Pith. sign in

REVIEW 3 cited by

Mixture of Experts for Network Optimization: A Large Language Model-enabled Approach

Not yet reviewed by Pith; the record is open.

This paper has not been read by Pith yet. Machine review is queued; the pith claim, tier, and objections will appear here once it completes.

SPECIMEN: schema-true, not a live event

T0 review · schema-true

One-sentence machine reading of the paper's core claim.

pith:XXXXXXXX · record.json · timestamp

arxiv 2402.09756 v1 pith:EVD7FPUB submitted 2024-02-15 cs.NI eess.SP

Mixture of Experts for Network Optimization: A Large Language Model-enabled Approach

classification cs.NI eess.SP
keywords expertsmodelsnetworkapproachoptimizationtasksuserconsumption
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
0 comments
read the original abstract

Optimizing various wireless user tasks poses a significant challenge for networking systems because of the expanding range of user requirements. Despite advancements in Deep Reinforcement Learning (DRL), the need for customized optimization tasks for individual users complicates developing and applying numerous DRL models, leading to substantial computation resource and energy consumption and can lead to inconsistent outcomes. To address this issue, we propose a novel approach utilizing a Mixture of Experts (MoE) framework, augmented with Large Language Models (LLMs), to analyze user objectives and constraints effectively, select specialized DRL experts, and weigh each decision from the participating experts. Specifically, we develop a gate network to oversee the expert models, allowing a collective of experts to tackle a wide array of new tasks. Furthermore, we innovatively substitute the traditional gate network with an LLM, leveraging its advanced reasoning capabilities to manage expert model selection for joint decisions. Our proposed method reduces the need to train new DRL models for each unique optimization problem, decreasing energy consumption and AI model implementation costs. The LLM-enabled MoE approach is validated through a general maze navigation task and a specific network service provider utility maximization task, demonstrating its effectiveness and practical applicability in optimizing complex networking systems.

discussion (0)

Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.

Forward citations

Cited by 3 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. MORES: Mobile Reasoning-as-a-Service via Distributed LLM Inference-Time Scaling

    cs.NI 2026-07 conditional novelty 5.5

    A device–server split of recurrent latent LLM reasoning plus semantic MoE-SAC scheduling yields about 18% higher simulated system throughput than plain SAC under energy, recurrence, and latency budgets.

  2. Agentic AI-Based Joint Computing and Networking via Mixture of Experts and Large Language Models

    cs.LG 2026-04 unverdicted novelty 4.0

    An agentic framework uses LLMs to orchestrate MoE optimization experts for throughput, fairness, and delay objectives in joint computing and networking, achieving near-optimal simulation performance.

  3. OmniPlan: An Adaptive Framework for Timely and Near-Optimal Network Planning Optimization

    cs.NI 2026-06 unverdicted novelty 3.0

    OmniPlan combines LLM intent parsing, mixture-of-experts selection among MIP/heuristic/DRL solvers, and DRL weight tuning to deliver timely near-optimal network planning, with reported latency reductions up to 97.8% o...