首页> 外国专利> APPLICATION OF MACHINE LEARNING FOR BUILDING PREDICTIVE MODELS ENABLING SMART FAIL OVER BETWEEN DIFFERENT NETWORK MEDIA TYPES

APPLICATION OF MACHINE LEARNING FOR BUILDING PREDICTIVE MODELS ENABLING SMART FAIL OVER BETWEEN DIFFERENT NETWORK MEDIA TYPES

机译:机器学习在建立预测模型的应用,使智能失败在不同的网络媒体类型之间

摘要

Computing devices are configured to passively monitor network stacks and protocols for a respective computing device, transmit metadata and statistics gathered by the monitoring to a remote service, and utilize a crowd-sourced heuristic model responsively generated by the remote service to proactively predict connectivity issues and connect to a best available network media and access device for the network media. A computing device's operating system may monitor various networking protocols without the computing device engaging in constant network activities (e.g., video streaming). The statistics obtained from this passive monitoring can be utilized by the remote service using various machine learning techniques to predict when networks will subsequently fail. Profiles are developed and sorted within the model to be used by individual computing devices to seamlessly connect to access devices based on performance, as opposed to connecting to the access device previously utilized by the user.
机译:计算设备被配置为被动地监视各个计算设备的网络堆栈和协议,通过监视到远程服务收集的传输元数据和统计数据,并利用远程服务响应于远程服务生成的人群源启发式模型来主动预测连接问题和连接到网络媒体的最佳网络媒体和访问设备。计算设备的操作系统可以监视各种网络协议,而不在恒定网络活动中接合计算设备(例如,视频流)。从该被动监控获得的统计数据可以通过远程服务使用各种机器学习技术来预测网络随后将失败时。在模型内开发并排序配置文件,以便各种计算设备使用,以基于性能无缝连接到访问设备,而不是连接到先前用户先前使用的访问设备。

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