Book Chapter10.1016/b978-0-323-91150-4.00006-9
Cloud-based non-destructive characterization
Arash Heidari,Nima Jafari Navimipour,Akira Otsuki +2 more
- 01 Jan 2024
- pp 727-765
12
TL;DR: Cloud-based non-destructive characterization (CNDCT) offers benefits and challenges. The chapter explores the obstacles and benefits of CNDCT, including a comparison with traditional system testing.
read more
Abstract: Cloud services have grown in popularity; businesses, organizations, industries, and academic institutions use cloud services such as Cloud Non-destructive Characterization Testing (CNDCT), also known as Cloud Testing (CT). Vendors compete to deliver highly reliable services, diverse requirements, and product qualities. The CT platforms can test cloud-based systems or use the cloud for testing purposes: both approaches have sparked interest in the research. Cloud testing draws many companies and sectors worldwide by offering potential solutions for managing software applications and providing convenient testing environments. Because of cloud computing, Testing as a Service (TaaS) was born. Given the capabilities of TaaS, it has created several issues and obstacles, particularly in cloud-based, non-destructive testing environments. So, this chapter reviews and addresses the obstacles and benefits of CNDCT, including a theoretical comparison between the cloud-based testing environment and traditional standard system testing.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
A Novel Blockchain-Based Deepfake Detection Method Using Federated and Deep Learning Models
Arash Heidari,Nima Jafari Navimipour,Hasan Dag,Samira Talebi,Mehmet Kursad Unal +4 more
TL;DR: The approach combines the strengths of SegCaps and convolutional neural network methods for improved image feature extraction, followed by capsule network training to enhance generalization, and introduces a novel data normalization technique to tackle data heterogeneity stemming from diverse global data sources.
28
The applications of nature‐inspired algorithms in Internet of Things‐based healthcare service: A systematic literature review
Zahra Amiri,Arash Heidari,Mohammad Zavvar,Nima Jafari Navimipour,Mansour Esmaeilpour +4 more
TL;DR: Nature-inspired algorithms in IoT-based healthcare service: A systematic literature review. This review explores the applications of nature-inspired algorithms in IoT-based healthcare services, addressing algorithmic integration challenges, implementation issues, and efficacy. It identifies gaps such as standardized evaluation metrics and studies on integration challenges and security considerations. The review categorizes algorithms into groups, highlighting MATLAB as the predominant programming language and adaptability as the paramount parameter.
23
Blockchain with secure data transactions and energy trading model over the internet of electric vehicles
Taher Al‐Shehari,Mohammed Kadrie,Taha Alfakih,Hussain AlSalman,T. Kuntavai,R.G. Vidhya,C. Dhanamjayulu,Shubhi Shukla,B. Zorina Khan +8 more
TL;DR: This study proposes a Blockchain-based secure data and energy trading model for the Internet of Electric Vehicles (IoEV), incorporating a Mayfly Pelican Optimization Algorithm (MPOA) for account mapping and various security features to protect data and energy trade.
6
Cloud spot instance price forecasting multi-headed models tuned using modified PSO
Mohamed Salb,Luka Jovanovic,Ali Elsadai,Nebojša Bačanin,Vladimir Šimić,Dragan Pamučar,Miodrag Živković +6 more
4
A new cloud-based method for composition of healthcare services using deep reinforcement learning and Kalman filtering
Chongzhou Zhong,Mehdi Darbandi,Mohammad Nassr,Ahmad Latifian,Mehdi Hosseinzadeh,Nima Jafari Navimipour +5 more
TL;DR: This study proposes a cloud-based method for healthcare service composition using deep reinforcement learning and Kalman filtering, addressing high energy consumption, cost, and response time issues, and achieving optimal service selection and composition solutions with improved availability and reliability.
3
References
Resource management for Infrastructure as a Service (IaaS) in cloud computing: A survey
TL;DR: This paper focuses on some of the important resource management techniques such as resource provisioning, resource allocation, resource mapping and resource adaptation for IaaS in cloud computing.
624
EvoDroid: segmented evolutionary testing of Android apps
Riyadh Mahmood,Nariman Mirzaei,Sam Malek +2 more
- 11 Nov 2014
TL;DR: EvoDroid overcomes a key shortcoming of using evolutionary techniques for system testing, i.e., the inability to pass on genetic makeup of good individuals in the search, and has the ability to achieve significantly higher code coverage than existing Android testing tools.
The Cloud Adoption Toolkit: supporting cloud adoption decisions in the enterprise
TL;DR: In this article, the authors describe the challenges that decision makers face when assessing the feasibility of the adoption of cloud computing in their organizations, and describe Cloud Adoption Toolkit, which has been developed to support this process.
275
Security and privacy protection in cloud computing: Discussions and challenges
TL;DR: This work introduces some privacy security risks of cloud computing and proposes a comprehensive privacy security protection framework, and shows and discusses the research progress of several technologies, such as access control; ciphertext policy attribute-based encryption (CP-ABE); key policy attributes based encryption (KP-ABe); and multi-tenant, trust, and a combination of multiple technologies.
239
Non-destructive state detection for quantum logic spectroscopy of molecular ions
TL;DR: It is shown that individual quantum states in the molecular ion can be distinguished by the strength of their coupling to the optical dipole force and implemented a variant of quantum logic spectroscopy of a molecular resonance.