Patent classifications
H04L43/08
INTUITIVE GRAPHICAL NETWORK MAPPING BASED ON COLLECTIVE INTELLIGENCE
In one embodiment, a method comprises: obtaining, by a process, path trace data collected by a plurality of performance monitoring agents across a computer network; obtaining, by the process, one or more catalogs having application-based correlation information for the path trace data; generating, by the process, network mapping directed graphs by correlating the path trace data using the one or more catalogs, the network mapping directed graphs logically comprising nodes categorized at a plurality of levels of aggregation and edges connecting the nodes; associating, by the process, test-based performance data with the edges of the network mapping directed graphs; and providing, by the process, at least one Sankey diagram based on the network mapping directed graphs and test-based performance data associated with their edges for selectable display by a user interface.
USER PLANE FUNCTION (UPF) LOAD BALANCING BASED ON CURRENT UPF LOAD AND THRESHOLDS THAT DEPEND ON UPF CAPACITY
Embodiments are directed towards systems and methods for user plane function (UPF) and network slice load balancing within a 5G network. Example embodiments include systems and methods for load balancing based on current UPF load and thresholds that depend on UPF capacity; UPF load balancing using predicted throughput of new UE on the network based on network data analytics; UPF load balancing based on special considerations for low latency traffic; UPF load balancing supporting multiple slices, maintaining several load-thresholds for each UPF and each slice depending on the UPF and network slice capacity; and UPF load balancing using predicted central processing unit (CPU) utilization and/or predicted memory utilization of new UE on the network based on network data analytics.
AUTOMATICALLY USING CONFIGURATION MANAGEMENT ANALYTICS IN CELLULAR NETWORKS
A method includes partitioning a set of configuration management (CM) data for one or more cellular network devices into multiple distinct time intervals, each time interval associated with a distinct set of CM settings at the one or more cellular network devices, the CM data comprising multiple CM parameters. The method also includes determining a regression model based on the set of CM data. The method also includes applying the regression model to compute a distinct set of scores and compare the set of scores to estimate whether a performance of the one or more cellular network devices has changed during a second time interval relative to a first time interval.
SYSTEMS AND METHODS FOR PERFORMANCE-AWARE CONTROLLER NODE SELECTION IN HIGH AVAILABILITY CONTAINERIZED ENVIRONMENT
Embodiments described herein provide for an election procedure, in a high availability (“HA”) environment, for a backup controller to assume operations performed by a master controller in the event that the master controller becomes unreachable. The master controller may be associated with (e.g., provisioned on) the same set of hardware as one or more worker nodes, and may control operation of the one or more worker nodes. The election procedure may be performed based on performance metrics, location, or efficiency metrics associated with candidate backup controllers (e.g., cloud-based backup controllers), including performance of communications between particular backup controllers and the one or more worker nodes.
SYSTEMS AND METHODS FOR REMOTELY MONITORING ELECTRONIC DISPLAYS
Systems and methods for remotely monitoring display assemblies are provided. Each of the electronic display assemblies includes sensors in electronic communication with a controller, which is in electronic communication with a network communication device. At a monitoring center, different customer identifiers are associated with different portions of data, a particular customer identifier is received from a customer device, the portions of the data associated with the particular customer identifier are identified for transmission to the customer device, and one or more user displays are generated with the identified data.
User plane function (UPF) load balancing based on current UPF load and thresholds that depend on UPF capacity
Embodiments are directed towards systems and methods for user plane function (UPF) and network slice load balancing within a 5G network. Example embodiments include systems and methods for load balancing based on current UPF load and thresholds that depend on UPF capacity; UPF load balancing using predicted throughput of new UE on the network based on network data analytics; UPF load balancing based on special considerations for low latency traffic; UPF load balancing supporting multiple slices, maintaining several load-thresholds for each UPF and each slice depending on the UPF and network slice capacity; and UPF load balancing using predicted central processing unit (CPU) utilization and/or predicted memory utilization of new UE on the network based on network data analytics.
Network equipment operation adjustment system
A network equipment operation adjustment system is provided herein that is configured to improve the performance of a telecommunications network by generating a network score representing the performance of a telecommunications network within a geographic region, determining one or more network equipment parameter adjustments using the network score, and causing the adjustments to occur. The network equipment operation adjustment system can further display the network score and other network scores for other geographic regions in an interactive user interface to efficiently allow a network operator to view the network performance of a telecommunications network by geographic region and/or to view how the network performance in each of the geographic regions is changing over time.
Network equipment operation adjustment system
A network equipment operation adjustment system is provided herein that is configured to improve the performance of a telecommunications network by generating a network score representing the performance of a telecommunications network within a geographic region, determining one or more network equipment parameter adjustments using the network score, and causing the adjustments to occur. The network equipment operation adjustment system can further display the network score and other network scores for other geographic regions in an interactive user interface to efficiently allow a network operator to view the network performance of a telecommunications network by geographic region and/or to view how the network performance in each of the geographic regions is changing over time.
System and method for performing programmable analytics on network data
A system and a method for performing programmable analytics on network data are described. A data layer constructs flow behavior information based on information present within headers of data packets flowing across one or more network devices configured in a computer network. An inline heuristics layer performs one or more inline heuristic operations on the flow behavior information to obtain aggregate statistical information. An integrated analytics layer performs one or more analytical operations on the flow behavior information to obtain network insights. A presentation layer filters and plots information obtained from the data layer, the inline heuristics layer, and the integrated analytics layer, based on a user input.
System and method for performing programmable analytics on network data
A system and a method for performing programmable analytics on network data are described. A data layer constructs flow behavior information based on information present within headers of data packets flowing across one or more network devices configured in a computer network. An inline heuristics layer performs one or more inline heuristic operations on the flow behavior information to obtain aggregate statistical information. An integrated analytics layer performs one or more analytical operations on the flow behavior information to obtain network insights. A presentation layer filters and plots information obtained from the data layer, the inline heuristics layer, and the integrated analytics layer, based on a user input.