Overview and architecture of the SAP CDC capabilities
Article
APPLIES TO:
Azure Data Factory
Azure Synapse Analytics
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Learn about the SAP change data capture (CDC) capabilities in Azure Data Factory and understand the architecture.
Azure Data Factory is an ETL and ELT data integration platform as a service (PaaS). For SAP data integration, Data Factory currently offers six general availability connectors:
Data extraction needs
The SAP connectors in Data Factory extract SAP source data only in batches. Each batch processes existing and new data the same. In data extraction in batch mode, changes between existing and new datasets aren't identified. This type of extraction mode isn’t optimal when you have large datasets like tables that have millions or billions of records that change often.
You can keep your copy of SAP data fresh and up-to-date by frequently extracting the full dataset, but this approach is expensive and inefficient. You also can use a manual, limited workaround to extract mostly new or updated records. In a process called watermarking, extraction requires using a timestamp column, monotonically increasing values, and continuously tracking the highest value since the last extraction. But some tables don't have a column that you can use for watermarking. This process also doesn't identify a deleted record as a change in the dataset.
SAP CDC capabilities
Microsoft customers indicate that they need a connector that can extract only the delta between two sets of data. In data, a delta is any change in a dataset that's the result of an update, insert, or deletion in the dataset. A delta extraction connector uses the SAP change data capture (CDC) feature that exists in most SAP systems to determine the delta in a dataset. The SAP CDC capabilities in Data Factory use the SAP Operational Data Provisioning (ODP) framework to replicate the delta in an SAP source dataset.
This article provides a high-level architecture of the SAP CDC capabilities in Azure Data Factory. Get more information about the SAP CDC capabilities:
The SAP CDC connector is the core of the SAP CDC capabilities. It can connect to all SAP systems that support ODP, which includes SAP ECC, SAP S/4HANA, SAP BW, and SAP BW/4HANA. The solution works either directly at the application layer or indirectly via an SAP Landscape Transformation Replication Server (SLT) as a proxy. It doesn't rely on watermarking to extract SAP data either fully or incrementally. The data the SAP CDC connector extracts includes not only physical tables but also logical objects that are created by using the tables. An example of a table-based object is an SAP Advanced Business Application Programming (ABAP) Core Data Services (CDS) view.
Use the SAP CDC connector with Data Factory features like mapping data flow activities, and tumbling window triggers for a low-latency SAP CDC replication solution in a self-managed pipeline.
The SAP CDC architecture
The SAP CDC solution in Azure Data Factory is a connector between SAP and Azure. The SAP side includes the SAP ODP connector that invokes the ODP API over standard Remote Function Call (RFC) modules to extract full and delta raw SAP data.
The Azure side includes the mapping data flow that can transform and load the SAP data into any data sink supported by mapping data flows. Some of these options are storage destinations like Azure Data Lake Storage Gen2 or databases like Azure SQL Database or Azure Synapse Analytics. The mapping data flow activity also can load the results in Data Lake Storage Gen2 in delta format. You can use the Delta Lake Time Travel feature to produce snapshots of SAP data for a specific period. You can run your pipeline and mapping data flows frequently by using a Data Factory tumbling window trigger to replicate SAP data in Azure with low latency and without using watermarking.
To get started, create an SAP CDC linked service, an SAP CDC source dataset, and a pipeline with a mapping data flow activity in which you use the SAP CDC source dataset. To extract the data from SAP, a self-hosted integration runtime is required that you install on an on-premises computer or on a virtual machine (VM) that has a line of sight to your SAP source systems or your SLT server. The mapping data flow activity runs on a serverless Azure Databricks or Apache Spark cluster, or on an Azure integration runtime. A staging storage is required to be configured in mapping data flow activity to make your self-hosted integration runtime work seamlessly with mapping data flow integration runtime.
The SAP CDC connector uses the SAP ODP framework to extract various data source types, including:
SAP extractors, originally built to extract data from SAP ECC and load it into SAP BW
ABAP CDS views, the new data extraction standard for SAP S/4HANA
InfoProviders and InfoObjects datasets in SAP BW and SAP BW/4HANA
SAP application tables, when you use an SAP LT replication server (SLT) as a proxy
In this process, the SAP data sources are providers. The providers run on SAP systems to produce either full or incremental data in an operational delta queue (ODQ). The mapping data flow source is a subscriber of the ODQ.
Because ODP completely decouples providers from subscribers, any SAP documentation that offers provider configurations are applicable to Data Factory as a subscriber. For more information about ODP, see Introduction to operational data provisioning.
Azure SQL data tracking module that covers database synchronization, data changes tracking and recording. The module explores tools such as change data capture (CDC), SQL Data Sync, and change tracking.