Skip to content

j-min/DL-for-Chatbot

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

59 Commits
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Deep leaning for Chatbot Developers

Contents

Day 01 Introduction to Chatbot (slideshare)

  • Introduction to NLP/Chatbot
  • Overview of Korean/English NLP Toolkits/Datasets
  • Tutorial (code)
    • Introduction to spaCy / gensim / konlpy / other Korean toolkits
    • Sentiment classification via TF-IDF (scikit-learn)
    • Chatbot Pipelining / Serving via Kakaotalk (flask) / Slack (slacker)

Day 02 Text Classification with CNN/RNN (slideshare)

  • CNN for text classification
    • Word CNN / Dynamic CNN / Char CNN / Very Deep CNN
  • RNN for text classification
    • Bidirectional RNN / Recursive NN / Tree LSTM / Dual Encoder LSTM
  • Advanced CNN/RNN architectures
    • QRNN / SRU / ByteNet / SliceNet / LSTM-CNNs-CRF
  • Tutorial (code)
    • Word-CNN for sentiment analysis
    • PyTorch Style Guide
    • TorchText Tutorial

Day 03 Conversation Modeling with Seq2Seq / Attention (slideshare)

  • Seq2Seq models for conversation modeling
    • Seq2Seq / Neural Conversation model / Diversity-prompting objective: MMI
  • Advanced Seq2Seq architectures
    • Show and Tell / HRED / VHRED / Personal based Neural Conversation model / Contextualized Word Vectors (CoVe)
  • Attention mechanism
    • Bahdanau / Luong
    • Global / Local
  • Advanced Attention architectures
    • Show, Attend and Tell / Pointer Networks / CopyNet / BiDAF / Transformer
  • Tutorial (code)
    • Seq2Seq with Attention for Machine Translation

Day 04 QA with External Memory (slideshare)

  • QA with External Memory
    • Memory Networks / End-to-End Memory Networks / Key-value Memory Networks / Neural Turing Machines
  • Advanced Memory architectures
    • DNC / Life-long memory Modules / Context-Sequence Memory Networks
  • Advanced Dialogue Architectures
    • MILABOT / Dialog based language learning / End-to-End Goal Oriented Dialog / Deep RL / Adversarial
  • Tutorial (code)
    • End-to-End Memory Networks for Question Answering (bAbI)

Dependencies

Python 3

  • Codes are written in Anacodna Python 3.6.
  • Package management via Conda or virtualenv is recommended.

ML / NLP

  • PyTorch
  • TorchText
  • spaCy
  • sckit-learn
  • gensim
  • konlpy (requires Jpype3)

Interactive / DataFrame / Plot

  • jupyter
  • pandas
  • matplotlib

Kakaotalk / Slack Bot

  • flask
  • websocket-client
  • beautifulsoup4
  • slacker

About

Deep Learning / NLP tutorial for Chatbot Developers

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published