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PyTorch Essentials: An Applications-First Approach (LFD273)

EDU Trainings s.r.o.

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Start prototyping AI applications powered by PyTorch by leveraging popular pretrained models in the fields of Computer Vision and Natural Language Processing covering an extensive span of practical applications.
This course provides hands-on experience to train and fine-tune deep learning models using the rich PyTorch and Hugging Face ecosystems of pre-trained models for Computer Vision and Natural Language Processing tasks. Additionally, you will be able to deploy prototype applications using TorchServe, allowing you to quickly validate and demo your application. The course begins with an overview of PyTorch, including model classes, datasets, data loaders and the training loop. Next, it covers the role and power of transfer learning, along with how to use it with pretrained models. Practical lab exercises cover multiple topics including: image classification, object detection, sentiment analysis, text classification, and text generation/completion. Learners also will use their data to fine-tune existing models and leverage third-party APIs.
This course includes



Online, Self Paced
40 Hours of Course Material
Hands-on Labs & Assignments1
12 Months of Access to Online Course

Digital Badge


Discussion forums

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Chapter 1. Course Introduction
Chapter 2. PyTorch, Datasets, and Models
Chapter 3. Building Your First Dataset
Chapter 4. Training Your First Model
Chapter 5. Building Your First DataPipe
Chapter 6. Transfer Learning and Pretrained Models
Chapter 7. Pretrained Models for Computer Vision
Chapter 8. Pretrained Models for Natural Language Processing
Chapter 9. Image Classification with Torchvision
Chapter 10. Fine-Tuning Pretrained Models for Computer Vision
Chapter 11. Serving Models with TorchServe
Chapter 12. Datasets and Transformations for Object Detection and Image Segmentation
Chapter 13. Models for Object Detection and Image Segmentation
Chapter 14. Object Detection Evaluation
Chapter 15. Word Embeddings and Text Classification
Chapter 16. Contextual Word Embeddings with Transformers
Chapter 17. Hugging Face Pipelines for NLP Tasks
Chapter 18. Q&A, Summarization, and LLMs

Cílová skupina

This course is designed for machine learning practitioners who want to add deep learning models in PyTorch – especially pretraining models for Computer Vision and Natural Language Processing – to quickly prototype and deploy applications.
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