Qwen3-Next-80B-A3B-Thinking-AWQ-4bit

Method

vllm-project/llm-compressor and nvidia/Llama-Nemotron-Post-Training-Dataset were used to quantize the original model. For further quantization arguments and configurations information, please visit config.json and recipe.yaml.

Inference

Please build vllm from source:

VLLM_USE_PRECOMPILED=1 pip install git+https://github.com/vllm-project/vllm.git@main

Please load the model into vllm and sglang as float16 data type for AWQ support:

vllm serve cpatonn/Qwen3-Next-80B-A3B-Thinking-AWQ-4bit \
  --tensor-parallel-size 4 \
  --max-model-len 8192 \
  --dtype float16

Qwen3-Next-80B-A3B-Thinking

Chat

Over the past few months, we have observed increasingly clear trends toward scaling both total parameters and context lengths in the pursuit of more powerful and agentic artificial intelligence (AI). We are excited to share our latest advancements in addressing these demands, centered on improving scaling efficiency through innovative model architecture. We call this next-generation foundation models Qwen3-Next.

Highlights

Qwen3-Next-80B-A3B is the first installment in the Qwen3-Next series and features the following key enchancements:

  • Hybrid Attention: Replaces standard attention with the combination of Gated DeltaNet and Gated Attention, enabling efficient context modeling for ultra-long context length.
  • High-Sparsity Mixture-of-Experts (MoE): Achieves an extreme low activation ratio in MoE layers, drastically reducing FLOPs per token while preserving model capacity.
  • Stability Optimizations: Includes techniques such as zero-centered and weight-decayed layernorm, and other stabilizing enhancements for robust pre-training and post-training.
  • Multi-Token Prediction (MTP): Boosts pretraining model performance and accelerates inference.

We are seeing strong performance in terms of both parameter efficiency and inference speed for Qwen3-Next-80B-A3B:

  • Qwen3-Next-80B-A3B-Base outperforms Qwen3-32B-Base on downstream tasks with 10% of the total training cost and with 10 times inference throughput for context over 32K tokens.
  • Leveraging GSPO, we have addressed the stability and efficiency challenges posed by the hybrid attention mechanism combined with a high-sparsity MoE architecture in RL training. Qwen3-Next-80B-A3B-Thinking demonstrates outstanding performance on complex reasoning tasks, not only surpassing Qwen3-30B-A3B-Thinking-2507 and Qwen3-32B-Thinking, but also outperforming the proprietary model Gemini-2.5-Flash-Thinking across multiple benchmarks.

Qwen3-Next-80B-A3B-Thinking Benchmark Comparison

For more details, please refer to our blog post Qwen3-Next.

Model Overview

Qwen3-Next-80B-A3B-Thinking supports only thinking mode. To enforce model thinking, the default chat template automatically includes <think>. Therefore, it is normal for the model's output to contain only </think> without an explicit opening <think> tag.

Qwen3-Next-80B-A3B-Thinking may generate thinking content longer than its predecessor. We strongly recommend its use in highly complex reasoning tasks.

Qwen3-Next-80B-A3B-Thinking has the following features:

  • Type: Causal Language Models
  • Training Stage: Pretraining (15T tokens) & Post-training
  • Number of Parameters: 80B in total and 3B activated
  • Number of Paramaters (Non-Embedding): 79B
  • Number of Layers: 48
  • Hidden Dimension: 2048
  • Hybrid Layout: 12 * (3 * (Gated DeltaNet -> MoE) -> (Gated Attention -> MoE))
  • Gated Attention:
    • Number of Attention Heads: 16 for Q and 2 for KV
    • Head Dimension: 256
    • Rotary Position Embedding Dimension: 64
  • Gated DeltaNet:
    • Number of Linear Attention Heads: 32 for V and 16 for QK
    • Head Dimension: 128
  • Mixture of Experts:
    • Number of Experts: 512
    • Number of Activated Experts: 10
    • Number of Shared Experts: 1
    • Expert Intermediate Dimension: 512
  • Context Length: 262,144 natively and extensible up to 1,010,000 tokens

Performance

Qwen3-30B-A3B-Thinking-2507 Qwen3-32B Thinking Qwen3-235B-A22B-Thinking-2507 Gemini-2.5-Flash Thinking Qwen3-Next-80B-A3B-Thinking
Knowledge
MMLU-Pro 80.9 79.1 84.4 81.9 82.7
MMLU-Redux 91.4 90.9 93.8 92.1 92.5
GPQA 73.4 68.4 81.1 82.8 77.2
SuperGPQA 56.8 54.1 64.9 57.8 60.8
Reasoning
AIME25 85.0 72.9 92.3 72.0 87.8
HMMT25 71.4 51.5 83.9 64.2 73.9
LiveBench 241125 76.8 74.9 78.4 74.3 76.6
Coding
LiveCodeBench v6 (25.02-25.05) 66.0 60.6 74.1 61.2 68.7
CFEval 2044 1986 2134 1995 2071
OJBench 25.1 24.1 32.5 23.5 29.7
Alignment
IFEval 88.9 85.0 87.8 89.8 88.9
Arena-Hard v2* 56.0 48.4 79.7 56.7 62.3
WritingBench 85.0 79.0 88.3 83.9 84.6
Agent
BFCL-v3 72.4 70.3 71.9 68.6 72.0
TAU1-Retail 67.8 52.8 67.8 65.2 69.6
TAU1-Airline 48.0 29.0 46.0 54.0 49.0
TAU2-Retail 58.8 49.7 71.9 66.7 67.8
TAU2-Airline 58.0 45.5 58.0 52.0 60.5
TAU2-Telecom 26.3 27.2 45.6 31.6 43.9
Multilingualism
MultiIF 76.4 73.0 80.6 74.4 77.8
MMLU-ProX 76.4 74.6 81.0 80.2 78.7
INCLUDE 74.4 73.7 81.0 83.9 78.9
PolyMATH 52.6 47.4 60.1 49.8 56.3

*: For reproducibility, we report the win rates evaluated by GPT-4.1.

Quickstart

The code for Qwen3-Next has been merged into the main branch of Hugging Face transformers.

pip install git+https://github.com/huggingface/transformers.git@main

With earlier versions, you will encounter the following error:

KeyError: 'qwen3_next'

The following contains a code snippet illustrating how to use the model generate content based on given inputs.

from transformers import AutoModelForCausalLM, AutoTokenizer

model_name = "Qwen/Qwen3-Next-80B-A3B-Thinking"

# load the tokenizer and the model
tokenizer = AutoTokenizer.from_pretrained(model_name)
model = AutoModelForCausalLM.from_pretrained(
    model_name,
    dtype="auto",
    device_map="auto"
)

# prepare the model input
prompt = "Give me a short introduction to large language model."
messages = [
    {"role": "user", "content": prompt},
]
text = tokenizer.apply_chat_template(
    messages,
    tokenize=False,
    add_generation_prompt=True,
)
model_inputs = tokenizer([text], return_tensors="pt").to(model.device)

# conduct text completion
generated_ids = model.generate(
    **model_inputs,
    max_new_tokens=32768,
)
output_ids = generated_ids[0][len(model_inputs.input_ids[0]):].tolist() 

# parsing thinking content
try:
    # rindex finding 151668 (</think>)
    index = len(output_ids) - output_ids[::-1].index(151668)
except ValueError:
    index = 0

thinking_content = tokenizer.decode(output_ids[:index], skip_special_tokens=True).strip("\n")
content = tokenizer.decode(output_ids[index:], skip_special_tokens=True).strip("\n")

print("thinking content:", thinking_content) # no opening <think> tag
print("content:", content)

Multi-Token Prediction (MTP) is not generally available in Hugging Face Transformers.

The efficiency or throughput improvement depends highly on the implementation. It is recommended to adopt a dedicated inference framework, e.g., SGLang and vLLM, for inference tasks.

Depending on the inference settings, you may observe better efficiency with flash-linear-attention and causal-conv1d. See the above links for detailed instructions and requirements.

Deployment

For deployment, you can use the latest sglang or vllm to create an OpenAI-compatible API endpoint.

SGLang

SGLang is a fast serving framework for large language models and vision language models. SGLang could be used to launch a server with OpenAI-compatible API service.

SGLang has supported Qwen3-Next in its main branch, which can be installed from source:

pip install 'sglang[all] @ git+https://github.com/sgl-project/sglang.git@main#subdirectory=python'

The following command can be used to create an API endpoint at http://localhost:30000/v1 with maximum context length 256K tokens using tensor parallel on 4 GPUs.

SGLANG_ALLOW_OVERWRITE_LONGER_CONTEXT_LEN=1 python -m sglang.launch_server --model-path Qwen/Qwen3-Next-80B-A3B-Thinking --port 30000 --tp-size 4 --context-length 262144 --reasoning-parser deepseek-r1 --mem-fraction-static 0.8

The following command is recommended for MTP with the rest settings the same as above:

SGLANG_ALLOW_OVERWRITE_LONGER_CONTEXT_LEN=1 python -m sglang.launch_server --model-path Qwen/Qwen3-Next-80B-A3B-Thinking --port 30000 --tp-size 4 --context-length 262144 --reasoning-parser deepseek-r1 --mem-fraction-static 0.8 --speculative-algo NEXTN --speculative-num-steps 3 --speculative-eagle-topk 1 --speculative-num-draft-tokens 4

The environment variable SGLANG_ALLOW_OVERWRITE_LONGER_CONTEXT_LEN=1 is required at the moment.

The default context length is 256K. If you encounter out-of-memory (OOM) issues, you may consider reducing the context length to a smaller value. However, since the model may require longer token sequences for reasoning, we strongly recommend using a context length greater than 131,072.

vLLM

vLLM is a high-throughput and memory-efficient inference and serving engine for LLMs. vLLM could be used to launch a server with OpenAI-compatible API service.

vLLM has supported Qwen3-Next in its main branch, which can be installed from source:

pip install git+https://github.com/vllm-project/vllm.git

The following command can be used to create an API endpoint at http://localhost:8000/v1 with maximum context length 256K tokens using tensor parallel on 4 GPUs.

VLLM_ALLOW_LONG_MAX_MODEL_LEN=1 vllm serve Qwen/Qwen3-Next-80B-A3B-Thinking --port 8000 --tensor-parallel-size 4 --max-model-len 262144 --enable-reasoning --reasoning-parser deepseek_r1

The following command is recommended for MTP with the rest settings the same as above:

VLLM_ALLOW_LONG_MAX_MODEL_LEN=1 vllm serve Qwen/Qwen3-Next-80B-A3B-Thinking --port 8000 --tensor-parallel-size 4 --max-model-len 262144 --enable-reasoning --reasoning-parser deepseek_r1 --speculative-config '{"method":"qwen3_next_mtp","num_speculative_tokens":2}'

The environment variable VLLM_ALLOW_LONG_MAX_MODEL_LEN=1 is required at the moment.

The default context length is 256K. If you encounter out-of-memory (OOM) issues, you may consider reducing the context length to a smaller value. However, since the model may require longer token sequences for reasoning, we strongly recommend using a context length greater than 131,072 when possible.

Agentic Use

Qwen3 excels in tool calling capabilities. We recommend using Qwen-Agent to make the best use of agentic ability of Qwen3. Qwen-Agent encapsulates tool-calling templates and tool-calling parsers internally, greatly reducing coding complexity.

To define the available tools, you can use the MCP configuration file, use the integrated tool of Qwen-Agent, or integrate other tools by yourself.

from qwen_agent.agents import Assistant

# Define LLM
# Using Alibaba Cloud Model Studio
llm_cfg = {
    'model': 'Qwen3-Next-80B-A3B-Thinking',
    'model_type': 'qwen_dashscope',
}

# Using OpenAI-compatible API endpoint. It is recommended to disable the reasoning and the tool call parsing
# functionality of the deployment frameworks and let Qwen-Agent automate the related operations. For example, 
# `VLLM_ALLOW_LONG_MAX_MODEL_LEN=1 vllm serve Qwen/Qwen3-Next-80B-A3B-Thinking --served-model-name Qwen3-Next-80B-A3B-Thinking --port 8000 --tensor-parallel-size 4 --max-model-len 262144`.
#
# llm_cfg = {
#     'model': 'Qwen3-Next-80B-A3B-Thinking',
# 
#     # Use a custom endpoint compatible with OpenAI API:
#     'model_server': 'http://localhost:8000/v1',  # api_base without reasoning and tool call parsing
#     'api_key': 'EMPTY',
#     'generate_cfg': {
#         'thought_in_content': True,
#     },
# }

# Define Tools
tools = [
    {'mcpServers': {  # You can specify the MCP configuration file
            'time': {
                'command': 'uvx',
                'args': ['mcp-server-time', '--local-timezone=Asia/Shanghai']
            },
            "fetch": {
                "command": "uvx",
                "args": ["mcp-server-fetch"]
            }
        }
    },
  'code_interpreter',  # Built-in tools
]

# Define Agent
bot = Assistant(llm=llm_cfg, function_list=tools)

# Streaming generation
messages = [{'role': 'user', 'content': 'https://qwenlm.github.io/blog/ Introduce the latest developments of Qwen'}]
for responses in bot.run(messages=messages):
    pass
print(responses)

Processing Ultra-Long Texts

Qwen3-Next natively supports context lengths of up to 262,144 tokens. For conversations where the total length (including both input and output) significantly exceeds this limit, we recommend using RoPE scaling techniques to handle long texts effectively. We have validated the model's performance on context lengths of up to 1 million tokens using the YaRN method.

YaRN is currently supported by several inference frameworks, e.g., transformers, vllm and sglang. In general, there are two approaches to enabling YaRN for supported frameworks:

  • Modifying the model files: In the config.json file, add the rope_scaling fields:

    {
        ...,
        "rope_scaling": {
            "rope_type": "yarn",
            "factor": 4.0,
            "original_max_position_embeddings": 262144
        }
    }
    
  • Passing command line arguments:

    For vllm, you can use

    VLLM_ALLOW_LONG_MAX_MODEL_LEN=1 vllm serve ... --rope-scaling '{"rope_type":"yarn","factor":4.0,"original_max_position_embeddings":262144}' --max-model-len 1010000  
    

    For sglang, you can use

    SGLANG_ALLOW_OVERWRITE_LONGER_CONTEXT_LEN=1 python -m sglang.launch_server ... --json-model-override-args '{"rope_scaling":{"rope_type":"yarn","factor":4.0,"original_max_position_embeddings":262144}}' --context-length 1010000
    

All the notable open-source frameworks implement static YaRN, which means the scaling factor remains constant regardless of input length, potentially impacting performance on shorter texts. We advise adding the rope_scaling configuration only when processing long contexts is required. It is also recommended to modify the factor as needed. For example, if the typical context length for your application is 524,288 tokens, it would be better to set factor as 2.0.

Best Practices

To achieve optimal performance, we recommend the following settings:

  1. Sampling Parameters:

    • We suggest using Temperature=0.6, TopP=0.95, TopK=20, and MinP=0.
    • For supported frameworks, you can adjust the presence_penalty parameter between 0 and 2 to reduce endless repetitions. However, using a higher value may occasionally result in language mixing and a slight decrease in model performance.
  2. Adequate Output Length: We recommend using an output length of 32,768 tokens for most queries. For benchmarking on highly complex problems, such as those found in math and programming competitions, we suggest setting the max output length to 81,920 tokens. This provides the model with sufficient space to generate detailed and comprehensive responses, thereby enhancing its overall performance.

  3. Standardize Output Format: We recommend using prompts to standardize model outputs when benchmarking.

    • Math Problems: Include "Please reason step by step, and put your final answer within \boxed{}." in the prompt.
    • Multiple-Choice Questions: Add the following JSON structure to the prompt to standardize responses: "Please show your choice in the answer field with only the choice letter, e.g., "answer": "C"."
  4. No Thinking Content in History: In multi-turn conversations, the historical model output should only include the final output part and does not need to include the thinking content. It is implemented in the provided chat template in Jinja2. However, for frameworks that do not directly use the Jinja2 chat template, it is up to the developers to ensure that the best practice is followed.

Citation

If you find our work helpful, feel free to give us a cite.

@misc{qwen3technicalreport,
      title={Qwen3 Technical Report}, 
      author={Qwen Team},
      year={2025},
      eprint={2505.09388},
      archivePrefix={arXiv},
      primaryClass={cs.CL},
      url={https://arxiv.org/abs/2505.09388}, 
}

@article{qwen2.5-1m,
      title={Qwen2.5-1M Technical Report}, 
      author={An Yang and Bowen Yu and Chengyuan Li and Dayiheng Liu and Fei Huang and Haoyan Huang and Jiandong Jiang and Jianhong Tu and Jianwei Zhang and Jingren Zhou and Junyang Lin and Kai Dang and Kexin Yang and Le Yu and Mei Li and Minmin Sun and Qin Zhu and Rui Men and Tao He and Weijia Xu and Wenbiao Yin and Wenyuan Yu and Xiafei Qiu and Xingzhang Ren and Xinlong Yang and Yong Li and Zhiying Xu and Zipeng Zhang},
      journal={arXiv preprint arXiv:2501.15383},
      year={2025}
}
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