β¨ Klear-Reasoner-8B-SFT
We present Klear-Reasoner, a model with long reasoning capabilities that demonstrates careful deliberation during problem solving, achieving outstanding performance across multiple benchmarks. We investigate two key issues with current clipping mechanisms in RL: Clipping suppresses critical exploration signals and ignores suboptimal trajectories. To address these challenges, we propose Gradient-Preserving clipping Policy Optimization (GPPO) that gently backpropagates gradients from clipped tokens.
Resource | Link |
---|---|
π Preprints | Paper |
π€ Daily Paper | Paper |
π€ Model Hub | Klear-Reasoner-8B |
π€ Dataset Hub | Math RL |
π€ Dataset Hub | Code RL |
π Issues & Discussions | GitHub Issues |
π§ Contact | [email protected] |
π Overview

Benchmark accuracy of Klear-Reasoner-8B on AIME 2024/2025 (avg@64), LiveCodeBench V5 (2024/08/01-2025/02/01, avg@8), and v6 (2025/02/01-2025/05/01, avg@8).
Klear-Reasoner is an 8-billion-parameter reasoning model that achieves SOTA performance on challenging math and coding benchmarks:
Benchmark | AIME 2024 | AIME 2025 | LiveCodeBench V5 | LiveCodeBench V6 |
---|---|---|---|---|
Score | 90.5 % | 83.2 % | 66.0 % | 58.1 % |
The model combines:
- Quality-centric long CoT SFT β distilled from DeepSeek-R1-0528.
- Gradient-Preserving Clipping Policy Optimization (GPPO) β a novel RL method that keeps gradients from clipped tokens to boost exploration & convergence.
Evaluation
When we expand the inference budget to 64K and adopt the YaRN method with a scaling factor of 2.5. Evaluation is coming soon, stay tuned.
π Benchmark Results (Pass@1)
Model | AIME2024 avg@64 |
AIME2025 avg@64 |
HMMT2025 avg@64 |
LCB V5 avg@8 |
LCB V6 avg@8 |
---|---|---|---|---|---|
AReal-boba-RL-7B | 61.9 | 48.3 | 29.4 | 34.3 | 31.0β |
MiMo-7B-RL | 68.2 | 55.4 | 35.7 | 57.8 | 49.3 |
Skywork-OR1-7B | 70.2 | 54.6 | 35.7 | 47.6 | 42.7 |
AceReason-Nemotron-1.1-7B | 72.6 | 64.8 | 42.9 | 57.2 | 52.1 |
POLARIS-4B-Preview | 81.2 | 79.4 | 58.7 | 58.5β | 53.0β |
Qwen3-8B | 76.0 | 67.3 | 44.7β | 57.5 | 48.4β |
Deepseek-R1-0528-Distill-8B | 86.0 | 76.3 | 61.5 | 61.0β | 51.6β |
OpenReasoning-Nemotron-7B | 84.7 | 78.2 | 63.5 | _65.6_β | _56.3_β |
Klear-Reasoner-8B-SFT | 75.6 | 70.1 | 57.6 | 58.5 | 49.6 |
Klear-Reasoner-8B | 83.2 | 75.6 | 60.3 | 61.6 | 53.1 |
w/ 64K Inference Budget | 90.5 | 83.2 | 70.8 | 66.0 | 58.1 |
We report the average
pass@1
results (avg@n), with all other evaluation metrics following the DeepSeek-R1 assessment framework (temperature=0.6, top_p=0.95).
π§ͺ Training
Configure the experimental environment
git clone https://github.com/suu990901/Klear_Reasoner
cd Klear_Reasoner
pip install -r requirements.txt
For the code, we use Firejail for the sandbox environment. Additionally, we implemented multi-process control based on Pebble, enabling automatic resource reclamation upon task timeout. For mathematics, we use math_verify for judging.
Using Ray for Multi-Node Training
For multi-node trainingββ, ensure ββall nodes are started and connected via Rayββ before executing the training script. Below is a brief setup guide for Ray across multiple machines:
Step 1: Start Ray on the Head Node (node0)
On the first node (typically called node0
), run:
ray start --head --dashboard-host=0.0.0.0
Get the IP address of the master node.
MASTER_IP=$(hostname -I | awk '{print $1}')
Step 2: Connect Other Nodes (e.g., node1)
On each additional worker node (e.g., node1
), run the following, replacing the IP with that of your head node:
ray start --address=\"$MASTER_IP:6379\"
RL Training
Run the following script on the master node to start the training task.
bash recipe/dapo/perf_run_dapo_ours_math.sh # For Math RL
bash recipe/dapo/perf_run_dapo_ours_code.sh # For Code RL
In the startup script, you need to set the following variables:
YOUR_MODEL_PATH="<your_model_path>"
CKPTS_SAVE_DIR="<ckpts_save_path>"
YOUR_TRAIN_FILE="<train_data_path>"
YOUR_TEST_FILE="<test_data_path>"
π€ Citation
If you find this work helpful, please cite our paper:
@misc{su2025klearreasoneradvancingreasoningcapability,
title={Klear-Reasoner: Advancing Reasoning Capability via Gradient-Preserving Clipping Policy Optimization},
author={Zhenpeng Su and Leiyu Pan and Xue Bai and Dening Liu and Guanting Dong and Jiaming Huang and Wenping Hu and Fuzheng Zhang and Kun Gai and Guorui Zhou},
year={2025},
eprint={2508.07629},
archivePrefix={arXiv},
primaryClass={cs.LG},
url={https://arxiv.org/abs/2508.07629},
}
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