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Getting Started with Forex Trading Using Python

You're reading from  Getting Started with Forex Trading Using Python

Product type Book
Published in Mar 2023
Publisher Packt
ISBN-13 9781804616857
Pages 384 pages
Edition 1st Edition
Languages
Author (1):
Alex Krishtop Alex Krishtop
Profile icon Alex Krishtop

Table of Contents (21) Chapters

Preface Part 1: Introduction to FX Trading Strategy Development
Chapter 1: Developing Trading Strategies – Why They Are Different Chapter 2: Using Python for Trading Strategies Chapter 3: FX Market Overview from a Developer's Standpoint Part 2: General Architecture of a Trading Application and A Detailed Study of Its Components
Chapter 4: Trading Application: What’s Inside? Chapter 5: Retrieving and Handling Market Data with Python Chapter 6: Basics of Fundamental Analysis and Its Possible Use in FX Trading Chapter 7: Technical Analysis and Its Implementation in Python Chapter 8: Data Visualization in FX Trading with Python Part 3: Orders, Trading Strategies, and Their Performance
Chapter 9: Trading Strategies and Their Core Elements Chapter 10: Types of Orders and Their Simulation in Python Chapter 11: Backtesting and Theoretical Performance Part 4: Strategies, Performance Analysis, and Vistas
Chapter 12: Sample Strategy – Trend-Following Chapter 13: To Trade or Not to Trade – Performance Analysis Chapter 14: Where to Go Now? Index Other Books You May Enjoy

Implementation of TA indicators in Python

I am sure you remember that any TA indicator uses a certain period as a parameter. This period means a number of data points that we take into consideration. To calculate an indicator on every bar, we start from the oldest one (the leftmost on the chart) and then move one by one, updating our dataset with each new bar.

Since we are talking about an absolutely essential thing that lies in the foundation of all TA, let me be very detailed here – probably too detailed – but I want to leave no place for ambiguity or misunderstanding in the following concepts and code samples.

Let’s start with the core concept of time series processing: the sliding window.

Sliding windows

Let’s go back to the example of a random walk (around bars and movies) that we considered in the previous section. The entire dataset, or historical data, consists of 10 data points:

S1 = {0.7, 2, 1.5, 0.3, 2.6, 1.1, 1.8, 0.45, 3.1, 2...
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