Transformer models are the de-facto standard in modern NLP. They have proven themselves as the most expressive, powerful models for language by a large margin, beating all major language-based benchmarks time and time again.
In this course, we learn all you need to know to get started with building cutting-edge performance NLP applications using transformer models like Google AI's BERT, or Facebook AI's DPR.
We cover several key NLP frameworks including:
- HuggingFace's Transformers
- TensorFlow 2
- PyTorch
- spaCy
- NLTK
- Flair
And learn how to apply transformers to some of the most popular NLP use-cases:
- Language classification/sentiment analysis
- Named entity recognition (NER)
- Question and Answering
- Similarity/comparative learning
Throughout each of these use-cases we work through a variety of examples to ensure that what, how, and why transformers are so important. Alongside these sections we also work through two full-size NLP projects, one for sentiment analysis of financial Reddit data, and another covering a fully-fledged open domain question-answering application.
All of this is supported by several other sections that encourage us to learn how to better design, implement, and measure the performance of our models, such as:
- History of NLP and where transformers come from
- Common preprocessing techniques for NLP
- The theory behind transformers
- How to fine-tune transformers
We cover all this and more, I look forward to seeing you in the course!
Top comments (0)