SlideShare a Scribd company logo
9
Copyright © 2008, Oracle. All rights reserved.
Loading Data
Copyright © 2008, Oracle. All rights reserved.
Objectives
At the end of this lesson, you should be able to:
• Describe the format of a data load file
• Understand Financial Management data storage and
retrieval
• Identify guidelines for managing performance
• Load data from a file
• Extract data
• Export data with Extended Analytics
• Copy data within a database from one location to another
• Remove data from a database
Copyright © 2008, Oracle. All rights reserved.
Data Load Files
A data load file contains sections that map the file data to
Financial Management dimensions.
Copyright © 2008, Oracle. All rights reserved.
Group Dimension Section
Sets the point of view for the data records.
Copyright © 2008, Oracle. All rights reserved.
Data Section
Represents data values for one
or more periods.
Copyright © 2008, Oracle. All rights reserved.
Line-Item Detail Section
Line-item descriptions are enclosed in quotation marks.
Copyright © 2008, Oracle. All rights reserved.
Submission Phase Section
You can load assignments of submission groups to phases.
Copyright © 2008, Oracle. All rights reserved.
Column Order
Specifies the order of the dimensions in
the data section.
Copyright © 2008, Oracle. All rights reserved.
Financial Management Data Storage and Retrieval
Parent Currency
California, Actual, 2008
Entity Currency Proportion
Copyright © 2008, Oracle. All rights reserved.
Subcube Dimensions and Performance
• Aggregations and calculations are most efficient when all
members needed are preloaded in RAM.
• The subcube structure is designed to preload the members
most likely to be needed for calculations and aggregations.
• Each subcube contain all members of the Account, ICP,
View, and custom dimensions.
Account ICP C1 C2 C3 C4 View Period
NetSales [ICP None] [None] Wood Retail [None] Periodic April 300
GrossSales [ICP None] [None] Wood Retail [None] Periodic April 350
Discount [ICP None] [None] Wood Retail [None] Periodic April 25
Returns [ICP None] [None] Wood Retail [None] Periodic April 25
California, Actual, 2008, Entity Currency
Copyright © 2008, Oracle. All rights reserved.
Guidelines for Managing Performance
This data grid opens 14
subcubes in memory, one
for each entity.
Copyright © 2008, Oracle. All rights reserved.
Loading Data from a File
Copyright © 2008, Oracle. All rights reserved.
Merge Option: Overwriting Application Data
with Load File Data
Application
Account Value
Sales 100
Returns 20
Purchases No Data
Results of Load
Account Value
Sales 50
Returns 20
Purchases 30
Data Load File
Account Value
Sales 50
Purchases 30
Copyright © 2008, Oracle. All rights reserved.
Replace Option: Replacing Data
with Load Data File
Application
Account Value
Sales 100
Returns 20
Purchases No Data
Results of Load
Account Value
Sales 50
Returns No data
Purchases 30
Data Load File
Account Value
Sales 50
Purchases 30
Copyright © 2008, Oracle. All rights reserved.
Accumulate Option: Accumulating Application
Data with Load File Data
Application
Account Value
Sales 100
Returns 20
Purchases No Data
Results of Load
Account Value
Sales 150
Returns 20
Purchases 30
Data Load File
Account Value
Sales 50
Purchases 30
Copyright © 2008, Oracle. All rights reserved.
Accumulate Within File Option: Loading
Totals into Applications
• Merge with Accumulate within File
• Replace with Accumulate within File
Merge with Accumulate within File
Application
Account Value
Sales 100
Returns 20
Purchases No Data
Results of Load
Account Value
Sales 110
Returns 20
Purchases No data
Data Load File
Account Value
Sales 50
Sales 60
Copyright © 2008, Oracle. All rights reserved.
Extracting Data
Numbers in parentheses
indicate that multiple members
are selected.
Copyright © 2008, Oracle. All rights reserved.
Exporting Data with Extended Analytics
An Extended Analytics star schema enables you to use
Essbase to analyze data and produce reports.
Copyright © 2008, Oracle. All rights reserved.
Copying Data
The number of source and destination periods must be
the same.
You can increase or
decrease the copied
values by a factor.
Copyright © 2008, Oracle. All rights reserved.
Removing Data
You can remove (clear) data from a specified range in the
database.
Copyright © 2008, Oracle. All rights reserved.
Summary
In this lesson, you should have learned to:
• Describe the format of a load file
• Identify the data load options
• Create data load files
• Load data from a file
• Extract data
• Export data with Extended Analytics
• Copy data within a database from one location to another
• Remove data from a database

More Related Content

PPT
Olap, oltp and data mining
PPTX
Scalable data pipeline
PPTX
A Common Database Approach for OLTP and OLAP Using an In-Memory Column Database
PPT
OLAP
PDF
Financial Reporting Odtug
PPTX
Online analytical processing
PPTX
How One Company Offloaded Data Warehouse ETL To Hadoop and Saved $30 Million
PPTX
Snowflake + Power BI: Cloud Analytics for Everyone
Olap, oltp and data mining
Scalable data pipeline
A Common Database Approach for OLTP and OLAP Using an In-Memory Column Database
OLAP
Financial Reporting Odtug
Online analytical processing
How One Company Offloaded Data Warehouse ETL To Hadoop and Saved $30 Million
Snowflake + Power BI: Cloud Analytics for Everyone

What's hot (20)

PPTX
PPTX
Dynamic filtering for presto join optimisation
PPTX
Decibel presentation
PPTX
Snowflake Overview
PPTX
Altis AWS Snowflake Practice
PPT
Datawarehouse and OLAP
PPT
OLAP Cubes in Datawarehousing
PPTX
bigdawg overview
PPTX
Oltp vs olap
PPTX
Online analytical processing (olap) tools
PPTX
Company Data Archive
PDF
Data Warehouse - Incremental Migration to the Cloud
PPTX
Data Warehousing and Bitmap Indexes - More than just some bits
PPT
What is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
PDF
The Marriage of the Data Lake and the Data Warehouse and Why You Need Both
PPTX
Optimize the performance, cost, and value of databases.pptx
PPTX
Online analytical processing
PDF
Delivering rapid-fire Analytics with Snowflake and Tableau
PPSX
OLAP OnLine Analytical Processing
PPSX
Powerpivot web wordpress present
Dynamic filtering for presto join optimisation
Decibel presentation
Snowflake Overview
Altis AWS Snowflake Practice
Datawarehouse and OLAP
OLAP Cubes in Datawarehousing
bigdawg overview
Oltp vs olap
Online analytical processing (olap) tools
Company Data Archive
Data Warehouse - Incremental Migration to the Cloud
Data Warehousing and Bitmap Indexes - More than just some bits
What is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
The Marriage of the Data Lake and the Data Warehouse and Why You Need Both
Optimize the performance, cost, and value of databases.pptx
Online analytical processing
Delivering rapid-fire Analytics with Snowflake and Tableau
OLAP OnLine Analytical Processing
Powerpivot web wordpress present
Ad

Viewers also liked (12)

PPT
L06 accounts custom
PPT
L12 managing rules
PPT
L11 creating member lists
PPT
L22 analyzing data using smart view
PPT
App c classicadmin
PPT
PPT
L10 entering data using data grids
PPT
L08 deploying applications
PPT
L03 managing dimensions
PPT
L05 creating applicationviews
PPT
L04 loading metadata
PPT
L07 entities scenarios
L06 accounts custom
L12 managing rules
L11 creating member lists
L22 analyzing data using smart view
App c classicadmin
L10 entering data using data grids
L08 deploying applications
L03 managing dimensions
L05 creating applicationviews
L04 loading metadata
L07 entities scenarios
Ad

Similar to L09 loading data (20)

PDF
BI Publisher Data model design document
PDF
BI Publisher 11g : Data Model Design document
PPT
Data warehouse
PPT
L21 sharing data using data synchronization
PDF
Presentation v mware roi tco calculator
PPT
3._DWH_Architecture__Components.ppt
PDF
Sloupcové uložení dat a použití in-memory technologií u řešení Exadata
PPTX
Oracle Data Redaction
PPTX
MySQL 8.0 Released Update
PDF
Best Practices for Oracle Exadata and the Oracle Optimizer
PPTX
Bi Architecture And Conceptual Framework
PPS
Oracle BI Publsiher Using Data Template
DOCX
Sql server 2008 r2 performance and scale
PPTX
Beginners guide to_optimizer
PPTX
Leveraging SAS for Efficient Data Warehousing.pptx
DOCX
12 1-man-operation center-ug(2)
PPT
Datawarehousing & DSS
PDF
Day 02 sap_bi_overview_and_terminology
PDF
Peteris Arajs - Where is my data
PDF
BI Environment Technical Analysis
BI Publisher Data model design document
BI Publisher 11g : Data Model Design document
Data warehouse
L21 sharing data using data synchronization
Presentation v mware roi tco calculator
3._DWH_Architecture__Components.ppt
Sloupcové uložení dat a použití in-memory technologií u řešení Exadata
Oracle Data Redaction
MySQL 8.0 Released Update
Best Practices for Oracle Exadata and the Oracle Optimizer
Bi Architecture And Conceptual Framework
Oracle BI Publsiher Using Data Template
Sql server 2008 r2 performance and scale
Beginners guide to_optimizer
Leveraging SAS for Efficient Data Warehousing.pptx
12 1-man-operation center-ug(2)
Datawarehousing & DSS
Day 02 sap_bi_overview_and_terminology
Peteris Arajs - Where is my data
BI Environment Technical Analysis

More from Naresh Kumar SAHU (12)

PPT
L20 managing the review cycle using process management
PPT
L19 running consolidations
PPT
L18 adjusting data with journals
PPT
L17 entering intercompany data
PPT
L16 creating tasklists
PPT
L15 data forms
PPT
L14 assigning access
PPT
L13 adding users
PPT
L02 navigate
PPT
App c classicadmin2
PPT
App a automating tasks
PPT
App b intercompanytrans
L20 managing the review cycle using process management
L19 running consolidations
L18 adjusting data with journals
L17 entering intercompany data
L16 creating tasklists
L15 data forms
L14 assigning access
L13 adding users
L02 navigate
App c classicadmin2
App a automating tasks
App b intercompanytrans

L09 loading data

  • 1. 9 Copyright © 2008, Oracle. All rights reserved. Loading Data
  • 2. Copyright © 2008, Oracle. All rights reserved. Objectives At the end of this lesson, you should be able to: • Describe the format of a data load file • Understand Financial Management data storage and retrieval • Identify guidelines for managing performance • Load data from a file • Extract data • Export data with Extended Analytics • Copy data within a database from one location to another • Remove data from a database
  • 3. Copyright © 2008, Oracle. All rights reserved. Data Load Files A data load file contains sections that map the file data to Financial Management dimensions.
  • 4. Copyright © 2008, Oracle. All rights reserved. Group Dimension Section Sets the point of view for the data records.
  • 5. Copyright © 2008, Oracle. All rights reserved. Data Section Represents data values for one or more periods.
  • 6. Copyright © 2008, Oracle. All rights reserved. Line-Item Detail Section Line-item descriptions are enclosed in quotation marks.
  • 7. Copyright © 2008, Oracle. All rights reserved. Submission Phase Section You can load assignments of submission groups to phases.
  • 8. Copyright © 2008, Oracle. All rights reserved. Column Order Specifies the order of the dimensions in the data section.
  • 9. Copyright © 2008, Oracle. All rights reserved. Financial Management Data Storage and Retrieval Parent Currency California, Actual, 2008 Entity Currency Proportion
  • 10. Copyright © 2008, Oracle. All rights reserved. Subcube Dimensions and Performance • Aggregations and calculations are most efficient when all members needed are preloaded in RAM. • The subcube structure is designed to preload the members most likely to be needed for calculations and aggregations. • Each subcube contain all members of the Account, ICP, View, and custom dimensions. Account ICP C1 C2 C3 C4 View Period NetSales [ICP None] [None] Wood Retail [None] Periodic April 300 GrossSales [ICP None] [None] Wood Retail [None] Periodic April 350 Discount [ICP None] [None] Wood Retail [None] Periodic April 25 Returns [ICP None] [None] Wood Retail [None] Periodic April 25 California, Actual, 2008, Entity Currency
  • 11. Copyright © 2008, Oracle. All rights reserved. Guidelines for Managing Performance This data grid opens 14 subcubes in memory, one for each entity.
  • 12. Copyright © 2008, Oracle. All rights reserved. Loading Data from a File
  • 13. Copyright © 2008, Oracle. All rights reserved. Merge Option: Overwriting Application Data with Load File Data Application Account Value Sales 100 Returns 20 Purchases No Data Results of Load Account Value Sales 50 Returns 20 Purchases 30 Data Load File Account Value Sales 50 Purchases 30
  • 14. Copyright © 2008, Oracle. All rights reserved. Replace Option: Replacing Data with Load Data File Application Account Value Sales 100 Returns 20 Purchases No Data Results of Load Account Value Sales 50 Returns No data Purchases 30 Data Load File Account Value Sales 50 Purchases 30
  • 15. Copyright © 2008, Oracle. All rights reserved. Accumulate Option: Accumulating Application Data with Load File Data Application Account Value Sales 100 Returns 20 Purchases No Data Results of Load Account Value Sales 150 Returns 20 Purchases 30 Data Load File Account Value Sales 50 Purchases 30
  • 16. Copyright © 2008, Oracle. All rights reserved. Accumulate Within File Option: Loading Totals into Applications • Merge with Accumulate within File • Replace with Accumulate within File Merge with Accumulate within File Application Account Value Sales 100 Returns 20 Purchases No Data Results of Load Account Value Sales 110 Returns 20 Purchases No data Data Load File Account Value Sales 50 Sales 60
  • 17. Copyright © 2008, Oracle. All rights reserved. Extracting Data Numbers in parentheses indicate that multiple members are selected.
  • 18. Copyright © 2008, Oracle. All rights reserved. Exporting Data with Extended Analytics An Extended Analytics star schema enables you to use Essbase to analyze data and produce reports.
  • 19. Copyright © 2008, Oracle. All rights reserved. Copying Data The number of source and destination periods must be the same. You can increase or decrease the copied values by a factor.
  • 20. Copyright © 2008, Oracle. All rights reserved. Removing Data You can remove (clear) data from a specified range in the database.
  • 21. Copyright © 2008, Oracle. All rights reserved. Summary In this lesson, you should have learned to: • Describe the format of a load file • Identify the data load options • Create data load files • Load data from a file • Extract data • Export data with Extended Analytics • Copy data within a database from one location to another • Remove data from a database