| Status | Lead Approval |
|---|---|
| Owner | |
| Stakeholders |
Purpose
The purpose of this document is to define the conversion approach to create Business Partners - Customer (Sales and Service) - FLCU01 in S/4 HANA.
In SAP ECC, the Customer Sales View is part of the Customer Master Data, which is used to store customer-related information for sales transactions. It includes details such as sales area, pricing, delivery preferences, and billing information. The setup typically involves maintaining customer records separately for different sales organizations, distribution channels, and divisions.
In SAP S/4HANA, the Customer Sales View is integrated into the Business Partner (BP) model, which replaces the traditional customer/vendor objects from ECC. The Business Partner serves as a central entity, allowing a single record to hold multiple roles (e.g., customer and vendor). The Customer Sales View in S/4HANA is represented under the BP role FLCU01, which contains sales-specific data such as sales area assignments, pricing conditions, and delivery preferences
Conversion Scope
The scope of this document covers the approach for converting active from Legacy Source Systems into S/4HANA following the Business Partners - Customer (Sales and Service) - FLCU01 Master Data Design Standard.
The data from legacy system includes:
- The BP general is migrated
- The sales area under which the sales view data is maintained for the customer is within the scope of S4 Hana
- There is no Central Sales Block (KNA1-CASSD) in the customer general master data, which is used to block all the sales view data of the customer.
- or there is no Deletion flag for customer (sales level) (KNVV-LOEVM)
- or there is no Customer order block (sales area) (KNVV-AUFSD)
The data from legacy system excludes:
- The sales org for the sales view is out of scope, such as Oil & Gas and Aroma specific sales organizations.
| Source | Scope | Source Approx No. of Records | Target System | Target Approx No. of Records |
|---|---|---|---|---|
| WP2 | Customer Sales View | 80000 | S4 | 80000 |
| PF2 | Customer Sales View | 40000 | S4 | 40000 |
Additional Information
Multi-language Requirement
N/A
Document Management
N/A
Legal Requirement
CMMC 2.0 is a mandatory DoD cybersecurity certification for contractors handling Controlled Unclassified Information (CUI) and Federal Contract Information (FCI). CUI includes sensitive technical data (e.g., design specs, system info) related to U.S. military and space applications. The Composites Business handles CUI and is therefore within CMMC scope. Without certification, the business risks disqualification from existing and future DoD programs.
It is mandatory to implement CMMC-compliant systems and processes to for all the organizations that are dealing with CUI.
Therefore, there will be one SAP instance specifically for CUI related entities. The migration for CUI related entities will be covered by US based data consultant using separate tools.
Special Requirements
Due to compliance requirement, there will be one SAP instance for Rest of the World and one for China specifically. For entities in China, the data will be loaded into SAP China instance while the entire migration process will remain the same as rest of the world.
To identify the record is for SAP China Instance, it will use below logic.
Customer Master Data - General Information
- The customer has sales area data in below entities.
- If the customer is used in both China entities and ROW, then the sales data needs to be created in both SAP China and ROW instances.
| SAP China Instance specific Sales Organization | |
Target Design
The technical design of the target for this conversion approach.
| Table | Field | Data Element | Field Description | Data Type | Length | Requirement |
|---|---|---|---|---|---|---|
Data Cleansing
| ID | Criticality | Error Message/Report Description | Rule | Output | Source System |
|---|---|---|---|---|---|
| Identify customer not used in the existing sales area | The general view and sales view is active, and the sales view is created for more than 2 years, but there is no sales transaction within the sales area for more than 2 years for this customer | ||||
| Fill in mandatory fields based on master data standards 1. Incoterm | For all the sold-to party and the sales view is active, but there is no incoterm maintained | ||||
| Fill in mandatory fields based on master data standards 2. Payment term | For all the payer party and the sales view is active, but there is no payment term maintained | ||||
| Fill in mandatory fields based on master data standards 3. Shipping Condition | For all the ship-to party and the sales view is active, but there is no shipping condition maintained | ||||
| 4. Validate non-ISO incoterm used, such as COL. CPU, DAT(replaced by DPU), PPA, PPD | |||||
| 5. Validate obsolete payment term maintained | |||||
| 6. Update obsolete CSR as business partner | |||||
| 7. Incoterm part 2 with "." maintained | |||||
| Fill in mandatory fields based on master data standards 8. Missing sales group | |||||
| Fill in mandatory fields based on master data standards 9. Missing sales office | |||||
| 10. Check non standard currency code in use such as US$ | |||||
| After merging due to sales area definition change, pick the main records when the value is different | |||||
Conversion Process
The high-level process is represented by the diagram below:
The ETL (Extract, Transform, Load) process is a structured approach to data migration and management, ensuring high-quality data is seamlessly transferred across systems. Here’s a breakdown of its key components:
1. Extraction
The process begins with extracting metadata and raw data from source systems, such as Syensqo ECC system (i.e., WP2/PF2) periodically. The extracted data is then staged for transformation.
2. Transformation
Once extracted, the data undergoes cleansing, consolidation, and governance. This step ensures data integrity, consistency, and compliance with business rules. The transformation process includes:
- Data validation to remove inconsistencies.
- Standardization to align formats across datasets.
- Business rule application to refine data for operational use.
3. Loading
The transformed data is then loaded into the target S4 Hana system.
For CUI instance, the ETL process will be similar, but it will not use Syniti tool.
Data Privacy and Sensitivity
For SAP CUI instances, the data will be processed by US Based consultants.Extraction
Extract data from a source into Syniti Migrate for SAP ROW and SAP China relevant entities. There are 2 possibilities:
- The data exists. Syniti Migrate connects to the source and loads the data into Syniti Migrate. There are 3 methods:
- Perform full data extraction from relevant tables in the source system(s).
- Perform extraction through the application layer.
- Only if Syniti Migrate cannot connect to the source, data is loaded to the repository from the provided source system extract/report.
- The data does not exist (or cannot be converted from its current state). The data is manually collected by the business directly in Syniti Migrate. This is to be conducted using DCT (Data Collection Template) in Syniti Migrate
The agreed Relevancy criteria is applied to the extracted records to identify the records that are applicable for the Target loads.
For SAP CUI related entities, it will be alternative extraction process and the data will be stored in approved tools.
Extraction Run Sheet
| Req # | Requirement Description | Team Responsible |
|---|---|---|
| Extraction Scope Definition | - Identify the source systems and databases involved. - Define the data objects (tables, fields, records) to be extracted. - Establish business rules for data selection. | Syniti / US Based Consultant for SAP CUI instance Syniti / LTC Data team |
| Extraction Methodology | - Specify the extraction approach (full, incremental, or delta extraction). - Determine the tools and technologies used. - Define data filtering criteria to exclude irrelevant records. | Syniti / US Based Consultant for SAP CUI instance |
| Extraction Execution Plan | - Establish execution timelines and batch processing schedules. - Assign responsibilities for extraction monitoring. - Document dependencies on other migration tasks. | Syniti / US Based Consultant for SAP CUI instance |
| Data Quality and Validation | - Define error handling mechanisms for extraction failures. | Syniti / US Based Consultant for SAP CUI instance |
Selection Screen
| Selection Ref Screen | Parameter Name | Selection Type | Requirement | Value to be entered/set |
|---|---|---|---|---|
| N/A | ||||
Data Collection Template (DCT)
Target Ready Data Collection Template will be created for data with exception of some fields which require transformation as mentioned in the transformation rule.DCT Rules
| Field Name | Field Description | Rule |
|---|---|---|
Extraction Dependencies
| Item # | Step Description | Team Responsible |
|---|---|---|
| 1 | Source System Availability
| Syensqo IT |
| 2 | Data Structure
| Syniti / US Based Consultant for SAP CUI instance |
| 3 | Referential Integrity
| Syniti / US Based Consultant for SAP CUI instance |
| 4 | Extraction Methodology
| Syniti / US Based Consultant for SAP CUI instance |
| 5 | Performance and Scalability Considerations
| Syniti / US Based Consultant for SAP CUI instance |
| 6 | Security and Compliance
| Syniti / US Based Consultant for SAP CUI instance |
Transformation
The Target fields are mapped to the applicable Legacy field that will be its source, this is a 3-way activity involving the Business, Functional team and Data team. This identifies the transformation activity required to allow Syniti Migrate to make the data Target ready:
- Perform value mapping and data transformation rules.
- Legacy values are mapped to the to-be values (this could include a default value)
- Values are transformed according to the rules defined in Syniti Migrate
- Prepare target-ready data in the structure and format that is required for loading via prescribed Load Tool. This step also produces the load data ready for business to perform Pre-load Data Validation
Transformation Run Sheet
| Item # | Step Description | Team Responsible |
|---|---|---|
| 1 | Transformation Scope Definition - Identify the source and target data structures. - Define business rules for data standardization. - Establish data cleansing requirements to remove inconsistencies. | Data Team |
| 2 | Data Mapping and Standardization - Align source fields with target fields. - Ensure unit consistency (e.g., currency, measurement units) | Data Team |
| 3 | Business Rule Application - Implement data enrichment/collection if applicable - Apply conditional transformations based on predefined logic/business rules | Data Team |
| 4 | Transformation Execution Plan - Define batch processing schedules. - Assign responsibilities for monitoring execution. - Establish error-handling mechanisms | Syniti |
Transformation Rules
| Rule # | Source system | Source Table | Source Field | Source Description | Target System | Target Table | Target Field | Target Description | Transformation Logic |
|---|---|---|---|---|---|---|---|---|---|
Transformation Mapping
| Mapping Table Name | Mapping Table Description |
|---|---|
| MAP_VKORG | Sales Organization Mapping Table |
| MAP_VTWEG | Distribution Channel Mapping Table |
| MAP_SPART | Division Mapping table |
| MAP_ZTERM | Payment terms Mapping table |
| MAP_PARVW | Partner Function Mapping table |
Transformation Dependencies
List the steps that need to occur before transformation can commence| Item # | Step Description | Team Responsible |
|---|---|---|
| 1 | Source Data Integrity - Ensure extracted data is complete, accurate, and consistent. - Validate that data types and formats align with transformation requirements. | Syniti / US Based Consultant for SAP CUI instance |
| 2 | Referential Integrity - Ensure dependent records are transformed together or in advance, such as CNV-3007 Business Partner General | Syniti / US Based Consultant for SAP CUI instance |
| 3 | Transformation Logic and Mapping - Define data mapping rules between source and target schemas. | Data Team |
| 4 | Performance and Scalability Considerations - Optimize transformation processes for large datasets. - Ensure system resources can handle transformation workloads | Syniti / US Based Consultant for SAP CUI instance |
| 5 | Logging and Error Handling - Maintain detailed logs of transformation activities. - Define error-handling procedures for failed transformations | Syniti / US Based Consultant for SAP CUI instance |
Pre-Load Validation
Project Team
Completeness
| Task | Action |
|---|---|
| Compare Data Counts |
|
| Validate the mandatory fields | Validate there is value for all the mandatory fields |
| Validate Primary Keys and Unique Constraints |
|
| Test Referential Integrity | Confirm dependent records exist in related tables |
Accuracy
| Task | Action |
|---|---|
| Validate the transformation | Validate the fields which require transformation have the value after transformation instead of the original field value |
| Check Data Consistency |
|
Business
Post-load validation is a critical step in data migration, ensuring that transferred data is accurate, complete, and functional within the target system.
1. Ensuring Data Integrity
After migration, data must be consistent with its original structure. Post-load validation checks for missing records, incorrect mappings, and formatting errors to prevent discrepancies.
2. Business Continuity
Faulty data can disrupt operations, leading to financial losses and inefficiencies. Validating post-load data ensures that applications function as expected, preventing downtime.
3. Error Detection and Resolution
By validating data post-migration, businesses can detect anomalies early, reducing the cost and effort required for corrections
Completeness
| Task | Action |
|---|---|
Accuracy
| Task | Action |
|---|---|
Load
The load process includes:
- Execute the automated data load into target system using load tool or product the load file if the load must be done manually
- Once the data is loaded to the target system, it will be extracted and prepared for Post Load Data Validation
Load Run Sheet
| Item # | Step Description | Team Responsible |
|---|---|---|
| 1 | Load Scope Definition - Identify the target system and database structure. - Define data objects (tables, fields, records) to be loaded. - Establish business rules for data validation. | Data team |
| 2 | Load Methodology - Specify the loading tools and technologies (Migration Cockpit, LSMW, custom loading program). | Syniti / US Based Consultant for SAP CUI instance |
| 3 | Data Quality and Validation - Ensure data integrity checks (null values, duplicates, format validation). - Perform pre-load validations to verify completeness. - Define error handling mechanisms for load failures | Syniti / US Based Consultant for SAP CUI instance |
| 4 | Load Execution Plan - Establish execution timelines and batch processing schedules. - Assign responsibilities for monitoring execution. - Document dependencies on other migration tasks | Syniti / US Based Consultant for SAP CUI instance |
| 5 | Logging and Reporting - Maintain detailed logs of loading activities. - Generate summary reports on loaded data volume and quality. - Define escalation procedures for errors | Syniti / US Based Consultant for SAP CUI instance |
Load Phase and Dependencies
The Business Partner General will be loaded in the pre-cutover period.
Before loading, it will have dependency on the configuration.
Configuration
| Item # | Configuration Item |
|---|---|
| 1 | Sales Area Definition |
| 2 | Sales Office Definition |
| 3 | Sales Group Definition |
| 4 | Payment Term definition |
| 5 | Define Tax Determination Rule |
Conversion Objects
| Object # | Preceding Object Conversion Approach |
|---|---|
| 3007 | Business Partner General (Role 000000) |
| Employee Personal Information | |
| 3011 | Business Partners - Contact Persons (BUP001) |
Error Handling
| Error Type | Error Description | Action Taken |
|---|---|---|
| Configuration / Data Transformation | The value XXX for field XXX doesn't exist |
|
| Configuration | There is mandatory field XXX missing |
|
Post-Load Validation
Project Team
Completeness
| Task | Action |
|---|---|
| Perform Source-to-Target Comparisons |
|
Accuracy
| Task | Action |
|---|---|
| Execute Sample Queries and Reports |
|
| Conduct Post-Migration Reconciliation | Generate reports comparing pre- and post-migration data. |
Business
Post-load validation is a critical step in data migration, ensuring that transferred data is accurate, complete, and functional within the target system.
1. Ensuring Data Integrity
After migration, data must be consistent with its original structure. Post-load validation checks for missing records, incorrect mappings, and formatting errors to prevent discrepancies.
2. Business Continuity
Faulty data can disrupt operations, leading to financial losses and inefficiencies. Validating post-load data ensures that applications function as expected, preventing downtime.
3. Error Detection and Resolution
By validating data post-migration, businesses can detect anomalies early, reducing the cost and effort required for corrections
Completeness
| Task | Action |
|---|---|
Accuracy
| Task | Action |
|---|---|
Key Assumptions
- Master Data Standard is up to date as on the date of documenting this conversion approach and data load.
- BP Customer sales view is in scope based on data design and any exception requested by business.
- There will be 3 SAP instances, one for ROW, one for China and one for CUI only.
- For SAP CUI instance, the migration activity will be handled by US based data consultant.
See also
Change log
Workflow history
| Title | Last Updated By | Updated | Status | |
|---|---|---|---|---|
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