Forward-looking mobile network performance visibility via intelligent application programming interfaces
US-12167264-B1 · Dec 10, 2024 · US
US2024171479A1 · US · A1
| Field | Value |
|---|---|
| Publication number | US-2024171479-A1 |
| Application number | US-202217992498-A |
| Country | US |
| Kind code | A1 |
| Filing date | Nov 22, 2022 |
| Priority date | Nov 22, 2022 |
| Publication date | May 23, 2024 |
| Grant date | — |
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Aspects of the subject disclosure may include, for example, receiving a request from a mobile network entity for a key performance indicator (KPI) prediction over a portion of a mobile network, and obtaining a group of identifiers associated with the mobile network entity. Further embodiments can include obtaining a group of KPIs associated with the mobile network entity based on the group of identifiers, and determining a KPI prediction associated with the mobile network entity based on the group of KPIs. Additional embodiments can include allocating a group of network resources to the mobile network entity based on the KPI prediction. Other embodiments are disclosed.
Opening claim text (preview).
What is claimed is: 1 . A device, comprising: a processing system including a processor; and a memory that stores executable instructions that, when executed by the processing system, facilitate performance of operations, the operations comprising: receiving a request from a mobile network entity for a key performance indicator (KPI) prediction over a portion of a mobile network; obtaining a group of identifiers associated with the mobile network entity; obtaining a group of KPIs associated with the mobile network entity based on the group of identifiers; determining a KPI prediction associated with the mobile network entity based on the group of KPIs; and allocating a group of network resources to the mobile network entity based on the KPI prediction. 2 . The device of claim 1 , wherein the determining of the KPI prediction comprises determining at least one of a CQI prediction, a short-term KPI prediction, a long-term KPI prediction, and a cell-based KPI prediction. 3 . The device of claim 2 , wherein the operations comprise: obtaining a group of historical KPIs associated with the mobile network entity; and determining a time period associated with the group of historical KPIs. 4 . The device of claim 3 , wherein the operations comprise: determining that the time period is less than a first time threshold; and determining the short-term KPI prediction associated with the mobile network entity based on the group of historical KPIs, wherein the allocating of the group of network resources comprises allocating the group of network resources to the mobile network entity based on the short-term KPI prediction. 5 . The device of claim 3 , wherein the operations comprise: determining that the time period is greater than a second time threshold; and determining the long-term KPI prediction associated with the mobile network entity based on the group of historical KPIs, wherein the allocating of the group of network resources comprises allocating the group of network resources to the mobile network entity based on the long-term KPI prediction. 6 . The device of claim 1 , wherein the mobile network entity is one of a user end device, a base station, a group of user end devices, a group of base stations, or a combination thereof. 7 . The device of claim 1 , wherein the group of identifiers comprises a group of International Mobile Subscriber Identities (IMSIs), group of international mobile equipment identities (IMEIs), group of physical cell identifiers, group of extended cell global identifiers (ECGIs), or a combination thereof. 8 . The device of claim 1 , wherein the group of KPIs comprises a group of channel quality indicators (CQIs), a group of signal strength indicators, a group of reference signal receive power (RSRP) indicators, a group of reference signal receive quality (RSRQ) indicators, a group of signal to noise ratio (SNR) indicators, a group of signal to interference and noise ratio (SINR) indicators, a group of physical uplink shared channel (PUSCH) SINR indicators, a group of physical uplink control channel (PUCCH) SINR indicators, distance between a user end device and a base station, or a combination thereof. 9 . The device of claim 1 , wherein the determining of the KPI prediction comprises determining the KPI prediction based on the group of KPIs utilizing one or more of a group of machine learning models, a group of artificial intelligence models, or a group of time series models. 10 . A non-transitory, machine-readable medium, comprising executable instructions that, when executed by a processing system including a processor, facilitate performance of operations, the operations comprising: receiving a request from a mobile network entity for a key performance indicator (KPI) prediction over a portion of a mobile network; obtaining a group of identifiers associated with the mobile network entity; obtaining a group of historical KPIs associated with the mobile network entity based on the group of identifiers; determining a KPI prediction associated with the mobile network entity based on the group of KPIs utilizing least square estimation; and allocating a group of network resources to the mobile network entity based on the KPI prediction. 11 . The non-transitory, machine-readable medium of claim 10 , wherein the mobile network entity is one of a user end device, a base station, a group of user end devices, a group of base stations, or a combination thereof. 12 . The non-transitory, machine-readable medium of claim 10 , wherein the group of identifiers comprises a group of International Mobile Subscriber Identities (IMSIs), group of international mobile equipment identities (IMEIs), group of physical cell identifiers, group of extended cell global identifiers (ECGIs), or a combination thereof. 13 . The non-transitory, machine-readable medium of claim 10 , wherein the group of historical KPIs comprises a group of channel quality indicators (CQIs), a group of signal strength indicators, a group of reference signal receive power (RSRP) indicators, a group of reference signal receive quality (RSRQ) indicators, a group of signal to noise ratio (SNR) indicators, a group of signal to interference and noise ratio (SINR) indicators, a group of physical uplink shared channel (PUSCH) SINR indicators, a group of physical uplink control channel (PUCCH) SINR indicators, distance between a user end device and a base station, or a combination thereof. 14 . The non-transitory, machine-readable medium of claim 10 , wherein the determining of the KPI prediction comprises combining a short-term KPI prediction, a long-term KPI prediction, and a cell-based KPI prediction. 15 . The non-transitory, machine-readable medium of claim 10 , wherein the determining of the KPI prediction comprises determining the KPI prediction based on the group of historical KPIs utilizing one or more of a group of machine learning models, a group of artificial intelligence models, or a group of time series models. 16 . A method, comprising: receiving, by a processing system including a processor, a request from a mobile network entity for a key performance indicator (KPI) prediction over a portion of a mobile network; obtaining, by the processing system, a group of identifiers associated with the mobile network entity; obtaining, by the processing system, a group of KPIs associated with the mobile network entity based on the group of identifiers; determining, by the processing system, a CQI prediction associated with the mobile network entity based on the group of KPIs; determining, by the processing system, a time period associated with the group of KPIs; selecting, by the processing system, a time period predictor based on the time period from a short-term predictor and a long-term predictor resulting in a selected time period predictor; determining, by the processing system, a time period KPI prediction associated with the mobile network entity utilizing the selected time period predictor based on the group of KPIs; determining, by the processing system, cell-based KPI prediction associated with the mobile network entity based on the group of KPIs; determining, by the processing system, a KPI prediction associated with the mobile network entity based on the CQI prediction, the time period KPI prediction, and the cell-based KPI prediction; and allocating, by the processing system, a group of network resources to the mobile network entity based on the KPI prediction. 17 . The method of claim 16 , wherein the mobile network entity is one of a u
Determining service level performance parameters or violations of service level contracts, e.g. violations of agreed response time or mean time between failures [MTBF] · CPC title
Channel quality parameters, e.g. channel quality indicator [CQI] · CPC title
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