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What is XaaS? 


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XaaS, or Everything as a Service, refers to the provision of various services to customers through distributed computing, often utilizing cloud computing technology. It is a part of the digital transformation of businesses, where companies offer services based on innovative technologies like cloud computing . XaaS involves the delivery of internal services to other actors in a service ecosystem, with the aim of advancing businesses and promoting products . This concept has been successfully implemented in various industries, such as the financial industry, where new players have utilized services like crowdfunding, digital identity services, and cryptocurrency exchanges to effectively implement XaaS . XaaS can also be applied in scientific research, specifically in the field of X-ray absorption spectroscopy (XAS), where it is used to monitor changes in oxidation states, coordination numbers, and interatomic distances of active sites under different conditions . Additionally, XaaS has security implications, and measures need to be taken to ensure safe operation and protect against hacking attacks .

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XaaS stands for Everything as a Service, which is a service where software components are provided to users over a network and users pay for the components they use.
The provided paper does not mention XaaS.
Book ChapterDOI
Tobias Riasanow, Helmut Krcmar 
01 Jan 2020
1 Citations
XaaS stands for "Everything as a Service" and refers to the provision of internal enterprise services to other actors in a service ecosystem, enabled by technologies like cloud computing.
XaaS stands for Everything-as-a-Service. It is extensively explained in the paper as a concept that utilizes distributed computing to provide various types of services to customers.

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