Paper ID: 2503.15889 • Published Mar 20, 2025
LeanTTA: A Backpropagation-Free and Stateless Approach to Quantized Test-Time Adaptation on Edge Devices
Cynthia Dong, Hong Jia, Young D. Kwon, Georgios Rizos, Cecilia Mascolo
TL;DR
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While there are many advantages to deploying machine learning models on edge
devices, the resource constraints of mobile platforms, the dynamic nature of
the environment, and differences between the distribution of training versus
in-the-wild data make such deployments challenging. Current test-time
adaptation methods are often memory-intensive and not designed to be
quantization-compatible or deployed on low-resource devices. To address these
challenges, we present LeanTTA, a novel backpropagation-free and stateless
framework for quantized test-time adaptation tailored to edge devices. Our
approach minimizes computational costs by dynamically updating normalization
statistics without backpropagation, which frees LeanTTA from the common pitfall
of relying on large batches and historical data, making our method robust to
realistic deployment scenarios. Our approach is the first to enable further
computational gains by combining partial adaptation with quantized module
fusion. We validate our framework across sensor modalities, demonstrating
significant improvements over state-of-the-art TTA methods, including a 15.7%
error reduction, peak memory usage of only 11.2MB for ResNet18, and fast
adaptation within an order-of-magnitude of normal inference speeds on-device.
LeanTTA provides a robust solution for achieving the right trade offs between
accuracy and system efficiency in edge deployments, addressing the unique
challenges posed by limited data and varied operational conditions.
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