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Teradata Introduction

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Coffing Data Warehousing Education Outline 02/17/05

TERADATA EDUCATION OUTLINE
Coffing Data Warehousing has provided quality Teradata education, products and services for over a decade. We offer customized solutions to maximize your warehouse.

Toll Free: 1-877-TERADAT Business Phone: 1-937-855-4838 Email: mailto:CDWSales@CoffingDW.com Website: http://www.CoffingDW.com

In addition to the course material listed in this outline, we also offer Teradata classes in Teradata Basics, Implementation, SQL, Database Administration, Design and Utilities. Please contact us so we can customize a course to fit your specific needs.

© 2006 Coffing Data Warehousing – All rights reserved. Confidential.

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Coffing Data Warehousing Education Outline 02/17/05

PURPOSE Coffing Data Warehousing has been providing quality Teradata education for over a decade. We offer customized courses to maximize the effectiveness of each class. The purpose of this proposal is to build a lasting relationship with your company. To this end, we have combined our comprehensive Teradata education services in a unique package that we feel best suits the diverse needs of your company while offering our high quality product at competitive pricing. Coffing Data Warehousing is excited to offer you, our preferred partner, an innovative new way to look at training at the CoffingDW Teradata University (CDW-TU). This approach provides the ability to maximize learning potential. Our goal is to make your employees the most educated data warehouse experts in the industry. CURRICULUM: Coffing Data Warehousing will provide an experienced and highly qualified resource to deliver this customized educational seminar on the following topic(s): Teradata Education

• Teradata Database Administration
COURSE DESCRIPTION

COURSE PREREQUISITES COURSE Duration/Format COURSE AUDIENCE OBJECTIVES

There is no prerequisite for this course. This course is designed to be highly interactive with the audience.

The audience will consist of a mix of beginning,intermediate and advanced Teradata users. This course is designed to provide in-depth knowledge of Teradata Database Administration.

© 2006 Coffing Data Warehousing – All rights reserved. Confidential.

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Coffing Data Warehousing Education Outline 02/17/05

Tera-Tom on Teradata DBA Tera-Cram for V2R6
Chapter 1 — The Rules of Data Warehousing Teradata Facts and Certification Teradata: Brilliant by Design The Teradata Parallel Architecture A Logical View of the Teradata Architecture The Parsing Engine (PE) The Parsing Engine in Detail The Request and Respond Parcel The Parsing Engine Knows All The Access Module Processors (AMPs) The BYNET A Visual for Data Layout Teradata is a shared nothing Architecture Teradata has Linear Scalability How Teradata handles data access The PE uses Statistics to come up with the Plan When there are NO Statistics Collected on a Table Teradata Cabinets, Nodes, VPROCs, and Disks A Node and its Memory Allocations Each PE has a Plan Library called RTS Cache LAN Connection for Network Attached Clients Mainframe Connection to Teradata Sessions and Session Pools Teradata Configuration Utilities Config and Reconfig Chapter 2 — Teradata Space How Permanent Space is Calculated How Permanent Space is Given The Teradata Hierarchy How Spool Space is Calculated A Spool Space Example PERM, SPOOL and TEMP Space Space Allocation Review AMP Disks have Cylinders and Data Blocks
© 2006 Coffing Data Warehousing – All rights reserved. Confidential.

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Coffing Data Warehousing Education Outline 02/17/05

Full Cylinder Read Table Header Each Table is given a Table ID How Data Blocks are Dynamically Built Data Blocks How Teradata Finds a Row of Data The Master Index The Cylinder Index Cylinder Index Changes How Teradata Writes to an AMP Writing to Data Blocks of Equal Length When a Data Block is Not Big Enough for a Write How Teradata Allocates Blocks Block and Row Definitions Large Row versus Oversized Row Defragmentation When a Cylinder becomes Full Another quiz on Perm and Spool Space Chapter 3 — DBC Data Dictionary Tables Data Dictionary Directory The Parsing Engine has Data Dictionary Cache Data Dictionary Directory Tables System Views Accessing Restricted Views Selecting Information about Created Objects Children View Databases View DBC.Users View Indices View AllTempTables View Finding Table Names Using the LIKE Command Finding Table Names in a Particular Database Using the Keyword USER on DBC Views Using DBC.AMPUsage Using DBC.TableSize Keeping Track of Logons and Logoffs

© 2006 Coffing Data Warehousing – All rights reserved. Confidential.

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Coffing Data Warehousing Education Outline 02/17/05

Chapter 4 — Access Rights, Roles and Profiles Access Rights Automatic, Implicit, and Explicit Rights Tools for Finding Access Rights The REVOKE Statement Roles Creating Roles Setting and MODIFYING Roles DBC.RoleInfo and DBC.RoleInfoX Profiles CREATING PROFILES MODIFYING PROFILES DBC.ProfileInfo and DBC.ProfileInfoX Chapter 5 — DBS Control DBS Control Record — General Fields DBS Control Record — File System Fields DBS Control Record — Performance Fields DBS Control Records You Should Know About DBSControl — Performance Columns Chapter 6 — Query Analysis and Tools Database Query Log (DBQL) DBQL Collection Options DBQL Tables and Views How to Begin Logging for DBQM Access Logging Statistics Wizard Index Wizard TSET Teradata Visual Explain Utility Chapter 7 — Teradata Protection Features Transaction Concept & Transient Journal How the Transient Journal Works
© 2006 Coffing Data Warehousing – All rights reserved. Confidential.

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Coffing Data Warehousing Education Outline 02/17/05

FALLBACK Protection How Fallback Works Fallback Clusters Down AMP Recovery Journal (DARJ) Redundant Array of Independent Disks (RAID) Cliques Cliques — A two node example Cliques — A four node example Permanent Journal Table Create with Fallback and Permanent Journaling TDQM Chapter 8 — Starting and Stopping Teradata Restarts of the Teradata Database Automatic Restarts Hardware Failures Critical Database Errors UNIX Operating System Restarts DBA Forced Restarts Restarting in UNIX Restarting the DB Window (UNIX Only) Restarting in Windows 2000 Startup and Recovery Transaction Recovery Performing Online and Offline Catch-up Chapter 9 — Databases, Users and Accounting Creating a Database Creating a User Modifying and Deleting a USER Specifying Account Priorities System Accounting System Accounting Views DBC.AcountInfo[x] View DBC.AMPUsage View Chapter 10 — Views and MACROS
© 2006 Coffing Data Warehousing – All rights reserved. Confidential.

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Coffing Data Warehousing Education Outline 02/17/05

Creating Views Creating Simple VIEWs and Views that Join Tables How to Change a VIEW Using REPLACE How to Drop a VIEW View Aggregation Using “Locking for Access” in Views You can UPDATE Tables through Views Restricting UPDATE rows WITH CHECK OPTION Creating Macros Why the PE loves the Macro Creating a MACRO Macros that Use Parameters Changing a MACRO Using REPLACE How to Execute a MACRO How to Drop a MACRO Chapter 11 — System Access Control Levels Teradata Password Encryption Password Security Features Host Logon Processing GRANT/REVOKE LOGON Statement Session Related Views DBC.SessionInfo View DBC DBC Data Access Information Views AccLogRules Views AccessLog Views Chapter 12 — Priority Scheduler Priority Scheduler Partition Hierarchy Priority Scheduler Hierarchy Definitions Resource Partition Example Multiple Resource Partitions Example Scheduling Policies Performance Periods
© 2006 Coffing Data Warehousing – All rights reserved. Confidential.

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Coffing Data Warehousing Education Outline 02/17/05

Chapter 13 — Teradata Manager Teradata Manager Applications Teradata Dashboard — New Feature Workload Trend Analysis/Data Collector — New Feature Priority Scheduler Administrator — New Feature Priority Scheduler Administrator — New Feature Teradata Manager Service Starting Teradata Manager Enable Data Collection Chapter 14 — Monitoring Tools Performance Monitor - Overview Performance Monitor Performance Monitor — Continued PMON Main Window PMON Sessions Screen Viewing Session Status Monitoring Session Status Session Status Report Descriptions Teradata Administrator (WinDDI) Teradata Manager Dynamic Utilization Charting The Alert Facility and Viewer The Alert Viewer The Alert Policy Editor Locking Logger Locking Logger Functions: Xperfstate Teradata Manager Remote Console Chapter 15 — Teradata Remote Console Utilities Starting the Database Window (DBW) QRYCONFIG QRYSESSN RCVMANAGER (Recovery Manager) SHOWLOCKS
© 2006 Coffing Data Warehousing – All rights reserved. Confidential.

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Coffing Data Warehousing Education Outline 02/17/05

VPROCMANAGER FERRET UTILITY (File Reconfiguration Tool) SHOWSPACE SHOWBLOCKS PACKDISK SCANDISK Chapter 16 — Resource Usage Data ResUsage Collection and Logging Setting Resource Logging - DBW Collection Costs Resource Usage Tables ResNode Macros ResNode Macros - Continued RSSMon Chapter 17 — Loading the Data Fastload FastLoad Has Some Limits Three Key Requirements for FastLoad to Run Maximum of 15 Loads FastLoad Has Two Phases PHASE 1: Acquisition PHASE 2: Application Fastload Example Restarting FastLoad How the CHECKPOINT Option Works Restarting with CHECKPOINT MultiLoad Two Multiload Modes: IMPORT and DELETE Block and Tackle Approach MultiLoad Imposes Limits RESTARTing Multiload RELEASE MLOAD: When You DON’T Want to Restart Multiload TPump Why It Is Called “TPump” TPump Has Many Unbelievable Abilities
© 2006 Coffing Data Warehousing – All rights reserved. Confidential.

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Coffing Data Warehousing Education Outline 02/17/05

TPump Has Some Limits LOAD Parameters IN COMMON with MultiLoad .BEGIN LOAD Parameters UNIQUE to TPump A Simple TPump Script — A Look at the Basics TPump Script with Error Treatment Options RESTARTing TPump TPump and MultiLoad Comparison Chart Fastexport How FastExport Works FastExport Fundamentals FastExport Supported Operating Systems Maximum of 15 Loads Chapter 18 — Archiving Data Archive and Recovery Statements Recovery Vs FastLoad Invoking Archive Invoking Archive - Continued Restart Log ANALYZE Statement Archive Database DBC Archive Indexes Option Database DBC Archive Archive and Recovery (ARC) Examples Chapter 19 — Restoring Data The RESTORE Statement COPY Statement Copying Tables BUILD Statement RELEASE LOCK Statement

© 2006 Coffing Data Warehousing – All rights reserved. Confidential.

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