Monte Carlo Backtesting for Profitable Trading Strategies
.MP4, AVC, 1280x720, 30 fps | English, AAC, 2 Ch | 5h | 3.06 GB
Instructor: Dr Ziad Francis
.MP4, AVC, 1280x720, 30 fps | English, AAC, 2 Ch | 5h | 3.06 GB
Instructor: Dr Ziad Francis
Mastering Monte Carlo Backtesting for Profitable Trading: A Step-by-Step Guide to Strategy Optimization
What you'll learn
- Apply Monte Carlo simulations to model and forecast financial market behaviors, understanding the impact of randomness and probability on trading outcomes.
- Analyze and backtest trading strategies using Monte Carlo techniques to assess performance under varying market conditions and reduce the risk of overfitting.
- Evaluate portfolio risk and optimize asset allocations by simulating multiple market scenarios, providing insights into potential returns and volatility.
- Implement Monte Carlo methods for risk management in trading, learning to calculate Value at Risk (VaR), simulate drawdowns, and enhance strategy robustness in
Requirements
- Python basics
- Backtesting Strategies in Python
- Basic Statistics and Probability
Description
Are you ready to take your trading strategies to the next level? In Mastering Monte Carlo Backtesting for Profitable Trading, you’ll discover a powerful approach to designing, testing, and optimizing your trading ideas. Through a blend of Monte Carlo simulations, trade resampling, and data-driven analysis, this course will show you how to stress-test any strategy against a wide range of market conditions. By the end, you’ll have a proven toolkit to evaluate and refine your quantitative trading or algorithmic trading systems for consistent profitability.
Key Highlights:
- Foundations of Monte Carlo Method: Learn how to generate synthetic price paths and evaluate performance under various market scenarios.
- Robust Strategy Development: Explore backtesting best practices, discover hidden weaknesses, and avoid overfitting pitfalls.
- Practical Implementation: Get hands-on experience with Python code snippets for trade-level bootstrapping and risk modeling.
- Advanced Stress Testing: Integrate parameter perturbations and regime shifts to see how your strategies hold up during market shocks.
- Real-World Applications: Walk through case studies that illustrate how Monte Carlo simulations can help you assess strategy robustness, risk, and improve decision-making.
This comprehensive course gives you the skills to build risk-aware trading systems using the Monte-Carlo method. Enroll now and gain the confidence to navigate the markets with a data-driven and scientifically grounded approach to trading success.
Who this course is for:
Intermediate level traders learning python and algorithmic trading to improve and enhance their trading experience