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Testing GPT-4-o1-preview on math and science problems: A follow-up study

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arxiv 2410.22340 v1 pith:74TGJUIY submitted 2024-10-11 cs.CY cs.AI

Testing GPT-4-o1-preview on math and science problems: A follow-up study

classification cs.CY cs.AI
keywords problemsaaronsoncollectionmathsciencetestingalphaaugust
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In August 2023, Scott Aaronson and I reported the results of testing GPT4 with the Wolfram Alpha and Code Interpreter plug-ins over a collection of 105 original high-school level and college-level science and math problems (Davis and Aaronson, 2023). In September 2024, I tested the recently released model GPT-4o1-preview on the same collection. Overall I found that performance had significantly improved, but was still considerably short of perfect. In particular, problems that involve spatial reasoning are often stumbling blocks.

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