Classbaze

Disclosure: when you buy through links on our site, we may earn an affiliate commission.

Advanced AI: Deep Reinforcement Learning in Python

The Complete Guide to Mastering Artificial Intelligence using Deep Learning and Neural Networks
4.6
4.6/5
(4,524 reviews)
34,817 students
Created by

9.3

Classbaze Grade®

10.0

Freshness

9.0

Popularity

8.2

Material

The Complete Guide to Mastering Artificial Intelligence using Deep Learning and Neural Networks
Platform: Udemy
Video: 10h 33m
Language: English
Next start: On Demand

Best Python classes:

Classbaze Rating

Classbaze Grade®

9.3 / 10

CourseMarks Score® helps students to find the best classes. We aggregate 18 factors, including freshness, student feedback and content diversity.

Freshness

10.0 / 10
This course was last updated on 5/2022.

Course content can become outdated quite quickly. After analysing 71,530 courses, we found that the highest rated courses are updated every year. If a course has not been updated for more than 2 years, you should carefully evaluate the course before enrolling.

Popularity

9.0 / 10
We analyzed factors such as the rating (4.6/5) and the ratio between the number of reviews and the number of students, which is a great signal of student commitment.

New courses are hard to evaluate because there are no or just a few student ratings, but Student Feedback Score helps you find great courses even with fewer reviews.

Material

8.2 / 10
Video Score: 9.2 / 10
The course includes 10h 33m video content. Courses with more videos usually have a higher average rating. We have found that the sweet spot is 16 hours of video, which is long enough to teach a topic comprehensively, but not overwhelming. Courses over 16 hours of video gets the maximum score.
The average video length is 7 hours 31 minutes of 1,582 Python courses on Udemy.
Detail Score: 9.9 / 10

The top online course contains a detailed description of the course, what you will learn and also a detailed description about the instructor.

Extra Content Score: 5.5 / 10

Tests, exercises, articles and other resources help students to better understand and deepen their understanding of the topic.

This course contains:

0 article.
0 resource.
0 exercise.
0 test.

In this page

About the course

This course is all about the application of deep learning and neural networks to reinforcement learning.
If you’ve taken my first reinforcement learning class, then you know that reinforcement learning is on the bleeding edge of what we can do with AI.
Specifically, the combination of deep learning with reinforcement learning has led to AlphaGo beating a world champion in the strategy game Go, it has led to self-driving cars, and it has led to machines that can play video games at a superhuman level.
Reinforcement learning has been around since the 70s but none of this has been possible until now.
The world is changing at a very fast pace. The state of California is changing their regulations so that self-driving car companies can test their cars without a human in the car to supervise.
We’ve seen that reinforcement learning is an entirely different kind of machine learning than supervised and unsupervised learning.
Supervised and unsupervised machine learning algorithms are for analyzing and making predictions about data, whereas reinforcement learning is about training an agent to interact with an environment and maximize its reward.
Unlike supervised and unsupervised learning algorithms, reinforcement learning agents have an impetus – they want to reach a goal.
This is such a fascinating perspective, it can even make supervised / unsupervised machine learning and “data science” seem boring in hindsight. Why train a neural network to learn about the data in a database, when you can train a neural network to interact with the real-world?
While deep reinforcement learning and AI has a lot of potential, it also carries with it huge risk.
Bill Gates and Elon Musk have made public statements about some of the risks that AI poses to economic stability and even our existence.
As we learned in my first reinforcement learning course, one of the main principles of training reinforcement learning agents is that there are unintended consequences when training an AI.
AIs don’t think like humans, and so they come up with novel and non-intuitive solutions to reach their goals, often in ways that surprise domain experts – humans who are the best at what they do.
OpenAI is a non-profit founded by Elon Musk, Sam Altman (Y Combinator), and others, in order to ensure that AI progresses in a way that is beneficial, rather than harmful.
Part of the motivation behind OpenAI is the existential risk that AI poses to humans. They believe that open collaboration is one of the keys to mitigating that risk.
One of the great things about OpenAI is that they have a platform called the OpenAI Gym, which we’ll be making heavy use of in this course.
It allows anyone, anywhere in the world, to train their reinforcement learning agents in standard environments.
In this course, we’ll build upon what we did in the last course by working with more complex environments, specifically, those provided by the OpenAI Gym:
•CartPole
•Mountain Car
•Atari games
To train effective learning agents, we’ll need new techniques.
We’ll extend our knowledge of temporal difference learning by looking at the TD Lambda algorithm, we’ll look at a special type of neural network called the RBF network, we’ll look at the policy gradient method, and we’ll end the course by looking at Deep Q-Learning (DQN) and A3C (Asynchronous Advantage Actor-Critic).
Thanks for reading, and I’ll see you in class!

“If you can’t implement it, you don’t understand it”
•Or as the great physicist Richard Feynman said: “What I cannot create, I do not understand”.
•My courses are the ONLY courses where you will learn how to implement machine learning algorithms from scratch
•Other courses will teach you how to plug in your data into a library, but do you really need help with 3 lines of code?
•After doing the same thing with 10 datasets, you realize you didn’t learn 10 things. You learned 1 thing, and just repeated the same 3 lines of code 10 times…

Suggested Prerequisites:
•College-level math is helpful (calculus, probability)
•Object-oriented programming
•Python coding: if/else, loops, lists, dicts, sets
•Numpy coding: matrix and vector operations
•Linear regression
•Gradient descent
•Know how to build ANNs and CNNs in Theano or TensorFlow
•Markov Decision Proccesses (MDPs)
•Know how to implement Dynamic Programming, Monte Carlo, and Temporal Difference Learning to solve MDPs

WHAT ORDER SHOULD I TAKE YOUR COURSES IN?:
•Check out the lecture “Machine Learning and AI Prerequisite Roadmap” (available in the FAQ of any of my courses, including the free Numpy course)

What can you learn from this course?

✓ Build various deep learning agents (including DQN and A3C)
✓ Apply a variety of advanced reinforcement learning algorithms to any problem
✓ Q-Learning with Deep Neural Networks
✓ Policy Gradient Methods with Neural Networks
✓ Reinforcement Learning with RBF Networks
✓ Use Convolutional Neural Networks with Deep Q-Learning

What you need to start the course?

• Know reinforcement learning basics, MDPs, Dynamic Programming, Monte Carlo, TD Learning
• College-level math is helpful
• Experience building machine learning models in Python and Numpy
• Know how to build ANNs and CNNs using Theano or Tensorflow

Who is this course is made for?

• Professionals and students with strong technical backgrounds who wish to learn state-of-the-art AI techniques

Are there coupons or discounts for Advanced AI: Deep Reinforcement Learning in Python ? What is the current price?

The course costs $29.99. And currently there is a 730 discount on the original price of the course, which was $109.99. So you save $80 if you enroll the course now.
The average price is $20.1 of 1,582 Python courses. So this course is 49% more expensive than the average Python course on Udemy.

Will I be refunded if I'm not satisfied with the Advanced AI: Deep Reinforcement Learning in Python course?

YES, Advanced AI: Deep Reinforcement Learning in Python has a 30-day money back guarantee. The 30-day refund policy is designed to allow students to study without risk.

Are there any financial aid for this course?

Currently we could not find a scholarship for the Advanced AI: Deep Reinforcement Learning in Python course, but there is a $80 discount from the original price ($109.99). So the current price is just $29.99.

Who will teach this course? Can I trust Lazy Programmer Team?

Lazy Programmer Team has created 17 courses that got 51,335 reviews which are generally positive. Lazy Programmer Team has taught 199,625 students and received a 4.6 average review out of 51,335 reviews. Depending on the information available, we think that Lazy Programmer Team is an instructor that you can trust.
Artificial Intelligence and Machine Learning Engineer
Today, I spend most of my time as an artificial intelligence and machine learning engineer with a focus on deep learning, although I have also been known as a data scientist, big data engineer, and full stack software engineer.
I received my first masters degree over a decade ago in computer engineering with a specialization in machine learning and pattern recognition. I received my second masters degree in statistics with applications to financial engineering.
Experience includes online advertising and digital media as both a data scientist (optimizing click and conversion rates) and big data engineer (building data processing pipelines). Some big data technologies I frequently use are Hadoop, Pig, Hive, MapReduce, and Spark.
I’ve created deep learning models to predict click-through rate and user behavior, as well as for image and signal processing and modeling text.
My work in recommendation systems has applied Reinforcement Learning and Collaborative Filtering, and we validated the results using A/B testing.
I have taught undergraduate and graduate students in data science, statistics, machine learning, algorithms, calculus, computer graphics, and physics for students attending universities such as Columbia University, NYU, Hunter College, and The New School.
Multiple businesses have benefitted from my web programming expertise. I do all the backend (server), frontend (HTML/JS/CSS), and operations/deployment work. Some of the technologies I’ve used are: Python, Ruby/Rails, PHP, Bootstrap, jQuery (Javascript), Backbone, and Angular. For storage/databases I’ve used MySQL, Postgres, Redis, MongoDB, and more.
Browse all courses by on Classbaze.

9.3

Classbaze Grade®

10.0

Freshness

9.0

Popularity

8.2

Material

Platform: Udemy
Video: 10h 33m
Language: English
Next start: On Demand

Classbaze recommendations for you