LongBench-Chat is a benchmark for evaluating instruction-following capabilities of large language models on queries of 10k-100k in length. It was introduced in the LongAlign paper to test how well models can follow instructions over very long contexts.
1 result indexed across 1 metric. Shaded row marks current SOTA; ties broken by submission date.
| # | Model | Org | Submitted | Paper / code | Score (1-10) |
|---|---|---|---|---|---|
| 01 | Qwen2.5-72B-Instruct | — | Dec 2024 | Qwen2.5 Technical Report · code | 8.72 |
Each row below marks a model that broke the previous record on Score (1-10). Intermediate submissions are kept in the leaderboard above; only SOTA-setting entries are re-listed here.
Higher scores win. Each subsequent entry improved upon the previous best.
Every paper below corresponds to at least one row in the leaderboard above. Click through for the arXiv preprint and, when available, the reference implementation.
Submit a checkpoint and a reproduction script. We will run it, publish the score, and — if it takes the top — annotate the step on the progress chart with your name.