Étape 2 — Fingerprinting HTTP/2 dans le pipeline ML : - Ajout du dictionnaire dict_browser_h2 (11 familles de navigateurs) dans 05_aggregation_tables.sql - Ajout du CTE h2_agg et 4 features HTTP/2 dans 07_ai_features_view.sql : h2_settings_known, h2_pseudo_order_match, h2_ja4_coherence, h2_settings_rare - Calcul du fingerprint_coherence_score (5 axes pondérés) dans la vue - Ajout du 6e axe axis_h2_coherence dans browser.py (poids rééquilibrés) - browser_h2.csv : 11 fingerprints Akamai → famille navigateur Étape 3 — Pré-filtre de cohérence sur la baseline humaine : - pipeline.py exclut les sessions avec fingerprint_coherence_score < seuil de la baseline d'entraînement - FINGERPRINT_COHERENCE_THRESHOLD configurable via env (défaut 0.25) - Log des sessions exclues pour analyse SOC Étape 4 — Détection de drift améliorée : - scoring.py : passage de 5 à 9 quantiles (p5…p95) - Ajout de la divergence KL en complément du test KS - Détection de drift adversarial (≥80% des features dérivent dans la même direction) - Split temporel strict pour la validation Étape 5 — Graphe bipartite JA4×ASN (§5.2) : - fleet.py : détection de flottes via NetworkX + Louvain (imports optionnels) - enrich_with_fleet_score() : ajout fleet_score + fleet_campaign_flag au DataFrame - cycle.py : appel après preprocess_df avec log du nombre de sessions en flotte - SQL migration 05_fleet_metrics_tables.sql : table fleet_detections (TTL 7j) - Dashboard : /fleet + /api/fleet (communautés détectées) + template fleet.html Étape 6 — Cross-domain Jaccard §5.8 : - 12_thesis_features.sql : CTE jaccard_paths → cross_domain_path_similarity - Signal : même chemins (/admin, /wp-login) sur plusieurs hosts = scanner Étape 7 — ExIFFI + erreurs AE par feature : - scoring.py : compute_exiffi_importance() par permutation, compute_ae_feature_errors() - pipeline.py : calcul ExIFFI sur X_test, mapping index → dict pour anomalies - build_reason() enrichi avec exiffi_top quand SHAP inactif Étape 8 — Méta-learner pour la pondération de l'ensemble : - scoring.py : classe MetaLearner (LogisticRegression, fallback poids fixes <1000 labels) - Collecte des labels depuis le cycle courant (known_bots, légitimes, Anubis) - pipeline.py : remplacement des poids fixes par MetaLearner.predict() Étape 9 — Métriques de performance et monitoring : - metrics.py : record_cycle_metrics() — taux anomalie, drift, corrélation, latence - SQL migration 05_fleet_metrics_tables.sql : table ml_performance_metrics (TTL 90j) - Dashboard : /health + /api/health + template health.html - cycle.py : appel record_cycle_metrics en fin de cycle (Complet + Applicatif) Tests : 36/36 bot-detector tests passent Co-authored-by: Copilot <223556219+Copilot@users.noreply.github.com>
372 lines
19 KiB
HTML
372 lines
19 KiB
HTML
{% extends "base.html" %}
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{% block page_title %}Santé du Pipeline ML — §9{% endblock %}
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{% block content %}
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<div class="p-4 lg:p-6 space-y-4 max-w-[1920px] mx-auto">
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<!-- ═══ Header KPIs ═══ -->
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<div class="flex flex-wrap items-center gap-4 mb-2">
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<h1 class="text-xl font-bold text-white flex items-center gap-2">
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<svg class="w-6 h-6 text-green-400" fill="none" stroke="currentColor" viewBox="0 0 24 24"><path stroke-linecap="round" stroke-linejoin="round" stroke-width="2" d="M9 19v-6a2 2 0 00-2-2H5a2 2 0 00-2 2v6a2 2 0 002 2h2a2 2 0 002-2zm0 0V9a2 2 0 012-2h2a2 2 0 012 2v10m-6 0a2 2 0 002 2h2a2 2 0 002-2m0 0V5a2 2 0 012-2h2a2 2 0 012 2v14a2 2 0 01-2 2h-2a2 2 0 01-2-2z"/></svg>
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Santé du Pipeline ML
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</h1>
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<div class="ml-auto flex items-center gap-3 flex-wrap">
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<div class="text-center px-3">
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<div class="text-2xl font-bold text-brand-500" id="kpi-cycles">—</div>
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<div class="text-[10px] text-gray-500 uppercase tracking-wider">Cycles (7j)</div>
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</div>
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<div class="text-center px-3 border-l border-gray-700">
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<div class="text-2xl font-bold text-orange-400" id="kpi-anomaly">—</div>
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<div class="text-[10px] text-gray-500 uppercase tracking-wider">Taux anomalie moy.</div>
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</div>
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<div class="text-center px-3 border-l border-gray-700">
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<div class="text-2xl font-bold text-yellow-400" id="kpi-latency">—</div>
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<div class="text-[10px] text-gray-500 uppercase tracking-wider">Latence moy. (ms)</div>
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</div>
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<div class="text-center px-3 border-l border-gray-700">
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<div class="text-2xl font-bold text-red-400" id="kpi-drifts">—</div>
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<div class="text-[10px] text-gray-500 uppercase tracking-wider">Alertes drift</div>
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</div>
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</div>
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</div>
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<!-- ═══ Doc banner ═══ -->
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<div class="bg-gray-900/50 border border-gray-800 rounded-lg px-4 py-3 text-xs text-gray-400 leading-relaxed">
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<strong class="text-green-300">Métriques de performance — Étape 9</strong> — Chaque cycle du
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bot-detector (~5 min) enregistre son taux d'anomalie, sa latence, son taux de corrélation
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réseau, le nombre de features valides et les alertes de dérive.
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<br><strong>Alertes :</strong>
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<span class="text-red-400">drift_alert</span> = dérive de features > 30% —
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<span class="text-orange-400">anomaly_rate > 10%</span> = risque de sur-détection —
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<span class="text-yellow-400">latence > 300s</span> = problème de performance.
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<br><strong>Action SOC :</strong> Un drift prolongé nécessite un re-entraînement manuel.
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Un taux de corrélation bas (< 50%) indique un problème sentinel/correlator.
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</div>
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<!-- ═══ Graphiques temporels ═══ -->
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<div class="grid grid-cols-1 lg:grid-cols-2 gap-4">
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<!-- Taux d'anomalie -->
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<div class="section-card">
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<div class="section-header">
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<span class="section-title">
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<svg class="w-4 h-4 text-orange-400" fill="none" stroke="currentColor" viewBox="0 0 24 24"><path stroke-linecap="round" stroke-linejoin="round" stroke-width="2" d="M13 17h8m0 0V9m0 8l-8-8-4 4-6-6"/></svg>
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Taux d'anomalie par cycle
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<span class="relative inline-block"><button onclick="docToggle(this)" class="doc-btn">ⓘ</button><div class="doc-panel">
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<h4>Taux d'anomalie</h4>
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<p>Pourcentage de sessions classées HIGH/CRITICAL/MEDIUM/LOW par cycle, par modèle.</p>
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<p><strong>Seuil d'alerte :</strong> > 10% → sur-détection probable. < 0.5% → sous-détection.</p>
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<p class="doc-source">Source : ml_performance_metrics</p>
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</div></span>
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</span>
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</div>
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<div class="section-body"><div id="anomaly-chart" style="height:240px"></div></div>
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</div>
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<!-- Latence -->
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<div class="section-card">
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<div class="section-header">
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<span class="section-title">
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<svg class="w-4 h-4 text-yellow-400" fill="none" stroke="currentColor" viewBox="0 0 24 24"><path stroke-linecap="round" stroke-linejoin="round" stroke-width="2" d="M12 8v4l3 3m6-3a9 9 0 11-18 0 9 9 0 0118 0z"/></svg>
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Latence des cycles (ms)
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<span class="relative inline-block"><button onclick="docToggle(this)" class="doc-btn">ⓘ</button><div class="doc-panel">
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<h4>Latence de traitement</h4>
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<p>Durée totale du cycle bot-detector en millisecondes (fetch ClickHouse + scoring ML + insert).</p>
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<p><strong>Seuil d'alerte :</strong> > 300 000ms (5 min) → le cycle dépasse l'intervalle planifié.</p>
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<p class="doc-source">Source : ml_performance_metrics.cycle_latency_ms</p>
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</div></span>
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</span>
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</div>
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<div class="section-body"><div id="latency-chart" style="height:240px"></div></div>
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</div>
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</div>
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<!-- Drift rate et taux de corrélation -->
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<div class="grid grid-cols-1 lg:grid-cols-2 gap-4">
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<div class="section-card">
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<div class="section-header">
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<span class="section-title">
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<svg class="w-4 h-4 text-red-400" fill="none" stroke="currentColor" viewBox="0 0 24 24"><path stroke-linecap="round" stroke-linejoin="round" stroke-width="2" d="M12 9v2m0 4h.01m-6.938 4h13.856c1.54 0 2.502-1.667 1.732-2.5L13.732 4c-.77-.833-1.964-.833-2.732 0L4.082 16.5c-.77.833.192 2.5 1.732 2.5z"/></svg>
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Dérive des features
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</span>
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</div>
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<div class="section-body"><div id="drift-chart" style="height:200px"></div></div>
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</div>
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<div class="section-card">
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<div class="section-header">
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<span class="section-title">
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<svg class="w-4 h-4 text-blue-400" fill="none" stroke="currentColor" viewBox="0 0 24 24"><path stroke-linecap="round" stroke-linejoin="round" stroke-width="2" d="M13.828 10.172a4 4 0 00-5.656 0l-4 4a4 4 0 105.656 5.656l1.102-1.101m-.758-4.899a4 4 0 005.656 0l4-4a4 4 0 00-5.656-5.656l-1.1 1.1"/></svg>
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Taux de corrélation réseau
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<span class="relative inline-block"><button onclick="docToggle(this)" class="doc-btn">ⓘ</button><div class="doc-panel">
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<h4>Taux de corrélation</h4>
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<p>Proportion de sessions avec <code>correlated=1</code> (JA4 TLS corrélé par sentinel).</p>
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<p><strong>Valeur attendue :</strong> > 50%. En dessous, vérifier sentinel et logcorrelator.</p>
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<p class="doc-source">Source : ml_performance_metrics.correlated_rate</p>
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</div></span>
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</span>
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</div>
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<div class="section-body"><div id="corr-chart" style="height:200px"></div></div>
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</div>
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</div>
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<!-- ═══ Table des cycles récents ═══ -->
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<div class="section-card overflow-hidden">
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<div class="section-header">
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<span class="section-title">
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<svg class="w-4 h-4 text-green-400" fill="none" stroke="currentColor" viewBox="0 0 24 24"><path stroke-linecap="round" stroke-linejoin="round" stroke-width="2" d="M9 5H7a2 2 0 00-2 2v12a2 2 0 002 2h10a2 2 0 002-2V7a2 2 0 00-2-2h-2M9 5a2 2 0 002 2h2a2 2 0 002-2M9 5a2 2 0 012-2h2a2 2 0 012 2"/></svg>
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Cycles récents
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</span>
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<div class="flex items-center gap-2">
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<select id="model-filter" class="bg-gray-800 text-gray-300 text-xs border border-gray-700 rounded px-2 py-1">
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<option value="">Tous les modèles</option>
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</select>
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<span id="table-status" class="text-[10px] text-gray-500">Chargement…</span>
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</div>
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</div>
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<div class="overflow-x-auto">
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<table class="data-table">
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<thead>
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<tr>
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<th>Cycle</th>
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<th>Modèle</th>
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<th>Sessions</th>
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<th>Corrélation</th>
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<th>Anomalies</th>
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<th>CRITICAL</th>
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<th>HIGH</th>
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<th>Drift</th>
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<th>Latence (ms)</th>
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<th>Features</th>
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<th>Baseline</th>
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<th>Meta</th>
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</tr>
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</thead>
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<tbody id="metrics-body">
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<tr><td colspan="12" class="text-center text-gray-500 py-8">Chargement…</td></tr>
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</tbody>
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</table>
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</div>
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</div>
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</div>
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<script>
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/* ════════════════════════════════════════════════════════════════════════════
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* Page Santé du Pipeline ML — chargement et rendu
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* ════════════════════════════════════════════════════════════════════════════ */
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let _allMetrics = [];
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function fmtTs(ts) {
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if (!ts) return '—';
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return new Date(ts).toLocaleString('fr-FR', {dateStyle:'short', timeStyle:'short'});
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}
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function pct(v) {
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return (v * 100).toFixed(1) + '%';
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}
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function driftBadge(rate, alert) {
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if (alert) return `<span class="badge badge-critical">${pct(rate)} ⚠</span>`;
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if (rate > 0.15) return `<span class="badge badge-high">${pct(rate)}</span>`;
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return `<span class="badge badge-low">${pct(rate)}</span>`;
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}
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function anomalyBadge(rate) {
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if (rate > 0.10) return `<span class="badge badge-critical">${pct(rate)}</span>`;
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if (rate > 0.05) return `<span class="badge badge-high">${pct(rate)}</span>`;
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if (rate > 0.01) return `<span class="badge badge-medium">${pct(rate)}</span>`;
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return `<span class="badge badge-low">${pct(rate)}</span>`;
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}
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function corrBadge(rate) {
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if (rate < 0.30) return `<span class="badge badge-critical">${pct(rate)}</span>`;
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if (rate < 0.50) return `<span class="badge badge-high">${pct(rate)}</span>`;
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return `<span class="badge badge-low">${pct(rate)}</span>`;
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}
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function latencyBadge(ms) {
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if (ms > 300000) return `<span class="badge badge-critical">${ms.toLocaleString()}</span>`;
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if (ms > 120000) return `<span class="badge badge-high">${ms.toLocaleString()}</span>`;
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return `<span class="text-gray-300 text-xs">${ms.toLocaleString()}</span>`;
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}
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function renderTable(metrics) {
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const tbody = document.getElementById('metrics-body');
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if (!metrics.length) {
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tbody.innerHTML = '<tr><td colspan="12" class="text-center text-gray-500 py-8">Aucune donnée sur les 7 derniers jours</td></tr>';
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return;
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}
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tbody.innerHTML = metrics.map(m => `
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<tr class="${m.drift_alert ? 'bg-red-900/10' : ''}">
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<td class="text-gray-400 text-xs">${fmtTs(m.cycle_at)}</td>
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<td><span class="badge badge-known">${m.model_name || '—'}</span></td>
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<td class="text-right font-mono text-xs">${(m.total_sessions || 0).toLocaleString('fr-FR')}</td>
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<td class="text-right">${corrBadge(m.correlated_rate || 0)}</td>
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<td class="text-right">${anomalyBadge(m.anomaly_rate || 0)}</td>
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<td class="text-right font-bold text-red-400">${m.critical_count || 0}</td>
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<td class="text-right font-bold text-orange-400">${m.high_count || 0}</td>
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<td class="text-right">${driftBadge(m.drift_rate || 0, m.drift_alert)}</td>
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<td class="text-right">${latencyBadge(m.cycle_latency_ms || 0)}</td>
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<td class="text-right text-xs text-gray-400">${m.features_valid || 0}/${m.features_total || 0}</td>
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<td class="text-right text-xs text-gray-400">${(m.baseline_size || 0).toLocaleString()}</td>
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<td class="text-center">${m.meta_learner_active ? '✓' : '—'}</td>
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</tr>
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`).join('');
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}
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function filterAndRender() {
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const modelFilter = document.getElementById('model-filter').value;
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const filtered = modelFilter
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? _allMetrics.filter(m => m.model_name === modelFilter)
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: _allMetrics;
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renderTable(filtered);
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}
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async function loadHealth() {
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try {
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const res = await fetch('/api/health');
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const data = await res.json();
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_allMetrics = data.metrics || [];
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// KPIs globaux
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const driftAlerts = _allMetrics.filter(m => m.drift_alert).length;
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document.getElementById('kpi-cycles').textContent = _allMetrics.length;
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document.getElementById('kpi-anomaly').textContent = (data.avg_anomaly_rate * 100).toFixed(2) + '%';
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document.getElementById('kpi-latency').textContent = Math.round(data.avg_latency_ms || 0).toLocaleString('fr-FR');
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document.getElementById('kpi-drifts').textContent = driftAlerts;
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document.getElementById('table-status').textContent = `${_allMetrics.length} cycle(s)`;
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// Filtre modèles
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const models = [...new Set(_allMetrics.map(m => m.model_name).filter(Boolean))];
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const sel = document.getElementById('model-filter');
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models.forEach(name => {
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const opt = document.createElement('option');
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opt.value = name;
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opt.textContent = name;
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sel.appendChild(opt);
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});
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sel.addEventListener('change', filterAndRender);
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renderTable(_allMetrics);
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renderCharts(_allMetrics);
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} catch (err) {
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console.error('Erreur chargement métriques :', err);
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document.getElementById('table-status').textContent = 'Erreur de chargement';
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document.getElementById('metrics-body').innerHTML =
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'<tr><td colspan="12" class="text-center text-red-500 py-8">Erreur de chargement</td></tr>';
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}
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}
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function renderCharts(metrics) {
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if (!metrics.length) return;
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// Ordre chronologique pour les graphes
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const ordered = [...metrics].reverse();
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const labels = ordered.map(m => fmtTs(m.cycle_at));
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// Couleurs par modèle
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const modelColors = {'Complet':'#6366f1', 'Applicatif':'#22d3ee'};
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const colorFor = name => modelColors[name] || '#9ca3af';
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// --- Graphe taux d'anomalie ---
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const anomalyEl = document.getElementById('anomaly-chart');
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if (anomalyEl) {
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const byModel = {};
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ordered.forEach(m => {
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(byModel[m.model_name] = byModel[m.model_name] || []).push(
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+(m.anomaly_rate * 100).toFixed(2)
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);
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});
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const anomalyChart = echarts.init(anomalyEl, 'dark');
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anomalyChart.setOption({
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backgroundColor: 'transparent',
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tooltip: { trigger:'axis', valueFormatter: v => v + '%' },
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legend: { bottom: 0, textStyle:{color:'#9ca3af', fontSize:10} },
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xAxis: { type:'category', data: labels, axisLabel:{color:'#6b7280', fontSize:9, rotate:30, interval:'auto'} },
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yAxis: { type:'value', name:'%', axisLabel:{color:'#6b7280', fontSize:10},
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axisLine:{lineStyle:{color:'#374151'}} },
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series: Object.entries(byModel).map(([name, vals]) => ({
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name, type:'line', data: vals, smooth: true,
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lineStyle:{color: colorFor(name), width:2},
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itemStyle:{color: colorFor(name)},
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areaStyle:{color: colorFor(name), opacity:0.08},
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symbol:'none',
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})),
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markLine: { data:[{yAxis:10, label:{formatter:'Seuil 10%', fontSize:9}, lineStyle:{color:'#ef4444', type:'dashed'}}] },
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});
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window.addEventListener('resize', () => anomalyChart.resize());
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}
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// --- Graphe latence ---
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const latencyEl = document.getElementById('latency-chart');
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if (latencyEl) {
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const byModel = {};
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ordered.forEach(m => {
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(byModel[m.model_name] = byModel[m.model_name] || []).push(m.cycle_latency_ms || 0);
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});
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const latencyChart = echarts.init(latencyEl, 'dark');
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latencyChart.setOption({
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backgroundColor: 'transparent',
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tooltip: { trigger:'axis', valueFormatter: v => v.toLocaleString() + ' ms' },
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legend: { bottom: 0, textStyle:{color:'#9ca3af', fontSize:10} },
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xAxis: { type:'category', data: labels, axisLabel:{color:'#6b7280', fontSize:9, rotate:30, interval:'auto'} },
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yAxis: { type:'value', name:'ms', axisLabel:{color:'#6b7280', fontSize:10} },
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series: Object.entries(byModel).map(([name, vals]) => ({
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name, type:'bar', data: vals, stack:'total',
|
|
itemStyle:{color: colorFor(name)}, barMaxWidth:20,
|
|
})),
|
|
});
|
|
window.addEventListener('resize', () => latencyChart.resize());
|
|
}
|
|
|
|
// --- Graphe drift ---
|
|
const driftEl = document.getElementById('drift-chart');
|
|
if (driftEl) {
|
|
const driftChart = echarts.init(driftEl, 'dark');
|
|
driftChart.setOption({
|
|
backgroundColor: 'transparent',
|
|
tooltip: { trigger:'axis', valueFormatter: v => (v * 100).toFixed(1) + '%' },
|
|
xAxis: { type:'category', data: labels, axisLabel:{color:'#6b7280', fontSize:9, rotate:30, interval:'auto'} },
|
|
yAxis: { type:'value', max:1, axisLabel:{color:'#6b7280', fontSize:10,
|
|
formatter: v => (v*100).toFixed(0) + '%'} },
|
|
series: [{
|
|
type: 'bar',
|
|
data: ordered.map(m => ({
|
|
value: m.drift_rate || 0,
|
|
itemStyle: { color: m.drift_alert ? '#ef4444' : '#6366f1' },
|
|
})),
|
|
barMaxWidth: 20,
|
|
}],
|
|
});
|
|
window.addEventListener('resize', () => driftChart.resize());
|
|
}
|
|
|
|
// --- Graphe corrélation réseau ---
|
|
const corrEl = document.getElementById('corr-chart');
|
|
if (corrEl) {
|
|
const byModel = {};
|
|
ordered.forEach(m => {
|
|
(byModel[m.model_name] = byModel[m.model_name] || []).push(
|
|
+(m.correlated_rate * 100).toFixed(1)
|
|
);
|
|
});
|
|
const corrChart = echarts.init(corrEl, 'dark');
|
|
corrChart.setOption({
|
|
backgroundColor: 'transparent',
|
|
tooltip: { trigger:'axis', valueFormatter: v => v + '%' },
|
|
legend: { bottom: 0, textStyle:{color:'#9ca3af', fontSize:10} },
|
|
xAxis: { type:'category', data: labels, axisLabel:{color:'#6b7280', fontSize:9, rotate:30, interval:'auto'} },
|
|
yAxis: { type:'value', max:100, axisLabel:{color:'#6b7280', fontSize:10,
|
|
formatter: v => v + '%'} },
|
|
series: Object.entries(byModel).map(([name, vals]) => ({
|
|
name, type:'line', data: vals, smooth:true,
|
|
lineStyle:{color: colorFor(name), width:2},
|
|
itemStyle:{color: colorFor(name)}, symbol:'none',
|
|
})),
|
|
});
|
|
window.addEventListener('resize', () => corrChart.resize());
|
|
}
|
|
}
|
|
|
|
loadHealth();
|
|
</script>
|
|
{% endblock %}
|