For an open source model for local deployment, the strongest matches are deepseek-ai/deepseek-v3 (DeepSeek-V3 is a pre-trained large language model with downloadable), huggingface/pytorch-pretrained-bert (This repository provides pre-trained transformer model weights, a model) and cadene/pretrained-models.pytorch (This repository offers a collection of pretrained CNN weights). dmlc/gluon-cv and openai/whisper round out the shortlist. Each is ranked by relevance to your query, popularity and recent activity.
We curate open-source GitHub repositories matching “open source ai models”. Results are ranked by relevance to your query — pick filters below to narrow, or refine with AI.
DeepSeek-V3 is a large language model that provides comprehensive resources for model utilization, including technical specifications, pre-trained weights, and evaluation benchmarks. The project details the core transformer architecture, including parameter counts and multi-token prediction modules, while supporting native 8-bit floating-point quantization. The repository offers extensive support for local and distributed inference through integration with multiple frameworks and engines. It includes documentation for deploying the model across various hardware configurations, such as GPUs an
DeepSeek-V3 is a pre-trained large language model with downloadable weights and transformer architecture, fitting the need for an open-source model you can use and fine-tune, though it focuses on text and isn't a multi-domain hub.
This project is a PyTorch transformer model library and pre-trained model framework. It serves as a deep learning model hub and multimodal inference engine, providing a centralized system for loading, executing, and fine-tuning state-of-the-art model checkpoints. The library focuses on multimodal machine learning, enabling predictions across text, vision, and audio data. It provides specialized capabilities for model framework interoperability, allowing the conversion of weights and definitions between different deep learning libraries. The platform covers the full model lifecycle, including
This repository provides pre-trained transformer model weights, a model hub, and fine-tuning support for PyTorch, directly matching your need for downloadable open-source AI models across diverse domains.
This project is a pretrained model library for PyTorch, providing a collection of convolutional neural network architectures and weights. It serves as a computer vision model zoo for image classification and feature extraction, offering a framework for transfer learning where pretrained networks are adapted for custom image recognition tasks. The library focuses on transforming images into high-level numerical representations and calculating class probability scores. It includes utilities for downloading and initializing standard architectures such as ResNet, Inception, and Xception. Capabil
This repository offers a collection of pretrained CNN weights for PyTorch, focused on image classification and feature extraction — it fits the pre‑trained model category but is limited to computer vision and CNNs, missing the transformer‑based models and multi‑domain coverage you asked for.
Gluon-CV is an MXNet computer vision library that provides a comprehensive collection of pre-implemented vision architectures and training pipelines. It serves as a deep learning research toolkit and a model zoo containing state-of-the-art pre-trained weights for image and video analysis. The project includes a specialized human pose estimation library and a model compression toolkit. These tools allow for the pruning and quantization of deep learning models to increase inference speed and facilitate deployment on constrained edge hardware. The library covers a broad range of vision capabili
Gluon-CV offers a library of pre-trained computer vision models along with training pipelines, but it is limited to the MXNet framework and covers only vision tasks, not the broad range of domains and frameworks you are looking for.
This project is a speech recognition and translation engine that utilizes a sequence-to-sequence transformer architecture to convert audio into text. It is built upon a weakly supervised learning framework, which leverages large-scale, unlabelled audio-transcript data to create generalized speech representations capable of performing simultaneous transcription, language identification, and translation. The system distinguishes itself through a unified multi-task modeling approach that shares token sequences across different objectives, allowing it to handle diverse languages and vocabularies
Whisper is a pre-trained speech recognition and translation model with downloadable weights and a transformer architecture under a permissive license, fitting the audio domain but not offering a hub with diverse text and image models.
This project is a collection of deep learning tools for image classification and audio tagging, providing a repository of pre-trained model weights and architectures. It serves as a Keras model zoo that enables the immediate use of established neural networks for inference and transfer learning. The library includes a music tagging framework that classifies audio recordings using convolutional recurrent neural networks and mel-spectrograms. For visual data, it provides implementations of architectures such as ResNet, VGG, and Xception, alongside a repository of weights trained on large datase
fchollet/deep-learning-models is a Keras model zoo offering downloadable weights and architectures for image classification and audio tagging, which fits the “pre-trained AI model” category — but it is narrower than what you are after, since it only supports TensorFlow/Keras and convolutional networks, missing the transformers, PyTorch, and text-domain models you likely need.
Transformers is a comprehensive library for machine learning that provides a unified interface for training, fine-tuning, and deploying transformer-based models. It supports a wide range of tasks, including text classification, language modeling, question answering, and sequence-to-sequence translation, while offering specialized architectures for both text and vision processing. The framework includes tools for managing the entire model lifecycle, from data preprocessing and tokenization to distributed training and inference. The library features extensive support for model optimization and
Hugging Face Transformers is the flagship library for accessing and using thousands of pre-trained transformer models across text, image, and audio domains, with direct model download via the Hub, support for PyTorch/TensorFlow, and an Apache-2.0 license — exactly what this search is after.
ModelScope is a comprehensive machine learning platform that functions as a model hub, training framework, inference engine, and cloud development environment. It provides a centralized repository for discovering, downloading, and managing pre-trained models and datasets across multiple modalities, including natural language, vision, and speech. The platform features a unified interface for multimodal model inference and a standardized framework for fine-tuning and evaluating large-scale models. It supports distributed training to scale workloads across multiple processors and provides contai
ModelScope is a comprehensive model hub that provides downloadable pre-trained models across text, vision, and speech domains, along with built-in support for fine-tuning and inference, covering the key capabilities you seek.
Detectron2 is a PyTorch computer vision framework and visual recognition platform designed for training and deploying models for object detection, image segmentation, and visual recognition. It provides a research-oriented environment for training complex vision models with multi-GPU acceleration. The project includes a specialized object detection library for identifying and locating multiple objects via bounding boxes, as well as an image segmentation toolkit for creating pixel-level masks through instance, semantic, and panoptic segmentation. Additionally, it features a human pose estimati
Detectron2 is a PyTorch framework offering pre-trained weights for object detection, segmentation, and pose estimation that you can download and fine-tune, but it is limited to computer vision and does not cover text/audio or transformer architectures.
This project is a comprehensive library of state-of-the-art neural network architectures designed for image classification and feature extraction. It provides a complete deep learning training framework that supports distributed execution, allowing users to build, train, and fine-tune vision models using optimized schedulers and pre-configured training recipes. The library distinguishes itself through a modular backbone architecture that treats neural networks as decoupled feature extractors, enabling the retrieval of multi-scale outputs for downstream tasks like object detection and segmenta
This repository provides a large collection of state-of-the-art pretrained vision models with downloadable weights for PyTorch, making it a strong fit for image-related machine learning tasks, though it does not cover text or audio domains as the broader search might intend.
MMPose is a PyTorch-based pose estimation toolbox and deep learning training pipeline designed for detecting 2D and 3D keypoints on humans, animals, and faces. It serves as a computer vision model zoo and a framework for both 2D pose estimation and 3D pose lifting. The project is distinguished by its modular architecture and extensibility, employing a registry-based system and hierarchical configurations to allow for custom algorithm integration and model pipeline customization. It supports diverse estimation paradigms, including top-down, bottom-up, and two-stage pose lifting workflows. The
MMPose is a PyTorch-based model zoo and training pipeline for pose estimation that offers downloadable pre-trained weights, but its exclusive focus on human/animal/face keypoint detection means it covers only a narrow slice of the diverse vision, text, and audio tasks you are looking for.
LLaVA is a multimodal large language model architecture designed to process and interpret both image and text inputs to generate natural language responses. It functions as a research-oriented platform for visual instruction tuning, providing a framework to align language models with human intent through training on diverse datasets of paired images and text queries. The system distinguishes itself through a specialized vision-language training pipeline that connects visual data to language models using projection layers and instruction-based fine-tuning. It supports distributed inference by
LLaVA provides downloadable pretrained weights for multimodal vision-language tasks using transformer architecture and PyTorch, making it a solid fit for this search, though its domain focus is narrower than the requested breadth of text, image, and audio.
ChatGLM-6B is an open-source bilingual large language model designed for natural dialogue and text generation in both English and Chinese. It is structured as a dialogue model capable of tasks such as role-playing and information extraction. The project provides implementations for quantized language models, using low-precision weights to reduce GPU memory requirements for local inference. It also supports parameter-efficient fine-tuning, allowing model behavior to be optimized for specific tasks without requiring full retraining. The model includes capabilities for local execution on GPUs a
ChatGLM-6B is a pre-trained bilingual large language model you can download, fine-tune, and run locally, directly matching the search for open‑source AI models, though it is limited to text (no image or audio) and its license may not be as permissive as Apache/MIT.
CLIP is a neural network architecture designed to map visual and textual data into a shared latent vector space. By utilizing transformer-based feature extraction and multi-modal tokenization, the system aligns images and natural language strings, enabling cross-modal similarity analysis and semantic classification. The project functions as a zero-shot classification engine, identifying image content by calculating the cosine similarity between visual features and arbitrary text labels without requiring task-specific retraining. Beyond inference, it serves as a research toolkit for evaluating
CLIP is a pre-trained open-source model with downloadable weights that can be used and fine-tuned for zero-shot vision-language tasks, fitting the intent directly, though it is a single-domain model rather than a diverse hub.
OLMo is a family of open-source language models from AI2 with downloadable pretrained weights and training code, directly matching the request for pre-trained models you can download and fine-tune, though it focuses on text rather than multiple domains.
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
Qwen3 is a pre-trained transformer-based language model you can download, fine-tune, and run locally or in the cloud — exactly the kind of open-source AI weights this search asks for, though it focuses on text rather than spanning images or audio.
YuE: Open Full-song Music Generation Foundation Model, something similar to Suno.ai but open
YuE is an open-source pre-trained AI model for music generation that you can download and fine-tune, though it focuses solely on audio and lacks the diverse domain coverage and model hub features this search targets.
This repository is for EleutherAI's project Pythia which combines interpretability analysis and scaling laws to understand how knowledge develops and evolves during training in autoregressive transformers. For detailed info on the models, their training, and their properties, please see our…
Pythia provides a suite of pre-trained autoregressive transformer language models with downloadable weights, fitting your request for open-source models, though it focuses only on text and is oriented toward interpretability research.
ChatYuan: Large Language Model for Dialogue in Chinese and English
ChatYuan is a pre-trained large language model for dialogue in Chinese and English, so it fits your request for a downloadable, open-source AI model for fine-tuning, though its scope is text-only rather than covering diverse domains like image or audio.
This project is a transformer-based language model and natural language processing toolkit designed to generate deep contextual representations of text. By utilizing a transformer-based encoder architecture, the system processes input sequences through stacked self-attention layers to capture the semantic meaning of tokens based on their surrounding sentence structure. The model distinguishes itself through bidirectional contextual processing, which analyzes text in both directions simultaneously, and masked language modeling, which trains the system by predicting hidden tokens within a seque
BERT is a classic pre-trained transformer model for NLP that provides downloadable weights and supports fine-tuning on a wide range of language tasks, fitting your search well even though it focuses on text rather than covering image or audio domains.
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
This repo provides the LLaMA family of pretrained autoregressive transformer models along with an inference engine, so it directly matches the search for downloadable pre-trained AI models, but it is limited to text tasks and uses a non-permissive license, falling short of the full diversity and licensing openness requested.
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
DeepSeek-R1 is an open-weights large language model you can download and fine-tune for text reasoning, fitting the pre-trained model category, but it lacks explicit support for image/audio domains and confirmed framework or license details from the given evidence.
Stable Diffusion is a generative machine learning pipeline that synthesizes high-resolution visual content by performing iterative denoising within a compressed latent space. By mapping natural language embeddings into pixel outputs through conditioned probabilistic processes, the framework enables the generation of images from text prompts and the transformation of existing visual inputs based on semantic instructions. The architecture utilizes a modular execution environment that decouples model loading, scheduler logic, and inference components to support diverse hardware configurations. I
Stable Diffusion is a pre-trained open-source text-to-image model with downloadable weights and PyTorch support, fitting your intent for freely usable AI models, though it specializes in image generation rather than covering text or audio domains and uses a custom permissive license rather than Apache/MIT.
Qwen is a comprehensive framework for large language model development, serving, and deployment. It provides a complete ecosystem for transformer-based sequence modeling, offering base models alongside specialized tools for instruction-tuned alignment, fine-tuning, and long-context inference. The project is designed to support both research and production environments, enabling users to train, optimize, and host generative models locally or across distributed hardware. The framework distinguishes itself through its focus on high-performance serving and extensibility. It features a high-perfor
Qwen provides pre-trained large language models with downloadable weights, fine-tuning tools, and transformer architecture, fitting the search for usable AI models, though it focuses solely on text rather than image or audio domains.
A 13B large language model developed by Baichuan Intelligent Technology
Baichuan-13B is a pre-trained 13B-parameter large language model you can download and fine-tune, fitting the search for downloadable open-source models, though it focuses only on text rather than covering multiple domains like image or audio.
Open Model Zoo is a curated collection of pre-trained and optimized deep learning models designed for high-performance inference using OpenVINO. It serves as a model repository and deployment framework that streamlines the integration of neural networks into production environments. The project utilizes a centralized manifest and a versioned registry to automate the downloading and organization of model weights and metadata. It includes tools for benchmarking inference performance and validating model accuracy by comparing outputs against ground-truth tensors to quantify precision loss. The
Open Model Zoo provides a collection of pre-trained deep learning models optimized for OpenVINO, available in multiple frameworks and covering various domains, giving you downloadable model weights and a model hub—though fine-tuning may be less straightforward compared to native models.
YOLOv7 is a PyTorch vision library and real-time inference engine designed for object detection, human pose estimation, and instance segmentation. It provides a framework for detecting and locating multiple objects within images or video streams using neural networks. The system includes tools for custom model training and fine-tuning, allowing pre-trained weights to be adapted to specialized datasets via transfer learning. It also supports model weight export and format conversion to facilitate deployment on production servers and embedded edge devices.
YOLOv7 provides downloadable pre-trained weights for real-time object detection, pose estimation, and instance segmentation, making it a usable pre-trained model library, but its scope is limited to computer vision (no text or audio) and it lacks a permissive license and transformer architecture.
This project provides a Chinese large language model based on the LLaMA architecture. It is an instruction-tuned model optimized for natural language processing and multi-turn conversations in Chinese. The system includes a framework for parameter-efficient fine-tuning using low-rank adaptation and quantization to reduce memory requirements. It also implements retrieval augmented generation for local document question answering and supports long-context processing for sequences up to 64K tokens. The project covers a broad set of capabilities including supervised instruction tuning, reinforce
This is a pre-trained Chinese LLaMA-Alpaca language model with fine-tuning tools, downloadable and designed for NLP tasks, fitting the search but limited to text and Chinese domain, not a model hub.
| Repository | Stars | Language | License | Last push |
|---|---|---|---|---|
| deepseek-ai/deepseek-v3 | 103.8K | Python | MIT | |
| huggingface/pytorch-pretrained-bert | 161.7K | Python | Apache-2.0 | |
| cadene/pretrained-models.pytorch | 9.1K | Python | BSD-3-Clause | |
| dmlc/gluon-cv | 5.9K | Python | Apache-2.0 | |
| openai/whisper | 102.8K | Python | MIT | |
| fchollet/deep-learning-models | 7.3K | Python | MIT | |
| huggingface/transformers | 161.6K | Python | Apache-2.0 | |
| modelscope/modelscope | 8.7K | Python | apache-2.0 | |
| facebookresearch/detectron2 | 34.5K | Python | Apache-2.0 | |
| huggingface/pytorch-image-models | 36.9K | Python | Apache-2.0 |