awesome-repositories.com
© 2026 Bringes Technology SRL·VAT RO45896025·hello@bringes.io
MCPSitemapPrivacyTerms
Inference Engines · Awesome GitHub Repositories

7 repos

Awesome GitHub RepositoriesInference Engines

Runtime environments designed to execute pre-trained neural network models with optimized performance and efficiency.

Explore 7 awesome GitHub repositories matching artificial intelligence & ml · Inference Engines. Refine with filters or upvote what's useful.

  1. Home
  2. Artificial Intelligence & ML
  3. Machine Learning Infrastructure
  4. Inference Serving Engines
  5. Inference Engines

Awesome Inference Engines GitHub Repositories

Describe the repository you're looking for…
We'll search the best matching repositories with AI.
  • nomic-ai/gpt4all

    nomic-ai/gpt4all

    77,146GitHubView on GitHub↗

    GPT4All is a cross-platform runtime environment designed to execute large language models directly on local consumer hardware. By leveraging an optimized C++ inference backend, it enables private, offline AI interactions without requiring an internet connection or external cloud services. The project provides a compreh

    C++ai-chatllm-inference
  • PaddlePaddle/PaddleOCR

    PaddlePaddle/PaddleOCR

    70,931GitHubView on GitHub↗

    PaddleOCR is a comprehensive optical character recognition framework designed for detecting and transcribing text from images and documents into structured, machine-readable formats. It provides a modular computer vision pipeline that decouples image preprocessing, text detection, and character recognition into indepen

    Pythonai4sciencechineseocrdocument-parsing
  • vllm-project/vllm

    vllm-project/vllm

    70,745GitHubView on GitHub↗

    vLLM is a high-throughput inference engine designed for the efficient serving and execution of large language models. It functions as a production-ready distributed model server, providing standard API protocols for online serving while also supporting offline batch processing. The system is built to maximize token gen

    Pythonamdblackwellcuda
  • ultralytics/yolov5

    ultralytics/yolov5

    56,830GitHubView on GitHub↗

    YOLOv5 is a comprehensive computer vision framework designed for end-to-end deep learning, specializing in real-time object detection, image classification, and instance segmentation. It provides a unified toolkit that manages the entire lifecycle of a model, from initial dataset configuration and hyperparameter tuning

    Pythoncoremldeep-learningios
  • facebookresearch/segment-anything

    facebookresearch/segment-anything

    53,431GitHubView on GitHub↗

    This project provides a deep learning architecture designed to identify and isolate distinct objects within images by generating precise pixel-level masks. It functions as a browser-based inference engine, enabling the execution of complex machine learning models directly within web environments without requiring serve

    Jupyter Notebook
  • ultralytics/ultralytics

    ultralytics/ultralytics

    53,426GitHubView on GitHub↗

    Ultralytics is a comprehensive computer vision framework designed for training, validating, and deploying deep learning models across a wide range of visual recognition tasks. It provides a unified interface for core operations including object detection, instance segmentation, pose estimation, and image classification

    Pythonclicomputer-visiondeep-learning
  • unslothai/unsloth

    unslothai/unsloth

    52,461GitHubView on GitHub↗

    Unsloth is a high-performance training and inference platform designed to optimize the lifecycle of large language and multimodal models. It provides a comprehensive engine for fine-tuning, executing, and managing models locally, with a focus on reducing memory consumption and increasing compute speed on consumer-grade

    Pythonagentdeepseekdeepseek-r1

Explore sub-tags

  • C++ Inference BackendsHigh-performance tensor computation engines written in C++.
  • Computer Vision InferenceExecution of vision-based models using standard libraries for real-time object detection.
  • Deep Learning Inference EnginesHigh-performance runtimes that execute neural network models across CPUs, GPUs, and specialized accelerators.
Hardware-Agnostic Inference Layers
Abstraction layers that decouple model execution logic from specific hardware backends.
  • Local Inference RuntimesDeployment environments that run quantized models on local hardware with API support.
  • ONNX Runtime InferenceExecuting models using the cross-platform ONNX runtime for consistent performance.
  • Request SchedulersComponents that manage and prioritize incoming inference requests to optimize throughput and latency.
  • Streaming Inference ProcessorsExecution engines designed to process continuous streams of data using memory-efficient generators.