The company’s reference data (or master data ) is unique and fundamental information necessary to feed all the processes of the company. As applications multiply, each producing a phenomenal amount of data – and a sizable share of duplicates and errors), master data is the point of truth that powers processes. The result: fewer errors and increased performance.
Data governs both the organization of companies and their activity. They are also of different natures:
This wealth of data makes their management (called Master Data Management) a strategic subject for IS. All business processes are based on their proper implementation. Operations that must be fed quickly, with a high degree of confidence in the compliance and correctness of the data.
Suppose the final objective of Master Data Management is to circulate reliable, available, and exhaustive data throughout the IS. In that case, it is necessary to address a certain number of issues to achieve this objective:
The weight of each of these issues on data architecture differs from one company to another. Therefore, it calls for a personalized organization, which will take into account business needs and guarantee the best possible circulation of data on a technical level.
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The architecture chosen to exchange reference data across the entire IS has a strong impact on the organization. It conditions the resources used and the speed of information processing. Each type of architecture will correspond to a particular mode of consultation of the data.
Among the most common architectures, there are four main solutions:
This first type of architecture is organized around a central tool, the MDM software which will collect and unify information. The software tools dedicated to MDM are based on deduplication, data tracing, and monitoring functions throughout the life cycle. As soon as it is collected, the data is structured according to the company’s business rules, thus establishing a unique version of the data.
This is how it will provide the greatest added value and the greatest possible efficiency to the processes.MDM makes it possible to establish precise control over the entire data lifecycle. With regulations and data integrity taking precedence in many industries, this control is often the predominant criterion for successful architecture.
This architecture is based on the current concept of microservices: classified into a certain number of services, business applications themselves take charge of the data that concerns them. With this model, the reference data is therefore delocalized for each application and not centralized. Any other instance wishing to consult the data will have to retrieve it from the master application. This architecture makes it possible to guarantee true business data integrity. These do not undergo standardization, as would be the case with a single tool.
Their quality is better preserved. However, the distributed model creates a complex organization, which requires knowing the location of the data well and keeping the system synchronized in the event of modification thereof. The distributed architecture also raises an important application availability challenge. A significant part of the process then depends on the performance of the information transfer.
This model attempts to reconcile centralized and distributed architectures. The data, still managed individually by the applications, is easier to locate: a virtual repository acts as an information mediator, communicating the location of the data to the applications that consult it. Here again, the question of the availability and the freshness of the data is complex. The virtual model creates opacity as to which applications manage the data.
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The management of master data is a real fundamental subject: it calls for a strategic reflection around how the company’s processes, the main users of the data, are organized.
Reference data must now support the customer-centric strategy of companies: customer data must be quickly collected and cross-checked to offer a high-performance user experience. But the need for quality and traceability continues to prevail, especially in highly regulated sectors. To make the right choice, it is necessary to identify the purpose of the data and their level of sensitivity and anticipate the volumes of data and the applications that will use it.
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