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Welcome to our deep dive into the intricacies of algorithmic trading models and the often misunderstood concepts of overfitting and underfitting. In this video, we explore the truth about how trading strategies are actually developed and optimized, providing you with insights into why and how certain algorithmic trading models succeed. Algorithmic trading, like any advanced artificial intelligence or machine learning operation, occasionally faces the challenge of overfitting—where models perform well on historical data but fail to predict future market behaviors accurately. However, what if we told you that sometimes, what seems like overfitting could actually be strategic optimization? We begin by clarifying a common misconception: our trading indicators, such as moving averages, Bollinger bands, VWAP, MACD, and RSI, are not subjected to fitting or optimization. Instead, our focus is strictly on optimizing trade management variables such as TP (Take Profit) and SL (Stop Loss) distances. This approach is visualized through our use of heatmaps, where we analyze the TP/SL ratios and SL coefficients to evaluate performance. Understanding the indicators' performance through these heatmaps is crucial. A setup showing consistently positive returns across various configurations suggests a robust indicator with potential market advantage, regardless of TP and SL settings. Conversely, a pattern of negative returns indicates an unsuitable indicator for trading. This video also addresses the concept of variance in trading models. Low variance among model outputs suggests stability and less risk of overfitting, whereas high variance indicates sensitivity to specific data points, which can lead to poor generalization on new data. By the end of this video, you will understand how to identify and leverage the best parameters for your trading strategies, ensuring that they are adaptable to changing market conditions without falling into the trap of extreme overfitting. If you find this analysis helpful, please support our channel by liking this video and subscribing for more insights. Don't forget to leave your thoughts and questions in the comments section below. Your engagement helps us cover more topics that matter to traders like you. Live trading bot example with code : • Live Trading Bot Strategy In Python Optimize trading models: • Maximize Trading Profits with Python ... °°° Discount Vouchers for my Algorithmic Trading and Python courses: 💲 Algorithmic Trading Strategies Course: https://bit.ly/CouponAlgorithmicTrading 💲 Data Analysis with Numpy and Pandas: https://bit.ly/CouponDataAnalysis 💲 Machine Learning In Algorithmic Trading: https://bit.ly/CouponMachineLearningT...