大数据 | New Horizons for a Data-Driven Economy

作者:阁楼君

In this map, you will not only find answers and discussions about legal aspects of big data but also about social impact and education needs and requirements.

New Horizons for a Data-Driven Economy

A Roadmap for Usage and Exploitation of Big Data in Europe



By Jose Marıa Cavanillas • Edward Curry •Wolfgang Wahlster



喜欢文章推荐的书?请关注微博@英国流行每日速递,私信书名免费获取PDF下载资源。

仅供学习自阅,请勿用于商业目的!





First of all, this book is not just another approach made by a single player looking down from a corner of the world. It is the compendium of more than 2 years of work performed by a set of major European research centers and industries. It is the compilation and processed synthesis of what we all have done, prepared, foreseen, and anticipated in many aspects of this challenging technological context that is becoming the major axis of the new digitally transformed business environment.


But the most important part of the book is you, the reader. It is commonly said that “a map is useless for the one who does not know where to go.” This book is a map. An immediate goal of this book is to become a “User’s Manual” for those who want to blaze their own trail in the big data jungle. But it can also be used as a reference book for those experts who are sailing their own big data ship and want to clarify specific aspects on their journey.


blob.png

blob.png


blob.png

blob.png

blob.png

blob.png



更多大数据资料请点击下方链接:

         BIG DATA 大数据总概

 





ü  英国流行每日速递诚意推荐, enjoy!




标签:   big data 大数据

大数据 | Big Data:a Revolution That Will Transform How We Live, Work, and Think

  • 2017-03-21
  • 63

    57

  • 大数据 | Advances and Challenges in Parametric and Semi-parametric Analysis for Correlated Data

    • 2017-03-21
    • 63

      57

  • 大数据 | Big Data Analytics: A Management Perspective

    • 2017-02-03
    • 63

      57

  • 大数据 | Big Data A Primer

    • 2017-03-21
    • 63

      57

  • 大数据 | Big Data: Using Smart Big Data, Analytics and Metrics to Make Better Decisions and Improve Performance

    • 2017-02-03
    • 63

      57

    • 63

      57