Files
FastDeploy/custom_ops/xpu_ops/test/test_speculate_get_logits.py
T
RuohengMa 12c76f8137 [XPU] add speculate_get_logits (#5497)
* [XPU] add speculate_step_system_cache

* [XPU] add speculate_step_system_cache

* [XPU] add speculate_get_logits

* delete context

* add ptr check

---------

Co-authored-by: cmcamdy <1027740945@qq.com>
Co-authored-by: YuBaoku <49938469+EmmonsCurse@users.noreply.github.com>
2025-12-12 15:38:30 +08:00

173 lines
6.5 KiB
Python

# Copyright (c) 2025 PaddlePaddle Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import unittest
import numpy as np
import paddle
from fastdeploy.model_executor.ops.xpu import speculate_get_logits
# 固定随机种子,保证测试可复现
np.random.seed(2023)
paddle.seed(2023)
def generate_test_data():
"""
生成测试数据的辅助函数。
这部分逻辑从 pytest 的 fixture 转换而来,作为一个普通函数供测试方法调用。
"""
real_bsz = 64
vocab_size = 2 * 1024
max_seq_len = 8 * 1024
# 生成原始测试数据(完全复用原有逻辑)
seq_lens_encoder = np.random.randint(0, 2, [real_bsz], dtype=np.int32)
seq_lens_this_time = np.random.randint(1, max_seq_len, [real_bsz], dtype=np.int32)
draft_logits_seqlen = 0
logits_seqlen = 0
for i in range(real_bsz):
if seq_lens_encoder[i] > 0:
draft_logits_seqlen += 2
logits_seqlen += 1
else:
draft_logits_seqlen += seq_lens_this_time[i]
logits_seqlen += seq_lens_this_time[i]
draft_logits = np.zeros([draft_logits_seqlen, vocab_size], dtype=np.float32)
next_token_num = np.zeros([real_bsz], dtype=np.int32)
batch_token_num = np.zeros([real_bsz], dtype=np.int32)
cu_next_token_offset = np.zeros([real_bsz], dtype=np.int32)
cu_batch_token_offset = np.zeros([real_bsz], dtype=np.int32)
logits = np.random.rand(logits_seqlen, vocab_size).astype(np.float32)
first_token_logits = np.random.rand(real_bsz, vocab_size).astype(np.float32)
paddle.set_device("cpu")
# 转换为 paddle tensor(保持原有逻辑)
data_cpu = {
"draft_logits": paddle.to_tensor(draft_logits),
"next_token_num": paddle.to_tensor(next_token_num),
"batch_token_num": paddle.to_tensor(batch_token_num),
"cu_next_token_offset": paddle.to_tensor(cu_next_token_offset),
"cu_batch_token_offset": paddle.to_tensor(cu_batch_token_offset),
"logits": paddle.to_tensor(logits),
"first_token_logits": paddle.to_tensor(first_token_logits),
"seq_lens_this_time": paddle.to_tensor(seq_lens_this_time),
"seq_lens_encoder": paddle.to_tensor(seq_lens_encoder),
}
paddle.set_device("xpu:0")
data_xpu = {
"draft_logits": paddle.to_tensor(draft_logits),
"next_token_num": paddle.to_tensor(next_token_num),
"batch_token_num": paddle.to_tensor(batch_token_num),
"cu_next_token_offset": paddle.to_tensor(cu_next_token_offset),
"cu_batch_token_offset": paddle.to_tensor(cu_batch_token_offset),
"logits": paddle.to_tensor(logits),
"first_token_logits": paddle.to_tensor(first_token_logits),
"seq_lens_this_time": paddle.to_tensor(seq_lens_this_time),
"seq_lens_encoder": paddle.to_tensor(seq_lens_encoder),
}
# 恢复默认设备,避免影响其他测试
paddle.set_device("cpu")
return data_cpu, data_xpu
def speculate_get_logits_execution(test_data):
"""测试函数的执行性和输出合理性"""
# 执行目标函数(核心测试步骤)
speculate_get_logits(**test_data)
return test_data
class TestSpeculateGetLogits(unittest.TestCase):
"""
测试类,继承自 unittest.TestCase。
所有以 'test_' 开头的方法都会被视为测试用例。
"""
def assert_test_data_equal(self, test_data1, test_data2, rtol=1e-05, atol=1e-08, target_keys=None):
"""
自定义的断言方法,用于比较两个 test_data 结构和数据。
在 unittest 中,自定义断言通常以 'assert' 开头。
"""
# 1. 先校验两个 test_data 的字段名完全一致
keys1 = set(test_data1.keys())
keys2 = set(test_data2.keys())
self.assertEqual(
keys1,
keys2,
msg=f"两个 test_data 字段不一致!\n仅在第一个中存在:{keys1 - keys2}\n仅在第二个中存在:{keys2 - keys1}",
)
# 2. 逐字段校验数据
if target_keys is not None and isinstance(target_keys, list):
local_target_key = target_keys
else:
local_target_key = keys1
for key in local_target_key:
data1 = test_data1[key]
data2 = test_data2[key]
# 区分:paddle Tensor(需转 numpy)和 普通标量/数组(直接使用)
if isinstance(data1, paddle.Tensor):
np1 = data1.detach().cpu().numpy()
else:
np1 = np.asarray(data1)
if isinstance(data2, paddle.Tensor):
np2 = data2.detach().cpu().numpy()
else:
np2 = np.asarray(data2)
# 3. 校验数据
if np1.dtype in (np.bool_, np.int8, np.int16, np.int32, np.int64, np.uint8):
# 布尔/整数型:必须完全相等
np.testing.assert_array_equal(np1, np2, err_msg=f"字段 {key} 数据不一致!")
else:
# 浮点型:允许 rtol/atol 范围内的误差
np.testing.assert_allclose(np1, np2, rtol=rtol, atol=atol, err_msg=f"字段 {key} 浮点数据不一致!")
print("✅ 两个 test_data 结构和数据完全一致!")
def test_speculate_get_logits(self):
"""
核心测试用例方法。
该方法会调用 generate_test_data 获取数据,
分别在 CPU 和 XPU 上执行测试函数,
并使用自定义的断言方法比较结果。
"""
print("\nRunning test: test_speculate_get_logits")
# 1. 获取测试数据
data_cpu, data_xpu = generate_test_data()
# 2. 执行测试函数
result_xpu = speculate_get_logits_execution(data_xpu)
result_cpu = speculate_get_logits_execution(data_cpu)
# 3. 断言结果一致
target_keys = ["draft_logits", "batch_token_num", "cu_batch_token_offset"]
self.assert_test_data_equal(result_cpu, result_xpu, target_keys=target_keys)
if __name__ == "__main__":
# 使用 unittest 的主程序来运行所有测试用例
unittest.main()