cutlass/test/python/gemm/gemm_s8_sm80.py
ANIKET SHIVAM 4575443d44
CUTLASS 3.2 (#1024)
* CUTLASS 3.2
2023-08-07 20:50:32 -04:00

100 lines
5.2 KiB
Python

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"""
Low-level functionality tests for GEMM with S8 operands on SM80
"""
from functools import partial
import cutlass
import logging
import unittest
from cutlass.backend.test.utils import LayoutCombination, add_test_gemm
from cutlass.backend.utils.device import device_cc
cutlass.set_log_level(logging.WARNING)
cc = 80
@unittest.skipIf(device_cc() < cc, 'Device compute capability is insufficient for SM80 tests.')
class GemmS8Sm80(unittest.TestCase):
"""
Wrapper class to which tests will be added dynamically in __main__
"""
pass
@unittest.skipIf(device_cc() < cc, 'Device compute capability is insufficient for SM80 tests.')
class GemmS8Sm80StreamK(unittest.TestCase):
"""
Wrapper class to which tests will be added dynamically in __main__
"""
pass
add_test_specialized = partial(add_test_gemm, element=cutlass.DataType.s8, cc=cc, cluster_shape=[1, 1, 1])
# Tests using TensorOp
add_test_tensorop = partial(add_test_specialized, opclass=cutlass.OpcodeClass.TensorOp)
add_test_tensorop(cls=GemmS8Sm80, layouts=LayoutCombination.TNN, alignments=[16, 16, 16], element_output=cutlass.DataType.s8,
element_accumulator=cutlass.DataType.s32, threadblock_shape=[256, 128, 64], warp_count=[4, 2, 1], stages=3)
add_test_tensorop(cls=GemmS8Sm80, layouts=LayoutCombination.TNT, alignments=[16, 16, 16], element_output=cutlass.DataType.s8,
element_accumulator=cutlass.DataType.s32, threadblock_shape=[128, 256, 64], warp_count=[2, 4, 1], stages=3)
add_test_tensorop(cls=GemmS8Sm80, layouts=LayoutCombination.TNN, alignments=[16, 16, 4], element_output=cutlass.DataType.s32,
element_accumulator=cutlass.DataType.s32, threadblock_shape=[ 64, 64, 64], warp_count=[1, 1, 1], stages=4)
# Tests using SIMT
add_test_simt = partial(add_test_specialized, opclass=cutlass.OpcodeClass.Simt)
add_test_simt(cls=GemmS8Sm80, layouts=LayoutCombination.NNN, alignments=[1, 1, 1], element_output=cutlass.DataType.s8,
element_accumulator=cutlass.DataType.s32, threadblock_shape=[128, 128, 8], warp_count=[2, 2, 1], stages=2)
add_test_simt(cls=GemmS8Sm80, layouts=LayoutCombination.TNN, alignments=[1, 1, 1], element_output=cutlass.DataType.s8,
element_accumulator=cutlass.DataType.s32, threadblock_shape=[ 64, 128, 8], warp_count=[1, 2, 1], stages=2)
add_test_simt(cls=GemmS8Sm80, layouts=LayoutCombination.NTN, alignments=[1, 1, 1], element_output=cutlass.DataType.s8,
element_accumulator=cutlass.DataType.s32, threadblock_shape=[128, 64, 8], warp_count=[2, 1, 1], stages=2)
add_test_simt(cls=GemmS8Sm80, layouts=LayoutCombination.TTN, alignments=[1, 1, 1], element_output=cutlass.DataType.s32,
element_accumulator=cutlass.DataType.s32, threadblock_shape=[ 64, 64, 8], warp_count=[1, 1, 1], stages=2)
add_test_simt(cls=GemmS8Sm80, layouts=LayoutCombination.NNT, alignments=[1, 1, 1], element_output=cutlass.DataType.s32,
element_accumulator=cutlass.DataType.s32, threadblock_shape=[128, 128, 8], warp_count=[2, 2, 1], stages=2)
# Stream K tests
add_test_streamk = partial(add_test_specialized, opclass=cutlass.OpcodeClass.TensorOp, swizzle=cutlass.swizzle.ThreadblockSwizzleStreamK)
add_test_streamk(cls=GemmS8Sm80StreamK, layouts=LayoutCombination.TNT, alignments=[16, 16, 16], element_output=cutlass.DataType.s8,
element_accumulator=cutlass.DataType.s32, threadblock_shape=[128, 256, 64], warp_count=[2, 4, 1], stages=3)
if __name__ == '__main__':
unittest.main()