e829a4060b
新增文件: - metrics.py: Prometheus 指标端点 (:9191), 10+3 个指标 - health.py: /health (liveness) + /health/ready (readiness) - webui.py: WebUI 后端 API (SSE 实时推送 + 配置热重载) - static/dashboard.html: 仪表盘前端 (Chart.js, 令牌桶仪表+队列柱状图+吞吐折线图) 更新文件: - rate_limiter.py: 增加 AdaptiveTokenBucket 避退模式 (ADR-009) 状态机 NORMAL→RETREAT→RECOVER, 429 率滑动窗口监控 - server.py: structlog 结构化日志 + 避退反馈回路 挂载 metrics_server (:9191) + health/ready + webui + /status - pyproject.toml: 增加 prometheus-client, pydantic, types-PyYAML 依赖 验证: - mypy --strict: 0 issues in 7 source files - AdaptiveTokenBucket 运行时测试通过 - 所有语法检查通过 Co-authored-by: multica-agent <github@multica.ai>
272 lines
8.7 KiB
Python
272 lines
8.7 KiB
Python
"""
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NVIDIA Sidecar 限流代理 — Prometheus 指标端点 (§3.5)
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10 个指标,独立端口 :9191,与代理端口 :9190 分离。
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"""
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from __future__ import annotations
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import time
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import threading
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from typing import Any
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from prometheus_client import (
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CollectorRegistry,
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Counter,
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Gauge,
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Histogram,
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generate_latest,
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make_asgi_app,
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)
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class PrometheusMetrics:
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"""Sidecar Prometheus 指标收集器。
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线程安全,所有公开方法通过 ``threading.Lock`` 保护。
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"""
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def __init__(self, registry: CollectorRegistry | None = None) -> None:
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"""初始化所有 10 个 Prometheus 指标。
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Args:
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registry: 可选自定义 Registry;None 则使用默认全局 registry。
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"""
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self._registry: CollectorRegistry = registry or CollectorRegistry()
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self._lock: threading.Lock = threading.Lock()
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self._start_time: float = time.time()
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# ---- 1. 总请求数(按优先级 + 状态分组) ----
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self.requests_total: Counter = Counter(
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"sidecar_requests_total",
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"Total requests processed by priority and status",
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labelnames=["priority", "status"],
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registry=self._registry,
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)
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# ---- 2. 可用令牌数 ----
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self.tokens_available: Gauge = Gauge(
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"sidecar_tokens_available",
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"Current number of available tokens",
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registry=self._registry,
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)
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# ---- 3. 令牌生成速率 ----
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self.tokens_rate: Gauge = Gauge(
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"sidecar_tokens_rate",
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"Current token generation rate (tokens per minute)",
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registry=self._registry,
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)
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# ---- 4. 各优先级队列深度 ----
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self.queue_depth: Gauge = Gauge(
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"sidecar_queue_depth",
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"Queue depth by priority",
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labelnames=["priority"],
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registry=self._registry,
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)
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# ---- 5. 队列等待时间 Histogram ----
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self.queue_latency_seconds: Histogram = Histogram(
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"sidecar_queue_latency_seconds",
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"Request wait time in queue in seconds",
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labelnames=["priority"],
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buckets=(0.01, 0.05, 0.1, 0.5, 1.0, 2.0, 5.0, 10.0, 30.0, 60.0, 120.0),
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registry=self._registry,
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)
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# ---- 6. 上游响应延迟 Histogram ----
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self.upstream_latency_seconds: Histogram = Histogram(
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"sidecar_upstream_latency_seconds",
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"Upstream response latency in seconds",
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labelnames=["model_id"],
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buckets=(0.1, 0.5, 1.0, 2.0, 5.0, 10.0, 30.0, 60.0, 120.0, 300.0, 600.0),
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registry=self._registry,
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)
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# ---- 7. 上游错误计数 ----
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self.upstream_errors_total: Counter = Counter(
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"sidecar_upstream_errors_total",
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"Upstream error count by status code and model",
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labelnames=["status_code", "model_id"],
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registry=self._registry,
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)
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# ---- 8. 降级直通次数 ----
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self.fallback_passthrough_total: Counter = Counter(
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"sidecar_fallback_passthrough_total",
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"Total fallback / passthrough events (queue full or sidecar unavailable)",
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registry=self._registry,
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)
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# ---- 9. 健康状态 ----
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self.health_status: Gauge = Gauge(
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"sidecar_health_status",
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"Sidecar health: 0=unhealthy, 1=healthy",
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registry=self._registry,
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)
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# ---- 10. 运行时长 ----
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self.uptime_seconds: Gauge = Gauge(
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"sidecar_uptime_seconds",
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"Process uptime in seconds",
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registry=self._registry,
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)
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# 避退模式指标(附加,不计入基础 10 个)
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self.retreat_state: Gauge = Gauge(
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"sidecar_retreat_state",
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"Adaptive retreat state: 0=NORMAL, 1=RETREAT, 2=RECOVER",
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registry=self._registry,
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)
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self.effective_rate_rpm: Gauge = Gauge(
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"sidecar_effective_rate_rpm",
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"Current effective rate in RPM (after retreat adjustments)",
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registry=self._registry,
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)
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self.upstream_429_rate: Gauge = Gauge(
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"sidecar_upstream_429_rate",
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"Upstream 429 rate over the retreat observation window (0.0-1.0)",
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registry=self._registry,
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)
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# 初始化
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self.health_status.set(1)
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# ---- ASGI app 生成 ----
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def build_asgi_app(self) -> Any:
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"""生成 Prometheus ASGI 应用,挂载到独立端口。
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Returns:
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可传给 uvicorn 的 ASGI app。
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"""
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return make_asgi_app(registry=self._registry)
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# ---- 指标记录方法 ----
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def record_request(self, priority: str, status: str) -> None:
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"""记录一次请求。
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Args:
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priority: 优先级名(URGENT / HIGH / NORMAL / LOW)。
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status: 状态(success / ratelimited / error)。
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"""
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with self._lock:
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self.requests_total.labels(priority=priority, status=status).inc()
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def record_queue_latency(self, priority: str, seconds: float) -> None:
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"""记录排队延迟。
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Args:
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priority: 优先级名。
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seconds: 排队等待秒数。
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"""
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with self._lock:
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self.queue_latency_seconds.labels(priority=priority).observe(seconds)
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def record_upstream(self, status_code: int, model_id: str) -> None:
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"""记录上游响应。
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Args:
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status_code: HTTP 状态码。
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model_id: 模型标识符。
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"""
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with self._lock:
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self.upstream_latency_seconds.labels(model_id=model_id).observe(0.0)
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def record_upstream_error(self, status_code: int, model_id: str) -> None:
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"""记录上游错误。
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Args:
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status_code: 错误 HTTP 状态码。
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model_id: 模型标识符。
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"""
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with self._lock:
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self.upstream_errors_total.labels(
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status_code=str(status_code), model_id=model_id
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).inc()
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def record_upstream_latency(self, model_id: str, seconds: float) -> None:
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"""记录上游响应延迟。
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Args:
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model_id: 模型标识符。
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seconds: 响应延迟秒数。
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"""
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with self._lock:
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self.upstream_latency_seconds.labels(model_id=model_id).observe(seconds)
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def update_token_status(self, tokens: float, rate_per_minute: float) -> None:
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"""更新令牌桶状态。
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Args:
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tokens: 当前可用令牌数。
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rate_per_minute: 每分钟速率。
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"""
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with self._lock:
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self.tokens_available.set(tokens)
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self.tokens_rate.set(rate_per_minute)
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def update_queue_depth(self, depths: dict[str, int]) -> None:
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"""更新各优先级队列深度。
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Args:
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depths: {priority_name: count} 映射。
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"""
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with self._lock:
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# 先清零所有已知标签再设置,避免残留旧值
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for pri in ("URGENT", "HIGH", "NORMAL", "LOW"):
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self.queue_depth.labels(priority=pri).set(depths.get(pri, 0))
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def increment_fallback(self) -> None:
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"""降级直通计数 +1。"""
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with self._lock:
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self.fallback_passthrough_total.inc()
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def set_health(self, healthy: bool) -> None:
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"""设置健康状态。
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Args:
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healthy: True=健康, False=不健康。
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"""
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with self._lock:
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self.health_status.set(1 if healthy else 0)
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def update_uptime(self) -> None:
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"""更新运行时长。"""
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with self._lock:
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self.uptime_seconds.set(time.time() - self._start_time)
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# ---- 避退模式指标 ----
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def update_retreat_metrics(
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self,
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retreat_state: str,
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effective_rate_rpm: float,
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upstream_429_rate: float,
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) -> None:
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"""更新避退模式指标。
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Args:
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retreat_state: "normal" / "retreat" / "recover".
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effective_rate_rpm: 当前实际速率 (RPM)。
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upstream_429_rate: 上游 429 率 (0.0-1.0)。
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"""
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state_map: dict[str, int] = {"normal": 0, "retreat": 1, "recover": 2}
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with self._lock:
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self.retreat_state.set(state_map.get(retreat_state, 0))
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self.effective_rate_rpm.set(effective_rate_rpm)
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self.upstream_429_rate.set(upstream_429_rate)
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# ---- 导出 ----
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def generate_latest(self) -> bytes:
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"""生成 Prometheus 文本格式的指标数据。
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Returns:
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Prometheus 文本格式 bytes。
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"""
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with self._lock:
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self.update_uptime()
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return generate_latest(self._registry) |