GAC: Noise-Aware Adaptive Mixing for Hybrid SFT-RL Post-Training
About
Hybrid post-training usually combines supervised fine-tuning and reinforcement learning, but fixed mixing schedules cannot adapt when the relative noise of the two signals changes over time. We propose GAC, a noise-aware controller that derives an adaptive mixing weight from online estimates of gradient variance and disagreement between the two training signals. The method adds smoothing, prior guidance, and bounded updates while reusing existing training tensors. Experiments on math, code, science, and logic benchmarks show that GAC consistently improves hybrid post-training over strong fixed and rule-based baselines, with larger gains at larger model scales and less than 1% training overhead.
Yuelin Hu, Zhenbo Yu, Zhengxue Cheng, Wei Liu, Li Song• 2026
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Mathematical Reasoning | AMC (test) | Accuracy (Pass@1)67.2 | 65 | |
| Code Generation | MBPP | Pass@178.8 | 58 | |
| Mathematical Reasoning | AIME'24 (test) | Accuracy20.8 | 39 | |
| Code Generation | HumanEval | Pass@183.5 | 36 | |
| Scientific Reasoning | SciBench | Accuracy41.2 | 33 | |
| Mathematical Reasoning | AIME25 (test) | -- | 33 | |
| Scientific Reasoning | GPQA | Accuracy43.5 | 29 | |
| Knowledge | MMLU Pro (test) | Accuracy58.6 | 19 | |
| Structured reward evaluation | AMC (test) | Accuracy74.1 | 12 | |
| Logical reasoning | BBH | Logical Deduction Accuracy66.5 | 11 |
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