From Chaos to Order: Automate Documents Categorization by AI
Learn how to automate document categorization using AI. Discover techniques for organizing and classifying large volumes of documents quickly and accurately with machine learning algorithms.
At a Glance
Construct a news classifier for a content search engine using TorchText, while gaining a deep understanding of NLP fundamentals, including embeddings and tokenization. The headlines will be categorized into World, Sports, Business, and Science/Tech, which can be adapted to your specific use case.
Natural Language Processing (NLP) plays a crucial role in understanding the intricate workings of Large Language Models (LLMs). In this project, we will thoroughly explore the fundamentals of NLP, covering everything from tokenization to embedding, to gain a deeper understanding of how these models decode and utilize language. By learning these fundamental concepts, you will gain a new perspective on the high-end capabilities of NLPs i.e. LLMs. These powerful models have the remarkable ability to make sense of words and sentences, comprehending the nuances of language comprehension. The project will follow a structured approach, starting with hands-on practice of the basics and gradually progressing to the implementation of your very own news classifier. Through this project, you will develop practical skills and insights into building text classification models for real-world applications.
A Look at the Project Ahead
- Work with datasets and understand tokenizer, embedding bag technique and vocabulary.
- Explore embeddings in PyTorch and understand token indices.
- Perform text classification using data loader and apply it on a neural network model.
- Train the text classification model on a news dataset.
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