cornell-zhang / Polynormer
Polynormer: Polynomial-Expressive Graph Transformer in Linear Time
☆36Updated 7 months ago
Related projects ⓘ
Alternatives and complementary repositories for Polynormer
- GARNET: Reduced-Rank Topology Learning for Robust and Scalable Graph Neural Networks☆35Updated last year
- [HPCA 2022] GCoD: Graph Convolutional Network Acceleration via Dedicated Algorithm and Accelerator Co-Design☆32Updated 2 years ago
- Hop-Wise Graph Attention for Scalable and Generalizable Learning on Circuits☆22Updated 2 months ago
- GraphZoom: A Multi-level Spectral Approach for Accurate and Scalable Graph Embedding☆113Updated last year
- [MLSys 2022] "BNS-GCN: Efficient Full-Graph Training of Graph Convolutional Networks with Partition-Parallelism and Random Boundary Node …☆52Updated last year
- Largest realworld open-source graph dataset - Worked done under IBM-Illinois Discovery Accelerator Institute and Amazon Research Awards a…☆76Updated 2 months ago
- Implementation of "Binary Graph Convolutional Network", CVPR 2021, and TPAMI 2024.☆24Updated 7 months ago
- ☆35Updated 2 years ago
- ICLR 2021☆44Updated 3 years ago
- ☆11Updated 3 years ago
- This is an authors' implementation of the NIPS 2022 dataset and Benchmark Track Paper "A Comprehensive Study on Large Scale Graph Trainin…☆62Updated last year
- Official implementation of our VQ-GNN paper (NeurIPS2021)☆33Updated 3 years ago
- [ICLR 2022] "PipeGCN: Efficient Full-Graph Training of Graph Convolutional Networks with Pipelined Feature Communication" by Cheng Wan, Y…☆31Updated last year
- ☆42Updated last week
- Gamora: Graph Learning based Symbolic Reasoning for Large-Scale Boolean Networks (DAC'23)☆47Updated 2 weeks ago
- [FPGA 2020] Open sourced implementation for the ACM/SIGDA FPGA '20 paper titled "GraphACT: Accelerating GCN Training on CPU-FPGA Heteroge…☆18Updated 3 years ago
- HLSyn benchmark for paper "Towards a Comprehensive Benchmark for FPGA Targeted High-Level Synthesis"☆25Updated 11 months ago
- [Mlsys'22] Understanding gnn computational graph: A coordinated computation, io, and memory perspective☆17Updated last year
- Must-read papers on Graph Neural Networks (GNNs) for Integrated Circuits (ICs) design, security and reliability. This collection of paper…☆40Updated last year
- Codebase for ICML'24 paper: Learning from Students: Applying t-Distributions to Explore Accurate and Efficient Formats for LLMs☆24Updated 4 months ago
- A reading list for deep graph learning acceleration.☆225Updated 3 months ago
- Graph Neural Networks for Predicting Circuit Reliability Degradation. TCAD 2022☆18Updated last year
- A graph linear algebra overlay☆49Updated last year
- DAC'22 paper: "Automated Accelerator Optimization Aided by Graph Neural Networks"☆37Updated last year
- Implementation of FusedMM method for IPDPS 2021 paper titled "FusedMM: A Unified SDDMM-SpMM Kernel for Graph Embedding and Graph Neural N…☆28Updated 2 years ago
- "Do We Need Anisotropic Graph Neural Networks?" at ICLR 2022☆32Updated 2 years ago
- [ICML 2021] "A Unified Lottery Tickets Hypothesis for Graph Neural Networks", Tianlong Chen*, Yongduo Sui*, Xuxi Chen, Aston Zhang, Zhang…☆63Updated last year
- Graphiler is a compiler stack built on top of DGL and TorchScript which compiles GNNs defined using user-defined functions (UDFs) into ef…☆60Updated 2 years ago
- Distributed Deep Graph Learning Framework for Dynamic Graphs☆11Updated 7 months ago
- An end-to-end GCN inference accelerator written in HLS☆18Updated 2 years ago