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Pytorch Recipes
Pytorch Recipes
77,30
85,89 €
  • We will send in 10–14 business days.
Chapter 1: Introduction to PyTorch, Tensors, and Tensor OperationsChapter Goal: This chapter is to understand what is PyTorch and its basic building blocks.Chapter 2: Probability Distributions Using PyTorchChapter Goal: This chapter aims at covering different distributions compatible with PyTorch for data analysis. Chapter 3: Neural Networks Using PyTorchChapter Goal: This chapter explains the use of PyTorch to develop a neural network model and optimize the model.Chapter 4: Deep Learning (CNN…
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  • ISBN-10: 1484289242
  • ISBN-13: 9781484289242
  • Format: 17.8 x 25.4 x 1.6 cm, minkšti viršeliai
  • Language: English
  • SAVE -10% with code: EXTRA

Pytorch Recipes (e-book) (used book) | Pradeepta Mishra | bookbook.eu

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Chapter 1: Introduction to PyTorch, Tensors, and Tensor Operations

Chapter Goal: This chapter is to understand what is PyTorch and its basic building blocks.


Chapter 2: Probability Distributions Using PyTorch

Chapter Goal: This chapter aims at covering different distributions compatible with PyTorch for data analysis.

Chapter 3: Neural Networks Using PyTorch

Chapter Goal: This chapter explains the use of PyTorch to develop a neural network model and optimize the model.


Chapter 4: Deep Learning (CNN and RNN) Using PyTorch

Chapter Goal: This chapter explains the use of PyTorch to train deep neural networks for complex datasets.


Chapter 5: Language Modeling Using PyTorch

Chapter Goal: In this chapter, we are going to use torch text for natural language processing, pre-processing, and feature engineering.

Chapter 6: Supervised Learning Using PyTorch

Goal: This chapter explains how supervised learning algorithms implementation with PyTorch.

Chapter 7: Fine Tuning Deep Learning Models using PyTorch

Goal: This chapter explains how to Fine Tuning Deep Learning Models using the PyTorch framework.


Chapter 8: Distributed PyTorch Modeling

Chapter Goal: This chapter explains the use of parallel processing using the PyTorch framework.


Chapter 9: Model Optimization Using Quantization Methods

Chapter Goal: This chapter explains the use of quantization methods to optimize the PyTorch models and hyperparameter tuning with ray tune.


Chapter 10: Deploying PyTorch Models in Production

Chapter Goal: In this chapter we are going to use torch serve, to deploy the PyTorch models into production.

Chapter 11: PyTorch for Audio

Chapter Goal: In this chapter torch audio will be used for audio resampling, data augmentation, features extractions, model training, and pipeline development.

Chapter 12: PyTorch for Image

Chapter Goal: This chapter aims at using Torchvision for image transformations, pre-processing, feature engineering, and model training.

Chapter 13: Model Explainability using Captum

Chapter Goal: In this chapter, we are going to use the captum library for model interpretability to explain the model as if you are explaining the model to a 5-year-old.

Chapter 14: Scikit Learn Model compatibility using Skorch

Chapter Goal: In this chapter, we are going to use skorch which is a high-level library for PyTorch that provides full sci-kit learn compatibility.


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  • Author: Pradeepta Mishra
  • Publisher:
  • ISBN-10: 1484289242
  • ISBN-13: 9781484289242
  • Format: 17.8 x 25.4 x 1.6 cm, minkšti viršeliai
  • Language: English English

Chapter 1: Introduction to PyTorch, Tensors, and Tensor Operations

Chapter Goal: This chapter is to understand what is PyTorch and its basic building blocks.


Chapter 2: Probability Distributions Using PyTorch

Chapter Goal: This chapter aims at covering different distributions compatible with PyTorch for data analysis.

Chapter 3: Neural Networks Using PyTorch

Chapter Goal: This chapter explains the use of PyTorch to develop a neural network model and optimize the model.


Chapter 4: Deep Learning (CNN and RNN) Using PyTorch

Chapter Goal: This chapter explains the use of PyTorch to train deep neural networks for complex datasets.


Chapter 5: Language Modeling Using PyTorch

Chapter Goal: In this chapter, we are going to use torch text for natural language processing, pre-processing, and feature engineering.

Chapter 6: Supervised Learning Using PyTorch

Goal: This chapter explains how supervised learning algorithms implementation with PyTorch.

Chapter 7: Fine Tuning Deep Learning Models using PyTorch

Goal: This chapter explains how to Fine Tuning Deep Learning Models using the PyTorch framework.


Chapter 8: Distributed PyTorch Modeling

Chapter Goal: This chapter explains the use of parallel processing using the PyTorch framework.


Chapter 9: Model Optimization Using Quantization Methods

Chapter Goal: This chapter explains the use of quantization methods to optimize the PyTorch models and hyperparameter tuning with ray tune.


Chapter 10: Deploying PyTorch Models in Production

Chapter Goal: In this chapter we are going to use torch serve, to deploy the PyTorch models into production.

Chapter 11: PyTorch for Audio

Chapter Goal: In this chapter torch audio will be used for audio resampling, data augmentation, features extractions, model training, and pipeline development.

Chapter 12: PyTorch for Image

Chapter Goal: This chapter aims at using Torchvision for image transformations, pre-processing, feature engineering, and model training.

Chapter 13: Model Explainability using Captum

Chapter Goal: In this chapter, we are going to use the captum library for model interpretability to explain the model as if you are explaining the model to a 5-year-old.

Chapter 14: Scikit Learn Model compatibility using Skorch

Chapter Goal: In this chapter, we are going to use skorch which is a high-level library for PyTorch that provides full sci-kit learn compatibility.


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