[tests] Parameterized test_eager_matches_sdpa_inference (#36650)

This commit is contained in:
Joao Gante
2025-03-14 14:41:27 +00:00
committed by GitHub
parent 9215cc62d4
commit 42ebb6c23e
16 changed files with 285 additions and 1900 deletions

View File

@@ -14,20 +14,15 @@
# limitations under the License.
"""Testing suite for the PyTorch BEiT model."""
import inspect
import tempfile
import unittest
import numpy as np
from datasets import load_dataset
from packaging import version
from parameterized import parameterized
from transformers import BeitConfig
from transformers.testing_utils import (
require_torch,
require_torch_multi_gpu,
require_torch_sdpa,
require_vision,
slow,
torch_device,
@@ -35,14 +30,12 @@ from transformers.testing_utils import (
from transformers.utils import (
cached_property,
is_torch_available,
is_torch_bf16_available_on_device,
is_torch_fp16_available_on_device,
is_vision_available,
)
from ...test_backbone_common import BackboneTesterMixin
from ...test_configuration_common import ConfigTester
from ...test_modeling_common import ModelTesterMixin, _config_zero_init, floats_tensor, ids_tensor, sdpa_kernel
from ...test_modeling_common import ModelTesterMixin, _config_zero_init, floats_tensor, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
@@ -119,6 +112,7 @@ class BeitModelTester:
# in BeiT, the seq length equals the number of patches + 1 (we add 1 for the [CLS] token)
num_patches = (image_size // patch_size) ** 2
self.seq_length = num_patches + 1
self.mask_length = self.seq_length - 1
self.num_masks = int(mask_ratio * self.seq_length)
self.attn_implementation = attn_implementation
@@ -414,193 +408,6 @@ class BeitModelTest(ModelTesterMixin, PipelineTesterMixin, unittest.TestCase):
model = BeitModel.from_pretrained(model_name)
self.assertIsNotNone(model)
@parameterized.expand([("float16",), ("bfloat16",), ("float32",)])
@require_torch_sdpa
def test_eager_matches_sdpa_inference(self, torch_dtype: str):
# The common test modifies the num_hidden_layers to be 1. However, for Beit we want to
# avoid that because the num_hidden_layers is generally assumed to be 4. Also, the code
# related to attention masks in the original common tests is not required as the Beit
# model does not handle attention masks. Furthermore, some extra code like modifying
# the norm layers eps values for specialized configs and checking for the 'noise'
# has been omitted to simply the test.
if not self.has_attentions:
self.skipTest(reason="Model architecture does not support attentions")
if not self.all_model_classes[0]._supports_sdpa:
self.skipTest(f"{self.all_model_classes[0].__name__} does not support SDPA")
if torch_dtype == "float16" and not is_torch_fp16_available_on_device(torch_device):
self.skipTest(f"float16 not supported on {torch_device} (on the specific device currently used)")
if torch_dtype == "bfloat16" and not is_torch_bf16_available_on_device(torch_device):
self.skipTest(
f"bfloat16 not supported on {torch_device} (on the specific device currently used, e.g. Nvidia T4 GPU)"
)
# Not sure whether it's fine to put torch.XXX in a decorator if torch is not available so hacking it here instead.
if torch_dtype == "float16":
torch_dtype = torch.float16
elif torch_dtype == "bfloat16":
torch_dtype = torch.bfloat16
elif torch_dtype == "float32":
torch_dtype = torch.float32
atols = {
("cpu", False, torch.float32): 1e-6,
("cpu", False, torch.float16): 5e-3,
("cpu", False, torch.bfloat16): 1e-2,
("cpu", True, torch.float32): 1e-6,
("cpu", True, torch.float16): 5e-3,
("cpu", True, torch.bfloat16): 1e-2,
("cuda", False, torch.float32): 1e-6,
("cuda", False, torch.bfloat16): 1e-2,
("cuda", False, torch.float16): 5e-3,
("cuda", True, torch.float32): 1e-6,
("cuda", True, torch.bfloat16): 1e-2,
("cuda", True, torch.float16): 5e-3,
}
rtols = {
("cpu", False, torch.float32): 1e-4,
("cpu", False, torch.float16): 5e-3,
("cpu", False, torch.bfloat16): 1e-2,
("cpu", True, torch.float32): 1e-4,
("cpu", True, torch.float16): 5e-3,
("cpu", True, torch.bfloat16): 1e-2,
("cuda", False, torch.float32): 1e-4,
("cuda", False, torch.bfloat16): 1e-2,
("cuda", False, torch.float16): 5e-3,
("cuda", True, torch.float32): 1e-4,
("cuda", True, torch.bfloat16): 3e-2,
("cuda", True, torch.float16): 5e-3,
}
def get_mean_reldiff(failcase, x, ref, atol, rtol):
return f"{failcase}: mean relative difference: {((x - ref).abs() / (ref.abs() + 1e-12)).mean():.3e}, torch atol = {atol}, torch rtol = {rtol}"
for model_class in self.all_model_classes:
config, inputs_dict = self.model_tester.prepare_config_and_inputs_for_common()
config.rms_norm_eps = 1.0
config.layer_norm_eps = 1.0
config.norm_eps = 1.0
config.norm_epsilon = 1.0
config.layer_norm_epsilon = 1.0
model = model_class(config)
with tempfile.TemporaryDirectory() as tmpdirname:
model.save_pretrained(tmpdirname)
model_sdpa = model_class.from_pretrained(tmpdirname, torch_dtype=torch_dtype, use_mask_token=True)
model_sdpa = model_sdpa.eval().to(torch_device, dtype=torch_dtype)
model_eager = model_class.from_pretrained(
tmpdirname,
torch_dtype=torch_dtype,
attn_implementation="eager",
use_mask_token=True,
)
model_eager = model_eager.eval().to(torch_device, dtype=torch_dtype)
# Another way to make sure norm layers have desired epsilon. (Some models don't set it from its config.)
for x in model_eager.modules():
if isinstance(x, (nn.LayerNorm, nn.GroupNorm)):
x.eps = 1.0
for x in model_sdpa.modules():
if isinstance(x, (nn.LayerNorm, nn.GroupNorm)):
x.eps = 1.0
# We use these for loops instead of parameterized.expand just for the interest of avoiding loading/saving 16 times the model,
# but it would be nicer to have an efficient way to use parameterized.expand
fail_cases = []
for padding_side in ["left", "right"]:
for use_mask in [False, True]:
for output_attentions in [True, False]:
can_output_attn = "output_attentions" in inspect.signature(model_sdpa.forward).parameters
if not (self.has_attentions and can_output_attn) and output_attentions:
continue
# TODO: if we can also check with `batch_size=1` without being flaky?
for batch_size in [7]:
dummy_input = inputs_dict[model.main_input_name]
if dummy_input.dtype in [torch.float32, torch.bfloat16, torch.float16]:
dummy_input = dummy_input.to(torch_dtype)
dummy_input = dummy_input[:batch_size]
for enable_kernels in [False, True]:
failcase = f"padding_side={padding_side}, use_mask={use_mask}, enable_kernels={enable_kernels}"
processed_inputs = {
model.main_input_name: dummy_input,
"output_hidden_states": True,
}
if (
self.has_attentions
and "output_attentions" in inspect.signature(model_sdpa.forward).parameters
):
processed_inputs["output_attentions"] = output_attentions
if "bool_masked_pos" in inspect.signature(model_eager.forward).parameters:
dummy_mask = torch.ones((self.model_tester.num_masks,))
mask_length = self.model_tester.seq_length - 1 - dummy_mask.size(0)
dummy_mask = torch.cat([dummy_mask, torch.zeros(mask_length)])
dummy_bool_masked_pos = dummy_mask.expand(batch_size, -1).bool()
processed_inputs["bool_masked_pos"] = dummy_bool_masked_pos.to(torch_device)
with torch.no_grad():
with sdpa_kernel(
enable_flash=enable_kernels,
enable_math=True,
enable_mem_efficient=enable_kernels,
):
prepared_inputs = self._prepare_for_class(processed_inputs, model_class)
outputs_eager = model_eager(**prepared_inputs)
outputs_sdpa = model_sdpa(**prepared_inputs)
logits_eager = outputs_eager.hidden_states[-1]
logits_sdpa = outputs_sdpa.hidden_states[-1]
if torch_device in ["cpu", "cuda"]:
atol = atols[torch_device, enable_kernels, torch_dtype]
rtol = rtols[torch_device, enable_kernels, torch_dtype]
elif torch_device == "xpu":
# As of PyTorch 2.5 XPU backend supports only torch.nn.attention.SDPBackend.MATH
# which is implemented on PyTorch level using aten operators and is
# device agnostic with respect to implementation of each aten operator.
atol = atols["cuda", False, torch_dtype]
rtol = rtols["cuda", False, torch_dtype]
else:
atol = 1e-7
rtol = 1e-4
# Masked tokens output slightly deviates - we don't mind that.
if use_mask:
_logits_sdpa = torch.zeros_like(input=logits_sdpa)
_logits_eager = torch.zeros_like(input=logits_eager)
_logits_sdpa[:-1] = logits_sdpa[:-1]
_logits_eager[:-1] = logits_eager[:-1]
if padding_side == "left":
_logits_sdpa[-1:, 2:] = logits_sdpa[-1:, 2:]
_logits_eager[-1:, 2:] = logits_eager[-1:, 2:]
elif padding_side == "right":
_logits_sdpa[-1:, 2:] = logits_sdpa[-1:, :-2]
_logits_eager[-1:, 2:] = logits_eager[-1:, :-2]
logits_sdpa = _logits_sdpa
logits_eager = _logits_eager
results = [
torch.allclose(_logits_sdpa, _logits_eager, atol=atol, rtol=rtol)
for (_logits_sdpa, _logits_eager) in zip(logits_sdpa, logits_eager)
]
# If 80% batch elements have matched results, it's fine
if np.mean(results) < 0.8:
fail_cases.append(
get_mean_reldiff(failcase, logits_sdpa, logits_eager, atol, rtol)
)
self.assertTrue(len(fail_cases) == 0, "\n".join(fail_cases))
# We will verify our results on an image of cute cats
def prepare_img():