Introduction to Deep Learning

Por: Coursera . en: , ,

  • Introduction to optimization
    • Welcome to the "Introduction to Deep Learning" course! In the first week you'll learn about linear models and stochatic optimization methods. Linear models are basic building blocks for many deep architectures, and stochastic optimization is used to learn every model that we'll discuss in our course.
  • Introduction to neural networks
    • This module is an introduction to the concept of a deep neural network. You'll begin with the linear model and finish with writing your very first deep network.
  • Deep Learning for images
    • In this week you will learn about building blocks of deep learning for image input. You will learn how to build Convolutional Neural Network (CNN) architectures with these blocks and how to quickly solve a new task using so-called pre-trained models.
  • Unsupervised representation learning
    • This week we're gonna dive into unsupervised parts of deep learning. You'll learn how to generate, morph and search images with deep learning.
  • Deep learning for sequences
    • In this week you will learn how to use deep learning for sequences such as texts, video, audio, etc. You will learn about several Recurrent Neural Network (RNN) architectures and how to apply them for different tasks with sequential input/output.
  • Final Project
    • In this week you will apply all your knowledge about neural networks for images and texts for the final project. You will solve the task of generating descriptions for real world images!