Designing Business Intelligence Solutions with Microsoft SQL Server

Slides:



Advertisements
Similar presentations
System Center Reporting Through the BI Stack
Advertisements

INTRODUCTION Agenda BUSINESS CHALLENGES FEATURES OF RAPID MARTS SOLUTION OVERVIEW DWH USING SAP RAPID MARTS BENEFITS TO BUSINESS USERS.
Supervisor : Prof . Abbdolahzadeh
Jose Chinchilla MCITP: Database Administrator, SQL Server 2008 MCITP: Business Intelligence Design and Implementation, SQL Server 2008 President & CEO,
Pentaho Open Source BI Goldwin. Pentaho Overview Pentaho is the commercial open source software for Business Pentaho is the commercial open source software.
James Serra – Data Warehouse/BI/MDM Architect
Cloud, On-Premise, or Hybrid - Where are you making BI investment decisions and why? John P
IST722 Data Warehousing Technical Architecture Michael A. Fudge, Jr. * Figures taken from Kimball Ch. 4.
Business Intelligence System September 2013 BI.
Business Intelligence components Introduction. Microsoft® SQL Server™ 2005 is a complete business intelligence (BI) platform that provides the features,
Chapter 4: Managing Information Resources with Databases Copyright © 2013 Pearson Education, Inc. publishing as Prentice Hall Chapter
UNCLASSIFIED Business Intelligence and SharePoint 2010 Steve McDonnell.
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.
Implementing a Data Warehouse with SQL Server Jump Start
Business Intelligence Overview Marc Schöni Technical Solution Professional | Business Intelligence Microsoft Switzerland.
Prepared By: Prof. Dhara Virani CSE/IT Dept. Dr. Subhash Technical Campus. Junagadh. Chapter 7.
Case Study Complete and integrated BI and Performance Management offering Agile products that adapt to how your need the.
GLOCO Enterprise Measurement System Team 4 John Armstrong Ananthkumar Balasubramanian Emily James Lucas Suh May 5, 2012.
©Silberschatz, Korth and Sudarshan18.1Database System Concepts - 5 th Edition, Aug 26, 2005 Buzzword List OLTP – OnLine Transaction Processing (normalized,
CIS 429—Chapter 8 Accessing Organizational Information—Data Warehouse.
1 Brett Hanes 30 March 2007 Data Warehousing & Business Intelligence 30 March 2007 Brett Hanes.
SharePoint 2010 Business Intelligence Module 2: Business Intelligence.
Data Profiling
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
IT Pro Day Auditing in SQL Server 2012 Charley Hanania Principal Consultant, QS2 AG – Quality Software Solutions
Data Warehouse Architecture. Inmon’s Corporate Information Factory The enterprise data warehouse is not intended to be queried directly by analytic applications,
Pierre-Louis Usselmann, Ben Watt SOGETI Switzerland Master Data Services.
ADFG Commercial Fisheries Data Warehouse and Business Intelligence Project.
Datawarehouse A sneak preview. 2 Data Warehouse Approach An old idea with a new interest: Cheap Computing Power Special Purpose Hardware New Data Structures.
® IBM Software Group © IBM Corporation DB2 DataWarehouse Edition Patrick SARFATY Channel Technical Sales IBM Software
Chapter 5 DATA WAREHOUSING Study Sections 5.2, 5.3, 5.5, Pages: & Snowflake schema.
Presenter : Ahmed M. Mosa User Group : SQLHero. Overview  Where is BI in market trend  Information Overload  Business View  BI Stages  BI Life Cycle.
RoOUG Iunie Bucuresti, 26 Iunie Agenda Inregistrarea participantilor ODI – Common Use Cases 2Iunie 2013.
CS 157B: Database Management Systems II April 10 Class Meeting Department of Computer Science San Jose State University Spring 2013 Instructor: Ron Mak.
1 Copyright © 2009, Oracle. All rights reserved. I Course Introduction.
SAS BI 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
SQL Server Analysis Services Fundamentals
Telling Stories with Data
OVirt Data Warehouse 02/11/11 Yaniv Dary BI Software Engineer, Red Hat.
Introduction to Tabular Data Models
Advanced Applied IT for Business 2
Business Intelligence & Data Warehousing
with the Microsoft BI Ecosystem
Implementing Data Models & Reports with Microsoft SQL Server
Designing Business Intelligence Solutions with Microsoft SQL Server
Introduction to Data Warehousing
Data Warehouse.
Designing Database Solutions for SQL Server
What is business intelligence?
Prepare Question Answers Exam Dumps - Dumps4Download.in
Business Intelligence for Project Server/Online
Module 1: Introduction to Business Intelligence and Data Modeling
SQL Server Analysis Services Fundamentals
Business Intelligence
Implementing Data Models & Reports with Microsoft SQL Server
The IT Perspective: Data Warehousing, Management, and Analytical Structures Rafal Lukawiecki Strategic Consultant, Project Botticelli Ltd
Designing Business Intelligence Solutions with Microsoft SQL Server
06 | Managing Enterprise Data
Delivering an End-to-End Business Intelligence Solution
CHAPTER SIX OVERVIEW SECTION 6.1 – DATABASE FUNDAMENTALS
Warehouse Architecture
Building your First Cube with SSAS
Technical Architecture
Matthew Stephen – SQL Server Evangelist
Implementing Data Models & Reports with Microsoft SQL Server
Presentation transcript:

Designing Business Intelligence Solutions with Microsoft SQL Server Chris Testa-O’Neill | Principal Consultant | Claribi Charley Hanania | Principal Consultant | QS2 AG – Quality Software Solutions

Meet Chris Testa-O’Neill | ‏@ctesta_oneill

Meet Charley Hanania | ‏@charleyhanania MCT Regional Lead - Switzerland Regional Mentor - Western Europe Chapter Leader - Switzerland Joint Country Lead - Switzerland

Course Topics Implementing Data Models and Reports with Microsoft SQL Server 01 | Planning a SQL Server BI Solution 04 | Design an ETL Solution 02 | Designing a BI Infrastructure 05 | Design BI Data Models 03 | Design a Data Warehouse 06 | Designing Reporting Services Solutions

Setting Expectations Target Audience Business Intelligence Architects, Developers Suggested Prerequisites/Supporting Material A basic understanding of dimensional modeling (star schema) for data warehouses The ability to create Integration Services packages that include control flows and data flows The ability to create a basic multidimensional cube with Analysis Services The ability to create a basic tabular model with PowerPivot and Analysis Services The ability to create Reporting Services reports with Report Designer

01 | Planning a SQL Server BI Solution Chris Testa-O’Neill | Principal Consultant | Claribi Charley Hanania | Principal Consultant | QS2 AG – Quality Software Solutions

Module Overview Gathering Requirements. Components of a BI Infrastructure Plan a Data Warehouse. Plan ETL Infrastructure. Plan Data Models. Plan Reporting Services Infrastructure.

Gathering Requirements

Gathering Requirements Business: Goals Objectives Budgets Timescales Operations time Compliance Legal Technical: Functional Performance Availability Scalability Disaster Recovery

Components of a BI Infrastructure

Components of a BI Infrastructure Data Warehouse Master Data Management Data Cleansing Data Sources  ETL Data Models Reporting and Analysis

Plan for a Data Warehouse

Plan for a Data Warehouse Reporting and Analysis Kimball Dimensional Data Marts Inmon Corporate Information Factory Central Dimensional Data Warehouse Federated Hub and Spoke Data Cleansing Data Models Data Sources Data Warehouse  ETL Master Data Management

Plan an ETL Infrastructure

Plan an ETL Infrastructure Reporting and Analysis Enterprise Integration Management ETL: Extract from sources Transform schema & content Load into destination Data Cleansing: Data value validation Duplicate record matching Master Data Management: Business entity integrity Data Cleansing Data Models Data Sources Data Warehouse  ETL Master Data Management

Plan Data Models

Plan Data Models  Data Sources Data Warehouse ETL Reporting and Analysis Benefits of data models: Abstract data warehouse tables Simplify analysis for users Add business logic Pre-aggregate measures Provide a standard interface Types of models: Multidimensional Tabular Data Cleansing Data Models Data Sources Data Warehouse  ETL Master Data Management

Plan Reporting Services Infrastructure

Plan Reporting Services infrastructure IT-provided reports Self-service reporting Interactive analysis Dashboards and scorecards Data mining Reporting and Analysis Data Cleansing Data Models Data Sources Data Warehouse  ETL Master Data Management