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Udemy - Mastering Pytorch (2024) - OneDDL - 12-31-2024 Free Download Udemy - Mastering Pytorch (2024) Published: 12/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 1.35 GB | Duration: 2h 43m From Basics to Advanced Deep Learning Training What you'll learn Understand PyTorch fundamentals, including tensors and computation graphs Build and train neural networks using PyTorch's nn_Module Preprocess and load datasets with DataLoaders and custom datasets Implement advanced architectures like CNNs, RNNs, and Transformers Perform transfer learning and fine-tune pre-trained models Optimize models using hyperparameter tuning and regularization Deploy trained models using TorchScript and cloud services Debug and troubleshoot deep learning models effectively Develop custom layers, loss functions, and models Collaborate with the PyTorch community and contribute to open-source projects Requirements Basic Computer Skills: Familiarity with using a computer and installing software Python Programming: Basic knowledge of Python (variables, functions, loops) Mathematics: Understanding of basic algebra, linear algebra, and calculus concepts (vectors, matrices, derivatives) Machine Learning Basics (optional): Awareness of ML concepts like models, training, and evaluation is helpful but not mandatory Enthusiasm to Learn: A willingness to learn through hands-on projects and experiments Description The "Mastering PyTorch: From Basics to Advanced Deep Learning Training" course is a complete learning journey designed for beginners and professionals aiming to excel in artificial intelligence and deep learning. This course begins with the fundamentals of PyTorch, covering essential topics such as tensor operations, automatic differentiation, and building neural networks from scratch. Learners will gain a deep understanding of how PyTorch's dynamic computation graph works, enabling flexible model creation and troubleshooting.As the course progresses, students will explore advanced topics, including complex neural network architectures such as CNNs, RNNs, and Transformers. It also dives into transfer learning, custom layers, loss functions, and model optimization techniques. Learners will practice building real-world projects, such as image classifiers, NLP-based sentiment analyzers, and GAN-powered applications.The course places a strong emphasis on hands-on implementation, offering step-by-step exercises, coding challenges, and projects that reinforce key concepts. Additionally, learners will explore cutting-edge techniques like distributed training, cloud deployment, and integration with popular libraries.By the end of the course, learners will be proficient in designing, building, and deploying AI models using PyTorch. They will also be equipped to contribute to open-source projects and pursue careers as AI engineers, data scientists, or ML researchers in the growing field of deep learning. Overview Section 1: Introduction and Foundations Lecture 1 Introduction to Learning PyTorch from Basics to Advanced Complete Training Lecture 2 Introduction to PyTorch Lecture 3 Getting Started with PyTorch Section 2: Core Concepts and Model Building Lecture 4 Working with Tensors Lecture 5 Autograd and Dynamic Computation Graphs Lecture 6 Building Simple Neural Networks Section 3: Data Handling and Model Training Lecture 7 Loading and Preprocessing Data Lecture 8 Model Evaluation and Validation Lecture 9 Advanced Neural Network Architectures Lecture 10 Transfer Learning and Fine-Tuning Section 4: Advanced Techniques and Deployment Lecture 11 Handling Complex Data Lecture 12 Model Deployment and Production Lecture 13 Debugging and Troubleshooting Lecture 14 Distributed Training and Performance Optimization Section 5: Research, Customization, and Community Lecture 15 Custom Layers and Loss Functions Lecture 16 Research-oriented Techniques Lecture 17 Integration with Other Libraries Lecture 18 Contributing to PyTorch and Community Engagement Beginners in AI/ML: Those with no prior deep learning experience but eager to learn PyTorch from scratch,Data Science Enthusiasts: Aspiring data scientists looking to add PyTorch to their ML toolkit,Developers and Engineers: Software developers transitioning into AI and deep learning roles,Researchers and Academics: Those exploring cutting-edge ML research using PyTorch,Career Switchers: Professionals transitioning to AI-related careers Homepage: DOWNLOAD NOW: Udemy - Mastering Pytorch (2024) Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live No Password - Links are Interchangeable |