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Dynamic SNR, Spectral Efficiency, and Rate Characterization in 5G/6G mmWave/sub-THz Systems with Macro- and Micro-Mobilities 具有宏观和微观功能的 5G/6G 毫米波/次 THz 系统中的动态 SNR、频谱效率和速率特性分析
Pub Date : 2024-07-06 DOI: 10.3390/fi16070240
Darya Y. Ostrikova, Elizaveta Golos, V. Beschastnyi, Egor Machnev, Yuliya V. Gaidamaka, Konstantin E. Samouylov
The performance of 5G/6G cellular systems operating in millimeter wave (mmWave, 30–100 GHz) and sub-terahertz (sub-THz, 100–300 GHz) bands is conventionally assessed by utilizing the static distributions of user locations. The rationale is that the use of the beam tracking procedure allows for keeping the beams of a base station (BS) and user equipment (UE) aligned at all times. However, by introducing 3GPP Reduced Capability (RedCap) UEs utilizing the Radio Resource Management (RRM) Relaxation procedure, this may no longer be the case, as UEs are allowed to skip synchronization signal blocks (SSB) to improve energy efficiency. Thus, to characterize the performance of such UEs, methods explicitly accounting for UE mobility are needed. In this paper, we will utilize the tools of the stochastic geometry and random walk theory to derive signal-to-noise ratio (SNR), spectral efficiency, and rate as an explicit function of time by accounting for mmWave/sub-THZ specifics, including realistic directional antenna radiation patterns and micro- and macro-mobilities causing dynamic antenna misalignment. Different from other studies in the field that consider time-averaged performance measures, these metrics are obtained as an explicit function of time. Our numerical results illustrate that the macro-mobility specifies the overall trend of the time-dependent spectral efficiency, while local dynamics at 1–3 s scales are mainly governed by micro-mobility. The difference between spectral efficiency corresponding to perfectly synchronized UE and BS antennas and time-dependent spectral efficiency in a completely desynchronized system is rather negligible for realistic cell coverages and stays within approximately 5–10% for a wide range of system parameters. These conclusions are not affected by the utilized antenna array at the BS side. However, accounting for realistic radiation patterns is critical for a time-dependent performance analysis of 5G/6G mmWave/sub-THz systems.
在毫米波(mmWave,30-100 GHz)和亚太赫兹(sub-THz,100-300 GHz)频段运行的 5G/6G 蜂窝系统的性能,通常是通过利用用户位置的静态分布来评估的。其原理是,使用波束跟踪程序可使基站(BS)和用户设备(UE)的波束始终保持对齐。然而,通过引入使用无线资源管理(RRM)放松程序的 3GPP 小容量(RedCap)UE,情况可能不再如此,因为允许 UE 跳过同步信号块(SSB)以提高能效。因此,要鉴定这类 UE 的性能,需要明确考虑 UE 移动性的方法。在本文中,我们将利用随机几何和随机漫步理论的工具,通过考虑毫米波/亚高频的具体情况,包括现实的定向天线辐射模式以及导致动态天线错位的微观和宏观移动性,得出信噪比(SNR)、频谱效率和速率作为时间的显式函数。与该领域其他考虑时间平均性能指标的研究不同,这些指标是作为时间的明确函数获得的。我们的数值结果表明,宏观移动性决定了随时间变化的频谱效率的整体趋势,而 1-3 秒尺度的局部动态主要受微观移动性的影响。完全同步的 UE 和 BS 天线对应的频谱效率与完全非同步系统中随时间变化的频谱效率之间的差异,在现实的小区覆盖范围内可以忽略不计,并且在广泛的系统参数范围内保持在大约 5-10% 的范围内。这些结论不受 BS 侧使用的天线阵列的影响。然而,考虑现实的辐射模式对于 5G/6G 毫米波/亚太赫兹系统随时间变化的性能分析至关重要。
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引用次数: 0
TWIN-ADAPT: Continuous Learning for Digital Twin-Enabled Online Anomaly Classification in IoT-Driven Smart Labs TWIN-ADAPT:物联网驱动的智能实验室中数字孪生在线异常分类的持续学习
Pub Date : 2024-07-04 DOI: 10.3390/fi16070239
Ragini Gupta, Beitong Tian, Yaohui Wang, Klara Nahrstedt
In the rapidly evolving landscape of scientific semiconductor laboratories (commonly known as, cleanrooms), integrated with Internet of Things (IoT) technology and Cyber-Physical Systems (CPSs), several factors including operational changes, sensor aging, software updates and the introduction of new processes or equipment can lead to dynamic and non-stationary data distributions in evolving data streams. This phenomenon, known as concept drift, poses a substantial challenge for traditional data-driven digital twin static machine learning (ML) models for anomaly detection and classification. Subsequently, the drift in normal and anomalous data distributions over time causes the model performance to decay, resulting in high false alarm rates and missed anomalies. To address this issue, we present TWIN-ADAPT, a continuous learning model within a digital twin framework designed to dynamically update and optimize its anomaly classification algorithm in response to changing data conditions. This model is evaluated against state-of-the-art concept drift adaptation models and tested under simulated drift scenarios using diverse noise distributions to mimic real-world distribution shift in anomalies. TWIN-ADAPT is applied to three critical CPS datasets of Smart Manufacturing Labs (also known as “Cleanrooms”): Fumehood, Lithography Unit and Vacuum Pump. The evaluation results demonstrate that TWIN-ADAPT’s continual learning model for optimized and adaptive anomaly classification achieves a high accuracy and F1 score of 96.97% and 0.97, respectively, on the Fumehood CPS dataset, showing an average performance improvement of 0.57% over the offline model. For the Lithography and Vacuum Pump datasets, TWIN-ADAPT achieves an average accuracy of 69.26% and 71.92%, respectively, with performance improvements of 75.60% and 10.42% over the offline model. These significant improvements highlight the efficacy of TWIN-ADAPT’s adaptive capabilities. Additionally, TWIN-ADAPT shows a very competitive performance when compared with other benchmark drift adaptation algorithms. This performance demonstrates TWIN-ADAPT’s robustness across different modalities and datasets, confirming its suitability for any IoT-driven CPS framework managing diverse data distributions in real time streams. Its adaptability and effectiveness make it a versatile tool for dynamic industrial settings.
在集成了物联网(IoT)技术和网络物理系统(CPS)的科学半导体实验室(通常称为洁净室)快速发展的环境中,包括操作变化、传感器老化、软件更新和引入新工艺或设备在内的一些因素会导致不断变化的数据流中出现动态和非稳态数据分布。这种现象被称为概念漂移,对用于异常检测和分类的传统数据驱动数字孪生静态机器学习(ML)模型构成了巨大挑战。随着时间的推移,正常数据和异常数据分布的漂移会导致模型性能下降,从而导致高误报率和漏报异常情况。为了解决这个问题,我们提出了 TWIN-ADAPT,这是一个数字孪生框架内的持续学习模型,旨在根据不断变化的数据条件动态更新和优化其异常分类算法。我们根据最先进的概念漂移适应模型对该模型进行了评估,并在模拟漂移场景下使用不同的噪声分布进行了测试,以模拟真实世界中异常分布的变化。TWIN-ADAPT 应用于智能制造实验室(也称为 "洁净室")的三个关键 CPS 数据集:通风、光刻装置和真空泵。评估结果表明,在 Fumehood CPS 数据集上,TWIN-ADAPT 用于优化和自适应异常分类的持续学习模型实现了较高的准确率和 F1 分数,分别为 96.97% 和 0.97,与离线模型相比,平均性能提高了 0.57%。在光刻和真空泵数据集上,TWIN-ADAPT 的平均准确率分别为 69.26% 和 71.92%,比离线模型的性能分别提高了 75.60% 和 10.42%。这些重大改进凸显了 TWIN-ADAPT 自适应能力的功效。此外,与其他基准漂移自适应算法相比,TWIN-ADAPT 的性能极具竞争力。这种性能证明了 TWIN-ADAPT 在不同模式和数据集上的鲁棒性,证实了它适用于任何物联网驱动的 CPS 框架,管理实时流中的各种数据分布。它的适应性和有效性使其成为动态工业环境中的多功能工具。
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引用次数: 0
Enhancing Autonomous Driving Navigation Using Soft Actor-Critic 利用软行为批判增强自动驾驶导航功能
Pub Date : 2024-07-04 DOI: 10.3390/fi16070238
Badr Ben Elallid, Nabil Benamar, Miloud Bagaa, Yassine Hadjadj-Aoul
Autonomous vehicles have gained extensive attention in recent years, both in academia and industry. For these self-driving vehicles, decision-making in urban environments poses significant challenges due to the unpredictable behavior of traffic participants and intricate road layouts. While existing decision-making approaches based on Deep Reinforcement Learning (DRL) show potential for tackling urban driving situations, they suffer from slow convergence, especially in complex scenarios with high mobility. In this paper, we present a new approach based on the Soft Actor-Critic (SAC) algorithm to control the autonomous vehicle to enter roundabouts smoothly and safely and ensure it reaches its destination without delay. For this, we introduce a destination vector concatenated with extracted features using Convolutional Neural Networks (CNN). To evaluate the performance of our model, we conducted extensive experiments in the CARLA simulator and compared it with the Deep Q-Network (DQN) and Proximal Policy Optimization (PPO) models. Qualitative results reveal that our model converges rapidly and achieves a high success rate in scenarios with high traffic compared to the DQN and PPO models.
近年来,自动驾驶汽车在学术界和工业界都获得了广泛关注。由于交通参与者的行为难以预测,道路布局错综复杂,因此对于这些自动驾驶车辆来说,在城市环境中进行决策是一项重大挑战。虽然现有的基于深度强化学习(DRL)的决策方法显示出应对城市驾驶情况的潜力,但它们的收敛速度较慢,尤其是在流动性较高的复杂场景中。在本文中,我们提出了一种基于软行为批判(SAC)算法的新方法,以控制自动驾驶汽车平稳、安全地进入环形交叉路口,并确保其无延迟地到达目的地。为此,我们使用卷积神经网络(CNN)将目的地向量与提取的特征串联起来。为了评估我们模型的性能,我们在 CARLA 模拟器中进行了大量实验,并将其与深度 Q 网络(DQN)和近端策略优化(PPO)模型进行了比较。定性结果表明,与 DQN 和 PPO 模型相比,我们的模型收敛速度快,在高流量场景下成功率高。
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引用次数: 0
Software-Bus-Toolchain (SBT): Introducing a Versatile Method for Quickly Implementing (I)IoT-Scenarios 软件总线工具链(SBT):介绍快速实施(I)物联网场景的多功能方法
Pub Date : 2024-07-03 DOI: 10.3390/fi16070237
Simon D. Duque Anton
The Internet of Things (IoT) has become ubiquitous. IoT devices are applied in a multitude of applications, e.g., in smart home scenarios, building automation, smart energy and smart cities, healthcare, and industrial environments. Fast and efficient implementation and roll-out of IoT devices is a critical factor for successs and acceptance of IoT devices. At the same time, the variety of hardware platforms that can be used for IoT applications, as well as the number of IoT orchestration platforms is increasing. Finding the right combination of tooling and hardware is not trivial, but essential for building applications that provide value. In this work, a Software-Bus-Toolchain (SBT) is introduced that encapsulates firmware design, data point definition, and communication protocol usage. Furthermore, an IoT control platform is provided to control and evaluate the IoT modules. Thus, using the SBT, solely the business logic has to be designed, while the hardware-design is automated to a high degree. Usage of the Zephyr framework allows the interchange of hardware modules, while interfaces provide easy adaption of data points and communication capabilities. The implementation of interfaces to the IoT-platform as well as to the communication layer provides a universal usage of logic and data elements. The SBT is evaluated in two application scenarios, where its flexible nature is shown.
物联网(IoT)已变得无处不在。物联网设备应用广泛,如智能家居场景、楼宇自动化、智能能源和智能城市、医疗保健和工业环境等。快速、高效地实施和推广物联网设备是物联网设备成功和被接受的关键因素。与此同时,可用于物联网应用的硬件平台种类以及物联网协调平台的数量也在不断增加。找到工具和硬件的正确组合并非易事,但对于构建有价值的应用却至关重要。在这项工作中,介绍了一种软件总线工具链(SBT),它封装了固件设计、数据点定义和通信协议使用。此外,还提供了一个物联网控制平台,用于控制和评估物联网模块。因此,使用 SBT,只需设计业务逻辑,而硬件设计则可高度自动化。使用 Zephyr 框架可实现硬件模块的互换,而接口则可轻松调整数据点和通信能力。与物联网平台和通信层的接口实现了逻辑和数据元素的通用。我们在两个应用场景中对 SBT 进行了评估,并展示了它的灵活性。
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引用次数: 0
Does Anyone Care about the Opinion of People on Participating in a “Social” Metaverse? A Review and a Draft Proposal for a Surveying Tool 是否有人关心人们对参与 "社交 "元宇宙的看法?调查工具回顾与建议草案
Pub Date : 2024-07-02 DOI: 10.3390/fi16070236
Stefano Mottura
In recent years, the attention paid to the metaverse in the scientific world has increased; the hottest topics include system architecture and enabling technologies, as well as business, privacy, ethical, and security issues. On the other side, at the mainstream level, it is well known that the company Meta (formerly Facebook) is striving to realize its interpretation of a “social” metaverse. As Meta is a big leader of social media, it is reasonable to guess that, in the future, users will participate in a new social platform, such as that which the company is building by depicting unlimited and engaging opportunities. Regardless of Meta, we ask what the opinion of people is about this possible future scenario. A literature search of previous works about this topic has been done; the few results we found were not properly on topic and showed heterogeneous content. A survey on interpretations of the metaverse of major information and communication technologies (ICT) companies that impact the consumer world was undertaken; the results show that Meta is the most prominent company with the mission of building a ”social” metaverse worldwide. Finally, a draft of a tool for assessing the predilection of people for a “social” metaverse, based on various facets of the future social platform, is proposed.
近年来,科学界对元宇宙的关注与日俱增;最热门的话题包括系统架构和使能技术,以及商业、隐私、伦理和安全问题。另一方面,在主流层面,众所周知,Meta 公司(前身为 Facebook)正在努力实现其对 "社交 "元宇宙的诠释。由于 Meta 公司是社交媒体领域的领军企业,我们有理由猜测,未来用户将参与到一个新的社交平台中,比如该公司通过描绘无限的参与机会而建立的平台。无论 Meta 如何,我们要问的是,人们对这种未来可能出现的情况有何看法。我们对以往有关这一主题的著作进行了文献检索,发现为数不多的成果并不符合主题,内容也参差不齐。我们还对影响消费者世界的主要信息和通信技术(ICT)公司对元宇宙的解释进行了调查;结果显示,Meta 是以在全球建立 "社会 "元宇宙为使命的最著名公司。最后,根据未来社交平台的各个方面,提出了评估人们对 "社交 "元宇宙偏好的工具草案。
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引用次数: 0
A Packet Content-Oriented Remote Code Execution Attack Payload Detection Model 以数据包内容为导向的远程代码执行攻击有效载荷检测模型
Pub Date : 2024-07-02 DOI: 10.3390/fi16070235
Enbo Sun, Jiaxuan Han, Yiquan Li, Cheng Huang
In recent years, various Remote Code Execution vulnerabilities on the Internet have been exposed frequently; thus, more and more security researchers have begun to pay attention to the detection of Remote Code Execution attacks. In this paper, we focus on three kinds of common Remote Code Execution attacks: XML External Entity, Expression Language Injection, and Insecure Deserialization. We propose a packet content-oriented Remote Code Execution attack payload detection model. For the XML External Entity attack, we propose an algorithm to construct the use-definition chain of XML entities, and implement detection based on the integrity of the chain and the behavior of the chain’s tail node. For the Expression Language Injection and Insecure Deserialization attack, we extract 34 features to represent the string operation and the use of sensitive classes/methods in the code, and then train a machine learning model to implement detection. At the same time, we build a dataset to evaluate the effect of the proposed model. The evaluation results show that the model performs well in detecting XML External Entity attacks, achieving a precision of 0.85 and a recall of 0.94. Similarly, the model performs well in detecting Expression Language Injection and Insecure Deserialization attacks, achieving a precision of 0.99 and a recall of 0.88.
近年来,互联网上各种远程代码执行(Remote Code Execution)漏洞频频曝光,越来越多的安全研究人员开始关注远程代码执行攻击的检测。本文重点讨论三种常见的远程代码执行攻击:XML 外部实体、表达式语言注入和不安全反序列化。我们提出了一种面向数据包内容的远程代码执行攻击有效载荷检测模型。针对 XML 外部实体攻击,我们提出了一种构建 XML 实体使用定义链的算法,并根据链的完整性和链尾节点的行为实施检测。针对表达式语言注入和不安全反序列化攻击,我们提取了 34 个特征来表示代码中的字符串操作和敏感类/方法的使用,然后训练一个机器学习模型来实现检测。同时,我们建立了一个数据集来评估所提出模型的效果。评估结果表明,该模型在检测 XML 外部实体攻击方面表现良好,精确度达到 0.85,召回率达到 0.94。同样,该模型在检测表达式语言注入和不安全反序列化攻击方面也表现出色,精确度达到 0.99,召回率达到 0.88。
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引用次数: 0
Multi-Agent Deep Reinforcement Learning-Based Fine-Grained Traffic Scheduling in Data Center Networks 数据中心网络中基于多代理深度强化学习的细粒度流量调度
Pub Date : 2024-03-31 DOI: 10.3390/fi16040119
Huiting Wang, Yazhi Liu, Wei Li, Zhigang Yang
In data center networks, when facing challenges such as traffic volatility, low resource utilization, and the difficulty of a single traffic scheduling strategy to meet demands, it is necessary to introduce intelligent traffic scheduling mechanisms to improve network resource utilization, optimize network performance, and adapt to the traffic scheduling requirements in a dynamic environment. This paper proposes a fine-grained traffic scheduling scheme based on multi-agent deep reinforcement learning (MAFS). This approach utilizes In-Band Network Telemetry to collect real-time network states on the programmable data plane, establishes the mapping relationship between real-time network state information and the forwarding efficiency on the control plane, and designs a multi-agent deep reinforcement learning algorithm to calculate the optimal routing strategy under the current network state. The experimental results demonstrate that compared to other traffic scheduling methods, MAFS can effectively enhance network throughput. It achieves a 1.2× better average throughput and achieves a 1.4–1.7× lower packet loss rate.
在数据中心网络中,面对流量波动大、资源利用率低、单一流量调度策略难以满足需求等挑战,有必要引入智能流量调度机制,提高网络资源利用率,优化网络性能,适应动态环境下的流量调度需求。本文提出了一种基于多代理深度强化学习(MAFS)的细粒度流量调度方案。该方法利用带内网络遥测技术收集可编程数据平面的实时网络状态,建立实时网络状态信息与控制平面转发效率之间的映射关系,并设计多代理深度强化学习算法计算当前网络状态下的最优路由策略。实验结果表明,与其他流量调度方法相比,MAFS 能有效提高网络吞吐量。其平均吞吐量提高了 1.2 倍,丢包率降低了 1.4-1.7 倍。
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引用次数: 0
Data Structure and Management Protocol to Enhance Name Resolving in Named Data Networking 增强命名数据网络中名称解析的数据结构和管理协议
Pub Date : 2024-03-30 DOI: 10.3390/fi16040118
Manar Aldaoud, Dawood Al-Abri, M. Awadalla, F. Kausar
Named Data Networking (NDN) is a future Internet architecture that requires an Inter-Domain Routing (IDR) to route its traffic globally. Address resolution is a vital component of any IDR system that relies on a Domain Name System (DNS) resolver to translate domain names into their IP addresses in TCP/IP networks. This paper presents a novel two-element solution to enhance name-to-delivery location resolution in NDN networks, consisting of (1) a mapping table data structure and a searching mechanism and (2) a management protocol to automatically populate and modify the mapping table. The proposed solution is implemented and tested on the Peer Name Provider Server (PNPS) mapping table, and its performance is compared with two other algorithms: component and character tries. The findings show a notable enhancement in the operational speed of the mapping table when utilizing the proposed data structure. For instance, the insertion process is 37 times faster compared to previous algorithms.
命名数据网络(NDN)是一种未来的互联网架构,它需要域间路由(IDR)来对其流量进行全球路由。地址解析是任何 IDR 系统的重要组成部分,它依赖于域名系统 (DNS) 解析器将域名转换为 TCP/IP 网络中的 IP 地址。本文提出了一种新颖的两要素解决方案,以增强 NDN 网络中名称到交付位置的解析,包括:(1) 映射表数据结构和搜索机制;(2) 自动填充和修改映射表的管理协议。我们在对等名称提供商服务器(PNPS)映射表上实施并测试了所提出的解决方案,并将其性能与其他两种算法(组件和字符尝试)进行了比较。研究结果表明,采用建议的数据结构后,映射表的运行速度明显提高。例如,插入过程比以前的算法快 37 倍。
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引用次数: 0
Performance Evaluation of Graph Neural Network-Based RouteNet Model with Attention Mechanism 基于注意机制的图神经网络 RouteNet 模型性能评估
Pub Date : 2024-03-29 DOI: 10.3390/fi16040116
Binita Kusum Dhamala, Babu R. Dawadi, Pietro Manzoni, B. K. Acharya
Graph representation is recognized as an efficient method for modeling networks, precisely illustrating intricate, dynamic interactions within various entities of networks by representing entities as nodes and their relationships as edges. Leveraging the advantage of the network graph data along with deep learning technologies specialized for analyzing graph data, Graph Neural Networks (GNNs) have revolutionized the field of computer networking by effectively handling structured graph data and enabling precise predictions for various use cases such as performance modeling, routing optimization, and resource allocation. The RouteNet model, utilizing a GNN, has been effectively applied in determining Quality of Service (QoS) parameters for each source-to-destination pair in computer networks. However, a prevalent issue in the current GNN model is their struggle with generalization and capturing the complex relationships and patterns within network data. This research aims to enhance the predictive power of GNN-based models by enhancing the original RouteNet model by incorporating an attention layer into its architecture. A comparative analysis is conducted to evaluate the performance of the Modified RouteNet model against the Original RouteNet model. The effectiveness of the added attention layer has been examined to determine its impact on the overall model performance. The outcomes of this research contribute to advancing GNN-based network performance prediction, addressing the limitations of existing models, and providing reliable frameworks for predicting network delay.
图表示法是公认的网络建模有效方法,它通过将实体表示为节点,将它们之间的关系表示为边,精确地说明了网络中各种实体之间错综复杂的动态交互。图神经网络(GNN)利用网络图数据的优势和专门用于分析图数据的深度学习技术,有效处理结构化图数据,为性能建模、路由优化和资源分配等各种用例提供精确预测,从而彻底改变了计算机网络领域。利用 GNN 的 RouteNet 模型已被有效地应用于确定计算机网络中每对源到目的地的服务质量(QoS)参数。然而,当前 GNN 模型的一个普遍问题是难以概括和捕捉网络数据中的复杂关系和模式。本研究旨在通过在原始 RouteNet 模型的架构中加入注意力层来增强基于 GNN 模型的预测能力。通过对比分析,评估了修改后的 RouteNet 模型与原始 RouteNet 模型的性能。对添加的注意力层的有效性进行了研究,以确定其对模型整体性能的影响。本研究的成果有助于推进基于 GNN 的网络性能预测,解决现有模型的局限性,并为预测网络延迟提供可靠的框架。
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引用次数: 0
Implementing Federated Governance in Data Mesh Architecture 在数据网格架构中实施联合治理
Pub Date : 2024-03-29 DOI: 10.3390/fi16040115
Anton Dolhopolov, Arnaud Castelltort, Anne Laurent
Analytical data platforms have been used for decades to improve organizational performance. Starting from the data warehouses used primarily for structured data processing, through the data lakes oriented for raw data storage and post-hoc data analyses, to the data lakehouses—a combination of raw storage and business intelligence pre-processing for improving the platform’s efficacy. But in recent years, a new architecture called Data Mesh has emerged. The main promise of this architecture is to remove the barriers between operational and analytical teams in order to boost the overall value extraction from the big data. A number of attempts have been made to formalize and implement it in existing projects. Although being defined as a socio-technical paradigm, data mesh still lacks the technology support to enable its widespread adoption. To overcome this limitation, we propose a new view of the platform requirements alongside the formal governance definition that we believe can help in the successful adoption of the data mesh. It is based on fundamental aspects such as decentralized data domains and federated computational governance. In addition, we also present a blockchain-based implementation of a mesh platform as a practical validation of our theoretical proposal. Overall, this article demonstrates a novel research direction for information system decentralization technologies.
几十年来,分析数据平台一直被用于提高组织绩效。从主要用于结构化数据处理的数据仓库开始,到面向原始数据存储和事后数据分析的数据湖,再到数据湖--一种原始存储和商业智能预处理的组合,以提高平台的效率。但近年来,出现了一种名为数据网格(Data Mesh)的新架构。这种架构的主要承诺是消除运营团队和分析团队之间的障碍,以提高从大数据中提取的整体价值。在现有项目中,已经有许多人尝试将其正式化并加以实施。数据网格虽然被定义为一种社会技术范式,但仍然缺乏技术支持,无法得到广泛应用。为了克服这一局限性,我们提出了一种新的平台需求观点以及正式的管理定义,我们相信这有助于数据网格的成功应用。它基于去中心化数据域和联合计算治理等基本方面。此外,我们还介绍了基于区块链的网状平台实现,作为我们理论建议的实际验证。总之,本文展示了信息系统去中心化技术的新研究方向。
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引用次数: 0
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Future Internet
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