Invocation of Multi-Cloud Infrastructure Services in Web-Based Semantic Discovery System

2021 ◽  
pp. 3-18
Author(s):  
B. Bazeer Ahamed ◽  
Murugan Krishnamoorthy
2021 ◽  
Vol 102 ◽  
pp. 102124
Author(s):  
K.A. Torkura ◽  
Muhammad I.H. Sukmana ◽  
Feng Cheng ◽  
Christoph Meinel

Author(s):  
Rao Mikkilineni ◽  
Mark Burgin

The General Theory of Information (GTI) tells us that information is represented, processed and communicated using physical structures. The physical universe is made up of structures combining matter and energy. According to GTI, “Information is related to knowledge as energy is related to matter.” GTI also provides tools to deal with transformation of information and knowledge. We present here, the application of these tools for the design of digital autopoietic machines with higher efficiency, resiliency and scalability than the information processing systems based on the Turing machines. We discuss the utilization of these machines for building autopoietic and cognitive applications in a multi-cloud infrastructure.


2016 ◽  
Vol 2016 ◽  
pp. 1-19
Author(s):  
Huamin Zhu ◽  
Lifa Wu ◽  
Kangyu Huang ◽  
Zhenji Zhou

Nowadays more and more cloud infrastructure service providers are providing large numbers of service instances which are a combination of diversified resources, such as computing, storage, and network. However, for cloud infrastructure services, the lack of a description standard and the inadequate research of systematic discovery and selection methods have exposed difficulties in discovering and choosing services for users. First, considering the highly configurable properties of a cloud infrastructure service, the feature model method is used to describe such a service. Second, based on the description of the cloud infrastructure service, a systematic discovery and selection method for cloud infrastructure services are proposed. The automatic analysis techniques of the feature model are introduced to verify the model’s validity and to perform the matching of the service and demand models. Finally, we determine the critical decision metrics and their corresponding measurement methods for cloud infrastructure services, where the subjective and objective weighting results are combined to determine the weights of the decision metrics. The best matching instances from various providers are then ranked by their comprehensive evaluations. Experimental results show that the proposed methods can effectively improve the accuracy and efficiency of cloud infrastructure service discovery and selection.


2018 ◽  
Vol 7 (2) ◽  
pp. 62 ◽  
Author(s):  
Yongyao Jiang ◽  
Yun Li ◽  
Chaowei Yang ◽  
Fei Hu ◽  
Edward Armstrong ◽  
...  

JAMIA Open ◽  
2021 ◽  
Vol 4 (2) ◽  
Author(s):  
Nicholas O'Grady ◽  
David L Gibbs ◽  
Kawther Abdilleh ◽  
Adam Asare ◽  
Smita Asare ◽  
...  

Abstract Objectives In this paper, we discuss leveraging cloud-based platforms to collect, visualize, analyze, and share data in the context of a clinical trial. Our cloud-based infrastructure, Patient Repository of Biomolecular Entities (PRoBE), has given us the opportunity for uniform data structure, more efficient analysis of valuable data, and increased collaboration between researchers. Materials and Methods We utilize a multi-cloud platform to manage and analyze data generated from the clinical Investigation of Serial Studies to Predict Your Therapeutic Response with Imaging And moLecular Analysis 2 (I-SPY 2 TRIAL). A collaboration with the Institute for Systems Biology Cancer Gateway in the Cloud has additionally given us access to public genomic databases. Applications to I-SPY 2 data have been built using R Shiny, while leveraging Google's BigQuery tables and SQL commands for data mining. Results We highlight the implementation of PRoBE in several unique case studies including prediction of biomarkers associated with clinical response, access to the Pan-Cancer Atlas, and integrating pathology images within the cloud. Our data integration pipelines, documentation, and all codebase will be placed in a Github repository. Discussion and conclusion We are hoping to develop risk stratification diagnostics by integrating additional molecular, magnetic resonance imaging, and pathology markers into PRoBE to better predict drug response. A robust cloud infrastructure and tool set can help integrate these large datasets to make valuable predictions of response to multiple agents. For that reason, we are continuously improving PRoBE to advance the way data is stored, accessed, and analyzed in the I-SPY 2 clinical trial.


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