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by swid
192 days ago
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It surely is different. If you set the temp to 0 and do the test with slightly different wording, there is no guarantee at all the scores would be consistent. And if an LLM is consistent, even with a high temp, it could give the same PR the same grade while choosing different words to say. The tokens are still chosen from the distribution, so a higher probability of the same grade will result in the same grade being chosen regardless of the temp set. |
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The model could "assess" the code qualitatively the same and still give slightly different letter grades.