Digital Preservation Metadata for Practitioners: Implementing PREMIS
2016 | ISBN: 3319437615 | English | 266 Pages | PDF | 9 MB
This book begins with an introduction to fundamental issues related to digital preservation metadata before proceeding to in-depth coverage of issues concerning its practical use and implementation. It helps readers to understand which options need to be considered in specifying a digital preservation metadata profile to ensure it matches their individual content types, technical infrastructure, and organizational needs. Further, it provides practical guidance and examples, and raises important questions. It does not provide full-fledged implementation solutions, as such solutions can, by definition, only be specific to a given preservation context. As such, the book effectively bridges the gap between the formal specifications provided in a standard, such as the PREMIS Data Dictionary - a de-facto standard that defines the core metadata required by most preservation repositories - and specific implementations.
Anybody who needs to manage digital assets in any form with the intent of preserving them for an indefinite period of time will find this book a valuable resource. The PREMIS Data Dictionary provides a data model consisting of basic entities (objects, agents, events and rights) and basic properties (called "semantic units") that describe them. The key challenge addressed is that of determining which information one needs to keep, together with one's digital assets, so that they can be understood and used in the long-term - in other words, exactly which metadata one needs.
The book will greatly benefit beginners and current practitioners alike. It is equally targeted at digital preservation repository managers and metadata analysts who are responsible for digital preservation metadata, as it is at students in Library, Information and Archival Science degree programs or related fields. Further, it can be used at the conception stage of a digital preservation system or for self-auditing an existing system.
Official New Features Guide to Sybase ASE 15
Oracle 12c: SQL, 3 edition
Text Analytics with Python: A Practical Real-World Approach to Gaining Actionable Insights from your
Beginning Apache Pig: Big Data Processing Made Easy
DevOps, DBAs, and DBaaS: Managing Data Platforms to Support Continuous Integration
Pro Apache Phoenix: An SQL Driver for HBase
Cassandra: Data Warehousing, Data Modelling and Database Administration (Big Data and NoSQL Book 1)
Microsoft SQL Server 2000 Programming
MongoDB in Action
Brad's Sure Guide to SQL Server Maintenance Plans
This site does not store any files on its server. We only index and link to content provided by other sites. Please contact the content providers to delete copyright contents if any and email us, we'll remove relevant links or contents immediately.
Real-World Machine Learning(2574)
Data Analytics: Models and Algorithms for (2397)
Mastering Data Mining with Python - Find p(2279)
Practical Data Analysis - Second Edition(2166)
Python Data Science Handbook: Essential To(2108)
Principles of Data Mining, 3rd edition(2009)
Tableau: Creating Interactive Data Visuali(1900)
Mastering Social Media Mining with Python(1852)
Beginning SQL Queries: From Novice to Prof(1848)
Introduction to Artificial Intelligence(1845)
Big Data Analytics with Spark and Hadoop(1842)
Murach's MySQL, 2nd Edition(1794)
Text Analytics with Python: A Practical Re(1732)
R: Unleash Machine Learning Techniques(1687)
Algorithms of the Intelligent Web, 2nd Edi(1650)