Original price was: $594.00.Current price is: $70.00.

In Stock

Digital Download: You will receive a download link via your order email
Save up to 85% compared to Salepage prices. In addition, earn additional points. Save more on your next order.

Please contact email: [email protected] if you have any questions about this course.

PURCHASE THIS COURSE, YOU ACCUMLATE: 70 POINTs!


Description

Buy Dr. Thomas Starke – Deep Reinforcement Learning in Trading Course at esyGB. You will have immediate access to the digital downloads in your account or your order email.

Dr. Thomas Starke - Deep Reinforcement Learning in Trading1Dr. Thomas Starke – Deep Reinforcement Learning in Trading

Apply reinforcement learning to create, backtest, paper trade and live trade a strategy using two deep learning neural networks and replay memory. Learn to quantitatively analyze the returns and risks. Hands-on course in Python with implementable techniques and a capstone project in financial markets.

LIVE TRADING

  • List and explain the need for reinforcement learning to tackle the delayed gratification experiment
  • Describe states, actions, double Q-learning, policy, experience replay and rewards.
  • Explain exploitation vs exploration tradeoff
  • Create and backtest a reinforcement learning model
  • Analyse returns and risk using different performance measures
  • Practice the concepts on real market data through a capstone project
  • Explain the challenges faced in live trading and list the solutions for them
  • Deploy the RL model for paper and live trading

SKILLS COVERED

Finance and Math Skills

  • Sharpe ratio
  • Returns & Maximum drawdowns
  • Stochastic gradient descent
  • Mean squared error

Python

  • Pandas, Numpy
  • Matplotlib
  • Datetime, TA-lib
  • For loops
  • Tensorflow, Keras, SGD

Reinforcement Learning

  • Double Q-learning
  • Artificial Neural Networks
  • State, Rewards, Actions
  • Experience Replay
  • Exploration vs Exploitation

PREREQUISITES
This course requires a basic understanding of financial markets such as buying and selling of securities. To implement the strategies covered, the basic knowledge of “pandas dataframe”, “Keras” and “matplotlib” is required. The required skills are covered in the free course, ‘Python for Trading: Basic’, ‘Introduction to Machine Learning for Trading’ on Quantra. To gain an in-depth understanding of Neural Networks, you can enroll in the ‘Neural Networks in Trading’ course which is recommended but optional.

Deep Reinforcement Learning in Trading by Dr. Thomas Starke, what is it included (Content proof: Watch here!)

Section 1: Introduction

Section 2: Need for Reinforcement Learning

Section 3: State, Actions and Rewards

Section 4: Q Learning

Section 5: State Construction

Section 6: Policies in Reinforcement Learning

Section 7: Challenges in Reinforcement Learning

Section 8: Initialise Game Class

Section 9: Positions and Rewards

Section 10: Input Features

Section 11: Construct and Assemble State

Section 12: Game Class

Section 13: Experience Replay

Section 14: Artificial Neural Network Concepts

Section 15: Artificial Neural Network Implementation

Section 16: Backtesting Logic

Section 17: Backtesting Implementation

Section 18: Performance Analysis: Synthetic Data

Section 19: Performance Analysis: Real World Price Data

Section 20: Automated Trading Strategy

Section 21: Paper and Live Trading

Section 22: Capstone Project

Section 23: Future Enhancements

Section 24 (Optional): Python Installation

Section 25: Course Summary

ABOUT AUTHOR

Dr. Starke

Dr. Starke has a Ph.D. in Physics and currently leads the quant-trading team in one of the leading prop-trading firms in Australia, AAAQuants, as its CEO. He has also held the senior research fellow position at Oxford University. Dr. Starke has previously worked at the proprietary trading firm Vivienne Court, and at Memjet Australia, the world leader in highspeed printing. He has led strategic research projects for Rolls-Royce Plc (UK) and is also the co-founder of the microchip design company.

WHY QUANTRA?

screenshot 3 3 - eSy[GB]
Gain more in less time
screenshot 4 3 1 - eSy[GB]
Get taught by practitioners
screenshot 5 2 - eSy[GB]
Learn at your own pace
screenshot 6 1 1 - eSy[GB]
Get data & strategy models to practice on your own

USER TESTIMONIALS

Manogane Rammala

Graduate in Investment Management, University of Pretoria

In its current form, the course is already comprehensive to a very high degree. All of the content in sections 1, 2, and 3 really helps in building an understanding regarding the deep RL trading system. I would compare this course to a suit that would have to grow into. I am going to revisit the section on ‘experience replay’ to get a better grip on that subject matter. The capstone project will also be very educational from the perspective of experimentation. To summarize, I’d say that this course will be the greatest learning material for RL in the financial markets for a very long time. Thank you for making it available!

Vignesh Patel

Senior Associate, Cognizant, India

Deep Reinforcement Learning as a concept is vast and complex. In this course, the content is broken down into smaller specific topics that help you grasp the subject at hand. In the end, everything is bought back together seamlessly for you to see the full picture clearly. I love how the complex concepts are made easy to understand, so much so that I was able to do the capstone project at the end of the course all by myself. I only referred to the model solution after I successfully made the model in the capstone project on my own. This course has definitely increased my understanding and clarity on Deep Reinforcement learning.

Vinod Pandiripalli

Data Scientist, Franklin Templeton. India

The Deep Reinforcement Learning course has definitely opened a gate and brought me closer to my goal to achieve financial independence. It has given me great confidence in the area of Algorithmic Trading. The course is organised and designed in such a way that it made it easier for me to grasp the topics faster. The course was divided into smaller modules, which further helped me understand the concepts in greater depth. This course is a complete package, everything that you need to learn, is already available in the course. As a Data Scientist, was also able to upskill myself in the same domain, all thanks to this course.


Sale Page: https://quantra.quantinsti.com/course/deep-reinforcement-learning-trading
Archive: https://archive.ph/wip/mIAQH

Delivery Method

– After your purchase, you’ll see a View your orders link which goes to the Downloads page. Here, you can download all the files associated with your order.
– Downloads are available once your payment is confirmed, we’ll also send you a download notification email separate from any transaction notification emails you receive from esy[GB].
– Since it is a digital copy, our suggestion is to download and save it to your hard drive. In case the link is broken for any reason, please contact us and we will resend the new download link.
– If you cannot find the download link, please don’t worry about that. We will update and notify you as soon as possible at 8:00 AM – 8:00 PM (UTC+8).
Thank You For Shopping With Us!

Buy the Dr. Thomas Starke – Deep Reinforcement Learning in Trading course at the best price at esy[GB]. Upon completing your purchase, you will gain immediate access to the downloads page. Here, you can download all associated files from your order. Additionally, we will send a download notification email to your provided email address.

Unlock your full potential with Dr. Thomas Starke – Deep Reinforcement Learning in Trading courses. Our meticulously designed courses are intended to help you excel in your chosen field.

Why wait? Take the first step towards greatness by acquiring our Dr. Thomas Starke – Deep Reinforcement Learning in Trading courses today. We offer a seamless and secure purchasing experience, ensuring your peace of mind. Rest assured that your financial information is safeguarded through our trusted payment gateways, Stripe and PayPal.

Stripe, known for its robust security measures, provides a safe and reliable payment process. Your sensitive data remains confidential throughout the transaction thanks to its encrypted technology. Your purchase is fully protected.

PayPal, a globally recognized payment platform, adds an extra layer of security. With its buyer protection program, you can make your purchase with confidence. PayPal ensures that your financial details are safeguarded, allowing you to focus on your learning journey.

Is it secure? to Use of?
  • Your identity is kept entirely confidential. We do not share your information with anyone. So, it is absolutely safe to buy the Dr. Thomas Starke – Deep Reinforcement Learning in Trading course.
  • 100% Safe Checkout Privateness coverage
  • Communication and encryption of sensitive data.
  • All card numbers are encrypted using AES with a 256-bit key at rest. Transmitting card numbers occurs in a separate hosting environment and does not share or store any data.
How can this course be delivered?
  • After your successful payment this “Dr. Thomas Starke – Deep Reinforcement Learning in Trading course”, Most of the products will come to you immediately. But for some products were posted for offer. Please wait for our response, it might take a few hours due to the time zone difference.
  • If this occurs, please be patient. Our technical department will process the link shortly after, and you will receive notifications directly via email. We appreciate your patience.
What Shipping Methods Are Available?
How Do I Track Order?
  • We promptly update the status of your order after your payment is completed. If, after 7 days, there is no download link, the system will automatically process a refund.
  • We value your feedback and are eager to hear from you. Please do not hesitate to reach out via email us with any comments, questions and suggestions.
Shop
Sidebar
0 Cart
Dr. Thomas Starke Deep Reinforcement Learning in Trading 250x343 1 - eSy[GB]
Dr. Thomas Starke – Deep Reinforcement Learning in Trading
Original price was: $594.00.Current price is: $70.00. Add to cart