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173 repositorios

Awesome GitHub RepositoriesLarge Language Models

Resources for working with large language models.

Distinguishing note: No existing candidates; maps to AI.

Explore 173 awesome GitHub repositories matching artificial intelligence & ml · Large Language Models. Refine with filters or upvote what's useful.

Awesome Large Language Models GitHub Repositories

Encuentra los mejores repositorios con IA.Buscaremos los repositorios que mejor coincidan usando IA.
  • awesome-selfhosted/awesome-selfhostedAvatar de awesome-selfhosted

    awesome-selfhosted/awesome-selfhosted

    299,516Ver en GitHub↗

    Este proyecto es un directorio curado por la comunidad de software de código abierto diseñado para su implementación en entornos de servidores privados y laboratorios domésticos. Sirve como un recurso integral para descubrir alternativas independientes y autohospedadas a los servicios en la nube convencionales, permitiendo a los usuarios mantener la propiedad total de los datos y el control sobre su infraestructura digital. El directorio está estructurado a través de una taxonomía jerárquica que organiza una vasta colección de aplicaciones en categorías lógicas, que van desde la gestión de medios y análisis de datos hasta la comunicación privada y herramientas de productividad en equipo. Se distingue por un proceso de revisión por pares colaborativo, donde los miembros de la comunidad validan la calidad y relevancia de cada envío para garantizar que el directorio siga siendo preciso y confiable. El proyecto cubre una amplia superficie de capacidades, incluyendo automatización de infraestructura, implementación de servicios basados en contenedores y gestión de configuración declarativa. Estas herramientas ayudan a los usuarios a mantener entornos de servidor reproducibles y gestionar dependencias de servicios complejas en hardware privado. El directorio se mantiene como un repositorio con control de versiones, asegurando que todas las actualizaciones y cambios impulsados por la comunidad sean rastreados y transparentes.

    Deploys and orchestrates containerized artificial intelligence backends and APIs through a unified command-line interface.

    awesomeawesome-listcloud
    Ver en GitHub↗299,516
  • deepseek-ai/deepseek-r1Avatar de deepseek-ai

    deepseek-ai/DeepSeek-R1

    91,996Ver en GitHub↗

    DeepSeek-R1 is an open-weights large language model focused on advanced reasoning. It uses chain-of-thought processing and internal monologues to solve complex mathematical and logical problems by breaking tasks into sequential, verifiable thought processes. The model is developed using reinforcement learning to optimize reasoning patterns and verify logical steps. It employs a distillation process to transfer these high-performance logic capabilities from a large teacher model into smaller, computationally efficient versions. The training framework incorporates group relative policy optimiz

    Trained via reinforcement learning to optimize reasoning patterns and verify logical steps.

    Ver en GitHub↗91,996
  • pewdiepie-archdaemon/odysseusAvatar de pewdiepie-archdaemon

    pewdiepie-archdaemon/odysseus

    72,184Ver en GitHub↗

    Odysseus is a self-hosted AI workspace and autonomous agent framework designed for deploying and managing large language models. It serves as a centralized platform for orchestrating agentic tasks, utilizing a model context protocol server to connect AI models to external system utilities, browser automation, and local hardware. The system distinguishes itself through a combination of retrieval-augmented generation and a RAG knowledge base, using vector stores and local embeddings to provide persistent semantic memory. It further integrates AI-driven communication management to triage email i

    Connects to Anthropic language models via SDKs to enable their use within the workspace.

    Python
    Ver en GitHub↗72,184
  • labmlai/annotated_deep_learning_paper_implementationsAvatar de labmlai

    labmlai/annotated_deep_learning_paper_implementations

    66,981Ver en GitHub↗

    This project is a collection of deep learning research papers translated into annotated code. It serves as a resource for reproducing academic research, providing implementations of transformers, diffusion models, and reinforcement learning architectures. The library distinguishes itself by using a side-by-side annotation format that combines executable Python code with descriptive markdown notes. This approach provides a structured way to explain the logic of neural network papers alongside their PyTorch-based implementations. The codebase covers several major capability areas, including ge

    Offers utilities for generating text and fine-tuning large models on consumer hardware via 8-bit quantization.

    Pythonattentiondeep-learningdeep-learning-tutorial
    Ver en GitHub↗66,981
  • facebookresearch/llamaAvatar de facebookresearch

    facebookresearch/llama

    59,466Ver en GitHub↗

    Llama is a large language model runtime and inference engine designed to load and execute autoregressive transformer models. It enables the generation of natural language text completions from prompts using pretrained weights. The system features multi-GPU model parallelism, which distributes model weights and workloads across multiple graphics processors to support larger parameter counts. It also incorporates a content safety filter that uses classifiers to intercept and block unsafe inputs or outputs during the inference process. The project covers broad capabilities in distributed model

    Runs pretrained Llama models to generate natural language text completions based on provided prompts.

    Python
    Ver en GitHub↗59,466
  • chinese-poetry/chinese-poetryAvatar de chinese-poetry

    chinese-poetry/chinese-poetry

    51,906Ver en GitHub↗

    This project is a comprehensive dataset and archive of classical Chinese poetry, prose, and Confucian classics. It serves as a digital humanities corpus, providing machine-readable access to hundreds of thousands of poems and detailed poet biographies, specifically spanning the Tang and Song dynasties. The collection is distinguished by its scholarly depth, incorporating textual variation annotations to track disputed characters across different source editions. It also includes tonal pattern mapping to describe the rhythmic and phonetic structures of the verse, alongside a popularity ranking

    Provides structured datasets of ancient Chinese verse for studying linguistic and rhyming patterns.

    JavaScriptchinesechinese-poetryci
    Ver en GitHub↗51,906
  • xai-org/grok-1Avatar de xai-org

    xai-org/grok-1

    51,690Ver en GitHub↗

    Grok-1 is an open-weights large language model implementation featuring a sparse mixture-of-experts architecture. It is designed for high-performance text generation and natural language processing by activating only a subset of specialized expert layers per token. The model utilizes 8-bit weight quantization to reduce memory overhead and accelerate loading. To manage its high parameter count, the implementation supports activation sharding, which distributes the memory load across multiple hardware devices during execution. The project covers large-scale model inference, including text comp

    Implements a high-parameter large language model for natural language processing and text generation.

    Python
    Ver en GitHub↗51,690
  • exacity/deeplearningbook-chineseAvatar de exacity

    exacity/deeplearningbook-chinese

    37,285Ver en GitHub↗

    This project is a comprehensive Chinese translation of a technical deep learning textbook, providing an educational resource on the theory and implementation of neural networks. It functions as a collaborative technical translation project designed to make complex academic AI literature accessible to non-English speakers. The project utilizes a community-driven translation model that integrates external suggestions and pull requests to refine linguistic accuracy and reduce bias. It employs standardized terminology mapping to ensure a uniform vocabulary throughout the translated content. To i

    Provides theory on modeling natural language using token sequences and embeddings.

    TeX
    Ver en GitHub↗37,285
  • ziadoz/awesome-phpAvatar de ziadoz

    ziadoz/awesome-php

    32,573Ver en GitHub↗

    This project is a community-driven directory and knowledge base for the PHP ecosystem. It serves as a comprehensive index of high-quality libraries, frameworks, tools, and educational materials, designed to help developers navigate the landscape and select appropriate solutions for their software projects. The directory distinguishes itself through a hierarchical taxonomy that organizes vast amounts of technical information into a logical, human-readable structure. By relying on distributed contributions from the developer community, it maintains a current and vetted collection of references

    Provides curated resources for large language models.

    awesomeawesome-listsphp
    Ver en GitHub↗32,573
  • meta-llama/llama3Avatar de meta-llama

    meta-llama/llama3

    29,254Ver en GitHub↗

    Llama 3 is a collection of pretrained, autoregressive transformer-based models designed for natural language generation, reasoning, and complex instruction following. It functions as a generative AI framework that provides the infrastructure for managing model weights, executing neural network inference, and handling computational workloads across diverse knowledge domains. The project distinguishes itself through an integrated AI safety toolkit that employs secondary classification filtering to inspect inputs and outputs, ensuring adherence to usage compliance and safety standards. It suppor

    Provides a collection of pretrained transformer-based models designed for autoregressive text generation and complex instruction following.

    Python
    Ver en GitHub↗29,254
  • sgl-project/sglangAvatar de sgl-project

    sgl-project/sglang

    29,079Ver en GitHub↗

    Sglang is a high-performance inference engine and serving system designed for large language and multimodal models. It provides a programmable interface for orchestrating complex generation workflows, enabling developers to coordinate multi-turn dialogues, tool invocations, and reasoning chains through a domain-specific language. The platform is built to support production-scale deployments, offering an OpenAI-compatible API that allows for integration with existing application ecosystems. The system distinguishes itself through a disaggregated architecture that separates compute-intensive pr

    Provides high-performance inference and serving for large language models with support for tensor parallelism.

    Pythonattentionblackwellcuda
    Ver en GitHub↗29,079
  • acheong08/chatgptAvatar de acheong08

    acheong08/ChatGPT

    27,924Ver en GitHub↗

    This project is a command line AI client and API wrapper designed to facilitate interaction with a large language model. It functions as a terminal interface for sending multi-line prompts and receiving generated text, providing a means of conversational AI integration through a programmable interface. The system utilizes a reverse-engineered API interface and HTTP-based request simulation to communicate with the model. It includes an AI plugin manager that allows for the installation and management of external extensions to increase the functional capabilities of the language model. The imp

    Facilitates advanced prompting of large language models to generate specific content for a chat interface.

    Python
    Ver en GitHub↗27,924
  • qwenlm/qwen2.5Avatar de QwenLM

    QwenLM/Qwen2.5

    27,307Ver en GitHub↗

    Qwen2.5 is a suite of large language model foundation models designed for natural language generation, code production, and complex mathematical reasoning. The project encompasses a multilingual language model capable of processing dozens of languages and a specialized code generation model for technical problem solving and debugging. The framework is distinguished by its long context capabilities, enabling the analysis of massive inputs ranging from 256K up to 1 million tokens. It further functions as an agentic framework, utilizing standardized templates and parsers to execute autonomous wo

    Analyzes and understands massive input sequences ranging from 256K up to 1 million tokens in a single pass.

    Python
    Ver en GitHub↗27,307
  • qwenlm/qwen3Avatar de QwenLM

    QwenLM/Qwen3

    27,324Ver en GitHub↗

    Qwen3 is a transformer-based large language model designed as a generative AI foundation for understanding, reasoning, and generating human language. It functions as a comprehensive ecosystem for model training, fine-tuning, and production-ready inference, providing the underlying architecture and weights necessary to build diverse artificial intelligence applications. The project distinguishes itself through extensive support for model quantization and distributed inference, enabling efficient execution across a wide range of hardware from consumer-grade devices to scalable cloud infrastruct

    A sophisticated machine learning model trained on massive datasets to understand, generate, and reason through complex human language tasks.

    Python
    Ver en GitHub↗27,324
  • slundberg/shapAvatar de slundberg

    slundberg/shap

    25,535Ver en GitHub↗

    SHAP is a machine learning explainer that uses a game-theoretic framework to estimate the contribution of each feature to a model prediction. It provides a set of tools for quantifying how individual input features push a specific output away from a baseline value. The project includes specialized explainers for different architectures, including high-speed implementations for decision trees and ensemble models, linearization algorithms for deep learning networks, and covariance integration for linear models. It also features a model-agnostic interpretability tool that uses a kernel method to

    Explains the outputs of large natural language models using coalitional rules to reduce function evaluations.

    Jupyter Notebook
    Ver en GitHub↗25,535
  • microsoft/jarvisAvatar de microsoft

    microsoft/JARVIS

    24,854Ver en GitHub↗

    JARVIS is a system for large language model task orchestration, deployment management, and automation benchmarking. It utilizes a task orchestrator to decompose complex requests into actionable steps and coordinates various expert models to synthesize final responses. The project includes an AI model deployment manager to handle the local deployment of expert models across different hardware scales. It further provides an AI workflow API consisting of web endpoints used to trigger automated task workflows and retrieve results from model selection stages. The framework incorporates an automat

    Evaluates the capability of large language models to automate complex tasks using standardized benchmarking datasets.

    Python
    Ver en GitHub↗24,854
  • zai-org/open-autoglmAvatar de zai-org

    zai-org/Open-AutoGLM

    23,532Ver en GitHub↗

    Open-AutoGLM is an autonomous agent framework designed to perform complex user workflows on mobile devices. By translating natural language instructions into precise sequences of taps, scrolls, and text inputs, the system enables the automation of mobile application interactions and testing. The platform distinguishes itself through a combination of vision-language processing and reinforcement learning. It converts graphical user interfaces into structured data, allowing agents to parse screen elements and map natural language commands to coordinate-based actions. To ensure reliability, the s

    Leverages large language models to enable autonomous navigation and multi-step workflow execution.

    Pythonagentphone-use-agent
    Ver en GitHub↗23,532
  • volcengine/verlAvatar de volcengine

    volcengine/verl

    22,015Ver en GitHub↗

    verl is a distributed training system designed for large language model alignment and reinforcement learning. It provides a framework for executing post-training pipelines, including supervised fine-tuning and reinforcement learning from human feedback, to refine model behavior and agentic capabilities. The system utilizes a hybrid training and inference engine that optimizes memory and communication when switching between model generation and gradient updates. It supports multi-modal reinforcement learning for models processing both image and text data, and implements algorithms such as PPO

    Implements reinforcement learning algorithms like PPO and GRPO to align large language models using reward signals.

    Python
    Ver en GitHub↗22,015
  • verl-project/verlAvatar de verl-project

    verl-project/verl

    22,000Ver en GitHub↗

    This project is a distributed training infrastructure designed for aligning large language models through reinforcement learning. It functions as an end-to-end engine for complex alignment tasks, including proximal policy optimization, direct preference optimization, and iterative self-play. By providing a unified framework for multi-turn interactions and tool-use scenarios, it enables the development of models capable of reasoning and external environment engagement. The framework distinguishes itself through a decoupled architecture that separates model training from sample generation. This

    Trains large language models using reinforcement learning techniques like PPO and GRPO within distributed environments.

    Python
    Ver en GitHub↗22,000
  • hkuds/rag-anythingAvatar de HKUDS

    HKUDS/RAG-Anything

    21,372Ver en GitHub↗

    RAG-Anything is a retrieval-augmented generation framework designed to index diverse document formats and perform semantic search using local machine learning models. It functions as a local multimodal data processor, extracting and organizing information from various file types into a unified knowledge base to facilitate private document analysis. The system distinguishes itself through its high-throughput ingestion engine, which processes large batches of documents into searchable vector embeddings. By executing machine learning models directly on local hardware, the framework ensures that

    Supports local execution of large language models to maintain data privacy.

    Pythonmulti-modal-ragretrieval-augmented-generation
    Ver en GitHub↗21,372
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  1. Home
  2. Artificial Intelligence & ML
  3. Large Language Models

Explorar subetiquetas

  • Chinese Language Model DirectoriesCurated indices of language models optimized for Chinese linguistic and cultural contexts. **Distinct from Large Language Models:** Distinct from Large Language Models: focuses on the directory and categorization aspect rather than the models themselves.
  • Chinese Language Model Repositories6 sub-etiquetasCurated collections of large language models optimized for Chinese language tasks. **Distinct from Large Language Models:** Distinct from Large Language Models: focuses on the repository/collection aspect rather than the models themselves.
  • Code-FocusedLarge language models specifically fine-tuned for code generation, completion, and reasoning across multiple programming languages. **Distinct from Large Language Models:** Distinct from general Large Language Models: focuses on models specialized for code tasks rather than general-purpose text generation.
  • Conversational InterfacesUser interfaces specifically designed for chatting and interacting with language models. **Distinct from Large Language Models:** Focuses on the chat UI and interaction pattern rather than the underlying LLM resource
  • Deployment UtilitiesTools and utilities for deploying and fine-tuning large-scale models on constrained hardware. **Distinct from Large Language Models:** Focuses on the practical deployment and quantization utilities rather than the model architectures themselves
  • Development ToolkitsComprehensive sets of tools for the full lifecycle of large language model creation, from pre-training to optimization. **Distinct from Large Language Models:** Covers the entire development toolkit (training, tuning, deploying) rather than just a general resource or specific fine-tuning task
  • Document Segmenters2 sub-etiquetasTools for splitting large technical documents into semantically coherent chunks for language model processing. **Distinct from Large Language Models:** Distinct from general LLM resources: focuses specifically on the document segmentation pipeline for research-to-code workflows.
  • Dynamic Memory IntegrationIntegration of dynamic external memory states into the inference process to expand LLM knowledge capacity. **Distinct from Large Language Models:** Focuses specifically on the integration of external memory states into inference, not general LLM resources.
  • Educational ImplementationsReference implementations of model architectures designed for pedagogical study. **Distinct from Large Language Models:** Focuses on the act of implementing a model for learning, rather than the general resource of an LLM
  • Inference EnginesSystems dedicated to executing pre-trained large language models for text generation and chat. **Distinct from Large Language Models:** Focuses on the execution (inference) phase and API serving rather than general model resources.
  • Inference Libraries1 sub-etiquetaSoftware libraries that load and execute large language models on hardware for text generation. **Distinct from Large Language Models:** Distinct from Large Language Models: focuses on the runtime library for inference execution, not model architectures or training.
  • Instruction DatabasesRepositories that catalog and archive the internal system-level instructions and behavioral constraints of large language models. **Distinct from Large Language Models:** Distinct from Large Language Models: focuses on the archival of internal model configuration data rather than the models themselves.
  • LLM Benchmarking1 sub-etiquetaThe process of measuring large language model performance using standardized datasets and task configurations. **Distinct from Large Language Models:** Focuses on the evaluation process and metrics rather than the general resources of LLMs.
  • LLM EducationSelf-paced study of LLM architecture, training, and deployment using structured courseware. **Distinct from Large Language Models:** Distinct from Large Language Models: focuses on educational content about LLMs, not on tools or libraries for working with them.
  • Language Model Interpretability2 sub-etiquetasMethods for explaining the outputs of large-scale natural language processing models. **Distinct from Large Language Models:** Focuses on explaining LLM outputs rather than general LLM resources or integration
  • Language Model Pipeline OrchestratorsSpecialized pipelines for retrieval-augmented generation, fine-tuning, and evaluation of language models. **Distinct from Large Language Models:** Distinct from Large Language Models: focuses on the orchestration of LLM-specific workflows rather than the models themselves.
  • Large Context Code Models1 sub-etiquetaModels optimized to process and maintain coherence over exceptionally large blocks of source code. **Distinct from Large Language Models:** Specific to the identity of models with expanded context windows for code, rather than general LLMs.
  • Large Language Model Input GeneratorsResources for generating optimized text digests from Git repositories for automated analysis. **Distinct from Large Language Models:** Distinct from Large Language Models: focuses on input generation rather than model training.
  • Large Language Model Input ToolsResources for preparing and optimizing codebases as input for large language models. **Distinct from Large Language Models:** Distinct from Large Language Models: focuses on input preparation rather than model training.
  • Large Language Model Integration1 sub-etiquetaConnects large language models to internal databases and infrastructure using secure protocols. **Distinct from Large Language Models:** Focuses on secure connectivity and auditing for LLMs, distinct from general LLM resources.
  • Long-Context Models3 sub-etiquetasLanguage models engineered to maintain logical coherence across massive input sequences and extensive codebases. **Distinct from Large Language Models:** Distinct from general LLMs: focuses specifically on models optimized for massive context windows (up to one million tokens).
  • Model AuthoringTools and APIs for defining and customizing neural network architectures. **Distinct from Large Language Models:** Focuses on the creation and definition of model architectures rather than general LLM resources.
  • Model Benchmarks2 sub-etiquetasComparative performance metrics, pricing data, and evaluation tools for generative artificial intelligence providers. **Distinct from Large Language Models:** Distinct from Large Language Models: focuses on the comparative evaluation and benchmarking of providers rather than the models themselves.
  • Model Merging6 sub-etiquetasTechniques for combining multiple pretrained large language models into a single model without additional training. **Distinct from Large Language Models:** Specifically addresses the process of merging model weights, not general LLM resources
  • Quantization TechniquesMethods for reducing the precision of large language model weights to fit on limited hardware. **Distinct from Large Language Models:** Specifically focuses on the quantization process for LLMs, whereas the parent is the general category of Large Language Models.
  • Reasoning EnginesSystems that leverage large language models to perform complex synthesis and strategic reasoning tasks. **Distinct from Advanced Reasoning Models:** Distinct from general LLM resources: focuses on the reasoning and synthesis application layer rather than model access.
  • Reinforcement Learning Alignment3 sub-etiquetasTechniques for training language models using reinforcement learning objectives like PPO and GRPO. **Distinct from Large Language Models:** Distinct from general LLM resources: focuses specifically on the reinforcement learning training methodology.
  • Single-GPU Inference RuntimesRuntimes that run large language models on a single GPU by offloading weights and cache to CPU and disk to fit models larger than available memory. **Distinct from Large Language Models:** Distinct from Large Language Models: focuses on single-GPU execution with memory offloading, not general LLM resources.
  • System Prompt ArchivesCollections of extracted internal instructions and behavioral directives used by large language models for research and analysis. **Distinct from Large Language Models:** Distinct from Large Language Models: focuses specifically on the archival and transparency of internal system-level instructions rather than the models themselves or their application.
  • Theoretical ConceptsTheoretical analysis of model architectures and core mechanics of large language models. **Distinct from Large Language Models:** Focuses on theoretical understanding and interview topics rather than software integration or serving infrastructure.
  • Weight-Only Compression1 sub-etiquetaSpecialized compression focusing exclusively on model weights rather than activations. **Distinct from Large Language Models:** Focuses specifically on weight-only representations for speed, unlike general LLM resources.
  • xLSTM ModelsxLSTM-based language models optimized for execution on edge hardware with GPU acceleration. **Distinct from Large Language Models:** Distinct from Large Language Models: specifically targets xLSTM architecture models rather than general LLMs.