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E-raamat: Human Capital Systems, Analytics, and Data Mining [Taylor & Francis e-raamat]

(Golden Gate University, California, USA)
  • Taylor & Francis e-raamat
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  • Tavahind: 171,46 €
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Human Capital Systems, Analytics, and Data Mining provides human capital professionals, researchers, and students with a comprehensive and portable guide to human capital systems, analytics and data mining. The main purpose of this book is to provide a rich tool set of methods and tutorials for Human Capital Management Systems (HCMS) database modeling, analytics, interactive dashboards, and data mining that is independent of any human capital software vendor offerings and is equally usable and portable among both commercial and internally developed HCMS.





The book begins with an overview of HCMS, including coverage of human resource systems history and current HCMS Computing Environments. It next explores relational and dimensional database management concepts and principles. HCMS Instructional databases developed by the Author for use in Graduate Level HCMS and Compensation Courses are used for database modeling and dashboard design exercises.





Exciting knowledge discovery and research Tutorials and Exercises using Online Analytical Processing (OLAP) and data mining tools through replication of actual original pay equity research by the author are included. New findings concerning Gender Based Pay Equity Research through the lens Comparable Worth and Occupational Mobility are covered extensively in Human Capital Metrics, Analytics and Data Mining Chapters.

1. Human Capital Management Systems
2. Human Capital Management System
Components
3. Database Systems, Concepts and Design
4. Dimensional Modeling
5. Reporting and Analytics with Multidimensional and Relational Databases
6.
Online Analytical Processing and the OLAP Cube Multidimensional Database
7.
Multidimensional OLAP Database Project with SQL Server Analytical Services
8.
Multidimensional Cube Analysis with Microsoft Excel and SQL Server Analysis
Services
9. Data Mining
10. Project Management
11. Appendix A SQL Data Types
12. Appendix B SQL Database and Analysis Server Database Scripts
13. Appendix
C Microsoft SQL Server Analytics Services Aggregation Options
14. Appendix D
U. S. CDC Project Charter Template
15. Appendix E Sample HCMS Request for
Information
16. Appendix F Human Capital Management System Request for
Proposal (RFP)
17. Appendix G Sample HCMS Project Plan
Robert C. Hughes, MS, has over 40 years of experience in Human Capital Management





and Information Systems that includes internal and external consulting engagements





in Compensation Planning and Human Capital Management Information Systems.





Mr. Hughes is currently an Adjunct Professor in the Ageno School of Business at Golden





Gate University in San Francisco.





Mr. Hughes has taught courses in Compensation, Management Information Systems,





Data Warehousing, Business Intelligence and Predictive Analytics, and Human Resource





Management Information Systems at colleges and universities around the San Francisco





Bay Area, including Golden Gate University; University of San Francisco; Sonoma State





University; Chapman University; University of California Berkeley Extension; and





California State University, East Bay.





Mr. Hughes has developed innovative and cost-effective Compensation and Human





Capital Management Systems internally and commercially and has been instrumental in





consulting with management in charting Corporate Level Human Capital Compensation





and Management System strategies and large HCMS projects. Commercial Compensation





Systems developed by Mr. Hughes have been marketed successfully in the United States,





Europe, and the Middle East.





Mr. Hughes was awarded the Lifetime Achievement Award in Compensation in May





2000 from World at Work (formerly American Compensation Association). Previous published





works include Evaluation of Salary Survey Sources: A Comparative Approach, Fall





1986, Compensation and Benefits Management Journal.