[Don't Merge] KernelAgent-generated kernels - V2#201
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kaiming-cheng wants to merge 1 commit intomainfrom
Open
[Don't Merge] KernelAgent-generated kernels - V2#201kaiming-cheng wants to merge 1 commit intomainfrom
kaiming-cheng wants to merge 1 commit intomainfrom
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For tracking, can you share the commit hash these were tested on? |
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@kaiming-cheng We focus on testing fp16/bf16 dtypes for triton kernels on GPU. Pls reference this PR: #111 |
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This PR introduced an updated version of kernel-agent-generated kernels on a difficult set of problem. Previously, KernelAgent failed to generate correct kernels on the 25 ops below. In this version, the average correctness score is 0.69, with 14 ops reached 100% correctness (56% pass rate). This PR serves as a reference for the generated kernel implementations.
Experiment Results
Average Correctness Ratio: 0.69
14 out of 25 kernels reached 100% correctness