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response_bot.py
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81 lines (69 loc) · 2.67 KB
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# things we need for NLP# thing
import nltk
from nltk.stem.lancaster import LancasterStemmer
import trained_bot as tb
stemmer = LancasterStemmer()
# things we need for Tensorflow
import numpy as np
import tflearn
import tensorflow as tf
import random
# restore all of our data structures
import pickle
data = pickle.load( open( "training_data", "rb" ) )
words = data['words']
classes = data['classes']
train_x = data['train_x']
train_y = data['train_y']
# import our chat-bot intents file
import json
with open('intents.json') as json_data:
intents = json.load(json_data)
# Build neural network
net = tflearn.input_data(shape=[None, len(train_x[0])])
net = tflearn.fully_connected(net, 8)
net = tflearn.fully_connected(net, 8)
net = tflearn.fully_connected(net, len(train_y[0]), activation='softmax')
net = tflearn.regression(net)
# Define model
model = tflearn.DNN(net, tensorboard_dir='tflearn_logs')
model.load('./model.tflearn')
# create a data structure to hold user context
context = {}
ERROR_THRESHOLD = 0.25
def classify(sentence):
# generate probabilities from the model
results = model.predict([tb.bow(sentence, words)])[0]
# filter out predictions below a threshold
results = [[i,r] for i,r in enumerate(results) if r>ERROR_THRESHOLD]
# sort by strength of probability
results.sort(key=lambda x: x[1], reverse=True)
return_list = []
for r in results:
return_list.append((classes[r[0]], r[1]))
# return tuple of intent and probability
return return_list
def response(sentence, userID='123', show_details=False):
results = classify(sentence)
# if we have a classification then find the matching intent tag
if results:
# loop as long as there are matches to process
while results:
for i in intents['intents']:
# find a tag matching the first result
if i['tag'] == results[0][0]:
# set context for this intent if necessary
if 'context_set' in i:
if show_details: print ('context:', i['context_set'])
context[userID] = i['context_set']
# check if this intent is contextual and applies to this user's conversation
if not 'context_filter' in i or \
(userID in context and 'context_filter' in i and i['context_filter'] == context[userID]):
if show_details: print ('tag:', i['tag'])
# a random response from the intent
return random.choice(i['responses'])
results.pop(0)
while True:
ask = raw_input("Ask something: ")
answer = response(ask)
print(answer)