Consistency Deep Equilibrium Models
Abstract
Deep Equilibrium Models (DEQs) have emerged as a powerful paradigm in deep learning, offering the ability to model infinite-depth networks with constant memory usage. However, DEQs incur significant inference latency due to the iterative nature of fixed-point solvers. In this work, we introduce the Consistency Deep Equilibrium Model (C-DEQ), a novel framework that leverages consistency distillation to accelerate DEQ inference. We cast the DEQ iterative inference process as evolution along a fixed ODE trajectory toward the equilibrium. Along this trajectory, we train C-DEQs to consistently map intermediate states directly to the fixed point, enabling few-step inference while preserving the performance of the teacher DEQ. At the same time, it facilitates multi-step evaluation to flexibly trade computation for performance gains. Extensive experiments across various domain tasks demonstrate that C-DEQs achieves consistent 2-20 accuracy improvements over implicit DEQs under the same few-step inference budget.
Cite
@article{arxiv.2602.03024,
title = {Consistency Deep Equilibrium Models},
author = {Junchao Lin and Zenan Ling and Jingwen Xu and Robert C. Qiu},
journal= {arXiv preprint arXiv:2602.03024},
year = {2026}
}