18154269. SELECTING LEARNING MODEL simplified abstract (Telefonaktiebolaget LM Ericsson (publ))

From WikiPatents
Jump to navigation Jump to search

SELECTING LEARNING MODEL

Organization Name

Telefonaktiebolaget LM Ericsson (publ)

Inventor(s)

Aitor Hernandez Herranz of STOCKHOLM (SE)

Lars Andersson of SOLNA (SE)

[[:Category:José Ara�jo of STOCKHOLM (SE)|José Ara�jo of STOCKHOLM (SE)]][[Category:José Ara�jo of STOCKHOLM (SE)]]

Soma Tayamon of STOCKHOLM (SE)

SELECTING LEARNING MODEL - A simplified explanation of the abstract

This abstract first appeared for US patent application 18154269 titled 'SELECTING LEARNING MODEL

Simplified Explanation

The abstract describes a method for dynamically selecting a learning model for a sensor device. The learning model is used to determine output data based on sensor input. The method involves the following steps:

  • Detecting the need for a new learning model based on the performance of the currently loaded learning model in the sensor device.
  • Determining feature candidates based on sensor data from different sources.
  • Selecting a new learning model from a set of candidate learning models based on the feature candidates and input features of each candidate.
  • Triggering the new learning model to be loaded on the sensor device, replacing the currently loaded learning model.

Potential applications of this technology:

  • Internet of Things (IoT) devices that rely on sensor data for decision-making.
  • Autonomous vehicles that need to adapt their learning models based on changing sensor inputs.
  • Smart home devices that optimize their performance based on sensor data.

Problems solved by this technology:

  • Outdated or underperforming learning models can be replaced with more suitable models.
  • The method allows for continuous improvement and adaptation of the learning model based on changing sensor data.
  • It enables efficient utilization of sensor data from different sources to select the most appropriate learning model.

Benefits of this technology:

  • Improved accuracy and performance of the sensor device by using the most suitable learning model.
  • Adaptability to changing sensor inputs and environmental conditions.
  • Efficient utilization of sensor data from different sources to optimize the learning model selection process.


Original Abstract Submitted

According to a first aspect, it is presented a method for dynamically selecting a learning model for a sensor device. The learning model is configured for determining output data based on sensor. The method includes the steps of: detecting a need for a new learning model for the sensor device based on performance of a currently loaded learning model in the sensor device; determining at least one feature candidate based on sensor data from the at least one sensor, wherein each one of the at least one feature candidate is associated with a different source of sensor data; selecting a new learning model, from a set of candidate learning models, based on the at least one feature candidate and input features of each one of the candidate learning models; and triggering the new learning model to be loaded on the sensor device, replacing the currently loaded learning model.