--- license: mit language: - pt - en base_model: - Qwen/Qwen3-4B-Thinking-2507 pipeline_tag: text-generation library_name: transformers --- # Rio 3.0 Open Mini **Rio 3.0 Open Mini** is a frontier-class reasoning model developed by [IplanRIO](https://iplanrio.rio.rj.gov.br/), the municipal IT company of Rio de Janeiro's city government. Built through distillation on top of Qwen3-4B-Thinking-2507 using reasoning traces from our to be announced Rio 3.0 model, Rio 3.0 Open achieves state-of-the-art results across mathematics, STEM, and code benchmarks — surpassing its base model by significant margins and competing with models far larger than itself. Rio 3.0 Open Mini features **SwiReasoning**, a training-free inference framework based on [Shi et al. (2025)](https://arxiv.org/abs/2510.05069) that dynamically switches between explicit chain-of-thought and latent-space reasoning, guided by entropy-based confidence signals. This enables both higher accuracy and dramatically improved token efficiency. This model was explicitly trained to maximize the efficiency gained via latent reasoning. ## Key Features - **4B total parameters** - **262,144 token context window** - **SwiReasoning integration** — dynamic explicit/latent reasoning switching for Pareto-superior accuracy and efficiency - **Distilled from Qwen3-4B-Thinking-2507 with traces from Rio 3.0** - **Multilingual** — strong performance in Portuguese, English, Chinese, and dozens of other languages - **MIT License** — fully open for commercial and research use ## Benchmark Results ### Mathematics & STEM | Model | GPQA Diamond | LiveCodeBench | Composite Math* | AIME 2025 | AIME 2026 I | HMMT 2025 I | HMMT 2025 II | BRUMO 2025 | CMIMC 2025 | SMT 2025 | |:---|:---:|:---:|:---:|:---:|:---:|:---:|:---:|:---:|:---:|:---:| | **Rio 3.0 Open Mini** | **71.90%** | **63.50%** | **78.11%** | **89.17%** | **75.00%** | **73.33%** | **79.17%** | **85.83%** | **66.88%** | **77.36%** | | Rio 3.0 Open Mini (w/o latent) | 70.10% | 62.00% | 75.53% | 85.83% | 75.83% | 66.67% | 74.17% | 84.17% | 63.75% | 78.30% | | Qwen3-4B-2507 (base) | 65.80% | 55.20% | 71.12% | 81.67% | 70.83% | 55.83% | 73.33% | 81.67% | 60.00% | 74.53% | | Qwen3-30B-A3B-2507 | 73.40% | 66.00% | 76.08% | 82.50% | 76.67% | 70.83% | 75.83% | 85.00% | 66.25% | 75.47% | | GPT OSS 20B | 71.50% | 70.26% | 82.34% | 89.17% | 85.00% | 76.67% | 83.33% | 86.67% | 72.50% | 83.02% | *Composite Math is the average across all other mathematics benchmarks in this table. ### Rio Model Family Comparison | Model | GPQA Diamond | LiveCodeBench | Composite Math* | AIME 2025 | |:---|:---:|:---:|:---:|:---:| | **Rio 3.0 Open** | **85.10%** | **76.00%** | **91.78%** | **96.67%** | | Rio 2.5 Open | 77.20% | 69.60% | 87.53% | 93.33% | | Rio 3.0 Open Mini | 71.90% | 63.50% | 78.11% | 89.17% | ### Gains Over Base Model (Qwen3-4B-2507) | Benchmark | Base Model | Rio 3.0 Open Mini | Δ | |:---|:---:|:---:|:---:| | GPQA Diamond | 65.80% | 71.90% | **+6.10%** | | LiveCodeBench | 55.20% | 63.50% | **+8.30%** | | Composite Math | 71.12% | 78.11% | **+6.99%** | | AIME 2025 | 81.67% | 89.17% | **+7.50%** | | AIME 2026 I | 70.83% | 75.00% | **+4.17%** | | HMMT 2025 I | 55.83% | 73.33% | **+17.50%** | | BRUMO 2025 | 81.67% | 85.83% | **+4.16%** | | CMIMC 2025 | 60.00% | 66.88% | **+6.88%** | | SMT 2025 | 74.53% | 77.36% | **+2.83%** | ## SwiReasoning: Latent/Explicit Reasoning Rio 3.0 Open Mini integrates [SwiReasoning](https://arxiv.org/abs/2510.05069) (Shi et al., 2025), a training-free inference framework that dynamically alternates between two reasoning modes: - **Explicit reasoning** — standard chain-of-thought in natural language, where the model commits tokens to a single reasoning path - **Latent reasoning** — continuous reasoning in hidden space, where the model explores multiple implicit paths simultaneously without emitting tokens The switching is governed by **block-wise confidence** estimated from entropy trends in the next-token distribution. When confidence is low (entropy trending upward), the model enters latent mode to explore alternatives. When confidence recovers, it switches back to explicit mode to commit to a solution. This approach achieves a **Pareto-superior** trade-off: higher accuracy at unlimited budgets *and* dramatically better token efficiency under constrained budgets. The benchmark table above includes **(w/o latent)** rows showing performance with standard explicit-only reasoning, demonstrating the consistent gains from SwiReasoning across all benchmarks. ## How to Use ```python from transformers import AutoModelForCausalLM, AutoTokenizer model_name = "prefeitura-rio/Rio-3.0-Open-Mini" tokenizer = AutoTokenizer.from_pretrained(model_name) model = AutoModelForCausalLM.from_pretrained( model_name, torch_dtype="auto", device_map="auto" ) prompt = "Write a poem about Rio de Janeiro." messages = [ {"role": "user", "content": prompt} ] text = tokenizer.apply_chat_template(messages, tokenize=False, add_generation_prompt=True) inputs = tokenizer([text], return_tensors="pt").to(model.device) outputs = model.generate( **inputs, max_new_tokens=81920, temperature=0.6, top_p=0.95, ) response = tokenizer.decode(outputs[0][inputs.input_ids.shape[-1]:], skip_special_tokens=True) print(response) ``` ### Using with vLLM ```bash vllm serve prefeitura-rio/Rio-3.0-Open-Mini \ --tensor-parallel-size 4 \ --max-model-len 262144 \ --trust-remote-code ``` ### Using with SGLang ```bash python -m sglang.launch_server \ --model-path prefeitura-rio/Rio-3.0-Open-Mini \ --tp 4 \ --context-length 262144 \ --trust-remote-code ``` ## Model Details | | | |:---|:---| | **Developer** | IplanRIO — Empresa Municipal de Informática e Planejamento S.A. | | **Base Model** | Qwen3-4B-Thinking-2507 | | **Architecture** | Transformer | | **Total Parameters** | ~4B | | **Context Length** | 262,144 tokens | | **Default Max Output Length** | 81,920 tokens | | **Training Method** | Distillation | | **Inference Enhancement** | SwiReasoning (latent/explicit switching) | | **License** | MIT | | **Languages** | Multilingual (en, pt, zh, ja, ko, fr, de, es, ar, and more) | ## Citation If you use SwiReasoning, please also cite: ```bibtex @misc{shi2025swireasoning, title={SwiReasoning: Switch-Thinking in Latent and Explicit for Pareto-Superior Reasoning LLMs}, author={Dachuan Shi et al.}, year={2025}, eprint={2510.05069}, archivePrefix={arXiv}, primaryClass={cs.CL} } ``` ## Acknowledgments Rio 3.0 Open Mini is built upon the exceptional work of the [Qwen Team](https://github.com/QwenLM) and their Qwen3 model family. We also acknowledge the authors of [SwiReasoning](https://github.com/sdc17/SwiReasoning) for their innovative inference framework. Developed in Rio de Janeiro 🇧🇷 by [IplanRIO](https://iplanrio.rio.rj.gov.br/).