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[ARTICLE · art-59927] src=arxiv.org ↗ pub= topic=large-language-models verified=true sentiment=↑ positive

Scaling Point-in-Time Language Models

Researchers trained point-in-time language models on up to 4 billion parameters using 1 trillion chronologically filtered tokens, achieving performance close to unrestricted models like Gemma-3-4B and LLaMA-7B. The models eliminate lookahead bias for valid backtesting in finance and social sciences, with monthly checkpoints from 2013-2024 released alongside the full pipeline.

read1 min views1 publishedJul 15, 2026

arXiv:2607.11889v1 Announce Type: new Abstract: Large language models trained on unrestricted internet corpora inevitably embed information from the future, introducing lookahead bias that compromises the validity of backtests and causal inference in finance and the social sciences. Point-in-time language models--trained exclusively on text available up to each calendar date--eliminate this leakage by construction, but existing efforts typically produce models that lag substantially behind their unconstrained counterparts. We show that this performance gap can be substantially narrowed through scale. Training decoder-only transformers with up to 4 billion parameters on 1 trillion chronologically filtered tokens from FineWeb, we construct a sequence of monthly model checkpoints spanning 2013-2024. Across a range of common-sense reasoning and language understanding benchmarks, our models approach the performance of leading open-weight models of comparable size (e.g., Gemma-3-4B and LLaMA-7B) trained on temporally unrestricted data, although a performance gap remains on several tasks. Instruction fine-tuning via LoRA further improves downstream usability. We release the complete pipeline--including dataset construction, training infrastructure, and evaluation code--to enable reproducible point-in-time language modeling and to support research applications that require strict temporal validity.

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