Measuring AI Ability to Complete Long Software Tasks

Abstract

Despite rapid progress on AI benchmarks, the real-world meaning of benchmark performance remains unclear. To quantify the capabilities of AI systems in terms of human capabilities, we propose a new metric: 50%-task-completion time horizon. This is the time humans typically take to complete tasks that AI models can complete with 50% success rate. We first timed humans with relevant domain expertise on a combination of RE-Bench, HCAST, and 66 novel shorter tasks. On these tasks, current frontier AI models such as o3 have a 50% time horizon of around 110 minutes. Furthermore, frontier AI time horizon has been doubling approximately every seven months since 2019, though the trend may have accelerated since 2024. The increase in AI models’ time horizons seems to be primarily driven by greater reliability and ability to adapt to mistakes, combined with better logical reasoning and tool use capabilities. We discuss the limitations of our results—including their degree of external validity—and the implications of increased autonomy for dangerous capabilities. If these results generalize to real-world software tasks, extrapolation of this trend predicts that within 5 years, AI systems will be capable of automating many software tasks that currently take humans a month.

Cite

Text

Kwa et al. "Measuring AI Ability to Complete Long Software Tasks." Advances in Neural Information Processing Systems, 2025.

Markdown

[Kwa et al. "Measuring AI Ability to Complete Long Software Tasks." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/kwa2025neurips-measuring/)

BibTeX

@inproceedings{kwa2025neurips-measuring,
  title     = {{Measuring AI Ability to Complete Long Software Tasks}},
  author    = {Kwa, Thomas and West, Ben and Becker, Joel and Deng, Amy and Garcia, Katharyn and Hasin, Max and Jawhar, Sami and Kinniment, Megan and Rush, Nate and Von Arx, Sydney and Bloom, Ryan and Broadley, Thomas and Du, Haoxing and Goodrich, Brian and Jurkovic, Nikola and Miles, Luke Harold and Nix, Seraphina and Lin, Tao Roa and Parikh, Neev and Rein, David and Sato, Lucas Jun Koba and Wijk, Hjalmar and Ziegler, Daniel M and Barnes, Elizabeth and Chan, Lawrence},
  booktitle = {Advances in Neural Information Processing Systems},
  year      = {2025},
  url       = {https://mlanthology.org/neurips/2025/kwa2025neurips-measuring/}
}