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Our findings reveal that base and quantized models can provide different sets of repaired problems with little overlap, whileretaining a comparable number of repaired problems. Althoughquantization successfully reduces memory footprints by up to85%, it increases both inference time and energy consumption,which we attribute to suboptimal hardware utilization. OurPareto trade-off analysis shows that 48% of the configurationsevaluated are strictly dominated by alternatives. Rather thanidentifying a superior quantization method, our findings highlightthat the trade-offs between effectiveness, memory footprint,and energy efficiency are sensitive to the underlying modelarchitecture and the complexity of the task.
From: Fernando Vallecillos-Ruiz [view email]
[v1]
Thu, 25 Jun 2026 16:02:05 UTC (140 KB)
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