Scalable Power Sampling: Unlocking Efficient, Training-Free Reasoning for LLMs via Distribution Sharpening
Abstract
A theoretically grounded method for improving large language model reasoning performance through distribution sharpening without iterative sampling or external rewards, achieving comparable results to reinforcement learning post-training with significantly reduced computational costs.
Reinforcement learning (RL) post-training is a dominant approach for improving the reasoning performance of large language models (LLMs), yet growing evidence suggests that its gains arise primarily from distribution sharpening rather than the acquisition of new capabilities. Recent work has shown that sampling from the power distribution of LLMs using Markov chain Monte Carlo (MCMC) can recover performance comparable to RL post-training without relying on external rewards; however, the high computational cost of MCMC makes such approaches impractical for widespread adoption. In this work, we propose a theoretically grounded alternative that eliminates the need for iterative MCMC. We derive a novel formulation showing that the global power distribution can be approximated by a token-level scaled low-temperature one, where the scaling factor captures future trajectory quality. Leveraging this insight, we introduce a training-free and verifier-free algorithm that sharpens the base model's generative distribution autoregressively. Empirically, we evaluate our method on math, QA, and code tasks across four LLMs, and show that our method matches or surpasses one-shot GRPO without relying on any external rewards, while reducing inference latency by over 10x compared to MCMC-based sampling.
Community
What if RL isn’t teaching LLMs how to reason, but just sharpening what’s already there?
Most recent progress in LLM reasoning comes from RL post-training (GRPO, verifiers, rewards).
But there’s growing evidence that these gains may come less from learning new capabilities and more from reshaping the distribution of outputs.
In our new work, we take that idea seriously.
We show that:
Reasoning trajectories already exist in base models
What matters is how you sample, not how you retrain
The global power distribution can be approximated autoregressively, without MCMC
The result is a training-free, verifier-free inference-time method that:
⚡ Matches GRPO-style post-training
⏱ Is ~10× faster than MCMC-based power sampling
🧪 Requires no rewards, no finetuning, no verifier
Conceptually, the key insight is simple:
Power sampling ≈ low-temperature sampling × future-aware token scaling
This lets us recover global reasoning behaviour token by token, without expensive trajectory-level inference.
Does the presented work in the paper have any code implementation.? 💻
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