© Genesee Academy, 2005-2007 5/1/2015 1 The.

Slides:



Advertisements
Similar presentations
Jose Chinchilla MCITP: Database Administrator, SQL Server 2008 MCITP: Business Intelligence Design and Implementation, SQL Server 2008 President & CEO,
Advertisements

A presentation by W H Inmon KIMBALL vs INMON. the essence of the difference between Inmon and Kimball Inmon – there needs to be a single version of the.
See the future first | Architecting a world class enterprise performance management (EPM) solution Sefton Thesing Director Indigo NZ Limited.
Data Manager Business Intelligence Solutions. Data Mart and Data Warehouse Data Warehouse Architecture Dimensional Data Structure Extract, transform and.
Data Vault RMOUG Training Days 2006 Colorado Convention Center Denver, Colorado February
City of Charlotte Data Warehousing and Business Intelligence and Building Mashups By Example by Rattapoom Tuchinda, Pedro Szekely, and Craig A. Knoblock.
”Business Intelligence Roadmap” Author Larisa Moss.
Data Warehousing M R BRAHMAM.
Data Warehouse Architecture Sakthi Angappamudali Data Architect, The Oregon State University, Corvallis 16 th May, 2005.
Asuri Saranathan. Agenda  Introduction  Best Practices – Over View  Deep Dive  Conclusion  Q & A.
Database – Part 3 Dr. V.T. Raja Oregon State University External References/Sources: Data Warehousing – Mr. Sakthi Angappamudali.
Introduction to data warehouses
Database – Part 2b Dr. V.T. Raja Oregon State University External References/Sources: Data Warehousing – Sakthi Angappamudali at Standard Insurance; BI.
Business Driven Technology Unit 2
IST722 Data Warehousing Technical Architecture Michael A. Fudge, Jr. * Figures taken from Kimball Ch. 4.
Chapter 13 The Data Warehouse
Business Intelligence System September 2013 BI.
Alok Srivastava Managing Organizations Informed decision making as a prerequisite for success Action Vision Mission Organizational Context Policies, Goals,
Designing a Data Warehouse
Components of the Data Warehouse Michael A. Fudge, Jr.
MDS enables users to curate Sets of Objects. This capability is powerful in a wide variety of scenarios across all organization levels.
Business Intelligence Instructor: Bajuna Salehe Web:
Customer Relationship Management Wagner & Zubey 11 Copyright (c) 2006 Prentice-Hall. All rights reserved. Copyright 2007 Thomson Publishing: All Rights.
Business Intelligence
BIG DATA OFF-SHORE SERVICES:. Off-Shore “Big Data” Center: Modern Facilities in Bangalore’s Central Business District 60,000 Sqft. Space  Capacity for.
Lori Smith Vice President Business Intelligence Universal Technical Institute Chosen by Industry. Ready to Work.™
Data Warehouse design models in higher education courses Patrizia Poščić, Associate Professor Danijela Subotić, Teaching Assistant.
BMI Consulting Business Intelligence Roadmap Business Analysis Requirements Subject Modeling.
Right In Time Presented By: Maria Baron Written By: Rajesh Gadodia
1 Reviewing Data Warehouse Basics. Lessons 1.Reviewing Data Warehouse Basics 2.Defining the Business and Logical Models 3.Creating the Dimensional Model.
Decision Support and Date Warehouse Jingyi Lu. Outline Decision Support System OLAP vs. OLTP What is Date Warehouse? Dimensional Modeling Extract, Transform,
Chapter 5 DATA WAREHOUSING Study Sections 5.2, 5.3, 5.5, Pages: & Snowflake schema.
Business Intelligence Transparencies 1. ©Pearson Education 2009 Objectives What business intelligence (BI) represents. The technologies associated with.
Reporting & Analytics Stephen Chan Senior Solution Consultant.
Pooja Sharma Shanti Ragathi Vaishnavi Kasala. BUSINESS BACKGROUND Lowe's started as a single hardware store in North Carolina in 1946 and since then has.
Rajesh Bhat Director, PLM Analytics Applications
June 08, 2011 How to design a DATA WAREHOUSE Linh Nguyen (Elly)
Business Intelligence Training Siemens Engineering Pakistan Zeeshan Shah December 07, 2009.
Components of Data Warehousing By Jason Howell Knowledge Repository Presentation.
 Chapter 10 Information Systems within the Organization.
Introduction Data Vault. Historical development Business Intelligence 1950 Turing : First computers 1960Codd : 3NF 1970Management Information Systems.
MBA/1092/10 MBA/1093/10 MBA/1095/10 MBA/1114/10 MBA/1115/10.
Data Warehouse – Your Key to Success. Data Warehouse A data warehouse is a  subject-oriented  Integrated  Time-variant  Non-volatile  Restructure.
Copyright © 2016 Pearson Education, Inc. Modern Database Management 12 th Edition Jeff Hoffer, Ramesh Venkataraman, Heikki Topi CHAPTER 9: DATA WAREHOUSING.
BUSINESS INTELLIGENCE. The new technology for understanding the past & predicting the future … BI is broad category of technologies that allows for gathering,
1 Data Warehousing Data Warehousing. 2 Objectives Definition of terms Definition of terms Reasons for information gap between information needs and availability.
Data Warehouse/Data Mart It’s all about the data.
Enterprise Processes and Systems MIS 2000 Instructor: Bob Travica Updated 2016 Class 16.
نمايندگي استان يزد. نمايندگي استان يزد طراحی کسب و کار الکترونیکی ارائه کننده : محسن افسر قره باغ.
Business Intelligence Overview
Advanced Applied IT for Business 2
Chapter 13 The Data Warehouse
IBM DATASTAGE online Training at GoLogica
Data Warehouse.
Organizational Context
Data Warehouses, Dimensional Modeling, and the Laundromat
Agile Power BI for self service.
Components of the Data Warehouse Michael A. Fudge, Jr.
Data Warehouse and OLAP
Enterprise Data Warehouse (EDW)
An Introduction to Data Warehousing
Data Warehouses, Dimensional Modeling, and the Laundromat
C.U.SHAH COLLEGE OF ENG. & TECH.
Warehouse Architecture
Data Warehousing Concepts
Enterprise Data Warehouse (EDW)
Technical Architecture
Data Warehouses, Dimensional Modeling, and the Laundromat
Data Warehouse and OLAP
Resources.
Presentation transcript:

© Genesee Academy, /1/ The Data Vault – Selected Slides

What is the Data Vault? 5/1/ The Data Vault is a data modeling approach for the Enterprise Data Warehouse. It is uniquely flexible, scalable, consistent and extremely adaptable to the needs of the enterprise. It is a data model that is architected specifically to meet the needs of today’s enterprise data warehouses.

Data MartsEDW-DVOperational External Data Mart ETL Staging Area Exploration & Mining Integration ETL Mart Strategic Marts Mart Exploration & Mining Marketing Sales ERP SCM JD Edwards PeopleSoft SAP I2 Technologies Manugistics Visual Movement Siebel Gold Mine Where Does It Fit?

4 Traditional Architecture Sales Finance Contracts Staging (EDW) Star Schemas Enterprise BI Solution (batch) Staging + History Complex Business Rules Complex Business Rules +Dependencies Conformed Dimensions Junk Tables Helper Tables Factless Facts

5 Fundamental Architecture Sales Finance Contracts Staging EDW Star Schemas Error Marts Report Collections Enterprise BI Solution (batch) Complex Business Rules The business rules are moved closer to the business, improving IT reaction time, reducing cost and minimizing impacts to the enterprise data warehouse (EDW) Repeatable Consistent Fault-Tolerant Scalable Auditable FUNDAMENTAL GOALS

5/1/ What are the Entity Types? Hub:List of UNIQUE business keys. Link:List of UNIQUE relationships between keys. Satellite:Historical descriptive data.

What are the Benefits? 5/1/2015 Architecturally Completely Auditable Model Directly Aligned to the Business Model Extremely Adaptable To Business Change Designed and Optimized Specifically for the EDW Durable, Consistent and Predictable Intelligence Investment Appreciates Over Time Terminal Complexity

Industry Quotes About Data Vault 5/1/ Bill Inmon: “The Data Vault is functionally strong and a viable architecture in implementing your Enterprise Data Warehouse.” “The Data Vault is the optimal choice for DW2.0 architectures.” Kent Graziano, Denver Public Schools: “We believe that this data modeling technique is the best suited for designing a central, historic data repository because of its flexibility to easily add new subject areas and attributes.” Clive Finkelstein: “This should be called the "Foundational Warehouse Model", and it looks to be a solid implementation paradigm that's highly scalable.” Stephen Brobst, CTO Teradata: “The Data Vault is foundationally strong and exceptionally scalable architecture.” Doug Laney, META GROUP: “ The Data Vault is a technique which some industry experts have predicted may spark a revolution as the next big thing in data modeling for enterprise warehousing....” (Wilshire Conferences, Enterprise Data Forum Brochure, November 4-7, 2002),

Questions? 9 The Home of the Data Vault Certification Training Free White Papers Dan Linstedt Hans Hultgren Genesee Academy Golden, Colorado USA Rapid ACE Golden, Colorado USA