
English | April 22, 2024 | ASIN: B0D2JP1W8S | 201 pages | PDF | 2.17 Mb
Have you ever wondered how Netflix or YouTube recommends your next binge-watch or how self-driving cars navigate ?
The answer lies in Machine Learning (ML). "Machine Learning Step-by-Step" is your guide to understanding and using its incredible potential.
This handbook is designed for anyone eager to learn, regardless of their background. Whether you're a student, entrepreneur, business leader, beginner, or simply curious,
this book provides a clear, engaging path to mastering ML:
βStart from the Ground Up: Gain a solid foundation with easy-to-understand explanations of fundamental concepts, types of ML, algorithms, and data preprocessing techniques.
βMaster Essential Techniques: Regression analysis, classification, clustering methods, dimensionality reduction, and neural networks and deep learning.
βExplore Real-World Applications: Discover how ML is transforming industries like finance, asset management, healthcare, retail, and cybersecurity, with practical examples and case studies.
βImplement ML Solutions: Choosing the right tools and libraries, integrating ML into existing systems, managing projects, and teaching the subject to others.
βNavigate Ethical Considerations: Understand issues like bias, fairness, data privacy, and responsible AI development.
βStay Ahead of the Curve: Explore future trends, disruptive technologies, and how to prepare for the ever-evolving ML landscape.
This book is your complete toolkit:
β37 comprehensive chapters: from basic concepts to advanced techniques and real-world applications.
βClear and concise explanations: written in plain English with practical examples and illustrations.
βPractical advice and best practices: for implementing and scaling ML solutions.
βA focus on ethical considerations: ensuring responsible and fair development of AI.
βAudience: Suitable machine learning guide for beginners, kids, students, entrepreneurs, and business leaders.
Categories & Topics
1. Machine Learning Foundations:
βConcepts: Algorithms, data preprocessing, model evaluation, overfitting, bias-variance tradeoff
βTypes: Supervised learning (regression, classification), unsupervised learning (clustering, dimensionality reduction), reinforcement learning
βAlgorithms: Linear regression, logistic regression, decision trees, random forests, support vector machines, K-means clustering, principal component analysis, neural networks, deep learning
2. Advanced Machine Learning Techniques:
βDeep Learning Architectures: Convolutional and recurrent neural networks (CNNs) and (RNNs), LSTMs, transformers
βEnsemble Methods: Bagging, boosting, stacking
βAutoML: Automated machine learning, hyperparameter optimization
βOther Techniques: Natural language processing (NLP), reinforcement learning applications, data augmentation, synthetic data generation
3. Industry Applications:
βFinance: Algorithmic trading, asset management, risk assessment, fraud detection, personalized banking
βRetail: Customer segmentation, inventory management, recommendation systems, predictive analytics
βOther Industries: Cybersecurity, healthcare, manufacturing, agriculture, education, transportation
4. Implementing and Scaling Machine Learning:
βTools and Libraries: Scikit-learn, TensorFlow, PyTorch, Keras, and others
βCloud Computing: AWS, Google Cloud, Azure, and their ML services
βProject Management: Agile methodology, team roles, monitoring/reporting
βBig Data: Large datasets, big data technologies, real-time data processing
& More!


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βοΈ Machine Learning Step By Step Guide For Students Entrepreneurs Business Leaders & The Curious

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