Prometheus ML Metrics
Instrumenting ML services with Prometheus metrics
Prometheus ML Metrics
Instrumenting ML services with Prometheus metrics
Prometheus ML Metrics Overview Instrumenting ML services with Prometheus metrics. This guide covers practical implementation for production ML systems. Why This Matters in MLOps Modern ML systems require rigorous operations practices: - **Reliabi
Prometheus ML Metrics
Overview
Instrumenting ML services with Prometheus metrics. This guide covers practical implementation for production ML systems.
Why This Matters in MLOps
Modern ML systems require rigorous operations practices:
Setup
bash
Install required tools
pip install prometheus mlflow pandas numpy scikit-learnOr with Docker
docker pull python:3.11-slim
Core Implementation
python
import os
import json
import logging
from datetime import datetime
from pathlib import Pathlogger = logging.getLogger(__name__)
class PrometheusMLMetrics:
"""
Prometheus ML Metrics implementation.
Handles: monitoring
Tool: prometheus
"""
def __init__(self, config: dict = None):
self.config = config or self._default_config()
self._setup()
def _default_config(self) -> dict:
return {
"tool": "prometheus",
"environment": os.getenv("ENVIRONMENT", "development"),
"log_level": "INFO",
}
def _setup(self):
"""Initialize prometheus connection and resources."""
logging.basicConfig(level=self.config.get("log_level", "INFO"))
logger.info(f"Initialized Prometheus ML Metrics with config: {self.config}")
def run(self, **kwargs) -> dict:
"""Execute monitoring."""
start = datetime.utcnow()
try:
result = self._execute(**kwargs)
elapsed = (datetime.utcnow() - start).total_seconds()
logger.info(f"Prometheus ML Metrics completed in {elapsed:.2f}s")
return {
"status": "success",
"result": result,
"elapsed_seconds": elapsed
}
except Exception as e:
logger.error(f"Prometheus ML Metrics failed: {e}")
return {
"status": "failed",
"error": str(e)
}
def _execute(self, **kwargs) -> dict:
"""Core monitoring logic. Override to customize."""
return {"completed": True, "tool": "prometheus"}
Configuration
config = {
"tool": "prometheus",
"tracking_uri": os.getenv("MLFLOW_TRACKING_URI", "http://localhost:5000"),
"artifact_root": "./artifacts",
}Initialize
processor = PrometheusMLMetrics(config)
result = processor.run()
print(json.dumps(result, indent=2))
PROMETHEUS Integration
python
Specific prometheus integration for monitoring
import subprocessdef setup_prometheus():
"""Configure prometheus for monitoring."""
# Initialize project
print(f"Setting up prometheus for monitoring...")
# Example configuration
config = {
"project": "my-ml-project",
"tool": "prometheus",
"specialty": "monitoring",
"version": "1.0.0"
}
# Save configuration
Path(".prometheus").mkdir(exist_ok=True)
with open(f".prometheus/config.json", "w") as f:
json.dump(config, f, indent=2)
print(f"prometheus configured for monitoring")
return config
config = setup_prometheus()
Monitoring and Alerting
python
from dataclasses import dataclass
import time@dataclass
class MetricSnapshot:
timestamp: float
metric_name: str
value: float
labels: dict
class MLOpsMonitor:
"""Monitor monitoring metrics."""
def __init__(self):
self.metrics: list[MetricSnapshot] = []
self.thresholds = {
"error_rate": 0.05,
"latency_p99_ms": 1000,
"data_drift_score": 0.3
}
def record(self, metric: str, value: float, labels: dict = None):
snapshot = MetricSnapshot(
timestamp=time.time(),
metric_name=metric,
value=value,
labels=labels or {}
)
self.metrics.append(snapshot)
self._check_threshold(metric, value)
def _check_threshold(self, metric: str, value: float):
threshold = self.thresholds.get(metric)
if threshold and value > threshold:
logger.warning(f"ALERT: {metric}={value:.3f} exceeds threshold {threshold}")
monitor = MLOpsMonitor()
CI/CD Integration
yaml
.github/workflows/ml-pipeline.yml
name: ML Pipelineon:
push:
paths: ['src/', 'data/']
jobs:
train-and-evaluate:
runs-on: ubuntu-latest
steps:
- uses: actions/checkout@v4
- name: Setup Python
uses: actions/setup-python@v5
with:
python-version: '3.11'
- name: Install dependencies
run: pip install -r requirements.txt
- name: Run monitoring
run: python -m src.prometheus_ml_metrics
env:
MLFLOW_TRACKING_URI: ${{ secrets.MLFLOW_URI }}
- name: Check model quality
run: python -m src.validate_model
Best Practices
Resources
相关工具