Mastering Python for Cryptocurrency Trading: Advanced Strategies and Techniques with Certification Exam

66 casts | 13:03:24 for the total course

Python Data Science Cryptocurrency

Description

A comprehensive training on leveraging Python for effective cryptocurrency trading. Students will delve into various strategies including the Simple Moving Averages Trading Strategy, the Big Three Trading Strategy, and the Exponential Moving Average Trading Strategy. Additionally, the course covers building autocorrelation models for crypto stock prediction, providing learners with essential skills to thrive in the dynamic world of crypto trading.

  • 1. Course overview
    • 00 Course Overview - Python Crypto Trading Strategies

      4:40

  • 2. Introduction to Blockchain (Prerequisite)
    • 00 Blockchain Introduction - (Prerequisite) Introduction to Blockchain

      8:32

    • 01 What Are Blockchains And Distributed Ledgers - (Prerequisite) Introduction to Blockchain

      3:49

    • 02A What Are Bitcoin And Ethereum - (Prerequisite) Introduction to Blockchain

      5:29

  • 3. Introduction to the Stock Market
    • 01 What Do Day Traders Trade - (Pre-requisite) Stock Market

      9:46

    • 02 What Is Volatility And Standard Deviation - (Pre-requisite) Stock Market

      3:33

    • 03 What Are The Best Assets To Day Trade - (Pre-requisite) Stock Market

      4:54

    • 04 Strategies For Stock Market Trading - (Pre-requisite) Stock Market

      2:38

    • 06 Stock Market Indicators

      1:57

    • 07 Stock Market Lifecycle Trend Phases - (Pre-requisite) Stock Market

      2:21

  • 4. (Prerequisite) Introduction to Python
    • 00. Introduction

      4:48

    • 01. Intro To Python

      5:46

    • 02.01 What is Google Colab

      4:25

    • 02.02 What If I Get Errors

      2:40

    • 02.03 How Do I Terminate a Session

      2:40

    • 01. Variables

      19:20

    • 02. Type Conversion Examples

      10:07

    • 03. Operators

      28:54

    • 04. Collections

      8:25

    • 05. List Examples

      19:41

  • 5. Introduction to DataFrames with Pandas Python Library
    • 00. Setting Up Pandas - Intro to Dataframes with Pandas Pyplot Library

      2:25

    • 01. Creating A Dataframe - 01. Intro to Dataframes with Pandas Pyplot Library

      22:43

    • 02. Sorting And Series - 01. Intro to Dataframes with Pandas Pyplot Library

      19:19

    • 03. Expanding A Dataframe - 01. Intro to Dataframes with Pandas Pyplot Library

      17:15

    • 01 Getting Values And Dealing With Nan Values - 02. Intro to Dataframes with Pandas Pyplot Library

      21:29

    • 02 Dropping Rows And Columns - 02. Intro to Dataframes with Pandas Pyplot Library

      23:57

    • 01 Reading From Csv - 03. Intro to Dataframes with Pandas Pyplot Library

      19:41

    • 02 Writing To Csv - 03. Intro to Dataframes with Pandas Pyplot Library

      20:42

    • 01 Starting With An Analysis - 04. Intro to Dataframes with Pandas Pyplot Library

      21:23

    • 02 Locating Data By Labels - 04. Intro to Dataframes with Pandas Pyplot Library

      20:16

    • 03 Statistical Description Of Data - 04. Intro to Dataframes with Pandas Pyplot Library

      19:51

    • 04 Histogram Plots In Pandas - 04. Intro to Dataframes with Pandas Pyplot Library

      21:56

    • 05 Starting An Analysis Of All Our Data - 04. Intro to Dataframes with Pandas Pyplot Library

      21:13

    • 06 Continuing An Analysis Of All Our Data - 04. Intro to Dataframes with Pandas Pyplot Library

      16:52

  • 6. Introduction to Data Science with NumPy Python Library
    • 01. Introduction - 00. Intro to Data Science with Numpy Python Library

      2:34

    • 01 Creating And Reshaping Numpy Arrays - 01. Intro to Data Science with Numpy Python Library

      21:04

    • 02 Creating Standard Numpy Arrays - 02. Intro to Data Science with Numpy Python Library

      21:05

    • 03 Creating Standard 2D Arrays - 01. Intro to Data Science with Numpy Python Library

      13:52

    • 04 Attributes On Numpy Arrays - Intro to Data Science with Numpy Python Library

      19:09

    • 05 Resizing Arrays - 01. Intro to Data Science with Numpy Python Library

      13:20

    • 01 Writing An Array To File And Formating Strings - 02. Intro to Data Science with Numpy Python Library

      28:30

    • 02 Random Numbers - 02. Intro to Data Science with Numpy Python Library

      18:09

    • 03 Sorting In Numpy - 02. Intro to Data Science with Numpy Python Library

      22:57

    • 01 Calculations Within Numpy Arrays - 03. Intro to Data Science with Numpy Python Library

      22:30

    • 02 Math Functions With Numpy - 03. Intro to Data Science with Numpy Python Library

      22:57

    • 03 Integrating With Numpy - 03. Intro to Data Science with Numpy Python Library

      21:55

    • 04 Statistics With Numpy - 03. Intro to Data Science with Numpy Python Library

      20:40

    • 05 Polynomials - 03. Intro to Data Science with Numpy Python Library

      21:06

    • 06 Polynomials (Cont'd) - 03. Intro to Data Science with Numpy Python Library

      19:48

  • 7. Simple Moving Averages Trading Strategy
    • 04-00 Backtesting Simple Moving Averages Explained

      2:05

    • 01 Load data for backtesting SMA with vectorbt

      3:21

    • 02 Build trading strategies with vectorbt

      3:41

    • 03 Simulate portfolio with vectorbt

      3:41

    • 04 Visualize trading strategy with kaleido

      4:40

  • 8. Big Three Trading Strategy
    • 00 What Is The Big Three Trading Strategy

      2:28

    • 01 Big Three Trading Strategy On Binance Coin

      6:58

    • 02 Big Three Trading Strategy On 1 Year Of Stocks

      2:39

  • 9. Exponential moving average trading strategy
    • 00 Ema Trading Strategy For Crypto - Overview

      2:58

    • 01 Load Data With Cryptometrics Api

      7:54

    • 02 Visualize Historical Stock Prices With Matplotlib

      6:32

    • 03 Build Exponential Moving Average Trading Strategy

      3:55

  • 10. Build autocorrelation for crypto stock prediction
    • 00 Autocorrelation Explained For Crypto Stock Prediction

      2:46

    • 01 Load Data For Crypto Price Autocorrelation With Pandas

      5:52

    • 02 Visualize Crypto Price Data With Pyplot

      3:14

    • 03 Apply Hodrick-Prescott Filter To Data With Python

      4:11

    • 04 Calculate Autocorrelation With Python

      3:26

Created By

Mammoth Interactive is a leading online course provider in everything from learning to code to becoming a YouTube star. Mammoth Interactive courses have been featured on Harvard’s edX, Business Insider and more. Over 11 years, Mammoth Interactive has built a global student community with 3.3 million

US$19.99

  US$199.99

This course includes
  • Simple Moving Averages Trading Strategy
  • Big Three Trading Strategy
  • Exponential moving average trading strategy
  • Build autocorrelation for crypto stock prediction
Buy Now (US$19.99) ➔

Lifetime Access
30-Day Money-Back Guarantee.

Reviews
No reviews yet