Data.Lake.Architecture.1634621174


Organizations invest incredible amounts of time and money obtaining and then storing big data in data stores called data lakes. But how many of these organizations can actually get the data back out in a useable form? Very few can turn the data lake into an information gold mine. Most wind up with garbage dumps. Data Lake Architecture will explain how to build a useful data lake, where data scientists and data analysts can solve business challenges and identify new business opportunities. Learn how to structure data lakes as well as analog, application, and text-based data ponds to provide maximum business value. Understand the role of the raw data pond and when to use an archival data pond. Leverage the four key ingredients for data lake success: metadata, integration mapping, context, and metaprocess. Bill Inmon opened our eyes to the architecture and benefits of a data warehouse, and now he takes us to the next level of data lake architecture. Table of Contents Chapter 1 Data Lakes Chapter 2 Transforming the Data Lake Chapter 3 Inside the Data Lake Chapter 4 Data Ponds Chapter 5 Generic Structure of the Data Pond Chapter 6 Analog Data Pond Chapter 7 Application Data Pond Chapter 8 Textual Data Pond Chapter 9 Comparing the Ponds Chapter 10 Using the Infrastructure Chapter 11 Search and Analysis Chapter 12 Business Value in the Data Ponds Chapter 13 Additional Topics Chapter 14 Analytical and Integration Tools Chapter 15 Archiving Data Ponds
资源截图
代码片段和文件信息

版权声明:本文内容由互联网用户自发贡献,该文观点仅代表作者本人。本站仅提供信息存储空间服务,不拥有所有权,不承担相关法律责任。如发现本站有涉嫌抄袭侵权/违法违规的内容, 请发送邮件举报,一经查实,本站将立刻删除。

发表评论

评论列表(条)