Web Reference: Students choose how they will implement basic natural language processing techniques to understand text and respond accordingly. After brainstorming and planning, students develop their programs. It’s time for us to learn how to analyse natural language documents, using Natural Language Processing (NLP). We’ll be focusing on the Hugging Face ecosystem, especially the Transformers library, and the vast collection of pretrained NLP models. Natural language processing These are notes from lesson 4 of Fast AI Practical Deep Learning for Coders.
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