Fortinet, Inc.
Generating recommendations for achieving optimal cellular connectivity based on connectivity details and current and predicted future events

Last updated:

Abstract:

Machine learning and data analytics based systems and methods for generating recommendations for achieving optimal cellular connectivity based on connectivity details and current and predicted future events are provided. According to one embodiment, a carrier connection status based recommendation system, receives data pertaining to past, current, and predicted connection/performance data of various wireless carriers that it can recommend for a network, real-time user reports, external parameters such as expected weather, pre-determined parameters such as planned outages, and events that may impact performance of the carriers. The system also receives data pertaining to network metrics and components in the network, including requirements and performance of connected computing devices, and based on all such data, the system uses machine learning and predictive modeling to generate one or more recommendations to achieve optimal cellular connectivity, the recommendations including switching of carriers and reconfiguration of various hardware/software components therein.

Status:
Grant
Type:

Utility

Filling date:

23 Dec 2017

Issue date:

19 Nov 2019