metrics.py 29.8 KB
Newer Older
1
2
# SPDX-License-Identifier: Apache-2.0

3
import time
4
5
from typing import TYPE_CHECKING
from typing import Counter as CollectionsCounter
6
from typing import Dict, List, Optional, Type, Union, cast
7
8

import numpy as np
9
import prometheus_client
10

11
12
from vllm.config import SupportsMetricsInfo, VllmConfig
from vllm.engine.metrics_types import StatLoggerBase, Stats
13
from vllm.executor.ray_utils import ray
14
from vllm.logger import init_logger
15

16
17
18
19
20
if ray is not None:
    from ray.util import metrics as ray_metrics
else:
    ray_metrics = None

21
22
23
if TYPE_CHECKING:
    from vllm.spec_decode.metrics import SpecDecodeWorkerMetrics

24
25
logger = init_logger(__name__)

26
prometheus_client.disable_created_metrics()
27
28
29
30

# The begin-* and end* here are used by the documentation generator
# to extract the metrics definitions.

31

32
# begin-metrics-definitions
33
class Metrics:
34
35
36
37
38
39
    """
    vLLM uses a multiprocessing-based frontend for the OpenAI server.
    This means that we need to run prometheus_client in multiprocessing mode
    See https://prometheus.github.io/client_python/multiprocess/ for more
    details on limitations.
    """
40

41
    labelname_finish_reason = "finished_reason"
42
43
44
    labelname_waiting_lora_adapters = "waiting_lora_adapters"
    labelname_running_lora_adapters = "running_lora_adapters"
    labelname_max_lora = "max_lora"
45
46
47
    _gauge_cls = prometheus_client.Gauge
    _counter_cls = prometheus_client.Counter
    _histogram_cls = prometheus_client.Histogram
48

49
    def __init__(self, labelnames: List[str], vllm_config: VllmConfig):
50
        # Unregister any existing vLLM collectors (for CI/CD)
51
        self._unregister_vllm_metrics()
52

53
54
        max_model_len = vllm_config.model_config.max_model_len

55
        # System stats
56
        #   Scheduler State
57
        self.gauge_scheduler_running = self._gauge_cls(
58
59
            name="vllm:num_requests_running",
            documentation="Number of requests currently running on GPU.",
60
61
            labelnames=labelnames,
            multiprocess_mode="sum")
62
        self.gauge_scheduler_waiting = self._gauge_cls(
63
64
            name="vllm:num_requests_waiting",
            documentation="Number of requests waiting to be processed.",
65
66
            labelnames=labelnames,
            multiprocess_mode="sum")
67
68
69
70
71
72
73
74
75
76
        self.gauge_lora_info = self._gauge_cls(
            name="vllm:lora_requests_info",
            documentation="Running stats on lora requests.",
            labelnames=[
                self.labelname_running_lora_adapters,
                self.labelname_max_lora,
                self.labelname_waiting_lora_adapters,
            ],
            multiprocess_mode="livemostrecent",
        )
77
78
79

        # Deprecated in 0.8 - KV cache offloading is not used in V1
        # TODO: in 0.9, only enable if show_hidden_metrics=True
80
        self.gauge_scheduler_swapped = self._gauge_cls(
81
            name="vllm:num_requests_swapped",
82
83
84
            documentation=(
                "Number of requests swapped to CPU. "
                "DEPRECATED: KV cache offloading is not used in V1"),
85
86
            labelnames=labelnames,
            multiprocess_mode="sum")
87

88
        #   KV Cache Usage in %
89
        self.gauge_gpu_cache_usage = self._gauge_cls(
90
91
            name="vllm:gpu_cache_usage_perc",
            documentation="GPU KV-cache usage. 1 means 100 percent usage.",
92
93
            labelnames=labelnames,
            multiprocess_mode="sum")
94
95
96

        # Deprecated in 0.8 - KV cache offloading is not used in V1
        # TODO: in 0.9, only enable if show_hidden_metrics=True
97
        self.gauge_cpu_cache_usage = self._gauge_cls(
98
            name="vllm:cpu_cache_usage_perc",
99
100
101
            documentation=(
                "CPU KV-cache usage. 1 means 100 percent usage. "
                "DEPRECATED: KV cache offloading is not used in V1"),
102
103
            labelnames=labelnames,
            multiprocess_mode="sum")
104
105
106

        # Deprecated in 0.8 - KV cache offloading is not used in V1
        # TODO: in 0.9, only enable if show_hidden_metrics=True
107
108
        self.gauge_cpu_prefix_cache_hit_rate = self._gauge_cls(
            name="vllm:cpu_prefix_cache_hit_rate",
109
110
111
            documentation=(
                "CPU prefix cache block hit rate. "
                "DEPRECATED: KV cache offloading is not used in V1"),
112
113
            labelnames=labelnames,
            multiprocess_mode="sum")
114
115
116

        # Deprecated in 0.8 - replaced by queries+hits counters in V1
        # TODO: in 0.9, only enable if show_hidden_metrics=True
117
118
        self.gauge_gpu_prefix_cache_hit_rate = self._gauge_cls(
            name="vllm:gpu_prefix_cache_hit_rate",
119
120
121
            documentation=("GPU prefix cache block hit rate. "
                           "DEPRECATED: use vllm:gpu_prefix_cache_queries and "
                           "vllm:gpu_prefix_cache_queries in V1"),
122
123
            labelnames=labelnames,
            multiprocess_mode="sum")
124

125
        # Iteration stats
126
        self.counter_num_preemption = self._counter_cls(
127
128
129
            name="vllm:num_preemptions_total",
            documentation="Cumulative number of preemption from the engine.",
            labelnames=labelnames)
130
        self.counter_prompt_tokens = self._counter_cls(
131
132
133
            name="vllm:prompt_tokens_total",
            documentation="Number of prefill tokens processed.",
            labelnames=labelnames)
134
        self.counter_generation_tokens = self._counter_cls(
135
136
137
            name="vllm:generation_tokens_total",
            documentation="Number of generation tokens processed.",
            labelnames=labelnames)
138
139
        buckets = [1, 8, 16, 32, 64, 128, 256, 512, 1024, 2048, 4096, 8096]
        if not vllm_config.model_config.enforce_eager:
140
141
            buckets = vllm_config.compilation_config.\
                cudagraph_capture_sizes.copy()
142
            buckets.sort()
harrywu's avatar
harrywu committed
143
144
145
146
        self.histogram_iteration_tokens = self._histogram_cls(
            name="vllm:iteration_tokens_total",
            documentation="Histogram of number of tokens per engine_step.",
            labelnames=labelnames,
147
            buckets=buckets)
148
        self.histogram_time_to_first_token = self._histogram_cls(
149
150
151
152
153
154
155
            name="vllm:time_to_first_token_seconds",
            documentation="Histogram of time to first token in seconds.",
            labelnames=labelnames,
            buckets=[
                0.001, 0.005, 0.01, 0.02, 0.04, 0.06, 0.08, 0.1, 0.25, 0.5,
                0.75, 1.0, 2.5, 5.0, 7.5, 10.0
            ])
156
        self.histogram_time_per_output_token = self._histogram_cls(
157
158
159
160
161
162
163
            name="vllm:time_per_output_token_seconds",
            documentation="Histogram of time per output token in seconds.",
            labelnames=labelnames,
            buckets=[
                0.01, 0.025, 0.05, 0.075, 0.1, 0.15, 0.2, 0.3, 0.4, 0.5, 0.75,
                1.0, 2.5
            ])
164
165
166

        # Request stats
        #   Latency
harrywu's avatar
harrywu committed
167
168
169
170
        request_latency_buckets = [
            0.3, 0.5, 0.8, 1.0, 1.5, 2.0, 2.5, 5.0, 10.0, 15.0, 20.0, 30.0,
            40.0, 50.0, 60.0
        ]
171
        self.histogram_e2e_time_request = self._histogram_cls(
172
173
174
            name="vllm:e2e_request_latency_seconds",
            documentation="Histogram of end to end request latency in seconds.",
            labelnames=labelnames,
harrywu's avatar
harrywu committed
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
            buckets=request_latency_buckets)
        self.histogram_queue_time_request = self._histogram_cls(
            name="vllm:request_queue_time_seconds",
            documentation=
            "Histogram of time spent in WAITING phase for request.",
            labelnames=labelnames,
            buckets=request_latency_buckets)
        self.histogram_inference_time_request = self._histogram_cls(
            name="vllm:request_inference_time_seconds",
            documentation=
            "Histogram of time spent in RUNNING phase for request.",
            labelnames=labelnames,
            buckets=request_latency_buckets)
        self.histogram_prefill_time_request = self._histogram_cls(
            name="vllm:request_prefill_time_seconds",
            documentation=
            "Histogram of time spent in PREFILL phase for request.",
            labelnames=labelnames,
            buckets=request_latency_buckets)
        self.histogram_decode_time_request = self._histogram_cls(
            name="vllm:request_decode_time_seconds",
            documentation=
            "Histogram of time spent in DECODE phase for request.",
            labelnames=labelnames,
            buckets=request_latency_buckets)
200
201
202
203
204
        self.histogram_time_in_queue_request = self._histogram_cls(
            name="vllm:time_in_queue_requests",
            documentation=
            "Histogram of time the request spent in the queue in seconds.",
            labelnames=labelnames,
harrywu's avatar
harrywu committed
205
            buckets=request_latency_buckets)
206
207
208
209
210
211
212
213
214
215
216
217
        self.histogram_model_forward_time_request = self._histogram_cls(
            name="vllm:model_forward_time_milliseconds",
            documentation=
            "Histogram of time spent in the model forward pass in ms.",
            labelnames=labelnames,
            buckets=build_1_2_3_5_8_buckets(3000))
        self.histogram_model_execute_time_request = self._histogram_cls(
            name="vllm:model_execute_time_milliseconds",
            documentation=
            "Histogram of time spent in the model execute function in ms.",
            labelnames=labelnames,
            buckets=build_1_2_3_5_8_buckets(3000))
218
        #   Metadata
219
        self.histogram_num_prompt_tokens_request = self._histogram_cls(
220
221
222
223
224
            name="vllm:request_prompt_tokens",
            documentation="Number of prefill tokens processed.",
            labelnames=labelnames,
            buckets=build_1_2_5_buckets(max_model_len),
        )
225
        self.histogram_num_generation_tokens_request = \
226
            self._histogram_cls(
227
228
229
230
231
                name="vllm:request_generation_tokens",
                documentation="Number of generation tokens processed.",
                labelnames=labelnames,
                buckets=build_1_2_5_buckets(max_model_len),
            )
harrywu's avatar
harrywu committed
232
233
234
235
236
237
        self.histogram_max_num_generation_tokens_request = self._histogram_cls(
            name="vllm:request_max_num_generation_tokens",
            documentation=
            "Histogram of maximum number of requested generation tokens.",
            labelnames=labelnames,
            buckets=build_1_2_5_buckets(max_model_len))
238
        self.histogram_n_request = self._histogram_cls(
239
240
241
242
243
            name="vllm:request_params_n",
            documentation="Histogram of the n request parameter.",
            labelnames=labelnames,
            buckets=[1, 2, 5, 10, 20],
        )
244
245
246
247
248
249
        self.histogram_max_tokens_request = self._histogram_cls(
            name="vllm:request_params_max_tokens",
            documentation="Histogram of the max_tokens request parameter.",
            labelnames=labelnames,
            buckets=build_1_2_5_buckets(max_model_len),
        )
250
        self.counter_request_success = self._counter_cls(
251
            name="vllm:request_success_total",
252
253
            documentation="Count of successfully processed requests.",
            labelnames=labelnames + [Metrics.labelname_finish_reason])
254

255
        # Speculative decoding stats
256
        self.gauge_spec_decode_draft_acceptance_rate = self._gauge_cls(
257
258
            name="vllm:spec_decode_draft_acceptance_rate",
            documentation="Speulative token acceptance rate.",
259
260
            labelnames=labelnames,
            multiprocess_mode="sum")
261
        self.gauge_spec_decode_efficiency = self._gauge_cls(
262
263
            name="vllm:spec_decode_efficiency",
            documentation="Speculative decoding system efficiency.",
264
265
            labelnames=labelnames,
            multiprocess_mode="sum")
266
267
268
269
270
        self.counter_spec_decode_num_accepted_tokens = (self._counter_cls(
            name="vllm:spec_decode_num_accepted_tokens_total",
            documentation="Number of accepted tokens.",
            labelnames=labelnames))
        self.counter_spec_decode_num_draft_tokens = self._counter_cls(
271
272
273
            name="vllm:spec_decode_num_draft_tokens_total",
            documentation="Number of draft tokens.",
            labelnames=labelnames)
274
275
276
277
        self.counter_spec_decode_num_emitted_tokens = (self._counter_cls(
            name="vllm:spec_decode_num_emitted_tokens_total",
            documentation="Number of emitted tokens.",
            labelnames=labelnames))
278

279
280

# end-metrics-definitions
281

282
    def _unregister_vllm_metrics(self) -> None:
283
        for collector in list(prometheus_client.REGISTRY._collector_to_names):
284
            if hasattr(collector, "_name") and "vllm" in collector._name:
285
286
287
288
289
290
291
292
293
294
                prometheus_client.REGISTRY.unregister(collector)


class _RayGaugeWrapper:
    """Wraps around ray.util.metrics.Gauge to provide same API as
    prometheus_client.Gauge"""

    def __init__(self,
                 name: str,
                 documentation: str = "",
295
296
297
                 labelnames: Optional[List[str]] = None,
                 multiprocess_mode: str = ""):
        del multiprocess_mode
298
299
300
301
302
303
304
305
306
307
308
309
        labelnames_tuple = tuple(labelnames) if labelnames else None
        self._gauge = ray_metrics.Gauge(name=name,
                                        description=documentation,
                                        tag_keys=labelnames_tuple)

    def labels(self, **labels):
        self._gauge.set_default_tags(labels)
        return self

    def set(self, value: Union[int, float]):
        return self._gauge.set(value)

310
311
312
313
    def set_to_current_time(self):
        # ray metrics doesn't have set_to_current time, https://docs.ray.io/en/latest/_modules/ray/util/metrics.html
        return self._gauge.set(time.time())

314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347

class _RayCounterWrapper:
    """Wraps around ray.util.metrics.Counter to provide same API as
    prometheus_client.Counter"""

    def __init__(self,
                 name: str,
                 documentation: str = "",
                 labelnames: Optional[List[str]] = None):
        labelnames_tuple = tuple(labelnames) if labelnames else None
        self._counter = ray_metrics.Counter(name=name,
                                            description=documentation,
                                            tag_keys=labelnames_tuple)

    def labels(self, **labels):
        self._counter.set_default_tags(labels)
        return self

    def inc(self, value: Union[int, float] = 1.0):
        if value == 0:
            return
        return self._counter.inc(value)


class _RayHistogramWrapper:
    """Wraps around ray.util.metrics.Histogram to provide same API as
    prometheus_client.Histogram"""

    def __init__(self,
                 name: str,
                 documentation: str = "",
                 labelnames: Optional[List[str]] = None,
                 buckets: Optional[List[float]] = None):
        labelnames_tuple = tuple(labelnames) if labelnames else None
348
        boundaries = buckets if buckets else []
349
350
351
        self._histogram = ray_metrics.Histogram(name=name,
                                                description=documentation,
                                                tag_keys=labelnames_tuple,
352
                                                boundaries=boundaries)
353
354
355
356
357
358
359

    def labels(self, **labels):
        self._histogram.set_default_tags(labels)
        return self

    def observe(self, value: Union[int, float]):
        return self._histogram.observe(value)
360
361
362
363
364
365
366


class RayMetrics(Metrics):
    """
    RayMetrics is used by RayPrometheusStatLogger to log to Ray metrics.
    Provides the same metrics as Metrics but uses Ray's util.metrics library.
    """
367
368
369
370
371
372
    _gauge_cls: Type[prometheus_client.Gauge] = cast(
        Type[prometheus_client.Gauge], _RayGaugeWrapper)
    _counter_cls: Type[prometheus_client.Counter] = cast(
        Type[prometheus_client.Counter], _RayCounterWrapper)
    _histogram_cls: Type[prometheus_client.Histogram] = cast(
        Type[prometheus_client.Histogram], _RayHistogramWrapper)
373

374
    def __init__(self, labelnames: List[str], vllm_config: VllmConfig):
375
376
        if ray_metrics is None:
            raise ImportError("RayMetrics requires Ray to be installed.")
377
        super().__init__(labelnames, vllm_config)
378
379
380
381
382

    def _unregister_vllm_metrics(self) -> None:
        # No-op on purpose
        pass

383

384
def build_buckets(mantissa_lst: List[int], max_value: int) -> List[int]:
385
    """
386
387
    Builds a list of buckets with increasing powers of 10 multiplied by
    mantissa values until the value exceeds the specified maximum.
388
389
390

    """
    exponent = 0
391
    buckets: List[int] = []
392
393
394
395
396
397
398
399
400
401
    while True:
        for m in mantissa_lst:
            value = m * 10**exponent
            if value <= max_value:
                buckets.append(value)
            else:
                return buckets
        exponent += 1


402
403
404
405
406
407
408
409
410
411
412
413
414
415
416
417
418
419
def build_1_2_5_buckets(max_value: int) -> List[int]:
    """
    Example:
    >>> build_1_2_5_buckets(100)
    [1, 2, 5, 10, 20, 50, 100]
    """
    return build_buckets([1, 2, 5], max_value)


def build_1_2_3_5_8_buckets(max_value: int) -> List[int]:
    """
    Example:
    >>> build_1_2_3_5_8_buckets(100)
    [1, 2, 3, 5, 8, 10, 20, 30, 50, 80, 100]
    """
    return build_buckets([1, 2, 3, 5, 8], max_value)


420
421
422
423
424
425
426
427
428
def local_interval_elapsed(now: float, last_log: float,
                           local_interval: float) -> bool:
    elapsed_time = now - last_log
    return elapsed_time > local_interval


def get_throughput(tracked_stats: List[int], now: float,
                   last_log: float) -> float:
    return float(np.sum(tracked_stats) / (now - last_log))
429
430


431
432
433
class LoggingStatLogger(StatLoggerBase):
    """LoggingStatLogger is used in LLMEngine to log to Stdout."""

434
435
    def __init__(self, local_interval: float, vllm_config: VllmConfig) -> None:
        super().__init__(local_interval, vllm_config)
436
437
438
        self.last_prompt_throughput: Optional[float] = None
        self.last_generation_throughput: Optional[float] = None

439
440
441
442
443
444
445
446
    def log(self, stats: Stats) -> None:
        """Called by LLMEngine.
           Logs to Stdout every self.local_interval seconds."""

        # Save tracked stats for token counters.
        self.num_prompt_tokens.append(stats.num_prompt_tokens_iter)
        self.num_generation_tokens.append(stats.num_generation_tokens_iter)

447
448
449
        # Update spec decode metrics
        self.maybe_update_spec_decode_metrics(stats)

450
451
452
453
454
455
456
457
458
459
460
461
462
        # Log locally every local_interval seconds.
        if local_interval_elapsed(stats.now, self.last_local_log,
                                  self.local_interval):
            # Compute summary metrics for tracked stats (and log them
            # to promethus if applicable).
            prompt_throughput = get_throughput(self.num_prompt_tokens,
                                               now=stats.now,
                                               last_log=self.last_local_log)
            generation_throughput = get_throughput(
                self.num_generation_tokens,
                now=stats.now,
                last_log=self.last_local_log)

463
464
465
466
467
468
469
470
            log_fn = logger.info
            if not any((prompt_throughput, generation_throughput,
                        self.last_prompt_throughput,
                        self.last_generation_throughput)):
                # Avoid log noise on an idle production system
                log_fn = logger.debug

            log_fn(
471
472
473
474
475
476
477
478
479
480
481
482
483
                "Avg prompt throughput: %.1f tokens/s, "
                "Avg generation throughput: %.1f tokens/s, "
                "Running: %d reqs, Swapped: %d reqs, "
                "Pending: %d reqs, GPU KV cache usage: %.1f%%, "
                "CPU KV cache usage: %.1f%%.",
                prompt_throughput,
                generation_throughput,
                stats.num_running_sys,
                stats.num_swapped_sys,
                stats.num_waiting_sys,
                stats.gpu_cache_usage_sys * 100,
                stats.cpu_cache_usage_sys * 100,
            )
484
485
            if (stats.cpu_prefix_cache_hit_rate >= 0
                    or stats.gpu_prefix_cache_hit_rate >= 0):
486
                log_fn(
487
488
489
490
                    "Prefix cache hit rate: GPU: %.2f%%, CPU: %.2f%%",
                    stats.gpu_prefix_cache_hit_rate * 100,
                    stats.cpu_prefix_cache_hit_rate * 100,
                )
491
            if self.spec_decode_metrics is not None:
492
                log_fn(
493
494
495
                    self._format_spec_decode_metrics_str(
                        self.spec_decode_metrics))

496
497
498
499
500
501
502
503
504
505
            self._reset(stats, prompt_throughput, generation_throughput)

    def _reset(self, stats, prompt_throughput, generation_throughput) -> None:
        # Reset tracked stats for next interval.
        self.num_prompt_tokens = []
        self.num_generation_tokens = []
        self.last_local_log = stats.now
        self.spec_decode_metrics = None
        self.last_prompt_throughput = prompt_throughput
        self.last_generation_throughput = generation_throughput
506
507
508
509
510
511
512
513
514

    def _format_spec_decode_metrics_str(
            self, metrics: "SpecDecodeWorkerMetrics") -> str:

        return ("Speculative metrics: "
                f"Draft acceptance rate: {metrics.draft_acceptance_rate:.3f}, "
                f"System efficiency: {metrics.system_efficiency:.3f}, "
                f"Number of speculative tokens: {metrics.num_spec_tokens}, "
                f"Number of accepted tokens: {metrics.accepted_tokens}, "
515
516
                f"Number of draft tokens: {metrics.draft_tokens}, "
                f"Number of emitted tokens: {metrics.emitted_tokens}.")
517

518
519
520
    def info(self, type: str, obj: SupportsMetricsInfo) -> None:
        raise NotImplementedError

521
522
523
524

class PrometheusStatLogger(StatLoggerBase):
    """PrometheusStatLogger is used LLMEngine to log to Promethus."""
    _metrics_cls = Metrics
525
    _gauge_cls = prometheus_client.Gauge
526
527

    def __init__(self, local_interval: float, labels: Dict[str, str],
528
529
                 vllm_config: VllmConfig) -> None:
        super().__init__(local_interval, vllm_config)
530
531
        # Prometheus metrics
        self.labels = labels
532
        self.metrics = self._metrics_cls(labelnames=list(labels.keys()),
533
                                         vllm_config=vllm_config)
534

535
536
537
538
539
        # Use this flag to hide metrics that were deprecated in
        # a previous release and which will be removed future
        self.show_hidden_metrics = \
            vllm_config.observability_config.show_hidden_metrics

540
541
542
    def _log_gauge(self, gauge, data: Union[int, float]) -> None:
        # Convenience function for logging to gauge.
        gauge.labels(**self.labels).set(data)
543

544
545
    def _log_counter(self, counter, data: Union[int, float]) -> None:
        # Convenience function for logging to counter.
546
547
548
549
550
        # Prevent ValueError from negative increment
        if data < 0:
            logger.warning("Skipping negative increment of %g to %s", data,
                           counter)
            return
551
552
553
554
555
556
557
558
559
560
561
562
563
        counter.labels(**self.labels).inc(data)

    def _log_counter_labels(self, counter, data: CollectionsCounter,
                            label_key: str) -> None:
        # Convenience function for collection counter of labels.
        for label, count in data.items():
            counter.labels(**{**self.labels, label_key: label}).inc(count)

    def _log_histogram(self, histogram, data: Union[List[int],
                                                    List[float]]) -> None:
        # Convenience function for logging list to histogram.
        for datum in data:
            histogram.labels(**self.labels).observe(datum)
564

565
    def _log_gauge_string(self, gauge, data: Dict[str, str]) -> None:
566
        gauge.labels(**data).set_to_current_time()
567

568
    def _log_prometheus(self, stats: Stats) -> None:
569
570
571
572
573
574
575
576
577
578
579
        # System state data
        self._log_gauge(self.metrics.gauge_scheduler_running,
                        stats.num_running_sys)
        self._log_gauge(self.metrics.gauge_scheduler_swapped,
                        stats.num_swapped_sys)
        self._log_gauge(self.metrics.gauge_scheduler_waiting,
                        stats.num_waiting_sys)
        self._log_gauge(self.metrics.gauge_gpu_cache_usage,
                        stats.gpu_cache_usage_sys)
        self._log_gauge(self.metrics.gauge_cpu_cache_usage,
                        stats.cpu_cache_usage_sys)
580
581
582
583
        self._log_gauge(self.metrics.gauge_cpu_prefix_cache_hit_rate,
                        stats.cpu_prefix_cache_hit_rate)
        self._log_gauge(self.metrics.gauge_gpu_prefix_cache_hit_rate,
                        stats.gpu_prefix_cache_hit_rate)
584
585
586
587
588
589
590
591
592
593
594
        # Including max-lora in metric, in future this property of lora
        # config maybe extended to be dynamic.
        lora_info = {
            self.metrics.labelname_running_lora_adapters:
            ",".join(stats.running_lora_adapters),
            self.metrics.labelname_waiting_lora_adapters:
            ",".join(stats.waiting_lora_adapters),
            self.metrics.labelname_max_lora:
            stats.max_lora,
        }
        self._log_gauge_string(self.metrics.gauge_lora_info, lora_info)
595
        # Iteration level data
596
597
        self._log_counter(self.metrics.counter_num_preemption,
                          stats.num_preemption_iter)
598
599
600
601
        self._log_counter(self.metrics.counter_prompt_tokens,
                          stats.num_prompt_tokens_iter)
        self._log_counter(self.metrics.counter_generation_tokens,
                          stats.num_generation_tokens_iter)
harrywu's avatar
harrywu committed
602
603
        self._log_histogram(self.metrics.histogram_iteration_tokens,
                            [stats.num_tokens_iter])
604
605
606
607
608
609
610
611
612
        self._log_histogram(self.metrics.histogram_time_to_first_token,
                            stats.time_to_first_tokens_iter)
        self._log_histogram(self.metrics.histogram_time_per_output_token,
                            stats.time_per_output_tokens_iter)

        # Request level data
        # Latency
        self._log_histogram(self.metrics.histogram_e2e_time_request,
                            stats.time_e2e_requests)
harrywu's avatar
harrywu committed
613
614
615
616
617
        self._log_histogram(self.metrics.histogram_queue_time_request,
                            stats.time_queue_requests)
        self._log_histogram(self.metrics.histogram_inference_time_request,
                            stats.time_inference_requests)
        self._log_histogram(self.metrics.histogram_prefill_time_request,
618
619
                            stats.time_prefill_requests)
        self._log_histogram(self.metrics.histogram_decode_time_request,
harrywu's avatar
harrywu committed
620
                            stats.time_decode_requests)
621
622
623
624
625
626
        self._log_histogram(self.metrics.histogram_time_in_queue_request,
                            stats.time_in_queue_requests)
        self._log_histogram(self.metrics.histogram_model_forward_time_request,
                            stats.model_forward_time_requests)
        self._log_histogram(self.metrics.histogram_model_execute_time_request,
                            stats.model_execute_time_requests)
627
628
629
630
631
632
633
634
635
636
637
638
        # Metadata
        finished_reason_counter = CollectionsCounter(
            stats.finished_reason_requests)
        self._log_counter_labels(self.metrics.counter_request_success,
                                 finished_reason_counter,
                                 Metrics.labelname_finish_reason)
        self._log_histogram(self.metrics.histogram_num_prompt_tokens_request,
                            stats.num_prompt_tokens_requests)
        self._log_histogram(
            self.metrics.histogram_num_generation_tokens_request,
            stats.num_generation_tokens_requests)
        self._log_histogram(self.metrics.histogram_n_request, stats.n_requests)
harrywu's avatar
harrywu committed
639
640
641
        self._log_histogram(
            self.metrics.histogram_max_num_generation_tokens_request,
            stats.max_num_generation_tokens_requests)
642
643
        self._log_histogram(self.metrics.histogram_max_tokens_request,
                            stats.max_tokens_requests)
644

645
646
    def log(self, stats: Stats):
        """Logs to prometheus and tracked stats every iteration."""
647
648
649
650
        # Log to prometheus.
        self._log_prometheus(stats)

        # Save tracked stats for token counters.
651
652
        self.num_prompt_tokens.append(stats.num_prompt_tokens_iter)
        self.num_generation_tokens.append(stats.num_generation_tokens_iter)
653

654
655
656
        # Update spec decode metrics
        self.maybe_update_spec_decode_metrics(stats)

657
        # Log locally every local_interval seconds.
658
659
        if local_interval_elapsed(stats.now, self.last_local_log,
                                  self.local_interval):
660
            if self.spec_decode_metrics is not None:
661
662
                self._log_gauge(
                    self.metrics.gauge_spec_decode_draft_acceptance_rate,
663
                    self.spec_decode_metrics.draft_acceptance_rate)
664
                self._log_gauge(self.metrics.gauge_spec_decode_efficiency,
665
                                self.spec_decode_metrics.system_efficiency)
666
667
                self._log_counter(
                    self.metrics.counter_spec_decode_num_accepted_tokens,
668
                    self.spec_decode_metrics.accepted_tokens)
669
670
                self._log_counter(
                    self.metrics.counter_spec_decode_num_draft_tokens,
671
                    self.spec_decode_metrics.draft_tokens)
672
673
                self._log_counter(
                    self.metrics.counter_spec_decode_num_emitted_tokens,
674
675
676
677
678
679
680
                    self.spec_decode_metrics.emitted_tokens)

            # Reset tracked stats for next interval.
            self.num_prompt_tokens = []
            self.num_generation_tokens = []
            self.last_local_log = stats.now
            self.spec_decode_metrics = None
681

682
683
684
685
686
687
688
689
690
691
692
693
694
    def info(self, type: str, obj: SupportsMetricsInfo) -> None:
        # Info type metrics are syntactic sugar for a gauge permanently set to 1
        # Since prometheus multiprocessing mode does not support Info, emulate
        # info here with a gauge.
        if type == "cache_config":
            metrics_info = obj.metrics_info()
            info_gauge = self._gauge_cls(
                name="vllm:cache_config_info",
                documentation="Information of the LLMEngine CacheConfig",
                labelnames=metrics_info.keys(),
                multiprocess_mode="mostrecent")
            info_gauge.labels(**metrics_info).set(1)

695

696
697
class RayPrometheusStatLogger(PrometheusStatLogger):
    """RayPrometheusStatLogger uses Ray metrics instead."""
698
    _metrics_cls = RayMetrics
699
700
701

    def info(self, type: str, obj: SupportsMetricsInfo) -> None:
        return None