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<# InsightFinder AI Observability Model – Unsupervised Anomaly Detection for AI and IT Systems

InsightFinder

🧠 Overview

InsightFinder AI leverages patented unsupervised machine learning algorithms to solve the toughest problems in enterprise AI and IT management. Built on real-time anomaly detection, root cause analysis, and incident prediction, InsightFinder delivers AI Observability and IT Observability solutions that help enterprise-scale organizations:

  • Automatically identify, diagnose, and remediate system issues
  • Detect and prevent ML model drift and LLM hallucinations
  • Ensure data quality in AI pipelines
  • Reduce downtime across infrastructure and applications

This model is a core component of the InsightFinder platform, enabling real-time, unsupervised anomaly detection across time-series telemetry data β€” without requiring any labeled incidents or predefined thresholds.

πŸ‘‰ Visit www.insightfinder.com to learn more.


πŸ” Key Capabilities

  • AI-native observability across services, containers, AI pipelines, and infrastructure
  • Unsupervised anomaly detection with no human labeling
  • Streaming inference for real-time incident prevention
  • Root cause heatmaps across logs, traces, and metrics
  • Detection of AI-specific issues: model drift, hallucinations, degraded data quality

🧰 Primary Use Cases

  • Observability for AI/ML pipelines (model/data drift, hallucinations)
  • Monitoring large-scale cloud and hybrid infrastructure (Kubernetes, VMs, containers)
  • IT incident prediction and proactive remediation
  • Log and trace correlation to uncover root causes
  • Edge system anomaly detection (IoT, on-prem)

βš™οΈ Model Architecture

  • Architecture: Variational Autoencoder or Transformer-based time series model (customizable)
  • Multivariate, asynchronous time-series support
  • Self-learning capability with streaming updates
  • Trained on production-grade telemetry from real-world environments

πŸ“₯ Input Format

  • Time-series telemetry from:
    • Prometheus
    • OpenTelemetry
    • Fluentd / Fluent Bit
    • AWS CloudWatch, Azure Monitor
  • Format: JSON or CSV with timestamp, metric_name, value, optional metadata

πŸ“€ Output

  • Anomaly score (0–1)
  • Anomaly classification (binary)
  • Root cause probability heatmap
  • Flags for drift or AI model issues (optional)

πŸ“Š Evaluation Metrics

  • Precision, Recall, F1-Score on synthetic and real production incidents
  • ROC-AUC for anomaly score thresholds
  • Latency: Sub-second inference (<500ms average)

πŸ“¦ Training Data

  • Anonymized telemetry from:
    • Microservices and cloud infrastructure
    • Application logs, service traces
    • AI/ML pipeline signals
  • No labels or annotations required
  • Periodic retraining and adaptive learning supported
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