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Engineering of Dependable Complex Business Processes Using UML and Coordinated Atomic Actions
TLDR
In this paper, we present an approach for developing dependable complex business processes using UML that satisfies these requirements. Expand
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Why the United States is becoming more vulnerable to natural disasters
The United States is becoming more vulnerable to natural hazards mostly because of changes in population and national wealth density—more people and more societal infrastructure have becomeExpand
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Design of a (Yet Another?) DevOps Course
TLDR
DevOps have received marginal attention inside the higher education level curricula despite of its boom in the industrial sector. Expand
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MEDAL: a case tool extension for model-driven software engineering
TLDR
The complexity of today's software systems leads to the creation of many related diagrams, representing different viewpoints, different levels of abstraction and different implementation alternatives. Expand
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TESMA: Requirements and Design of a Tool for Educational Programs
TLDR
We present TESMA, an open-source tool dedicated to the specification and management (including certification) of teaching programs. Expand
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Messir: a text-first DSL-based approach for UML requirements engineering (tool demo)
TLDR
This tool paper presents the design and tool-support of Messir, an approach centered on textual domain-specific languages supported by our open-source UML requirements engineering tool, named Excalibur. Expand
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TESMA : Towards the Development of a Tool for Specification, Management and Assessment of Teaching Programs
TLDR
We present an on-going project called TESMA whose objective is to provide an open-source tool dedicated to the specification and management (including certification) of teaching programs. Expand
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Software Engineering for Dataset Augmentation using Generative Adversarial Networks
TLDR
We propose a rigorous process for generating synthetic data to improve the training of neural networks using conditional generative adversarial networks. Expand
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