SoTA Feed — Every open-weights release from the labs that matter

Ad: Read SoTA Feed without this slot — ad-free site plus a personal ad-free feed URL $3/month

DeepSeek-V3.2-Exp

Sep 29, 2025 · DeepSeek · license: mit · view on Hugging Face ↗
689 GB · MoE: 685B total, ≈41B (≈41 GB) active

DeepSeek-V3.2-Exp

DeepSeek-V3

Homepage Chat Hugging Face
Discord Wechat Twitter Follow
License

Introduction

We are excited to announce the official release of DeepSeek-V3.2-Exp, an experimental version of our model. As an intermediate step toward our next-generation architecture, V3.2-Exp builds upon V3.1-Terminus by introducing DeepSeek Sparse Attention—a sparse attention mechanism designed to explore and validate optimizations for training and inference efficiency in long-context scenarios.

This experimental release represents our ongoing research into more efficient transformer architectures, particularly focusing on improving computational efficiency when processing extended text sequences.

BenchmarkDeepSeek-V3.1-TerminusDeepSeek-V3.2-Exp
Reasoning Mode w/o Tool Use
MMLU-Pro85.085.0
GPQA-Diamond80.779.9
Humanity's Last Exam21.719.8
LiveCodeBench74.974.1
AIME 202588.489.3
HMMT 202586.183.6
Codeforces20462121
Aider-Polyglot76.174.5
Agentic Tool Use
BrowseComp38.540.1
BrowseComp-zh45.047.9
SimpleQA96.897.1
SWE Verified68.467.8
SWE-bench Multilingual57.857.9
Terminal-bench36.737.7

Update

How to Run Locally

HuggingFace

We provide an updated inference demo code in the inference folder to help the community quickly get started with our model and understand its architectural details.

First convert huggingface model weights to the the format required by our inference demo. Set MP to match your available GPU count:

cd inference
export EXPERTS=256
python convert.py --hf-ckpt-path ${HF_CKPT_PATH} --save-path ${SAVE_PATH} --n-experts ${EXPERTS} --model-parallel ${MP}

Launch the interactive chat interface and start exploring DeepSeek's capabilities:

export CONFIG=config_671B_v3.2.json
torchrun --nproc-per-node ${MP} generate.py --ckpt-path ${SAVE_PATH} --config ${CONFIG} --interactive

SGLang

Installation with Docker

# H200
docker pull lmsysorg/sglang:dsv32

# MI350
docker pull lmsysorg/sglang:dsv32-rocm

# NPUs
docker pull lmsysorg/sglang:dsv32-a2
docker pull lmsysorg/sglang:dsv32-a3

Launch Command

python -m sglang.launch_server --model deepseek-ai/DeepSeek-V3.2-Exp --tp 8 --dp 8 --enable-dp-attention

vLLM

vLLM provides day-0 support of DeepSeek-V3.2-Exp. See the recipes for up-to-date details.

Open-Source Kernels

For TileLang kernels with better readability and research-purpose design, please refer to TileLang.

For high-performance CUDA kernels, indexer logit kernels (including paged versions) are available in DeepGEMM. Sparse attention kernels are released in FlashMLA.

License

This repository and the model weights are licensed under the MIT License.

Citation

@misc{deepseekai2024deepseekv32,
      title={DeepSeek-V3.2-Exp: Boosting Long-Context Efficiency with DeepSeek Sparse Attention}, 
      author={DeepSeek-AI},
      year={2025},
}

Contact

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

← all releases