Saved in:
Bibliographic Details
Main Authors: Besta, Maciej, Gerstenberger, Robert, Iff, Patrick, Sonawane, Pournima, Luna, Juan Gómez, Kanakagiri, Raghavendra, Min, Rui, Kwaśniewski, Grzegorz, Mutlu, Onur, Hoefler, Torsten, Appuswamy, Raja, Mahony, Aidan O
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.12173
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866909395482312704
author Besta, Maciej
Gerstenberger, Robert
Iff, Patrick
Sonawane, Pournima
Luna, Juan Gómez
Kanakagiri, Raghavendra
Min, Rui
Kwaśniewski, Grzegorz
Mutlu, Onur
Hoefler, Torsten
Appuswamy, Raja
Mahony, Aidan O
author_facet Besta, Maciej
Gerstenberger, Robert
Iff, Patrick
Sonawane, Pournima
Luna, Juan Gómez
Kanakagiri, Raghavendra
Min, Rui
Kwaśniewski, Grzegorz
Mutlu, Onur
Hoefler, Torsten
Appuswamy, Raja
Mahony, Aidan O
contents Knowledge graphs (KGs) have achieved significant attention in recent years, particularly in the area of the Semantic Web as well as gaining popularity in other application domains such as data mining and search engines. Simultaneously, there has been enormous progress in the development of different types of heterogeneous hardware, impacting the way KGs are processed. The aim of this paper is to provide a systematic literature review of knowledge graph hardware acceleration. For this, we present a classification of the primary areas in knowledge graph technology that harnesses different hardware units for accelerating certain knowledge graph functionalities. We then extensively describe respective works, focusing on how KG related schemes harness modern hardware accelerators. Based on our review, we identify various research gaps and future exploratory directions that are anticipated to be of significant value both for academics and industry practitioners.
format Preprint
id arxiv_https___arxiv_org_abs_2408_12173
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Hardware Acceleration for Knowledge Graph Processing: Challenges & Recent Developments
Besta, Maciej
Gerstenberger, Robert
Iff, Patrick
Sonawane, Pournima
Luna, Juan Gómez
Kanakagiri, Raghavendra
Min, Rui
Kwaśniewski, Grzegorz
Mutlu, Onur
Hoefler, Torsten
Appuswamy, Raja
Mahony, Aidan O
Information Retrieval
Performance
Knowledge graphs (KGs) have achieved significant attention in recent years, particularly in the area of the Semantic Web as well as gaining popularity in other application domains such as data mining and search engines. Simultaneously, there has been enormous progress in the development of different types of heterogeneous hardware, impacting the way KGs are processed. The aim of this paper is to provide a systematic literature review of knowledge graph hardware acceleration. For this, we present a classification of the primary areas in knowledge graph technology that harnesses different hardware units for accelerating certain knowledge graph functionalities. We then extensively describe respective works, focusing on how KG related schemes harness modern hardware accelerators. Based on our review, we identify various research gaps and future exploratory directions that are anticipated to be of significant value both for academics and industry practitioners.
title Hardware Acceleration for Knowledge Graph Processing: Challenges & Recent Developments
topic Information Retrieval
Performance
url https://arxiv.org/abs/2408.12173