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arimxyer/models

TUI and CLI for browsing AI models, benchmarks, coding agents, and statuses for AI providers.

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What it does

This is a fast, searchable directory tool that runs in your terminal, letting you browse and compare over 2,000 AI models from 85+ providers, see how they perform on standardized tests, and track popular AI coding assistants like Claude Code and Cursor. Think of it as a real-time comparison shopping guide for AI models, similar to how you might use a site like GSMArena to compare phones, but for AI services instead.

Why it matters

As AI model choices multiply rapidly, teams risk wasting budget and engineering time on the wrong models without a clear way to compare costs and performance side by side. A tool like this signals growing demand for AI procurement intelligence — the companies that build or integrate the best 'model selection' layer into their workflows will ship faster and spend smarter than competitors flying blind.

23Active

On the radar — signal detected

Stars
416
Forks
17
Contributors
6
Language
Rust
Downloads (7d)
64

crates/modelsdev

Score updated Apr 13, 2026

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