DeepLearning.AI
AI is the new electricity and will transform and improve nearly all areas of human lives.

Welcome back!

We'd like to know you better so we can create more relevant courses. What do you do for work?

Course Syllabus

This course is part of Deep Learning Specialization

DeepLearning.AI
    daily streak fire

    You've achieved today's streak!

    Complete one lesson every day to keep the streak going.

    Su

    Mo

    Tu

    We

    Th

    Fr

    Sa

    free pass got

    You earned a Free Pass!

    Free Passes help protect your daily streak. Complete more lessons to earn up to 3 Free Passes.

    Free PassFree PassFree Pass

    Elevate Your Career with Full Learning Experience

    Unlock Plus AI learning and gain exclusive insights from industry leaders

    Access exclusive features like graded notebooks and quizzes
    Earn unlimited certificates to enhance your resume
    Starting at $1 USD/mo after a free trial – cancel anytime
Hello and welcome. As you probably know, deep learning has already transformed traditional internet businesses like web search and advertising. But deep learning is also enabling brand new products and businesses and ways of helping people to recreate it. Everything ranging from better healthcare, where deep learning is getting really good at reading x-ray images, to delivering personalized education, to precision agriculture, to even self-driving cars, and many others. If you want to learn the tools of deep learning and be able to apply them to build these amazing things, I want to help you get there. When you finish this sequence of courses, you will be able to put deep learning onto your resume with confidence. Over the next decade, I think all of us have an opportunity to build an amazing world, amazing society that is AI-powered, and I hope that you will play a big role in the creation of this AI-powered society. So with that, let's get started. I think that AI is the new electricity. Starting about 100 years ago, the electrification of our society transformed every major industry, everything ranging from translations, manufacturing, to healthcare, to communications, and many more. And I think that today, we see a surprisingly clear path for AI to bring about an equally big transformation. And of course, the part of AI that is rising rapidly and driving a lot of these developments is deep learning. So today, deep learning is one of the most highly sought-after skills in the technology world. And through this course and a few courses after this one, I want to help you to gain and master those skills. So here's what you learn in this sequence of courses. In the first course, you learn about the foundations of neural networks. You learn about neural networks and deep learning. This video that you're watching is part of this first course, which lasts four weeks in total, and each of the five courses will be about two to four weeks, with most of them actually shorter than four weeks. But in this first course, you learn how to build a neural network, including a deep neural network, and how to train it on data. And at the end of this course, you'll be able to build a deep neural network to recognize, guess what, cats. For some reason, there is a cat meme running around in deep learning. And so following tradition, in this first course, we'll build a cat recognizer. Then in the second course, you learn about the practical aspects of deep learning. So you learn, now that you've built a neural network, how to actually get it to perform well. So you learn about hyperparameter tuning, regularization, how to diagnose bias and variance, and advanced optimization algorithms like momentum, RMSProp, and the Adam optimization algorithm. Sometimes it seems like there's a lot of tuning, even some black magic in how you build a neural network. So the second course, which is just three weeks, will demystify some of that black magic. In the third course, which is just two weeks, you learn how to structure your machine learning project. It turns out that the strategy for building a machine learning system has changed in the era of deep learning. So, for example, the way you switch your data into train developmental dev, also called holdout cross-validation set, and test sets, has changed in the era of deep learning. So what are the new best practices for doing that? And what if your training set and your test set come from different distributions? That's happening a lot more in the era of deep learning. So how do you deal with that? And if you've heard of end-to-end deep learning, you also learn more about that in this third course and see when you should use it and maybe when you shouldn't. The material in this third course is relatively unique. I'm going to share with you a lot of the hard-won lessons that I've learned building and shipping quite a lot of deep learning products. As far as I know, this is largely material that is not taught in most universities that have deep learning courses. But I think it'll really help you to get your deep learning systems to work well. In the next course, we'll then talk about convolutional neural networks, often abbreviated CNNs. Convolutional networks or convolutional neural networks are often applied to images. So you learn how to build these models in course four. Finally, in course five, you learn sequence models and how to apply them to natural language processing and other problems. So sequence models includes models like recurrent neural networks, abbreviated RNNs, and LSTM models, sensor long short-term memory models. You learn what these terms mean in course five and be able to apply them to natural language processing problems. So you learn these models in course five and be able to apply them to sequence data. So for example, natural language is just a sequence of words. And you also understand how these models can be applied to speech recognition or to music generation and other problems. So through these courses, you learn the tools of deep learning. You'll be able to apply them to build amazing things. And I hope many of you through this will also be able to advance your career. So with that, let's get started. Please go on to the next video, where we'll talk about deep learning applied to supervised learning.
course detail
Next Lesson
Introduction to Deep Learning
    Welcome to the Deep Learning Specialization
  • Welcome
    Video
    ・
    5 mins
  • Introduction to Deep Learning
  • What is a Neural Network?
    Video
    ・
    7 mins
  • Supervised Learning with Neural Networks
    Video
    ・
    8 mins
  • Why is Deep Learning taking off?
    Video
    ・
    10 mins
  • About this Course
    Video
    ・
    2 mins
  • Frequently Asked Questions
    Reading
    ・
    10 mins
  • Lecture Notes (Optional)
  • Lecture Notes W1
    Reading
    ・
    1 min
  • Quiz
  • Introduction to Deep Learning

    Graded・Quiz

    ・
    50 mins
  • Heroes of Deep Learning (Optional)
  • Geoffrey Hinton Interview
    Video
    ・
    40 mins
  • Course Feedback
  • Forum
  • Certificate