Show as: Mobile

Quant Trading using Machine Learning

Training overview
1 day
44.99 USD
Next start date: Start anytime! - Online
Professional Course

Course description

Quant Trading using Machine Learning

Taught by a Stanford-educated, ex-Googler and an IIT, IIM - educated ex-Flipkart lead analyst. This team has decades of practical experience in quant trading, analytics and e-commerce.

This course takes a completely practical approach to applying Machine Learning techniques to Quant Trading

Let’s parse that.

Completely Practical: This course has just enough theory to get you started with both Quant Trading and Machine Learning. The focus is on practically applying ML techniques to develop sophisticated Quant Trading models. From setting up your own historical price database in MySQL to writing hundreds of lines of Python code, the focus is on doing from the get go.

Machine Learning Techniques: We'll cover a variety of machine learning techniques, from K-Nearest Neighbors and Decision Trees to pretty advanced techniques like Random Forests and Gradient Boosted Classifiers. But, in practice Machine Learning is not just about the algorithms. Feature Engineering, Parameter Tuning, Avoiding overfitting; these are all a part and parcel of developing Machine Learning applications and we do it all in this course.

Quant Trading: Quant Trading is a perfect example of an area where the use of Machine Learning leads to a step change in the quality of the models used. Traditional models often depend on Excel and building sophisticated models requires a huge amount of manual effort and domain knowledge. Machine Learning libraries available today allow you to build highly sophisticated models that give you much better performance with much less effort.

Who should attend?


  • Quant traders who have not used Machine learning techniques before to develop trading strategies
  • Analytics professionals, modelers, big data professionals who want to get hands-on experience with Machine Learning
  • Anyone who is interested in Machine Learning and wants to learn through a practical, project-based approach


Prerequisites: Working knowledge of Python is necessary if you want to run the source code that is provided. Basic knowledge of machine learning, especially ML classification techniques, would be helpful but it's not mandatory.

Training content

Course Objective:

Quant Trading : Financial Markets, Stocks, Indices, Futures, Return, Risk, Sharpe Ratio, Momentum Investing, Mean Reversion, Developing trading strategies using Excel, Backtesting

Machine Learning: Decision Trees, Ensemble Learning, Random Forests, Gradient Boosted Classifiers, Nearest Neighbors, Feature engineering, Overfitting, Parameter Tuning

MySQL: Set up a historical price database in MySQL using Python. 

Python Libraries : Pandas, Scikit-Learn, XGBoost, Hyperopt

Why choose QuickStart?

98% increased workplace productivity

94% instructor and course effectiveness

Partnered with vendors including Microsoft, Cisco, and Citrix

About QuickStart

Meet your career goals with QuickStart!

QuickStart exists to create world-class technologists by personalizing and individualizing training to address the massive skills gap in the IT industry. Through 20 years of research and data analysis, we’ve learned that a modern learner prefers to learn through multiple...

Read more and show all training delivered by this supplier

Contact info


1101 S Capital of Texas Hwy - Building J, Suite 202
78746 Austin Texas

Training reviews

No reviews available

Need help with your search? offers a free consultancy service to help compare training for you and your team

Request a free quote

Request a free training quote