swiglu.py 5.17 KB
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import torch
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import ctypes
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from ctypes import POINTER, Structure, c_int32, c_size_t, c_uint64, c_void_p, c_float
from libinfiniop import (
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    infiniopHandle_t,
    infiniopTensorDescriptor_t,
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    open_lib,
    to_tensor,
    get_test_devices,
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    check_error,
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    rearrange_if_needed,
    create_workspace,
    test_operator,
    get_args,
    debug,
    get_tolerance,
    profile_operation,
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)
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from enum import Enum, auto
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# ==============================================================================
#  Configuration (Internal Use Only)
# ==============================================================================
# These are not meant to be imported from other modules
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_TEST_CASES_ = [
    ((13, 4), None, None, None),
    ((13, 4), (10, 1), (10, 1), (10, 1)),
    ((13, 4, 4), None, None, None),
    ((13, 4, 4), (20, 4, 1), (20, 4, 1), (20, 4, 1)),
    ((16, 5632), None, None, None),
    ((16, 5632), (13312, 1), (13312, 1), (13312, 1)),
    ((4, 4, 5632), None, None, None),
    ((4, 4, 5632), (45056, 5632, 1), (45056, 5632, 1), (45056, 5632, 1)),
]

# Inplace options applied for each test case in _TEST_CASES_
_INPLACE = [
    "Inplace.OUT_OF_PLACE",
    "Inplace.INPLACE_A",
    "Inplace.INPLACE_B",
]

# Form the test cases by appending each element of _INPLACE to each tuple in _TEST_CASES_
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_TEST_CASES = [
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    test_case + (inplace_item,)
    for test_case in _TEST_CASES_
    for inplace_item in _INPLACE
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]
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# Data types used for testing
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_TENSOR_DTYPES = [torch.float16]
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# Tolerance map for different data types
_TOLERANCE_MAP = {
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    torch.float16: {"atol": 1e-4, "rtol": 1e-2},
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}

DEBUG = False
PROFILE = False
NUM_PRERUN = 10
NUM_ITERATIONS = 1000
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class Inplace(Enum):
    OUT_OF_PLACE = auto()
    INPLACE_A = auto()
    INPLACE_B = auto()


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class SwiGLUDescriptor(Structure):
    _fields_ = [("device", c_int32)]


infiniopSwiGLUDescriptor_t = POINTER(SwiGLUDescriptor)


def swiglu(a, b):
    return a * b / (1 + torch.exp(-b.float()).to(b.dtype))

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def test(
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    lib,
    handle,
    torch_device,
    shape,
    a_stride=None,
    b_stride=None,
    c_stride=None,
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    inplace=Inplace.OUT_OF_PLACE,
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    dtype=torch.float16,
    sync=None,
):
    print(
        f"Testing SwiGLU on {torch_device} with shape:{shape} a_stride:{a_stride} b_stride:{b_stride} c_stride:{c_stride} dtype:{dtype}"
    )
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    a = torch.rand(shape, dtype=dtype).to(torch_device)
    b = torch.rand(shape, dtype=dtype).to(torch_device)
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    c = (
        torch.rand(c_shape, dtype=tensor_dtype).to(torch_device)
        if inplace == Inplace.OUT_OF_PLACE
        else (a if inplace == Inplace.INPLACE_A else b)
    )
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    ans = swiglu(a, b)

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    a, b, c = [
        rearrange_if_needed(tensor, stride)
        for tensor, stride in zip([a, b, c], [a_stride, b_stride, c_stride])
    ]
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    a_tensor, b_tensor = [to_tensor(tensor, lib) for tensor in [a, b]]
    c_tensor = (
        to_tensor(c, lib)
        if inplace == Inplace.OUT_OF_PLACE
        else (a_tensor if inplace == Inplace.INPLACE_A else b_tensor)
    )
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    if sync is not None:
        sync()

    descriptor = infiniopSwiGLUDescriptor_t()
    check_error(
        lib.infiniopCreateSwiGLUDescriptor(
            handle,
            ctypes.byref(descriptor),
            c_tensor.descriptor,
            a_tensor.descriptor,
            b_tensor.descriptor,
        )
    )

    # Invalidate the shape and strides in the descriptor to prevent them from being directly used by the kernel
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    for tensor in [a_tensor, b_tensor, c_tensor]:
        tensor.descriptor.contents.invalidate()

    def lib_swiglu():
        check_error(
            lib.infiniopSwiGLU(
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                descriptor, c_tensor.data, a_tensor.data, b_tensor.data, None
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            )
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        )
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    lib_swiglu()
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    atol, rtol = get_tolerance(_TOLERANCE_MAP, dtype)
    if DEBUG:
        debug(c, ans, atol=atol, rtol=rtol)
    assert torch.allclose(c, ans, atol=atol, rtol=rtol)
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    # Profiling workflow
    if PROFILE:
        # fmt: off
        profile_operation("PyTorch", lambda: swiglu(a, b), torch_device, NUM_PRERUN, NUM_ITERATIONS)
        profile_operation("    lib", lambda: lib_swiglu(), torch_device, NUM_PRERUN, NUM_ITERATIONS)
        # fmt: on
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    check_error(lib.infiniopDestroySwiGLUDescriptor(descriptor))


if __name__ == "__main__":
    args = get_args()
    lib = open_lib()

    lib.infiniopCreateSwiGLUDescriptor.restype = c_int32
    lib.infiniopCreateSwiGLUDescriptor.argtypes = [
        infiniopHandle_t,
        POINTER(infiniopSwiGLUDescriptor_t),
        infiniopTensorDescriptor_t,
        infiniopTensorDescriptor_t,
        infiniopTensorDescriptor_t,
    ]

    lib.infiniopSwiGLU.restype = c_int32
    lib.infiniopSwiGLU.argtypes = [
        infiniopSwiGLUDescriptor_t,
        c_void_p,
        c_void_p,
        c_void_p,
        c_void_p,
    ]

    lib.infiniopDestroySwiGLUDescriptor.restype = c_int32
    lib.infiniopDestroySwiGLUDescriptor.argtypes = [
        infiniopSwiGLUDescriptor_t,
    ]
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    # Configure testing options
    DEBUG = args.debug
    PROFILE = args.profile
    NUM_PRERUN = args.num_prerun
    NUM_ITERATIONS = args.num_iterations
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    for device in get_test_devices(args):
        test_operator(lib, device, test, _TEST_CASES, _TENSOR_DTYPES)
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    print("\033[92mTest passed!\033[0m")