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Autori principali: del Rey, Santiago, Santos, Paulo Sérgio Medeiros dos, Travassos, Guilherme Horta, Franch, Xavier, Martínez-Fernández, Silverio
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2505.00816
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author del Rey, Santiago
Santos, Paulo Sérgio Medeiros dos
Travassos, Guilherme Horta
Franch, Xavier
Martínez-Fernández, Silverio
author_facet del Rey, Santiago
Santos, Paulo Sérgio Medeiros dos
Travassos, Guilherme Horta
Franch, Xavier
Martínez-Fernández, Silverio
contents Background: As empirical software engineering evolves, more studies adopt data strategies$-$approaches that investigate digital artifacts such as models, source code, or system logs rather than relying on human subjects. Synthesizing results from such studies introduces new methodological challenges. Aims: This study assesses the effects of model quantization on correctness and resource efficiency in deep learning (DL) systems. Additionally, it explores the methodological implications of aggregating evidence from empirical studies that adopt data strategies. Method: We conducted a research synthesis of six primary studies that empirically evaluate model quantization. We applied the Structured Synthesis Method (SSM) to aggregate the findings, which combines qualitative and quantitative evidence through diagrammatic modeling. A total of 19 evidence models were extracted and aggregated. Results: The aggregated evidence indicates that model quantization weakly negatively affects correctness metrics while consistently improving resource efficiency metrics, including storage size, inference latency, and GPU energy consumption$-$a manageable trade-off for many DL deployment contexts. Evidence across quantization techniques remains fragmented, underscoring the need for more focused empirical studies per technique. Conclusions: Model quantization offers substantial efficiency benefits with minor trade-offs in correctness, making it a suitable optimization strategy for resource-constrained environments. This study also demonstrates the feasibility of using SSM to synthesize findings from data strategy-based research.
format Preprint
id arxiv_https___arxiv_org_abs_2505_00816
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Aggregating empirical evidence from data strategy studies: a case on model quantization
del Rey, Santiago
Santos, Paulo Sérgio Medeiros dos
Travassos, Guilherme Horta
Franch, Xavier
Martínez-Fernández, Silverio
Software Engineering
Machine Learning
Background: As empirical software engineering evolves, more studies adopt data strategies$-$approaches that investigate digital artifacts such as models, source code, or system logs rather than relying on human subjects. Synthesizing results from such studies introduces new methodological challenges. Aims: This study assesses the effects of model quantization on correctness and resource efficiency in deep learning (DL) systems. Additionally, it explores the methodological implications of aggregating evidence from empirical studies that adopt data strategies. Method: We conducted a research synthesis of six primary studies that empirically evaluate model quantization. We applied the Structured Synthesis Method (SSM) to aggregate the findings, which combines qualitative and quantitative evidence through diagrammatic modeling. A total of 19 evidence models were extracted and aggregated. Results: The aggregated evidence indicates that model quantization weakly negatively affects correctness metrics while consistently improving resource efficiency metrics, including storage size, inference latency, and GPU energy consumption$-$a manageable trade-off for many DL deployment contexts. Evidence across quantization techniques remains fragmented, underscoring the need for more focused empirical studies per technique. Conclusions: Model quantization offers substantial efficiency benefits with minor trade-offs in correctness, making it a suitable optimization strategy for resource-constrained environments. This study also demonstrates the feasibility of using SSM to synthesize findings from data strategy-based research.
title Aggregating empirical evidence from data strategy studies: a case on model quantization
topic Software Engineering
Machine Learning
url https://arxiv.org/abs/2505.00816