Machine Learning And Data Science Basics


Download Machine Learning And Data Science Basics PDF/ePub or read online books in Mobi eBooks. Click Download or Read Online button to get Machine Learning And Data Science Basics book now. This website allows unlimited access to, at the time of writing, more than 1.5 million titles, including hundreds of thousands of titles in various foreign languages.

Download

Machine Learning and Data Science Basics


Machine Learning and Data Science Basics

Author: Cybellium

language: en

Publisher: Cybellium Ltd

Release Date:


DOWNLOAD





Your Essential Guide to Understanding Data-driven Technologies In a world inundated with data, the ability to harness its power through machine learning and data science is a vital skill. "Machine Learning and Data Science Basics" is your gateway to unraveling the complexities of these transformative technologies, offering a comprehensive introduction to the fundamental concepts that drive data-driven decision-making. About the Book: In an era where data has become the driving force behind innovation and growth, understanding the principles of machine learning and data science is no longer optional—it's essential. "Machine Learning and Data Science Basics" demystifies these disciplines, making them accessible to beginners while providing valuable insights for those looking to expand their knowledge. Key Features: Foundation Building: Start your journey by grasping the core concepts of data science, machine learning, and their intersection. Understand how data drives insights and empowers informed decisions. Data Exploration: Dive into data exploration techniques, learning how to clean, transform, and prepare data for analysis. Discover the crucial role data quality plays in obtaining accurate results. Machine Learning Essentials: Uncover the basics of machine learning algorithms, including supervised and unsupervised learning. Explore how algorithms learn patterns from data and make predictions or classifications. Feature Engineering: Learn the art of feature engineering—the process of selecting and transforming relevant data attributes to improve model performance and accuracy. Model Evaluation: Delve into model evaluation techniques to assess the performance of machine learning models. Understand metrics such as accuracy, precision, recall, and F1 score. Introduction to Data Science Tools: Familiarize yourself with essential data science tools and libraries, such as Python, NumPy, pandas, and scikit-learn. Gain hands-on experience with practical examples. Real-World Applications: Explore case studies showcasing how machine learning and data science are applied across industries. From recommendation systems to fraud detection, understand their impact on diverse domains. Why This Book Matters: In a landscape driven by data, proficiency in machine learning and data science is a competitive advantage. "Machine Learning and Data Science Basics" empowers individuals, students, and professionals to build a strong foundation in these fields, enabling them to contribute meaningfully to data-driven projects. Who Should Read This Book: Students and Beginners: Build a solid understanding of the principles underlying machine learning and data science. Professionals Seeking Knowledge: Enhance your expertise by familiarizing yourself with foundational concepts. Business Leaders: Grasp the potential of data-driven technologies to make informed strategic decisions. Embark on Your Data Journey: The era of data-driven decision-making is here to stay. "Machine Learning and Data Science Basics" equips you with the knowledge needed to embark on this exciting journey. Whether you're a novice eager to understand the basics or a professional looking to enhance your skill set, this book will guide you through the transformative landscape of machine learning and data science, setting the stage for continued learning and growth. © 2023 Cybellium Ltd. All rights reserved. www.cybellium.com

Data Science for Beginners


Data Science for Beginners

Author: Alex Campbell

language: en

Publisher:

Release Date: 2021-01-12


DOWNLOAD





Do you wonder what the fascination is around data these days? How do we obtain insights from this data? Do you know what a data scientist does? What is artificial intelligence and machine learning? Are these the same as data science? What does it take to become a data scientist? If you have ever wondered about these questions, you have come to the right place!There are many resources and courses online that you can use to learn more about data science, but with so much information available, it can become overwhelming. One of the best ways to learn about data science is to understand different machine learning concepts, statistics, and artificial intelligence to help you design models to perform an analysis.This book has all the information you need to learn what data science is, and what the prerequisites are to become a data scientist. If you're a beginner or if you already have experience in data science, this book will have something for you.In this book, you will: Learn what data science is about.Discover the difference between data science and business intelligence.Explore the tools required for data science.Find out the technical and non-technical skills every data scientist must have.Figure out how to create a visualization of the data set with clear and easy examples.Get advice on developing a Predictive Model Using R.Uncover detailed applications of data science.And much more!The book has been structured with easy-to-understand sections to help you learn everything you need to know about data science. In this book you will learn about the prerequisites of data science and the skills you need to become a data scientist. So, what are you waiting for? Grab your copy of this comprehensive guide now

Data Science Basics


Data Science Basics

Author: Zoe Codewell

language: en

Publisher: Publifye AS

Release Date: 2025-01-13


DOWNLOAD





Data Science Basics offers a comprehensive introduction to transforming raw data into actionable insights, structured around three fundamental pillars: exploratory data analysis, statistical visualization, and machine learning applications. This practical guide stands out for its problem-first approach, introducing technical concepts as solutions to real-world analytical challenges rather than abstract theories, making it particularly valuable for aspiring analysts and business professionals. The book's progression is thoughtfully organized across four main sections, beginning with essential data manipulation techniques and advancing through visualization methods, statistical analysis, and machine learning implementations. What sets this resource apart is its emphasis on combining technical proficiency with critical thinking and clear communication, illustrated through diverse case studies from business, healthcare, and scientific research. The content bridges theoretical understanding with practical application through hands-on exercises using Python and R programming languages. Throughout the text, readers encounter real-world datasets and practical examples that demonstrate the universal applicability of data science methods. The book maintains accessibility while covering complex topics, using clear explanations and relevant examples to build a solid foundation in data literacy. By incorporating interactive exercises and end-of-chapter projects, it enables readers to develop practical problem-solving skills while mastering essential concepts in statistical analysis, data visualization, and machine learning fundamentals.