Deep Learning

بواسطة: Udacity

Overview

Learn to leverage the capabilities of deep learning tools to fix complex problems and unlock next-level results for enterprises.

Syllabus

  • Introduction to Deep Learning
    • Begin by learning the fundamentals of deep learning. Then examine the foundational algorithms underpinning modern deep learning: gradient descent and backpropagation. Once those foundations are established, explore design constructs of neural networks and the impact of these design decisions. Finally, the course explores how neural network training can be optimized for accuracy and robustness.
  • Convolutional Neural Networks
    • This course introduces convolutional neural networks, the most widely used type of neural networks specialized in image processing. You will learn the main characteristics of CNNs that make them better than standard neural networks for image processing. Then you’ll examine the inner workings of CNNs and apply the architectures to custom datasets using transfer learning. Finally, you will learn how to use CNNs for object detection and semantic segmentation.
  • RNNs & Transformers
    • This course covers multiple RNN architectures and discusses design patterns for those models. Additionally, you’ll focus on the latest transformer architectures.
  • Building Generative Adversarial Networks
    • Become familiar with generative adversarial networks (GANs) by learning how to build and train different GANs architectures to generate new images. Discover, build, and train architectures such as DCGAN, CycleGAN, ProGAN, and StyleGAN on diverse datasets including the MNIST dataset, Summer2Winter Yosemite dataset, or CelebA dataset.

Taught by

Mat Leonard, Luis Serrano, Cezanne Camacho, Alexis Cook, Jennifer Staab, Sean Carrell, Ortal Arel, Jay Alammar, Vyom S., Peter L., Nohemy V., Sebastian P., Karim B. and Harshit A.

Deep Learning
الذهاب الي الدورة

Deep Learning

بواسطة: Udacity

  • Udacity
  • مدفوعة
  • الإنجليزية
  • متاح شهادة
  • متاح في أي وقت
  • الجميع
  • N/A