Enhanced Edge Computing Model by using Data Combs for Big Data in Metaverse

Lakshmikanth Rajath Mohan T, N. Jayapandian
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Abstract

The Metaverse is a huge project undertaken by Facebook in order to bring the world closer together and help people live out their dreams. Even handicapped can travel across the world. People can visit any place and would be safe in the comfort of their homes. Meta (Previously Facebook) plans to execute this by using a combination of AR and VR (Augmented Reality and Virtual Reality). Facebook aims to bring this technology to the people soon. However, a big factor in this idea that needs to be accounted for is the amount of data generation that will take place. Many Computer Science professors and scientists believe that the amount of data Meta is going to generate in one day would almost be equal to the amount of data Instagram/Facebook would have generated in their entire lifetime. This will push the entire data generation by at least 30%, if not more. Using traditional methods such as cloud computing might seem to become a shortcoming in the near future. This is because the servers might not be able to handle such large amounts of data. The solution to this problem should be a system that is designed specifically for handling data that is extremely large. A system that is not only secure, resilient and robust but also must be able to handle multiple requests and connections at once and yet not slow down when the number of requests increases gradually over time. In this model, a solution called the DHA (Data Hive Architecture) is provided. These DHAs are made up of multiple subunits called Data Combs and those are further broken down into data cells. These are small units of memory which can process big data extremely fast. When information is requested from a client (Example: A Data Warehouse) that is stored in multiple edges across the world, then these Data Combs rearrange the data cells within them on the basis of the requested criteria. This article aims to explain this concept of data combs and its usage in the Metaverse.
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基于数据梳的元宇宙大数据边缘计算模型增强
Metaverse是Facebook的一个大型项目,目的是让世界更紧密地联系在一起,帮助人们实现梦想。即使是残疾人也可以周游世界。人们可以去任何地方,在舒适的家中也会很安全。Meta(以前的Facebook)计划通过AR和VR(增强现实和虚拟现实)的结合来实现这一目标。Facebook的目标是尽快将这项技术带给人们。然而,这个想法中需要考虑的一个重要因素是将要产生的数据量。许多计算机科学教授和科学家认为,Meta一天产生的数据量几乎等于Instagram/Facebook在他们一生中产生的数据量。这将使整个数据生成至少增加30%,甚至更多。在不久的将来,使用云计算等传统方法似乎会成为一个缺点。这是因为服务器可能无法处理如此大量的数据。这个问题的解决方案应该是一个专门为处理超大数据而设计的系统。一个不仅安全、有弹性和健壮的系统,还必须能够同时处理多个请求和连接,并且在请求数量随着时间的推移逐渐增加时不会减慢速度。在该模型中,提供了一种称为DHA (Data Hive Architecture)的解决方案。这些dha由称为数据梳的多个子单元组成,这些子单元进一步分解为数据单元。这些小内存单元可以非常快地处理大数据。当从存储在世界各地多个边中的客户机(例如:数据仓库)请求信息时,这些数据梳根据所请求的标准重新排列其中的数据单元。本文旨在解释数据梳的概念及其在meta中的用法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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