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  1. Home
  2. /Repositories
  3. /NexusGPU/tensor-fusion
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repoGitHubTrust 82 · PrimaryPublished yesterdayLive · 16h ago

NexusGPU/tensor-fusion

Tensor Fusion is a state-of-the-art GPU virtualization and pooling solution designed to optimize GPU cluster utilization to its fullest potential.

Lineage graph

Paper → model → repo connections mined from source citations (Tier-1 exact match).

Implements

paperFlexViT: A Flexible FPGA-based Accelerator for Edge Vision TransformerspaperGPU Parallelization Strategies for Forward and Backward Propagation in Shallow Neural Networks: A CUDA-Based Comparative Study

Covers

newsGoing from single GPU to dual GPU is nice but not in the way I expected

Related across the graph

paperFlexViT: A Flexible FPGA-based Accelerator for Edge Vision TransformerspaperGPU Parallelization Strategies for Forward and Backward Propagation in Shallow Neural Networks: A CUDA-Based Comparative StudynewsGoing from single GPU to dual GPU is nice but not in the way I expected
Knowledge path·PFlexViT: A Flexible FPGA-based Accelerator for Edge Vision Transformers→PGPU Parallelization Strategies for Forward and Backward Propagation in Shallow Neural Networks: A CUDA-Based Comparative Study→NGoing from single GPU to dual GPU is nice but not in the way I expected→RNexusGPU/tensor-fusion

Topics

aiamd-gpuautoscalingdynamic-resource-allocationgpugpu-accelerationgpu-poolinggpu-schedulinggpu-usagegpu-virtualization

Explore

Search similar →Knowledge graph →All repos →Full intelligence feed →
Graph trust82Primary
Graph score158