18,826 research outputs found

    Mining Transaction Data for Process Instance Monitoring in Legacy Systems

    Get PDF
    End-to-End business processes in organizations are implemented across multiple applications, legacy systems, ERP systemsand products. In such scenarios where applications are developed over a period of time and with varying technologies,monitoring end-to-end business processes is a challenge. Typical methods for providing process monitoring capabilities areintrusive methods like changing code and introducing probes; or introducing new software tools like EAI and BAM. Wepropose a non-intrusive process instance monitoring (PIM) method that uses the persistent data generated by the businesstransactions to monitor the process instances in Legacy Information Systems. We propose a slightly unconventional datamining method where the transaction data is parsed from the application data stores, loaded into custom schema and thenassociated to the process flow for monitoring the state of individual process instances. The approach further provides foralerting when business events like an SLA violation occur

    Semantic business process management: a vision towards using semantic web services for business process management

    Get PDF
    Business process management (BPM) is the approach to manage the execution of IT-supported business operations from a business expert's view rather than from a technical perspective. However, the degree of mechanization in BPM is still very limited, creating inertia in the necessary evolution and dynamics of business processes, and BPM does not provide a truly unified view on the process space of an organization. We trace back the problem of mechanization of BPM to an ontological one, i.e. the lack of machine-accessible semantics, and argue that the modeling constructs of semantic Web services frameworks, especially WSMO, are a natural fit to creating such a representation. As a consequence, we propose to combine SWS and BPM and create one consolidated technology, which we call semantic business process management (SBPM

    Towards an Intelligent Workflow Designer based on the Reuse of Workflow Patterns

    Get PDF
    In order to perform process-aware information systems we need sophisticated methods and concepts for designing and modeling processes. Recently, research on workflow patterns has emerged in order to increase the reuse of recurring workflow structures. However, current workflow modeling tools do not provide functionalities that enable users to define, query, and reuse workflow patterns properly. In this paper we gather a suite for both process modeling and normalization based on workflow patterns reuse. This suite must be used in the extension of some workflow design tool. The suite comprises components for the design of processes from both legacy systems and process modeling

    Data mining and fusion

    No full text

    Case and Activity Identification for Mining Process Models from Middleware

    Get PDF
    Process monitoring aims to provide transparency over operational aspects of a business process. In practice, it is a challenge that traces of business process executions span across a number of diverse systems. It is cumbersome manual engineering work to identify which attributes in unstructured event data can serve as case and activity identifiers for extracting and monitoring the business process. Approaches from literature assume that these identifiers are known a priori and data is readily available in formats like eXtensible Event Stream (XES). However, in practice this is hardly the case, specifically when event data from different sources are pooled together in event stores. In this paper, we address this research gap by inferring potential case and activity identifiers in a provenance agnostic way. More specifically, we propose a semi-automatic technique for discovering event relations that are semantically relevant for business process monitoring. The results are evaluated in an industry case study with an international telecommunication provider
    • …
    corecore