AI-assisted virtualization software: Difference between revisions

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== History ==
The initial concept of virtualization dates back to the 1960s, with the advent of [[mainframe computer]]s. It wasn't until the early 2000s, however, when companies like [[VMware]] and [[Microsoft]] made it mainstream. The integration of AI into this established technology is a much more recent development, evolving with the rapid advancements in AI research and applications over the last decade. AI-assisted virtualization software began to gain significant attention in the early 2020s as businesses and researchers began to acknowledge the potential of AI in automating and optimizing various aspects of virtualization.<ref>{{Cite journal |lastlast1=Haenlein |firstfirst1=Michael |last2=Kaplan |first2=Andreas |date=August 2019 |title=A Brief History of Artificial Intelligence: On the Past, Present, and Future of Artificial Intelligence |url=http://journals.sagepub.com/doi/10.1177/0008125619864925 |journal=California Management Review |language=en |volume=61 |issue=4 |pages=5–14 |doi=10.1177/0008125619864925 |s2cid=199866730 |issn=0008-1256}}</ref>
 
== Functionality ==
AI-assisted virtualization software operates by leveraging AI techniques such as [[machine learning]], [[deep learning]], and [[neural network]]s to make more accurate predictions and decisions regarding the management of virtual environments. Key features include intelligent automation, predictive analytics, and dynamic resource allocation.<ref>{{Cite journal |lastlast1=Sharma |firstfirst1=Sachin |last2=Nag |first2=Avishek |last3=Cordeiro |first3=Luis |last4=Ayoub |first4=Omran |last5=Tornatore |first5=Massimo |last6=Nekovee |first6=Maziar |date=2020-11-23 |title=Towards explainable artificial intelligence for network function virtualization |url=http://dx.doi.org/10.1145/3386367.3431673 |journal=Proceedings of the 16th International Conference on emergingEmerging Networking EXperiments and Technologies |pages=558–559 |___location=New York, NY, USA |publisher=ACM |doi=10.1145/3386367.3431673|isbn=9781450379489 |s2cid=227154563 }}</ref><ref>{{Cite book |title=Artificial intelligence for autonomous networks |date=2019 |publisher=CRC Press, Taylor & Francis Group |isbn=978-0-8153-5531-1 |editor-last=Gilbert |editor-first=Mazin |series=Chapman & Hall/CRC artificial intelligence and robotics series |___location=Boca Raton London New York}}</ref>
 
* Intelligent Automation: Automating tasks such as resource provisioning and routine maintenance. The AI learns from ongoing operations and can predict and perform necessary tasks autonomously.
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AI-assisted virtualization software has had a profound impact on various sectors. It has revolutionized cloud computing by optimizing the use of resources and significantly reducing costs. In healthcare, the technology is used to create virtual patient profiles that can be easily accessed and updated, improving diagnosis and treatment. It is also used in data centers to improve performance and energy efficiency.<ref>{{Cite book |last=Anwar |first=Mohd. Sadique Shaikh |title=Bigdata and Business Virtualization |year=2018 |isbn=978-6139872022}}</ref>
 
Furthermore, AI-assisted virtualization has had notable contributions in the field of network function virtualization (NFV). It has enabled a more dynamic and flexible virtual network infrastructure, capable of auto-scaling based on network load, identifying potential threats, and autonomously recovering from faults.<ref>{{Cite journal |lastlast1=Jagannath |firstfirst1=Jithin |last2=Ramezanpour |first2=Keyvan |last3=Jagannath |first3=Anu |date=2022-05-16 |title=Digital Twin Virtualization with Machine Learning for IoT and Beyond 5G Networks |url=http://dx.doi.org/10.1145/3522783.3529519 |journal=Proceedings of the 2022 ACM Workshop on Wireless Security and Machine Learning |pages=81–86 |___location=New York, NY, USA |publisher=ACM |doi=10.1145/3522783.3529519|isbn=9781450392778 |s2cid=247957748 }}</ref>
 
== Challenges ==
Despite its many advantages, AI-assisted virtualization software is not without its challenges. Implementing this type of software requires a high degree of technological sophistication and can incur significant costs. There are also concerns about the risks associated with AI, such as algorithmic bias and security vulnerabilities. Additionally, there are issues related to governance, ethics, and regulations of AI technologies.<ref>{{Cite book |lastlast1=Rawat |firstfirst1=Danda B. |title=Convergence of Cloud with AI for Big Data Analytics: Foundations and Innovation |last2=Awasthi |first2=Lalit K |last3=Balas |first3=Valentina Emilia |last4=Kumar |first4=Mohit |last5=Samriya |first5=Jitendra Kumar |publisher=Scrivener Publishing LLC |year=2023 |isbn=9781119904885}}</ref>
 
== Future prospects ==
As the fields of AI and virtualization continue to evolve, AI-assisted virtualization software is expected to become more advanced and integrated into an even wider range of applications. Future trends may include advanced self-healing systems, integration with quantum computing, and the development of more sophisticated AI models that can autonomously manage increasingly complex virtual environments.<ref>{{Cite journal |date=2020 |editor-last=Hemanth |editor-first=Jude |editor2-last=Bhatia |editor2-first=Madhulika |editor3-last=Geman |editor3-first=Oana |title=Data Visualization and Knowledge Engineering |url=http://dx.doi.org/10.1007/978-3-030-25797-2 |journal=Lecture Notes on Data Engineering and Communications Technologies |volume=32 |doi=10.1007/978-3-030-25797-2 |isbn=978-3-030-25796-5 |s2cid=241311770 |issn=2367-4512}}</ref>
 
== See also ==