Federated Hyperdimensional Computing for Resource-Constrained Industrial IoT

arXiv cs.LG / 3/23/2026

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Key Points

  • The paper proposes using hyperdimensional computing (HDC) as a lightweight learning paradigm for resource-constrained IIoT devices.
  • It integrates HDC into a federated learning framework, exchanging only prototype representations to significantly reduce communication overhead.
  • The approach targets energy-efficient training and fast convergence under stringent memory, compute, and bandwidth constraints.
  • Numerical results demonstrate the potential of federated HDC for collaborative IIoT learning with improved communication efficiency and resilience.
  • The work argues that federated HDC can serve as a lightweight, scalable framework for distributed intelligence in large-scale IIoT deployments.

Abstract

In the Industrial Internet of Things (IIoT) systems, edge devices often operate under strict constraints in memory, compute capability, and wireless bandwidth. These limitations challenge the deployment of advanced data analytics tasks, such as predictive and prescriptive maintenance. In this work, we explore hyperdimensional computing (HDC) as a lightweight learning paradigm for resource-constrained IIoT. Conventional centralized HDC leverages the properties of high-dimensional vector spaces to enable energy-efficient training and inference. We integrate this paradigm into a federated learning (FL) framework where devices exchange only prototype representations, which significantly reduces communication overhead. Our numerical results highlight the potential of federated HDC to support collaborative learning in IIoT with fast convergence speed and communication efficiency. These results indicate that HDC represents a lightweight and resilient framework for distributed intelligence in large-scale and resource-constrained IIoT environments.