Tags
Language
Tags
May 2025
Su Mo Tu We Th Fr Sa
27 28 29 30 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
    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. ✌

    ( • )( • ) ( ͡⚆ ͜ʖ ͡⚆ ) (‿ˠ‿)
    SpicyMags.xyz

    Frontiers in Massive Data Analysis

    Posted By: exLib
    Frontiers in Massive Data Analysis

    Frontiers in Massive Data Analysis
    Committee on Applied and Theoretical Statistics Board on Mathematical Sciences and Their Applications; Division on Engineering and Physical Sciences
    NAS Press | 2013 | ISBN: 0309287782 9780309287784 | 191 pages | PDF | 15 MB

    This book presents the Committee on the Analysis of Massive Data's work to make sense of the current state of data analysis for mining of massive sets of data, to identify gaps in the current practice and to develop methods to fill these gaps. The issue includes the committee's recommendations, details concerning types of data that build into massive data, and information on the seven computational giants of massive data analysis.


    From Facebook to Google searches to bookmarking a webpage in our browsers, today's society has become one with an enormous amount of data. Some internet-based companies such as Yahoo! are even storing exabytes (10 to the 18 bytes) of data.
    Like these companies and the rest of the world, scientific communities are also generating large amounts of data-—mostly terabytes and in some cases near petabytes—from experiments, observations, and numerical simulation.
    However, the scientific community, along with defense enterprise, has been a leader in generating and using large data sets for many years.
    The issue that arises with this new type of large data is how to handle it—this includes sharing the data, enabling data security, working with different data formats and structures, dealing with the highly distributed data sources, and more.

    Contents
    SUMMARY
    1 INTRODUCTION
    The Challenge
    What Has Changed in Recent Years?
    Organization of This Report
    References
    2 MASSIVE DATA IN SCIENCE, TECHNOLOGY, COMMERCE, NATIONAL DEFENSE, TELECOMMUNICATIONS, AND OTHER ENDEAVORS
    Where Are Massive Data Appearing?
    Challenges to the Analysis of Massive Data
    Trends in Massive Data Analysis
    Examples
    References
    3 SCALING THE INFRASTRUCTURE FOR DATA MANAGEMENT
    Scaling the Number of Data Sets
    Scaling Computing Technology through Distributed and Parallel Systems
    Trends and Future Research
    References
    4 TEMPORAL DATA AND REAL-TIME ALGORITHMS
    Introduction
    Data Acquisition
    Data Processing, Representation, and Inference
    System and Hardware for Temporal Data Sets
    Challenges
    References
    5 LARGE-SCALE DATA REPRESENTATIONS
    Overview
    Goals of Data Representation
    Challenges and Future Directions
    References
    6 RESOURCES, TRADE-OFFS, AND LIMITATIONS
    Introduction
    Relevant Aspects of Theoretical Computer Science
    Gaps and Opportunities
    References
    7 BUILDING MODELS FROM MASSIVE DATA
    Introduction to Statistical Models
    Data Cleaning
    Classes of Models
    Model Tuning and Evaluation
    Challenges
    References
    8 SAMPLING AND MASSIVE DATA
    Common Techniques of Statistical Sampling
    Challenges When Sampling from Massive Data
    References
    9 HUMAN INTERACTION WITH DATA
    Introduction
    State of the Art
    Hybrid Human/Computer Data Analysis
    Opportunities, Challenges, and Directions
    10 THE SEVEN COMPUTATIONAL GIANTS OF MASSIVE DATA ANALYSIS
    Basic Statistics
    Generalized N-Body Problems
    Graph-Theoretic Computations
    Linear Algebraic Computations
    Optimizations
    Integration
    Alignment Problems
    Discussion
    References
    11 CONCLUSION
    APPENDIXES
    A Acronyms
    B Biographical Sketches of Committee Members
    with TOC BookMarkLinks