A Green Software Development Life Cycle for Cloud Computing

2013 ◽  
Vol 15 (1) ◽  
pp. 28-34 ◽  
Author(s):  
Nitin Singh Chauhan ◽  
Ashutosh Saxena
2018 ◽  
Vol 4 (2) ◽  
pp. 183
Author(s):  
Luh Gede Surya Kartika ◽  
Komang Rinartha ◽  
Ni Luh Putri Srinadi

Komputasi yang dilakukan dengan tidak bijak dapat menjadi salah satu faktor yang berperan langsung terhadap emisi gas rumah kaca yang berdampak pada pemanasan global. Teknologi informasi dan komunikasi dapat juga memberikan kontribusi signifikan dalam penghematan energi melalui optimalisasi efisiensi dari penggunanya dan mendorong perubahan sikap perilaku pengguna. Penelitian ini dilakukan pada usaha tanaman hias (nursery) anggrek di Denpasar. Hingga saat ini, usaha Nursery Anggrek mengalami perkembangan yang cukup signifkan. Penelitian ini berupaya menghasilkan sebuah Sistem Informasi Manajemen (SIM) Nursery Anggrek. Pendekatan yang digunakan dalam alur perekayasaan adalah mengadaptasi dari Green Software Development Life Cycle sesuai dengan GREENSOFT Model. Tujuan dari konsep pengembangan perangkat lunak yang hijau adalah menghasilkan sebuah perangkat lunak yang ketika digunakan tidak akan membutuhkan kinerja CPU yang besar, memerlukan bandwith dan memory yang kecil, serta ketika dipasang tidak berukuran besar. Dampak akhirnya adalah usaha Nursery Anggrek dapat melakukan perubahan proses bisnis agar efisiensi energi dapat maksimal. Penelitian ini merupakan tahap pertama dari dua tahap penelitian yaitu: pengembangan perangkat lunak dan evaluasi sistem. Tahap pertama terdiri dari kegiatan: (1) analisis kebutuhan; (2) perancangan dan pengkodean; dan (3) pengujian sistem. Hasil dari penelitian tahap pertama ini menghasilkan sebuah perangkat lunak dengan spesifikasi sesuai dengan kebutuhan Nursery Anggrek.


Author(s):  
Sharefa Murad

Cloud computing is getting probably the most objective, purpose, and dreams in most IT organizations on account of the advantages they are getting by relocating their advancements into it like expense and asset sparing. Green blurring processing is turning into a significant pattern with a solid relationship with distributed computing. It is about green and productivity that won't just prompt a superior business yet in addition a superior world. This paper will discuss a major phase of the software development life cycle, which is an arrangement, and how the selection of sending computerization is superior to the manual one particularly in a manner to make your cloud green.  


Author(s):  
Andriy Lishchytovych ◽  
Volodymyr Pavlenko

The present article describes setup, configuration and usage of the key performance indicators (KPIs) of members of project teams involved into the software development life cycle. Key performance indicators are described for the full software development life cycle and imply the deep integration with both task tracking systems and project code management systems, as well as a software product quality testing system. To illustrate, we used the extremely popular products - Atlassian Jira (tracking development tasks and bugs tracking system) and git (code management system). The calculation of key performance indicators is given for a team of three developers, two testing engineers responsible for product quality, one designer, one system administrator, one product manager (responsible for setting business requirements) and one project manager. For the key members of the team, it is suggested to use one integral key performance indicator per the role / team member, which reflects the quality of the fulfillment of the corresponding role of the tasks. The model of performance indicators is inverse positive - the initial value of each of the indicators is zero and increases in the case of certain deviations from the standard performance of official duties inherent in a particular role. The calculation of the proposed key performance indicators can be fully automated (in particular, using Atlassian Jira and Atlassian Bitbucket (git) or any other systems, like Redmine, GitLab or TestLink), which eliminates the human factor and, after the automation, does not require any additional effort to calculate. Using such a tool as the key performance indicators allows project managers to completely eliminate bias, reduce the emotional component and provide objective data for the project manager. The described key performance indicators can be used to reduce the time required to resolve conflicts in the team, increase productivity and improve the quality of the software product.


Author(s):  
Sampada G.C ◽  
Tende Ivo Sake ◽  
Amrita

Background: With the advancement in the field of software development, software poses threats and risks to customers’ data and privacy. Most of these threats are persistent because security is mostly considered as a feature or a non-functional requirement, not taken into account during the software development life cycle (SDLC). Introduction: In order to evaluate the security performance of a software system, it is necessary to integrate the security metrics during the SDLC. The appropriate security metrics adopted for each phase of SDLC aids in defining the security goals and objectives of the software as well as quantify the security in the software. Methods: This paper presents systematic review and catalog of security metrics that can be adopted during the distinguishable phases of SDLC, security metrics for vulnerability and risk assessment reported in the literature for secure development of software. The practices of these metrics enable software security experts to improve the security characteristics of the software being developed. The critical analysis of security metrics of each phase and their comparison are also discussed. Results: Security metrics obtained during the development processes help to improve the confidentiality, integrity, and availability of software. Hence, it is imperative to consider security during the development of the software, which can be done with the use of software security metrics. Conclusion: This paper reviews the various security metrics that are meditated in the copious phases during the progression of the SDLC in order to provide researchers and practitioners with substantial knowledge for adaptation and further security assessment.


2016 ◽  
Vol 685 ◽  
pp. 881-885
Author(s):  
Alexey Ponomarev ◽  
Hitesh S. Nalamwar

Software traceability is an important part in software development that is getting more and more attention nowadays from organizations and researchers. The paper outlines the importance, different methods and techniques of software traceability. It also explains the need of automating traceability, problems and drawbacks of existing traceability tools, the ongoing challenges facing implementation of traceability in software development life cycle, and finally the paper discusses whether software traceability should be mandated as a key to improve software evolution


2021 ◽  
Vol 28 (1) ◽  
Author(s):  
M.A. Adeagbo ◽  
J.E.T. Akinsola ◽  
A.A. Awoseyi ◽  
F. Kasali

Selection of a suitable Software Development Life Cycle (SDLC) model for project implementation is somewhat confusing as there are a lot of SDLC models with similar strengths and weaknesses. Also, the solutions proffered among the researchers so far have been the  qualitative comparative analysis of SDLC models. Hence, this paper proposes a comparative analysis of SDLC models using quantitative approach in relation to strengths and weaknesses of SDLC models. The study adapted comparative analysis and Software Development Life Cycle (SDLC) models features’ classification using ten characteristics such as project complexity, project size, project duration, project with risk, implementation/initial cost, error discovery, associated cost, risk analysis, maintenance and cost estimation. A quantitative measure that employs online survey using experts in software design and engineering, project management and system analysis was carried out for the evaluation of SDLC models. Purposeful Stratified Random Sampling (SRS) technique was used to gather the data for analysis using XLSTAT after pre-processing, taking into consideration both benefit and cost criteria. The overall performance evaluation showed that Spiral-Model is the best followed by V-Model and lastly Waterfall Model with comparative values of 38.63%, 35.76% and 25.61% respectively. As regards cost estimation, Waterfall Model is the most efficient with value of 41%, then V-Model with 31% and lastly Spiral Model with 28%. V-Model has great error recovery capability with value of 45% which is closely followed by Spiral Model with 37% and lastly Waterfall Model with 18%. The study revealed that, a model with efficient risk assurance does not guarantee efficient cost management. In the future work, more characteristics regarding SDLC models shall be considered.


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