a simple message reply suggestion system
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Updated
May 29, 2019 - Python
a simple message reply suggestion system
Design and build a chatbot using data from the Cornell Movie Dialogues corpus, using Keras
Chatbot implementation using Cornell Movie Dialog Dataset in PyTorch.The bot can converse with the user and can answer the questions asked though it doesn't pass the Turing Test
Tensorflow Chatbot trained with Cornell movie-dialog corpus
ChatBot using Recuurent Neural networks and Cornell Corpus dataset (TensorFlow)
Realistic Chatbot based on NLP & TensorFlow
Fine-tuning the GPT-2 model on the Cornell Movie-Dialogues Corpus dataset to create a conversational chatbot.
This is a implementation of Twitter/Cornell-Movie Chatbot Tinu . A sequence2sequence chatbot implementation with TensorFlow 1.10 . I just use 10% data of full dataset. you can use full dataset.Then you need to read full article.
Generative adversarial imitation learning to produce a proxy for the reward function present in dialogue.
Simple Telegram chatbot trained on the Cornell Movie-Dialogs Corpus.
Your Kind Friend Bot: Unreliable Chatbot
Rule based chat-bot using CNN based on multi class text classification which responds to all queries on Deep Learning class. As a fallback option added generative chat-bot trained on cornell movie dialog corpus using sequence to sequence RNN model.
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