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Deep Learning Bootcamp - Neural Networks With Python, Pytorch - 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: Deep Learning Bootcamp - Neural Networks With Python, Pytorch (/Thread-Deep-Learning-Bootcamp-Neural-Networks-With-Python-Pytorch--682096) |
Deep Learning Bootcamp - Neural Networks With Python, Pytorch - OneDDL - 11-22-2024 ![]() Free Download Deep Learning Bootcamp - Neural Networks With Python, Pytorch Published 11/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 6.00 GB | Duration: 14h 21m Master Neural Networks, DNNs, and CNNs with Python, PyTorch, and TensorFlow in this all-in-one Deep Learning Bootcamp. What you'll learn • The basics of Machine Learning. • The basics of Neural Networks. • The basics of training a Deep Neural Network (DNN) using Gradient Descent Algorithm. • Using Deep Learning for IRIS dataset. • A solid understanding of tensors and their operations in PyTorch. • The ability to build and train basic to complex neural networks. • Knowledge of different loss functions, optimizers, and activation functions. • A completed project on brain tumor detection from MRI images, showcasing your skills in deep learning and PyTorch. • A Solid Grasp of TensorFlow Basics • Hands-on Experience in Building Deep Learning Models • Knowledge of Model Training, Evaluation, and Optimization • Confidence to Explore More Complex AI and Machine Learning Projects Requirements • No prior knowledge of Deep Learning or Math is needed. You will start from the basics and build your knowledge of the subject step by step. • Basic understanding of Python programming. No prior experience with TensorFlow is required, but a basic understanding of machine learning concepts and Python will be helpful. Description Are you ready to unlock the full potential of Deep Learning and AI by mastering not just one but multiple tools and frameworks? This comprehensive course will guide you through the essentials of Deep Learning using Python, PyTorch, and TensorFlow-the most powerful libraries and frameworks for building intelligent models.Whether you're a beginner or an experienced developer, this course offers a step-by-step learning experience that combines theoretical concepts with practical hands-on coding. By the end of this journey, you'll have developed a deep understanding of neural networks, gained proficiency in applying Deep Neural Networks (DNNs) to solve real-world problems, and built expertise in cutting-edge deep learning applications like Convolutional Neural Networks (CNNs) and brain tumor detection from MRI images.Why Choose This Course?This course stands out by offering a comprehensive learning path that merges essential aspects from three leading frameworks: Python, PyTorch, and TensorFlow. With a strong emphasis on hands-on practice and real-world applications, you'll quickly advance from fundamental concepts to mastering deep learning techniques, culminating in the creation of sophisticated AI models.Key Highlights ![]() ![]() Overview Section 1: Deep Learning ![]() Lecture 1 Promo & Highlights Lecture 2 Introduction: Introduction to Instructor and Aisciences Lecture 3 Links for the Course's Materials and Codes Lecture 4 Basics of Deep Learning: Problem to Solve Part 1 Lecture 5 Basics of Deep Learning: Problem to Solve Part 2 Lecture 6 Basics of Deep Learning: Problem to Solve Part 3 Lecture 7 Basics of Deep Learning: Linear Equation Lecture 8 Basics of Deep Learning: Linear Equation Vectorized Lecture 9 Basics of Deep Learning: 3D Feature Space Lecture 10 Basics of Deep Learning: N Dimensional Space Lecture 11 Basics of Deep Learning: Theory of Perceptron Lecture 12 Basics of Deep Learning: Implementing Basic Perceptron Lecture 13 Basics of Deep Learning: Logical Gates for Perceptrons Lecture 14 Basics of Deep Learning: Perceptron Training Part 1 Lecture 15 Basics of Deep Learning: Perceptron Training Part 2 Lecture 16 Basics of Deep Learning: Learning Rate Lecture 17 Basics of Deep Learning: Perceptron Training Part 3 Lecture 18 Basics of Deep Learning: Perceptron Algorithm Lecture 19 Basics of Deep Learning: Coading Perceptron Algo (Data Reading & Visualization) Lecture 20 Basics of Deep Learning: Coading Perceptron Algo (Perceptron Step) Lecture 21 Basics of Deep Learning: Coading Perceptron Algo (Training Perceptron) Lecture 22 Basics of Deep Learning: Coading Perceptron Algo (Visualizing the Results) Lecture 23 Basics of Deep Learning: Problem with Linear Solutions Lecture 24 Basics of Deep Learning: Solution to Problem Lecture 25 Basics of Deep Learning: Error Functions Lecture 26 Basics of Deep Learning: Discrete vs Continuous Error Function Lecture 27 Basics of Deep Learning: Sigmoid Function Lecture 28 Basics of Deep Learning: Multi-Class Problem Lecture 29 Basics of Deep Learning: Problem of Negative Scores Lecture 30 Basics of Deep Learning: Need of Softmax Lecture 31 Basics of Deep Learning: Coding Softmax Lecture 32 Basics of Deep Learning: One Hot Encoding Lecture 33 Basics of Deep Learning: Maximum Likelihood Part 1 Lecture 34 Basics of Deep Learning: Maximum Likelihood Part 2 Lecture 35 Basics of Deep Learning: Cross Entropy Lecture 36 Basics of Deep Learning: Cross Entropy Formulation Lecture 37 Basics of Deep Learning: Multi Class Cross Entropy Lecture 38 Basics of Deep Learning: Cross Entropy Implementation Lecture 39 Basics of Deep Learning: Sigmoid Function Implementation Lecture 40 Basics of Deep Learning: Output Function Implementation Lecture 41 Deep Learning: Introduction to Gradient Decent Lecture 42 Deep Learning: Convex Functions Lecture 43 Deep Learning: Use of Derivatives Lecture 44 Deep Learning: How Gradient Decent Works Lecture 45 Deep Learning: Gradient Step Lecture 46 Deep Learning: Logistic Regression Algorithm Lecture 47 Deep Learning: Data Visualization and Reading Lecture 48 Deep Learning: Updating Weights in Python Lecture 49 Deep Learning: Implementing Logistic Regression Lecture 50 Deep Learning: Visualization and Results Lecture 51 Deep Learning: Gradient Decent vs Perceptron Lecture 52 Deep Learning: Linear to Non Linear Boundaries Lecture 53 Deep Learning: Combining Probabilities Lecture 54 Deep Learning: Weighted Sums Lecture 55 Deep Learning: Neural Network Architecture Lecture 56 Deep Learning: Layers and DEEP Networks Lecture 57 Deep Learning: Multi Class Classification Lecture 58 Deep Learning: Basics of Feed Forward Lecture 59 Deep Learning: Feed Forward for DEEP Net Lecture 60 Deep Learning: Deep Learning Algo Overview Lecture 61 Deep Learning: Basics of Back Propagation Lecture 62 Deep Learning: Updating Weights Lecture 63 Deep Learning: Chain Rule for BackPropagation Lecture 64 Deep Learning: Sigma Prime Lecture 65 Deep Learning: Data Analysis NN Implementation Lecture 66 Deep Learning: One Hot Encoding (NN Implementation) Lecture 67 Deep Learning: Scaling the Data (NN Implementation) Lecture 68 Deep Learning: Splitting the Data (NN Implementation) Lecture 69 Deep Learning: Helper Functions (NN Implementation) Lecture 70 Deep Learning: Training (NN Implementation) Lecture 71 Deep Learning: Testing (NN Implementation) Lecture 72 Optimizations: Underfitting vs Overfitting Lecture 73 Optimizations: Early Stopping Lecture 74 Optimizations: Quiz Lecture 75 Optimizations: Solution & Regularization Lecture 76 Optimizations: L1 & L2 Regularization Lecture 77 Optimizations: Dropout Lecture 78 Optimizations: Local Minima Problem Lecture 79 Optimizations: Random Restart Solution Lecture 80 Optimizations: Vanishing Gradient Problem Lecture 81 Optimizations: Other Activation Functions Lecture 82 Final Project: Final Project Part 1 Lecture 83 Final Project: Final Project Part 2 Lecture 84 Final Project: Final Project Part 3 Lecture 85 Final Project: Final Project Part 4 Lecture 86 Final Project: Final Project Part 5 Section 2: PyTorch Power: From Zero to Deep Learning Hero - PyTorch Lecture 87 Links for the Course's Materials and Codes Lecture 88 Introduction: Module Content Lecture 89 Introduction: Benefits of Framework Lecture 90 Introduction: Installations and Setups Lecture 91 Tensor: Introduction to Tensor Lecture 92 Tensor: List vs Array vs Tensor Lecture 93 Tensor: Arithmetic Operations Lecture 94 Tensor: Tensor Operations Lecture 95 Tensor: Auto-Gradiants Lecture 96 Tensor: Activity Solution Lecture 97 Tensor: Detaching Gradients Lecture 98 Tensor: Loading GPU Lecture 99 NN with Tensor: Introduction to Module Lecture 100 NN with Tensor: Basic NN part 1 Lecture 101 NN with Tensor: Basic NN part 2 Lecture 102 NN with Tensor: Loss Functions Lecture 103 NN with Tensor: Activation Functions & Hidden Layers Lecture 104 NN with Tensor: Optimizers Lecture 105 NN with Tensor: Data Loader & Dataset Lecture 106 NN with Tensor: Activity Lecture 107 NN with Tensor: Activity Solution Lecture 108 NN with Tensor: Formating the Output Lecture 109 NN with Tensor: Graph for Loss Lecture 110 CNN: Introduction to Module Lecture 111 CNN: CNN vs NN Lecture 112 CNN: Introduction to Convolution Lecture 113 CNN: Convolution Animations Lecture 114 CNN: Convolution using Pytorch Lecture 115 CNN: Introduction to Pooling Lecture 116 CNN: Pooling using Numpy Lecture 117 CNN: Pooling in Pytorch Lecture 118 CNN: Introduction to Project Lecture 119 CNN: Project (Data Loading) Lecture 120 CNN: Project (Transforms) Lecture 121 CNN: Project (DataLoaders) Lecture 122 CNN: Project (CNN Architect) Lecture 123 CNN: Project (Forward Propagation) Lecture 124 CNN: Project (Training CNN) Lecture 125 CNN: Project (Analyzing Model Output) Lecture 126 CNN: Project (Making Predictions) Section 3: TensorFlow Fundamentals: From Basics to Brilliant AI Project Lecture 127 Links for the Course's Materials and Codes Lecture 128 Introduction to TensorFlow: Module Introduction Lecture 129 Introduction to TensorFlow: TensorFlow Definition and Properties Lecture 130 Introduction to TensorFlow: Tensor Types and Tesnor Board Lecture 131 Introduction to TensorFlow: How to use TensorFlow Lecture 132 Introduction to TensorFlow: Google Colab Lecture 133 Introduction to TensorFlow: Exercise Lecture 134 Introduction to TensorFlow: Exercise Solution Lecture 135 Introduction to TensorFlow: Quiz Lecture 136 Introduction to TensorFlow: Quiz Solution Lecture 137 Building your first deep learning Project: Module Introduction Lecture 138 Building your first deep learning Project: ANNs Lecture 139 Building your first deep learning Project: TensorFlow Playground Lecture 140 Building your first deep learning Project: Load TF and Data Lecture 141 Building your first deep learning Project: Model Training and Evaluation Lecture 142 Building your first deep learning Project: Project Lecture 143 Building your first deep learning Project: Project Implementation Lecture 144 Building your first deep learning Project: Quiz Lecture 145 Building your first deep learning Project: Quiz Solution Lecture 146 Multi-layer Deep Learning Project: Module Introduction Lecture 147 Multi-layer Deep Learning Project: Training and Epochs Lecture 148 Multi-layer Deep Learning Project: Gradient Decent and Back Propagation Lecture 149 Multi-layer Deep Learning Project: Bias Variance Trade-Off Lecture 150 Multi-layer Deep Learning Project: Performance Metrics Lecture 151 Multi-layer Deep Learning Project: Project-Sales Predition Lecture 152 Multi-layer Deep Learning Project: Quiz Lecture 153 Multi-layer Deep Learning Project: Quiz Solution • Anyone interested in Data Science.,• People who want to master DNNs with real datasets in Deep Learning.,• People who want to implement DNNs in realistic projects.,• Software developers and data scientists looking to expand their skillset with PyTorch.,• Beginners who want to enter the field of deep learning and artificial intelligence.,• Anyone Curious About Deep Learning and TensorFlow Homepage Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live No Password - Links are Interchangeable |