GDLL: A Scalable and Share Nothing Architecture Based Distributed Graph Neural Networks Framework
<p dir="ltr">Deep learning has recently been shown to be effective in uncovering hidden patterns in non-Euclidean space, where data is represented as graphs with complex object relationships and interdependencies. Because of the implicit data dependence in the big graphs with million...
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| Main Author: | Duong Thi Thu Van (19499206) (author) |
|---|---|
| Other Authors: | Muhammad Numan Khan (6689816) (author), Tariq Habib Afridi (19499209) (author), Irfan Ullah (847820) (author), Aftab Alam (5158601) (author), Young-Koo Lee (19420543) (author) |
| Published: |
2022
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| Subjects: | |
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