رکورد قبلیرکورد بعدی

" Multi-GPU Graph Analytics "


Document Type : AL
Record Number : 909409
Doc. No : LA39r145g1
Title & Author : Multi-GPU Graph Analytics [Article]\ Pan, Yuechao; Wang, Yangzihao; Wu, Yuduo; Yang, Carl; Owens, John D.
Date : 2017
Title of Periodical : UC Davis
Abstract : We present a single-node, multi-GPU programmable graph processing library that allows programmers to easily extend single-GPU graph algorithms to achieve scalable performance on large graphs with billions of edges. Directly using the single-GPU implementations, our design only requires programmers to specify a few algorithm-dependent concerns, hiding most multi-GPU related implementation details. We analyze the theoretical and practical limits to scalability in the context of varying graph primitives and datasets. We describe several optimizations, such as direction optimizing traversal, and a just-enough memory allocation scheme, for better performance and smaller memory consumption. Compared to previous work, we achieve best-of-class performance across operations and datasets, including excellent strong and weak scalability on most primitives as we increase the number of GPUs in the system.
کپی لینک

پیشنهاد خرید
پیوستها
عنوان :
نام فایل :
نوع عام محتوا :
نوع ماده :
فرمت :
سایز :
عرض :
طول :
39r145g1_7137.pdf
39r145g1.pdf
مقاله لاتین
متن
application/pdf
407.69 KB
85
85
نظرسنجی
نظرسنجی منابع دیجیتال

1 - آیا از کیفیت منابع دیجیتال راضی هستید؟