{ "swiglu": { "seed": "./seeds/swiglu.yaml", "cases": { "2": { "values": { "K": 1024, "M": 4096, "N": 3072 }, "impls": [ { "task": "./reference/swiglu_M4096_N3072_K1024_numpy_2.py", "kernel": "./kernels/swiglu_M4096_N3072_K1024_0.py" } ] } } }, "matmul_add_rmsnorm": { "seed": "./seeds/matmul_add_rmsnorm.yaml", "cases": { "1": { "values": { "K": 2048, "M": 4096, "N": 2048 }, "impls": [ { "task": "./reference/matmul_add_rmsnorm_M4096_N2048_K2048_numpy_1.py", "kernel": "./kernels/matmul_add_rmsnorm_M4096_N2048_K2048_0.py" } ] } } }, "add_rmsnorm_matmul": { "seed": "./seeds/add_rmsnorm_matmul.yaml", "cases": { "2": { "values": { "K": 1024, "M": 4096, "N": 2048 }, "impls": [ { "task": "./reference/add_rmsnorm_matmul_M4096_N2048_K1024_numpy_1.py", "kernel": "./kernels/add_rmsnorm_matmul_M4096_N2048_K1024_0.py" } ] } } }, "matmul": { "seed": "./seeds/matmul.yaml", "cases": { "3": { "values": { "K": 5120, "M": 4096, "N": 12288 }, "impls": [ { "task": "./reference/matmul_M4096_N12288_K5120_numpy_2.py", "kernel": "./kernels/matmul_M4096_N12288_K5120_0.py" } ] } } }, "gqa_full": { "seed": "./seeds/gqa_full.yaml", "cases": { "0": { "values": { "B": 1, "D": 128, "KH": 8, "N": 4096, "QH": 16 }, "impls": [ { "task": "./reference/gqa_full_B1_N4096_QH16_KH8_D128_numpy_2.py", "kernel": "./kernels/gqa_full_B1_N4096_QH16_KH8_D128_0.py" } ] } } }, "rmsnorm_matmul": { "seed": "./seeds/rmsnorm_matmul.yaml", "cases": { "2": { "values": { "K": 1024, "M": 4096, "N": 2048 }, "impls": [ { "task": "./reference/rmsnorm_matmul_M4096_N2048_K1024_numpy_1.py", "kernel": "./kernels/rmsnorm_matmul_M4096_N2048_K1024_0.py" } ] } } }, "rope_single_freq_apply": { "seed": "./seeds/rope_single_freq_apply.yaml", "cases": { "1": { "values": { "B": 1, "H": 64, "N": 4096, "D": 128 }, "impls": [ { "task": "./reference/rope_single_freq_apply_B1_H64_N4096_D128_numpy_1.py", "kernel": "./kernels/rope_single_freq_apply_B1_H64_N4096_D128_0.py" } ] } } }, "bmm": { "seed": "./seeds/bmm.yaml", "cases": { "2": { "values": { "B": 16, "K": 64, "M": 4096, "N": 4096 }, "impls": [ { "task": "./reference/bmm_B16_M4096_K64_N4096_numpy_1.py", "kernel": "./kernels/bmm_B16_M4096_K64_N4096_0.py" } ] } } }, "bmm_softmax": { "seed": "./seeds/bmm_softmax.yaml", "cases": { "2": { "values": { "B": 16, "K": 64, "M": 4096, "N": 4096 }, "impls": [ { "task": "./reference/bmm_softmax_B16_K64_M4096_N4096_numpy_1.py", "kernel": "./kernels/bmm_softmax_B16_K64_M4096_N4096_0.py" } ] } } }, "transpose_matmul": { "seed": "./seeds/transpose_matmul.yaml", "cases": { "2": { "values": { "K": 2048, "M": 4096, "N": 10944 }, "impls": [ { "task": "./reference/transpose_matmul_M4096_K2048_N10944_numpy_1.py", "kernel": "./kernels/transpose_matmul_M4096_K2048_N10944_0.py" } ] } } }, "lora": { "seed": "./seeds/lora.yaml", "cases": { "2": { "values": { "K": 5120, "M": 4096, "N": 12288, "R": 128 }, "impls": [ { "task": "./reference/lora_M4096_N12288_K5120_R128_numpy_1.py", "kernel": "./kernels/lora_M4096_N12288_K5120_R128_0.py" } ] } } }, "adamw": { "seed": "./seeds/adamw.yaml", "cases": { "2": { "values": { "M": 10944, "N": 2048 }, "impls": [ { "task": "./reference/adamw_M10944_N2048_numpy_1.py", "kernel": "./kernels/adamw_M10944_N2048_0.py" } ] } } }, "silu": { "seed": "./seeds/silu.yaml", "cases": { "2": { "values": { "M": 4096, "N": 7168 }, "impls": [ { "task": "./reference/silu_M4096_N7168_numpy_0.py", "kernel": "./kernels/silu_M4096_N7168_0.py" } ] } } }, "mamba": { "seed": "./seeds/mamba.yaml", "cases": { "2": { "values": { "C": 256, "M": 7168, "S": 16 }, "impls": [ { "task": "./reference/mamba_M7168_C256_S16_numpy_1.py", "kernel": "./kernels/mamba_M7168_C256_S16_0.py" } ] } } } }