
AgentX-Ray
The evolving adversarial gauntlet test for any AI.
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About AgentX-Ray
The problem with AI benchmarks is that they're static. If a test never changes, models eventually memorize the answer key. Labs optimize for the leaderboard. Scores inflate. You ship a model into production expecting GPT-4-level reasoning and get something that hallucinates under pressure, drops context mid-task, and fails the moment the environment doesn't match training. The benchmarks said it was ready. Your users found out it wasn't. AgentX-Ray is an adversarial gauntlet built to fix the trust problem. Instead of running static strings against a fixed test suite, AgentX-Ray generates a dynamic environment on every run — injecting unique variables, shifting context mid-task, and forcing models to reason in real time without a safety net. No two runs are identical. There's no answer key to memorize. There's no leaderboard padding. Just raw, ungameable performance data so you know exactly what a model can handle before you bet your product on it. How it works Each run pushes a model through a structured gauntlet of phases — from meta-reasoning and instruction following to multi-step planning, edge case handling, and output precision under adversarial conditions. Every phase is scored independently so you can see not just how a model performs overall, but exactly where it breaks. Phase scores are aggregated into a single composite score. You can drill into any model's phase breakdown, compare runs across time, and watch for score drift — the quiet killer that happens when a model update degrades a capability you were depending on. The leaderboard AgentX-Ray maintains a live global leaderboard of frontier model performance. Official rankings are built from verified runs — benchmarks we run ourselves under controlled conditions, so the leaderboard can't be manipulated by cherry-picked submissions. Community runs sit alongside them for comparison, but verified scores are the canonical record. Current leaderboard includes Claude, GPT, Gemini, DeepSeek, Grok, Llama, and more — updated continuously as new models release and existing ones drift. Bring your own API key AgentX-Ray is BYOK — bring your own API key and run the gauntlet against any model you have access to. Your results are yours. You can keep them private, submit them to the community leaderboard, or use them internally to make deployment decisions with actual evidence behind them. Who it's for - AI engineers who need to compare models before committing to an integration - Startups evaluating which frontier model to build their product on - Enterprise teams running internal model governance and performance tracking - Researchers who need reproducible, adversarial benchmarks that can't be gamed - Anyone who's been burned by a benchmark score that didn't survive contact with real users Why it matters now Every major lab releases new models monthly. Every release claims state-of-the-art performance. Every benchmark shows improvement. And yet production failures keep happening because the benchmarks measure what models practiced, not what they can actually do. AgentX-Ray exists because trust in AI performance has to be earned with evidence — not inherited from a leaderboard someone else built for their own model. Run the gauntlet. See where your model breaks before your users do.
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We've been running models through this for months. Today we're opening the gauntlet to everyone. Bring your API key — the leaderboard doesn't lie.