scholarly journals Architectural design of experience based factory model for software development process in cloud computing: integration with workflow and multi-agent system

2018 ◽  
Vol 9 (4S) ◽  
pp. 210
Author(s):  
M. Hanafiah ◽  
R. Abdullah ◽  
J. Din ◽  
M.A.A. Murad
TEKNOKOM ◽  
2018 ◽  
Vol 1 (1) ◽  
pp. 11-22
Author(s):  
Mukhsin

Sistem informasi Emergency Health Cardterpadu berbasis cloud computingmerupakan salah satu pemanfaatan teknologi yang menggunakan Smardcard Usb Drive sebagai web monitoring yang digunakan untuk pengeleloaan terhadap data pasien dan rekam medis di rumah sakit.Proses Perancangan Arsitektur Sistem dimaksudkan untuk membantu setiap rumah sakit didalam mengelola data pasien, ketika seorang pasien berobat ke rumah sakit yang berbeda tidak harus ada pencatatan ulang tetapi dengan menggunakan teknologi Smardcard Usb Drive dan database yang disimpan secara cloud computing, sistem sudah terintegrasi dengan seluruh rumah sakit.Metode Perancangan Arsitektur Sistem Informasi yang digunakan adalah Metode Unified Software Development Process(USDP) dimana metode ini digunakan untuk membangun sebuah kerangka kerja (framework) yang digunakan untuk pengembangan aplikasi. Proses pengembangan perangkat lunak yang dibagi dalam beberapa fase, dimana setiap fase tersebut dilakukan beberapa tahap kerja yang dilakukan secara berulang.Proses penelitian ini dilakukan dengan merancang arsitektur sistem informasi terhadap data pasien dan rekam medis kemudian sistem ini memiliki kemampuan untuk memonitoring perkembangan kesehatan pasien walaupun dari rumah sakit yang berbeda-beda secara online.


Author(s):  
Rosario Girardi ◽  
Adriana Leite

Automating software engineering tasks is crucial to achieve better productivity of software development and quality of software products. Knowledge engineering approaches this challenge by supporting the representation and reuse of knowledge of how and when to perform a development task. Therefore, knowledge tools for software engineering can turn more effective the software development process by automating and controlling consistency of modeling tasks and code generation. This chapter introduces the description of the domain and application design phases of MADAE-Pro, an ontology-driven process for agent-oriented development, along with how reuse is performed between these sub-processes. Two case studies have been conducted to evaluate MADAE-Pro from which some examples of the domain and application design phases have been extracted and presented in this chapter. The first case study assesses the Multi-Agent Domain Design sub-process of MADAE-Pro through the design of a multi-agent system family of recommender systems supporting alternative (collaborative, content-based, and hybrid) filtering techniques. The second one evaluates the Multi-Agent Application Design sub-process of MADAE-Pro through the design of InfoTrib, a Tax Law recommender system that provides recommendations based on new tax law information items using a content-based filtering technique.


Author(s):  
Rosario Girardi ◽  
Adriana Leite

Automating software engineering tasks is crucial to achieve better productivity of software development and quality of software products. Knowledge engineering approaches this challenge by supporting the representation and reuse of knowledge of how and when to perform a development task. Therefore, knowledge tools for software engineering can turn more effective the software development process by automating and controlling consistency of modeling tasks and code generation. This chapter introduces the description of the domain and application design phases of MADAE-Pro, an ontology-driven process for agent-oriented development, along with how reuse is performed between these sub-processes. Two case studies have been conducted to evaluate MADAE-Pro from which some examples of the domain and application design phases have been extracted and presented in this chapter. The first case study assesses the Multi-Agent Domain Design sub-process of MADAE-Pro through the design of a multi-agent system family of recommender systems supporting alternative (collaborative, content-based, and hybrid) filtering techniques. The second one evaluates the Multi-Agent Application Design sub-process of MADAE-Pro through the design of InfoTrib, a Tax Law recommender system that provides recommendations based on new tax law information items using a content-based filtering technique.


Sign in / Sign up

Export Citation Format

Share Document