# LITO: Lemur-Inspired Task Offloading for Edge–Fog–Cloud Continuum Systems

**Authors:** Asma Almulifi, Heba Kurdi

PMC · DOI: 10.3390/s26051497 · Sensors (Basel, Switzerland) · 2026-02-27

## TL;DR

LITO is a new task offloading algorithm inspired by lemur social behavior to improve energy efficiency and performance in edge-fog-cloud systems.

## Contribution

LITO introduces a bio-inspired algorithm combining lemur behavior with machine learning for dynamic task offloading.

## Key findings

- LITO reduces energy consumption and SLA violations compared to existing methods.
- The algorithm improves resource utilization and throughput in high-load scenarios.
- Simulations show LITO outperforms baselines in latency and congestion handling.

## Abstract

Edge, fog, and cloud continuum architectures that interconnect resource-constrained devices, intermediate edge servers, and remote cloud data centers face persistent challenges in handling heterogeneous and latency-sensitive workloads while reducing energy consumption and improving resource utilization. Classical task offloading approaches either rely on static heuristics, which lack adaptability to dynamic conditions, or on metaheuristic optimizers, which often incur high computational overhead and centralized coordination. This paper proposes LITO, a lemur-inspired task offloading algorithm for edge, fog, and cloud continuum systems that models the infrastructure as a social system in which computing nodes assume distinct roles that mirror lemur social hierarchies. Building on an abstracted model of lemur group behavior, LITO incorporates two key lemur-inspired mechanisms: an energy-aware task assignment mechanism based on sun basking, a thermoregulation behavior in which lemurs seek favorable warm spots, mapped here to selecting energetically efficient execution nodes, and a cooperative scheduling policy based on huddling, group clustering under stress, mapped here to sharing load among overloaded nodes. These mechanisms are combined with a continual supervised policy-learning layer with contextual bandit feedback that refines offloading decisions from online feedback. The resulting multi-objective formulation jointly minimizes energy consumption and deadline violations while maximizing resource utilization and throughput under high-load conditions in the edge and fog segment of the continuum. Simulations under diverse workload regimes and task complexities show that LITO outperforms representative multi-objective offloading baselines in terms of energy consumption, resource utilization, latency, Service Level Agreement (SLA) violations, and throughput in congested scenarios.

## Linked entities

- **Species:** Lemur (taxon 9446)

## Full-text entities

- **Species:** Lemur (genus) [taxon 9446]

## Full text

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## Figures

17 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12986576/full.md

## References

48 references — full list in the complete paper: https://tomesphere.com/paper/PMC12986576/full.md

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Source: https://tomesphere.com/paper/PMC12986576