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Ultimate Machine Learning with Scikit-Learn Unleash the Power of Scikit-Learn and Python to Build Cutting-Edge
B0D3HDQNL2 pdf Master the Art of Data Munging and Predictive Modeling for Machine Learning with Scikit-Learn Key Features ? Comprehensive coverage of complete predictive modeling lifecycle, from data munging to deployment ? Gain insights into the theoretical foundations underlying powerful machine learning algorithms ? Master Python's versatile Scikit-Learn library for robust data analysis Book Description “Ultimate Machine Learning with Scikit-Learn” is a definitive resource that offers an in-depth exploration of data preparation, modeling techniques, and the theoretical foundations behind powerful machine learning algorithms using Python and Scikit-Learn. Beginning with foundational techniques, you'll dive into essential skills for effective data preprocessing, setting the stage for robust analysis. Next, logistic regression and decision trees equip you with the tools to delve deeper into predictive modeling, ensuring a solid understanding of fundamental methodologies. You will master time series data analysis, followed by effective strategies for handling unstructured data using techniques like Naive Bayes. Transitioning into real-time data streams, you'll discover dynamic approaches with K-nearest neighbors for high-dimensional data analysis with Support Vector Machines(SVMs). Alongside, you will learn to safeguard your analyses against anomalies with isolation forests and harness the predictive power of ensemble methods, in the domain of stock market data analysis. By the end of the book you will master the art of data engineering and ML pipelines, ensuring you're equipped to tackle even the most complex analytics tasks with confidence. What you will learn ? Master fundamental data preprocessing techniques tailored for both structured and unstructured data ? Develop predictive models utilizing a spectrum of methods including regression, classification, and clustering ? Tackle intricate data challenges by employing Support Vector Machines (SVMs), decision trees, and ensemble learning approaches ? Implement advanced anomaly detection methodologies and explore emerging techniques like neural networks ? Build efficient data pipelines optimized for handling big data and streaming analytics ? Solidify core machine learning principles through practical examples and illustrations Who is this book for? This book is tailored for experienced and aspiring data scientists, machine learning engineers, and AI practitioners aiming to enhance their skills and create impactful solutions using Python and Scikit-Learn. Prior experience with Python and machine learning fundamentals is recommended. Table of Contents 1. Data Preprocessing with Linear Regression 2. Structured Data and Logistic Regression 3. Time-Series Data and Decision Trees 4. Unstructured Data Handling and Naive Bayes 5. Real-time Data Streams and K-Nearest Neighbors 6. Sparse Distributed Data and Support Vector Machines 7. Anomaly Detection and Isolation Forests 8. Stock Market Data and Ensemble Methods 9. Data Engineering and ML Pipelines for Advanced Analytics Index About the Author Parag Saxena , a seasoned AI ML Data Scientist, embodies a unique blend of academic excellence and industry expertise. With a master's degree in Data Science and Analytics, his career spans vital sectors like banking, retail, and power generation. Parag is a visionary, having deployed sophisticated machine learning models, authored research papers, and shared his expertise on prestigious platforms. His technical prowess is matched by a heartfelt dedication to mentorship and collaboration, as evidenced by his leading roles in Generative AI and Machine Learning Operations. Parag is not just a Data Scientist he is a storyteller who uses data to narrate tales of trends, predictions, and insights.Read moreRead moreRead less