Resources.

Slides:



Advertisements
Similar presentations
© 2008 EBSCO Information Services SUSHI, COUNTER and ERM Systems An Update on Usage Standards Ressources électroniques dans les bibliothèques électroniques.
Advertisements

ERPJewels Jewelex Creations Pvt Ltd, 124C, Mittal Court, Nariman Point,Mumbai , India. Phone :
Supervisor : Prof . Abbdolahzadeh
© 2010 TIBCO Software Inc. All Rights Reserved. Confidential and Proprietary. TIBCO Spotfire Application Data Services TIBCO Spotfire European User Conference.
Business Information Warehouse Business Information Warehouse.
Chapter 13 The Data Warehouse
FAST Radar System Engineering Overview. FAST Radar Overview –What’s Required? IIS 6.0  With Microsoft.NET Framework 1.1 and SMTP for MS SQL Server.
James Serra – Data Warehouse/BI/MDM Architect
Technical BI Project Lifecycle
By George Squillace New Horizons Great Lakes George SquillaceGeorge Squillace Husband, Dad, Coach, MCT, MCSE, MCDBA MCITP – Database Administration MCITP.
MIS DATABASE SYSTEMS, DATA WAREHOUSES, AND DATA MARTS CHAPTER 3
Business Intelligence System September 2013 BI.
Releasing the power of your data Our mission is to optimize the resources spent on Business Intelligence solutions as well as increasing data quality and.
Introduction to Building a BI Solution 권오주 OLAPForum
How Business Intelligence Software Works and a Brief Overview of Leading Products Jai Windsor MIS 5973 December 8, 2005.
MDS enables users to curate Sets of Objects. This capability is powerful in a wide variety of scenarios across all organization levels.
ETL Design and Development Michael A. Fudge, Jr.
Data Warehouse Tools and Technologies - ETL
MDC Open Information Model West Virginia University CS486 Presentation Feb 18, 2000 Lijian Liu (OIM:
ETL for GIS - What's it all about? 2009 Ohio GIS Conference September 16-18, 2009 Crowne Plaza North Hotel Columbus, Ohio 2009 Ohio GIS Conference September.
LAYING OUT THE FOUNDATIONS. OUTLINE Analyze the project from a technical point of view Analyze and choose the architecture for your application Decide.
SSIS Over DTS Sagayaraj Putti (139460). 5 September What is DTS?  Data Transformation Services (DTS)  DTS is a set of objects and utilities that.
Best Practices for Data Warehousing. 2 Agenda – Best Practices for DW-BI Best Practices in Data Modeling Best Practices in ETL Best Practices in Reporting.
Activity Running Time DurationIntro0 2 min Setup scenario 2 2 min SQL BI components & concepts 4 5 min Data input (Let’s go shopping) 9 7 min Whiteboard.
The Business Intelligence Side of Blue Mountain RAM Bill Lucas, IT Systems Architect and Senior Software Engineer.
Getting synergies from rapid access to data
Codeigniter is an open source web application. It occupies a very small amount of space in the memory and is most useful for developers who aim to develop.
All Rights Reserved  Higher E d Analytics TM Higher E d Analytics TM Business Intelligence for Higher Education Version 3.0 – The Next Generation.
ERP Enterprise Resource Planning D Lewis 10/02. Definitions ERP is a process of managing all resources and their use in the entire enterprise in a coordinated.
European Plant-to-Enterprise Conference October 27-28, 2009, Utrecht, The Netherlands Mdf MES Development Framework Massimiliano Papaleo.
Business Intelligence Software Business Intelligence A Software at your size.
Slide 1. © 2012 Invensys. All Rights Reserved. The names, logos, and taglines identifying the products and services of Invensys are proprietary marks.
ETL Extract. Design Logical before Physical Have a plan Identify Data source candidates Analyze source systems with data- profiling tools Receive walk-through.
1 XML Based Networking Method for Connecting Distributed Anthropometric Databases 24 October 2006 Huaining Cheng Dr. Kathleen M. Robinette Human Effectiveness.
1 Reviewing Data Warehouse Basics. Lessons 1.Reviewing Data Warehouse Basics 2.Defining the Business and Logical Models 3.Creating the Dimensional Model.
Information Builders : SmartMart Seon-Min Rhee Visualization & Simulation Lab Dept. of Computer Science & Engineering Ewha Womans University.
13 1 Chapter 13 The Data Warehouse Database Systems: Design, Implementation, and Management, Seventh Edition, Rob and Coronel.
9 January 2006 MIS for CarRes User Group Meeting 1 Peter Havskov Christensen, M.Sc.
Ayyat IT Group Murad Faridi Roll NO#2492 Muhammad Waqas Roll NO#2803 Salman Raza Roll NO#2473 Junaid Pervaiz Roll NO#2468 Instructor :- “ Madam Sana Saeed”
Chapter 5 DATA WAREHOUSING Study Sections 5.2, 5.3, 5.5, Pages: & Snowflake schema.
2015 NetSymm Overview NETSYMM OVERVIEW December
Rajesh Bhat Director, PLM Analytics Applications
1 Database Systems, 8 th Edition 1 Chapter 13 Business Intelligence and Data Warehouses Objectives In this chapter, you will learn: –How business intelligence.
CS 157B: Database Management Systems II April 10 Class Meeting Department of Computer Science San Jose State University Spring 2013 Instructor: Ron Mak.
Harry Goossens Centre of Competence on Data Warehousing.
1 Copyright © Oracle Corporation, All rights reserved. Business Intelligence and Data Warehousing.
Physical Layer of a Repository. March 6, 2009 Agenda – What is a Repository? –What is meant by Physical Layer? –Data Source, Connection Pool, Tables and.
Data Warehousing The Easy Way with AWS Redshift
1 Copyright © 2008, Oracle. All rights reserved. Repository Basics.
MIS 2000 Class 20 System Development Process Updated 2016.
Business Intelligence Overview
Supervisor : Prof . Abbdolahzadeh
The Holmes Platform and Applications
LSI Business Intelligence Initiative
Designing and Implementing an ETL Framework
PLM, Document and Workflow Management
Business Intelligence & Data Warehousing
Product Manager SAP Integration
Chapter 13 Business Intelligence and Data Warehouses
Overview of MDM Site Hub
Informix Red Brick Warehouse 5.1
Populating a Data Warehouse
An Introduction to Data Warehousing
MANAGING DATA RESOURCES
DAT381 Team Development with SQL Server 2005
AIMS Equipment & Automation monitoring solution
Data Warehousing Concepts
MIS2502: Data Analytics MySQL and MySQL Workbench
Big DATA.
Presentation transcript:

Resources

What is Xpert BI A software program that efficiently enables Moving data from a system/application or file to SQL Server Making the data understandable for usage in either other systems or processes, or for BI/Reporting/Analysis purposes Creating more effective data loads/updates Configuring data loads in a simple interface Controlling relationships and dependencies between tables, views and other objects in an entire data warehouse solution Consequence analysis before implementing change requests or as a part of trouble shooting Analysing data quality at an early stage Automation/Standardization of data warehouse development and maintenance Lower personal dependency Data warehouse automation tool (++) ETL Tool

Xpert BI Business Value Business Value for Xpert BI vs Other/traditional DWH/ETL Tool Revolutionary fast development of BI/DWH solution Lower project cost Faster implementation of business requirements Easier to make changes and expansions to the solution Lower cost Faster implementation of change requests (new business rule, new dimension etc) Easier to maintain the solution Lower maintenance cost One interface/one tool for all data loads and extractions Lower degree of personal dependency Better data quality Better decision support system One truth Better traceability and documentation Faster troubleshooting and error handling Shorter backlog

The Solution Approach Software Development Existing Methodologies Architecture Best practices Software Development New methodologies Idealized data sources Natural process dependencies

Platform : SQL Server 2008R2 + Collection Unstructured/non-database data Flat File XML – Web service Extraction All database data sources Idealization Transformation All ETL data loads (ITS) Automatic object dependency

Unique features Use the full potential of your data! Idealizing data sources Faster and more structured development Better data quality and reliability Foundation for SSBI and further data processing Inline Transformation Services – object dependencies Full control of data flow and updates Optimalized data updates (bulk load and paralellization) Higher reliabilty and flexibility Use the full potential of your data!

Data Warehouse Environment Visualization Tools (MS) Other vendors Cubes / Data Marts Standard user Standard user Data Access Layer - STAR SCHEMA Data Transformation (ITS) MS SQL Server Expert analyst/user Data Extraction  IDEALIZATION Applications Not recommended Data Flow ERP CRM HR XXX