stats.py 9.17 KB
Newer Older
1
2
# SPDX-License-Identifier: Apache-2.0

3
import time
4
from dataclasses import dataclass, field
5
from typing import TYPE_CHECKING, Optional
6

7
8
from vllm.v1.spec_decode.metrics import SpecDecodingStats

9
if TYPE_CHECKING:
10
    from vllm.v1.engine import EngineCoreEvent, EngineCoreOutput, FinishReason
11
    from vllm.v1.engine.output_processor import RequestState
12
13


14
15
16
17
18
19
20
21
22
23
24
25
26
27
@dataclass
class PrefixCacheStats:
    """Stores prefix cache hit statistics."""
    # Whether reset_prefix_cache was invoked.
    reset: bool = False
    # The number of requests in this update.
    requests: int = 0
    # The number of queries in these requests. Note that "queries" here
    # means the number of blocks that were queried from the cache.
    queries: int = 0
    # The number of hits in these requests.
    hits: int = 0


28
29
30
31
32
33
34
@dataclass
class SchedulerStats:
    """Stats associated with the scheduler."""

    num_running_reqs: int = 0
    num_waiting_reqs: int = 0

35
    gpu_cache_usage: float = 0.0
36
37
38

    prefix_cache_stats: PrefixCacheStats = field(
        default_factory=PrefixCacheStats)
39

40
41
    spec_decoding_stats: Optional[SpecDecodingStats] = None

42

43
44
@dataclass
class LoRAStats:
45
46
    waiting_requests: set[str] = field(default_factory=set)
    running_requests: set[str] = field(default_factory=set)
47
48


49
50
51
52
53
@dataclass
class RequestStateStats:
    """Stats that need to be tracked across delta updates."""

    num_generation_tokens: int = 0
54
55
56
57
58
59
60
61
62

    # This is a engine frontend timestamp (wall-clock)
    arrival_time: float = 0.0

    # These are engine core timestamps (monotonic)
    queued_ts: float = 0.0
    scheduled_ts: float = 0.0
    first_token_ts: float = 0.0
    last_token_ts: float = 0.0
63
64
65
66
67
68


@dataclass
class FinishedRequestStats:
    """Stats associated with a finished request."""

69
    finish_reason: "FinishReason"
70
    e2e_latency: float = 0.0
71
72
    num_prompt_tokens: int = 0
    num_generation_tokens: int = 0
73
    max_tokens_param: Optional[int] = None
74
75
    queued_time: float = 0.0
    prefill_time: float = 0.0
76
77
    inference_time: float = 0.0
    decode_time: float = 0.0
78
79


80
81
82
class IterationStats:
    """Stats associated with a single set of EngineCoreOutputs."""

83
84
    def __init__(self):
        self.iteration_timestamp = time.time()
85
86
        self.num_generation_tokens = 0
        self.num_prompt_tokens = 0
87
        self.num_preempted_reqs = 0
88
        self.finished_requests: list[FinishedRequestStats] = []
89
90
        self.max_num_generation_tokens_iter: list[int] = []
        self.n_params_iter: list[int] = []
91
92
93
94
        self.time_to_first_tokens_iter: list[float] = []
        self.time_per_output_tokens_iter: list[float] = []
        self.waiting_lora_adapters: dict[str, int] = {}
        self.running_lora_adapters: dict[str, int] = {}
95

96
97
98
    def _time_since(self, start: float) -> float:
        """Calculate an interval relative to this iteration's timestamp."""
        return self.iteration_timestamp - start
99

100
101
    def update_from_output(self, output: "EngineCoreOutput",
                           engine_core_timestamp: float, is_prefilling: bool,
102
103
                           prompt_len: int, req_stats: RequestStateStats,
                           lora_stats: Optional[LoRAStats]):
104
105
106
        num_new_generation_tokens = len(output.new_token_ids)

        self.num_generation_tokens += num_new_generation_tokens
107
108
        if is_prefilling:
            assert num_new_generation_tokens > 0
109
110
111
112
113
114
115
116
117
            self.num_prompt_tokens += prompt_len

            first_token_latency = self._time_since(req_stats.arrival_time)
            self.time_to_first_tokens_iter.append(first_token_latency)

        req_stats.num_generation_tokens += num_new_generation_tokens

        # Process request-level engine core events
        if output.events is not None:
118
119
            self.update_from_events(output.request_id, output.events,
                                    is_prefilling, req_stats, lora_stats)
120
121
122

        # Process the batch-level "new tokens" engine core event
        if is_prefilling:
123
            req_stats.first_token_ts = engine_core_timestamp
124
        else:
125
126
127
            tpot = engine_core_timestamp - req_stats.last_token_ts
            self.time_per_output_tokens_iter.append(tpot)

128
        req_stats.last_token_ts = engine_core_timestamp
129

130
    def update_from_events(self, req_id: str, events: list["EngineCoreEvent"],
131
132
                           is_prefilling: bool, req_stats: RequestStateStats,
                           lora_stats: Optional[LoRAStats]):
133
134
135
136
137
        # Avoid circular dependency
        from vllm.v1.engine import EngineCoreEventType
        for event in events:
            if event.type == EngineCoreEventType.QUEUED:
                req_stats.queued_ts = event.timestamp
138
139
                if lora_stats is not None:
                    lora_stats.waiting_requests.add(req_id)
140
            elif event.type == EngineCoreEventType.SCHEDULED:
141
142
                if req_stats.scheduled_ts == 0.0:  # ignore preemptions
                    req_stats.scheduled_ts = event.timestamp
143
                LoRARequestStates.scheduled_request(lora_stats, req_id)
144
145
            elif event.type == EngineCoreEventType.PREEMPTED:
                self.num_preempted_reqs += 1
146
                LoRARequestStates.preempted_request(lora_stats, req_id)
147

148
    def update_from_finished_request(self, finish_reason: "FinishReason",
149
                                     num_prompt_tokens: int,
150
                                     max_tokens_param: Optional[int],
151
152
153
                                     req_stats: RequestStateStats):
        e2e_latency = self._time_since(req_stats.arrival_time)

154
155
156
157
158
159
160
161
162
        # Queued interval is from first QUEUED event to first SCHEDULED
        queued_time = req_stats.scheduled_ts - req_stats.queued_ts

        # Prefill interval is from first SCHEDULED to first NEW_TOKEN
        # Any preemptions during prefill is included in the interval
        prefill_time = req_stats.first_token_ts - req_stats.scheduled_ts

        # Decode interval is from first NEW_TOKEN to last NEW_TOKEN
        # Any preemptions during decode are included
163
164
        decode_time = req_stats.last_token_ts - req_stats.first_token_ts

165
166
167
168
        # Inference interval is from first SCHEDULED to last NEW_TOKEN
        # Any preemptions during prefill or decode are included
        inference_time = req_stats.last_token_ts - req_stats.scheduled_ts

169
170
171
        finished_req = \
            FinishedRequestStats(finish_reason=finish_reason,
                                 e2e_latency=e2e_latency,
172
                                 num_prompt_tokens=num_prompt_tokens,
173
                                 num_generation_tokens=req_stats.num_generation_tokens,
174
                                 max_tokens_param=max_tokens_param,
175
176
                                 queued_time=queued_time,
                                 prefill_time=prefill_time,
177
178
179
                                 inference_time=inference_time,
                                 decode_time=decode_time)
        self.finished_requests.append(finished_req)
180
181
182
183
184
185


class LoRARequestStates:
    """Per-LoRA request state stats."""

    def __init__(self):
186
        self.lora_name_to_stats: dict[str, LoRAStats] = {}
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220

    def get_stats(self, req_state: 'RequestState') -> Optional[LoRAStats]:
        if req_state.lora_name is None:
            return None
        if req_state.lora_name not in self.lora_name_to_stats:
            self.lora_name_to_stats[req_state.lora_name] = LoRAStats()
        return self.lora_name_to_stats[req_state.lora_name]

    def add_request(self, req_state: 'RequestState'):
        if (lora_stats := self.get_stats(req_state)) is not None:
            lora_stats.waiting_requests.add(req_state.request_id)

    def finish_request(self, req_state: 'RequestState'):
        if req_state.lora_name is None:
            return
        lora_stats = self.lora_name_to_stats[req_state.lora_name]
        lora_stats.running_requests.remove(req_state.request_id)

    def abort_request(self, req_state: 'RequestState'):
        if req_state.lora_name is None:
            return
        lora_stats = self.lora_name_to_stats[req_state.lora_name]
        lora_stats.waiting_requests.discard(req_state.request_id)
        lora_stats.running_requests.discard(req_state.request_id)

    # Break the pattern for this lifecycle methods so we can
    # call this from IterationStats.update_from_events()
    @staticmethod
    def scheduled_request(lora_stats: Optional[LoRAStats], request_id: str):
        if lora_stats is None:
            return
        lora_stats.waiting_requests.remove(request_id)
        lora_stats.running_requests.add(request_id)

221
222
223
224
225
226
227
    @staticmethod
    def preempted_request(lora_stats: Optional[LoRAStats], request_id: str):
        if lora_stats is None:
            return
        lora_stats.running_requests.remove(request_id)
        lora_stats.waiting_requests.add(request_id)

228
229
230
231
232
233
234
235
236
237
238
    def update_iteration_stats(self,
                               iteration_stats: Optional[IterationStats]):
        if iteration_stats is None:
            return
        for lora_name, stats in self.lora_name_to_stats.items():
            if stats.waiting_requests:
                iteration_stats.waiting_lora_adapters[lora_name] = \
                    len(stats.waiting_requests)
            if stats.running_requests:
                iteration_stats.running_lora_adapters[lora_name] = \
                    len(stats.running_requests)