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15 Repos

Awesome GitHub RepositoriesModel Serving Endpoints

Infrastructure for exposing AI models via web interfaces or API endpoints.

Distinct from Web Service Deployments: Distinct from general web deployment as it specifically targets the serving of model capabilities.

Explore 15 awesome GitHub repositories matching devops & infrastructure · Model Serving Endpoints. Refine with filters or upvote what's useful.

Awesome Model Serving Endpoints GitHub Repositories

Finde die besten Repos mit KI.Wir suchen mit KI nach den am besten passenden Repositories.
  • thudm/chatglm2-6bAvatar von THUDM

    THUDM/ChatGLM2-6B

    15,565Auf GitHub ansehen↗

    ChatGLM2-6B is an open-weight large language model designed for natural language conversations and text generation in both English and Chinese. It functions as a bilingual chat model capable of processing and maintaining coherence across text sequences up to 32K tokens. The model is optimized for local deployment through precision quantization, which reduces memory requirements to allow execution on consumer-grade hardware. It supports distributing model weights across multiple graphics cards to handle parameters that exceed the memory of a single device. The project covers capabilities for

    Offers options to deploy the model as a web service or API endpoint for remote users.

    Python
    Auf GitHub ansehen↗15,565
  • ludwig-ai/ludwigAvatar von ludwig-ai

    ludwig-ai/ludwig

    11,717Auf GitHub ansehen↗

    Ludwig is a multimodal machine learning platform and low-code framework designed for building, training, and deploying neural networks. It enables the construction of models that process text, images, audio, and tabular data through a unified interface using declarative configuration files rather than custom code. The system features a specialized low-code framework for large language models, supporting supervised fine-tuning, preference alignment, and a constrained decoding tool to force structured data output via logit extraction. It also includes an automated model architecture search to i

    Exposes trained models as high-performance REST API endpoints for real-time inference.

    Pythoncomputer-visiondata-centricdata-science
    Auf GitHub ansehen↗11,717
  • microsoft/promptflowAvatar von microsoft

    microsoft/promptflow

    11,165Auf GitHub ansehen↗

    Promptflow ist ein Entwicklungs-Framework und Orchestrator für den Aufbau von Anwendungen, die auf Large Language Models basieren. Es fungiert als Tool-Suite für das Design, die Orchestrierung und das Deployment von KI-Workflows, indem Prompts, benutzerdefinierter Python-Code und Sprachmodelle zu ausführbaren Sequenzen verknüpft werden. Das Projekt zeichnet sich durch einen visuellen KI-Workflow-Designer aus, der die Erstellung von gerichteten azyklischen Graphen (DAGs) aus Logik-Knoten ermöglicht. Es bietet eine dedizierte Prompt-Engineering-Umgebung für Versionierung und Vergleich von Templates sowie zustandsbehaftetes Execution-Tracing, um Funktionsaufrufe und Variablenwerte für schrittweises Debugging aufzuzeichnen. Die Plattform deckt ein breites Funktionsspektrum ab, einschließlich Retrieval Augmented Generation (RAG) via Vektordatenbank-Lookups und metrikgesteuerte Evaluierungspipelines für Batch-Tests und Qualitätssicherung. Sie deckt den gesamten Lebenszyklus von der Entwicklung bis zur Produktion ab, durch containerisiertes Deployment, Workflow-Endpoint-Serving und sicheres Verbindungsmanagement für API-Anmeldedaten. Ein Command-Line-Interface (CLI) und ein SDK für Workflow-Validierung und Integration in automatisierte CI/CD-Pipelines sind enthalten.

    Hosts AI workflows as active API endpoints to handle real-time inference requests.

    Python
    Auf GitHub ansehen↗11,165
  • aws/amazon-sagemaker-examplesAvatar von aws

    aws/amazon-sagemaker-examples

    10,958Auf GitHub ansehen↗

    This repository is a collection of Jupyter notebooks providing reference implementations and templates for building, training, and deploying machine learning models using Amazon SageMaker. It serves as an example library for implementing model architectures and automating the machine learning lifecycle. The library provides practical patterns for machine learning training, data engineering, and model deployment. It includes implementation guides for MLOps, including workflows for model monitoring, lineage tracking, and hyperparameter tuning. The examples cover a broad range of capabilities i

    Hosts trained models behind persistent endpoints to return low-latency predictions via REST API.

    Jupyter Notebookawsdata-sciencedeep-learning
    Auf GitHub ansehen↗10,958
  • nvidia/cosmosAvatar von NVIDIA

    NVIDIA/cosmos

    10,494Auf GitHub ansehen↗

    Cosmos is an open platform of world models, datasets, and tools for building physical AI systems such as robots and autonomous vehicles. It provides video generation and video understanding models that can generate synthetic videos and world simulations from text, image, video, or action inputs, and analyze videos to produce captions, event timestamps, spatial bounding boxes, and next-action predictions. The platform includes a world simulation generator that produces images, videos, synchronized audio, and action-conditioned rollouts for synthetic data, alongside a visual content analyzer th

    Exposing reasoner and generator models behind a standard chat-completions API endpoint for scalable inference deployment.

    Jupyter Notebook
    Auf GitHub ansehen↗10,494
  • open-mmlab/mmsegmentationAvatar von open-mmlab

    open-mmlab/mmsegmentation

    9,860Auf GitHub ansehen↗

    MMSegmentation is an open-source semantic segmentation toolbox built on PyTorch that provides a modular, configurable framework for building, training, evaluating, and deploying segmentation models. At its core, it offers a config-driven pipeline that assembles training, evaluation, and inference workflows by parsing hierarchical configuration files, with a modular component registry that enables plug-and-play composition of neural network modules, optimizers, datasets, and metrics. The framework supports the full model lifecycle through a unified runner interface that controls training, testi

    Hosts trained segmentation models behind API endpoints for remote inference requests.

    Pythondeeplabv3image-segmentationmedical-image-segmentation
    Auf GitHub ansehen↗9,860
  • priorlabs/tabpfnAvatar von PriorLabs

    PriorLabs/TabPFN

    7,408Auf GitHub ansehen↗

    Deploys models to GPU-accelerated Mosaic AI Model Serving endpoints with Unity Catalog registration.

    Pythondata-sciencefoundation-modelsmachine-learning
    Auf GitHub ansehen↗7,408
  • tensorflow/servingAvatar von tensorflow

    tensorflow/serving

    6,351Auf GitHub ansehen↗

    TensorFlow Serving is a high-performance machine learning inference server designed to deploy TensorFlow models to production environments. It functions as a complete serving system that executes predictions on input data through a graph executor, providing network endpoints that eliminate the need for a separate runtime environment for client applications. The system is distinguished by its model version manager, which organizes and selects specific model versions within a directory hierarchy. It uses a filesystem watcher to detect new model versions and trigger automatic updates without int

    Exposes trained models via gRPC and HTTP endpoints to provide high-performance inference for client applications.

    C++
    Auf GitHub ansehen↗6,351
  • aws/aws-sdk-phpAvatar von aws

    aws/aws-sdk-php

    6,191Auf GitHub ansehen↗

    The AWS SDK for PHP is a software development kit that provides HTTP client classes for every supported Amazon Web Service, enabling PHP applications to send authenticated requests and receive structured, typed response objects. It includes a credential resolution chain that automatically locates credentials from environment variables, instance profiles, or configuration files, and supports promise-based asynchronous execution for running multiple API calls concurrently to improve throughput. The SDK distinguishes itself through a middleware pipeline architecture that allows interception and

    Accepts both IPv4 and IPv6 traffic through a single endpoint for services that support both protocols.

    PHP
    Auf GitHub ansehen↗6,191
  • paddlepaddle/paddlexAvatar von PaddlePaddle

    PaddlePaddle/PaddleX

    6,163Auf GitHub ansehen↗

    PaddleX is a PaddlePaddle-based framework for building, deploying, and fine-tuning AI model pipelines, with pre-built support for computer vision, OCR, document analysis, and time series tasks. It offers a toolkit of ready-to-use pipelines for image classification, object detection, segmentation, and pose estimation, alongside an end-to-end OCR document analysis pipeline that extracts text, tables, formulas, and layout information. The platform also includes a dedicated time series forecasting pipeline for analyzing historical data to detect anomalies, classify patterns, and predict future val

    Packages segmentation models as services, APIs, or edge binaries for production.

    Pythonai-pipelinesclassificationdeployment
    Auf GitHub ansehen↗6,163
  • federatedai/fateAvatar von FederatedAI

    FederatedAI/FATE

    6,048Auf GitHub ansehen↗

    FATE is an open-source federated learning platform that enables multiple organizations to collaboratively train machine learning models without exposing raw data to any party. It provides a complete framework for private data collaboration, allowing participants to jointly compute on sensitive information while maintaining data privacy and security guarantees through secure multi-party computation protocols. The platform distinguishes itself through its comprehensive infrastructure management capabilities, supporting automated deployment of multi-party clusters using Ansible-driven provisioni

    Routes inference requests to the correct party's model endpoint with privacy-preserving transformations.

    Pythonalgorithmfatefederated-learning
    Auf GitHub ansehen↗6,048
  • snailyp/gemini-balanceAvatar von snailyp

    snailyp/gemini-balance

    5,826Auf GitHub ansehen↗

    Accepts requests in both OpenAI and Gemini API formats and routes them to the appropriate backend.

    Pythongeminigemini-apigooglesearch
    Auf GitHub ansehen↗5,826
  • openbmb/toolbenchAvatar von OpenBMB

    OpenBMB/ToolBench

    5,672Auf GitHub ansehen↗

    ToolBench is an open platform for training, serving, and evaluating large language models that retrieve and call real-world APIs to complete user instructions. It provides an API-aware inference engine that selects relevant tools from a large corpus and generates sequences of tool calls to produce final answers, along with a custom API registration system that lets users add their own REST endpoints for the model to discover and invoke. The platform includes a complete instruction-tuning pipeline for training models on curated tool-use data, a multi-tool execution engine that coordinates sequ

    Exposes a fine-tuned model behind a REST endpoint that streams back tool-augmented responses.

    Python
    Auf GitHub ansehen↗5,672
  • kubeflow/kfservingAvatar von kubeflow

    kubeflow/kfserving

    5,576Auf GitHub ansehen↗

    KServe is an open platform for deploying and serving generative and predictive AI models on Kubernetes. It defines inference services as custom resources with declarative YAML specifications, enabling a Kubernetes-native approach to model deployment and lifecycle management. The platform leverages Knative-based serverless scaling for automatic scale-to-zero and revision management, and supports a pluggable serving runtime architecture that maps model formats to containerized execution environments. KServe distinguishes itself through model-aware autoscaling that scales replicas based on token

    Verifies deployed model endpoints respond correctly by sending sample requests to the exposed API.

    Go
    Auf GitHub ansehen↗5,576
  • kubernetes/websiteAvatar von kubernetes

    kubernetes/website

    5,281Auf GitHub ansehen↗

    This project is the official Kubernetes documentation website, serving as a comprehensive technical resource for managing containerized applications. It functions as an open-source technical documentation portal that provides guides, tutorials, and reference materials for distributed systems software. The site is built using a static site generator with a component-based template architecture to maintain consistent design patterns. It features an OpenAPI documentation generator that parses technical specifications to automatically build and update structured API reference pages. To support a

    Provides documentation on configuring endpoints to support both IPv4 and IPv6 traffic.

    HTML
    Auf GitHub ansehen↗5,281
  1. Home
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  3. Model Serving Endpoints

Unter-Tags erkunden

  • Dual-Protocol Endpoints1 Sub-TagEndpoints that accept requests in multiple API formats and route them to the appropriate backend without client-side changes. **Distinct from Model Serving Endpoints:** Distinct from Model Serving Endpoints: focuses on protocol translation at the endpoint, not model loading or inference infrastructure.
  • Endpoint Smoke TestsVerifies deployed model endpoints respond correctly by sending sample requests. **Distinct from Model Serving Endpoints:** Distinct from Model Serving Endpoints: focuses on testing endpoint correctness rather than exposing models via endpoints.
  • Federated Model Serving ProxiesProxies that route inference requests to the correct party's model endpoint while applying privacy-preserving transformations. **Distinct from Model Serving Endpoints:** Distinct from general Model Serving Endpoints: specifically handles multi-party routing and privacy transformations for federated inference.
  • GPU-Accelerated EndpointsRegisters the model to Unity Catalog with a champion alias and deploys it to a GPU-accelerated Mosaic AI Model Serving endpoint. **Distinct from Model Serving Endpoints:** Distinct from Model Serving Endpoints: specifically targets GPU-accelerated endpoints with Unity Catalog integration.
  • Segmentation Model Endpoints1 Sub-TagHosts trained segmentation models behind API endpoints for remote inference requests. **Distinct from Model Serving Endpoints:** Distinct from Model Serving Endpoints: specifically serves segmentation models, not general AI models.
  • Tool-Using Model API ServingsExposing a fine-tuned model behind a REST endpoint that accepts a user query and streams back tool-augmented responses. **Distinct from Model Serving Endpoints:** Distinct from Model Serving Endpoints: specifically serves a tool-using model via REST, not general model inference endpoints.