utils.py 8.13 KB
Newer Older
1
# SPDX-License-Identifier: Apache-2.0
2
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
3

4
5
6
7
8
import functools
import json
from pathlib import Path
from typing import Any

9
import torch
10

11
12
13
14
15
from vllm import envs
from vllm.logger import init_logger

logger = init_logger(__name__)

16
17
_LORA_A_PTR_DICT: dict[tuple[int, ...], tuple[torch.tensor, ...]] = {}
_LORA_B_PTR_DICT: dict[tuple[int, ...], tuple[torch.tensor, ...]] = {}
18
19


20
def _get_lora_a_ptr(lora_a_weights: list[torch.Tensor], device: torch.device):
21
    """
22
    `_LORA_A_PTR_DICT` collects the required information during `profile_run`,
23
    After this, it remains constant and subsequent usage is through LUT.
24
    Refer to:
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
    https://github.com/triton-lang/triton/blob/release/3.1.x/python/tutorials/08-grouped-gemm.py
    """
    key = tuple(lora_weight.data_ptr() for lora_weight in lora_a_weights)

    if values := _LORA_A_PTR_DICT.get(key):
        return values

    lora_strides_d0 = []
    lora_strides_d1 = []
    lora_strides_d2 = []
    tensor_ptrs = []
    for lora_a_weight in lora_a_weights:
        if lora_a_weight.ndim == 4:  # shape:(lora_num,1,size,rank)
            assert lora_a_weight.size(1) == 1
            lora_a_weight = lora_a_weight.squeeze(dim=1)
        else:
            assert lora_a_weight.ndim == 3  # shape:(lora_num,size,rank)
        assert lora_a_weight.is_contiguous()
        tensor_ptrs.append(lora_a_weight.data_ptr())
        lora_strides_d0.append(lora_a_weight.stride(0))
        lora_strides_d1.append(lora_a_weight.stride(1))
        lora_strides_d2.append(lora_a_weight.stride(2))
    if len(lora_a_weights) > 1:
48
        lora_ptr_tensor = torch.tensor(tensor_ptrs, device=device, dtype=torch.uint64)
49
50
51
    else:
        lora_ptr_tensor = lora_a_weights[0]

52
53
54
55
56
    if (
        len(set(lora_strides_d0)) > 1
        or len(set(lora_strides_d1)) > 1
        or len(set(lora_strides_d2)) > 1
    ):
57
58
59
60
61
62
63
64
65
66
67
        raise ValueError("All LoRA weights must have the same stride.")

    _LORA_A_PTR_DICT[key] = (
        lora_ptr_tensor,
        lora_strides_d0[0],
        lora_strides_d1[0],
        lora_strides_d2[0],
    )
    return _LORA_A_PTR_DICT.get(key)


68
69
70
71
72
def _get_lora_b_ptr(
    lora_weights: list[torch.Tensor], offset_start: int, device: torch.device
):
    """
     `_LORA_B_PTR_DICT` collects the required information during `profile_run`,
73
    After this, it remains constant and subsequent usage is through LUT.
74
    Refer to:
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
    https://github.com/triton-lang/triton/blob/release/3.1.x/python/tutorials/08-grouped-gemm.py

    """

    key = tuple(lora_weight.data_ptr() for lora_weight in lora_weights)
    if values := _LORA_B_PTR_DICT.get(key):
        return values
    slice_offset_lst = []
    tensor_ptrs = []
    lora_strides_d0 = []
    lora_strides_d1 = []
    lora_strides_d2 = []
    hidden_sizes = []
    slice_offset = offset_start
    for lora_b_weight in lora_weights:
        if lora_b_weight.ndim == 4:  # shape:(lora_num,1,size,rank)
            assert lora_b_weight.size(1) == 1
            lora_b_weight = lora_b_weight.squeeze(dim=1)
        else:
            assert lora_b_weight.ndim == 3  # shape:(lora_num,size,rank)
        assert lora_b_weight.is_contiguous()
        tensor_ptrs.append(lora_b_weight.data_ptr())
        lora_strides_d0.append(lora_b_weight.stride(0))
        lora_strides_d1.append(lora_b_weight.stride(1))
        lora_strides_d2.append(lora_b_weight.stride(2))
        slice_offset_lst.append(slice_offset)
        slice_offset += lora_b_weight.size(1)
        hidden_sizes.append(lora_b_weight.size(1))

    if len(lora_weights) > 1:
        # note these are device tensors
106
107
108
109
        lora_ptr_tensor = torch.tensor(tensor_ptrs, device=device, dtype=torch.uint64)
        slice_start_tensor = torch.tensor(
            slice_offset_lst, device=device, dtype=torch.uint64
        )
110
111
112
113
114
115
    else:
        slice_start_tensor = slice_offset_lst[0]
        lora_ptr_tensor = lora_b_weight[0]

    # If each lora has the same stride, there's no need to use a
    # tensor for storage.
116
117
118
119
120
    if (
        len(set(lora_strides_d0)) == 1
        and len(set(lora_strides_d1)) == 1
        and len(set(lora_strides_d2)) == 1
    ) and len(set(hidden_sizes)) == 1:
121
122
123
124
125
126
127
128
129
130
131
132
133
134
        lora_strides_d0_tensor = lora_strides_d0[0]
        lora_strides_d1_tensor = lora_strides_d1[0]
        lora_strides_d2_tensor = lora_strides_d2[0]
        hidden_sizes_tensor = hidden_sizes[0]
        same_stride = True

    else:
        lora_strides_d0_tensor = torch.tensor(lora_strides_d0, device=device)
        lora_strides_d1_tensor = torch.tensor(lora_strides_d1, device=device)
        lora_strides_d2_tensor = torch.tensor(lora_strides_d2, device=device)
        hidden_sizes_tensor = torch.tensor(hidden_sizes, device=device)
        same_stride = False
    # MAX_N is the maximum hidden size among all the lora_b weights
    MAX_N = max(hidden_sizes)
135
136
137
138
139
140
141
142
143
144
    _LORA_B_PTR_DICT[key] = (
        slice_start_tensor,
        lora_ptr_tensor,
        lora_strides_d0_tensor,
        lora_strides_d1_tensor,
        lora_strides_d2_tensor,
        hidden_sizes_tensor,
        same_stride,
        MAX_N,
    )
145
    return _LORA_B_PTR_DICT.get(key)
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201


@functools.lru_cache
def load_lora_op_config(op_type: str, add_inputs: bool | None) -> dict | None:
    user_defined_config_folder = envs.VLLM_TUNED_CONFIG_FOLDER
    if user_defined_config_folder is not None:
        gpu_name = torch.cuda.get_device_name()
        gpu_name = gpu_name.replace(" ", "_")
        gpu_name = gpu_name.replace("-", "_")

        config_fname = None
        if op_type == "shrink":
            config_fname = f"{gpu_name}_{op_type.upper()}.json"
        else:
            assert op_type == "expand"
            config_fname = (
                f"{gpu_name}_{op_type.upper()}_{str(add_inputs).upper()}.json"
            )

        config_path = Path(f"{user_defined_config_folder}/{config_fname}")
        if not config_path.exists():
            logger.warning_once(f"No LoRA kernel configs founded in {config_path}")
            return None

        # Load json
        logger.info_once(f"Using tuned LoRA kernel configs from {config_path}.")
        with open(str(config_path)) as f:
            config_data = json.load(f)
    else:
        config_data = None

    return config_data


@functools.lru_cache
def get_lora_op_configs(
    op_type: str,
    max_loras: int,
    batch: int,
    hidden_size: int,
    rank: int,
    num_slices: int,
    add_inputs: bool | None = None,
) -> dict[str, int | None]:
    assert op_type in ["shrink", "expand"]

    # default config
    default = {}
    if op_type == "shrink":
        default = {
            "block_m": 32,
            "block_n": 16,
            "block_k": 256 if batch < 128 else 32,
            "split_k": 64 if batch < 128 else 8,
            "num_warps": 4,
            "num_ctas": 1,
202
            "group_size_m": 8,
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
            "num_stages": 2,
            "max_nreg": None,
        }
    else:
        default = {
            "block_m": 64,
            "block_n": 128,
            "block_k": 16,
            "num_warps": 4,
            "num_ctas": 1,
            "num_stages": 2,
            "max_nreg": None,
        }
    m = batch

    k, n = (hidden_size, rank) if op_type == "shrink" else (rank, hidden_size)

    config_data: Any
    config_data = load_lora_op_config(op_type, add_inputs)
    if not config_data:
        logger.warning_once("Using default LoRA kernel configs")
        return default

    # config is structured as config_data[max_loras][num_slices][m][k][n] = {}
    # slice by max_loras
    config_data = (
        config_data.get(str(max_loras))
        or config_data[min(config_data.keys(), key=lambda x: abs(int(x) - max_loras))]
    )
    # slice by num_slices
    config_data = config_data[str(num_slices)]
    # slice by m
    config_data = (
        config_data.get(str(m))
        or config_data[min(config_data.keys(), key=lambda x: abs(int(x) - m))]
    )
    # slice by k
    config_data = (
        config_data.get(str(k))
        or config_data[min(config_data.keys(), key=lambda x: abs(int(x) - k))]
    )
    # slice by n
    config_data = (
        config_data.get(str(n))
        or config_data[min(config_data.keys(), key=lambda x: abs(int(x) - n))]
    )

    assert config_data is not None
    return config_data