Data Science: Transformers for Natural Language Processing

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ChatGPT, GPT-4, BERT, Deep Learning, Machine Learning, & NLP with Hugging Face, Attention in Python, Tensorflow, PyTorch

What you’ll learn

  • Apply transformers to real-world tasks with just a few lines of code
  • Fine-tune transformers on your own datasets with transfer learning
  • Sentiment analysis, spam detection, text classification
  • NER (named entity recognition), parts-of-speech tagging
  • Build your own article spinner for SEO
  • Generate believable human-like text
  • Neural machine translation and text summarization
  • Question-answering (e.g. SQuAD)
  • Zero-shot classification
  • Understand self-attention and in-depth theory behind transformers
  • Implement transformers from scratch
  • Use transformers with both Tensorflow and PyTorch
  • Understand BERT, GPT, GPT-2, and GPT-3, and where to apply them
  • Understand encoder, decoder, and seq2seq architectures
  • Master the Hugging Face Python library

Requirements

  • Install Python, it’s free!
  • Beginner and intermediate level content: Decent Python programming skills
  • Expert level content: Good understanding of CNNs and RNNs and ability to code in PyTorch or Tensorflow

Description

Hello friends!

Welcome to Data Science: Transformers for Natural Language Processing.

Ever since Transformers arrived on the scene, deep learning hasn’t been the same.

  • Machine learning is able to generate text essentially indistinguishable from that created by humans
  • We’ve reached new state-of-the-art performance in many NLP tasks, such as machine translation, question-answering, entailment, named entity recognition, and more
  • We’ve created multi-modal (text and image) models that can generate amazing art using only a text prompt
  • We’ve solved a longstanding problem in molecular biology known as “protein structure prediction”

In this course, you will learn very practical skills for applying transformers, and if you want, detailed theory behind how transformers and attention work.

This is different from most other resources, which only cover the former.

The course is split into 3 major parts:

  1. Using Transformers
  2. Fine-Tuning Transformers
  3. Transformers In-Depth

PART 1: Using Transformers

In this section, you will learn how to use transformers which were trained for you. This costs millions of dollars to do, so it’s not something you want to try by yourself!

We’ll see how these prebuilt models can already be used for a wide array of tasks, including:

  • text classification (e.g. spam detection, sentiment analysis, document categorization)
  • named entity recognition
  • text summarization
  • machine translation
  • question-answering
  • generating (believable) text
  • masked language modeling (article spinning)
  • zero-shot classification

This is already very practical.

If you need to do sentiment analysis, document categorization, entity recognition, translation, summarization, etc. on documents at your workplace or for your clients – you already have the most powerful state-of-the-art models at your fingertips with very few lines of code.

One of the most amazing applications is “zero-shot classification”, where you will observe that a pretrained model can categorize your documents, even without any training at all.

PART 2: Fine-Tuning Transformers

In this section, you will learn how to improve the performance of transformers on your own custom datasets. By using “transfer learning”, you can leverage the millions of dollars of training that have already gone into making transformers work very well.

You’ll see that you can fine-tune a transformer with relatively little work (and little cost).

We’ll cover how to fine-tune transformers for the most practical tasks in the real-world, like text classification (sentiment analysis, spam detection), entity recognition, and machine translation.

PART 3: Transformers In-Depth

In this section, you will learn how transformers really work. The previous sections are nice, but a little too nice. Libraries are OK for people who just want to get the job done, but they don’t work if you want to do anything new or interesting.

Let’s be clear: this is very practical.

How practical, you might ask?

Well, this is where the big bucks are.

Those who have a deep understanding of these models and can do things no one has ever done before are in a position to command higher salaries and prestigious titles. Machine learning is a competitive field, and a deep understanding of how things work can be the edge you need to come out on top.

We’ll also look at how to implement transformers from scratch.

As the great Richard Feynman once said, “what I cannot create, I do not understand”.

SUGGESTED PREREQUISITES:

  • Decent Python coding skills
  • Deep learning with CNNs and RNNs useful but not required
  • Deep learning with Seq2Seq models useful but not required
  • For the in-depth section: understanding the theory behind CNNs, RNNs, and seq2seq is very useful

UNIQUE FEATURES

  • Every line of code explained in detail – email me any time if you disagree
  • No wasted time “typing” on the keyboard like other courses – let’s be honest, nobody can really write code worth learning about in just 20 minutes from scratch
  • Not afraid of university-level math – get important details about algorithms that other courses leave out

Thank you for reading and I hope to see you soon!

Who this course is for:

  • Anyone who wants to master natural language processing (NLP)
  • Anyone who loves deep learning and wants to learn about the most powerful neural network (transformers)
  • Anyone who wants to go beyond typical beginner-only courses on Udemy

Created by Lazy Programmer Team,  Lazy Programmer Inc.
Last updated 8/2023
English
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Size: 5.64 GB

Google Drive Links

Download Part 1 | Download Part 2

Torrent Links

Download Now

https://www.udemy.com/course/data-science-transformers-nlp/.

1 Comment
  1. amir says

    please update this course. some important chapter is missed.

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