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Learning Deep Learning: From Perceptron to Large Language Models - 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: Learning Deep Learning: From Perceptron to Large Language Models (/Thread-Learning-Deep-Learning-From-Perceptron-to-Large-Language-Models) |
Learning Deep Learning: From Perceptron to Large Language Models - BaDshaH - 02-24-2024 ![]() Released 2/2024 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch Genre: eLearning | Language: English | Duration: 13h 23m | Size: 2.75 GB Table of contents Introduction Learning Deep Learning: Introduction Lesson 1: Deep Learning Introduction Topics 1.1 Deep Learning and Its History 1.2 Prerequisites Lesson 2: Neural Network Fundamentals I Topics 2.1 The Perceptron and Its Learning Algorithm 2.2 Programming Example: Perceptron 2.3 Understanding the Bias Term 2.4 Matrix and Vector Notation for Neural Networks 2.5 Perceptron Limitations 2.6 Solving Learning Problem with Gradient Descent 2.7 Computing Gradient with the Chain Rule 2.8 The Backpropagation Algorithm 2.9 Programming Example: Learning the XOR Function 2.10 What Activation Function to Use 2.11 Lesson 2 Summary Lesson 3: Neural Network Fundamentals II Topics 3.1 Datasets and Generalization 3.2 Multiclass Classification 3.3 Programming Example: Digit Classification with Python 3.4 DL Frameworks 3.5 Programming Example: Digit Classification with TensorFlow 3.6 Programming Example: Digit Classification with PyTorch 3.7 Avoiding Saturating Neurons and Vanishing Gradients-Part I 3.8 Avoiding Saturating Neurons and Vanishing Gradients-Part II 3.9 Variations on Gradient Descent 3.10 Programming Example: Improved Digit Classification with TensorFlow 3.11 Programming Example: Improved Digit Classification with PyTorch 3.12 Problem Types, Output Units, and Loss Functions 3.13 Regularization Techniques 3.14 Programming Example: Regression Problem with TensorFlow 3.15 Programming Example: Regression Problem with PyTorch 3.16 Lesson 3 Summary Lesson 4: Convolutional Neural Networks (CNN) and Image Classification Topics 4.1 The CIFAR-10 Dataset 4.2 Convolutional Layer 4.3 Building a Convolutional Neural Network 4.4 Programming Example: Image Classification Using CNN with TensorFlow 4.5 Programming Example: Image Classification Using CNN with PyTorch 4.6 AlexNet 4.7 VGGNet 4.8 GoogLeNet 4.9 ResNet 4.10 Programming Example: Using a Pretrained Network with TensorFlow 4.11 Programming Example: Using a Pretrained Network with PyTorch 4.12 Transfer Learning 4.13 Efficient CNNs 4.14 Lesson 4 Summary Lesson 5: Recurrent Neural Networks (RNN) and Time Series Prediction Topics 5.1 Problem Types Involving Sequential Data 5.2 Recurrent Neural Networks 5.3 Programming Example: Forecasting Book Sales with TensorFlow 5.4 Programming Example: Forecasting Book Sales with PyTorch 5.5 Backpropagation Through Time and Keeping Gradients Healthy 5.6 Long Short-Term Memory 5.7 Autoregression and Beam Search 5.8 Programming Example: Text Autocompletion with TensorFlow 5.9 Programming Example: Text Autocompletion with PyTorch 5.10 Lesson 5 Summary Lesson 6: Neural Language Models and Word Embeddings Topics 6.1 Language Models 6.2 Word Embeddings 6.3 Programming Example: Language Model and Word Embeddings with TensorFlow 6.4 Programming Example: Language Model and Word Embeddings with PyTorch 6.5 Word2vec 6.6 Programming Example: Using Pretrained GloVe Embeddings 6.7 Handling Out-of-Vocabulary Words with Wordpieces 6.8 Lesson 6 Summary Lesson 7: Encoder-Decoder Networks, Attention, Transformers, and Neural Machine Translation Topics 7.1 Encoder-Decoder Network for Neural Machine Translation 7.2 Programming Example: Neural Machine Translation with TensorFlow 7.3 Programming Example: Neural Machine Translation with PyTorch 7.4 Attention 7.5 The Transformer 7.6 Programming Example: Machine Translation Using Transformer with TensorFlow 7.7 Programming Example: Machine Translation Using Transformer with PyTorch 7.8 Lesson 7 Summary Lesson 8: Large Language Models Topics 8.1 Overview of BERT 8.2 Overview of GPT 8.3 From GPT to GPT4 8.4 Handling Chat History 8.5 Prompt Tuning 8.6 Retrieving Data and Using Tools 8.7 Open Datasets and Models 8.8 Demo: Large Language Model Prompting 8.9 Lesson 8 Summary Lesson 9: Multi-Modal Networks and Image Captioning Topics 9.1 Multimodal learning 9.2 Programming Example: Multimodal Classification with TensorFlow 9.3 Programming Example: Multimodal Classification with PyTorch 9.4 Image Captioning with Attention 9.5 Programming Example: Image Captioning with TensorFlow 9.6 Programming Example: Image Captioning with PyTorch 9.7 Multimodal Large Language Models 9.8 Lesson 9 Summary Lesson 10: Multi-Task Learning and Computer Vision Beyond Classification Topics 10.1 Multitask Learning 10.2 Programming Example: Multitask Learning with TensorFlow 10.3 Programming Example: Multitask Learning with PyTorch 10.4 Object Detection with R-CNN 10.5 Improved Object Detection with Fast and Faster R-CNN 10.6 Segmentation with Deconvolution Network and U-Net 10.7 Instance Segmentation with Mask R-CNN 10.8 Lesson 10 Summary Lesson 11: Applying Deep Learning Topics 11.1 Ethical AI and Data Ethics 11.2 Process for Tuning a Network 11.3 Further Studies Summary Learning Deep Learning: Summary |