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Hauptverfasser: Mansourian, Amir M., Ahmadi, Rozhan, Ghafouri, Masoud, Babaei, Amir Mohammad, Golezani, Elaheh Badali, Ghamchi, Zeynab Yasamani, Ramezanian, Vida, Taherian, Alireza, Dinashi, Kimia, Miri, Amirali, Kasaei, Shohreh
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2503.12067
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author Mansourian, Amir M.
Ahmadi, Rozhan
Ghafouri, Masoud
Babaei, Amir Mohammad
Golezani, Elaheh Badali
Ghamchi, Zeynab Yasamani
Ramezanian, Vida
Taherian, Alireza
Dinashi, Kimia
Miri, Amirali
Kasaei, Shohreh
author_facet Mansourian, Amir M.
Ahmadi, Rozhan
Ghafouri, Masoud
Babaei, Amir Mohammad
Golezani, Elaheh Badali
Ghamchi, Zeynab Yasamani
Ramezanian, Vida
Taherian, Alireza
Dinashi, Kimia
Miri, Amirali
Kasaei, Shohreh
contents Deep Neural Networks (DNNs) have achieved notable performance in the fields of computer vision and natural language processing with various applications in both academia and industry. However, with recent advancements in DNNs and transformer models with a tremendous number of parameters, deploying these large models on edge devices causes serious issues such as high runtime and memory consumption. This is especially concerning with the recent large-scale foundation models, Vision-Language Models (VLMs), and Large Language Models (LLMs). Knowledge Distillation (KD) is one of the prominent techniques proposed to address the aforementioned problems using a teacher-student architecture. More specifically, a lightweight student model is trained using additional knowledge from a cumbersome teacher model. In this work, a comprehensive survey of knowledge distillation methods is proposed. This includes reviewing KD from different aspects: distillation sources, distillation schemes, distillation algorithms, distillation by modalities, applications of distillation, and comparison among existing methods. In contrast to most existing surveys, which are either outdated or simply update former surveys, this work proposes a comprehensive survey with a new point of view and representation structure that categorizes and investigates the most recent methods in knowledge distillation. This survey considers various critically important subcategories, including KD for diffusion models, 3D inputs, foundational models, transformers, and LLMs. Furthermore, existing challenges in KD and possible future research directions are discussed. Github page of the project: https://github.com/IPL-Sharif/KD_Survey
format Preprint
id arxiv_https___arxiv_org_abs_2503_12067
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Comprehensive Survey on Knowledge Distillation
Mansourian, Amir M.
Ahmadi, Rozhan
Ghafouri, Masoud
Babaei, Amir Mohammad
Golezani, Elaheh Badali
Ghamchi, Zeynab Yasamani
Ramezanian, Vida
Taherian, Alireza
Dinashi, Kimia
Miri, Amirali
Kasaei, Shohreh
Computer Vision and Pattern Recognition
Deep Neural Networks (DNNs) have achieved notable performance in the fields of computer vision and natural language processing with various applications in both academia and industry. However, with recent advancements in DNNs and transformer models with a tremendous number of parameters, deploying these large models on edge devices causes serious issues such as high runtime and memory consumption. This is especially concerning with the recent large-scale foundation models, Vision-Language Models (VLMs), and Large Language Models (LLMs). Knowledge Distillation (KD) is one of the prominent techniques proposed to address the aforementioned problems using a teacher-student architecture. More specifically, a lightweight student model is trained using additional knowledge from a cumbersome teacher model. In this work, a comprehensive survey of knowledge distillation methods is proposed. This includes reviewing KD from different aspects: distillation sources, distillation schemes, distillation algorithms, distillation by modalities, applications of distillation, and comparison among existing methods. In contrast to most existing surveys, which are either outdated or simply update former surveys, this work proposes a comprehensive survey with a new point of view and representation structure that categorizes and investigates the most recent methods in knowledge distillation. This survey considers various critically important subcategories, including KD for diffusion models, 3D inputs, foundational models, transformers, and LLMs. Furthermore, existing challenges in KD and possible future research directions are discussed. Github page of the project: https://github.com/IPL-Sharif/KD_Survey
title A Comprehensive Survey on Knowledge Distillation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.12067