Репозиторій Вінницького національного медичного університету імені М. І. Пирогова

Liminal efficiency for AI general models: Investigating compression techniques for maximized performance in glaucoma diagnosis and prognosis

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dc.contributor.author Kysil, V.
dc.contributor.author Drachuk, O.
dc.contributor.author Korol, A.
dc.contributor.author Hnenna, V.
dc.contributor.author Zaitseva, E.
dc.date.accessioned 2025-11-26T09:07:13Z
dc.date.available 2025-11-26T09:07:13Z
dc.date.issued 2025
dc.identifier.citation Liminal efficiency for AI general models: Investigating compression techniques for maximized performance in glaucoma diagnosis and prognosis / Kysil V., Drachuk O., Korol A. [et al.]// CEUR Workshop Proceedings. – 2025. – Vol. 3963. – P. 156–166. – URL: https://ceur-ws.org/Vol-3963/paper13.pdf uk_UA
dc.identifier.uri https://dspace.vnmu.edu.ua/123456789/10665
dc.description.abstract Deep learning models have demonstrated remarkable performance across the glaucoma's diagnosis and prognosis; however, deploying them in resource-constrained environments poses significant challenges. This research explores the balance between compression and accuracy preservation in specialist convolutional neural networks (CNNs) intended for CPU-based execution with minimal storage requirements. By employing pruning, knowledge distillation, quantization, and weight sharing, it is aimed to achieve maximal compression without compromising essential task performance. Resulting findings provide insights into the efficiency limits of model compression and its implications for real-world deployment. Additionally, the applicability of these compression techniques to Transformer-based architectures is examined throughout the work, which pose unique challenges due to their reliance on attention mechanisms uk_UA
dc.language.iso en uk_UA
dc.publisher CEUR Workshop Proceedings uk_UA
dc.subject deep learning uk_UA
dc.subject glaucoma's diagnosis and prognosis uk_UA
dc.subject medical imaging optic nerve segmentation uk_UA
dc.subject fundus image analysis uk_UA
dc.subject model compression uk_UA
dc.subject pruning uk_UA
dc.subject knowledge distillation uk_UA
dc.subject quantization uk_UA
dc.subject weight sharing uk_UA
dc.subject transformer models uk_UA
dc.subject convolutional neural networks (CNN) uk_UA
dc.subject low-resource deployment uk_UA
dc.subject edge computing uk_UA
dc.title Liminal efficiency for AI general models: Investigating compression techniques for maximized performance in glaucoma diagnosis and prognosis uk_UA
dc.type Article uk_UA


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