Výsledky vyhľadávania - Graph algorithms and analysis

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  1. 1

    Skywalker: Efficient Alias-Method-Based Graph Sampling and Random Walk on GPUs Autor Wang, Pengyu, Li, Chao, Wang, Jing, Wang, Taolei, Zhang, Lu, Leng, Jingwen, Chen, Quan, Guo, Minyi

    Vydavateľské údaje: IEEE 01.09.2021
    “…Graph sampling and random walk operations, capturing the structural properties of graphs, are playing an important role today as we cannot directly adopt computing-intensive algorithms on large-scale graphs…”
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  2. 2

    BlasPart: A Deterministic Parallel Partitioner for Balanced Large-Scale Hypergraph Partitioning Autor Tong, Shengbo, Pei, Chunyan, Yu, Wenjian

    Vydavateľské údaje: IEEE 22.06.2025
    “… Thus, fast and high-quality deterministic partitioning algorithms are largely in demand…”
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  3. 3

    ParGNN: A Scalable Graph Neural Network Training Framework on multi-GPUs Autor Gu, Junyu, Li, Shunde, Cao, Rongqiang, Wang, Jue, Wang, Zijian, Liang, Zhiqiang, Liu, Fang, Li, Shigang, Zhou, Chunbao, Wang, Yangang, Chi, Xuebin

    Vydavateľské údaje: IEEE 22.06.2025
    “…Full-batch Graph Neural Network (GNN) training is indispensable for interdisciplinary applications…”
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  4. 4

    DS-GL: Advancing Graph Learning via Harnessing Nature's Power within Scalable Dynamical Systems Autor Song, Ruibing, Wu, Chunshu, Liu, Chuan, Li, Ang, Huang, Michael, Geng, Tony Tong

    Vydavateľské údaje: IEEE 29.06.2024
    “…With the rapid digitization of the world, an increasing number of real-world applications are turning to non-Euclidean data, modeled as graphs…”
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  5. 5

    PIMGCN: A ReRAM-Based PIM Design for Graph Convolutional Network Acceleration Autor Yang, Tao, Li, Dongyue, Han, Yibo, Zhao, Yilong, Liu, Fangxin, Liang, Xiaoyao, He, Zhezhi, Jiang, Li

    Vydavateľské údaje: IEEE 05.12.2021
    “…Graph Convolutional Network (GCN) is a promising but computing- and memory-intensive learning model…”
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  6. 6

    DyGNN: Algorithm and Architecture Support of Dynamic Pruning for Graph Neural Networks Autor Chen, Cen, Li, Kenli, Zou, Xiaofeng, Li, Yangfan

    Vydavateľské údaje: IEEE 05.12.2021
    “…Recently, graph neural networks (GNNs) have achieved great success for graph representation learning tasks…”
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  7. 7

    iG-kway: Incremental k-way Graph Partitioning on GPU Autor Lee, Wan Luan, Jiang, Shui, Lin, Dian-Lun, Chang, Che, Zhang, Boyang, Chung, Yi-Hua, Schlichtmann, Ulf, Ho, Tsung-Yi, Huang, Tsung-Wei

    Vydavateľské údaje: IEEE 22.06.2025
    “…Recent advances in GPU-accelerated graph partitioning have achieved significant performance gains but remain limited to full graph partitioning, lacking support for incremental updates…”
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  8. 8

    GPart: A GNN-Enabled Multilevel Graph Partitioner Autor Chen, Magi, Wang, Ting-Chi

    Vydavateľské údaje: IEEE 22.06.2025
    “…This paper introduces GPart, a scalable multilevel framework for graph partitioning that integrates GNN embeddings with efficient coarsening and refinement techniques…”
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  9. 9

    SumPA: Efficient Pattern-Centric Graph Mining with Pattern Abstraction Autor Gui, Chuangyi, Liao, Xiaofei, Zheng, Long, Yao, Pengcheng, Wang, Qinggang, Jin, Hai

    Vydavateľské údaje: IEEE 01.09.2021
    “…Graph mining aims to explore interesting structural information of a graph. Pattern-centric systems typically transform a generic-purpose graph mining problem into a series of subgraph matching problems for high performance…”
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  10. 10

    LearnGraph: A Learning-Based Architecture for Dynamic Graph Processing Autor Zhang, Lingling, Wu, Yijian, Jiang, Hong, Zhou, Ziyu, Lu, Tiancheng

    Vydavateľské údaje: IEEE 22.06.2025
    “…Dynamic graph processing systems using conventional array-based architectures face significant throughput limitations due to inefficient memory access and index management…”
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    EMGraph: Fast Learning-Based Electromigration Analysis for Multi-Segment Interconnect Using Graph Convolution Networks Autor Jin, Wentian, Chen, Liang, Sadiqbatcha, Sheriff, Peng, Shaoyi, Tan, Sheldon X.-D.

    Vydavateľské údaje: IEEE 05.12.2021
    “… VLSI multisegment interconnect trees can be naturally viewed as graphs. Based on this observation, we propose a new graph convolution network (GCN…”
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  12. 12

    ACGraph: Accelerating Streaming Graph Processing via Dependence Hierarchy Autor Jiang, Zihan, Mao, Fubing, Guo, Yapu, Liu, Xu, Liu, Haikun, Liao, Xiaofei, Jin, Hai, Zhang, Wei

    Vydavateľské údaje: IEEE 09.07.2023
    “… To address this issue, we propose ACGraph, a novel streaming graph processing approach for monotonic graph algorithms…”
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  13. 13

    Parallelizing Maximal Clique Enumeration on GPUs Autor Almasri, Mohammad, Chang, Yen-Hsiang, Hajj, Izzat El, Nagi, Rakesh, Xiong, Jinjun, Hwu, Wen-mei

    Vydavateľské údaje: IEEE 21.10.2023
    “…We present a GPU solution for exact maximal clique enumeration (MCE) that performs a search tree traversal following the Bron-Kerbosch algorithm…”
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  14. 14

    Anchor First, Accelerate Next: Revolutionizing GNNs with PIM by Harnessing Stationary Data Autor Chen, Jiaxian, Qi, Yuxuan, Zhu, Yongbiao, Yuan, Jianan, Sun, Kaoyi, Wang, Tianyu, Ma, Chenlin, Wang, Yi

    Vydavateľské údaje: IEEE 22.06.2025
    “…Substantial data movement caused by irregular graph topologies hinders the efficient processing of graph neural networks (GNNs…”
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    PSMiner: A Pattern-Aware Accelerator for High-Performance Streaming Graph Pattern Mining Autor Qi, Hao, Zhang, Yu, He, Ligang, Luo, Kang, Huang, Jun, Lu, Haoyu, Zhao, Jin, Jin, Hai

    Vydavateľské údaje: IEEE 09.07.2023
    “…Streaming Graph Pattern Mining (GPM) has been widely used in many application fields…”
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    Synchronization in graph analysis algorithms on the Partially Ordered Event‐Triggered Systems many‐core architecture Autor Rafiev, Ashur, Yakovlev, Alex, Tarawneh, Ghaith, Naylor, Matthew F., Moore, Simon W., Thomas, David B., Bragg, Graeme M., Vousden, Mark L., Brown, Andrew D.

    ISSN: 1751-8601, 2095-882X, 1751-861X, 2589-0514
    Vydavateľské údaje: Beijing John Wiley & Sons, Inc 01.03.2022
    “…One of the key problems in designing and implementing graph analysis algorithms for distributed platforms is to find an optimal way of managing communication flows in the massively parallel processing network. Message…”
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    Journal Article
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    SGIRR: Sparse Graph Index Remapping for ReRAM Crossbar Operation Unit and Power Optimization Autor Wang, Cheng-Yuan, Chang, Yao-Wen, Chang, Yuan-Hao

    ISSN: 1558-2434
    Vydavateľské údaje: ACM 29.10.2022
    “… This paper proposes a two-stage algorithm with a crossbar OU-aware scheme for sparse graph index remapping for ReRAM (SGIRR…”
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    Dynamic Allocation of Processor Cores to Graph Applications on Commodity Servers Autor Pons, Lucia, Sahuauillo, Julio, Jones, Timothy M.

    Vydavateľské údaje: IEEE 21.10.2023
    “…Graph processing is increasingly adopted to solve problems that span many application domains, including scientific computing, social networks, and big-data analytics…”
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    Late Breaking Results: An Efficient and Scalable Track Assignment with GPU Parallelism Autor Liu, Genggeng, Huang, Pengcheng, Li, Zepeng, Liu, Wen-Hao, Huang, Xing, Guo, Wenzhong

    Vydavateľské údaje: IEEE 22.06.2025
    “… Based on the independence and divisibility of track assignment, we propose a GPU-accelerated parallel track assignment algorithm…”
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    SAGA: A Memory-Efficient Accelerator for GANN Construction via Harnessing Vertex Similarity Autor Chen, Ruiyang, Liu, Xueyuan, Qi, Chunyu, Yao, Yuanzheng, Sun, Yanan, Liang, Xiaoyao, Song, Zhuoran

    Vydavateľské údaje: IEEE 22.06.2025
    “…Graph-traversal-based Approximate Nearest Neighbor (GANN) search and construction have become key retrieval techniques in various domains, such as recommendation systems and social networks…”
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