Guan, J., Zhang, Q., Murturi, I., Donta, P. K., Dustdar, S., & Wang, S. (2024). Collaborative Inference in DNN-Based Satellite Systems with Dynamic Task Streams. In M. Valenti, D. Reed, & M. Torres (Eds.), ICC 2024 - IEEE International Conference on Communications (pp. 3803–3808). IEEE. https://doi.org/10.1109/ICC51166.2024.10622590
IEEE International Conference on Communications (ICC 2024)
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Event date:
9-Jun-2024 - 13-Jun-2024
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Event place:
Denver, United States of America (the)
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Number of Pages:
6
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Publisher:
IEEE
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Peer reviewed:
Yes
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Keywords:
Model partitioning; Multi-exit DNNs; Satellite inference; Task offloading
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Abstract:
As a driving force in the advancement of intel-ligent in-orbit applications, DNN models have been gradually integrated into satellites, producing daily latency-constraint and computation-intensive tasks. However, the substantial computation capability of DNN models, coupled with the instability of the satellite-ground link, pose significant challenges, hindering the timely completion of tasks. It becomes necessary to adapt to task stream changes when dealing with tasks requiring latency guarantees, such as dynamic observation tasks on the satellites. To this end, we consider a system model for a collaborative inference system with latency constraints, leveraging the multi-exit and model partition technology. To address this, we propose an algorithm, which is tailored to effectively address the trade-off between task completion and maintaining satisfactory task accuracy by dynamically choosing early-exit and partition points. Simulation evaluations show that our proposed algorithm signif-icantly outperforms baseline algorithms across the task stream with strict latency constraints.
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Project title:
Twinning action for spreading excellence in Artificial Intelligence of Things: 101079214 (European Commission) Intent-based data operation in the computing continuum: 101135576 (European Commission)