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random_sample.py
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232 lines (197 loc) · 6.89 KB
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from ctypes import POINTER, Structure, c_int32, c_uint64, c_void_p, c_float
import ctypes
import sys
import os
sys.path.insert(0, os.path.abspath(os.path.join(os.path.dirname(__file__), "..", "..")))
from operatorspy import (
open_lib,
to_tensor,
DeviceEnum,
infiniopHandle_t,
infiniopTensorDescriptor_t,
create_handle,
destroy_handle,
check_error,
rearrange_tensor,
create_workspace,
U64,
)
from operatorspy.tests.test_utils import get_args
import torch
class RandomSampleDescriptor(Structure):
_fields_ = [("device", c_int32)]
infiniopRandomSampleDescriptor_t = POINTER(RandomSampleDescriptor)
def random_sample(data, random_val, topp, topk, voc, temperature, torch_device):
if(torch_device == "cuda"):
indices = torch.zeros([topk], dtype = torch.uint64)
else:
indices = torch.zeros([topk], dtype = torch.int64)
dataNp = data.clone().detach()
sorted_indices = torch.arange(voc)
for i in range(topk):
for j in range(i + 1, voc):
if(dataNp[i] < dataNp[j]):
tmp = dataNp[i].clone().detach()
dataNp[i] = dataNp[j].clone().detach()
dataNp[j] = tmp
tmpInd = sorted_indices[i].clone().detach()
sorted_indices[i] = sorted_indices[j].clone().detach()
sorted_indices[j] = tmpInd
#sorted_indices = torch.argsort(dataNp, descending=True)
indices = sorted_indices[:topk]
dataNp = dataNp[sorted_indices]
globalM = dataNp[0]
dataNp = (dataNp - globalM) / temperature
dataNp = torch.softmax(dataNp, dim = 0)
sum_s = 0
for end in range(topk):
sum_s += dataNp[end]
if(sum_s >= topp):
break
if(end < topk - 1):
end += 1
else:
end = topk
sum_s = 0
for i in range(end):
sum_s += dataNp[i]
random_val *= sum_s
sum_s = 0
for i in range(end):
sum_s += dataNp[i]
if(random_val < sum_s):
return indices[i]
def random_sample_0(data):
return torch.argmax(data)
def test(lib, handle, torch_device, voc, random_val, topp, topk, temperature, x_dtype=torch.float16):
print(
f"Testing RandomSample on {torch_device} with voc:{voc} dtype:{x_dtype}"
)
data = torch.arange(voc).float() * 0.0001
_perm = torch.randperm(voc)
data = data[_perm].to(x_dtype).to(torch_device)
if(topp > 0 and topk > 1):
ans = random_sample(data.to("cpu"), random_val, topp, topk, voc, temperature, "cpu")
else:
ans = random_sample_0(data)
if(torch_device != "cuda"):
indices = torch.zeros([1], dtype = torch.int64).to(torch_device)
else:
indices = torch.zeros([1], dtype = torch.uint64).to(torch_device)
x_tensor = to_tensor(data, lib)
indices_tensor = to_tensor(indices, lib)
if(torch_device != 'cuda'):
indices_tensor.descriptor.contents.dt = U64 # treat int64 as uint64
descriptor = infiniopRandomSampleDescriptor_t()
check_error(
lib.infiniopCreateRandomSampleDescriptor(
handle, ctypes.byref(descriptor), indices_tensor.descriptor, x_tensor.descriptor
)
)
workspace_size = c_uint64(0)
check_error(
lib.infiniopGetRandomSampleWorkspaceSize(
descriptor, ctypes.byref(workspace_size)
)
)
workspace = create_workspace(workspace_size.value, torch_device)
check_error(
lib.infiniopRandomSample(
descriptor,
workspace.data_ptr() if workspace is not None else None,
workspace_size.value,
indices_tensor.data,
x_tensor.data,
random_val,
topp,
topk,
temperature,
None,
)
)
if torch_device == "npu":
torch.npu.synchronize()
assert indices[0].type(ans.dtype) == ans or data[ans] == data[indices[0]]
check_error(lib.infiniopDestroyRandomSampleDescriptor(descriptor))
print("Test passed!")
def test_cpu(lib, test_cases):
device = DeviceEnum.DEVICE_CPU
handle = create_handle(lib, device)
for (voc, random_val, topp, topk, temperature) in test_cases:
test(lib, handle, "cpu", voc, random_val, topp, topk, temperature)
destroy_handle(lib, handle)
def test_cuda(lib, test_cases):
device = DeviceEnum.DEVICE_CUDA
handle = create_handle(lib, device)
for (voc, random_val, topp, topk, temperature) in test_cases:
test(lib, handle, "cuda", voc, random_val, topp, topk, temperature)
destroy_handle(lib, handle)
def test_bang(lib, test_cases):
import torch_mlu
device = DeviceEnum.DEVICE_BANG
handle = create_handle(lib, device)
for (voc, random_val, topp, topk, temperature) in test_cases:
test(lib, handle, "mlu", voc, random_val, topp, topk, temperature)
destroy_handle(lib, handle)
def test_ascend(lib, test_cases):
import torch_npu
device = DeviceEnum.DEVICE_ASCEND
handle = create_handle(lib, device)
for (voc, random_val, topp, topk, temperature) in test_cases:
test(lib, handle, "npu", voc, random_val, topp, topk, temperature)
destroy_handle(lib, handle)
if __name__ == "__main__":
test_cases = [
# voc, random_val, topp, topk, temperature
(512, 0.8, 0.8, 3, 0.5),
(4096, 0.05, 0.9, 5, 1.0),
(16384, 0.15, 0.85, 10, 2.0),
(512, 0.08, 0, 3, 0.5),
(4096, 0.5, 0.9, 1, 1.0),
(16384, 0.15, 0, 1, 2.0),
(16384, 0.15, 0, 1, 2.0),
(32000, 0.08, 0.8, 50, 1.0),
(32000, 0.08, 1.0, 25, 1.0),
# (119696, 0.01, 1.0, 100, 1.0),
]
args = get_args()
lib = open_lib()
lib.infiniopCreateRandomSampleDescriptor.restype = c_int32
lib.infiniopCreateRandomSampleDescriptor.argtypes = [
infiniopHandle_t,
POINTER(infiniopRandomSampleDescriptor_t),
infiniopTensorDescriptor_t,
]
lib.infiniopGetRandomSampleWorkspaceSize.restype = c_int32
lib.infiniopGetRandomSampleWorkspaceSize.argtypes = [
infiniopRandomSampleDescriptor_t,
POINTER(c_uint64),
]
lib.infiniopRandomSample.restype = c_int32
lib.infiniopRandomSample.argtypes = [
infiniopRandomSampleDescriptor_t,
c_void_p,
c_uint64,
c_uint64,
c_void_p,
c_float,
c_float,
c_int32,
c_float,
c_void_p,
]
lib.infiniopDestroyRandomSampleDescriptor.restype = c_int32
lib.infiniopDestroyRandomSampleDescriptor.argtypes = [
infiniopRandomSampleDescriptor_t,
]
if args.cpu:
test_cpu(lib, test_cases)
if args.cuda:
test_cuda(lib, test_cases)
if args.bang:
test_bang(lib, test_cases)
if args.ascend:
test_ascend(lib, test_cases)
if not (args.cpu or args.cuda or args.bang or args.ascend):
test_cpu(lib, test_cases)
print("\033[92mTest passed!\033[0m")