Automating Business Modelling Automating Business Modelling
Advanced Information and Knowledge Processing

Automating Business Modelling

A Guide to Using Logic to Represent Informal Methods and Support Reasoning

    • 134,99 €
    • 134,99 €

Beschreibung des Verlags

Enterprise Modelling (EM) methods are frequently used by entrepreneurs as an analysis tool for describing and redesigning their businesses. The resulting product, an enterprise model, is commonly used as a blueprint for reconstructing organizations and such effort is often a part of business process re-engineering and improvement initiatives.

Automating Business Modelling describes different techniques of providing automated support for enterprise modelling methods and introduces universally used approaches. A running example of a business modelling method is included; providing a framework and detailed explanation as to how to construct automated support for modelling, allowing readers to follow the method to create similar support.

Suitable for senior undergraduates and postgraduates of Business Studies, Computer Science and Artificial Intelligence, practitioners in the fields of Knowledge Management, Enterprise Modelling and Software Engineering, this book offers insight and know-how to both student and professional.

GENRE
Business und Finanzen
ERSCHIENEN
2006
30. März
SPRACHE
EN
Englisch
UMFANG
339
Seiten
VERLAG
Springer London
ANBIETERINFO
Springer Science & Business Media LLC
GRÖSSE
4,2
 MB
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