Tags
Language
Tags
August 2025
Su Mo Tu We Th Fr Sa
27 28 29 30 31 1 2
3 4 5 6 7 8 9
10 11 12 13 14 15 16
17 18 19 20 21 22 23
24 25 26 27 28 29 30
31 1 2 3 4 5 6
    Attention❗ To save your time, in order to download anything on this site, you must be registered 👉 HERE. If you do not have a registration yet, it is better to do it right away. ✌

    KoalaNames.com
    What’s in a name? More than you think.

    Your name isn’t just a label – it’s a vibe, a map, a story written in stars and numbers.
    At KoalaNames.com, we’ve cracked the code behind 17,000+ names to uncover the magic hiding in yours.

    ✨ Want to know what your name really says about you? You’ll get:

    🔮 Deep meaning and cultural roots
    ♈️ Zodiac-powered personality insights
    🔢 Your life path number (and what it means for your future)
    🌈 Daily affirmations based on your name’s unique energy

    Or flip the script – create a name from scratch using our wild Name Generator.
    Filter by star sign, numerology, origin, elements, and more. Go as woo-woo or chill as you like.

    💥 Ready to unlock your name’s power?

    👉 Tap in now at KoalaNames.com

    SIMPLIFYING BIG DATA IN 7 CHAPTERS

    Posted By: naag
    SIMPLIFYING BIG DATA IN 7 CHAPTERS

    SIMPLIFYING BIG DATA IN 7 CHAPTERS
    English | February 14, 2025 | ASIN: B0DX9HTGHN | 130 pages | Epub | 2.24 MB

    Welcome to the world of Big Data. In this book I present the theory that structures Big Data, its layers, its components, its applications and its implications for the individuality of the human being.

    Throughout the text, you will discover how Big Data is transforming the way companies operate and how we can extract valuable insights from large volumes of data. From the theoretical underpinnings to the best practices and tools available, this book is an essential guide for beginners and professionals who want to excel in this ever-evolving field.

    With a practical approach, I share valuable tips for collecting, storing, processing and analyzing data. Additionally, it discusses the ethical and security challenges that come with handling sensitive information and how to properly address them.

    "Simplifying Big Data into 7 Chapters" is a treasure trove of knowledge for entrepreneurs, managers, students, and enthusiasts who want to unlock the secrets of Big Data and use it as a competitive advantage in business.
    Written in an accessible and engaging way, this book is an invitation to explore a universe of possibilities. Whether you're new to the field of Big Data or a seasoned professional looking for a refresher, this book is sure to broaden your horizons and provide you with the tools you need to gain valuable insights and turn data into tangible results.

    In this book I present:
    The fundamental concepts of Big Data and what makes it different from previous forms of data science and analytics.
    The business motivations and drivers driving big data adoption, from operational improvements to innovation.
    The 5 Vs of Datasets in Big Data Environments: Volume, Velocity, Variety, Veracity, and Value
    The comparative analysis between Data Warehouse and Big Data and the possibilities of working with hybrid platforms.
    The techniques and characteristics of working with structured, unstructured, semi-structured and metadata data.
    Applications in the various business sectors and public administration.
    How to work with Cloud Computing, virtualization, Analytics and streaming in a Big Data context.
    NoSQL, columnar databases, spatial databases, and other technologies to meet the distinct data processing requirements of Big Data.
    The components of the Big Data framework, such as MapReduce and Hadoop.
    The technological and informational architecture of the Big Data proposal.
    Aspects to consider to implement Big Data in your company.
    Issues of security, governance, ethics and impacts on society.

    Who is this book for:
    This book can be used as a textbook or complement to the disciplines that intersect with Big Data, Data Science, data processing and Internet information analysis.In addition, it can be used by professionals in information technology, data administration, data architecture, attribute engineering, business analysts and systems analysts involved in data analysis projects.