Measuring AI Ability to Complete Long Software Tasks
This paper from METR (Model Evaluation & Threat Research) introduces a new metric for tracking AI progress: the "50%-task-completion time horizon". This denotes the length of software engineering task (measured by how long a skilled human developer takes to complete it) that the AI model can finish with 50% success rate. The researchers evaluated 12 frontier AI models on 170 tasks across three benchmarks: HCAST (97 diverse software tasks ranging from 1 minute to 30 hours), RE-Bench (7 difficult ML research engineering tasks, each 8 hours), and SWAA (66 short software actions taking 1-30 seconds). To calibrate task difficulty, they collected over 800 human baselines from professional developers, totaling 2,529 hours of work. The headline finding is that this time horizon has been doubling every 7 months since 2019. GPT-2 could handle tasks that take humans about 2 seconds. The o3 model reached 110 minutes. Extrapolating this trend, AI reaches a one-month time horizon (167...