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Transaction Code: KEDF
Description: CO-PA: Fill Summ. Levels (Expert)
Release: S/4HANA and ECC 6
Program: RKETRERF
Screen: 1000
Authorization Object:
Development Package: KE
Package Description: Profitability Analysis
Parent Package: APPL
Module/Component: CO-PA
Description: Profitability Analysis
Overview: KEDF is an SAP transaction code used to fill summary levels in the Controlling (CO) Profitability Analysis (PA) module. It is an expert mode transaction code, meaning it is intended for experienced users. Functionality: KEDF allows users to fill summary levels in the CO-PA module. This means that users can create a summary of the data in the CO-PA module, which can be used to analyze profitability and make decisions. Step-by-step How to Use: 1. Enter transaction code KEDF in the command field. 2. Select the version of CO-PA you want to use. 3. Select the characteristics you want to use for summarization. 4. Select the summarization level you want to use. 5. Select the summarization type you want to use (e.g., sum, average, etc.). 6. Select the currency you want to use for summarization. 7. Select the summarization period you want to use (e.g., month, quarter, etc.). 8. Select the summarization method you want to use (e.g., manual or automatic). 9. Execute the summarization process by clicking on “Execute” button at the top of the screen. 10. Check the results of the summarization process by clicking on “Display” button at the top of the screen. 11. Save your changes by clicking on “Save” button at the top of the screen. Other Recommendations: It is recommended that users familiarize themselves with all of the options available in KEDF before using it, as there are many different options that can be used for summarization and each one has its own advantages and disadvantages depending on what type of analysis is being done. Additionally, it is important to ensure that all of the data being summarized is accurate and up-to-date before executing KEDF, as any errors or discrepancies in the data could lead to incorrect results or conclusions being drawn from it.