Airline and Bank Industry Data Discussion James. Airline Environment/Skill Set Database: Oracle, Teradata, Netezza ETL: Informatica/Data Stage Data Model:

Slides:



Advertisements
Similar presentations
Oracle SQL Developer Data Modeler 3.0: Technical Overview March 2011.
Advertisements

Supervisor : Prof . Abbdolahzadeh
Jaros Jaros Overview. Jaros Overview - History Founded 1999 as consulting company GE Medical Systems IT Sigma Aldrich Smurfit-Stone Container Transitioned.
Java/XML ETL Engine By Bob Timlin. Outline Data Extraction, Transformation, and Loading (ETL). Java & XML Meta-Data Mapping Data from Source to Target.
Business Intelligence Methodology 1/3/2012
91.309/310 Database I & II Prof. Cindy Chen. What is a database? A database is a very large, integrated collection of data. A database management system.
Getting Started (Excerpts) Chapter One DAVID M. KROENKE’S DATABASE CONCEPTS, 2 nd Edition.
Accelerated Access to BW Al Weedman Idea Integration.
MIS 451 Building Business Intelligence Systems Logical Design (3) – Design Multiple-fact Dimensional Model.
Data Warehouse Toolkit Introduction. Data Warehouse Bill Inmon's paradigm: Data warehouse is one part of the overall business intelligence system. An.
Data Management Capabilities and Past Performance Dr. Srinivas Kankanahalli.
ACL Solutions for Continuous Auditing and Monitoring John Verver CA, CISA, CMC Vice President, Professional Services & Product Strategy ACL Services Ltd.
5 Copyright © 2009, Oracle. All rights reserved. Defining ETL Mappings for Staging Data.
BUSINESS INTELLIGENCE/DATA INTEGRATION/ETL/INTEGRATION AN INTRODUCTION Presented by: Gautam Sinha.
D ATABASE A DMINISTRATION ITEC 450 Fall 2012 Instructor: Dr. Rama Gudhe.
BIG DATA OFF-SHORE SERVICES:. Off-Shore “Big Data” Center: Modern Facilities in Bangalore’s Central Business District 60,000 Sqft. Space  Capacity for.
1 Brett Hanes 30 March 2007 Data Warehousing & Business Intelligence 30 March 2007 Brett Hanes.
D ATABASE A DMINISTRATION ITEC 450 Fall 2011 Instructor: Dr. Justin M. Wang.
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.
Oracle Challenges Parallelism Limitations Parallelism is the ability for a single query to be run across multiple processors or servers. Large queries.
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.
1 Publication of C Data Warehouse Code 17/11/2002 – Today I am pleased to announce the publication of a suite of C code which has been used to load large.
OBIEE Implementation An Overview Presented by: James VanAuken 1.
Data Management Console Synonym Editor
ETLity Speed up your ETL development! → faster time to market → guaranteed quality → fix price development.
Criteria for D/W Platform Selection Simple Architecture –Easy to deploy the solution with minimal efforts Scalable (Scale Out - Scale Up) –Ability to handle.
ETLity Speed up your ETL development! → faster time to market → guaranteed quality → fix price development.
Datawarehouse A sneak preview. 2 Data Warehouse Approach An old idea with a new interest: Cheap Computing Power Special Purpose Hardware New Data Structures.
Topic Management Reporting Analysis & Design ConstructionTesting Process & Project Management Change & Configuration Management.
Introduction to Databases Three File Processing Systems DAVID M. KROENKE’S DATABASE PROCESSING, 10th Edition © 2006 Pearson Prentice Hall 1-2.
Multiplication Facts. 9 6 x 4 = 24 5 x 9 = 45 9 x 6 = 54.
9 Copyright © 2009, Oracle. All rights reserved. Deploying and Reporting on ETL Jobs.
1 Copyright © 2009, Oracle. All rights reserved. I Course Introduction.
Multiplication Facts. 2x2 4 8x2 16 4x2 8 3x3.
Multiplication Facts Review: x 1 = 1 10 x 8 =
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.
Informatica Online Training. Introduction to Informatica Informatica is an ETL tool, leverages the lean integration model. Informatica works on a Service.
Nitai Partners Practices & Profiles. Nitai Partners’ Strengths Solution Roadmap Data Governance Strategy Business Analysis Full-cycle implementation of.
Microsoft Power Query: an Excel Users Dream for Data Extraction and Cleansing Presented by: Belinda Allen Smith & Allen Consulting, Inc.
7 Copyright © 2006, Oracle. All rights reserved. Defining a Relational Dimensional Model.
1 Copyright © 2008, Oracle. All rights reserved. Repository Basics.
What is the role of a SQL Server Architect? And would you ever want to be one? SQL Server Architect.
Multiplication Facts All Facts. 0 x 1 2 x 1 10 x 5.
SUDEEP Technologies is one of the leading Training Company involved in providing OBIA ONLINE TRAINING. Our Trainers are expert in providing Online Training.
Supervisor : Prof . Abbdolahzadeh
Multiplication Facts.
Multiplication table. x
Introduction.
Advisory Solution Delivery 24x7x365 Production Support
Multiplication Facts.
Air France Reservations Phone Number
Lion Air Manage Booking Number
Air France Reservations Phone Number
An Introduction to Data Warehousing
Data Warehouse Architecture
Informatica Powercenter 8.1
Data Warehouse Architecture
United Airlines Customer Service Dial Our Number
IT and Development support services
Multiplication Facts.
Assessing Multiplication Fact
Delta Airlines Reservation Number CALL: Book your tickets now for Delta Airlines. Call now at the toll-free number and book your tickets.
David Gilmore & Richard Blevins Senior Consultants April 17th, 2012
Multiplication Facts 3 x Table.
Kuwait Airways Book Kuwait Airways Flights ✈ now from Alternative Airlines. More Choice & Better Prices. Travel on kuwait airways with flyin ✈ Book tickets.
Presentation transcript:

Airline and Bank Industry Data Discussion James

Airline Environment/Skill Set Database: Oracle, Teradata, Netezza ETL: Informatica/Data Stage Data Model: Erwin BI: SAS/Tabuleu/R Big Data: Hadoop/Data mere/Spark Metadata Management: IBM

Role Data Architect DBA Database/ETL developer BI Developer

Informatica Work Flow DI Developer Augments, Tunes Generated Mappings DI Architect Develops mapping template, logical flow Generate Mapping PowerCenter Additional transformation support Midstream Normalizer Transformation Supports PowerExchange data sources Supports transformation shortcuts Configure and edit custom transformations after mapping generation NEW

Airline Data PNR data Ticket Data Flight Data Air Craft maintenance data > 50TB

Airline Data Complexity

Airline Data

Fact Tables on Multiple Grains PNR data Flight Leg Flight Seg Kimball Book

Banking Environment/Skill Set Database: Oracle Exadata, Teradata ETL: PL/SQL/Data Stage Data Model: Erwin BI: Microsoft BI Big Data: Hadoop Metadata Management: IBM

ODS – Operation Data Store in Banking

Party Data Model