As-is process models are manually generated representations of how individuals – experts or process participants who deal with the process daily – believe a process truly functions in conventional Business Process Management (BPM). To-be models, on the other hand, explain how a process should, ideally or pragmatically, run in the future. The differences between the as-is and to-be models of the same process may then be used to determine the adjustments that must be made to the existing process to attain the intended future behavior. The emergence of process mining presents certain concerns with this viewpoint:
We set out to clarify these problems in this blog article, while also considering comparable difficulties around the concept of a to-be process model.
The goal of as-is process models is to capture how a process works in practice. However, as-is models do not have to replicate all of the intricacies of real-world behavior of all process instances. Given the famous George Box comment that “all models are flawed, but some are helpful,” an as-is model may, for example, merely reflect the happy path through a process to provide readers with a basic idea of how the process works at a glance. As-is process models can be developed using expert input, feedback from process participants, event log data, or a combination of the three:
In all cases, the type of model is a stand-alone model with different strengths and weaknesses:
Models that primarily use expert and process participant feedback are based on beliefs and experiences, whereas data-driven models are based on records. Only by integrating human-centered and data-driven viewpoints can we secure process knowledge; and, in any event, the amount of trust we have in a process model changes from instance to situation. The value of human experience is reflected in SAP Signavio’s Journey Modeler and Journey-to-Process Analytics tools.
We discussed above how well an as-is model reflects real-world process behavior. Therefore, we may analyze how well a potential model captures desired, attainable, and viable target process behavior. A future process model, for example, may represent the standard process that an enterprise software module implements or it could mirror an organization’s heritage process, although with a higher degree of automation. As a result, to objectively analyze the condition of a future process model, one might look at how well the model reflects:
Additionally, we must evaluate the to-be model’s use case, which influences the planned granularity and breadth. To-be models with the use case of automation, for example, may have more technological features than models produced for risk and compliance purposes, which may include descriptions of risks and controls that an ‘automation’ model does not. The use case consideration also extended to existing process models.
There are alternative name pairings for as-is and to-be. Current and future states, in particular, are commonly employed. For the following reasons, we advocate using as-is and to-be:
To determine whether a process model is indeed fit for its purpose, we recommend analyzing its limitations, i.e., whether the human or data-based input for as-is models accurately reflects reality, and whether the technological, socio-organizational, and business contexts of a process have been fully considered when developing a to-be process model. In a data-driven environment, we have presented a set of guidelines for how to think about as-is and to-be process models. We especially advise utilizing as-is and to-be as descriptors of a model’s purpose rather than its information origins.
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