing: Feed the target as the next input for di in range(target_length): decoder_output, decoder_hidden, decoder_attention = decoder( decoder_input, decoder_hidden, encoder_outputs) loss += criterion(decoder_output, target_tensor[di]) decoder_input = target_tensor[di] # Teacher forcing else: # Without teacher forcing: use its own predictions as the next input for di in range(target_length): decoder_output, decoder_hidden, decoder_attention = decoder( decoder_input, decoder_hidden, encoder_outputs) topv, topi = decoder_output.topk(1) decoder_input = topi.squeeze().detach() # detach from history as input loss += criterion(decoder_output, target_tensor[di]) if decoder_input.item() == EOS_token: break loss.backward() encoder_optimizer.step() decoder_optimizer.step() return loss.item() / target_length import time import math def asMinutes(s): m = math.floor(s / 60) s -= m * 60 return '%dm %ds' % (m, s) def timeSince(since, percent): now = time.time() s = now - since es = s / (percent) rs = es - s return '%s (- %s)' % (asMinutes(s), asMinutes(rs)) def trainIters(encoder, decoder, n_iters, print_every=1000, plot_every=100, learning_rate=0.01): start = time.time() plot_losses = [] print_loss_total = 0 # Reset every print_every plot_loss_total = 0 # Reset every plot_every encoder_optimizer = optim.SGD(encoder.parameters(), lr=learning_rate) decoder_optimizer = optim.SGD(decoder.parameters(), lr=learning_rate) training_pairs = [tensorsFromPair(random.choice(pairs)) for i in range(n_iters)] criterion = nn.NLLLoss() for iter in range(1, n_iters + 1): training_pair = training_pairs[iter - 1] input_tensor = training_pair[0] target_tensor = training_pair[1] loss = train(input_tensor, target_tensor, encoder, decoder, encoder_optimizer, decoder_optimizer, criterion) print_loss_total += loss plot_loss_total += loss if iter % print_every == 0: print_loss_avg = print_loss_total / print_every print_loss_total = 0 print('%s (%d %d%%) %.4f' % (timeSince(start, iter / n_iters), iter, iter / n_iters * 100, print_loss_avg)) if iter % 150000 == 0: torch.save({ 'encoder_state_dict': encoder.state_dict(), 'decoder_state_dict': decoder.state_dict(), 'encoder_optimizer_state_dict': encoder_optimizer.state_dict(), 'decoder_optimizer_state_dict': decoder_optimizer.state_dict(), }, "seq2seq_mt_{}.pt".format(iter)) hidden_size = 256 encoder = EncoderRNN(input_lang.n_words, hidden_size).to(device) decoder = AttnDecoderRNN(hidden_size, output_lang.n_words, dropout_p=0.1).to(device) trainIters(encoder, decoder, 450100, print_every=5000) encoder = EncoderRNN(input_lang.n_words, hidden_size) decoder = AttnDecoderRNN(hidden_size, output_lang.n_words) encoder_optimizer = optim.SGD(encoder.parameters(), lr=0.01) decoder_optimizer = optim.SGD(decoder.parameters(), lr=0.01) checkpoint = torch.load("seq2seq_mt_150000.pt", map_location=torch.device('cpu')) encoder.load_state_dict(checkpoint['encoder_state_dict']) decoder.load_state_dict(checkpoint['decoder_state_dict']) encoder_optimizer.load_state_dict(checkpoint['encoder_optimizer_state_dict']) decoder_optimizer.load_state_dict(checkpoint['decoder_optimizer_state_dict']) encoder.eval() decoder.eval() encoder_input=torch.tensor([429]) encoder_hidden=torch.zeros(1,1,256) decoder_input1=torch.tensor([[0]]) decoder_input2=torch.zeros(1,1,256) decoder_input3=torch.zeros(50,256) # dynamic quantization can be applied to the decoder for its nn.Linear parameters quantized_decoder = torch.quantization.quantize_dynamic(decoder, qconfig_spec={torch.nn.Linear}, dtype=torch.qint8) traced_encoder = torch.jit.trace(encoder, (encoder_input, encoder_hidden)) traced_decoder = torch.jit.trace(quantized_decoder, (decoder_input1, decoder_input2, decoder_input3)) from torch.utils.mobile_optimizer import optimize_for_mobile traced_encoder_optimized = optimize_for_mobile(traced_encoder) traced_encoder_optimized._save_for_lite_interpreter("optimized_encoder_150k.ptl") traced_decoder_optimized = optimize_for_mobile(traced_decoder) traced_decoder_optimized._save_for_lite_interpreter("optimized_decoder_150k.ptl")