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Course Outline
Introduction
- Overview of NLP and its applications.
- Introduction to Hugging Face and its key features.
Setting up a working environment
- Installing and configuring Hugging Face.
Understanding the Hugging Face Transformers library and Transformer Models
- Exploring the Transformers library structure and functionalities.
- Overview of various Transformer models available in Hugging Face.
Utilizing Hugging Face Transformers
- Loading and using pretrained models.
- Applying Transformers for various NLP tasks.
Fine-Tuning a Pretrained Model
- Preparing a dataset for fine-tuning.
- Fine-tuning a Transformer model on a specific task.
Sharing Models and Tokenizers
- Exporting and sharing trained models.
- Utilizing tokenizers for text processing.
Exploring Hugging Face Datasets Library
- Overview of the Datasets library in Hugging Face.
- Accessing and utilizing pre-existing datasets.
Exploring Hugging Face Tokenizers Library
- Understanding tokenization techniques and their importance.
- Leveraging tokenizers from Hugging Face.
Carrying out Classic NLP Tasks
- Implementing common NLP tasks using Hugging Face.
- Text classification, sentiment analysis, named entity recognition, etc.
Leveraging Transformer Models for Addressing Tasks in Speech Processing and Computer Vision
- Extending the use of Transformers beyond text-based tasks.
- Applying Transformers for speech and image-related tasks.
Troubleshooting and Debugging
- Common issues and challenges in working with Hugging Face.
- Techniques for troubleshooting and debugging.
Building and Sharing Your Model Demos
- Designing and creating interactive model demos.
- Sharing and showcasing your models effectively.
Summary and Next Steps
- Recap of key concepts and techniques learned.
- Guidance on further exploration and resources for continued learning.
Requirements
- A strong understanding of Python.
- Experience with deep learning.
- Familiarity with PyTorch or TensorFlow is beneficial but not mandatory.
Audience
- Data scientists.
- Machine learning practitioners.
- NLP researchers and enthusiasts.
- Developers interested in implementing NLP solutions.
14 Hours