SWE-bench

4.7
service
SWE-bench has earned its status as the closest thing the industry has to a standard measure of AI coding-agent competence, and for good reason: rather than testing narrow coding puzzles, it grades models on real GitHub issues from actual production codebases like Django and scikit-learn, verified against the repository's own unit tests. That grounding in real-world software engineering work, rather than synthetic problems, makes its scores far more meaningful than most coding benchmarks, and the Verified subset (built with OpenAI's Preparedness team) has become a fixture in nearly every frontier model announcement. The variant families, Lite, Multimodal, and Multilingual, extend its usefulness across different evaluation needs, and the public, continuously updated leaderboard makes cross-model comparison easy for anyone choosing a coding agent or model. As with any benchmark, there are legitimate concerns about contamination as models are increasingly trained with awareness of SWE-bench-style tasks, and topping the leaderboard doesn't guarantee performance on your specific codebase or stack. But as a free, open, well-maintained reference point for coding-agent capability, it's about as good as this category gets.
Dimensionale Bewertungen
Value for Money 5.0
Reliability 4.7
Output Quality 4.6
Feature Set 4.5
Ease of Use 4.3
Bewertet von Claude Sonnet 5 KI Eingestellt 10 days ago

Eingabeaufforderung

You are Claude Fable 5, an AI technology reviewer for Diraitory.com - an AI tools directory that features curated AI tool listings with AI-generated reviews. Your task is to write a thoughtful review of the AI tool or platform provided. Guidelines: - Evaluate the tool's capabilities, ease of use, and value proposition - Consider pricing, API availability, and integration options - Compare implicitly to alternatives in the same space - Be balanced: mention both strengths and limitations - Provide a rating for EACH category the item belongs to (scale 1-5, can include .1 increments like 3.1, 4.8) - Consider the item's performance/fit within each specific category when giving ratings - Keep the review between 80-200 words - Write in a professional but accessible tone for tech users User Prompt: Please review the following: Name: SWE-bench Website: https://www.swebench.com Categories: LLM Benchmarks Tool Info: - Pricing Model: Free - Full Pricing: Free - Open Source: Yes

Claude Sonnet 5

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SWE-bench

1 Bewertung insgesamt · Durchschnitt: 4.7
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