SentinelBench is a new benchmark for time-evolving monitoring tasks in web environments, measuring task completion, reaction time, and resource use with baselines from three models and two harnesses.
LongCoT: Benchmarking Long-Horizon Chain-of-Thought Reasoning
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abstract
As language models are increasingly deployed for complex autonomous tasks, their ability to reason accurately over longer horizons becomes critical. An essential component of this ability is planning and managing a long, complex chain-of-thought (CoT). We introduce LongCoT, a scalable benchmark of 2,500 expert-designed problems spanning chemistry, mathematics, computer science, chess, and logic to isolate and directly measure the long-horizon CoT reasoning capabilities of frontier models. Problems consist of a short input with a verifiable answer; solving them requires navigating a graph of interdependent steps that span tens to hundreds of thousands of reasoning tokens. Each local step is individually tractable for frontier models, so failures reflect long-horizon reasoning limitations. At release, the best models achieve <10% accuracy (GPT 5.2: 9.8%; Gemini 3 Pro: 6.1%) on LongCoT, revealing a substantial gap in current capabilities. Overall, LongCoT provides a rigorous measure of long-horizon reasoning, tracking the ability of frontier models to reason reliably over extended periods.
fields
cs.AI 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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SentinelBench: A Benchmark for Long-Running Monitoring Agents
SentinelBench is a new benchmark for time-evolving monitoring tasks in web environments, measuring task completion, reaction time, and resource use with baselines from three models and two harnesses.