![]() |
Mql5 Machine Learning 01: Neural NetWorks For Algo-Trading - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Mql5 Machine Learning 01: Neural NetWorks For Algo-Trading (/Thread-Mql5-Machine-Learning-01-Neural-NetWorks-For-Algo-Trading--481905) |
Mql5 Machine Learning 01: Neural NetWorks For Algo-Trading - AD-TEAM - 07-19-2024 ![]() Mql5 Machine Learning 01: Neural Networks For Algo-Trading Published 12/2023 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 5.41 GB | Duration: 8h 13m A firm and steadfast introduction to Machine Learning and Neural network application in Algorithmic trading with MQL5
[b]What you'll learn[/b] Introduction to Data science Introduction to Artificial intelligence Introduction to Machine learning Coding Neural networks in MQL5 Training Neural Networks in MQL5 [b]Requirements[/b] MQL5 Beginner knowledge [b]Description[/b] In this course, our primary objective is to introduce you to the realm of Machine learning with neural networks using the most powerful algorithmic trading language, MQL5. Our aim is to give you a solid foundation to principles and concepts you will need in developing self optimizing softwares that learn from data the same way that the human brain learns.This course is structured for complete beginners to machine learning. There is no prior knowledge of statistics, linear algebra or complex mathematical understanding needed. You will be breast fed everything and we will simplify all processes and content without eliminating its value or impact in your learning.In this course, we shall first introduce you to data science and how it relates to artificial intelligence and machine learning. Then we shall take a closer look at machine learning and the types of models involved in machine learning processes. I shall then briefly introduce you to the world of Neural networks, the types of neural networks commonly used in algorithmic trading and the processes involved in designing a neural network model.To get an idea of the concepts and processes involved in neural network calculations, training and prediction, we shall build a very simple neural network in excel from scratch and train it to identify a buy signal from the RSI indicator and Moving average. This will be very useful in helping you understand the foundation of supervised learning with neural networks, enabling you to follow through the MQL5 coding process with ease.In this course, we shall use matrices and vector data types instead of simple arrays to store most of our data. So we shall introduce you to these new datatypes from scratch by looking at their declaration, their initialization and how to manipulate them.We shall then code a neural network on MQL5 from scratch, which aims to find hidden patterns in the RSI and Bollinger band indicators that are suggestive of a bullish market or a bearish market. We shall do this by training our neural network using back propagation to identify and classify the market into bullish and bearish classes.Join us in this course and prepare to be astonished by the sheer power of neural networks. This course is not for the faint of heart, but for those who dare to explore the boundless frontiers of artificial intelligence. Prepare to be challenged, immersed, and captivated as you embark on this intellectual adventure.So Click that enroll button now!! And Unleash your curiosity, Overview Section 1: Overview of Machine learning Lecture 1 Data science, Artificial intelligence and Machine learning Lecture 2 Types of Machine learning Lecture 3 Introduction to Neural Networks Lecture 4 Feed Forward Neural Network Architecture Section 2: Introduction to Neural Networks Lecture 5 ForwardPass on a spreadsheet Lecture 6 Mean squared error on a spread sheet Lecture 7 Backward pass on a spread sheet Lecture 8 Gradient descent on a spread sheet Section 3: Vector and Matrix Datatypes Lecture 9 Linear Algebra, Vectors and Matrices Lecture 10 Declaring Matrices and Vectors Lecture 11 Initializing Matrices and Vectors Lecture 12 Copying Data into Matrices and Vectors Lecture 13 Copying Timeseries Data into Matrices and Vectors Lecture 14 Matrices and Vector Operations Lecture 15 Manipulating Matrices Section 4: Data Collection Lecture 16 Neural Network Architecture Lecture 17 General EA parameters Lecture 18 Setting the Live calculation interval Lecture 19 Creating Data Vessels Lecture 20 Initializing Handles Lecture 21 Collecting indicator Data Lecture 22 Data Normalization Lecture 23 Initializing Weights and Bias Section 5: Forward Pass Lecture 24 Converting Matrices to Vectors Lecture 25 Converting Vectors to Matrices Lecture 26 Neuron Calculations Lecture 27 Forward Function Section 6: Neural Network Training Lecture 28 Searching for Patterns Lecture 29 Removing an index from a Vector Lecture 30 Removing Matrix Rows and Columns Lecture 31 Confusion Matrix Declaration Lecture 32 Populating the Confusion Matrix Lecture 33 Model Accuracy and Precision Lecture 34 Recall / Sensitivity Calculation Lecture 35 Specificity calculation Lecture 36 F1 Score calculation Lecture 37 Support calculation Lecture 38 Predictive Metrics averages Lecture 39 Creating Data classes Lecture 40 One Hot Encoding Lecture 41 Loss Function Options Lecture 42 Batch Forward Pass Lecture 43 Back Propagation training Lecture 44 Prediction Presentation Lecture 45 Model Training Section 7: Model Testing Lecture 46 Displaying Probability Signals Lecture 47 Visually testing the model Lecture 48 Assignment Section 8: Conclusion Lecture 49 Conclusion Anyone wishing to use machine learning in algorithmic trading ![]() |