Model Gallery

253 models from 1 repositories

Filter by type:

Filter by tags:

qwopus3.6-27b-coder-compat-mtp
🪐 Qwopus-3.6-27B-Coder Coder SFT Release Agentic Coding & Tool-Use Reasoning Model Fine-Tuned on Qwopus3.6-27B-v2 🧬 Trace Inversion & Negentropy 🧠 27B Dense Model ⚡ Agentic Coding 🛠️ Tool Calling & Agent 🏆 SWE-bench Verified: 67.0% (off-thinking) 💡 What is Qwopus-3.6-27B-Coder? 🪐 Qwopus-3.6-27B-Coder is a reasoning-enhanced agentic coding model built on top of Qwopus3.6-27B-v2. It inherits the powerful reasoning foundation of the v2 base — which achieved 87.43% MMLU-Pro and 75.25% SWE-bench Verified — and further specializes it for agentic code generation, structured tool calling, debugging, and instruction-following in developer workflows. The model is designed to excel at repository-level coding tasks, multi-turn tool orchestration, and complex logical reasoning under realistic agent environments. 🧩 Agentic Coding Optimized for repository-level coding, debugging, patch generation, and structured multi-step development workflows. 🛠️ Tool Calling Learns from real agent trajectories with tool definitions, tool calls, and environment feedback for robust multi-turn execution. ...

Repository: localaiLicense: apache-2.0

qwythos-9b-claude-mythos-5-1m
# Qwythos-9B **Developed by Empero** **Qwythos-9B** is a full-parameter reasoning model built on top of a **deeply uncensored Qwen3.5-9B base** and post-trained on **over 500 million tokens** of high-quality Claude Mythos and Claude Fable traces, with chain-of-thought generated in-house by Empero AI's internal tool **rethink**. The result is a compact, fast, **dramatically more capable** 9B reasoning model. Headline capabilities: ...

Repository: localaiLicense: apache-2.0

qwopus3.6-27b-coder-mtp-nvfp4
🪐 Qwopus-3.6-27B-Coder Coder SFT Release Agentic Coding & Tool-Use Reasoning Model Fine-Tuned on Qwopus3.6-27B-v2 🧬 Trace Inversion & Negentropy 🧠 27B Dense Model ⚡ Agentic Coding 🛠️ Tool Calling & Agent 🏆 SWE-bench Verified: 67.0% (off-thinking) 💡 What is Qwopus-3.6-27B-Coder? 🪐 Qwopus-3.6-27B-Coder is a reasoning-enhanced agentic coding model built on top of Qwopus3.6-27B-v2. It inherits the powerful reasoning foundation of the v2 base — which achieved 87.43% MMLU-Pro (300ex) and 75.25% SWE-bench Verified — and further specializes it for agentic code generation, structured tool calling, debugging, and instruction-following in developer workflows. The model is designed to excel at repository-level coding tasks, multi-turn tool orchestration, and complex logical reasoning under realistic agent environments. 🧩 Agentic Coding Optimized for repository-level coding, debugging, patch generation, and structured multi-step development workflows. 🛠️ Tool Calling Learns from real agent trajectories with tool definitions, tool calls, and environment feedback for robust multi-turn execution. ...

Repository: localai

secret-filter
A pattern-based PII detector for high-entropy, highly-regular secrets — API keys, tokens, and private-key blocks — that the NER tier cannot catch (it has no credential class, so it fragments a key and may leave the secret part exposed). Detection is bounded restricted-regex compiled to RE2 (linear time, no backtracking); it runs entirely in-process with no model download, no backend, and zero VRAM. Install it, then reference it under another model's pii.detectors (or set it as the instance-wide default detector on the Middleware page) to block leaks of known credential formats out of the box. Add your own patterns under pii_detection.patterns in a restricted regex subset (e.g. "tok-\\w{32,}"); each must carry a fixed literal anchor of at least 3 characters, so open- ended shapes like email addresses are rejected and left to the NER tier.

Repository: localaiLicense: apache-2.0

qwopus3.5-9b-coder-mtp
# 🌟 Qwopus3.5-9B-v3.5 ## 💡 Model Overview & v3.5 Design Qwopus3.5-9B-v3.5 is a **data-scaled continuation** of the Qwopus3.5-9B-v3 model. The training data in v3.5 is expanded to cover a broader range of domains, including mathematics, programming, puzzle-solving, multilingual dialogue, instruction-following, multi-turn interactions, and STEM-related tasks. Qwopus3.5-9B-v3.5 is a reasoning-enhanced model based on **Qwen3.5-9B**, designed for: - 🧩 Structured reasoning - 🔧 Tool-augmented workflows - 🔁 Multi-step agentic tasks - ⚡ Token-efficient inference Compared with Qwopus3.5-9B-v3, **3.5 version does not introduce a new architecture, RL stage, or template redesign**. This version is trained with approximately **2× more SFT data**. ## 🎯 Motivation & Generalization Insight The motivation behind v3.5 comes from a simple observation: > This work is motivated by the hypothesis that scaling high-quality SFT data may further enhance the generalization ability of large language models. In earlier Qwopus3.5 experiments, structured reasoning was observed to improve both **accuracy and efficiency**: ...

Repository: localaiLicense: apache-2.0

qwen3.6-40b-claude-4.6-opus-deckard-heretic-uncensored-thinking-neo-code-di-imatrix-max
The Qwen 3.5 version (also 40B) got 181 likes+ This version uses the new Qwen 3.6 27B arch (which exceeds even Qwen's own 398B model). WARNING: This model has character and intelligence. It will take no prisoners. It will give no quarter. Uncensored, Unfiltered and boldly confident. Not even remotely "SFW", if you ask it for NSFW content. And it is wickedly smart too - exceeding the base model in 6 out of 7 benchmarks. Qwen3.6-40B-Claude-4.6-Opus-Deckard-Heretic-Uncensored-Thinking 40 billion parameters (dense, not moe) expanded from 27B Qwen 3.6, then trained on Claude 4.6 Opus High Reasoning dataset via Unsloth on local hardware... but there is much more to the story - in comes DECKARD. 96 layers, 1275 Tensors. (50% more than base model of 27B) Features variable length reasoning ; less complex = shorter, longer for more complex. Model performance has increased dramatically. And it has character too. A lot of character. No censorship, no nanny. (via Heretic) And it is very, very smart. ...

Repository: localaiLicense: apache-2.0

qwen3.6-27b-heretic-uncensored-finetune-neo-code-di-imatrix-max
Qwen3.6-27B-Heretic2-Uncensored-Finetune-Thinking Yes... fully uncensored AND fine tuned lightly. Freedom and brainpower. Trained on different Heretic base, with different KLD/Refusals. Model fine tune was used to finalize and "firm up" Heretic / uncensored changes. The goal here was light, minor fixes rather than full / heavy fine tune. That being said, the tuning still raised critical metrics. This is Version 2, using "trohrbaugh" Heretic, which has a lower refusal rate, and tuning bumped up the metrics a bit more too. This has also positively impacted "NEO-Coder Di-Matrix" (dual imatrix) GGUF quants as well (vs heretic/non heretic too). https://huggingface.co/DavidAU/Qwen3.6-27B-Heretic-Uncensored-FINETUNE-NEO-CODE-Di-IMatrix-MAX-GGUF ``` IN HOUSE BENCHMARKS [by Nightmedia]: arc-c arc/e boolq hswag obkqa piqa wino Qwen3.6-27B-Heretic2-Uncensored-Finetune-Thinking mxfp8 0.673,0.846,0.905... [instruct mode] Qwen3.6-27B-Heretic-Uncensored-Finetune-Thinking mxfp8 0.669,0.835,0.906,... [instruct mode] BASE UNTUNED MODEL: Qwen3.6-27B HERETIC (by llmfan46) [instruct mode] mxfp8 0.644,0.788,0.902,... ...

Repository: localaiLicense: apache-2.0

chroma1-hd
Chroma1-HD is an 8.9B-parameter text-to-image foundation model derived from FLUX.1-schnell with reduced parameter count via architectural optimizations. Designed as a base for creators, researchers, and downstream fine-tuning. Recommended inference: 40 steps, CFG 3.0, bfloat16.

Repository: localaiLicense: apache-2.0

kimi-k2.6
🤗  huggingchat  |  📰  Tech Blog ## 1. Model Introduction Kimi K2.6 is an open-source, native multimodal agentic model that advances practical capabilities in long-horizon coding, coding-driven design, proactive autonomous execution, and swarm-based task orchestration. ### Key Features - **Long-Horizon Coding**: K2.6 achieves significant improvements on complex, end-to-end coding tasks, generalizing robustly across programming languages (Rust, Go, Python) and domains spanning front-end, DevOps, and performance optimization. - **Coding-Driven Design**: K2.6 is capable of transforming simple prompts and visual inputs into production-ready interfaces and lightweight full-stack workflows, generating structured layouts, interactive elements, and rich animations with deliberate aesthetic precision. - **Elevated Agent Swarm**: Scaling horizontally to 300 sub-agents executing 4,000 coordinated steps, K2.6 can dynamically decompose tasks into parallel, domain-specialized subtasks, delivering end-to-end outputs from documents to websites to spreadsheets in a single autonomous run. - **Proactive & Open Orchestration**: For autonomous tasks, K2.6 demonstra ...

Repository: localaiLicense: modified-mit

qwen3.6-35b-a3b-claude-4.6-opus-reasoning-distilled
# 🔥 Qwen3.6-35B-A3B-Claude-4.6-Opus-Reasoning-Distilled A reasoning SFT fine-tune of `Qwen/Qwen3.6-35B-A3B` on chain-of-thought (CoT) distillation mostly sourced from Claude Opus 4.6. The goal is to preserve Qwen3.6's strong agentic coding and reasoning base while nudging the model toward structured Claude Opus-style reasoning traces and more stable long-form problem solving. The training path is text-only. The Qwen3.6 base architecture includes a vision encoder, but this fine-tuning run did not train on image or video examples. - **Developed by:** @hesamation - **Base model:** `Qwen/Qwen3.6-35B-A3B` - **License:** apache-2.0 This fine-tuning run is inspired by Jackrong/Qwen3.5-27B-Claude-4.6-Opus-Reasoning-Distilled, including the notebook/training workflow style and Claude Opus reasoning-distillation direction. [](https://x.com/Hesamation) [](https://discord.gg/vtJykN3t) ## Benchmark Results The MMLU-Pro pass used 70 total questions per model: `--limit 5` across 14 MMLU-Pro subjects. Treat this as a smoke/comparative check, not a release-quality full benchmark. ...

Repository: localaiLicense: apache-2.0

ced-base-f16
CED (Consistent Ensemble Distillation, Xiaomi) is a sound-event classifier that tags everyday sounds (baby cry, footsteps, glass breaking, alarms, dog bark, ...) into the 527-class AudioSet ontology. This is the f16 GGUF for the ced backend (a standalone C++/ggml port). Recommended default: fastest on CPU and near-lossless. Use POST /v1/audio/classification, or the realtime websocket API for live recognition.

Repository: localaiLicense: apache-2.0

ced-base-q8
CED (Consistent Ensemble Distillation, Xiaomi) sound-event classifier over the 527-class AudioSet ontology (baby cry, footsteps, glass breaking, alarms, dog bark, ...). This is the q8_0 GGUF for the ced backend: smallest footprint (~88 MB, ~6.5x less memory than the PyTorch reference) and near-lossless (identical top-5 tags). Use POST /v1/audio/classification, or the realtime websocket API for live recognition.

Repository: localaiLicense: apache-2.0

qwen3-tts-cpp-0.6b-base-q4
Qwen3-TTS 0.6B Base (C++ / GGML, qwentts.cpp), Q4_K_M (~0.6 GB talker). Streaming + voice cloning, 24kHz mono, 11 languages.

Repository: localaiLicense: mit

qwen3-tts-cpp-1.7b-base
Qwen3-TTS 1.7B Base (C++ / GGML, qwentts.cpp), Q8_0 (~2.0 GB talker). Higher-quality streaming + voice cloning, 24kHz mono, 11 languages.

Repository: localaiLicense: mit

qwen3-tts-cpp-1.7b-base-q4
Qwen3-TTS 1.7B Base (C++ / GGML, qwentts.cpp), Q4_K_M (~1.2 GB talker). Streaming + voice cloning, 24kHz mono, 11 languages.

Repository: localaiLicense: mit

qwen3-coder-next-mxfp4_moe
The model is a quantized version of **Qwen/Qwen3-Coder-Next** (base model) using the **MXFP4** quantization scheme. It is optimized for efficiency while retaining performance, suitable for deployment in applications requiring lightweight inference. The quantized version is tailored for specific tasks, with parameters like temperature=1.0 and top_p=0.95 recommended for generation.

Repository: localai

deepseek-ai.deepseek-v3.2
This is a quantized version of the DeepSeek-V3.2 model by deepseek-ai, optimized for efficient deployment. It is designed for text generation tasks and supports the pipeline tag `text-generation`. The model is based on the original DeepSeek-V3.2 architecture and is available for use in various applications. For more details, refer to the [official repository](https://github.com/DevQuasar/deepseek-ai.DeepSeek-V3.2-GGUF).

Repository: localai

glm-4.7-flash-derestricted
This model is a quantized version of the original GLM-4.7-Flash-Derestricted model, derived from the base model `koute/GLM-4.7-Flash-Derestricted`. It is designed for restricted use, featuring tags like "derestricted," "uncensored," and "unlimited." The quantized versions (e.g., Q2_K, Q4_K_S, Q6_K) offer varying trade-offs between accuracy and efficiency, with the Q4_K_S and Q6_K variants being recommended for balanced performance. The model is optimized for fast inference and supports multiple quantization schemes, though some advanced quantization options (like IQ4_XS) are not available. It is intended for use in environments with specific constraints or restrictions.

Repository: localaiLicense: mit

fish-speech-s2-pro
Fish Speech S2-Pro is a high-quality text-to-speech model supporting voice cloning via reference audio. Uses a two-stage pipeline: text to semantic tokens (LLaMA-based) then semantic to audio (DAC decoder).

Repository: localaiLicense: fish-audio-research-license

qwen3-vl-reranker-8b
**Model Name:** Qwen3-VL-Reranker-8B **Base Model:** Qwen/Qwen3-VL-Reranker-8B **Description:** A high-performance multimodal reranking model for state-of-the-art cross-modal search. It supports 30+ languages and handles text, images, screenshots, videos, and mixed modalities. With 8B parameters and a 32K context length, it refines retrieval results by combining embedding vectors with precise relevance scores. Optimized for efficiency, it supports quantized versions (e.g., Q8_0, Q4_K_M) and is ideal for applications requiring accurate multimodal content matching. **Key Features:** - **Multimodal**: Text, images, videos, and mixed content. - **Language Support**: 30+ languages. - **Quantization**: Available in Q8_0 (best quality), Q4_K_M (fast, recommended), and lower-precision options. - **Performance**: Outperforms base models in retrieval tasks (e.g., JinaVDR, ViDoRe v3). - **Use Case**: Enhances search pipelines by refining embeddings with precise relevance scores. **Downloads:** - [GGUF Files](https://huggingface.co/mradermacher/Qwen3-VL-Reranker-8B-GGUF) (e.g., `Qwen3-VL-Reranker-8B.Q8_0.gguf`). **Usage:** - Requires `transformers`, `qwen-vl-utils`, and `torch`. - Example: `from scripts.qwen3_vl_reranker import Qwen3VLReranker; model = Qwen3VLReranker(...)` **Citation:** @article{qwen3vlembedding, ...} This description emphasizes its capabilities, efficiency, and versatility for multimodal search tasks.

Repository: localaiLicense: apache-2.0

qwen3-vl-reranker-2b-i1
**Model Name:** Qwen3-VL-Reranker-2B-i1 **Base Model:** Qwen/Qwen3-VL-Reranker-2B **Description:** A high-performance multimodal reranking model for state-of-the-art cross-modal search. It supports 30+ languages and handles text, images, screenshots, videos, and mixed modalities. With 8B parameters and a 32K context length, it refines retrieval results by combining embedding vectors with precise relevance scores. Optimized for efficiency, it supports quantized versions (e.g., Q8_0, Q4_K_M) and is ideal for applications requiring accurate multimodal content matching. **Key Features:** - **Multimodal**: Text, images, videos, and mixed content. - **Language Support**: 30+ languages. - **Quantization**: Available in Q8_0 (best quality), Q4_K_M (fast, recommended), and lower-precision options. - **Performance**: Outperforms base models in retrieval tasks (e.g., JinaVDR, ViDoRe v3). - **Use Case**: Enhances search pipelines by refining embeddings with precise relevance scores. **Downloads:** - [GGUF Files](https://huggingface.co/mradermacher/Qwen3-VL-Reranker-2B-i1-GGUF) (e.g., `Qwen3-VL-Reranker-2B.i1-Q4_K_M.gguf`). **Usage:** - Requires `transformers`, `qwen-vl-utils`, and `torch`. - Example: `from scripts.qwen3_vl_reranker import Qwen3VLReranker; model = Qwen3VLReranker(...)` **Citation:** @article{qwen3vlembedding, ...} This description emphasizes its capabilities, efficiency, and versatility for multimodal search tasks.

Repository: localaiLicense: apache-2.0

Page 1