PyTorch: Deep Learning and Artificial Intelligence

Neural Networks for Computer Vision, Time Series Forecasting, NLP, GANs, Reinforcement Learning, and More!

Generative AI
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  • All levels
  • 160 Lectures
  • 25h 19m
  • English
  • Lifetime access, certificate of completion (shareable on LinkedIn, Facebook, and Twitter), Q&A forum, subtitles in English
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Course Description

Welcome to PyTorch: Deep Learning and Artificial Intelligence!

Although Google's Deep Learning library Tensorflow has gained massive popularity over the past few years, PyTorch has been the library of choice for professionals and researchers around the globe for deep learning and artificial intelligence.

Is it possible that Tensorflow is popular only because Google is popular and used effective marketing?

Why did Tensorflow change so significantly between version 1 and version 2? Was there something deeply flawed with it, and are there still potential problems?

It is less well-known that PyTorch is backed by another Internet giant, Facebook (specifically, the Facebook AI Research Lab - FAIR). So if you want a popular deep learning library backed by billion dollar companies and lots of community support, you can't go wrong with PyTorch. And maybe it's a bonus that the library won't completely ruin all your old code when it advances to the next version. ;)

On the flip side, it is very well-known that all the top AI shops (ex. OpenAI, Apple, and JPMorgan Chase) use PyTorch. OpenAI just recently switched to PyTorch in 2020, a strong sign that PyTorch is picking up steam.

If you are a professional, you will quickly recognize that building and testing new ideas is extremely easy with PyTorch, while it can be pretty hard in other libraries that try to do everything for you. Oh, and it's faster.

Deep Learning has been responsible for some amazing achievements recently, such as:

Generating beautiful, photo-realistic images of people and things that never existed (GANs)

Beating world champions in the strategy game Go, and complex video games like CS:GO and Dota 2 (Deep Reinforcement Learning)

Self-driving cars (Computer Vision)

Speech recognition (e.g. Siri) and machine translation (Natural Language Processing)

Even creating videos of people doing and saying things they never did (DeepFakes - a potentially nefarious application of deep learning)

This course is for beginner-level students all the way up to expert-level students. How can this be?

If you've just taken my free Numpy prerequisite, then you know everything you need to jump right in. We will start with some very basic machine learning models and advance to state of the art concepts.

Along the way, you will learn about all of the major deep learning architectures, such as Deep Neural Networks, Convolutional Neural Networks (image processing), and Recurrent Neural Networks (sequence data).

Current projects include:

  • Natural Language Processing (NLP)
  • Recommender Systems
  • Transfer Learning for Computer Vision
  • Generative Adversarial Networks (GANs)
  • Deep Reinforcement Learning Stock Trading Bot


Even if you've taken all of my previous courses already, you will still learn about how to convert your previous code so that it uses Tensorflow 2.0, and there are all-new and never-before-seen projects in this course such as time series forecasting and how to do stock predictions.

This course is designed for students who want to learn fast, but there are also "in-depth" sections in case you want to dig a little deeper into the theory (like what is a loss function, and what are the different types of gradient descent approaches).

I'm taking the approach that even if you are not 100% comfortable with the mathematical concepts, you can still do this! In this course, we focus more on the PyTorch library, rather than deriving any mathematical equations. I have tons of courses for that already, so there is no need to repeat that here.

Instructor's Note: This course focuses on breadth rather than depth, with less theory in favor of building more cool stuff. If you are looking for a more theory-dense course, this is not it. Generally, for each of these topics (recommender systems, natural language processing, reinforcement learning, computer vision, GANs, etc.) I already have courses singularly focused on those topics.

Thanks for reading, and I’ll see you in class!

Lectures

  • 22 sections
  • 160 lectures
  • 25h 19m total length
Welcome
Preview
04:04
Overview and Outline
13:14
Where to get the code
02:06
Intro to Google Colab, how to use a GPU or TPU for free
12:33
Uploading your own data to Google Colab
11:42
Where can I learn about Numpy, Scipy, Matplotlib, Pandas, and Scikit-Learn?
08:55
Temporary 403 Errors
02:58
What is Machine Learning?
14:26
Regression Basics
14:39
Regression Code Preparation
11:45
Regression Notebook
13:14
Moore's Law
06:57
Moore's Law Notebook
13:51
Linear Regression Exercise: Real Estate Predictions
02:33
Linear Classification Basics
15:06
Classification Code Preparation
06:56
Classification Notebook
12:00
Logistic Regression Exercise: Predicting Diabetes Onset
02:34
Saving and Loading a Model
05:21
A Short Neuroscience Primer
09:51
How does a model "learn"?
10:50
Model With Logits
04:18
Train Sets vs. Validation Sets vs. Test Sets
10:12
Suggestion Box
03:10
Artificial Neural Networks Section Introduction
06:00
Forward Propagation
09:40
The Geometrical Picture
09:43
Activation Functions
17:18
Multiclass Classification
09:39
How to Represent Images
12:21
Color Mixing Clarification
55:00
Code Preparation (ANN)
14:57
ANN for Image Classification
18:28
ANN for Regression
10:55
Exercise: E. Coli Protein Localization Sites
02:21
How to Choose Hyperparameters
06:17
What is Convolution? (part 1)
16:38
What is Convolution? (part 2 - Pattern Finding)
05:56
What is Convolution? (part 3 - Weight Sharing)
06:41
Convolution on Color Images
15:58
CNN Architecture
20:53
CNN Code Preparation (part 1)
17:42
CNN Code Preparation (part 2)
08:00
CNN Code Preparation (part 3)
05:40
CNN for Fashion MNIST
11:32
CNN for CIFAR-10
08:05
Data Augmentation
09:45
Batch Normalization
05:14
Improving CIFAR-10 Results
10:46
Exercise: Facial Expression Recognition
01:35
Sequence Data
22:14
Forecasting
10:58
Autoregressive Linear Model for Time Series Prediction
12:15
Proof that the Linear Model Works
04:12
Recurrent Neural Networks
21:31
RNN Code Preparation
13:49
RNN for Time Series Prediction
09:29
Paying Attention to Shapes
09:33
GRU and LSTM (pt 1)
17:35
GRU and LSTM (pt 2)
11:45
A More Challenging Sequence
10:28
RNN for Image Classification (Theory)
04:41
RNN for Image Classification (Code)
02:48
Stock Return Predictions using LSTMs (pt 1)
12:24
Stock Return Predictions using LSTMs (pt 2)
06:16
Stock Return Predictions using LSTMs (pt 3)
11:45
Other Ways to Forecast
05:14
Exercise: More Forecasting
01:52
Embeddings
13:12
Neural Networks with Embeddings
03:45
Text Preprocessing Concepts
13:33
Beginner Blues - PyTorch NLP Version
10:36
(Legacy) Text Preprocessing Code Preparation
11:53
(Legacy) Text Preprocessing Code Example
07:53
(Legacy) Text Classification with LSTMs (V1)
08:55
Text Classification with LSTMs (V2)
17:42
CNNs for Text
12:07
(Legacy) Text Classification with CNNs (V1)
04:49
Text Classification with CNNs (V2)
07:15
(Legacy) VIP: Making Predictions with a Trained NLP Model
07:37
VIP: Making Predictions with a Trained NLP Model (V2)
04:21
Exercise: Sentiment Analysis
02:01
Recommender Systems with Deep Learning Theory
10:26
Recommender Systems with Deep Learning Code Preparation
09:38
Recommender Systems with Deep Learning Code (pt 1)
08:52
Recommender Systems with Deep Learning Code (pt 2)
12:31
VIP: Making Predictions with a Trained Recommender Model
04:51
Exercise: Book Recommendations
01:13
Transfer Learning Theory
08:12
Some Pre-trained Models (VGG, ResNet, Inception, MobileNet)
04:05
Large Datasets
07:11
2 Approaches to Transfer Learning
04:51
Transfer Learning Code (pt 1)
09:36
Transfer Learning Code (pt 2)
07:40
Exercise: Transfer Learning
01:28
GAN Theory
16:03
GAN Code Preparation
06:18
GAN Code
09:21
Exercise: DCGAN (Deep Convolutional GAN)
02:54
Reinforcement Learning Section Introduction
06:34
Elements of a Reinforcement Learning Problem
20:18
States, Actions, Rewards, Policies
09:24
Markov Decision Processes (MDPs)
10:07
The Return
04:56
Value Functions and the Bellman Equation
09:53
What does it mean to “learn”?
07:18
Solving the Bellman Equation with Reinforcement Learning (pt 1)
09:49
Solving the Bellman Equation with Reinforcement Learning (pt 2)
12:04
Epsilon-Greedy
06:09
Q-Learning
14:15
Deep Q-Learning / DQN (pt 1)
14:05
Deep Q-Learning / DQN (pt 2)
10:25
How to Learn Reinforcement Learning
05:56
Reinforcement Learning Stock Trader Introduction
05:13
Data and Environment
12:22
Replay Buffer
05:40
Program Design and Layout
06:56
Code pt 1
09:22
Code pt 2
09:40
Code pt 3
06:54
Code pt 4
07:25
Reinforcement Learning Stock Trader Discussion
03:36
Exercise: Personalized Stock Trading Bot
01:44
Custom Loss and Estimating Prediction Uncertainty
09:36
Estimating Prediction Uncertainty Code
07:12
Facial Recognition Section Introduction
03:39
Siamese Networks
10:17
Code Outline
05:05
Loading in the data
05:52
Splitting the data into train and test
04:27
Converting the data into pairs
05:04
Generating Generators
05:06
Creating the model and loss
04:28
Accuracy and imbalanced classes
07:48
Facial Recognition Section Summary
03:32
Mean Squared Error
09:11
Binary Cross Entropy
05:58
Categorical Cross Entropy
08:06
Gradient Descent
07:52
Stochastic Gradient Descent
04:36
Momentum
06:11
Variable and Adaptive Learning Rates
11:46
Adam Optimization (pt 1)
13:15
Adam Optimization (pt 2)
11:14
What is the Appendix?
03:47
Pre-Installation Check
04:13
Anaconda Environment Setup
20:21
How to install Numpy, Scipy, Matplotlib, Pandas, PyTorch, and TensorFlow
17:33
Beginner's Coding Tips
13:22
How to Code Yourself (part 1)
15:55
How to Code Yourself (part 2)
09:24
Proof that using Jupyter Notebook is the same as not using it
12:29
Python 2 vs Python 3
04:38
Is Theano Dead?
10:04
How to use Github & Extra Coding Tips (Optional)
11:12
How to Succeed in this Course (Long Version)
10:25
Is this for Beginners or Experts? Academic or Practical? Fast or slow-paced?
22:05
What order should I take your courses in? (part 1)
11:19
What order should I take your courses in? (part 2)
16:07
Where to get discount coupons and FREE AI tutorials
05:49
Data Links

Reviews

4.7

38 reviews for this course

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Testimonials and Success Stories

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H. Z.

Machine Learning Research Scientist
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United States

“I am one of your students. Yesterday, I presented my paper at ICCV 2019. You have a significant part in this, so I want to sincerely thank you for your in-depth guidance to the puzzle of deep learning. Please keep making awesome courses that teach us!”

5.0
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Wade J.

Data Scientist
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United States

“I just watched your short video on “Predicting Stock Prices with LSTMs: One Mistake Everyone Makes.” Giggled with delight.

You probably already know this, but some of us really and truly appreciate you. BTW, I spent a reasonable amount of time making a learning roadmap based on your courses and have started the journey.

Looking forward to your new stuff.”

5.0
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Kris M.

Data Scientist
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United States

“Thank you for doing this! I wish everyone who call’s themselves a Data Scientist would take the time to do this either as a refresher or learn the material. I have had to work with so many people in prior roles that wanted to jump right into machine learning on my teams and didn’t even understand the first thing about the basics you have in here!!

I am signing up so that I have the easy refresh when needed and the see what you consider important, as well as to support your great work, thank you.”

5.0
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Steve M.

Machine Learning Research Scientist
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United States

“I have been intending to send you an email expressing my gratitude for the work that you have done to create all of these data science courses in Machine Learning and Artificial Intelligence. I have been looking long and hard for courses that have mathematical rigor relative to the application of the ML & AI algorithms as opposed to just exhibit some 'canned routine' and then viola here is your neural network or logistical regression.

Your courses are just what I have been seeking. I am a retired mathematician, statistician and Supply Chain executive from a large Fortune 500 company in Ohio. I also taught mathematics, statistics and operations research courses at a couple of universities in Northern Ohio.

I have taken many courses and have enjoyed the journey, I am not going to be critical of any of the organizations from whom I have taken courses. However, when I read a review about one of your courses in which the student was complaining that one would need a PhD in Mathematics to understand it, I knew this was the course (or series of courses) that I wanted. (Having advanced degrees in mathematics, I knew that it was highly unlikely that a PhD would actually be required.)”

5.0
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Saurabh W.

Data Scientist
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India

“Hi Sir I am a student from India. I've been wanting to write a note to thank you for the courses that you've made because they have changed my career. I wanted to work in the field of data science but I was not having proper guidance but then I stumbled upon your "Logistic Regression" course in March and since then, there's been no looking back. I learned ANNs, CNNs, RNNs, Tensorflow, NLP and whatnot by going through your lectures. The knowledge that I gained enabled me to get a job as a Business Technology Analyst at one of my dream firms even in the midst of this pandemic. For that, I shall always be grateful to you. Please keep making more courses with the level of detail that you do in low-level libraries like Theano.”

5.0
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David P.

Financial Analyst
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United States

“I just wanted to reach out and thank you for your most excellent course that I am nearing finishing.

And, I couldn't agree more with some of your "rants", and found myself nodding vigorously!

You are an excellent teacher, and a rare breed.

And, your courses are frankly, more digestible and teach a student far more than some of the top-tier courses from ivy leagues I have taken in the past.

(I plan to go through many more courses, one by one!)

I know you must be deluged with complaints in spite of the best content around That's just human nature.

Also, satisfied people rarely take the time to write, so I thought I will write in for a change. :)”

5.0
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P. C.

Deep Learning Research Scientist
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China

“Hello, Lazy Programmer!

In the process of completing my Master’s at Hunan University, China, I am writing this feedback to you in order to express my deep gratitude for all the knowledge and skills I have obtained studying your courses and following your recommendations.

The first course of yours I took was on Convolutional Neural Networks (“Deep Learning p.5”, as far as I remember). Answering one of my questions on the Q&A board, you suggested I should start from the beginning – the Linear and Logistic Regression courses. Despite that I assumed I had already known many basic things at that time, I overcame my “pride” and decided to start my journey in Deep Learning from scratch.

Course by course, I was renewing the basics and the prerequisites. Thus, in several months, after every day studying under your guidance, I was able to gain enough intuitions and practical skills in order to begin progressing in my research. Having a solid background, it was just a pleasure to read all the relevant papers in the field as well as to make all the experiments needed for achieving my goal – creating a high-performance CNN for offline HCCR.

I believe, the professionalism of any teacher can be estimated by the feedback received from their students, and it’s of the utmost importance for me to thank you, Lazy Programmer!

I want you to know, in spite, that we have never actually met and you haven’t taught me privately, I consider you one of my greatest Teachers.

The most important things I have learned from you (some in the hard way, though) beside many exciting modern Deep Learning/AI techniques and algorithms are:

1) If one doesn’t know how to program something, one doesn’t understand it completely.

2) If one is not honest with oneself about one’s prior knowledge, one will never succeed in studying more advanced things.

3) Developing skills in BOTH Math and Programming is what makes one a good student of this major.

I am still studying your courses, and am certain I will ask you more than just a few technical questions regarding their content, but I already would like to say, that I will remember your contribution to my adventure in the Deep Learning field, and consider it as big as one of such great scientists’ as Andrew Ng, Geoffrey Hinton, and my supervisor.

Thank you, Lazy Programmer! 非常感谢您,Lazy 老师!

If you are interested, you can find my first paper’s preprint here:

https://arxiv.org/abs/xxx”

5.0
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Dima K.

Data Scientist
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Ukraine

“By the way, if you are interested to hear. I used the HMM classification, as it was in your course (95% of the script, I had little adjustments there), for the Customer-Care department in a big known fintech company. to predict who will call them, so they can call him before the rush hours, and improve the service. Instead of a poem, I Had a sequence of the last 24 hours' events that the customer had, like: "Loaded money", "Usage in the food service", "Entering the app", "Trying to change the password", etc... the label was called or didn't call. The outcome was great. They use it for their VIP customers. Our data science department and I got a lot of praise.”

5.0
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Andres Lopez C.

Data Engineer
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United States

“This course is exactly what I was looking for. The instructor does an impressive job making students understand they need to work hard in order to learned. The examples are clear, and the explanations of the theory is very interesting.”

5.0
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Mohammed K.

Machine Learning Engineer
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Germany

“Thank you, I think you have opened my eyes. I was using API to implement Deep learning algorithms and each time I felt I was messing out on some things. So thank you very much.”

5.0
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Tom P.

Machine Learning Engineer
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United States

“I have now taken a few classes from some well-known AI profs at Stanford (Andrew Ng, Christopher Manning, …) with an overall average mark in the mid-90s. Just so you know, you are as good as any of them. But I hope that you already know that.

I wish you a happy and safe holiday season. I am glad you chose to share your knowledge with the rest of us.”

5.0
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