6 Live Sentiment Analysis Trading Bots using Python

Build 6 Live Crypto & Stocks Sentiment Analysis Trading Bots using Reddit, Twitter & News Articles
4.25 (118 reviews)
Udemy
platform
English
language
Other
category
6 Live Sentiment Analysis Trading Bots using Python
1 487
students
5 hours
content
Apr 2021
last update
$19.99
regular price

Why take this course?

🚀 Course Title: 6 Live Sentiment Analysis Trading Bots using Python

🎓 Course Headline: Build 6 Live Crypto & Stocks Sentiment Analysis Trading Bots using Reddit, Twitter & News Articles


Welcome to the most comprehensive Sentiment Analysis & Machine Learning Algorithmic Trading course on Udemy!

Are you ready to dive into the exciting world of algorithmic trading and harness the power of artificial intelligence to predict market trends? Whether you're a financial enthusiast, an aspiring data scientist, or a seasoned coder looking to expand your expertise – this course is tailored for you! 📊✨

Why Enroll in This Course?

  • Master the Skills: Learn the essential skills and tools needed to develop your own trading algorithms.
  • State-of-the-Art NLP: Apply advanced Natural Language Processing (NLP) algorithms to enhance your trading strategies.
  • Live Data Scraping: Master web scraping techniques for financial websites, gathering real-time data to inform your trades.
  • Custom Datasets: Build and customize your own datasets with Bullish/Bearish labels to tailor any trading strategy you envision.
  • Trade Cryptocurrencies and Stocks: Develop bots that trade on crypto markets, social media sentiment like Reddit and Twitter, and news articles.
  • Real Money Making: Gain the knowledge to potentially make money through algorithmic trading.

What You'll Learn:

  • How to develop trading algorithms using Python.
  • Applying NLP for financial data analysis.
  • Web scraping techniques for live trading data.
  • Building datasets with labeled sentiments to guide your trading strategies.
  • Creating trading bots for crypto markets, Reddit, Twitter, and news outlets.
  • Implementing these strategies live on an exchange platform.

Why Choose This Course? 🏆 This course is a step-by-step guide to creating state-of-the-art trading algorithms with practical, hands-on experience. You'll learn through building real bots that can be applied in the live market, ensuring you have the skills to implement your own trading algorithm ideas.

Included in the Course:

  • A Bitcoin Reddit Trading Bot.
  • A Dogecoin Reddit Trading Bot.
  • A Bitcoin Twitter Trading Bot.
  • A Gold Twitter Trading Bot.
  • A Tesla News Trading Bot.
  • An NIO News Trading Bot.
  • Plus, much more to get you started on your journey into algorithmic trading! 🚀💻

Who Is This Course For?

  • If you're fascinated by cutting-edge technology and its application in financial markets.
  • If you have a passion for Deep Learning/AI or Quantitative Finance and want to deepen your understanding.
  • If you're eager to learn about the latest technologies and how they can be leveraged to trade effectively.

Course Prerequisites:

  • A solid understanding of Python is essential to make the most out of this course.

Get ready to embark on an exciting journey into the world of algorithmic trading with Python! Whether you're a beginner or an expert, this course will equip you with the knowledge and skills to navigate the financial markets using sentiment analysis and machine learning algorithms. 🌐🤖💰

Course Gallery

6 Live Sentiment Analysis Trading Bots using Python – Screenshot 1
Screenshot 16 Live Sentiment Analysis Trading Bots using Python
6 Live Sentiment Analysis Trading Bots using Python – Screenshot 2
Screenshot 26 Live Sentiment Analysis Trading Bots using Python
6 Live Sentiment Analysis Trading Bots using Python – Screenshot 3
Screenshot 36 Live Sentiment Analysis Trading Bots using Python
6 Live Sentiment Analysis Trading Bots using Python – Screenshot 4
Screenshot 46 Live Sentiment Analysis Trading Bots using Python

Loading charts...

Related Topics

3916130
udemy ID
15/03/2021
course created date
17/04/2021
course indexed date
Bot
course submited by