import torch import ctypes from ctypes import c_uint64 from libinfiniop import ( LIBINFINIOP, TestTensor, get_test_devices, check_error, test_operator, get_args, debug, get_tolerance, profile_operation, TestWorkspace, InfiniDtype, InfiniDtypeNames, InfiniDeviceNames, infiniopOperatorDescriptor_t, ) from enum import Enum, auto # ============================================================================== # Configuration (Internal Use Only) # ============================================================================== # These are not meant to be imported from other modules _TEST_CASES_ = [ # shape, input_stride, output_stride ((13, 4), None, None), ((13, 4), (10, 1), (10, 1)), ((13, 4), (0, 1), None), ((13, 4, 4), None, None), ((13, 4, 4), (20, 4, 1), (20, 4, 1)), ((13, 4, 4), (4, 0, 1), None), ((16, 5632), None, None), ((16, 5632), (13312, 1), (13312, 1)), ((4, 4, 5632), None, None), ((4, 4, 5632), (45056, 5632, 1), (45056, 5632, 1)), ] class Inplace(Enum): OUT_OF_PLACE = auto() INPLACE = auto() # Inplace options applied for each test case in _TEST_CASES_ _INPLACE = [ Inplace.OUT_OF_PLACE, Inplace.INPLACE, ] # Form the test cases by appending each element of _INPLACE to each tuple in _TEST_CASES_ _TEST_CASES = [ test_case + (inplace_item,) for test_case in _TEST_CASES_ for inplace_item in _INPLACE ] # Data types used for testing _TENSOR_DTYPES = [InfiniDtype.BF16, InfiniDtype.F16, InfiniDtype.F32] # Tolerance map for different data types _TOLERANCE_MAP = { InfiniDtype.BF16: {"atol": 1e-2, "rtol": 1e-2}, InfiniDtype.F16: {"atol": 1e-3, "rtol": 1e-3}, InfiniDtype.F32: {"atol": 1e-7, "rtol": 1e-7}, InfiniDtype.F64: {"atol": 2.22e-15, "rtol": 2.22e-15}, } DEBUG = False PROFILE = False NUM_PRERUN = 10 NUM_ITERATIONS = 1000 def test( handle, device, shape, input_stride=None, output_stride=None, inplace=Inplace.OUT_OF_PLACE, dtype=torch.float16, sync=None, ): input = TestTensor(shape, input_stride, dtype, device) if inplace == Inplace.INPLACE: if input_stride != output_stride: return output = input else: output = TestTensor(shape, output_stride, dtype, device, mode="ones") if output.is_broadcast(): return print( f"Testing Silu on {InfiniDeviceNames[device]} with shape:{shape} input_stride:{input_stride} output_stride:{output_stride}" f"dtype:{InfiniDtypeNames[dtype]} inplace:{inplace}" ) new_output = torch.nn.functional.silu(input.torch_tensor()) output.update_torch_tensor(new_output) if sync is not None: sync() descriptor = infiniopOperatorDescriptor_t() check_error( LIBINFINIOP.infiniopCreateSiluDescriptor( handle, ctypes.byref(descriptor), output.descriptor, input.descriptor, ) ) # Invalidate the shape and strides in the descriptor to prevent them from being directly used by the kernel for tensor in [input, output]: tensor.destroy_desc() workspace_size = c_uint64(0) check_error( LIBINFINIOP.infiniopGetSiluWorkspaceSize( descriptor, ctypes.byref(workspace_size) ) ) workspace = TestWorkspace(workspace_size.value, output.device) def lib_silu(): check_error( LIBINFINIOP.infiniopSilu( descriptor, workspace.data(), workspace.size(), output.data(), input.data(), None, ) ) lib_silu() atol, rtol = get_tolerance(_TOLERANCE_MAP, dtype) if DEBUG: debug(output.actual_tensor(), output.torch_tensor(), atol=atol, rtol=rtol) assert torch.allclose( output.actual_tensor(), output.torch_tensor(), atol=atol, rtol=rtol ) # Profiling workflow if PROFILE: # fmt: off profile_operation("PyTorch", lambda: torch.nn.functional.silu(input.torch_tensor()), device, NUM_PRERUN, NUM_ITERATIONS) profile_operation(" lib", lambda: lib_silu(), device, NUM_PRERUN, NUM_ITERATIONS) # fmt: on check_error(LIBINFINIOP.infiniopDestroySiluDescriptor(descriptor)) if __name__ == "__main__": args = get_args() # Configure testing options DEBUG = args.debug PROFILE = args.profile NUM_PRERUN = args.num_prerun NUM_ITERATIONS = args.num_iterations for device in get_test_devices(args): test_operator(device, test, _TEST_CASES, _TENSOR_DTYPES) print("\033[92mTest passed!\033[0m")