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OpenAI · proprietary

GPT-5.2

GPT-5.2 by OpenAI appears in 2 sources with Reasoning at 53.54. Best read for Code quality, Coding, LLM.

CreatorOpenAI
Release date2025-12-11
Knowledge cutoffNot published
Context400K tokens
Input price$1.75/M tokens
Output price$14/M tokens
Modalitytext + vision
CountryUS

Metrics

All source-backed metrics

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LLM Stats Rank13ranking · source_rank
Reasoning53.54reasoning · index_reasoning
Math50.09math · index_math
Coding34.61coding · index_code
Research26.09research · index_search
Writing33.06writing · index_communication
Vision34.73multimodal · index_vision
Tool calling27.73tool_calling · index_tool_calling
Healthcare43.89domain · index_healthcare
GPQA92.4 %reasoning · gpqa_score
AIME 2025100 %math · aime_2025_score
SWE-bench Verified80 %coding · swe_bench_verified_score
Code Arena1,519.42 %coding · coding_arena_score
Humanity Last Exam34.5 %reasoning · hle_score
ARC-AGI v252.9 %reasoning · arc_agi_v2_score
MMMLU89.6 %reasoning · mmmlu_score
MMMU-Pro79.5 %multimodal · mmmu_pro_score
BrowseComp65.8 %research · browsecomp_score
Toolathlon46.3 %tool_calling · toolathlon_score
MCP Atlas60.6 %tool_calling · mcp_atlas_score
FrontierMath40.3 %math · frontiermath_score
CharXiv-R82.1 %multimodal · charxiv_r_score
ScreenSpot Pro86.3 %multimodal · screenspot_pro_score
Context400,000 tokenscontext · context
Speed181.45 c/sperformance · throughput
Latency25,092 msperformance · latency
Input price1.75 $/Mpricing · input_price
Output price14 $/Mpricing · output_price
GPQA Diamond92.4 %metric
AIME 2025100 %metric
SWE-Bench Verified80 %metric

Evidence

Citations and source overlap

FAQ

How should I read this profile?

Treat this as a source-backed model dossier, not an EvalKit-run verification. The public values are replicated from linked sources and kept source-scoped.

Is GPT-5.2 verified by EvalKit?

No. EvalKit currently shows 0 verified rows until real run evidence exists.

Why can metrics disagree?

Different sources test different tasks, dates, prompts, and aggregation methods. EvalKit keeps those differences visible instead of merging them into a fake universal score.