The End of Manual Decoding: Towards Truly End-to-End Language Models
Abstract
The "end-to-end" label for LLMs is a misnomer. In practice, they depend on a non-differentiable decoding process that requires laborious, hand-tuning of hyperparameters like temperature and top-p. This paper introduces AutoDeco, a novel architecture that enables truly "end-to-end" generation by learning to control its own decoding strategy. We augment the standard transformer with lightweight heads that, at each step, dynamically predict context-specific temperature and top-p values alongside the next-token logits. This approach transforms decoding into a parametric, token-level process, allowing the model to self-regulate its sampling strategy within a single forward pass. Through extensive experiments on eight benchmarks, we demonstrate that AutoDeco not only significantly outperforms default decoding strategies but also achieves performance comparable to an oracle-tuned baseline derived from "hacking the test set"-a practical upper bound for any static method. Crucially, we uncover an emergent capability for instruction-based decoding control: the model learns to interpret natural language commands (e.g., "generate with low randomness") and adjusts its predicted temperature and top-p on a token-by-token basis, opening a new paradigm for steerable and interactive LLM decoding.
Community
AutoDeco is a framework that adds token-level adaptive decoding parameter prediction capabilities to Large Language Models (LLMs). By adding lightweight prediction heads on top of pre-trained models, AutoDeco can dynamically predict optimal temperature and top-p parameters for each token during decoding.
Github: https://github.com/Zacks917/AutoDeco
Huggingface Models: https://huggingface.co/collections/Jadeislaw/autodeco
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