Introduction to Natural Language Processing with PyTorch
This module explores different neural network architectures for dealing with natural language texts. Natural Language Processing (NLP) is growing in importance due to the ability of language models to accurately “understand” human language faster while using unsupervised training on large text corpora. This module covers different NLP techniques such as using bag-of-words (BoW), word embeddings and recurrent neural networks for classifying text from news headlines to one of the 4 categories (World, Sports, Business, and Sci-Tech).
Understand how text is processed for natural language processing tasks, Get introduced to using Recurrent Neural Networks (RNNs) and Generative Neural Networks (GNNs), Learn how to build text classification models
Prerequisites
Basic Python knowledge
Basic knowledge about how to use Jupyter Notebooks
Basic understanding of machine learning
There are no reviews yet.