What's new
Heroturko

This is a sample guest message. Register a free account today to become a member! Once signed in, you'll be able to participate on this site by adding your own topics and posts, as well as connect with other members through your own private inbox!

Udemy Reinforcement Learning for Algorithmic Trading with Python

ad-team

Trusted Editor
Trusted Editor
359020115_tuto.jpg

5.03 GB | 00:11:57 | mp4 | 1280X720 | 16:9
Genre:eLearning |Language:English

Files Included :
1 - Welcome and Introduction (22.18 MB)
2 - How to get the most out of this course (39.14 MB)
3 - Course Materials Downloads (27.04 MB)
1 - Download and Install Anaconda (63.81 MB)
2 - How to open Jupyter Notebooks (84.37 MB)
3 - How to work with Jupyter Notebooks (81.15 MB)
1 - Introduction (12.52 MB)
2 - Loading and inspecting the Dataset with Pandas (67.21 MB)
3 - Prices and Financial Returns (40.28 MB)
4 - Simple Moving Averages (SMA) (41.4 MB)
5 - Excursus Creating Technical Indicators with Pandas (24.55 MB)
6 - MACD Lines (22.7 MB)
7 - Relative Strength Index (RSI) (18.28 MB)
8 - Stochastic Oscillators & Conclusion (103.33 MB)
1 - What is ChatGPT and how does it work (17.22 MB)
10 - Prompt Engineering Techniques (Part 2) (51.34 MB)
11 - Prompt Engineering Techniques (Part 3) (70.8 MB)
2 - ChatGPT vs Search Engines (33.07 MB)
3 - Artificial Intelligence vs Human Intelligence (25.3 MB)
4 - Creating a ChatGPT account and getting started (51.63 MB)
5 - Update August 2024 (55.64 MB)
6 - Features, Options and Products around GPT models (35.09 MB)
7 - Navigating the OpenAI Website (98.84 MB)
8 - What is a Token and how do Tokens work (63.34 MB)
9 - Prompt Engineering Techniques (Part 1) (107.16 MB)
1 - Introduction and Overview (7.82 MB)
2 - Reinforcement Learning vs traditional Machine Learning (84.44 MB)
3 - Reinforcement Learning - Use Cases (68.66 MB)
4 - Reinforcement Learning - Models and Algorithms (74.07 MB)
1 - Introduction (58.32 MB)
10 - Training an RL Agent with Q-Tables (75.25 MB)
11 - Q-learning explained - the Hyperparameters (107.92 MB)
12 - Q-learning explained - Discretization of the State Space (39.45 MB)
13 - Q-learning explained - the Q-Table (66.28 MB)
14 - Q-learning explained - Visualizing the Q-Table (75.65 MB)
15 - Q-learning explained - Updating the Q-Table (115.95 MB)
16 - Testing the trained Agent (51.07 MB)
17 - Visualizing the trained Agent (31.3 MB)
18 - Improving the Agent Training (Brainstorming) (91.09 MB)
19 - Excursus Randomness and Reproducibility of random events (122.06 MB)
2 - Project Assignment (36.07 MB)
20 - Training and Testing with Reproducibility (random seed) (72.52 MB)
21 - Tuning the Hyperparameters (42.2 MB)
22 - Increasing the number of Training Episodes (50.26 MB)
23 - Visualizing the Training Process and Performance Plateaus (78.41 MB)
24 - Increasing the State Space Discretization (78.48 MB)
25 - Conclusion and Outlook (38.66 MB)
3 - One Random Episode with Human Rendering (60.75 MB)
4 - Defining the maximum number of steps per Episode (36.66 MB)
5 - The code explained - line for line (77.46 MB)
6 - Running multiple random Episodes with human rendering (89.91 MB)
7 - Performance Measurement and Success Evaluation (104.77 MB)
8 - Running multiple Episodes without human Rendering (65.49 MB)
9 - Excursus RGB Rendering with Visualization (49.22 MB)
1 - Introduction (53.13 MB)
10 - SavingLoading and Testing a trained Agent (50.93 MB)
11 - The trained Agent live in Action (20.6 MB)
2 - One Random Episode with Human Rendering (80.14 MB)
3 - Running multiple random Episodes with human rendering (11.04 MB)
4 - Performance Measurement and Success Evaluation (22.54 MB)
5 - Running multiple Episodes without human Rendering (14.29 MB)
6 - Saving and visualizing successful Episodes (24.59 MB)
7 - Creating an appropriate Observation Space for Training (77.47 MB)
8 - State Space Discretization (34.54 MB)
9 - Training a RL Agent for the Lunar Lander (71.44 MB)
1 - Introduction and Assignment (28.92 MB)
10 - Reinforcement Learning with multiple Episodes (95.09 MB)
11 - Hyperparameter Optimization (46.56 MB)
12 - Testing the Agent on new Data (78.21 MB)
13 - The Importance of Trading Costs (38.8 MB)
14 - Modifying the Rewards Function (96.25 MB)
15 - Performance Evaluation and Identifying Overfitting (34.37 MB)
2 - Loading and Preparing the Dataset (22.71 MB)
3 - Splitting into Training and Test Set (20 MB)
4 - Discretization and Quantile Binning (Part 1) (70.3 MB)
5 - Discretization and Quantile Binning (Part 2) (35.99 MB)
6 - Discretization and Quantile Binning (Part 3) (67.52 MB)
7 - Trading Profits and Losses (47.45 MB)
8 - Introduction to Agent Training (one Episode) (61.02 MB)
9 - Training of an Algo Trading Agent - explained (120.11 MB)

Screenshot
VouKCXXJ_o.jpg


 

Feel free to post your Udemy Reinforcement Learning for Algorithmic Trading with Python Free Download, torrent, subtitles, free download, quality, NFO, Dangerous Udemy Reinforcement Learning for Algorithmic Trading with Python Torrent Download, free premium downloads movie, game, mp3 download, crack, serial, keygen.

Top