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Ai-Powered Algorithmic Trading: Build Using Lstm Model
![]() Ai-Powered Algorithmic Trading: Build Using Lstm Model Published 5/2025 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch Language: English | Duration: 1h 32m | Size: 768 MB Learn to Build and Backtest LSTM-Based Trading Strategies Using Technical Indicators and Real Market Data What you'll learn Understand how AI is transforming algorithmic trading Create predictive trading features from stock data Train LSTM models to predict buy, sell, or hold signals Handle imbalanced financial data using oversampling and focal loss Evaluate trading performance using accuracy, precision, recall, and confusion matrix Visualize predicted trading signals on real stock charts Backtest trading strategies using portfolio simulation Calculate Sharpe Ratio, Drawdown, and Returns for risk analysis Requirements Basic knowledge of Python programming Familiarity with Pandas, NumPy, and Matplotlib No prior trading or AI experience required - everything is explained step-by-step Description Unlock the power of Artificial Intelligence in the world of trading.In this hands-on course, you'll learn how to build, train, and backtest AI-driven algorithmic trading strategies using Python, machine learning, and deep learning tools. Whether you're from finance or tech, this course will help you turn market data into actionable trading signals using LSTM models, sentiment analysis, and advanced evaluation metrics.You'll begin with the basics of algorithmic trading, explore the role of AI, and dive deep into tools like Random Forest, Gradient Boosting, CNNs, LSTM, Reinforcement Learning, Genetic Algorithms, and Ensemble Methods. From there, you'll move into real-world implementation - loading historical stock data, creating predictive features, labeling outcomes, handling class imbalance with focal loss, and evaluating your trading strategy through backtesting and risk metrics like Sharpe Ratio and Drawdown.This course includes:Real Apple stock data for hands-on practiceFeature engineering using technical indicatorsCustom loss functions like Focal LossBuilding an LSTM model from scratchVisualizing trading signals and performanceBacktesting with capital growth simulationsBy the end, you'll walk away with a fully functional trading strategy powered by AI - plus the knowledge to apply these techniques across any stock, ETF, or crypto asset.What You'll LearnUnderstand how AI is transforming algorithmic tradingCreate predictive trading features from stock dataTrain LSTM models to predict buy, sell, or hold signalsHandle imbalanced financial data using oversampling and focal lossEvaluate trading performance using accuracy, precision, recall, and confusion matrixVisualize predicted trading signals on real stock chartsBacktest trading strategies using portfolio simulationCalculate Sharpe Ratio, Drawdown, and Returns for risk analysis Who this course is for Aspiring algorithmic traders looking to build AI-powered strategies Data scientists and ML engineers interested in finance and trading Quantitative analysts and fintech professionals exploring automation Students and researchers in finance, statistics, or computer science Anyone curious about LSTM, NLP, and deep learning for real-time trading Цитата:
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