ISBN 9780070587410,Data Warehousing, Data Mining, & Olap

Data Warehousing, Data Mining, & Olap

Rs608 Rs715 15% OFF

Availability: Available

Usually ships in: 2-3 business days

(Free Delivery)

We Accept
ISBN 9780070587410
Check delivery information
 
ISBN 9780070587410
Publisher

Tata McGraw - Hill Education

Publication Year 2004
ISBN-13

ISBN 9780070587410

ISBN-10 0070587418
Binding

Paper Back

Number of Pages 638 Pages
Language (English)
Subject

Databases

This definitive, up-to-the-minute reference provides strategic, theoretical and practical insight into three of the most promising information management technologies--data warehousing, online analytical processing (OLAP), and data mining--showing how these technologies can work together to create a new class of information delivery system: the Information Factory. It comprehensively covers data warehouse design (using various approaches, models and indexing techniques), relational data base mining, data warehousing on the Web, and data replication. Several chapters discuss application development with popular OLAP tools.

Table of Contents:
PART I: FOUNDATION Chapter 1 Introduction to Data Warehousing Chapter 2 Client/Server Computing Model and Data Warehousing Chapter 3 Parallel Processors and Cluster Systems Chapter 4 Distributed DBMS Implementations Chapter 5 Client/Server RDBMS Solutions PART II: DATA WAREHOUSING Chapter 6 Data Warehousing Components Chapter 7 Building a Data Warehouse Chapter 8 Mapping the Data Warehouse to a Multiprocessor Architecture Chapter 9 DBMS Schemas for Decision Support Chapter 10 Data Extraction, Cleanup, and Transformation Tools Chapter 11 Metadata PART III: BUSINESS ANALYSIS Chapter 12 Reporting and Query Tools and Applications Chapter 13 On-Line Analytical Processing (OLAP) Chapter 14 Patterns and Models Chapter 15 Statistics Chapter 16 Artificial Intelligence PART IV: DATA MINING Chapter 17 Introduction to Data Mining Chapter 18 Decision Trees Chapter 19 Neural Networks Chapter 20 Nearest Neighbor and Clustering Chapter 21 Genetic Algorithms Chapter 22 Rule Induction Chapter 23 Selecting and Using the Right Technique PART V: DATA VISUALIZATION AND OVERALL PERSPECTIVE Chapter 24 Data Visualization Chapter 25 Putting It All Together Appendices: A: Data Visualization B: Big Data--Better Returns: Leveraging Your Hidden Data Assets to Improve ROI C: Dr E.F. Codd's 12 Guidelines for OLAP D: Mistakes for Data Warehousing Managers to Avoid
Scroll