Introducing Background Temperature to Characterise Hidden Randomness in Large Language Models

April 24, 2026 Β· Grace Period Β· πŸ› Transactions on Machine Learning Research (TMLR), February 2026, https://openreview.net/pdf?id=bz0he4bARF

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Authors Alberto Messina, Stefano Scotta arXiv ID 2604.22411 Category cs.AI: Artificial Intelligence Cross-listed cs.CL, cs.LG Citations 0 Venue Transactions on Machine Learning Research (TMLR), February 2026, https://openreview.net/pdf?id=bz0he4bARF
Abstract
Even when decoding with temperature $T=0$, large language models (LLMs) can produce divergent outputs for identical inputs. Recent work by Thinking Machines Lab highlights implementation-level sources of nondeterminism, including batch-size variation, kernel non-invariance, and floating-point non-associativity. In this short note we formalize this behavior by introducing the notion of \emph{background temperature} $T_{\mathrm{bg}}$, the effective temperature induced by an implementation-dependent perturbation process observed even when nominal $T=0$. We provide clean definitions, show how $T_{\mathrm{bg}}$ relates to a stochastic perturbation governed by the inference environment $I$, and propose an empirical protocol to estimate $T_{bg}$ via the equivalent temperature $T_n(I)$ of an ideal reference system. We conclude with a set of pilot experiments run on a representative pool from the major LLM providers that demonstrate the idea and outline implications for reproducibility, evaluation, and deployment.
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