While real-time service assurance is critical for emerging telecom cloud services, understanding and predicting performance metrics for such services is hard. In this paper, we pursue an approach based upon statistical learning whereby the behavior of the target system is learned from observations. We use methods that learn from device statistics and predict metrics for services running on these devices. Specifically, we collect statistics from a Linux kernel of a server machine and predict client-side metrics for a video-streaming service (VLC). The fact that we collect thousands of kernel variables, while omitting service instrumentation, makes our approach service- independent and uniq...
peer reviewedUsing quality-of-service (QoS) metrics for Internet traffic is expected to improve grea...
Today\u27s HTTP adaptive streaming applications are designed to provide high levels of Quality of Ex...
Time-varying loads introduce errors in the estimated model parameters of service-level predictors in...
While real-time service assurance is critical for emerging telecom cloud services, understa...
Predicting the performance of cloud services is intrinsically hard. In this work, we pursue an appro...
In networked systems engineering, operational datagathered from sensors or logs can be used to build...
We are on the cusp of an era where we can responsively and adaptively predict future network perform...
A polynomial fitting model for predicting the RTP packet rate of Video-on-Demand received by a clien...
An algorithm for predicting the quality of video received by a client from a shared server is presen...
Model selection, in order to learn the mapping between the kernel metrics of a machine in a server c...
Cloud service management for telecommunication operators is crucial and challengingespecially in a c...
Model selection, in order to learn the mapping between the kernel metrics of a machine in a server c...
A video streaming service faces several difficultiesoperating. Hardware is expensive and it is cruci...
Network Function Virtualization (NFV) is the key technology that allows modern network operators to ...
peer reviewedUsing quality-of-service (QoS) metrics for Internet traffic is expected to improve grea...
Today\u27s HTTP adaptive streaming applications are designed to provide high levels of Quality of Ex...
Time-varying loads introduce errors in the estimated model parameters of service-level predictors in...
While real-time service assurance is critical for emerging telecom cloud services, understa...
Predicting the performance of cloud services is intrinsically hard. In this work, we pursue an appro...
In networked systems engineering, operational datagathered from sensors or logs can be used to build...
We are on the cusp of an era where we can responsively and adaptively predict future network perform...
A polynomial fitting model for predicting the RTP packet rate of Video-on-Demand received by a clien...
An algorithm for predicting the quality of video received by a client from a shared server is presen...
Model selection, in order to learn the mapping between the kernel metrics of a machine in a server c...
Cloud service management for telecommunication operators is crucial and challengingespecially in a c...
Model selection, in order to learn the mapping between the kernel metrics of a machine in a server c...
A video streaming service faces several difficultiesoperating. Hardware is expensive and it is cruci...
Network Function Virtualization (NFV) is the key technology that allows modern network operators to ...
peer reviewedUsing quality-of-service (QoS) metrics for Internet traffic is expected to improve grea...
Today\u27s HTTP adaptive streaming applications are designed to provide high levels of Quality of Ex...
Time-varying loads introduce errors in the estimated model parameters of service-level predictors in...