In intelligence gathering, surveillance, and reconnaissance, large amounts of data is gathered through sensors.
Edge processing poses significant challenges, in some cases due to the limited bandwidth and in some cases due to the amount of data generated.
Federated learning
Federated learning can significantly enhance data quality and model accuracy by:
- Federated learning allows models to be trained directly where the data is generated.
- By processing data locally, federated learning minimizes the need to transmit sensitive or large volumes of data.
- The ability to train models on data from multiple sources directly on the edge helps overcome challenges associated with data scarcity.
Federated learning offers a promising solution by optimizing data processing and AI model training directly at the source of data collection.