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Monday, May 13, 2024
How to Become a Machine Learning / AI Engineer in 2024 ?
How to Become a Machine Learning / AI Engineer in 2024 ? GitHub: https://github.com/vishwajeetsinghrana8/Pytorch-Tutorial-Series-2024 Playlist: https://youtube.com/playlist?list=PLkPmSWtWNIyQ_DoYCUVhHIUXZ1NlA_7ht&si=hc5lIDfmVV-oO73k Here's what you can expect from this tutorial series: - **Foundations of PyTorch**: We start with the basics, covering tensors, operations, and gradients, laying a strong foundation for your journey into deep learning with PyTorch. - **Building Neural Networks**: Learn how to construct and train neural networks using PyTorch's intuitive API, exploring various architectures such as convolutional neural networks (CNNs), recurrent neural networks (RNNs), and transformers. - **Training and Optimization**: Dive into the intricacies of training neural networks, understanding loss functions, optimizers, learning rate schedules, and techniques for improving model performance. - **Transfer Learning and Fine-Tuning**: Discover how to leverage pre-trained models and transfer learning to solve complex tasks with minimal data, saving time and computational resources. - **Deployment and Production**: Learn how to deploy your PyTorch models into production environments, whether it's on the cloud, mobile devices, or edge devices, ensuring seamless integration into real-world applications. Each tutorial is designed to be beginner-friendly yet comprehensive, with hands-on examples and practical exercises to reinforce your learning. Whether you're a student, researcher, or industry professional, this series will equip you with the skills and knowledge needed to excel in the field of deep learning with PyTorch. Join us on this exciting journey as we unravel the mysteries of PyTorch and empower you to build intelligent systems that push the boundaries of what's possible. Don't forget to like, share, and subscribe to stay updated on the latest tutorials in deep learning and artificial intelligence. Let's embark on this PyTorch adventure together and unlock the full potential of deep learning in 2024! #ai #ml #career
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