FrontierSWE (Impl.)

FrontierSWE (Impl.) evaluates software engineering implementation ability and reports model ranking on implementation tasks. Lower rank is better.

MiMo-V2.5-Pro from Xiaomi currently leads the FrontierSWE (Impl.) leaderboard with a score of 3.400 across 1 evaluated AI models.

About this benchmark

What FrontierSWE (Impl.) measures

FrontierSWE (Impl.) is a text benchmark that evaluates large language models on agents and code tasks. LLM Stats tracks 1 model on this benchmark, with a maximum possible score of 1. Current average across reported models is 3.4, with the leader reaching 3.4.

Compare leaders on the best AI for agents and best AI for code leaderboards.

XiaomiMiMo-V2.5-Pro leads with 340.0%.

Progress Over Time

Interactive timeline showing model performance evolution on FrontierSWE (Impl.)

State-of-the-art frontier
Open
Proprietary

FrontierSWE (Impl.) Leaderboard

1 models
ContextCostLicense
11.0T1.0M$0.43 / $0.87
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FAQ

Common questions about FrontierSWE (Impl.).

What is the FrontierSWE (Impl.) benchmark?

FrontierSWE (Impl.) evaluates software engineering implementation ability and reports model ranking on implementation tasks. Lower rank is better.

What is the FrontierSWE (Impl.) leaderboard?

The FrontierSWE (Impl.) leaderboard ranks 1 AI models based on their performance on this benchmark. Currently, MiMo-V2.5-Pro by Xiaomi leads with a score of 3.400. The average score across all models is 3.400.

What is the highest FrontierSWE (Impl.) score?

The highest FrontierSWE (Impl.) score is 3.400, achieved by MiMo-V2.5-Pro from Xiaomi.

How many models are evaluated on FrontierSWE (Impl.)?

1 models have been evaluated on the FrontierSWE (Impl.) benchmark, with 0 verified results and 1 self-reported results.

What categories does FrontierSWE (Impl.) cover?

FrontierSWE (Impl.) is categorized under agents and code. The benchmark evaluates text models.

What is the best open-source model on FrontierSWE (Impl.)?

MiMo-V2.5-Pro by Xiaomi is the top-ranked open-source model on FrontierSWE (Impl.), with a score of 3.400 (rank #1).

Which model offers the best value on FrontierSWE (Impl.)?

Among models scoring within 10% of the leader, MiMo-V2.5-Pro from Xiaomi is the cheapest, at $0.43 per million input tokens with a score of 3.400.

How recent are the FrontierSWE (Impl.) leaderboard results?

The FrontierSWE (Impl.) leaderboard was last updated in June 2026 and currently includes 1 evaluated models.

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