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Algorithmic Trading & Quantitative Analysis Using Python - 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: Algorithmic Trading & Quantitative Analysis Using Python (/Thread-Algorithmic-Trading-Quantitative-Analysis-Using-Python--1054943) |
Algorithmic Trading & Quantitative Analysis Using Python - AD-TEAM - 08-04-2025 ![]() Algorithmic Trading & Quantitative Analysis Using Python Last updated 7/2022 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 8.82 GB | Duration: 19h 37m Build fully automated trading system and Implement quantitative trading strategies using Python What you'll learn Algorithmic trading and quantitative analysis using python Carrying out both technical analysis and fundamental analysis programatically API trading Requirements Intermediate level expertise in python high school level familiarity with mathematics and statistics Basic understanding of equity/forex trading Description Build a fully automated trading bot on a shoestring budget. Learn quantitative analysis of financial data using python. Automate steps like extracting data, performing technical and fundamental analysis, generating signals, backtesting, API integration etc. You will learn how to code and back test trading strategies using python. The course will also give an introduction to relevant python libraries required to perform quantitative analysis. The USP of this course is delving into API trading and familiarizing students with how to fully automate their trading strategies.You can expect to gain the following skills from this courseExtracting daily and intraday data for free using APIs and web-scrapingWorking with JSON dataIncorporating technical indicators using pythonPerforming thorough quantitative analysis of fundamental dataValue investing using quantitative methodsVisualization of time series dataMeasuring the performance of your trading strategiesIncorporating and backtesting your strategies using pythonAPI integration of your trading scriptFXCM and OANDA APISentiment Analysis Overview Section 1: Introduction Lecture 1 What Is Covered in this Course? Lecture 2 Course Prerequisites Lecture 3 Is This For Me? Lecture 4 How To Get Help Lecture 5 Anaconda Distribution Intro Lecture 6 Creating Virtual Environment (Optional) Section 2: Getting Data Lecture 7 Data Gathering Intro Lecture 8 yfinance Overview Lecture 9 yfinance - Getting Data for Multiple Stocks Lecture 10 yahoofinancials Library and Parsing JSON Data Lecture 11 yahoofinancials - Getting Data for Multiple Stocks Lecture 12 Alpha Vantage Python Library Intro Lecture 13 Alpha Vantage - Getting Data for Multiple Tickers Lecture 14 Other Free Data Resources Section 3: Web Scraping to Extract Financial Data Lecture 15 Web Scraping Vs API Based Data Extraction Lecture 16 HTML Intro Lecture 17 Web Scraping Financial Data Using Python - I Lecture 18 Web Scraping Financial Data Using Python - II Lecture 19 Web Scraping Financial Data Using Python - III Section 4: Basic Data Handling and Operations Lecture 20 Handling NaN Values Lecture 21 Basic Statistics - Familiarize Yourself With Your Data Lecture 22 Rolling Operations - Data In Motion Lecture 23 Visualization Basics - I Lecture 24 Visualization Basics - II Section 5: Technical Indicators Lecture 25 Introduction to Technical Indicators Lecture 26 Introduction to Charting Lecture 27 MACD Overview Lecture 28 MACD Implementation in Python Lecture 29 ATR and Bollinger Bands Overview Lecture 30 ATR Implementation in Python Lecture 31 Bollinger Bands Implementation in Python Lecture 32 RSI Overview and Excel Implementation Lecture 33 RSI Implementation in Python Lecture 34 ADX Overview Lecture 35 ADX Implementation in Excel Lecture 36 ADX Implementation in Python Lecture 37 Renko Overview Lecture 38 Renko Implementation in Python Lecture 39 TA-Lib Introduction Lecture 40 TA-Lib Installation and Application Section 6: Performance Measurement - KPIs Lecture 41 Introduction to Performance Measurement Lecture 42 CAGR Overview Lecture 43 CAGR Implementation in Python Lecture 44 How to Measure Volatility Lecture 45 Volatility Measures' Python Implementation Lecture 46 Sharpe Ratio and Sortino Ratio Lecture 47 Sharpe and Sortino in Python Lecture 48 Maximum Drawdown and Calmar Ratio Lecture 49 Maximum Drawdown and Calmar Ratio in Python Section 7: Backtest Your Strategies Lecture 50 Why Should I Backtest My Strategies? Lecture 51 Strategy I - Portfolio Rebalancing Lecture 52 Strategy I in Python Lecture 53 Strategy II - Resistance Breakout Lecture 54 Strategy II in Python -I Lecture 55 Strategy II in Python -II Lecture 56 Strategy III - Renko and OBV Lecture 57 Strategy III in Python Lecture 58 Strategy IV - Renko and MACD Lecture 59 Strategy IV in Python Section 8: Value Investing Lecture 60 Value Investing Overview Lecture 61 Introduction to Magic Formula Lecture 62 Magic Formula Implementation in Python Lecture 63 Updated Python Code - Yahoo-Finance Webpage Changes Lecture 64 Introduction to Piotroski F-Score Lecture 65 Piotroski F-Score Implementation in Python Lecture 66 Updated Python Code - Yahoo-Finance Webpage Changes Section 9: Building Automated Trading System on a Shoestring Budget Lecture 67 Automated/Algorithmic Trading Overview Lecture 68 Using Time Module in Python Lecture 69 FXCM Overview Lecture 70 Introduction to FXCM Terminal Lecture 71 FXCM API Lecture 72 Building an Automated Trading System - part I Lecture 73 Building an Automated Trading System - part II Lecture 74 Building an Automated Trading System - part III Lecture 75 Building an Automated Trading System - part IV Lecture 76 OANDA Overview Lecture 77 OANDA API Lecture 78 SMA Crossover Strategy using OANDA API Section 10: Bonus Section: Running Your Algorithms in Cloud Lecture 79 Why Cloud Lecture 80 Launching AWS EC2 Instance Lecture 81 Connecting To The EC2 Instance I Lecture 82 Connecting To The EC2 Instance II Lecture 83 Transferring Files to EC2 Instance Lecture 84 Scheduling/Automating Your Scripts Using Crontab Lecture 85 Keeping Track of Running Processes Lecture 86 Using Screen Command with Crontab Lecture 87 Shutting Down/Deleting EC2 Instance Section 11: Bonus Section: Sentiment Analysis Lecture 88 Why Sentiment Analysis Lecture 89 Sentiment Analysis - Intuition Lecture 90 Natural Language Processing Basics Lecture 91 Lexicon Based Sentiment Analysis Lecture 92 VADER Introduction Lecture 93 Textblob Introduction Lecture 94 Building a Sentiment Analyzer using VADER - Part I Lecture 95 Building a Sentiment Analyzer using VADER - Part II Lecture 96 Machine Learning Based Sentiment Analysis Lecture 97 ML Feature Matrix & TF-IDF Introduction Lecture 98 Building ML Based Sentiment Analyzer - Part I Lecture 99 Building a ML Based Sentiment Analyzer - Part II Lecture 100 Building a ML Based Sentiment Analyzer - Part III Lecture 101 Sentiment Analysis Application - Opportunities & Challenges Section 12: Archived Lectures Lecture 102 Archived Lectures - Important Note Lecture 103 Pandas Datareader Overview Lecture 104 Getting Data Using Pandas Datareader Lecture 105 OBV Overview and Excel Implementation Lecture 106 OBV Implementation in Python Lecture 107 Slope in a Chart Lecture 108 Slope Implementation in Python Lecture 109 Web Scraping Intro Lecture 110 Important Note - Yahoo Finance Web Scraping Lecture 111 Using Web Scraping to Extract Stock Fundamental Data - I Lecture 112 Using Web Scraping to Extract Stock Fundamental Data - II Lecture 113 Updated Web-Scraping Code - Yahoo-Finance Webpage Changes traders looking to automate strategies and building automated trading stations, data scientists seeking to work with financial data, anyone curious about quantitative analysis ![]() DDownload RapidGator NitroFlare |