Abstract
Modeling IT architecture is a complex, time consuming, and error prone task. However, many systems produce information that can be used for automating modeling. Early studies show that this is a feasible approach if we can overcome certain obstacles. Often more than one source is needed in order to cover the data requirements of an IT architecture model; and the use of multiple sources means that heterogeneous data needs to be merged. Moreover, the same collection of data might be useful for creating more than one kind of models for decision support. IT architecture is constantly changing and data sources provide information that can deviate from reality to some degree. There can be problems with varying accuracy (e.g. actuality and coverage), representation (e.g. data syntax and file format), or inconsistent semantics. Thus, integration of heterogeneous data from different sources needs to handle data quality problems of the sources. This can be done by using probabilistic models. In the field of truth discovery, these models have been developed to track data source trustworthiness in order to help solving conflicts while making quality issues manageable for automatic modeling. We build upon previous research in modeling automation and propose a framework for merging data from multiple sources with a truth discovery algorithm to create multiple IT architecture models. The usefulness of the proposed framework is demonstrated in a study where models using three tools are created, namely; Archi, securiCAD, and EMFTA.
Highlights
Modern enterprise architecture is complex [1]
The model conversion starts with the transformation of the data set that is in common language to the three model languages in focus, securiLANG, ArchiMate and Eclipse Modeling Framework based Fault-Tree Analysis (EMFTA)
This article proposes a framework for automatically creating holistic IT architecture models from machine-readable data
Summary
Modern enterprise architecture is complex [1]. Systems and software that have a prevalent role in everyday tasks are interconnected and used in different ways by employees, partners, and suppliers. These software and systems change when an organization keeps evolving. Representations that explain and characterize real system entities, can be employed to understand and manage such a complex reality. In order to base important decisions on models, the models need to be created using updated information [2]. For large organizations with many interconnected systems and software this is difficult, time consuming, and error prone
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