[
  {
    "title": "Retiarii: A Deep Learning Exploratory-Training Framework",
    "url": "https://github.com/microsoft/nni/tree/retiarii_artifact",
    "year": 2020,
    "stars": 14353,
    "forks": 1860,
    "authors": "Quanlu Zhang, Zhenhua Han, Fan Yang 0024, Yuge Zhang, Zhe Liu et al.",
    "github_org": "microsoft",
    "badges": "available,functional,reproduced",
    "last_active": "2024-07",
    "description": "An open source AutoML toolkit for automate machine learning lifecycle, including feature engineering, neural architectur",
    "language": "Python",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "SparTA: Deep-Learning Model Sparsity via Tensor-with-Sparsity-Attribute",
    "url": "https://github.com/microsoft/nni/tree/sparta_artifact",
    "year": 2022,
    "stars": 14353,
    "forks": 1860,
    "authors": "Ningxin Zheng, Bin Lin, Quanlu Zhang, Lingxiao Ma, Yuqing Yang 0001 et al.",
    "github_org": "microsoft",
    "badges": "available,functional,reproduced",
    "last_active": "2024-07",
    "description": "An open source AutoML toolkit for automate machine learning lifecycle, including feature engineering, neural architectur",
    "language": "Python",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "SkyWalker: A Locality-Aware Cross-Region Load Balancer for LLM Inference",
    "url": "https://github.com/skypilot-org/skypilot",
    "year": 2026,
    "stars": 10080,
    "forks": 1094,
    "authors": "",
    "github_org": "skypilot-org",
    "badges": "available,functional",
    "last_active": "2026-06",
    "description": "Run, manage, and scale AI workloads on any AI infrastructure. Use one system to access & manage all AI compute (Kubernet",
    "language": "Python",
    "conference": "EUROSYS",
    "area": "systems"
  },
  {
    "title": "A Unified Architecture for Accelerating Distributed DNN Training in Heterogeneous GPU/CPU Clusters",
    "url": "https://github.com/bytedance/byteps/",
    "year": 2020,
    "stars": 3722,
    "forks": 493,
    "authors": "Yimin Jiang, Yibo Zhu 0001, Chang Lan, Bairen Yi, Yong Cui 0001 et al.",
    "github_org": "bytedance",
    "badges": "available,functional,reproduced",
    "last_active": "2023-10",
    "description": "A high performance and generic framework for distributed DNN training",
    "language": "Python",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "A Tensor Compiler for Unified Machine Learning Prediction Serving",
    "url": "https://github.com/microsoft/hummingbird/commit/dbebbb715e7050b47895082664adc27f8b846aa1",
    "year": 2020,
    "stars": 3535,
    "forks": 293,
    "authors": "Supun Nakandala, Karla Saur, Gyeong-In Yu, Konstantinos Karanasos, Carlo Curino et al.",
    "github_org": "microsoft",
    "badges": "available,functional,reproduced",
    "last_active": "2025-07",
    "description": "Hummingbird compiles trained ML models into tensor computation for faster inference.",
    "language": "Python",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "Parax: Automating Inter- and Intra-Operator Parallelism for Distributed Deep Learning",
    "url": "https://github.com/alpa-projects/alpa/tree/osdi22_artifact/osdi22_artifact",
    "year": 2022,
    "stars": 3187,
    "forks": 361,
    "authors": "",
    "github_org": "alpa-projects",
    "badges": "available,functional,reproduced",
    "last_active": "2023-12",
    "description": "Training and serving large-scale neural networks with auto parallelization.",
    "language": "Python",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "Theseus: an Experiment in Operating System Structure and State Management",
    "url": "https://github.com/theseus-os/Theseus/tree/osdi20ae/osdi20ae",
    "year": 2020,
    "stars": 3161,
    "forks": 185,
    "authors": "",
    "github_org": "theseus-os",
    "badges": "",
    "last_active": "2024-09",
    "description": "Theseus is a modern OS written from scratch in Rust that explores 𝐢𝐧𝐭𝐫𝐚𝐥𝐢𝐧𝐠𝐮𝐚𝐥 𝐝𝐞𝐬𝐢𝐠𝐧: closing the semantic gap between ",
    "language": "Rust",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "Unity: Accelerating DNN Training Through Joint Optimization of Algebraic Transformations and Parallelization",
    "url": "https://github.com/flexflow/FlexFlow/tree/osdi2022ae",
    "year": 2022,
    "stars": 1886,
    "forks": 251,
    "authors": "",
    "github_org": "flexflow",
    "badges": "",
    "last_active": "2026-05",
    "description": "Automatically Discovering Fast Parallelization Strategies for Distributed Deep Neural Network Training",
    "language": "C++",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "Portunus: Re-imagining Access Control in Distributed Systems",
    "url": "https://github.com/cloudflare/circl/tree/main/abe/cpabe/tkn20",
    "year": 2023,
    "stars": 1671,
    "forks": 205,
    "authors": "Watson Ladd, Tanya Verma, Marloes Venema, Armando Faz-Hernández, Brendan McMillion et al.",
    "github_org": "cloudflare",
    "badges": "available,functional,reproduced",
    "last_active": "2026-05",
    "description": "CIRCL: Cloudflare Interoperable Reusable Cryptographic Library",
    "language": "Go",
    "conference": "ATC",
    "area": "systems"
  },
  {
    "title": "The Demikernel Library OS Architecture for Microsecond, Kernel-Bypass Datacenter Systems",
    "url": "https://github.com/demikernel/demikernel",
    "year": 2021,
    "stars": 1228,
    "forks": 145,
    "authors": "",
    "github_org": "demikernel",
    "badges": "Available",
    "last_active": "2026-02",
    "description": "Kernel-Bypass LibOS Architecture",
    "language": "Rust",
    "conference": "SOSP",
    "area": "systems"
  },
  {
    "title": "Rammer: Enabling Holistic Deep Learning Compiler Optimizations with rTasks",
    "url": "https://github.com/microsoft/nnfusion/tree/osdi20_artifact/artifacts",
    "year": 2020,
    "stars": 1001,
    "forks": 167,
    "authors": "",
    "github_org": "microsoft",
    "badges": "",
    "last_active": "2024-09",
    "description": "A flexible and efficient deep neural network (DNN) compiler that generates high-performance executable from a DNN model ",
    "language": "C++",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "Roller: Fast and Efficient Tensor Compilation for Deep Learning",
    "url": "https://github.com/microsoft/nnfusion/tree/osdi22_artifact/artifacts",
    "year": 2022,
    "stars": 1001,
    "forks": 167,
    "authors": "",
    "github_org": "microsoft",
    "badges": "",
    "last_active": "2024-09",
    "description": "A flexible and efficient deep neural network (DNN) compiler that generates high-performance executable from a DNN model ",
    "language": "C++",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "Grinder: Analysis and Optimization for Dynamic Control Flow in Deep Learning",
    "url": "https://github.com/microsoft/nnfusion/tree/cocktailer_artifact",
    "year": 2023,
    "stars": 1001,
    "forks": 167,
    "authors": "",
    "github_org": "microsoft",
    "badges": "",
    "last_active": "2024-09",
    "description": "A flexible and efficient deep neural network (DNN) compiler that generates high-performance executable from a DNN model ",
    "language": "C++",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "Grinder: Analysis and Optimization for Dynamic Control Flow in Deep Learning",
    "url": "https://github.com/microsoft/nnfusion/tree/cocktailer_artifact",
    "year": 2023,
    "stars": 1001,
    "forks": 167,
    "authors": "",
    "github_org": "microsoft",
    "badges": "",
    "last_active": "2024-09",
    "description": "A flexible and efficient deep neural network (DNN) compiler that generates high-performance executable from a DNN model ",
    "language": "C++",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "Uncovering Nested Data Parallelism and Data Reuse in DNN Computation with FractalTensor",
    "url": "https://github.com/microsoft/nnfusion",
    "year": 2024,
    "stars": 1001,
    "forks": 167,
    "authors": "Siran Liu, Chengxiang Qi, Ying Cao, Chao Yang 0002, Weifang Hu et al.",
    "github_org": "microsoft",
    "badges": "Available,Functional,Reproduced",
    "last_active": "2024-09",
    "description": "A flexible and efficient deep neural network (DNN) compiler that generates high-performance executable from a DNN model ",
    "language": "C++",
    "conference": "SOSP",
    "area": "systems"
  },
  {
    "title": "Bitter: Enabling Efficient Low-Precision Deep Learning Computing through Hardware-aware Tensor Transformation",
    "url": "https://github.com/microsoft/BitBLAS/tree/osdi24_ladder_artifact",
    "year": 2024,
    "stars": 764,
    "forks": 59,
    "authors": "",
    "github_org": "microsoft",
    "badges": "",
    "last_active": "2025-08",
    "description": "BitBLAS is a library to support mixed-precision matrix multiplications, especially for quantized LLM deployment.",
    "language": "Python",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "Achieving 100Gbps Intrusion Prevention on a Single Server",
    "url": "https://github.com/cmu-snap/pigasus",
    "year": 2020,
    "stars": 698,
    "forks": 76,
    "authors": "",
    "github_org": "cmu-snap",
    "badges": "",
    "last_active": "2024-08",
    "description": "100Gbps Intrusion Detection and Prevention System",
    "language": "C++",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "PaSh: Light-touch Data-Parallel Shell Processing",
    "url": "https://github.com/andromeda/pash",
    "year": 2021,
    "stars": 597,
    "forks": 52,
    "authors": "Nikos Vasilakis, Konstantinos Kallas, Konstantinos Mamouras, Achilles Benetopoulos, Lazar Cvetkovic",
    "github_org": "andromeda",
    "badges": "available,functional,reproduced",
    "last_active": "2026-04",
    "description": "PaSh: Light-touch Data-Parallel Shell Processing",
    "language": "Shell",
    "conference": "EUROSYS",
    "area": "systems"
  },
  {
    "title": "Practically Correct, Just-in-Time Shell Script Parallelization",
    "url": "https://github.com/binpash/pash/blob/osdi22-ae/evaluation/osdi22-eval/",
    "year": 2022,
    "stars": 597,
    "forks": 52,
    "authors": "",
    "github_org": "binpash",
    "badges": "",
    "last_active": "2026-04",
    "description": "PaSh: Light-touch Data-Parallel Shell Processing",
    "language": "Shell",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "Trinity: Desirable Mobile Emulation through Graphics Projection",
    "url": "https://github.com/TrinityEmulator/TrinityEmulator",
    "year": 2022,
    "stars": 412,
    "forks": 54,
    "authors": "",
    "github_org": "TrinityEmulator",
    "badges": "",
    "last_active": "2025-03",
    "description": "Trinity is an Android emulator designed to simultaneously meet the goals of good compatibility, security and efficiency ",
    "language": "C",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "Generalized Pipeline Parallelism for DNN Training",
    "url": "https://github.com/msr-fiddle/pipedream",
    "year": 2019,
    "stars": 393,
    "forks": 114,
    "authors": "",
    "github_org": "msr-fiddle",
    "badges": "Available,Functional",
    "last_active": "2022-11",
    "description": "",
    "language": "Python",
    "conference": "SOSP",
    "area": "systems"
  },
  {
    "title": "Do OS abstractions make sense on FPGAs?",
    "url": "https://github.com/fpgasystems/Coyote",
    "year": 2020,
    "stars": 363,
    "forks": 103,
    "authors": "",
    "github_org": "fpgasystems",
    "badges": "",
    "last_active": "2026-05",
    "description": "Framework providing operating system abstractions and a range of shared networking and memory services for common modern",
    "language": "SystemVerilog",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "Reducing Energy Bloat in Large Model Training",
    "url": "https://github.com/ml-energy/zeus/tree/kronos",
    "year": 2024,
    "stars": 358,
    "forks": 44,
    "authors": "Jae-Won Chung, Yile Gu, Insu Jang, Luoxi Meng, Nikhil Bansal 0001 et al.",
    "github_org": "ml-energy",
    "badges": "Available,Functional,Reproduced",
    "last_active": "2026-05",
    "description": "Measure and optimize the energy consumption of your AI applications!",
    "language": "Python",
    "conference": "SOSP",
    "area": "systems"
  },
  {
    "title": "Automatic Reliability Testing For Cluster Management Controllers",
    "url": "https://github.com/sieve-project/sieve/tree/osdi-ae",
    "year": 2022,
    "stars": 344,
    "forks": 21,
    "authors": "",
    "github_org": "sieve-project",
    "badges": "",
    "last_active": "2024-09",
    "description": "Automatic Reliability Testing for Kubernetes Controllers and Operators",
    "language": "Python",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "SecretFlow-SPU: A Performant and User-Friendly Framework for Privacy-Preserving Machine Learning",
    "url": "https://github.com/secretflow/spu/tree/atc23_ae",
    "year": 2023,
    "stars": 323,
    "forks": 145,
    "authors": "Junming Ma, Yancheng Zheng, Jun Feng, Derun Zhao, Haoqi Wu et al.",
    "github_org": "secretflow",
    "badges": "available,functional,reproduced",
    "last_active": "2026-05",
    "description": "SPU (Secure Processing Unit) aims to be a provable, measurable secure computation device, which provides computation abi",
    "language": "C++",
    "conference": "ATC",
    "area": "systems"
  },
  {
    "title": "BetrFS: A Compleat File System for Commodity SSDs",
    "url": "https://github.com/oscarlab/betrfs",
    "year": 2022,
    "stars": 297,
    "forks": 28,
    "authors": "Yizheng Jiao, Simon Bertron, Sagar Patel, Luke Zeller, Rory Bennett et al.",
    "github_org": "oscarlab",
    "badges": "available,functional,reproduced",
    "last_active": "2024-06",
    "description": "",
    "language": "C++",
    "conference": "EUROSYS",
    "area": "systems"
  },
  {
    "title": "KungFu: Making Training in Distributed Machine Learning Adaptive",
    "url": "https://github.com/lsds/KungFu/tree/ae-submissionV2",
    "year": 2020,
    "stars": 295,
    "forks": 59,
    "authors": "",
    "github_org": "lsds",
    "badges": "",
    "last_active": "2024-02",
    "description": "Fast and Adaptive Distributed Machine Learning for TensorFlow, PyTorch and MindSpore.",
    "language": "Go",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "HEALER: Relation Learning Guided Kernel Fuzzing",
    "url": "https://github.com/SunHao-0/healer",
    "year": 2021,
    "stars": 290,
    "forks": 49,
    "authors": "Hao Sun 0021, Yuheng Shen, Cong Wang 0020, Jianzhong Liu, Yu Jiang 0001 et al.",
    "github_org": "SunHao-0",
    "badges": "Available,Functional",
    "last_active": "2022-02",
    "description": "Kernel fuzzer inspired by Syzkaller.",
    "language": "Rust",
    "conference": "SOSP",
    "area": "systems"
  },
  {
    "title": "Quant-LLM: Accelerating the Serving of Large Language Models via FP6-Centric Algorithm-System Co-Design on Modern GPUs",
    "url": "https://github.com/usyd-fsalab/fp6_llm/",
    "year": 2024,
    "stars": 282,
    "forks": 24,
    "authors": "Haojun Xia, Zhen Zheng, Xiaoxia Wu, Shiyang Chen 0004, Zhewei Yao et al.",
    "github_org": "usyd-fsalab",
    "badges": "available",
    "last_active": "2025-07",
    "description": "An efficient GPU support for LLM inference with x-bit quantization (e.g. FP6,FP5).",
    "language": "Cuda",
    "conference": "ATC",
    "area": "systems"
  },
  {
    "title": "Whale: Efficient Giant Model Training over Heterogeneous GPUs",
    "url": "https://github.com/alibaba/EasyParallelLibrary",
    "year": 2022,
    "stars": 271,
    "forks": 49,
    "authors": "Xianyan Jia, Le Jiang, Ang Wang, Wencong Xiao, Ziji Shi et al.",
    "github_org": "alibaba",
    "badges": "available,functional",
    "last_active": "2023-03",
    "description": "Easy Parallel Library (EPL) is a general and efficient deep learning framework for distributed model training.",
    "language": "Python",
    "conference": "ATC",
    "area": "systems"
  },
  {
    "title": "Varuna: Scalable, Low-cost Training of Massive Deep Learning Models",
    "url": "https://github.com/microsoft/varuna/",
    "year": 2022,
    "stars": 251,
    "forks": 28,
    "authors": "Sanjith Athlur, Nitika Saran, Muthian Sivathanu, Ramachandran Ramjee, Nipun Kwatra",
    "github_org": "microsoft",
    "badges": "available,functional",
    "last_active": "2024-07",
    "description": "",
    "language": "Python",
    "conference": "EUROSYS",
    "area": "systems"
  },
  {
    "title": "XRP: In-Kernel Storage Functions with eBPF",
    "url": "https://github.com/xrp-project/XRP",
    "year": 2022,
    "stars": 241,
    "forks": 44,
    "authors": "",
    "github_org": "xrp-project",
    "badges": "",
    "last_active": "2023-07",
    "description": "XRP: In-Kernel Storage Functions with eBPF",
    "language": "Shell",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "Efficient and Adaptable Overlapping for Computation and Communication via Signaling and Reordering",
    "url": "https://github.com/infinigence/FlashOverlap",
    "year": 2026,
    "stars": 237,
    "forks": 15,
    "authors": "",
    "github_org": "infinigence",
    "badges": "available,functional,reproduced",
    "last_active": "2026-01",
    "description": "A lightweight design for computation-communication overlap.",
    "language": "Python",
    "conference": "EUROSYS",
    "area": "systems"
  },
  {
    "title": "Parrot: Efficient Serving of LLM-based Applications with Semantic Variable",
    "url": "https://github.com/microsoft/ParrotServe/tree/artifact",
    "year": 2024,
    "stars": 219,
    "forks": 14,
    "authors": "",
    "github_org": "microsoft",
    "badges": "",
    "last_active": "2024-09",
    "description": "[OSDI'24] Serving LLM-based Applications Efficiently with Semantic Variable",
    "language": "Python",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "MOSAIC Teaching Operating System Model and Checker",
    "url": "https://github.com/jiangyy/mosaic",
    "year": 2023,
    "stars": 209,
    "forks": 20,
    "authors": "",
    "github_org": "jiangyy",
    "badges": "available,functional,reproduced",
    "last_active": "2023-05",
    "description": "The MOSAIC Operating Systems Model and Checker",
    "language": "Python",
    "conference": "ATC",
    "area": "systems"
  },
  {
    "title": "D3: A Dynamic Deadline-Driven Approach for Building Autonomous Vehicles",
    "url": "https://github.com/erdos-project/erdos",
    "year": 2022,
    "stars": 208,
    "forks": 48,
    "authors": "",
    "github_org": "erdos-project",
    "badges": "",
    "last_active": "2022-08",
    "description": "Dataflow system for building self-driving car and robotics applications.",
    "language": "Rust",
    "conference": "EUROSYS",
    "area": "systems"
  },
  {
    "title": "RECIPE: Converting Concurrent DRAM Indexes to Persistent-Memory Indexes",
    "url": "https://github.com/utsaslab/RECIPE",
    "year": 2019,
    "stars": 195,
    "forks": 46,
    "authors": "",
    "github_org": "utsaslab",
    "badges": "",
    "last_active": "2024-10",
    "description": "RECIPE : high-performance, concurrent indexes for persistent memory (SOSP 2019)",
    "language": "C++",
    "conference": "SOSP",
    "area": "systems"
  },
  {
    "title": "Empowering WebAssembly with Thin Kernel Interfaces",
    "url": "https://github.com/arjunr2/WALI",
    "year": 2025,
    "stars": 191,
    "forks": 20,
    "authors": "",
    "github_org": "arjunr2",
    "badges": "",
    "last_active": "2026-05",
    "description": "A low-level virtualization interface for Linux-based systems using WebAssembly",
    "language": "C",
    "conference": "EUROSYS",
    "area": "systems"
  },
  {
    "title": "InfiniGen: Efficient Generative Inference of Large Language Models with Dynamic KV Cache Management",
    "url": "https://github.com/snu-comparch/InfiniGen",
    "year": 2024,
    "stars": 188,
    "forks": 37,
    "authors": "",
    "github_org": "snu-comparch",
    "badges": "",
    "last_active": "2024-07",
    "description": "InfiniGen: Efficient Generative Inference of Large Language Models with Dynamic KV Cache Management (OSDI'24)",
    "language": "Python",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "You Only Prefill Once: Combining Cached Knowledge for Large Language Model Serving with CacheBlend",
    "url": "https://github.com/YaoJiayi/CacheBlend.git",
    "year": 2025,
    "stars": 186,
    "forks": 32,
    "authors": "",
    "github_org": "YaoJiayi",
    "badges": "",
    "last_active": "2025-07",
    "description": "",
    "language": "Python",
    "conference": "EUROSYS",
    "area": "systems"
  },
  {
    "title": "Anvil: Verifying Liveness of Cluster Management Controllers",
    "url": "https://github.com/vmware-research/verifiable-controllers",
    "year": 2024,
    "stars": 178,
    "forks": 13,
    "authors": "",
    "github_org": "vmware-research",
    "badges": "",
    "last_active": "2026-05",
    "description": "Anvil is an experimental framework to build practical, formally verified, cluster management controllers.",
    "language": "Rust",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "Finding Semantic Bugs in File Systems with an Extensible Fuzzing Framework",
    "url": "https://github.com/sslab-gatech/hydra",
    "year": 2019,
    "stars": 174,
    "forks": 29,
    "authors": "",
    "github_org": "sslab-gatech",
    "badges": "",
    "last_active": "2022-08",
    "description": "Hydra: an Extensible Fuzzing Framework for Finding Semantic Bugs in File Systems",
    "language": "C",
    "conference": "SOSP",
    "area": "systems"
  },
  {
    "title": "SplitFS: Reducing Software Overhead in File Systems for Persistent Memory",
    "url": "https://github.com/utsaslab/SplitFS",
    "year": 2019,
    "stars": 171,
    "forks": 53,
    "authors": "",
    "github_org": "utsaslab",
    "badges": "",
    "last_active": "2022-11",
    "description": "SplitFS: persistent-memory file system that reduces software overhead (SOSP 2019)",
    "language": "C",
    "conference": "SOSP",
    "area": "systems"
  },
  {
    "title": "Dissecting BFT Consensus: In Trusted Components we Trust!",
    "url": "https://github.com/resilientdb/resilientdb",
    "year": 2023,
    "stars": 168,
    "forks": 277,
    "authors": "",
    "github_org": "resilientdb",
    "badges": "",
    "last_active": "2026-05",
    "description": "Global-Scale Sustainable Blockchain Fabric",
    "language": "TypeScript",
    "conference": "EUROSYS",
    "area": "systems"
  },
  {
    "title": "Marius: Learning Massive Graph Embeddings on a Single Machine",
    "url": "https://github.com/marius-team/marius/tree/osdi2021",
    "year": 2021,
    "stars": 167,
    "forks": 47,
    "authors": "",
    "github_org": "marius-team",
    "badges": "",
    "last_active": "2025-02",
    "description": "Large scale graph learning on a single machine. ",
    "language": "C++",
    "conference": "OSDI",
    "area": "systems"
  },
  {
    "title": "PIT: Optimization of Dynamic Sparse Deep Learning Models via Permutation Invariant Transformation",
    "url": "https://github.com/microsoft/SparTA/tree/pit_artifact",
    "year": 2023,
    "stars": 167,
    "forks": 12,
    "authors": "",
    "github_org": "microsoft",
    "badges": "",
    "last_active": "2024-07",
    "description": "",
    "language": "Python",
    "conference": "SOSP",
    "area": "systems"
  },
  {
    "title": "VMSH: Hypervisor-agnostic Guest Overlays for VMs",
    "url": "https://github.com/Mic92/vmsh",
    "year": 2022,
    "stars": 166,
    "forks": 9,
    "authors": "",
    "github_org": "Mic92",
    "badges": "",
    "last_active": "2026-05",
    "description": "Shell into a virtualized linux, with your own tools ",
    "language": "Rust",
    "conference": "EUROSYS",
    "area": "systems"
  },
  {
    "title": "State Machine Replication Scalability Made Simple",
    "url": "https://github.com/hyperledger-labs/mirbft/tree/research-iss",
    "year": 2022,
    "stars": 159,
    "forks": 31,
    "authors": "",
    "github_org": "hyperledger-labs",
    "badges": "",
    "last_active": "2023-09",
    "description": "MirBFT is a consensus library implementing the Mir consensus protocol.",
    "language": "Go",
    "conference": "EUROSYS",
    "area": "systems"
  },
  {
    "title": "VectorVisor: A Binary Translation Scheme for Throughput-Oriented GPU Acceleration",
    "url": "https://github.com/SamGinzburg/VectorVisor",
    "year": 2023,
    "stars": 158,
    "forks": 5,
    "authors": "",
    "github_org": "SamGinzburg",
    "badges": "",
    "last_active": "2024-09",
    "description": "VectorVisor is a vectorizing binary translator for GPUs, designed to make it easy to run many copies of a single-threade",
    "language": "WebAssembly",
    "conference": "ATC",
    "area": "systems"
  },
  {
    "title": "DZiG: Sparsity-Aware Incremental Processing of Streaming Graphs",
    "url": "https://github.com/pdclab/graphbolt/tree/eurosys21-artifact",
    "year": 2021,
    "stars": 149,
    "forks": 25,
    "authors": "",
    "github_org": "pdclab",
    "badges": "",
    "last_active": "2021-05",
    "description": "GraphBolt: Dependency-Driven Synchronous Processing of Streaming Graphs ",
    "language": "C++",
    "conference": "EUROSYS",
    "area": "systems"
  }
]
