Investigating and developing efficient federated learning for air pollution monitoring
Permanent lenke
https://hdl.handle.net/10037/26006Dato
2022-06-01Type
Master thesisMastergradsoppgave
Forfatter
Reinnes, JørgenSammendrag
Location-based data may be considered highly private; as such, handling
location-based data requires that it cannot be used to track a user. In a network
of multiple edge devices that each collect data, training a machine learning
model would typically involve transmitting the data securely to a central server
which requires strict privacy rules.
Federated learning solves the privacy problem by not requiring data to be
shared; instead, training of a machine learning model is performed on the device that gathered the data itself. Using federated learning with the Federated
Stochastic Gradient Descent (fedsgd) algorithm, a similar training performance is expected as training a machine learning model on a single server with
data transmitted to it. Overall less bandwidth may be used for communication
between edge devices and the server. However, a higher computational cost
is seen due to having to perform model training on the edge device, which
lowers the potential data points that can be processed each day given the
lower computational performance of an edge device versus a high power server.
Whilst only a single edge device may train the model at a time, a different
federated learning algorithm may be used on the server to enable multiple to
train simultaneously
Forlag
UiT Norges arktiske universitetUiT The Arctic University of Norway
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