Deep Learning for NLP - Part 2

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Deep Learning for NLP - Part 2 (Size: 1.2 GB)
  1. Introduction-en_US.srt 3.3 KB
  1. Introduction.mp4 10 MB
  2. Encoder-decoder models-en_US.srt 6.3 KB
  2. Encoder-decoder models.mp4 28.2 MB
  2. GLUE benchmark-en_US.srt 16.6 KB
  2. GLUE benchmark.mp4 92.9 MB
  3. Global, local, hierarchical attention; attention for sentence pairs-en_US.srt 21.9 KB
  3. Global, local, hierarchical attention; attention for sentence pairs.mp4 90.9 MB
  3. Transformers-1-en_US.srt 29.8 KB
  3. Transformers-1.mp4 135.5 MB
  4. Attention based models-en_US.srt 42.9 KB
  4. Attention based models.mp4 226.5 MB
  4. Transformers-2-en_US.srt 17.3 KB
  4. Transformers-2.mp4 78 MB
  5. ELMo-en_US.srt 20.2 KB
  5. ELMo.mp4 84.9 MB
  5. GPT-en_US.srt 56.8 KB
  5. GPT.mp4 299 MB
  6. BERT-en_US.srt 26.2 KB
  6. BERT.mp4 139.3 MB
  6. Summary-en_US.srt 2.7 KB
  6. Summary.mp4 11.6 MB
  7. Summary-en_US.srt 3.5 KB
  7. Summary.mp4 18.7 MB
  Bonus Resources.txt 307.2 B
  Get Bonus Downloads Here.url 204.8 B
  ▲ 28 total files

Description


Deep Learning for NLP - Part 2



MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.19 GB | Duration: 2h 52m
What you'll learn
Deep Learning for Natural Language Processing
Encoder-decoder models, Attention models, ELMo
GLUE, Transformers, GPT, BERT
DL for NLP
Requirements
Basics of machine learning
Recurrent Models: RNNs, LSTMs, GRUs and variants
Multi-Layered Perceptrons (MLPs)
Description
This course is a part of "Deep Learning for NLP" Series. In this course, I will introduce concepts like Encoder-decoder attention models, ELMo, GLUE, Transformers, GPT and BERT. These concepts form the base for good understanding of advanced deep learning models for modern Natural Language Processing.

The course consists of two main sections as follows.

In the first section, I will talk about Encoder-decoder models in the context of machine translation and how beam search decoder works. Next, I will talk about the concept of encoder-decoder attention. Further, I will elaborate on different types of attention like Global attention, local attention, hierarchical attention, and attention for sentence pairs using CNNs as well as LSTMs. We will also talk about attention visualization. Finally, we will discuss ELMo which is a way of using recurrent models to compute context sensitive word embeddings.

In the second section, I will talk about details about the various tasks which are a part of the GLUE benchmark and details about other benchmark NLP datasets across tasks. Then we will start our modern NLP journey with understanding different parts of an encoder-decoder Transformer model. We will delve into details of Transformers in terms of concepts like self attention, multi-head attention, positional embeddings, residual connections, and masked attention. After that I will talk about two most popular Transformer models: GPT and BERT. In the GPT part, we will discuss how is GPT trained and what are differences in variants like GPT2 and GPT3. In the BERT part, we will discuss how BERT is different from GPT, how it is pretrained using the masked language modeling and next sentence prediction tasks. We will also quickly talk about finetuning for BERT and multilingual BERT.

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