注意
點擊 這裡 下載完整的範例程式碼
聊天機器人教學¶
建立於: 2018 年 8 月 14 日 | 最後更新: 2025 年 1 月 24 日 | 最後驗證: 2024 年 11 月 05 日
在本教學中,我們將探索循環序列到序列模型的一個有趣且引人注目的用例。 我們將使用來自 康乃爾電影對話語料庫 的電影劇本訓練一個簡單的聊天機器人。
對話模型是人工智慧研究中的熱門話題。 聊天機器人可以在各種設置中找到,包括客戶服務應用程式和線上幫助台。 這些機器人通常由基於檢索的模型提供支持,這些模型將預定義的回應輸出到某些形式的問題。 在像公司 IT 服務台這樣的高度限制領域中,這些模型可能就足夠了,但是,它們對於更通用的用例來說不夠穩健。 教導機器與人類在多個領域進行有意義的對話是一個遠未解決的研究問題。 最近,深度學習的蓬勃發展使得像 Google 的 神經對話模型 這樣的強大生成模型成為可能,這標誌著朝向多領域生成對話模型邁出了一大步。 在本教學中,我們將在 PyTorch 中實作這種模型。

> hello?
Bot: hello .
> where am I?
Bot: you re in a hospital .
> who are you?
Bot: i m a lawyer .
> how are you doing?
Bot: i m fine .
> are you my friend?
Bot: no .
> you're under arrest
Bot: i m trying to help you !
> i'm just kidding
Bot: i m sorry .
> where are you from?
Bot: san francisco .
> it's time for me to leave
Bot: i know .
> goodbye
Bot: goodbye .
教學重點
處理 康乃爾電影對話語料庫 數據集的載入和預處理
使用 Luong 注意力機制 實作序列到序列模型
使用小批量聯合訓練編碼器和解碼器模型
實作貪婪搜尋解碼模組
與訓練後的聊天機器人互動
致謝
本教學借鑒了以下來源的程式碼
Yuan-Kuei Wu 的 pytorch-chatbot 實作: https://github.com/ywk991112/pytorch-chatbot
Sean Robertson 的 practical-pytorch seq2seq-translation 範例: https://github.com/spro/practical-pytorch/tree/master/seq2seq-translation
FloydHub 康乃爾電影語料庫預處理程式碼: https://github.com/floydhub/textutil-preprocess-cornell-movie-corpus
準備工作¶
要開始,請 下載 電影對話語料庫 zip 檔案。
# and put in a ``data/`` directory under the current directory.
#
# After that, let’s import some necessities.
#
import torch
from torch.jit import script, trace
import torch.nn as nn
from torch import optim
import torch.nn.functional as F
import csv
import random
import re
import os
import unicodedata
import codecs
from io import open
import itertools
import math
import json
# If the current `accelerator <https://pytorch.dev.org.tw/docs/stable/torch.html#accelerators>`__ is available,
# we will use it. Otherwise, we use the CPU.
device = torch.accelerator.current_accelerator().type if torch.accelerator.is_available() else "cpu"
print(f"Using {device} device")
Using cuda device
載入和預處理資料¶
下一步是重新格式化我們的數據檔案,並將數據載入到我們可以使用的結構中。
康乃爾電影對話語料庫 是一個豐富的電影角色對話數據集
10,292 對電影角色之間 220,579 次對話交流
來自 617 部電影的 9,035 個角色
總共 304,713 個發言
這個數據集很大而且多樣,並且語言的正式性、時間段、情感等都有很大的變化。 我們希望這種多樣性使我們的模型對於多種形式的輸入和查詢都具有魯棒性。
首先,我們來看看我們數據檔案的一些行,以了解原始格式。
corpus_name = "movie-corpus"
corpus = os.path.join("data", corpus_name)
def printLines(file, n=10):
with open(file, 'rb') as datafile:
lines = datafile.readlines()
for line in lines[:n]:
print(line)
printLines(os.path.join(corpus, "utterances.jsonl"))
b'{"id": "L1045", "conversation_id": "L1044", "text": "They do not!", "speaker": "u0", "meta": {"movie_id": "m0", "parsed": [{"rt": 1, "toks": [{"tok": "They", "tag": "PRP", "dep": "nsubj", "up": 1, "dn": []}, {"tok": "do", "tag": "VBP", "dep": "ROOT", "dn": [0, 2, 3]}, {"tok": "not", "tag": "RB", "dep": "neg", "up": 1, "dn": []}, {"tok": "!", "tag": ".", "dep": "punct", "up": 1, "dn": []}]}]}, "reply-to": "L1044", "timestamp": null, "vectors": []}\n'
b'{"id": "L1044", "conversation_id": "L1044", "text": "They do to!", "speaker": "u2", "meta": {"movie_id": "m0", "parsed": [{"rt": 1, "toks": [{"tok": "They", "tag": "PRP", "dep": "nsubj", "up": 1, "dn": []}, {"tok": "do", "tag": "VBP", "dep": "ROOT", "dn": [0, 2, 3]}, {"tok": "to", "tag": "TO", "dep": "dobj", "up": 1, "dn": []}, {"tok": "!", "tag": ".", "dep": "punct", "up": 1, "dn": []}]}]}, "reply-to": null, "timestamp": null, "vectors": []}\n'
b'{"id": "L985", "conversation_id": "L984", "text": "I hope so.", "speaker": "u0", "meta": {"movie_id": "m0", "parsed": [{"rt": 1, "toks": [{"tok": "I", "tag": "PRP", "dep": "nsubj", "up": 1, "dn": []}, {"tok": "hope", "tag": "VBP", "dep": "ROOT", "dn": [0, 2, 3]}, {"tok": "so", "tag": "RB", "dep": "advmod", "up": 1, "dn": []}, {"tok": ".", "tag": ".", "dep": "punct", "up": 1, "dn": []}]}]}, "reply-to": "L984", "timestamp": null, "vectors": []}\n'
b'{"id": "L984", "conversation_id": "L984", "text": "She okay?", "speaker": "u2", "meta": {"movie_id": "m0", "parsed": [{"rt": 1, "toks": [{"tok": "She", "tag": "PRP", "dep": "nsubj", "up": 1, "dn": []}, {"tok": "okay", "tag": "RB", "dep": "ROOT", "dn": [0, 2]}, {"tok": "?", "tag": ".", "dep": "punct", "up": 1, "dn": []}]}]}, "reply-to": null, "timestamp": null, "vectors": []}\n'
b'{"id": "L925", "conversation_id": "L924", "text": "Let\'s go.", "speaker": "u0", "meta": {"movie_id": "m0", "parsed": [{"rt": 0, "toks": [{"tok": "Let", "tag": "VB", "dep": "ROOT", "dn": [2, 3]}, {"tok": "\'s", "tag": "PRP", "dep": "nsubj", "up": 2, "dn": []}, {"tok": "go", "tag": "VB", "dep": "ccomp", "up": 0, "dn": [1]}, {"tok": ".", "tag": ".", "dep": "punct", "up": 0, "dn": []}]}]}, "reply-to": "L924", "timestamp": null, "vectors": []}\n'
b'{"id": "L924", "conversation_id": "L924", "text": "Wow", "speaker": "u2", "meta": {"movie_id": "m0", "parsed": [{"rt": 0, "toks": [{"tok": "Wow", "tag": "UH", "dep": "ROOT", "dn": []}]}]}, "reply-to": null, "timestamp": null, "vectors": []}\n'
b'{"id": "L872", "conversation_id": "L870", "text": "Okay -- you\'re gonna need to learn how to lie.", "speaker": "u0", "meta": {"movie_id": "m0", "parsed": [{"rt": 4, "toks": [{"tok": "Okay", "tag": "UH", "dep": "intj", "up": 4, "dn": []}, {"tok": "--", "tag": ":", "dep": "punct", "up": 4, "dn": []}, {"tok": "you", "tag": "PRP", "dep": "nsubj", "up": 4, "dn": []}, {"tok": "\'re", "tag": "VBP", "dep": "aux", "up": 4, "dn": []}, {"tok": "gon", "tag": "VBG", "dep": "ROOT", "dn": [0, 1, 2, 3, 6, 12]}, {"tok": "na", "tag": "TO", "dep": "aux", "up": 6, "dn": []}, {"tok": "need", "tag": "VB", "dep": "xcomp", "up": 4, "dn": [5, 8]}, {"tok": "to", "tag": "TO", "dep": "aux", "up": 8, "dn": []}, {"tok": "learn", "tag": "VB", "dep": "xcomp", "up": 6, "dn": [7, 11]}, {"tok": "how", "tag": "WRB", "dep": "advmod", "up": 11, "dn": []}, {"tok": "to", "tag": "TO", "dep": "aux", "up": 11, "dn": []}, {"tok": "lie", "tag": "VB", "dep": "xcomp", "up": 8, "dn": [9, 10]}, {"tok": ".", "tag": ".", "dep": "punct", "up": 4, "dn": []}]}]}, "reply-to": "L871", "timestamp": null, "vectors": []}\n'
b'{"id": "L871", "conversation_id": "L870", "text": "No", "speaker": "u2", "meta": {"movie_id": "m0", "parsed": [{"rt": 0, "toks": [{"tok": "No", "tag": "UH", "dep": "ROOT", "dn": []}]}]}, "reply-to": "L870", "timestamp": null, "vectors": []}\n'
b'{"id": "L870", "conversation_id": "L870", "text": "I\'m kidding. You know how sometimes you just become this \\"persona\\"? And you don\'t know how to quit?", "speaker": "u0", "meta": {"movie_id": "m0", "parsed": [{"rt": 2, "toks": [{"tok": "I", "tag": "PRP", "dep": "nsubj", "up": 2, "dn": []}, {"tok": "\'m", "tag": "VBP", "dep": "aux", "up": 2, "dn": []}, {"tok": "kidding", "tag": "VBG", "dep": "ROOT", "dn": [0, 1, 3]}, {"tok": ".", "tag": ".", "dep": "punct", "up": 2, "dn": [4]}, {"tok": " ", "tag": "_SP", "dep": "", "up": 3, "dn": []}]}, {"rt": 1, "toks": [{"tok": "You", "tag": "PRP", "dep": "nsubj", "up": 1, "dn": []}, {"tok": "know", "tag": "VBP", "dep": "ROOT", "dn": [0, 6, 11]}, {"tok": "how", "tag": "WRB", "dep": "advmod", "up": 3, "dn": []}, {"tok": "sometimes", "tag": "RB", "dep": "advmod", "up": 6, "dn": [2]}, {"tok": "you", "tag": "PRP", "dep": "nsubj", "up": 6, "dn": []}, {"tok": "just", "tag": "RB", "dep": "advmod", "up": 6, "dn": []}, {"tok": "become", "tag": "VBP", "dep": "ccomp", "up": 1, "dn": [3, 4, 5, 9]}, {"tok": "this", "tag": "DT", "dep": "det", "up": 9, "dn": []}, {"tok": "\\"", "tag": "``", "dep": "punct", "up": 9, "dn": []}, {"tok": "persona", "tag": "NN", "dep": "attr", "up": 6, "dn": [7, 8, 10]}, {"tok": "\\"", "tag": "\'\'", "dep": "punct", "up": 9, "dn": []}, {"tok": "?", "tag": ".", "dep": "punct", "up": 1, "dn": [12]}, {"tok": " ", "tag": "_SP", "dep": "", "up": 11, "dn": []}]}, {"rt": 4, "toks": [{"tok": "And", "tag": "CC", "dep": "cc", "up": 4, "dn": []}, {"tok": "you", "tag": "PRP", "dep": "nsubj", "up": 4, "dn": []}, {"tok": "do", "tag": "VBP", "dep": "aux", "up": 4, "dn": []}, {"tok": "n\'t", "tag": "RB", "dep": "neg", "up": 4, "dn": []}, {"tok": "know", "tag": "VB", "dep": "ROOT", "dn": [0, 1, 2, 3, 7, 8]}, {"tok": "how", "tag": "WRB", "dep": "advmod", "up": 7, "dn": []}, {"tok": "to", "tag": "TO", "dep": "aux", "up": 7, "dn": []}, {"tok": "quit", "tag": "VB", "dep": "xcomp", "up": 4, "dn": [5, 6]}, {"tok": "?", "tag": ".", "dep": "punct", "up": 4, "dn": []}]}]}, "reply-to": null, "timestamp": null, "vectors": []}\n'
b'{"id": "L869", "conversation_id": "L866", "text": "Like my fear of wearing pastels?", "speaker": "u0", "meta": {"movie_id": "m0", "parsed": [{"rt": 0, "toks": [{"tok": "Like", "tag": "IN", "dep": "ROOT", "dn": [2, 6]}, {"tok": "my", "tag": "PRP$", "dep": "poss", "up": 2, "dn": []}, {"tok": "fear", "tag": "NN", "dep": "pobj", "up": 0, "dn": [1, 3]}, {"tok": "of", "tag": "IN", "dep": "prep", "up": 2, "dn": [4]}, {"tok": "wearing", "tag": "VBG", "dep": "pcomp", "up": 3, "dn": [5]}, {"tok": "pastels", "tag": "NNS", "dep": "dobj", "up": 4, "dn": []}, {"tok": "?", "tag": ".", "dep": "punct", "up": 0, "dn": []}]}]}, "reply-to": "L868", "timestamp": null, "vectors": []}\n'
建立格式化的資料檔案¶
為了方便起見,我們將建立一個格式良好的資料檔案,其中每一行包含一個以 tab 分隔的查詢句子和一個回應句子對。
以下函數有助於解析原始的 utterances.jsonl
數據檔案。
loadLinesAndConversations
將檔案的每一行分割成一個線的字典,其中包含以下欄位:lineID
、characterID
和 text,然後將它們分組到包含以下欄位的對話中:conversationID
、movieID
和 lines。extractSentencePairs
從對話中提取句子對
# Splits each line of the file to create lines and conversations
def loadLinesAndConversations(fileName):
lines = {}
conversations = {}
with open(fileName, 'r', encoding='iso-8859-1') as f:
for line in f:
lineJson = json.loads(line)
# Extract fields for line object
lineObj = {}
lineObj["lineID"] = lineJson["id"]
lineObj["characterID"] = lineJson["speaker"]
lineObj["text"] = lineJson["text"]
lines[lineObj['lineID']] = lineObj
# Extract fields for conversation object
if lineJson["conversation_id"] not in conversations:
convObj = {}
convObj["conversationID"] = lineJson["conversation_id"]
convObj["movieID"] = lineJson["meta"]["movie_id"]
convObj["lines"] = [lineObj]
else:
convObj = conversations[lineJson["conversation_id"]]
convObj["lines"].insert(0, lineObj)
conversations[convObj["conversationID"]] = convObj
return lines, conversations
# Extracts pairs of sentences from conversations
def extractSentencePairs(conversations):
qa_pairs = []
for conversation in conversations.values():
# Iterate over all the lines of the conversation
for i in range(len(conversation["lines"]) - 1): # We ignore the last line (no answer for it)
inputLine = conversation["lines"][i]["text"].strip()
targetLine = conversation["lines"][i+1]["text"].strip()
# Filter wrong samples (if one of the lists is empty)
if inputLine and targetLine:
qa_pairs.append([inputLine, targetLine])
return qa_pairs
現在我們將呼叫這些函數並建立檔案。 我們將其命名為 formatted_movie_lines.txt
。
# Define path to new file
datafile = os.path.join(corpus, "formatted_movie_lines.txt")
delimiter = '\t'
# Unescape the delimiter
delimiter = str(codecs.decode(delimiter, "unicode_escape"))
# Initialize lines dict and conversations dict
lines = {}
conversations = {}
# Load lines and conversations
print("\nProcessing corpus into lines and conversations...")
lines, conversations = loadLinesAndConversations(os.path.join(corpus, "utterances.jsonl"))
# Write new csv file
print("\nWriting newly formatted file...")
with open(datafile, 'w', encoding='utf-8') as outputfile:
writer = csv.writer(outputfile, delimiter=delimiter, lineterminator='\n')
for pair in extractSentencePairs(conversations):
writer.writerow(pair)
# Print a sample of lines
print("\nSample lines from file:")
printLines(datafile)
Processing corpus into lines and conversations...
Writing newly formatted file...
Sample lines from file:
b'They do to!\tThey do not!\n'
b'She okay?\tI hope so.\n'
b"Wow\tLet's go.\n"
b'"I\'m kidding. You know how sometimes you just become this ""persona""? And you don\'t know how to quit?"\tNo\n'
b"No\tOkay -- you're gonna need to learn how to lie.\n"
b"I figured you'd get to the good stuff eventually.\tWhat good stuff?\n"
b'What good stuff?\t"The ""real you""."\n'
b'"The ""real you""."\tLike my fear of wearing pastels?\n'
b'do you listen to this crap?\tWhat crap?\n'
b"What crap?\tMe. This endless ...blonde babble. I'm like, boring myself.\n"
載入和修剪資料¶
我們的下一步是建立詞彙表並將查詢/回應句子對載入到記憶體中。
請注意,我們正在處理 單詞 序列,這些序列沒有與離散數字空間的隱式映射。 因此,我們必須通過將數據集中遇到的每個唯一單詞映射到索引值來建立一個。
為此,我們定義一個 Voc
類別,它保存了從單字到索引的映射、從索引到單字的反向映射、每個單字的計數以及單字總數。該類別提供了將單字加入詞彙表 (addWord
)、將句子中的所有單字加入詞彙表 (addSentence
) 以及修剪不常出現的單字 (trim
) 的方法。 稍後會詳細說明修剪。
# Default word tokens
PAD_token = 0 # Used for padding short sentences
SOS_token = 1 # Start-of-sentence token
EOS_token = 2 # End-of-sentence token
class Voc:
def __init__(self, name):
self.name = name
self.trimmed = False
self.word2index = {}
self.word2count = {}
self.index2word = {PAD_token: "PAD", SOS_token: "SOS", EOS_token: "EOS"}
self.num_words = 3 # Count SOS, EOS, PAD
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.num_words
self.word2count[word] = 1
self.index2word[self.num_words] = word
self.num_words += 1
else:
self.word2count[word] += 1
# Remove words below a certain count threshold
def trim(self, min_count):
if self.trimmed:
return
self.trimmed = True
keep_words = []
for k, v in self.word2count.items():
if v >= min_count:
keep_words.append(k)
print('keep_words {} / {} = {:.4f}'.format(
len(keep_words), len(self.word2index), len(keep_words) / len(self.word2index)
))
# Reinitialize dictionaries
self.word2index = {}
self.word2count = {}
self.index2word = {PAD_token: "PAD", SOS_token: "SOS", EOS_token: "EOS"}
self.num_words = 3 # Count default tokens
for word in keep_words:
self.addWord(word)
現在我們可以組裝我們的詞彙表以及查詢/回應句子對。 在我們準備好使用這些資料之前,我們必須執行一些前處理。
首先,我們必須使用 unicodeToAscii
將 Unicode 字串轉換為 ASCII。 接下來,我們應該將所有字母轉換為小寫,並修剪所有非字母字元,除了基本標點符號 (normalizeString
)。 最後,為了幫助訓練收斂,我們將過濾掉長度大於 MAX_LENGTH
閾值的句子 (filterPairs
)。
MAX_LENGTH = 10 # Maximum sentence length to consider
# 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'
)
# Lowercase, trim, and remove non-letter characters
def normalizeString(s):
s = unicodeToAscii(s.lower().strip())
s = re.sub(r"([.!?])", r" \1", s)
s = re.sub(r"[^a-zA-Z.!?]+", r" ", s)
s = re.sub(r"\s+", r" ", s).strip()
return s
# Read query/response pairs and return a voc object
def readVocs(datafile, corpus_name):
print("Reading lines...")
# Read the file and split into lines
lines = open(datafile, 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]
voc = Voc(corpus_name)
return voc, pairs
# Returns True if both sentences in a pair 'p' are under the MAX_LENGTH threshold
def filterPair(p):
# Input sequences need to preserve the last word for EOS token
return len(p[0].split(' ')) < MAX_LENGTH and len(p[1].split(' ')) < MAX_LENGTH
# Filter pairs using the ``filterPair`` condition
def filterPairs(pairs):
return [pair for pair in pairs if filterPair(pair)]
# Using the functions defined above, return a populated voc object and pairs list
def loadPrepareData(corpus, corpus_name, datafile, save_dir):
print("Start preparing training data ...")
voc, pairs = readVocs(datafile, corpus_name)
print("Read {!s} sentence pairs".format(len(pairs)))
pairs = filterPairs(pairs)
print("Trimmed to {!s} sentence pairs".format(len(pairs)))
print("Counting words...")
for pair in pairs:
voc.addSentence(pair[0])
voc.addSentence(pair[1])
print("Counted words:", voc.num_words)
return voc, pairs
# Load/Assemble voc and pairs
save_dir = os.path.join("data", "save")
voc, pairs = loadPrepareData(corpus, corpus_name, datafile, save_dir)
# Print some pairs to validate
print("\npairs:")
for pair in pairs[:10]:
print(pair)
Start preparing training data ...
Reading lines...
Read 221282 sentence pairs
Trimmed to 64313 sentence pairs
Counting words...
Counted words: 18082
pairs:
['they do to !', 'they do not !']
['she okay ?', 'i hope so .']
['wow', 'let s go .']
['what good stuff ?', 'the real you .']
['the real you .', 'like my fear of wearing pastels ?']
['do you listen to this crap ?', 'what crap ?']
['well no . . .', 'then that s all you had to say .']
['then that s all you had to say .', 'but']
['but', 'you always been this selfish ?']
['have fun tonight ?', 'tons']
另一種有助於在訓練期間實現更快收斂的策略是從我們的詞彙表中修剪掉很少使用的單字。 減少特徵空間也會降低模型必須學習逼近的函數的難度。 我們將以兩步驟流程來執行此操作
使用
voc.trim
函數修剪使用次數低於MIN_COUNT
閾值的單字。過濾掉包含被修剪單字的句子對。
MIN_COUNT = 3 # Minimum word count threshold for trimming
def trimRareWords(voc, pairs, MIN_COUNT):
# Trim words used under the MIN_COUNT from the voc
voc.trim(MIN_COUNT)
# Filter out pairs with trimmed words
keep_pairs = []
for pair in pairs:
input_sentence = pair[0]
output_sentence = pair[1]
keep_input = True
keep_output = True
# Check input sentence
for word in input_sentence.split(' '):
if word not in voc.word2index:
keep_input = False
break
# Check output sentence
for word in output_sentence.split(' '):
if word not in voc.word2index:
keep_output = False
break
# Only keep pairs that do not contain trimmed word(s) in their input or output sentence
if keep_input and keep_output:
keep_pairs.append(pair)
print("Trimmed from {} pairs to {}, {:.4f} of total".format(len(pairs), len(keep_pairs), len(keep_pairs) / len(pairs)))
return keep_pairs
# Trim voc and pairs
pairs = trimRareWords(voc, pairs, MIN_COUNT)
keep_words 7833 / 18079 = 0.4333
Trimmed from 64313 pairs to 53131, 0.8261 of total
為模型準備資料¶
雖然我們已投入大量精力將我們的資料準備和處理成一個漂亮的詞彙物件和句子對列表,但我們的模型最終會期望數值的 torch 張量作為輸入。 在 seq2seq 翻譯教學中可以找到為模型準備處理過的資料的一種方法。 在該教學中,我們使用大小為 1 的批次大小,這意味著我們所要做的就是將句子對中的單字轉換為詞彙表中的對應索引,並將其輸入到模型中。
但是,如果您有興趣加快訓練速度和/或想要利用 GPU 並行化功能,則需要使用小批量進行訓練。
使用小批量也意味著我們必須注意批次中句子長度的變化。 為了適應同一批次中不同大小的句子,我們將使批次輸入張量的形狀為 * (max_length, batch_size) *,其中短於 * max_length * 的句子在 * EOS_token * 之後進行零填充。
如果我們僅透過將單字轉換為其索引 (indexesFromSentence
) 並進行零填充,將我們的英文句子轉換為張量,則我們的張量將具有形狀 * (batch_size, max_length) *,並且索引第一個維度將傳回跨所有時間步的全序列。 但是,我們需要能夠沿時間以及跨批次中的所有序列來索引我們的批次。 因此,我們將輸入批次形狀轉置為 * (max_length, batch_size) *,以便跨第一個維度的索引傳回跨批次中所有句子的一個時間步。 我們在 zeroPadding
函數中隱式處理此轉置。
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inputVar
函數處理將句子轉換為張量的過程,最終建立一個形狀正確的零填充張量。 它還傳回一個 lengths
張量,用於批次中每個序列,稍後將傳遞給我們的解碼器。
outputVar
函數執行與 inputVar
類似的功能,但是它不是傳回 lengths
張量,而是傳回二元遮罩張量和最大目標句子長度。 二元遮罩張量具有與輸出目標張量相同的形狀,但是每個作為 * PAD_token * 的元素都是 0,所有其他元素都是 1。
batch2TrainData
僅採用一堆句子對,並使用上述函數傳回輸入和目標張量。
def indexesFromSentence(voc, sentence):
return [voc.word2index[word] for word in sentence.split(' ')] + [EOS_token]
def zeroPadding(l, fillvalue=PAD_token):
return list(itertools.zip_longest(*l, fillvalue=fillvalue))
def binaryMatrix(l, value=PAD_token):
m = []
for i, seq in enumerate(l):
m.append([])
for token in seq:
if token == PAD_token:
m[i].append(0)
else:
m[i].append(1)
return m
# Returns padded input sequence tensor and lengths
def inputVar(l, voc):
indexes_batch = [indexesFromSentence(voc, sentence) for sentence in l]
lengths = torch.tensor([len(indexes) for indexes in indexes_batch])
padList = zeroPadding(indexes_batch)
padVar = torch.LongTensor(padList)
return padVar, lengths
# Returns padded target sequence tensor, padding mask, and max target length
def outputVar(l, voc):
indexes_batch = [indexesFromSentence(voc, sentence) for sentence in l]
max_target_len = max([len(indexes) for indexes in indexes_batch])
padList = zeroPadding(indexes_batch)
mask = binaryMatrix(padList)
mask = torch.BoolTensor(mask)
padVar = torch.LongTensor(padList)
return padVar, mask, max_target_len
# Returns all items for a given batch of pairs
def batch2TrainData(voc, pair_batch):
pair_batch.sort(key=lambda x: len(x[0].split(" ")), reverse=True)
input_batch, output_batch = [], []
for pair in pair_batch:
input_batch.append(pair[0])
output_batch.append(pair[1])
inp, lengths = inputVar(input_batch, voc)
output, mask, max_target_len = outputVar(output_batch, voc)
return inp, lengths, output, mask, max_target_len
# Example for validation
small_batch_size = 5
batches = batch2TrainData(voc, [random.choice(pairs) for _ in range(small_batch_size)])
input_variable, lengths, target_variable, mask, max_target_len = batches
print("input_variable:", input_variable)
print("lengths:", lengths)
print("target_variable:", target_variable)
print("mask:", mask)
print("max_target_len:", max_target_len)
input_variable: tensor([[ 86, 24, 140, 829, 62],
[ 6, 355, 1362, 206, 566],
[ 36, 735, 14, 72, 1919],
[ 17, 140, 140, 2160, 85],
[ 62, 28, 158, 14, 14],
[1012, 461, 140, 2, 2],
[3223, 10, 14, 0, 0],
[1012, 2, 2, 0, 0],
[ 6, 0, 0, 0, 0],
[ 2, 0, 0, 0, 0]])
lengths: tensor([10, 8, 8, 6, 6])
target_variable: tensor([[ 18, 11, 101, 93, 277],
[ 483, 113, 19, 311, 72],
[ 5, 241, 10, 72, 10],
[ 22, 706, 2, 19, 2],
[2010, 14, 0, 24, 0],
[1556, 2, 0, 136, 0],
[ 14, 0, 0, 5, 0],
[ 2, 0, 0, 48, 0],
[ 0, 0, 0, 14, 0],
[ 0, 0, 0, 2, 0]])
mask: tensor([[ True, True, True, True, True],
[ True, True, True, True, True],
[ True, True, True, True, True],
[ True, True, True, True, True],
[ True, True, False, True, False],
[ True, True, False, True, False],
[ True, False, False, True, False],
[ True, False, False, True, False],
[False, False, False, True, False],
[False, False, False, True, False]])
max_target_len: 10
定義模型¶
Seq2Seq 模型¶
我們聊天機器人的核心是一個序列到序列 (seq2seq) 模型。 seq2seq 模型的目標是將可變長度的序列作為輸入,並使用固定大小的模型傳回可變長度的序列作為輸出。
Sutskever et al. 發現,透過一起使用兩個單獨的遞迴神經網路,我們可以完成這項任務。 一個 RNN 充當編碼器,將可變長度的輸入序列編碼為固定長度的上下文向量。 從理論上講,此上下文向量 (RNN 的最終隱藏層) 將包含有關輸入到機器人的查詢句子的語義資訊。 第二個 RNN 是一個解碼器,它接收一個輸入單字和上下文向量,並傳回序列中下一個單字的猜測以及隱藏狀態,以在下一次迭代中使用。
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圖片來源:https://jeddy92.github.io/JEddy92.github.io/ts_seq2seq_intro/
編碼器¶
編碼器 RNN 每次迭代輸入句子中的一個權杖 (例如,單字),在每個時間步輸出一個「輸出」向量和一個「隱藏狀態」向量。 然後,隱藏狀態向量將傳遞到下一個時間步,同時記錄輸出向量。 編碼器將其在序列中的每個點看到的上下文轉換為高維空間中的一組點,解碼器將使用這些點為給定的任務生成有意義的輸出。
我們編碼器的核心是多層閘控循環單元,由 Cho et al. 於 2014 年發明。 我們將使用 GRU 的雙向變體,這意味著本質上有兩個獨立的 RNN:一個以正常的順序饋送輸入序列,另一個以相反的順序饋送輸入序列。 每個網路的輸出在每個時間步進行求和。 使用雙向 GRU 將使我們能夠編碼過去和未來的上下文。
雙向 RNN
圖片來源:https://colah.github.io/posts/2015-09-NN-Types-FP/
請注意,embedding
層用於在任意大小的特徵空間中編碼我們的詞彙索引。對於我們的模型,這一層會將每個詞彙映射到大小為 hidden_size 的特徵空間。經過訓練後,這些值應能編碼含義相似詞彙之間的語義相似性。
最後,如果將填充後的序列批次傳遞給 RNN 模組,我們必須使用 nn.utils.rnn.pack_padded_sequence
和 nn.utils.rnn.pad_packed_sequence
分別對 RNN 傳遞前後的填充進行封裝和解封裝。
計算圖
將詞彙索引轉換為詞嵌入。
為 RNN 模組封裝填充後的序列批次。
通過 GRU 的正向傳遞。
解封裝填充。
對雙向 GRU 的輸出求和。
回傳輸出和最終隱藏狀態。
輸入
input_seq
: 輸入句子的批次;形狀=(max_length, batch_size)input_lengths
: 對應於批次中每個句子的句子長度列表;形狀=(batch_size)hidden
: 隱藏狀態;形狀=(n_layers x num_directions, batch_size, hidden_size)
輸出
outputs
: 來自 GRU 最後一個隱藏層的輸出特徵(雙向輸出的總和);形狀=(max_length, batch_size, hidden_size)hidden
: GRU 更新後的隱藏狀態;形狀=(n_layers x num_directions, batch_size, hidden_size)
class EncoderRNN(nn.Module):
def __init__(self, hidden_size, embedding, n_layers=1, dropout=0):
super(EncoderRNN, self).__init__()
self.n_layers = n_layers
self.hidden_size = hidden_size
self.embedding = embedding
# Initialize GRU; the input_size and hidden_size parameters are both set to 'hidden_size'
# because our input size is a word embedding with number of features == hidden_size
self.gru = nn.GRU(hidden_size, hidden_size, n_layers,
dropout=(0 if n_layers == 1 else dropout), bidirectional=True)
def forward(self, input_seq, input_lengths, hidden=None):
# Convert word indexes to embeddings
embedded = self.embedding(input_seq)
# Pack padded batch of sequences for RNN module
packed = nn.utils.rnn.pack_padded_sequence(embedded, input_lengths)
# Forward pass through GRU
outputs, hidden = self.gru(packed, hidden)
# Unpack padding
outputs, _ = nn.utils.rnn.pad_packed_sequence(outputs)
# Sum bidirectional GRU outputs
outputs = outputs[:, :, :self.hidden_size] + outputs[:, : ,self.hidden_size:]
# Return output and final hidden state
return outputs, hidden
解碼器¶
解碼器 RNN 以逐個 token 的方式生成回覆句子。它使用編碼器的上下文向量和內部隱藏狀態來生成序列中的下一個單詞。它會持續生成單詞,直到輸出一個 *EOS_token*,表示句子的結尾。一個普通的 seq2seq 解碼器的常見問題是,如果我們僅僅依賴上下文向量來編碼整個輸入序列的含義,那麼我們很可能會丟失資訊。當處理長輸入序列時,情況尤其如此,這極大地限制了解碼器的能力。
為了應對這個問題,Bahdanau et al. 創建了一種“注意力機制”,使解碼器能夠關注輸入序列的某些部分,而不是在每個步驟都使用整個固定的上下文。
從高層次來看,注意力是使用解碼器當前的隱藏狀態和編碼器的輸出計算的。輸出注意力權重與輸入序列的形狀相同,這使我們可以將它們乘以編碼器輸出,從而得到一個加權和,該加權和指示要關注的編碼器輸出的部分。Sean Robertson’s 的圖表很好地描述了這一點。
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Luong et al. 在 Bahdanau et al. 的基礎上進行了改進,創建了“全局注意力”。主要的區別在於,使用“全局注意力”,我們會考慮所有編碼器的隱藏狀態,而不是 Bahdanau et al. 的“局部注意力”,它僅考慮來自當前時間步的編碼器的隱藏狀態。另一個區別是,使用“全局注意力”,我們僅使用來自當前時間步的解碼器的隱藏狀態來計算注意力權重或能量。Bahdanau et al. 的注意力計算需要知道來自先前時間步的解碼器的狀態。此外,Luong et al. 還提供了多種方法來計算編碼器輸出和解碼器輸出之間的注意力能量,這些方法稱為“評分函數”。
其中 \(h_t\) = 當前目標解碼器狀態,\(\bar{h}_s\) = 所有編碼器狀態。
總體而言,全局注意力機制可以用下圖概括。請注意,我們將把“注意力層”實作為一個單獨的 nn.Module
,稱為 Attn
。該模組的輸出是一個 softmax 正規化的權重張量,形狀為 (batch_size, 1, max_length)。
# Luong attention layer
class Attn(nn.Module):
def __init__(self, method, hidden_size):
super(Attn, self).__init__()
self.method = method
if self.method not in ['dot', 'general', 'concat']:
raise ValueError(self.method, "is not an appropriate attention method.")
self.hidden_size = hidden_size
if self.method == 'general':
self.attn = nn.Linear(self.hidden_size, hidden_size)
elif self.method == 'concat':
self.attn = nn.Linear(self.hidden_size * 2, hidden_size)
self.v = nn.Parameter(torch.FloatTensor(hidden_size))
def dot_score(self, hidden, encoder_output):
return torch.sum(hidden * encoder_output, dim=2)
def general_score(self, hidden, encoder_output):
energy = self.attn(encoder_output)
return torch.sum(hidden * energy, dim=2)
def concat_score(self, hidden, encoder_output):
energy = self.attn(torch.cat((hidden.expand(encoder_output.size(0), -1, -1), encoder_output), 2)).tanh()
return torch.sum(self.v * energy, dim=2)
def forward(self, hidden, encoder_outputs):
# Calculate the attention weights (energies) based on the given method
if self.method == 'general':
attn_energies = self.general_score(hidden, encoder_outputs)
elif self.method == 'concat':
attn_energies = self.concat_score(hidden, encoder_outputs)
elif self.method == 'dot':
attn_energies = self.dot_score(hidden, encoder_outputs)
# Transpose max_length and batch_size dimensions
attn_energies = attn_energies.t()
# Return the softmax normalized probability scores (with added dimension)
return F.softmax(attn_energies, dim=1).unsqueeze(1)
現在我們已經定義了注意力子模組,我們可以實作實際的解碼器模型。對於解碼器,我們將手動一次一步地饋入批次。這意味著我們的詞嵌入張量和 GRU 輸出都將具有形狀 (1, batch_size, hidden_size)。
計算圖
獲取當前輸入詞的詞嵌入。
通過單向 GRU 的正向傳遞。
從 (2) 中解碼器的當前 GRU 輸出計算注意力權重。
將注意力權重乘以編碼器輸出以獲得新的“加權和”上下文向量。
使用 Luong 方程式 5 連接加權上下文向量和 GRU 輸出。
使用 Luong 方程式 6(不使用 softmax)預測下一個單詞。
回傳輸出和最終隱藏狀態。
輸入
input_step
: 輸入序列批次的一個時間步(一個單詞);形狀=(1, batch_size)last_hidden
: GRU 的最終隱藏層;形狀=(n_layers x num_directions, batch_size, hidden_size)encoder_outputs
: 編碼器模型的輸出;形狀=(max_length, batch_size, hidden_size)
輸出
output
: softmax 正規化的張量,提供了解碼序列中每個單詞作為正確下一個單詞的機率;形狀=(batch_size, voc.num_words)hidden
: GRU 的最終隱藏狀態;形狀=(n_layers x num_directions, batch_size, hidden_size)
class LuongAttnDecoderRNN(nn.Module):
def __init__(self, attn_model, embedding, hidden_size, output_size, n_layers=1, dropout=0.1):
super(LuongAttnDecoderRNN, self).__init__()
# Keep for reference
self.attn_model = attn_model
self.hidden_size = hidden_size
self.output_size = output_size
self.n_layers = n_layers
self.dropout = dropout
# Define layers
self.embedding = embedding
self.embedding_dropout = nn.Dropout(dropout)
self.gru = nn.GRU(hidden_size, hidden_size, n_layers, dropout=(0 if n_layers == 1 else dropout))
self.concat = nn.Linear(hidden_size * 2, hidden_size)
self.out = nn.Linear(hidden_size, output_size)
self.attn = Attn(attn_model, hidden_size)
def forward(self, input_step, last_hidden, encoder_outputs):
# Note: we run this one step (word) at a time
# Get embedding of current input word
embedded = self.embedding(input_step)
embedded = self.embedding_dropout(embedded)
# Forward through unidirectional GRU
rnn_output, hidden = self.gru(embedded, last_hidden)
# Calculate attention weights from the current GRU output
attn_weights = self.attn(rnn_output, encoder_outputs)
# Multiply attention weights to encoder outputs to get new "weighted sum" context vector
context = attn_weights.bmm(encoder_outputs.transpose(0, 1))
# Concatenate weighted context vector and GRU output using Luong eq. 5
rnn_output = rnn_output.squeeze(0)
context = context.squeeze(1)
concat_input = torch.cat((rnn_output, context), 1)
concat_output = torch.tanh(self.concat(concat_input))
# Predict next word using Luong eq. 6
output = self.out(concat_output)
output = F.softmax(output, dim=1)
# Return output and final hidden state
return output, hidden
定義訓練程序¶
遮罩損失¶
由於我們正在處理填充序列的批次,因此我們不能簡單地在計算損失時考慮張量的所有元素。我們定義 maskNLLLoss
以根據解碼器的輸出張量、目標張量和描述目標張量填充的二進位遮罩張量來計算我們的損失。此損失函數計算與遮罩張量中 1 對應的元素的平均負對數似然。
def maskNLLLoss(inp, target, mask):
nTotal = mask.sum()
crossEntropy = -torch.log(torch.gather(inp, 1, target.view(-1, 1)).squeeze(1))
loss = crossEntropy.masked_select(mask).mean()
loss = loss.to(device)
return loss, nTotal.item()
單次訓練迭代¶
train
函數包含單次訓練迭代(單批次輸入)的演算法。
我們將使用一些聰明的技巧來幫助收斂
第一個技巧是使用 teacher forcing(強制教學)。這意味著在由
teacher_forcing_ratio
設定的某個機率下,我們使用當前的目標詞作為解碼器的下一個輸入,而不是使用解碼器當前的猜測。這種技術充當解碼器的訓練輔助工具,有助於更有效的訓練。但是,teacher forcing 可能會導致推理期間的模型不穩定,因為解碼器可能沒有足夠的機會在訓練期間真正設計自己的輸出序列。因此,我們必須注意如何設定teacher_forcing_ratio
,並且不要被快速收斂所迷惑。我們實作的第二個技巧是 gradient clipping(梯度裁剪)。這是一種常用於對抗“梯度爆炸”問題的技術。本質上,通過將梯度裁剪或設定閾值為最大值,我們可以防止梯度呈指數增長,並導致溢出 (NaN) 或超出成本函數中的陡峭懸崖。
圖片來源:Goodfellow et al. Deep Learning. 2016. https://www.deeplearningbook.org/
操作順序
將整個輸入批次通過編碼器的正向傳遞。
將解碼器輸入初始化為 SOS_token,並將隱藏狀態初始化為編碼器的最終隱藏狀態。
一次一步地將輸入批次序列傳遞通過解碼器。
如果使用教師強制 (teacher forcing):將下一個解碼器輸入設定為當前的目標;否則:將下一個解碼器輸入設定為當前的解碼器輸出。
計算並累積損失。
執行反向傳播。
梯度裁剪。
更新編碼器和解碼器模型參數。
注意
PyTorch 的 RNN 模組(RNN
、LSTM
、GRU
)可以像任何其他非遞迴層一樣使用,只需將整個輸入序列(或批次的序列)傳遞給它們即可。我們在 encoder
中以這種方式使用 GRU
層。事實上,在底層,有一個迭代過程迴圈遍歷每個時間步,計算隱藏狀態。或者,您可以一次運行這些模組一個時間步。在這種情況下,我們在訓練過程中手動迴圈遍歷序列,就像我們必須為 decoder
模型所做的那樣。只要您保持這些模組的正確概念模型,實現序列模型就會非常簡單。
def train(input_variable, lengths, target_variable, mask, max_target_len, encoder, decoder, embedding,
encoder_optimizer, decoder_optimizer, batch_size, clip, max_length=MAX_LENGTH):
# Zero gradients
encoder_optimizer.zero_grad()
decoder_optimizer.zero_grad()
# Set device options
input_variable = input_variable.to(device)
target_variable = target_variable.to(device)
mask = mask.to(device)
# Lengths for RNN packing should always be on the CPU
lengths = lengths.to("cpu")
# Initialize variables
loss = 0
print_losses = []
n_totals = 0
# Forward pass through encoder
encoder_outputs, encoder_hidden = encoder(input_variable, lengths)
# Create initial decoder input (start with SOS tokens for each sentence)
decoder_input = torch.LongTensor([[SOS_token for _ in range(batch_size)]])
decoder_input = decoder_input.to(device)
# Set initial decoder hidden state to the encoder's final hidden state
decoder_hidden = encoder_hidden[:decoder.n_layers]
# Determine if we are using teacher forcing this iteration
use_teacher_forcing = True if random.random() < teacher_forcing_ratio else False
# Forward batch of sequences through decoder one time step at a time
if use_teacher_forcing:
for t in range(max_target_len):
decoder_output, decoder_hidden = decoder(
decoder_input, decoder_hidden, encoder_outputs
)
# Teacher forcing: next input is current target
decoder_input = target_variable[t].view(1, -1)
# Calculate and accumulate loss
mask_loss, nTotal = maskNLLLoss(decoder_output, target_variable[t], mask[t])
loss += mask_loss
print_losses.append(mask_loss.item() * nTotal)
n_totals += nTotal
else:
for t in range(max_target_len):
decoder_output, decoder_hidden = decoder(
decoder_input, decoder_hidden, encoder_outputs
)
# No teacher forcing: next input is decoder's own current output
_, topi = decoder_output.topk(1)
decoder_input = torch.LongTensor([[topi[i][0] for i in range(batch_size)]])
decoder_input = decoder_input.to(device)
# Calculate and accumulate loss
mask_loss, nTotal = maskNLLLoss(decoder_output, target_variable[t], mask[t])
loss += mask_loss
print_losses.append(mask_loss.item() * nTotal)
n_totals += nTotal
# Perform backpropagation
loss.backward()
# Clip gradients: gradients are modified in place
_ = nn.utils.clip_grad_norm_(encoder.parameters(), clip)
_ = nn.utils.clip_grad_norm_(decoder.parameters(), clip)
# Adjust model weights
encoder_optimizer.step()
decoder_optimizer.step()
return sum(print_losses) / n_totals
訓練迭代¶
現在終於到了將完整的訓練過程與資料結合在一起的時候了。trainIters
函數負責在給定的模型、優化器、資料等情況下運行 n_iterations
次訓練。這個函數非常容易理解,因為我們已經用 train
函數完成了繁重的工作。
需要注意的是,當我們儲存我們的模型時,我們會儲存一個 tarball,其中包含編碼器和解碼器的 state_dicts
(參數)、優化器的 state_dicts
、損失、迭代次數等等。以這種方式儲存模型將為我們提供檢查點的終極靈活性。載入檢查點後,我們將能夠使用模型參數來運行推論,或者我們可以從我們離開的地方繼續訓練。
def trainIters(model_name, voc, pairs, encoder, decoder, encoder_optimizer, decoder_optimizer, embedding, encoder_n_layers, decoder_n_layers, save_dir, n_iteration, batch_size, print_every, save_every, clip, corpus_name, loadFilename):
# Load batches for each iteration
training_batches = [batch2TrainData(voc, [random.choice(pairs) for _ in range(batch_size)])
for _ in range(n_iteration)]
# Initializations
print('Initializing ...')
start_iteration = 1
print_loss = 0
if loadFilename:
start_iteration = checkpoint['iteration'] + 1
# Training loop
print("Training...")
for iteration in range(start_iteration, n_iteration + 1):
training_batch = training_batches[iteration - 1]
# Extract fields from batch
input_variable, lengths, target_variable, mask, max_target_len = training_batch
# Run a training iteration with batch
loss = train(input_variable, lengths, target_variable, mask, max_target_len, encoder,
decoder, embedding, encoder_optimizer, decoder_optimizer, batch_size, clip)
print_loss += loss
# Print progress
if iteration % print_every == 0:
print_loss_avg = print_loss / print_every
print("Iteration: {}; Percent complete: {:.1f}%; Average loss: {:.4f}".format(iteration, iteration / n_iteration * 100, print_loss_avg))
print_loss = 0
# Save checkpoint
if (iteration % save_every == 0):
directory = os.path.join(save_dir, model_name, corpus_name, '{}-{}_{}'.format(encoder_n_layers, decoder_n_layers, hidden_size))
if not os.path.exists(directory):
os.makedirs(directory)
torch.save({
'iteration': iteration,
'en': encoder.state_dict(),
'de': decoder.state_dict(),
'en_opt': encoder_optimizer.state_dict(),
'de_opt': decoder_optimizer.state_dict(),
'loss': loss,
'voc_dict': voc.__dict__,
'embedding': embedding.state_dict()
}, os.path.join(directory, '{}_{}.tar'.format(iteration, 'checkpoint')))
定義評估¶
訓練模型後,我們希望能夠自己與機器人交談。首先,我們必須定義我們希望模型如何解碼編碼後的輸入。
貪婪解碼¶
貪婪解碼是我們在使用訓練時使用的解碼方法,當我們**不**使用教師強制時。換句話說,對於每個時間步,我們只需從 decoder_output
中選擇具有最高 softmax 值的單字。這種解碼方法在單個時間步層面上是最佳的。
為了方便貪婪解碼操作,我們定義了一個 GreedySearchDecoder
類。運行時,此類別的物件接收形狀為 *(input_seq 長度,1)* 的輸入序列(input_seq
)、一個純量輸入長度(input_length
)張量和一個 max_length
來限制回應句子的長度。輸入句子使用以下計算圖進行評估
計算圖
將輸入傳遞通過編碼器模型。
準備編碼器的最終隱藏層作為解碼器的第一個隱藏輸入。
將解碼器的第一個輸入初始化為 SOS_token。
初始化張量以附加解碼後的單字。
- 以迭代方式一次解碼一個單字符記
通過解碼器的正向傳遞。
獲取最可能的單字符記及其 softmax 分數。
記錄符記和分數。
準備當前符記作為下一個解碼器輸入。
返回單字符記和分數的集合。
class GreedySearchDecoder(nn.Module):
def __init__(self, encoder, decoder):
super(GreedySearchDecoder, self).__init__()
self.encoder = encoder
self.decoder = decoder
def forward(self, input_seq, input_length, max_length):
# Forward input through encoder model
encoder_outputs, encoder_hidden = self.encoder(input_seq, input_length)
# Prepare encoder's final hidden layer to be first hidden input to the decoder
decoder_hidden = encoder_hidden[:self.decoder.n_layers]
# Initialize decoder input with SOS_token
decoder_input = torch.ones(1, 1, device=device, dtype=torch.long) * SOS_token
# Initialize tensors to append decoded words to
all_tokens = torch.zeros([0], device=device, dtype=torch.long)
all_scores = torch.zeros([0], device=device)
# Iteratively decode one word token at a time
for _ in range(max_length):
# Forward pass through decoder
decoder_output, decoder_hidden = self.decoder(decoder_input, decoder_hidden, encoder_outputs)
# Obtain most likely word token and its softmax score
decoder_scores, decoder_input = torch.max(decoder_output, dim=1)
# Record token and score
all_tokens = torch.cat((all_tokens, decoder_input), dim=0)
all_scores = torch.cat((all_scores, decoder_scores), dim=0)
# Prepare current token to be next decoder input (add a dimension)
decoder_input = torch.unsqueeze(decoder_input, 0)
# Return collections of word tokens and scores
return all_tokens, all_scores
評估我的文字¶
現在我們已經定義了我們的解碼方法,我們可以編寫用於評估字串輸入句子的函數。evaluate
函數管理處理輸入句子的低層級過程。我們首先將句子格式化為具有 *batch_size==1* 的單字索引輸入批次。我們通過將句子的單字轉換為其相應的索引,並轉置維度以準備模型的張量來做到這一點。我們還創建一個 lengths
張量,其中包含輸入句子的長度。在這種情況下,lengths
是純量,因為我們一次只評估一個句子(batch_size==1)。接下來,我們使用我們的 GreedySearchDecoder
物件(searcher
)獲取解碼後的回應句子張量。最後,我們將回應的索引轉換為單字並返回解碼後的單字列表。
evaluateInput
充當我們聊天機器人的使用者介面。調用時,將產生一個輸入文字欄位,我們可以在其中輸入我們的查詢句子。在輸入我們的輸入句子並按下 *Enter* 後,我們的文字以與我們的訓練資料相同的方式進行標準化,最終被饋送到 evaluate
函數以獲取解碼後的輸出句子。我們迴圈這個過程,因此我們可以繼續與我們的機器人聊天,直到我們輸入 “q” 或 “quit”。
最後,如果輸入的句子包含一個不在詞彙表中的單字,我們會透過列印錯誤訊息並提示使用者輸入另一個句子來優雅地處理它。
def evaluate(encoder, decoder, searcher, voc, sentence, max_length=MAX_LENGTH):
### Format input sentence as a batch
# words -> indexes
indexes_batch = [indexesFromSentence(voc, sentence)]
# Create lengths tensor
lengths = torch.tensor([len(indexes) for indexes in indexes_batch])
# Transpose dimensions of batch to match models' expectations
input_batch = torch.LongTensor(indexes_batch).transpose(0, 1)
# Use appropriate device
input_batch = input_batch.to(device)
lengths = lengths.to("cpu")
# Decode sentence with searcher
tokens, scores = searcher(input_batch, lengths, max_length)
# indexes -> words
decoded_words = [voc.index2word[token.item()] for token in tokens]
return decoded_words
def evaluateInput(encoder, decoder, searcher, voc):
input_sentence = ''
while(1):
try:
# Get input sentence
input_sentence = input('> ')
# Check if it is quit case
if input_sentence == 'q' or input_sentence == 'quit': break
# Normalize sentence
input_sentence = normalizeString(input_sentence)
# Evaluate sentence
output_words = evaluate(encoder, decoder, searcher, voc, input_sentence)
# Format and print response sentence
output_words[:] = [x for x in output_words if not (x == 'EOS' or x == 'PAD')]
print('Bot:', ' '.join(output_words))
except KeyError:
print("Error: Encountered unknown word.")
運行模型¶
現在終於到了運行我們的模型的時候了!
無論我們想要訓練還是測試聊天機器人模型,我們都必須初始化個別的編碼器和解碼器模型。在下面的區塊中,我們設定我們想要的配置,選擇從頭開始或設定要從中載入的檢查點,並建立和初始化模型。可以隨意使用不同的模型配置來優化效能。
# Configure models
model_name = 'cb_model'
attn_model = 'dot'
#``attn_model = 'general'``
#``attn_model = 'concat'``
hidden_size = 500
encoder_n_layers = 2
decoder_n_layers = 2
dropout = 0.1
batch_size = 64
# Set checkpoint to load from; set to None if starting from scratch
loadFilename = None
checkpoint_iter = 4000
從檢查點載入的範例程式碼
loadFilename = os.path.join(save_dir, model_name, corpus_name,
'{}-{}_{}'.format(encoder_n_layers, decoder_n_layers, hidden_size),
'{}_checkpoint.tar'.format(checkpoint_iter))
# Load model if a ``loadFilename`` is provided
if loadFilename:
# If loading on same machine the model was trained on
checkpoint = torch.load(loadFilename)
# If loading a model trained on GPU to CPU
#checkpoint = torch.load(loadFilename, map_location=torch.device('cpu'))
encoder_sd = checkpoint['en']
decoder_sd = checkpoint['de']
encoder_optimizer_sd = checkpoint['en_opt']
decoder_optimizer_sd = checkpoint['de_opt']
embedding_sd = checkpoint['embedding']
voc.__dict__ = checkpoint['voc_dict']
print('Building encoder and decoder ...')
# Initialize word embeddings
embedding = nn.Embedding(voc.num_words, hidden_size)
if loadFilename:
embedding.load_state_dict(embedding_sd)
# Initialize encoder & decoder models
encoder = EncoderRNN(hidden_size, embedding, encoder_n_layers, dropout)
decoder = LuongAttnDecoderRNN(attn_model, embedding, hidden_size, voc.num_words, decoder_n_layers, dropout)
if loadFilename:
encoder.load_state_dict(encoder_sd)
decoder.load_state_dict(decoder_sd)
# Use appropriate device
encoder = encoder.to(device)
decoder = decoder.to(device)
print('Models built and ready to go!')
Building encoder and decoder ...
Models built and ready to go!
運行訓練¶
如果您想訓練模型,請運行以下區塊。
首先,我們設定訓練參數,然後初始化我們的優化器,最後我們調用 trainIters
函數來運行我們的訓練迭代。
# Configure training/optimization
clip = 50.0
teacher_forcing_ratio = 1.0
learning_rate = 0.0001
decoder_learning_ratio = 5.0
n_iteration = 4000
print_every = 1
save_every = 500
# Ensure dropout layers are in train mode
encoder.train()
decoder.train()
# Initialize optimizers
print('Building optimizers ...')
encoder_optimizer = optim.Adam(encoder.parameters(), lr=learning_rate)
decoder_optimizer = optim.Adam(decoder.parameters(), lr=learning_rate * decoder_learning_ratio)
if loadFilename:
encoder_optimizer.load_state_dict(encoder_optimizer_sd)
decoder_optimizer.load_state_dict(decoder_optimizer_sd)
# If you have an accelerator, configure it to call
for state in encoder_optimizer.state.values():
for k, v in state.items():
if isinstance(v, torch.Tensor):
state[k] = v.to(device)
for state in decoder_optimizer.state.values():
for k, v in state.items():
if isinstance(v, torch.Tensor):
state[k] = v.to(device)
# Run training iterations
print("Starting Training!")
trainIters(model_name, voc, pairs, encoder, decoder, encoder_optimizer, decoder_optimizer,
embedding, encoder_n_layers, decoder_n_layers, save_dir, n_iteration, batch_size,
print_every, save_every, clip, corpus_name, loadFilename)
Building optimizers ...
Starting Training!
Initializing ...
Training...
Iteration: 1; Percent complete: 0.0%; Average loss: 8.9557
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運行評估¶
要與您的模型聊天,請運行以下區塊。
# Set dropout layers to ``eval`` mode
encoder.eval()
decoder.eval()
# Initialize search module
searcher = GreedySearchDecoder(encoder, decoder)
# Begin chatting (uncomment and run the following line to begin)
# evaluateInput(encoder, decoder, searcher, voc)
結論¶
就這樣了,各位。恭喜,您現在已經了解了構建生成式聊天機器人模型的基本原理!如果您有興趣,您可以嘗試調整模型和訓練參數並自定義您用來訓練模型的資料,從而調整聊天機器人的行為。
查看其他教程,了解更多 PyTorch 中很酷的深度學習應用!
腳本總運行時間:( 5 分鐘 51.843 秒)