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ornith-1.0-9b
[](https://deep-reinforce.com/ornith.html) # Ornith-1.0-9B-GGUF Aloha! ๐ŸŒบ Today, we are releasing Ornith-1.0, a self-improving family of open-source models for agentic coding. Highlights: - **State-of-the-Art Coding Agents**: Available in 9B-Dense, 31B-Dense, 35B-MoE, and 397B-MoE (post-trained on top of Gemma 4 and Qwen 3.5), achieving state-of-the-art performance among open-source models of comparable size on coding benchmarks such as Terminal-Bench 2.1, SWE-Bench, NL2Repo and OpenClaw. - **Self-Improving Training Framework**: ย Ornith-1.0 employs RL to learn to generate not only solution rollouts, but also the scallfold that drive those rollouts. By jointly optimizing the scaffold and the resulting solution, the model discovers better search trajectories and generates higher-quality solutions. - **Licence**: MIT licensed, globally accessible, and free from regional limitations. ## Ornith 1.0 9B This model card documents **Ornith-1.0-9B**, the most lightweight member of the Ornith family, designed for efficient single-GPU deployment. ### Benchmarks Ornith-1.0-9B Qwen3.5-9B Qwen3.5-35B Gemma4-12B Gemma4-31B Agentic Coding ...

Repository: localaiLicense: mit

ornith-1.0-35b
[](https://deep-reinforce.com/ornith.html) # Ornith-1.0-35B-GGUF Aloha! ๐ŸŒบ Today, we are releasing Ornith-1.0, a self-improving family of open-source models for agentic coding. Highlights: - **State-of-the-Art Coding Agents**: Available in 9B-Dense, 31B-Dense, 35B-MoE, and 397B-MoE (post-trained on top of Gemma 4 and Qwen 3.5), achieving state-of-the-art performance among open-source models of comparable size on coding benchmarks such as Terminal-Bench 2.1, SWE-Bench, NL2Repo and OpenClaw. - **Self-Improving Training Framework**: Ornith-1.0 employs RL to learn to generate not only solution rollouts, but also the scallfold that drive those rollouts. By jointly optimizing the scaffold and the resulting solution, the model discovers better search trajectories and generates higher-quality solutions. - **Licence**: MIT licensed, globally accessible, and free from regional limitations. ## Ornith 1.0 35B This model card documents **Ornith-1.0-35B**, the lightweight member of the Ornith family, designed for efficient single-GPU deployment. ### Benchmarks Ornith-1.0-35B Qwen3.5-35B Qwen3.6-35B Gemma4-31B Qwen3.5-397B Agentic Coding ...

Repository: localaiLicense: mit

lfm2.5-1.2b-instruct
Try LFM โ€ข Docs โ€ข LEAP โ€ข Discord # LFM2.5-1.2B-Instruct LFM2.5 is a new family of hybrid models designed for **on-device deployment**. It builds on the LFM2 architecture with extended pre-training and reinforcement learning. - **Best-in-class performance**: A 1.2B model rivaling much larger models, bringing high-quality AI to your pocket. - **Fast edge inference**: 239 tok/s decode on AMD CPU, 82 tok/s on mobile NPU. Runs under 1GB of memory with day-one support for llama.cpp, MLX, and vLLM. - **Scaled training**: Extended pre-training from 10T to 28T tokens and large-scale multi-stage reinforcement learning. Find more information about LFM2.5 in our blog post. ## ๐Ÿ—’๏ธ Model Details LFM2.5-1.2B-Instruct is a general-purpose text-only model with the following features: ...

Repository: localaiLicense: other

qwopus3.6-27b-coder-compat-mtp
๐Ÿช Qwopus-3.6-27B-Coder Coder SFT Release Agentic Coding & Tool-Use Reasoning Model Fine-Tuned on Qwopus3.6-27B-v2 ๐Ÿงฌ Trace Inversion & Negentropy ๐Ÿง  27B Dense Model โšก Agentic Coding ๐Ÿ› ๏ธ Tool Calling & Agent ๐Ÿ† SWE-bench Verified: 67.0% (off-thinking) ๐Ÿ’ก What is Qwopus-3.6-27B-Coder? ๐Ÿช 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 โ€” which achieved 87.43% MMLU-Pro and 75.25% SWE-bench Verified โ€” 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. ๐Ÿงฉ Agentic Coding Optimized for repository-level coding, debugging, patch generation, and structured multi-step development workflows. ๐Ÿ› ๏ธ 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-v2-mtp-nvfp4
๐Ÿช Qwopus3.6-27B-v2-MTP MTP Release Multi-Token Prediction reasoning model fine-tuned from Qwen3.6-27B ๐Ÿงฌ Trace Inversion & Negentropy ๐Ÿง  27B Parameters โšก Speculative Decoding ๐Ÿ› ๏ธ Coding / DevOps / Math ๐Ÿ’ก What is Qwopus3.6-27B-v2-MTP? ๐Ÿช Qwopus3.6-27B-v2-MTP is a speed-oriented reasoning release built on top of Qwen3.6-27B. It keeps the Qwopus line's focus on reconstructed reasoning traces, coding discipline, DevOps procedures, and mathematical derivations, while adding Multi-Token Prediction for faster generation. The goal is simple: preserve the depth and structure of a 27B reasoning model while making real interactive use noticeably faster. โšก MTP DecodingAuxiliary future-token prediction improves throughput on long reasoning, code, math, and strict-format prompts. ๐Ÿงฉ Structured ReasoningInherits the Qwopus training recipe built around reconstructed step-by-step reasoning trajectories. ๐Ÿงช GB10 TestedValidated on a 30-question local benchmark across Logic, Coding, DevOps, Math, and Edge tasks. ๐Ÿš€ Practical SpeedDesigned for workflows where strong answers matter, but waiting several extra minutes per task does not. ...

Repository: localai

qwopus3.6-27b-coder-mtp-nvfp4
๐Ÿช Qwopus-3.6-27B-Coder Coder SFT Release Agentic Coding & Tool-Use Reasoning Model Fine-Tuned on Qwopus3.6-27B-v2 ๐Ÿงฌ Trace Inversion & Negentropy ๐Ÿง  27B Dense Model โšก Agentic Coding ๐Ÿ› ๏ธ Tool Calling & Agent ๐Ÿ† SWE-bench Verified: 67.0% (off-thinking) ๐Ÿ’ก What is Qwopus-3.6-27B-Coder? ๐Ÿช 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 โ€” which achieved 87.43% MMLU-Pro (300ex) and 75.25% SWE-bench Verified โ€” 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. ๐Ÿงฉ Agentic Coding Optimized for repository-level coding, debugging, patch generation, and structured multi-step development workflows. ๐Ÿ› ๏ธ Tool Calling Learns from real agent trajectories with tool definitions, tool calls, and environment feedback for robust multi-turn execution. ...

Repository: localai

gemma-4-12b-agentic-fable5-composer2.5-v2-3.5x-tau2
Hugging Face | GitHub | Launch Blog | Documentation License: Apache 2.0 | Authors: Google DeepMind > [!Note] > This model card is for the Gemma 4 12B Unified model, which is part of the Gemma 4 family of open models. Built with the same multimodal functionality as Gemma 4 E2B and E4B (text, audio, image, and video inputs), it brings native audio and vision understanding directly to local environments without the need for separate encoders. This unified approach to multimodality makes the model encoder-free, offering a deployment size that is perfect for consumer devices and streamlined local execution. Gemma is a family of open models built by Google DeepMind. Gemma 4 models are multimodal, handling text and image input (with audio supported on E2B, E4B, and 12B) and generating text output. This release includes open-weights models in both pre-trained and instruction-tuned variants. Gemma 4 features a context window of up to 256K tokens and maintains multilingual support in over 140 languages. ...

Repository: localaiLicense: apache-2.0

gemma-4-12b-coder-fable5-composer2.5-v1
Hugging Face | GitHub | Launch Blog | Documentation License: Apache 2.0 | Authors: Google DeepMind > [!Note] > This model card is for the Gemma 4 12B Unified model, which is part of the Gemma 4 family of open models. Built with the same multimodal functionality as Gemma 4 E2B and E4B (text, audio, image, and video inputs), it brings native audio and vision understanding directly to local environments without the need for separate encoders. This unified approach to multimodality makes the model encoder-free, offering a deployment size that is perfect for consumer devices and streamlined local execution. Gemma is a family of open models built by Google DeepMind. Gemma 4 models are multimodal, handling text and image input (with audio supported on E2B, E4B, and 12B) and generating text output. This release includes open-weights models in both pre-trained and instruction-tuned variants. Gemma 4 features a context window of up to 256K tokens and maintains multilingual support in over 140 languages. ...

Repository: localaiLicense: gemma

melody1437-26b-a4b-v2.0
@import url('https://fonts.googleapis.com/css2?family=Poppins:wght@400;600&family=Playfair+Display:ital,wght@0,400;0,700&family=Roboto+Mono:wght@400;500&display=swap'); body { font-family: 'Poppins', sans-serif; background: #1a1a2e; background-image: radial-gradient(circle at 50% 50%, rgba(76, 201, 240, 0.05) 0%, transparent 70%), url('https://www.transparenttextures.com/patterns/cubes.png'); color: #e0e0e0; margin: 0; padding: 20px; line-height: 1.6; } .container { max-width: 900px; margin: 0 auto; background: rgba(26, 32, 44, 0.95); border-radius: 8px; padding: 40px; box-shadow: 0 4px 30px rgba(0, 0, 0, 0.5), 0 0 0 1px #2a3b55; border: 1px solid #2a3b55; position: relative; overflow: hidden; backdrop-filter: blur(5px); } .header { text-align: center; margin-bottom: 30px; position: relative; z-index: 1; border-bottom: 1px solid #2a3b55; padding-bottom: 15px; } ...

Repository: localaiLicense: apache-2.0

dark-scarlett-v0.3-26b-a4b
Hugging Face | GitHub | Launch Blog | Documentation License: Apache 2.0 | Authors: Google DeepMind Gemma is a family of open models built by Google DeepMind. Gemma 4 models are multimodal, handling text and image input (with audio supported on small models) and generating text output. This release includes open-weights models in both pre-trained and instruction-tuned variants. Gemma 4 features a context window of up to 256K tokens and maintains multilingual support in over 140 languages. Featuring both Dense and Mixture-of-Experts (MoE) architectures, Gemma 4 is well-suited for tasks like text generation, coding, and reasoning. The models are available in four distinct sizes: **E2B**, **E4B**, **26B A4B**, and **31B**. Their diverse sizes make them deployable in environments ranging from high-end phones to laptops and servers, democratizing access to state-of-the-art AI. Gemma 4 introduces key **capability and architectural advancements**: * **Reasoning** โ€“ All models in the family are designed as highly capable reasoners, with configurable thinking modes. ...

Repository: localaiLicense: apache-2.0

privacy-filter-multilingual
A multilingual PII token-classification model: a fine-tune of openai/privacy-filter by OpenMed. It labels every token with a BIOES tag over 54 PII categories (217 classes) across 16 languages (ar, bn, de, en, es, fr, hi, it, ja, ko, nl, pt, te, tr, vi, zh), spanning identity, contact, address, financial, vehicle, digital, and crypto entities. In LocalAI this is a PII detector for the NER redactor tier: set known_usecases to [token_classify] (as below), and any model opts into redaction by listing this one under pii.detectors. The detection policy (which categories to mask vs block, and the score threshold) lives on this model's own pii_detection block - see the overrides below. It runs locally with no Python, served by the standalone privacy-filter backend's TokenClassify RPC (constrained BIOES Viterbi decode into UTF-8 byte-offset entity spans). Architecture: gpt-oss-style sparse MoE (8 layers, 128 experts top-4, ~50M active per token), bidirectional banded attention, o200k tokenizer; served via the openai-privacy-filter architecture. F16, ~2.7 GB.

Repository: localaiLicense: apache-2.0

privacy-filter-nemotron
A fine-grained English PII token-classification model: a fine-tune of openai/privacy-filter by OpenMed on NVIDIA's Nemotron-PII dataset. It labels every token with a BIOES tag over 55 PII categories (221 classes), trading the multilingual sibling's language breadth for category depth - identity, contact, address, dates, government IDs, financial, healthcare, enterprise, vehicle and digital entities (including api_key, ipv4/ipv6 and mac_address). For multilingual text prefer privacy-filter-multilingual instead. In LocalAI this is a PII detector for the NER redactor tier: set known_usecases to [token_classify] (as below), and any model opts into redaction by listing this one under pii.detectors. The detection policy (which categories to mask vs block, and the score threshold) lives on this model's own pii_detection block - see the overrides below. It runs locally with no Python, served by the standalone privacy-filter backend's TokenClassify RPC (constrained BIOES Viterbi decode into UTF-8 byte-offset entity spans). Architecture: gpt-oss-style sparse MoE (8 layers, d_model 640, 128 experts top-4, ~1.5B total / ~50M active per token), bidirectional banded attention, o200k tokenizer and a 221-way token-classification head; served via the openai-privacy-filter architecture. F16, ~2.8 GB. (A smaller Q8_0 quant exists on the GGUF repo for RAM-constrained use - validate it on your own data, since for PII a single dropped span is a leak.)

Repository: localaiLicense: apache-2.0

privacy-filter-nemotron-q8
Q8_0 quant of privacy-filter-nemotron (~1.64 GB, vs ~2.8 GB for F16) for RAM-constrained / edge use (e.g. a 4 GB Raspberry Pi 5). The MoE expert weights are stored 8-bit; attention, embeddings and the classifier head stay F16. Same model, policy and runtime as the F16 entry - see privacy-filter-nemotron for the full description. Prefer the F16 entry when you can afford it: it is the reference artifact. On a mixed-PII document the publisher measured q8 matching F16 on 99.93% of token labels with an identical span set at threshold 0.5 - but one token flipped, and for PII a single dropped span is a leak. Treat q8 as a deliberate size/speed tradeoff and validate it on your own data.

Repository: localaiLicense: apache-2.0

lfm2.5-8b-a1b
Try LFM โ€ข Docs โ€ข LEAP โ€ข Discord # LFM2.5-8B-A1B LFM2.5 is a new family of hybrid models designed for on-device deployment. It builds on the LFM2 architecture with extended pre-training and reinforcement learning. - **On-device personal assistant**: Designed to power real-life applications, chaining tool calls, and following complex instructions on all devices. - **Compressed performance**: Competitive with much larger dense and MoE models on instruction following and agentic tasks. - **Unmatched throughput**: Fastest in its size class on both CPU and GPU inference, with day-one support for llama.cpp, MLX, vLLM, and SGLang. Find more information about LFM2.5-8B-A1B in our blog post. **AA-Omniscience Index (higher is better) rewards correct answers and penalizes hallucinations. Scores range from -100 to 100. See more results on Artificial Analysis.* ## ๐Ÿ—’๏ธ Model Details LFM2.5-8B-A1B is a general-purpose text-only model with the following features: ...

Repository: localaiLicense: other

qwopus3.5-9b-coder-mtp
# ๐ŸŒŸ Qwopus3.5-9B-v3.5 ## ๐Ÿ’ก 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: - ๐Ÿงฉ Structured reasoning - ๐Ÿ”ง Tool-augmented workflows - ๐Ÿ” Multi-step agentic tasks - โšก 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 **2ร— more SFT data**. ## ๐ŸŽฏ 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

qwopus3.6-27b-v2-mtp
๐Ÿช Qwopus3.6-27B-v2-MTP MTP Release Multi-Token Prediction reasoning model fine-tuned from Qwen3.6-27B ๐Ÿงฌ Trace Inversion & Negentropy ๐Ÿง  27B Parameters โšก Speculative Decoding ๐Ÿ› ๏ธ Coding / DevOps / Math ๐Ÿ’ก What is Qwopus3.6-27B-v2-MTP? ๐Ÿช Qwopus3.6-27B-v2-MTP is a speed-oriented reasoning release built on top of Qwen3.6-27B. It keeps the Qwopus line's focus on reconstructed reasoning traces, coding discipline, DevOps procedures, and mathematical derivations, while adding Multi-Token Prediction for faster generation. The goal is simple: preserve the depth and structure of a 27B reasoning model while making real interactive use noticeably faster. โšก MTP DecodingAuxiliary future-token prediction improves throughput on long reasoning, code, math, and strict-format prompts. ๐Ÿงฉ Structured ReasoningInherits the Qwopus training recipe built around reconstructed step-by-step reasoning trajectories. ๐Ÿงช GB10 TestedValidated on a 30-question local benchmark across Logic, Coding, DevOps, Math, and Edge tasks. ๐Ÿš€ Practical SpeedDesigned for workflows where strong answers matter, but waiting several extra minutes per task does not. ...

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

qwen3.5-9b-deepseek-v4-flash
# Qwen3.5-9B [](https://chat.qwen.ai) > [!Note] > This repository contains model weights and configuration files for the post-trained model in the Hugging Face Transformers format. > > These artifacts are compatible with Hugging Face Transformers, vLLM, SGLang, KTransformers, etc. Over recent months, we have intensified our focus on developing foundation models that deliver exceptional utility and performance. Qwen3.5 represents a significant leap forward, integrating breakthroughs in multimodal learning, architectural efficiency, reinforcement learning scale, and global accessibility to empower developers and enterprises with unprecedented capability and efficiency. ## Qwen3.5 Highlights Qwen3.5 features the following enhancement: - **Unified Vision-Language Foundation**: Early fusion training on multimodal tokens achieves cross-generational parity with Qwen3 and outperforms Qwen3-VL models across reasoning, coding, agents, and visual understanding benchmarks. - **Efficient Hybrid Architecture**: Gated Delta Networks combined with sparse Mixture-of-Experts deliver high-throughput inference with minimal latency and cost overhead. ...

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

carnice-v2-27b
# Carnice-V2-27B for Hermes Agent Carnice-V2-27B is a full merged BF16 SFT of `Qwen/Qwen3.6-27B` for Hermes-style agent traces. This repository contains the standalone merged model weights, not only a LoRA adapter. ## BF16 Transformers Loading Fix The BF16 safetensors were republished with corrected `Qwen3_5ForConditionalGeneration` tensor prefixes. The original merge artifact accidentally serialized an extra Unsloth wrapper prefix, which caused direct HF Transformers loads to report the real weights as unexpected keys and initialize expected layers randomly. GGUF files were not affected because the GGUF conversion path normalized those prefixes. ## Benchmarks The benchmark artifact bundle is included under `benchmarks/`. It contains the rendered graph, extracted `metrics.json`, benchmark scripts, and raw result files used to make the chart. Scope note: the IFEval run is a short `limit=20` A/B smoke benchmark, not an official full leaderboard score. Held-out loss/perplexity is the exact assistant-only training-format validation metric from the SFT script. The raw BFCL two-case smoke files are included for auditability, but they are too small to use as a model-quality claim. ...

Repository: localaiLicense: apache-2.0

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