SwePub
Sök i LIBRIS databas

  Utökad sökning

onr:"swepub:oai:DiVA.org:umu-199974"
 

Sökning: onr:"swepub:oai:DiVA.org:umu-199974" > Optimized and adapt...

Optimized and adaptive federated learning for straggler-resilient device selection

Banerjee, Sourasekhar (författare)
Umeå universitet,Institutionen för datavetenskap,Autonomous Distributed Systems Lab
Vu, Xuan-Son, 1988- (författare)
Umeå universitet,Institutionen för datavetenskap,Autonomous Distributed Systems Lab
Bhuyan, Monowar H. (författare)
Umeå universitet,Institutionen för datavetenskap,Autonomous Distributed Systems Lab
 (creator_code:org_t)
IEEE, 2022
2022
Engelska.
Ingår i: 2022 International Joint Conference on Neural Networks (IJCNN). - : IEEE. ; , s. 1-9
  • Konferensbidrag (refereegranskat)
Abstract Ämnesord
Stäng  
  • Federated Learning (FL) has evolved as a promising distributed learning paradigm in which data samples are disseminated over massively connected devices in an IID (Identical and Independent Distribution) or non-IID manner. FL follows a collaborative training approach where each device uses local training data to train local models, and the server generates a global model by combining the local model's parameters. However, FL is vulnerable to system heterogeneity when local devices have varying computational, storage, and communication capabilities over time. The presence of stragglers or low-performing devices in the learning process severely impacts the scalability of FL algorithms and significantly delays convergence. To mitigate this problem, we propose Fed-MOODS, a Multi-Objective Optimization-based Device Selection approach to reduce the effect of stragglers in the FL process. The primary criteria for optimization are to maximize: (i) the availability of the processing capacity of each device, (ii) the availability of the memory in devices, and (iii) the bandwidth capacity of the participating devices. The multi-objective optimization prioritizes devices from fast to slow. The approach involves faster devices in early global rounds and gradually incorporating slower devices from the Pareto fronts to improve the model's accuracy. The overall training time of Fed-MOODS is 1.8× and 1.48× faster than the baseline model (FedAvg) with random device selection for MNIST and FMNIST non-IID data, respectively. Fed-MOODS is extensively evaluated under multiple experimental settings, and the results show that Fed-MOODS has significantly improved model's convergence and performance. Fed-MOODS maintains fairness in the prioritized participation of devices and the model for both IID and non-IID settings.

Ämnesord

TEKNIK OCH TEKNOLOGIER  -- Elektroteknik och elektronik -- Robotteknik och automation (hsv//swe)
ENGINEERING AND TECHNOLOGY  -- Electrical Engineering, Electronic Engineering, Information Engineering -- Robotics (hsv//eng)

Publikations- och innehållstyp

ref (ämneskategori)
kon (ämneskategori)

Till lärosätets databas

Hitta mer i SwePub

Av författaren/redakt...
Banerjee, Souras ...
Vu, Xuan-Son, 19 ...
Bhuyan, Monowar ...
Om ämnet
TEKNIK OCH TEKNOLOGIER
TEKNIK OCH TEKNO ...
och Elektroteknik oc ...
och Robotteknik och ...
Artiklar i publikationen
Av lärosätet
Umeå universitet

Sök utanför SwePub

Kungliga biblioteket hanterar dina personuppgifter i enlighet med EU:s dataskyddsförordning (2018), GDPR. Läs mer om hur det funkar här.
Så här hanterar KB dina uppgifter vid användning av denna tjänst.

 
pil uppåt Stäng

Kopiera och spara länken för att återkomma till aktuell vy