Slides: Trends Across the AI Frontier — George Cameron, ArtificialAnalysis.ai
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Trends Across the AI Frontier — George Cameron, ArtificialAnalysis.ai
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Extracted Slides

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World'sFair
Engineering the future of Al

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] Frontier Intelligence: OpenAl, Google , DeepSeek and xAl lead frontier intelligence with
their latest reasoning models, followed closely by other labs
Leading Large Language Model (LLMs), by Al lab
Artticial Analysis Intelligence index (incorporates MMLU-Pro, GPQA, Humanity’s Last Exam, LivoCodeBench, SciCode, AME, MATH-500)
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1) Reasoning vs. Non-reasoning |
j Reasoning models: Treating reasoning & non-reasoning models as distinct categories is
a helpful framework for understanding today’s model landscape
Intelligence vs. Output Tokens Used to Run Artificial Analysis Intelligence Index
Artificial Analysis intelligence index (Version 2, released Feb 25), Output Tokens Used (~SM input tokens)
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J Overall cost is a function of both cost per token and tokens per query; we now see a
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Cost to Run Artificial Analysis Intelligence Index
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