Optimizing Cloudlets for Faster Feedback in LLM-Based Code-Evaluation Systems

Bewaard in:
Bibliografische gegevens
Gepubliceerd in:Computers vol. 14, no. 12 (2025), p. 557-571
Hoofdauteur: Daniel-Florin, Dosaru
Andere auteurs: Olteanu Alexandru-Corneliu, Țăpuș Nicolae
Gepubliceerd in:
MDPI AG
Onderwerpen:
Online toegang:Citation/Abstract
Full Text + Graphics
Full Text - PDF
Tags: Voeg label toe
Geen labels, Wees de eerste die dit record labelt!
Omschrijving
Samenvatting:This paper addresses the challenge of optimizing cloudlet resource allocation in a code evaluation system. The study models the relationship between system load and response time when users submit code to an online code-evaluation platform, LambdaChecker, which operates a cloudlet-based processing pipeline. The pipeline includes code correctness checks, static analysis, and design-pattern detection using a local Large Language Model (LLM). To optimize the system, we develop a mathematical model and apply it to the LambdaChecker resource management problem. The proposed approach is evaluated using both simulations and real contest data, with a focus on improvements in average response time, resource utilization efficiency, and user satisfaction. The results indicate that adaptive scheduling and workload prediction effectively reduce waiting times without substantially increasing operational costs. Overall, the study suggests that systematic cloudlet optimization can enhance the educational value of automated code evaluation systems by improving responsiveness while preserving sustainable resource usage.
ISSN:2073-431X
DOI:10.3390/computers14120557
Bron:Advanced Technologies & Aerospace Database