2 research outputs found
Enhancing Data Security for Cloud Computing Applications through Distributed Blockchain-based SDN Architecture in IoT Networks
Blockchain (BC) and Software Defined Networking (SDN) are some of the most
prominent emerging technologies in recent research. These technologies provide
security, integrity, as well as confidentiality in their respective
applications. Cloud computing has also been a popular comprehensive technology
for several years. Confidential information is often shared with the cloud
infrastructure to give customers access to remote resources, such as
computation and storage operations. However, cloud computing also presents
substantial security threats, issues, and challenges. Therefore, to overcome
these difficulties, we propose integrating Blockchain and SDN in the cloud
computing platform. In this research, we introduce the architecture to better
secure clouds. Moreover, we leverage a distributed Blockchain approach to
convey security, confidentiality, privacy, integrity, adaptability, and
scalability in the proposed architecture. BC provides a distributed or
decentralized and efficient environment for users. Also, we present an SDN
approach to improving the reliability, stability, and load balancing
capabilities of the cloud infrastructure. Finally, we provide an experimental
evaluation of the performance of our SDN and BC-based implementation using
different parameters, also monitoring some attacks in the system and proving
its efficacy.Comment: 12 Pages 16 Figures 3 Table
Machine learning and deep learning-based approach in smart healthcare: Recent advances, applications, challenges and opportunities
In recent years, machine learning (ML) and deep learning (DL) have been the leading approaches to solving various challenges, such as disease predictions, drug discovery, medical image analysis, etc., in intelligent healthcare applications. Further, given the current progress in the fields of ML and DL, there exists the promising potential for both to provide support in the realm of healthcare. This study offered an exhaustive survey on ML and DL for the healthcare system, concentrating on vital state of the art features, integration benefits, applications, prospects and future guidelines. To conduct the research, we found the most prominent journal and conference databases using distinct keywords to discover scholarly consequences. First, we furnished the most current along with cutting-edge progress in ML-DL-based analysis in smart healthcare in a compendious manner. Next, we integrated the advancement of various services for ML and DL, including ML-healthcare, DL-healthcare, and ML-DL-healthcare. We then offered ML and DL-based applications in the healthcare industry. Eventually, we emphasized the research disputes and recommendations for further studies based on ou