This is a standard quantization of Nanbeige/Nanbeige4.1-3B, made by SimplySara

Model Size_GB BPW PPL_Q Top_P_Match
Nanbeige4.1-3B-BF16.gguf 7.33 16.01 35.5136 100.000%
Nanbeige4.1-3B-MXFP4_MOE.gguf 3.9 8.51 35.7776 94.681%
Nanbeige4.1-3B-i1-MXFP4_MOE.gguf 3.9 8.51 35.7776 94.681%
Nanbeige4.1-3B-Q8_0.gguf 3.9 8.51 35.7776 94.681%
Nanbeige4.1-3B-i1-Q8_0.gguf 3.9 8.51 35.7776 94.681%
Nanbeige4.1-3B-Q6_K.gguf 3.01 6.57 36.4314 90.241%
Nanbeige4.1-3B-i1-Q6_K.gguf 3.01 6.57 35.5096 90.793%
Nanbeige4.1-3B-Q5_1.gguf 2.78 6.07 35.8377 82.867%
Nanbeige4.1-3B-i1-Q5_1.gguf 2.78 6.07 36.5278 87.097%
Nanbeige4.1-3B-Q5_K_M.gguf 2.63 5.75 36.3385 85.444%
Nanbeige4.1-3B-i1-Q5_K_M.gguf 2.63 5.75 36.7817 87.277%
Nanbeige4.1-3B-i1-Q5_0.gguf 2.58 5.64 35.3274 84.947%
Nanbeige4.1-3B-Q5_K_S.gguf 2.58 5.62 36.9553 82.225%
Nanbeige4.1-3B-i1-Q5_K_S.gguf 2.58 5.62 36.0077 86.763%
Nanbeige4.1-3B-Q5_0.gguf 2.58 5.62 34.471 81.485%
Nanbeige4.1-3B-i1-Q4_1.gguf 2.37 5.18 34.9182 80.453%
Nanbeige4.1-3B-Q4_1.gguf 2.37 5.18 36.7138 72.166%
Nanbeige4.1-3B-i1-Q4_K_M.gguf 2.27 4.97 35.1169 80.951%
Nanbeige4.1-3B-Q4_K_M.gguf 2.27 4.97 35.551 76.667%
Nanbeige4.1-3B-IQ4_NL.gguf 2.18 4.77 35.462 75.484%
Nanbeige4.1-3B-Q4_K_S.gguf 2.18 4.76 36.9027 73.805%
Nanbeige4.1-3B-i1-Q4_K_S.gguf 2.18 4.76 35.2205 80.920%
Nanbeige4.1-3B-i1-Q4_0.gguf 2.17 4.75 32.071 75.748%
Nanbeige4.1-3B-i1-IQ4_NL.gguf 2.17 4.74 33.9382 80.165%
Nanbeige4.1-3B-Q4_0.gguf 2.17 4.73 31.1932 72.255%
Nanbeige4.1-3B-IQ4_XS.gguf 2.09 4.56 36.4346 76.044%
Nanbeige4.1-3B-i1-IQ4_XS.gguf 2.07 4.52 34.318 80.400%
Nanbeige4.1-3B-Q3_K_L.gguf 2 4.37 36.5177 70.362%
Nanbeige4.1-3B-i1-Q3_K_L.gguf 2 4.37 36.735 73.594%
Nanbeige4.1-3B-Q3_K_M.gguf 1.88 4.1 33.7037 67.260%
Nanbeige4.1-3B-i1-Q3_K_M.gguf 1.88 4.1 36.8062 72.679%
Nanbeige4.1-3B-i1-IQ3_M.gguf 1.78 3.88 35.4695 68.806%
Nanbeige4.1-3B-IQ3_M.gguf 1.78 3.88 38.1415 60.134%
Nanbeige4.1-3B-IQ3_S.gguf 1.74 3.8 909.214 22.657%
Nanbeige4.1-3B-i1-IQ3_S.gguf 1.74 3.8 35.6732 67.415%
Nanbeige4.1-3B-i1-Q3_K_S.gguf 1.73 3.78 34.9748 66.103%
Nanbeige4.1-3B-Q3_K_S.gguf 1.73 3.78 38.1397 61.667%
Nanbeige4.1-3B-i1-IQ3_XS.gguf 1.67 3.65 35.2176 66.490%
Nanbeige4.1-3B-i1-IQ3_XXS.gguf 1.55 3.38 33.543 61.474%
Nanbeige4.1-3B-i1-Q2_K.gguf 1.51 3.3 38.3969 59.878%
Nanbeige4.1-3B-Q2_K.gguf 1.51 3.3 57.987 47.507%
Nanbeige4.1-3B-i1-Q2_K_S.gguf 1.43 3.13 44.2038 57.847%
Nanbeige4.1-3B-i1-IQ2_M.gguf 1.41 3.08 38.2793 56.770%
Nanbeige4.1-3B-i1-IQ2_S.gguf 1.33 2.9 42.7728 52.282%
Nanbeige4.1-3B-i1-IQ2_XS.gguf 1.25 2.73 48.201 49.136%
Nanbeige4.1-3B-i1-IQ2_XXS.gguf 1.17 2.55 58.2207 44.731%
Nanbeige4.1-3B-i1-IQ1_M.gguf 1.07 2.33 110.923 36.721%
Nanbeige4.1-3B-i1-IQ1_S.gguf 1.01 2.2 234.974 29.321%

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Introduction

Nanbeige4.1-3B is built upon Nanbeige4-3B-Base and represents an enhanced iteration of our previous reasoning model, Nanbeige4-3B-Thinking-2511, achieved through further post-training optimization with supervised fine-tuning (SFT) and reinforcement learning (RL). As a highly competitive open-source model at a small parameter scale, Nanbeige4.1-3B illustrates that compact models can simultaneously achieve robust reasoning, preference alignment, and effective agentic behaviors.

Specifically, Nanbeige4.1-3B exhibits the following key strengths:

  • Strong Reasoning: Nanbeige4.1-3B is capable of solving complex, multi-step problems through sustained and coherent reasoning within a single forward pass, and reliably produces correct final answers on challenging tasks such as LiveCodeBench-Pro, IMO-Answer-Bench, and AIME 2026 I.
  • Robust Preference Alignment: Nanbeige4.1-3B achieves solid alignment performance, outperforming not only same-scale models such as Qwen3-4B-2507 and Nanbeige4-3B-2511, but also substantially larger models including Qwen3-30B-A3B and Qwen3-32B on Arena-Hard-v2 and Multi-Challenge.
  • Agentic Capability: Nanbeige4.1-3B is the first general small model to natively support deep-search tasks and reliably sustain complex problem solving involving more than 500 rounds of tool invocations. It fills a long-standing gap in the small-model ecosystem where models are typically optimized for either general reasoning or agentic scenarios, but rarely excel at both.

Technical Report: Link

Performances

We evaluate Nanbeige4.1-3B across a broad and diverse set of benchmarks covering general reasoning, and deep-search capabilities.

General Reasoning Tasks

On general reasoning tasks including code, math, science, alignment, and tool-use benchmarks, Nanbeige4.1-3B not only significantly outperforms same-scale models such as Qwen3-4B, but also demonstrates overall superior performance compared to larger models including Qwen3-30B-A3B-2507 and Qwen3-32B.

Benchmark Qwen3-4B-2507 Qwen3-8B Qwen3-14B Qwen3-32B Qwen3-30B-A3B-2507 Nanbeige4-3B-2511 Nanbeige4.1-3B
Code
Live-Code-Bench-V6 57.4 49.4 55.9 55.7 66.0 46.0 76.9
Live-Code-Bench-Pro-Easy 40.2 41.2 33.0 42.3 60.8 40.2 81.4
Live-Code-Bench-Pro-Medium 5.3 3.5 1.8 3.5 3.5 5.3 28.1
Math
AIME 2026 I 81.46 70.42 76.46 75.83 87.30 84.1 87.40
HMMT Nov 68.33 48.33 56.67 57.08 71.25 66.67 77.92
IMO-Answer-Bench 48.00 36.56 41.81 43.94 54.34 38.25 53.38
Science
GPQA 65.8 62.0 63.38 68.4 73.4 82.2 83.8
HLE (Text-only) 6.72 5.28 7.00 9.31 11.77 10.98 12.60
Alignment
Arena-Hard-v2 34.9 26.3 36.9 56.0 60.2 60.0 73.2
Multi-Challenge 41.14 36.30 36.97 38.72 49.40 41.20 52.21
Tool Use
BFCL-V4 44.87 42.20 45.14 47.90 48.6 53.8 56.50
Tau2-Bench 45.9 42.06 44.96 45.26 47.70 41.77 48.57

Deep Search Tasks

As a general small model, Nanbeige4.1-3B achieves deep-search performance comparable to specialized agents under 10B parameters. In contrast to existing small general models, which typically exhibit little to no deep-search capability, Nanbeige4.1-3B represents a substantial qualitative improvement over prior small general models.

Deep Search and Agent Benchmarks

Model xBench-DeepSearch-2505 xBench-DeepSearch-2510 Browse-Comp Browse-Comp-ZH GAIA (Text-only) HLE SEAL-0
Search-Specialized Small Agents
MiroThinker-v1.0-8B 61 31.1 40.2 66.4 21.5 40.4
AgentCPM-Explore-4B 70 25.0 29.0 63.9 19.1 40.0
Large Foundation Models (with Tools)
GLM-4.6-357B 70 45.1 49.5 71.9 30.4
Minimax-M2-230B 72 44.0 48.5 75.7 31.8
DeepSeek-V3.2-671B 71 67.6 65.0 63.5 40.8 38.5
Small Foundation Models (with Tools)
Qwen3-4B-2507 34 5 1.57 7.92 28.33 11.13 15.74
Qwen3-8B 31 2 0.79 5.15 19.53 10.24 6.34
Qwen3-14B 34 9 2.36 7.11 30.23 10.17 12.64
Qwen3-32B 39 8 3.15 7.34 30.17 9.26 8.15
Qwen3-30B-A3B-2507 25 10 1.57 4.12 31.63 14.81 9.24
Ours (with Tools)
Nanbeige4-3B-2511 33 11 0.79 3.09 19.42 13.89 12.61
Nanbeige4.1-3B 75 39 19.12 31.83 69.90 22.29 41.44

Quickstart

For inference hyperparameters, we recommend the following settings:

  • Temperature: 0.6
  • Top-p: 0.95
  • Repeat penalty: 1.0
  • Max New Tokens: 131072

For the chat scenario:

from transformers import AutoModelForCausalLM, AutoTokenizer
tokenizer = AutoTokenizer.from_pretrained(
  'Nanbeige/Nanbeige4.1-3B',
  use_fast=False,
  trust_remote_code=True
)
model = AutoModelForCausalLM.from_pretrained(
  'Nanbeige/Nanbeige4.1-3B',
  torch_dtype='auto',
  device_map='auto',
  trust_remote_code=True
)
messages = [
  {'role': 'user', 'content': 'Which number is bigger, 9.11 or 9.8?'}
]
prompt = tokenizer.apply_chat_template(
  messages,
  add_generation_prompt=True,
  tokenize=False
)
input_ids = tokenizer(prompt, add_special_tokens=False, return_tensors='pt').input_ids
output_ids = model.generate(input_ids.to('cuda'), eos_token_id=166101)
resp = tokenizer.decode(output_ids[0][len(input_ids[0]):], skip_special_tokens=True)
print(resp)

For the tool use scenario:

from transformers import AutoModelForCausalLM, AutoTokenizer
tokenizer = AutoTokenizer.from_pretrained(
  'Nanbeige/Nanbeige4.1-3B',
  use_fast=False,
  trust_remote_code=True
)
model = AutoModelForCausalLM.from_pretrained(
  'Nanbeige/Nanbeige4.1-3B',
  torch_dtype='auto',
  device_map='auto',
  trust_remote_code=True
)
messages = [
    {'role': 'user',  'content': 'Help me check the weather in Beijing now'}
]
tools = [{'type': 'function',
  'function': {'name': 'SearchWeather',
   'description': 'Find out the current weather in a place on a certain day.',
   'parameters': {'type': 'dict',
    'properties': {'location': {'type': 'string',
      'description': 'A city in China.'},
    'required': ['location']}}}}]
prompt = tokenizer.apply_chat_template(
  messages,
  tools,
  add_generation_prompt=True,
  tokenize=False
)
input_ids = tokenizer(prompt, add_special_tokens=False, return_tensors='pt').input_ids
output_ids = model.generate(input_ids.to('cuda'), eos_token_id=166101)
resp = tokenizer.decode(output_ids[0][len(input_ids[0]):], skip_special_tokens=True)
print(resp)

For the deep-search scenario:

  • Inference Framework: miroflow-framework!
  • Switch tokenizer configuration to tokenizer_config_search.json
  • Tools Configuration:
Server Description Tools Provided
tool-python Execution environment and file management (E2B sandbox) create_sandbox, run_command, run_python_code, upload_file_from_local_to_sandbox, download_file_from_sandbox_to_local, download_file_from_internet_to_sandbox
search_and_scrape_webpage Google search via Serper API google_search
jina_scrape_llm_summary Web scraping with LLM-based information extraction with Jina scrape_and_extract_info
  • Summary model: Qwen3-14B-thinking
  • Temperature: 1.0
  • Note, access to HuggingFace has been explicitly disabled in these tools.

Limitations

While we place great emphasis on the safety of the model during the training process, striving to ensure that its outputs align with ethical and legal requirements, it may not completely avoid generating unexpected outputs due to the model's size and probabilistic nature. These outputs may include harmful content such as bias or discrimination. Please don't propagate such content. We do not assume any responsibility for the consequences resulting from the dissemination of inappropriate information.

Citation

If you find our model useful or want to use it in your projects, please cite as follows:

@misc{yang2026nanbeige413bsmallgeneralmodel,
      title={Nanbeige4.1-3B: A Small General Model that Reasons, Aligns, and Acts}, 
      author={Chen Yang and Guangyue Peng and Jiaying Zhu and Ran Le and Ruixiang Feng and Tao Zhang and Xiyun Xu and Yang Song and Yiming Jia and Yuntao Wen and Yunzhi Xu and Zekai Wang and Zhenwei An and Zhicong Sun and Zongchao Chen},
      year={2026},
      eprint={2602.13367},
      archivePrefix={arXiv},
      primaryClass={cs.AI},
      url={https://arxiv.org/abs/2602.13367}, 
}

Contact

If you have any questions, please raise an issue or contact us at nanbeige@kanzhun.com.

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