Replace all hardcoded 'mabase_prod.' table prefixes in dashboard route
SQL queries with configurable database names from settings:
- http_logs, http_logs_raw → settings.CLICKHOUSE_DB_LOGS
- All other tables → settings.CLICKHOUSE_DB_PROCESSING
Also qualify previously unqualified table references (bare FROM/JOIN
table_name) with the appropriate database prefix for consistency.
Each route file now imports 'from ..config import settings' and uses
f-strings with {settings.CLICKHOUSE_DB_PROCESSING} or
{settings.CLICKHOUSE_DB_LOGS} for database-qualified table names.
Files updated: analysis, attributes, audit, botnets, bruteforce,
clustering, detections, entities, fingerprints, header_fingerprint,
heatmap, incidents, investigation_summary, metrics, ml_features,
rotation, search, tcp_spoofing, variability (19 files).
Co-authored-by: Copilot <223556219+Copilot@users.noreply.github.com>
177 lines
6.5 KiB
Python
177 lines
6.5 KiB
Python
"""
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Endpoints pour les métriques du dashboard
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"""
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from fastapi import APIRouter, HTTPException
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from ..database import db
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from ..models import MetricsResponse, MetricsSummary, TimeSeriesPoint
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from ..config import settings
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router = APIRouter(prefix="/api/metrics", tags=["metrics"])
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@router.get("", response_model=MetricsResponse, summary="Métriques globales du dashboard")
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async def get_metrics():
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"""
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Récupère les métriques globales du dashboard
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"""
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try:
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# Résumé des métriques
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summary_query = f"""
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SELECT
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count() AS total_detections,
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countIf(threat_level = 'CRITICAL') AS critical_count,
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countIf(threat_level = 'HIGH') AS high_count,
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countIf(threat_level = 'MEDIUM') AS medium_count,
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countIf(threat_level = 'LOW') AS low_count,
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countIf(bot_name != '') AS known_bots_count,
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countIf(bot_name = '') AS anomalies_count,
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uniq(src_ip) AS unique_ips
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FROM {settings.CLICKHOUSE_DB_PROCESSING}.ml_detected_anomalies
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WHERE detected_at >= now() - INTERVAL 24 HOUR
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"""
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summary_result = db.query(summary_query)
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summary_row = summary_result.result_rows[0] if summary_result.result_rows else None
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if not summary_row:
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raise HTTPException(status_code=404, detail="Aucune donnée disponible")
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summary = MetricsSummary(
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total_detections=summary_row[0],
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critical_count=summary_row[1],
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high_count=summary_row[2],
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medium_count=summary_row[3],
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low_count=summary_row[4],
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known_bots_count=summary_row[5],
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anomalies_count=summary_row[6],
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unique_ips=summary_row[7]
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)
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# Série temporelle (par heure)
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timeseries_query = f"""
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SELECT
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toStartOfHour(detected_at) AS hour,
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count() AS total,
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countIf(threat_level = 'CRITICAL') AS critical,
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countIf(threat_level = 'HIGH') AS high,
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countIf(threat_level = 'MEDIUM') AS medium,
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countIf(threat_level = 'LOW') AS low
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FROM {settings.CLICKHOUSE_DB_PROCESSING}.ml_detected_anomalies
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WHERE detected_at >= now() - INTERVAL 24 HOUR
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GROUP BY hour
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ORDER BY hour
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"""
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timeseries_result = db.query(timeseries_query)
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timeseries = [
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TimeSeriesPoint(
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hour=row[0],
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total=row[1],
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critical=row[2],
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high=row[3],
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medium=row[4],
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low=row[5]
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)
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for row in timeseries_result.result_rows
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]
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# Distribution par menace
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threat_distribution = {
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"CRITICAL": summary.critical_count,
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"HIGH": summary.high_count,
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"MEDIUM": summary.medium_count,
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"LOW": summary.low_count
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}
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return MetricsResponse(
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summary=summary,
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timeseries=timeseries,
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threat_distribution=threat_distribution
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)
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except Exception as e:
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raise HTTPException(status_code=500, detail=f"Erreur lors de la récupération des métriques: {str(e)}")
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@router.get("/threats")
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async def get_threat_distribution():
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"""
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Récupère la répartition par niveau de menace
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"""
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try:
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query = f"""
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SELECT
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threat_level,
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count() AS count,
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round(count() * 100.0 / sum(count()) OVER (), 2) AS percentage
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FROM {settings.CLICKHOUSE_DB_PROCESSING}.ml_detected_anomalies
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WHERE detected_at >= now() - INTERVAL 24 HOUR
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GROUP BY threat_level
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ORDER BY count DESC
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"""
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result = db.query(query)
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return {
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"items": [
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{"threat_level": row[0], "count": row[1], "percentage": row[2]}
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for row in result.result_rows
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]
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}
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except Exception as e:
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raise HTTPException(status_code=500, detail=f"Erreur: {str(e)}")
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@router.get("/baseline")
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async def get_metrics_baseline():
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"""
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Compare les métriques actuelles (24h) vs hier (24h-48h) pour afficher les tendances.
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"""
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try:
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query = f"""
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SELECT
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countIf(detected_at >= now() - INTERVAL 24 HOUR) AS today_total,
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countIf(detected_at >= now() - INTERVAL 48 HOUR AND detected_at < now() - INTERVAL 24 HOUR) AS yesterday_total,
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uniqIf(src_ip, detected_at >= now() - INTERVAL 24 HOUR) AS today_ips,
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uniqIf(src_ip, detected_at >= now() - INTERVAL 48 HOUR AND detected_at < now() - INTERVAL 24 HOUR) AS yesterday_ips,
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countIf(threat_level = 'CRITICAL' AND detected_at >= now() - INTERVAL 24 HOUR) AS today_critical,
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countIf(threat_level = 'CRITICAL' AND detected_at >= now() - INTERVAL 48 HOUR AND detected_at < now() - INTERVAL 24 HOUR) AS yesterday_critical
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FROM {settings.CLICKHOUSE_DB_PROCESSING}.ml_detected_anomalies
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WHERE detected_at >= now() - INTERVAL 48 HOUR
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"""
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r = db.query(query)
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row = r.result_rows[0] if r.result_rows else None
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def pct_change(today: int, yesterday: int) -> float:
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if yesterday == 0:
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return 100.0 if today > 0 else 0.0
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return round((today - yesterday) / yesterday * 100, 1)
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today_total = int(row[0] or 0) if row else 0
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yesterday_total = int(row[1] or 0) if row else 0
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today_ips = int(row[2] or 0) if row else 0
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yesterday_ips = int(row[3] or 0) if row else 0
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today_crit = int(row[4] or 0) if row else 0
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yesterday_crit = int(row[5] or 0) if row else 0
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return {
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"total_detections": {
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"today": today_total,
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"yesterday": yesterday_total,
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"pct_change": pct_change(today_total, yesterday_total),
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},
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"unique_ips": {
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"today": today_ips,
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"yesterday": yesterday_ips,
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"pct_change": pct_change(today_ips, yesterday_ips),
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},
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"critical_alerts": {
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"today": today_crit,
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"yesterday": yesterday_crit,
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"pct_change": pct_change(today_crit, yesterday_crit),
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},
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}
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except Exception as e:
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raise HTTPException(status_code=500, detail=f"Erreur baseline: {str(e)}")
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