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Pytorch For Deep Learning Bootcamp: Zero To Mastery - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Pytorch For Deep Learning Bootcamp: Zero To Mastery (/Thread-Pytorch-For-Deep-Learning-Bootcamp-Zero-To-Mastery--1090494) |
Pytorch For Deep Learning Bootcamp: Zero To Mastery - AD-TEAM - 08-29-2025 ![]() Pytorch For Deep Learning Bootcamp: Zero To Mastery Published 3/2023 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 2.96 GB | Duration: 9h 7m Learn How to Use PyTorch (Facebook Library) for Deep Learning with Practical Examples What you'll learn Understand the basic concepts about neural network and how it works Use PyTorch for Linear Regression using Multilayer Perceptron (MLP) Use PyTorch for image classification using Deep Artificial Neural Network (ANN) Learn how to work with different data types such as tensors and arrays Use PyTorch for image classification using Convolutional Neural Network (CNN) Use PyTorch for time series prediction using Recurrent Neural Network (RNN) Use PyTorch for Natural Language Processing (NLP) Requirements Understanding basic Python topics (Function, for loop, etc.) Knowing the basics of OOP is recommended Description Deep learning has become one of the most popular machine learning techniques in recent years, and PyTorch has emerged as a powerful and flexible tool for building deep learning models. In this course, you will learn the fundamentals of deep learning and how to implement neural networks using PyTorch.Through a combination of lectures, hands-on coding sessions, and projects, you will gain a deep understanding of the theory behind deep learning techniques such as deep Artificial Neural Networks (ANNs), Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs). You will also learn how to train and evaluate these models using PyTorch, and how to optimize them using techniques such as stochastic gradient descent and backpropagation. During the course, I will also show you how you can use GPU instead of CPU and increase the performance of the deep learning calculation.In this course, I will teach you everything you need to start deep learning with PyTorch such as:NumPy Crash CoursePandas Crash CourseNeural Network Theory and IntuitionHow to Work with Torchvision datasetsConvolutional Neural Network (CNN)Long-Short Term Memory (LSTM)and much moreSince this course is designed for all levels (from beginner to advanced), we start with basic concepts and preliminary intuitions.By the end of this course, you will have a strong foundation in deep learning with PyTorch and be able to apply these techniques to various real-world problems, such as image classification, time series analysis, and even creating your own deep learning applications. Overview Section 1: Course Introduction & Overview Lecture 1 Course Content Lecture 2 Why Google Colab? Lecture 3 Introduction to Colab Environment Section 2: Useful Packages Lecture 4 NumPy Basics Lecture 5 Pandas Basics Section 3: PyTorch Tensor Basics Lecture 6 Introduction to Tensors Lecture 7 Working with PyTorch Tensors Section 4: Neural Network Basic Concepts Lecture 8 Basic Terms About NN Lecture 9 Activation Function Lecture 10 How Neural Network Learn? Lecture 11 Gradient Decent Optimization Section 5: PyTorch for Multilayer Perceptron (MLP) Lecture 12 PyTorch Regression Using MLP - Part1 Lecture 13 PyTorch Regression Using MLP - Part2 Lecture 14 PyTorch Regression Using MLP - Part3 Lecture 15 PyTorch Regression Using MLP - Part4 Section 6: PyTorch for Deep Artificial Neural Network (ANN) Lecture 16 Deep Artificial Neural Network Introduction Lecture 17 PyTorch Image Classification Using ANN - Part1 Lecture 18 PyTorch Image Classification Using ANN - Part2 Lecture 19 PyTorch Image Classification Using ANN - Part3 Lecture 20 PyTorch Image Classification Using ANN - Part4 Section 7: PyTorch for Convolutional Neural Network (CNN) Lecture 21 Introduction Lecture 22 Convolutional Layer (Image Filter) Lecture 23 Pooling Layer Lecture 24 Flattening Lecture 25 Conclusion Lecture 26 PyTorch Image Classification Using CNN - Part1 Lecture 27 PyTorch Image Classification Using CNN - Part2 Lecture 28 PyTorch Image Classification Using CNN - Part3 Lecture 29 PyTorch Image Classification Using CNN - Part4 Section 8: Using GPU Instead of CPU Lecture 30 Introduction to CPU & GPU Lecture 31 Watch if You Don't Use Colab! Lecture 32 How to Use GPU? Lecture 33 How to Save & Load a Model Using PyTorch Section 9: PyTorch for Recurrent Neural Network Lecture 34 Introduction to Recurrent Neural Network Lecture 35 What is LSTM and How it Works? Lecture 36 PyTorch for Time Series Forecasting Using LSTM-Part1 Lecture 37 PyTorch for Time Series Forecasting Using LSTM-Part2 Lecture 38 PyTorch for Time Series Forecasting Using LSTM-Part3 Lecture 39 PyTorch for Time Series Forecasting Using LSTM-Part4 beginner to advance python developers, data analysts, engineers and overall data science enthusiast want to learn about deep learning with PyTorch ![]() RapidGator NitroFlare DDownload |