Data Manager Business Intelligence Solutions. Data Mart and Data Warehouse Data Warehouse Architecture Dimensional Data Structure Extract, transform and.

Slides:



Advertisements
Similar presentations
ERPJewels Jewelex Creations Pvt Ltd, 124C, Mittal Court, Nariman Point,Mumbai , India. Phone :
Advertisements

Supervisor : Prof . Abbdolahzadeh
Pentaho Open Source BI Goldwin. Pentaho Overview Pentaho is the commercial open source software for Business Pentaho is the commercial open source software.
Business Intelligence (BI) PerformancePoint in SharePoint 2010 Sayed Ali – SharePoint Administrator.
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.
Navigator Management Partners LLC Business Analysis Professional Development Day – Sep 2014 How to understand and deliver requirements to your Business.
Technical BI Project Lifecycle
OLAP Services Business Intelligence Solutions. Agenda Definition of OLAP Types of OLAP Definition of Cube Definition of DMR Differences between Cube and.
Data Warehousing M R BRAHMAM.
Data Manager Best Practices Business Intelligence Solutions.
Northwestern University Business Intelligence Solutions Build Cubes in Cognos 8.4.
Components and Architecture CS 543 – Data Warehousing.
Business Intelligence System September 2013 BI.
Introduction to Building a BI Solution 권오주 OLAPForum
Business Intelligence components Introduction. Microsoft® SQL Server™ 2005 is a complete business intelligence (BI) platform that provides the features,
Center of Excellence for IT at Bellevue College. IT-enabled business decision making based on simple to complex data analysis processes  Database development.
Data Warehouse Toolkit Introduction. Data Warehouse Bill Inmon's paradigm: Data warehouse is one part of the overall business intelligence system. An.
Components of the Data Warehouse Michael A. Fudge, Jr.
ETL By Dr. Gabriel.
BUSINESS INTELLIGENCE/DATA INTEGRATION/ETL/INTEGRATION AN INTRODUCTION Presented by: Gautam Sinha.
Data Warehouse Tools and Technologies - ETL
MDC Open Information Model West Virginia University CS486 Presentation Feb 18, 2000 Lijian Liu (OIM:
Business Intelligence Greg Myers Jennifer Parker Tom Smith 11/17/2009 MIS 261.
SSIS Over DTS Sagayaraj Putti (139460). 5 September What is DTS?  Data Transformation Services (DTS)  DTS is a set of objects and utilities that.
SQL Server Integration Services (SSIS) Presented by Tarek Ghazali IT Technical Specialist Microsoft SQL Server (MVP) Microsoft Certified Technology Specialist.
1 Brett Hanes 30 March 2007 Data Warehousing & Business Intelligence 30 March 2007 Brett Hanes.
Jean-Pierre Dijcks Principal Product Manager Oracle Warehouse Builder Oracle Corporation.
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.
Introduction to the Orion Star Data
Data Warehouse Concepts Transparencies
Session 4: The HANA Curriculum and Demos Dr. Bjarne Berg Associate professor Computer Science Lenoir-Rhyne University.
More ETL. ETL in a nutshell ETL is an abbreviation of the three words Extract, Transform and Load. It is an ETL process to –extract data, mostly from.
© 2008 IBM Corporation ® IBM Cognos Business Viewpoint Miguel Garcia - Solutions Architect.
OBIEE Implementation An Overview Presented by: James VanAuken 1.
OLAP & DSS SUPPORT IN DATA WAREHOUSE By - Pooja Sinha Kaushalya Bakde.
Soup-2-Nuts Alaska Department of Fish & Game Commercial Fisheries October, 2011.
5 - 1 Copyright © 2006, The McGraw-Hill Companies, Inc. All rights reserved.
Carey Probst Technical Director Technology Business Unit - OLAP Oracle Corporation.
MANAGING DATA RESOURCES ~ pertemuan 7 ~ Oleh: Ir. Abdul Hayat, MTI.
COGNOS 8BI Introduction and Architecture
Soup-2-Nuts Alaska Department of Fish & Game Commercial Fisheries February, 2012.
Creating a Data Warehouse Data Acquisition: Extract, Transform, Load Extraction Process of identifying and retrieving a set of data from the operational.
7 Strategies for Extracting, Transforming, and Loading.
Reporting & Analytics Stephen Chan Senior Solution Consultant.
Rajesh Bhat Director, PLM Analytics Applications
Advanced Database Concepts
CS 157B: Database Management Systems II April 10 Class Meeting Department of Computer Science San Jose State University Spring 2013 Instructor: Ron Mak.
Metric Designer Cognos 8 BI. Objectives  In this module, we will examine:  Scorecarding  Dimensional Data Sources  The Application Process  Creating.
Copyright © 2006, Oracle. All rights reserved. Czinkóczki László oktató Using the Oracle Warehouse Builder.
Easy ETL with Andrzej Kukuła – Marcin Szeliga –
SAS BI ONLINE TRAINING Contact our Support Team : SOFTNSOL India: Skype id : softnsoltrainings id:
SAP BODS Online Training and Placement in USA Online | classroom| Corporate Training | certifications | placements| support CONTACT US: MAGNIFIC TRAINING.
Cognos BI. What is Cognos? Cognos (Cognos Incorporated) was an Ottawa, Ontario-based company that makes Business Intelligence (BI) and Performance Management.
Building the Corporate Data Warehouse Pindaro Demertzoglou Lally School of Management Data Resource Management.
SAS DI ONLINE TRAINING Contact our Support Team : SOFTNSOL India: Skype id : softnsoltrainings id:
Bartek Doruch, Managing Partner, Kamil Karbowiak, Managing Partner, Using Power BI in a Corporate.
Business Intelligence Overview
Supervisor : Prof . Abbdolahzadeh
Reporting and Analysis With Microsoft Office
IBM COGNOS online Training at GoLogica Technologies
IBM DATASTAGE online Training at GoLogica
Data Warehouse.
Business Intelligence for Project Server/Online
Business Intelligence
MANAGING DATA RESOURCES
Data Warehouse Architecture
COGNOS 8 BI - Introduction and Architecture Cognos CoE
Data Warehouse Architecture
Data Warehousing Concepts
Business Intelligence
Presentation transcript:

Data Manager Business Intelligence Solutions

Data Mart and Data Warehouse Data Warehouse Architecture Dimensional Data Structure Extract, transform and load (ETL) Extract Transform Load OLTP ERP OLTP TEXT DATA x/y +/- F(x) DATA MART

IBM Cognos Data Manager –Extract operational data from multiple sources (both relational and non-relational) –Merges and transforms the data to facilitate enterprise-wide reporting, analysis, and performance management –Delivers the transformed data to coordinated data marts that make up the data warehouse –Can create metadata for use with Cognos 8 BI tools such as Query Studio and Analysis Studio and also can be easily deployed and scheduled using Cognos BI.

Key Features 1. Automated tasks and processes Data Manager automates many of the complex process associated with data mart dimension and fact table creation and management, without the need for manual coding.  Surrogate key management for dimension and fact tables Data Manager can generate the surrogate key for the fact table using the business key. surrogate key business key

Surrogate key of the dimension table can be defined during the dimension build. set up surrogate key in dimension build

Support for slowly changing dimensions(SCD) Example of the SCD implementation from Granite dimension build:

Late arriving Fact and Unmatched members.

 Hierarchy definitions and implementations A hierarchy is a particular view of a business dimension which organizes the structure data into levels that represent parent-child relationships. Each hierarchy can have as many levels as you require.  Provide easy interface for processing ragged, unbalanced and recursive hierarchies –Unbalanced hierarchies have leaf nodes at more than one level with the parent of every member coming from the level immediately above. Balance an unbalanced hierarchies YEARQUARTER MONTHDAY

– Ragged hierarchies contain members that have parents at a level higher than the immediate parent level Example of a ragged hierarchy – Parent-Child Relationships – Recursive Hierarchies Example of Create recursive recursive hierarchies using hierarchies data manager

Customized Refresh strategies in the Fact build Example of customized refresh types in a fact build

2. Referential integrity validation Data Manager reference explorer validates hierarchies within dimensions such as parent child relationships, multiple parents and foster children, so issues can be resolved before data is loaded into the warehouse.

3. Scalable Architecture Data Manager dimensional ETL provides flexible and responsive capabilities. An innovative dimensional reference model allows the coordination and management of data marts of all shapes and sizes and across many different platforms. Data Manager can use multiple processors, one processor for each job. Example of jobstream with parallel jobs.

4. Crafting an event process –A JobStream can multi-task events and allow commands to be executed in a parallel or serial manner. Example of a JobStream in a serial manner

The developed JobStream can be published as Data Movement tasks into the IBM Cognos BI production environment, where they can be added to jobs and be scheduled for execution. Example of publish JobStream as Data Movement task Schedule a job in Cognos

5. Easy deployment Data Manager provides the ability to package components and easily move them from environment to environment and test functions and scripts as they are developed in the same environment.

Q & A