TY - JOUR
T1 - Loci
T2 - Federated Continual Learning of Heterogeneous Tasks at Edge
AU - Luopan, Yaxin
AU - Han, Rui
AU - Zhang, Qinglong
AU - Zuo, Xiaojiang
AU - Liu, Chi Harold
AU - Wang, Guoren
AU - Chen, Lydia Y.
N1 - Publisher Copyright:
© 1990-2012 IEEE.
PY - 2025
Y1 - 2025
N2 - Federated continual learning (FCL) has attracted growing attention in achieving collaborative model training among edge clients, each of which learns its local model for a sequence of tasks. Most existing FCL approaches aggregate clients' latest local models to exchange knowledge. This unfortunately deviates from real-world scenarios where each model is optimized independently using the client's own dynamic data and different clients have heterogeneous tasks. These tasks not only have distinct class labels (e.g. animals or vehicles) but also differ in input feature distributions. The aggregated model thus often shifts to a higher loss value and incurs accuracy degradation. In this paper, we depart from the model-grained view of aggregation and transform it into multiple task-grained aggregations. Each aggregation allows a client to learn from other clients to improve its model accuracy on one task. To this end, we propose Loci to provide abstractions for clients' past and peer task knowledge using compact model weights, and develop a communication-efficient approach to train each client's local model by exchanging its tasks' knowledge with the most accuracy relevant one from other clients. Through its general-purpose API, Loci can be used to provide efficient on-device training for existing deep learning applications of graph, image, nature language processing, and multimodal data. Using extensive comparative evaluations, we show Loci improves the model accuracy by 32.48% without increasing training time, reduces communication cost by 83.6%, and achieves more improvements when scale (task/client number) increases. Our code is available at https://github.com/LINC-BIT/Loci.
AB - Federated continual learning (FCL) has attracted growing attention in achieving collaborative model training among edge clients, each of which learns its local model for a sequence of tasks. Most existing FCL approaches aggregate clients' latest local models to exchange knowledge. This unfortunately deviates from real-world scenarios where each model is optimized independently using the client's own dynamic data and different clients have heterogeneous tasks. These tasks not only have distinct class labels (e.g. animals or vehicles) but also differ in input feature distributions. The aggregated model thus often shifts to a higher loss value and incurs accuracy degradation. In this paper, we depart from the model-grained view of aggregation and transform it into multiple task-grained aggregations. Each aggregation allows a client to learn from other clients to improve its model accuracy on one task. To this end, we propose Loci to provide abstractions for clients' past and peer task knowledge using compact model weights, and develop a communication-efficient approach to train each client's local model by exchanging its tasks' knowledge with the most accuracy relevant one from other clients. Through its general-purpose API, Loci can be used to provide efficient on-device training for existing deep learning applications of graph, image, nature language processing, and multimodal data. Using extensive comparative evaluations, we show Loci improves the model accuracy by 32.48% without increasing training time, reduces communication cost by 83.6%, and achieves more improvements when scale (task/client number) increases. Our code is available at https://github.com/LINC-BIT/Loci.
KW - edge computing
KW - Federated continual learning
KW - heterogeneous tasks
KW - task-grained aggregation
UR - http://www.scopus.com/inward/record.url?scp=85216635153&partnerID=8YFLogxK
U2 - 10.1109/TPDS.2025.3531123
DO - 10.1109/TPDS.2025.3531123
M3 - Article
AN - SCOPUS:85216635153
SN - 1045-9219
JO - IEEE Transactions on Parallel and Distributed Systems
JF - IEEE Transactions on Parallel and Distributed Systems
ER -