Review of Knowledge Management in Optical Networks, Lambda Architecture using Database Technologies in Cloud Settings

Abdul Joseph Fofanah
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引用次数: 1

Abstract

In this paper, we present concepts, theories, and overview of knowledge management in an autonomous optical networks and Lamba Architecture in cloud related environment. This study presents some illustrative cases that has been used to illustrate the potential application of KM architecture and to evaluate the various policies for the knowledge sharing and integration algorithm. Here the knowledge is used at the optical transponder system level, sharing, and integration implemented at the node level and supervising and data analytics (SDA) controller level. The KM process has been evaluated by integrating on a metro-network situation in terms of model error convergence time and the data shared among agents. Indeed, the propagation and reinforcement actions illustrated by similar convergence time than data-based policies at various phases of the network learning process without compromising the convergence accuracy of the model prediction. The Lambda Architecture is the new model for Big Data and database research focus, that helps in data processing with a balance on throughput, latency, and fault-tolerance. To provide a complete solution and better accuracy, low latency, and high throughput, there exists no single tool. This introduced the idea to use a set of tools and methods to build a comprehensive Big Data approach. Although this paper does not provide a developed and working tool, however, provides an outline and the methods used by researchers to overcome some of the shortcomings of Lambda Architecture. The Lambda Architecture defines a set of layers to fit in a set of tools and methods rightly for constructing a comprehensive Big Data scheme: Speed Layer, Serving Layer, Batch Layer. Each layer satisfies a set of features and builds upon the functionality delivered by the layers beneath it. The Batch Layer is the place where the master dataset is warehoused, which is an unchangeable and add-only set of raw data. Also, the batch layer computes before the results using a distributed processing system like Hadoop, Apache Spark that can manage large amounts of data. The Speed Layer encapsulates new data coming in real-time and processes it. The Serving Layer comprises a parallel processing query steam engine, that takes results from both Batch and Speed Layers and responds to questions and requests in real-time with low latency. Stack Overflow is a Question-and-Answer forum with an enormous user community, millions of posts with rapid growth over the years. This paper demonstrates the Lambda Architecture by constructing a data pipeline, to add a new “Recommended Questions” section in the Stack Overflow user profile and update the questions suggested in real-time. Additionally, various indicators such as trending tags, user performance numbers such as are shown in user dashboard by querying through batch processing layer. Finally, this paper provides a seamless search of the various methods or techniques used to help solve complex databases which are provided by Stack Overflow platform infrastructure.
光网络知识管理综述,Lambda架构在云环境下使用数据库技术
在本文中,我们介绍了自主光网络和Lamba架构在云相关环境中的知识管理的概念、理论和概述。本研究提出了一些说明性的案例,用于说明知识管理架构的潜在应用,并评估知识共享和集成算法的各种策略。在这里,知识用于光转发器系统级,在节点级和监督和数据分析(SDA)控制器级实现共享和集成。通过在城域网络中集成模型误差、收敛时间和智能体间共享的数据,对KM过程进行了评价。事实上,在网络学习过程的各个阶段,传播和强化行为表现出与基于数据的策略相似的收敛时间,而不会影响模型预测的收敛精度。Lambda架构是大数据和数据库研究的新模型,它有助于在数据处理中平衡吞吐量、延迟和容错性。要提供完整的解决方案以及更好的准确性、低延迟和高吞吐量,不存在单一的工具。这介绍了使用一套工具和方法来构建一个全面的大数据方法的想法。虽然这篇论文没有提供一个成熟的和有效的工具,但是,提供了一个大纲和研究人员用来克服Lambda架构的一些缺点的方法。Lambda架构定义了一组层,以适应构建一个全面的大数据方案所需的一组工具和方法:速度层、服务层、批处理层。每一层都满足一组特性,并建立在它下面的层所交付的功能之上。批处理层是存储主数据集的地方,这是一组不可更改且只能添加的原始数据。此外,批处理层使用分布式处理系统(如Hadoop、Apache Spark)在结果之前进行计算,这些系统可以管理大量数据。速度层封装实时传入的新数据并对其进行处理。服务层包括一个并行处理查询蒸汽机,它从批处理层和速度层获取结果,并以低延迟实时响应问题和请求。Stack Overflow是一个问答论坛,拥有庞大的用户社区,数百万的帖子在过去几年里快速增长。本文通过构建一个数据管道来演示Lambda架构,在Stack Overflow用户配置文件中添加一个新的“推荐问题”部分,并实时更新建议的问题。此外,还可以通过批处理层查询,在用户仪表板中显示趋势标签、用户性能数字等各种指标。最后,本文对Stack Overflow平台基础设施提供的用于帮助解决复杂数据库的各种方法或技术进行了无缝搜索。
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