Scalability and information personal privacy are vital for training and deploying large-scale deep learning models.Federated learning trains models on exclusive information by aggregating weights from various devices ...Scalability and information personal privacy are vital for training and deploying large-scale deep learning models.Federated learning trains models on exclusive information by aggregating weights from various devices and taking advantage of the device-agnostic environment of web browsers.Nevertheless,relying on a main central server for internet browser-based federated systems can prohibit scalability and interfere with the training process as a result of growing client numbers.Additionally,information relating to the training dataset can possibly be extracted from the distributed weights,potentially reducing the privacy of the local data used for training.In this research paper,we aim to investigate the challenges of scalability and data privacy to increase the efficiency of distributed training models.As a result,we propose a web-federated learning exchange(WebFLex)framework,which intends to improve the decentralization of the federated learning process.WebFLex is additionally developed to secure distributed and scalable federated learning systems that operate in web browsers across heterogeneous devices.Furthermore,WebFLex utilizes peer-to-peer interactions and secure weight exchanges utilizing browser-to-browser web real-time communication(WebRTC),efficiently preventing the need for a main central server.WebFLex has actually been measured in various setups using the MNIST dataset.Experimental results show WebFLex’s ability to improve the scalability of federated learning systems,allowing a smooth increase in the number of participating devices without central data aggregation.In addition,WebFLex can maintain a durable federated learning procedure even when faced with device disconnections and network variability.Additionally,it improves data privacy by utilizing artificial noise,which accomplishes an appropriate balance between accuracy and privacy preservation.展开更多
作物模型与GIS集成中存在着功能重复开发、模型共享困难以及地理信息处理功能的在线能力有限等问题。该文以面向服务架构(service-oriented architecture,SOA)为基础,设计了作物模型区域应用Web服务组合框架。以ArcGIS Service和Model B...作物模型与GIS集成中存在着功能重复开发、模型共享困难以及地理信息处理功能的在线能力有限等问题。该文以面向服务架构(service-oriented architecture,SOA)为基础,设计了作物模型区域应用Web服务组合框架。以ArcGIS Service和Model Builder为开发平台,给出了模型计算、动态专题图和空间插值Web服务的开发流程、接口设计和实现方法。结合富客户端技术研制了基于SOA和WebGIS的小麦生产管理支持系统原型(wheat production management support system based on SOA and WebGIS,WPMSS-GISOA),实现了地图数据的上传发布、气象和土壤数据查询、栽培方案设计、空间插值分析等功能。功能测试表明作物模型区域应用的Web服务组合框架可行,为模型与地理信息系统的在线无缝集成提供了可参考方案。展开更多
针对病险水库大坝失事这一涉及社会公众安全的突发事件,借鉴国外的洪灾评估技术,结合我国水库大坝管理现状,构建了基于W eb G IS技术的病险水库灾情动态评估系统架构.并研究了数据库的建立、灾前预测评估、灾中实时评估和灾后反馈评估的...针对病险水库大坝失事这一涉及社会公众安全的突发事件,借鉴国外的洪灾评估技术,结合我国水库大坝管理现状,构建了基于W eb G IS技术的病险水库灾情动态评估系统架构.并研究了数据库的建立、灾前预测评估、灾中实时评估和灾后反馈评估的4个阶段.展开更多
基金This work has been funded by King Saud University,Riyadh,Saudi Arabia,through Researchers Supporting Project Number(RSPD2024R857).
文摘Scalability and information personal privacy are vital for training and deploying large-scale deep learning models.Federated learning trains models on exclusive information by aggregating weights from various devices and taking advantage of the device-agnostic environment of web browsers.Nevertheless,relying on a main central server for internet browser-based federated systems can prohibit scalability and interfere with the training process as a result of growing client numbers.Additionally,information relating to the training dataset can possibly be extracted from the distributed weights,potentially reducing the privacy of the local data used for training.In this research paper,we aim to investigate the challenges of scalability and data privacy to increase the efficiency of distributed training models.As a result,we propose a web-federated learning exchange(WebFLex)framework,which intends to improve the decentralization of the federated learning process.WebFLex is additionally developed to secure distributed and scalable federated learning systems that operate in web browsers across heterogeneous devices.Furthermore,WebFLex utilizes peer-to-peer interactions and secure weight exchanges utilizing browser-to-browser web real-time communication(WebRTC),efficiently preventing the need for a main central server.WebFLex has actually been measured in various setups using the MNIST dataset.Experimental results show WebFLex’s ability to improve the scalability of federated learning systems,allowing a smooth increase in the number of participating devices without central data aggregation.In addition,WebFLex can maintain a durable federated learning procedure even when faced with device disconnections and network variability.Additionally,it improves data privacy by utilizing artificial noise,which accomplishes an appropriate balance between accuracy and privacy preservation.
文摘作物模型与GIS集成中存在着功能重复开发、模型共享困难以及地理信息处理功能的在线能力有限等问题。该文以面向服务架构(service-oriented architecture,SOA)为基础,设计了作物模型区域应用Web服务组合框架。以ArcGIS Service和Model Builder为开发平台,给出了模型计算、动态专题图和空间插值Web服务的开发流程、接口设计和实现方法。结合富客户端技术研制了基于SOA和WebGIS的小麦生产管理支持系统原型(wheat production management support system based on SOA and WebGIS,WPMSS-GISOA),实现了地图数据的上传发布、气象和土壤数据查询、栽培方案设计、空间插值分析等功能。功能测试表明作物模型区域应用的Web服务组合框架可行,为模型与地理信息系统的在线无缝集成提供了可参考方案。