metrics.py 7.08 KB
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# SPDX-License-Identifier: Apache-2.0
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# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
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import time
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from dataclasses import dataclass, field
from typing import Optional
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import numpy as np
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import prometheus_client
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from vllm.config import SpeculativeConfig
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from vllm.logger import init_logger

logger = init_logger(__name__)


@dataclass
class SpecDecodingStats:
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    """Per-step iteration decoding stats from scheduler.

    Each scheduler step, statistics on spec decoding performance are
    aggregated across requests by the scheduler and returned to the
    frontend in EngineCoreOutputs->SchedulerStats.
    """

    num_spec_tokens: int
    num_drafts: int = 0
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    num_draft_tokens: int = 0
    num_accepted_tokens: int = 0
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    num_accepted_tokens_per_pos: list[int] = field(default_factory=list)
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    @classmethod
    def new(cls, num_spec_tokens: int) -> "SpecDecodingStats":
        return cls(num_spec_tokens=num_spec_tokens,
                   num_accepted_tokens_per_pos=[0] * num_spec_tokens)
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    def observe_draft(self, num_draft_tokens: int, num_accepted_tokens: int):
        self.num_drafts += 1
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        self.num_draft_tokens += num_draft_tokens
        self.num_accepted_tokens += num_accepted_tokens
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        assert num_accepted_tokens <= self.num_spec_tokens
        for i in range(num_accepted_tokens):
            self.num_accepted_tokens_per_pos[i] += 1

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class SpecDecodingLogging:
    """Aggregate and log spec decoding metrics.
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    LoggingStatLogger aggregates per-iteration metrics over a set
    time interval using observe() and then logs them using log()
    before resetting to zero.
    """
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    def __init__(self):
        self.reset()

    def reset(self):
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        self.num_drafts: list[int] = []
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        self.num_draft_tokens: list[int] = []
        self.num_accepted_tokens: list[int] = []
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        self.accepted_tokens_per_pos_lists: list[list[int]] = []
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        self.last_log_time = time.monotonic()
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    def observe(self, spec_decoding_stats: SpecDecodingStats):
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        self.num_drafts.append(spec_decoding_stats.num_drafts)
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        self.num_draft_tokens.append(spec_decoding_stats.num_draft_tokens)
        self.num_accepted_tokens.append(
            spec_decoding_stats.num_accepted_tokens)
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        self.accepted_tokens_per_pos_lists.append(
            spec_decoding_stats.num_accepted_tokens_per_pos)
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    def log(self, log_fn=logger.info):
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        if not self.num_drafts:
            return
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        num_drafts = np.sum(self.num_drafts)
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        num_draft_tokens = np.sum(self.num_draft_tokens)
        num_accepted_tokens = np.sum(self.num_accepted_tokens)
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        draft_throughput = 0
        accepted_throughput = 0

        elapsed_time = time.monotonic() - self.last_log_time
        if elapsed_time > 0:
            draft_throughput = num_draft_tokens / elapsed_time
            accepted_throughput = num_accepted_tokens / elapsed_time
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        draft_acceptance_rate = (num_accepted_tokens / num_draft_tokens *
                                 100 if num_draft_tokens > 0 else float("nan"))
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        # Conventionally, mean acceptance length includes the bonus token
        mean_acceptance_length = 1 + (num_accepted_tokens / num_drafts)
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        pos_matrix = np.array(self.accepted_tokens_per_pos_lists)
        acceptance_rates = np.sum(pos_matrix, axis=0) / num_drafts
        rates_str = ", ".join(f"{p:.3f}" for p in acceptance_rates)
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        log_fn(
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            "SpecDecoding metrics: "
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            "Mean acceptance length: %.2f, "
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            "Accepted throughput: %.2f tokens/s, "
            "Drafted throughput: %.2f tokens/s, "
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            "Accepted: %d tokens, "
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            "Drafted: %d tokens, "
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            "Per-position acceptance rate: %s, "
            "Avg Draft acceptance rate: %.1f%%",
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            mean_acceptance_length,
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            accepted_throughput,
            draft_throughput,
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            num_accepted_tokens,
            num_draft_tokens,
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            rates_str,
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            draft_acceptance_rate,
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        )
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        self.reset()
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class SpecDecodingProm:
    """Record spec decoding metrics in Prometheus.

    The acceptance rate can be calculated using a PromQL query:

      rate(vllm:spec_decode_num_accepted_tokens_total[$interval]) /
      rate(vllm:spec_decode_num_draft_tokens_total[$interval])

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    The mean acceptance length (conventionally including bonus tokens)
    can be calculated using:
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      1 + (
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      rate(vllm:spec_decode_num_accepted_tokens_total[$interval]) /
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      rate(vllm:spec_decode_num_drafts[$interval]))
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    A per-position acceptance rate vector can be computed using

      vllm:spec_decode_num_accepted_tokens_per_pos[$interval] /
      vllm:spec_decode_num_drafts[$interval]
    """

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    _counter_cls = prometheus_client.Counter

    def __init__(
        self,
        speculative_config: Optional[SpeculativeConfig],
        labelnames: list[str],
        labelvalues: list[str],
    ):
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        self.spec_decoding_enabled = speculative_config is not None
        if not self.spec_decoding_enabled:
            return

        self.counter_spec_decode_num_drafts = \
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            self._counter_cls(
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                name="vllm:spec_decode_num_drafts",
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                documentation="Number of spec decoding drafts.",
                labelnames=labelnames).labels(*labelvalues)
        self.counter_spec_decode_num_draft_tokens = \
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            self._counter_cls(
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                name="vllm:spec_decode_num_draft_tokens",
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                documentation="Number of draft tokens.",
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                labelnames=labelnames,).labels(*labelvalues)
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        self.counter_spec_decode_num_accepted_tokens = \
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            self._counter_cls(
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                name="vllm:spec_decode_num_accepted_tokens",
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                documentation="Number of accepted tokens.",
                labelnames=labelnames).labels(*labelvalues)

        assert speculative_config is not None
        num_spec_tokens = (speculative_config.num_speculative_tokens
                           if self.spec_decoding_enabled else 0)
        pos_labelnames = labelnames + ["position"]
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        base_counter = self._counter_cls(
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            name="vllm:spec_decode_num_accepted_tokens_per_pos",
            documentation="Accepted tokens per draft position.",
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            labelnames=pos_labelnames,
        )
        self.counter_spec_decode_num_accepted_tokens_per_pos: list[
            prometheus_client.Counter] = []
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        for pos in range(num_spec_tokens):
            pos_labelvalues = labelvalues + [str(pos)]
            self.counter_spec_decode_num_accepted_tokens_per_pos.append(
                base_counter.labels(*pos_labelvalues))

    def observe(self, spec_decoding_stats: SpecDecodingStats):
        if not self.spec_decoding_enabled:
            return
        self.counter_spec_decode_num_drafts.inc(spec_decoding_stats.num_drafts)
        self.counter_spec_decode_num_draft_tokens.inc(
            spec_decoding_stats.num_draft_tokens)
        self.counter_spec_decode_num_accepted_tokens.inc(
            spec_decoding_stats.num_accepted_tokens)
        for pos, counter in enumerate(
                self.counter_spec_decode_num_accepted_tokens_per_pos):
            counter.inc(spec_decoding_stats.num_accepted_tokens_per_pos[pos])