AI RESEARCH
Efficient Few-Shot Learning for Edge AI via Knowledge Distillation on MobileViT
arXiv CS.CV
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ArXi:2603.26145v1 Announce Type: new Efficient and adaptable deep learning models are an important area of deep learning research, driven by the need for highly efficient models on edge devices. Few-shot learning enables the use of deep learning models in low-data regimes, a capability that is highly sought after in real-world applications where collecting large annotated datasets is costly or impractical. This challenge is particularly relevant in edge scenarios, where connectivity may be limited, low-latency responses are required, or energy consumption constraints are critical.