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A popular evaluation framework for code generation models is the [pass@k](https://huggingface.co/metrics/code_eval) metric on [HumanEval](https://huggingface.co/datasets/openai_humaneval) dataset, which was introduced in [Codex paper](https://arxiv.org/pdf/2107.03374v2.pdf). The dataset includes 164 handwritten programming problems. In the pass@k metric, k code samples are generated per problem, and a problem is considered solved if any sample passes the unit tests and the total fraction of problems solved is reported. | |
In most papers, 200 candidate program completions are sampled, and pass@1, pass@10, and pass@100 are computed using an unbiased sampling estimator. Table 1 below shows the HumanEval scores of CodeParrot, InCoder, PolyCoder, CodeGen and Codex (not open-source). | |
<div align="center"> | |
Model | pass@1 | pass@10 | pass@100| | |
|-------|--------|---------|---------| | |
|CodeParrot (110M) | 3.80% | 6.57% | 12.78% | | |
|CodeParrot (1.5B) | 3.58% | 8.03% | 14.96% | | |
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|InCoder (6.7B) | 15.2% | 27.8% | 47.00% | | |
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|PolyCoder (160M)| 2.13% | 3.35% | 4.88% | | |
|PolyCoder (400M)| 2.96% | 5.29% | 11.59% | | |
|PolyCoder (2.7B)| 5.59% | 9.84% | 17.68% | | |
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|CodeGen-Mono (350M)| 12.76% | 23.11% | 35.19% | | |
|CodeGen-Mono (2.7B)| 23.70% | 36.64% | 57.01% | | |
|CodeGen-Mono (16.1B)| **29.28%** | **49.86%** | **75.00%** | | |
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|Codex (25M)| 3.21% | 7.1% | 12.89%| | |
|Codex (300M)| 13.17%| 20.37% | 36.27% | | |
|Codex (12B)| 28.81%| 46.81% | 72.31% | | |
</div> |