Surface Root Causes in Seconds, Not Hours
Edge-native machine learning with 18-model consensus delivers 99% false positive reduction in anomaly detection and sub-2-second correlation analysis across thousands of metrics - transforming hours of manual investigation into instant insights without configuration or specialist expertise.

Intelligence That Transforms Troubleshooting
Six breakthrough capabilities that redefine infrastructure analysis
18-Model Consensus
Unanimous agreement across 18 independent ML models achieves 99% false positive reduction in anomaly detection - delivering accurate signals while filtering noise.
Sub-2-Second Analysis
Edge-native processing evaluates thousands of metrics simultaneously and returns ranked results in seconds - maintaining consistent performance from 1 to 100,000+ nodes.
Automated Correlation
Discover hidden relationships across all metrics automatically - revealing cascading failures and blast radius without manual rules or configuration.
Root Cause Ranking
Scoring engine surfaces root causes in top 30-50 results from thousands of metrics - transforming hours of investigation into minutes of discovery.
Per-Second Precision
60× more training samples than minute-level monitoring enables detection of transient anomalies invisible to traditional tools - capturing exact incident timelines.
Zero Configuration
Works identically across heterogeneous infrastructure without threshold tuning or algorithm selection - first ML detection within 15 minutes, full confidence within 48 hours.
Trusted by operations teams managing critical infrastructure worldwide
Accelerate Resolution Through Intelligent Analysis
Accurate Anomaly Detection Through Consensus Intelligence
99% false positive reduction
Learn About ML Architecture

Discover Root Causes in Minutes Instead of Hours
80% MTTR reduction
See Troubleshooting in Action

Catch Transient Issues Before They Cascade
60× more training samples
Explore Real-Time Monitoring

Empower Every Engineer With Expert-Level Analysis
Zero learning curve
See Zero-Configuration Benefits

Scale Analysis Without Performance Degradation
Linear scalability
Understand Distributed Architecture

Maintain Complete Data Sovereignty
Zero data egress
Learn About Data Sovereignty

How Anomaly Advisor Compares
Intelligent Analysis Without Complexity
Traditional anomaly detection requires extensive configuration, produces overwhelming noise, and misses transient issues with minute-level sampling. Netdata’s edge-native approach delivers superior accuracy and speed without expertise barriers.
Capability
Netdata Anomaly Advisor
Traditional Monitoring
False Positive Rate
✅ Ideal
18-model consensus achieves 99% reduction
⚠️ Limited
Single-model or threshold-based detection
Time to Root Cause
✅ Seconds
Automated correlation across thousands of metrics
❌ Hours
Manual investigation across fragmented tools
Configuration Required
✅ Zero
Works identically across all infrastructure
⚠️ Extensive
Algorithm selection, threshold tuning, baseline training
Data Granularity
✅ Per-Second
60× more training samples than per-minute
⚠️ Per-Minute
Misses transient issues through averaging
Detection Latency
✅ Sub-2-Seconds
Edge-native processing eliminates delays
⚠️ 20-90 Seconds
Cloud-based processing adds latency
Time to First Detection
✅ 15 Minutes
Full confidence within 48 hours
⚠️ Multi-Week
Extended baseline training period
Scalability
✅ Linear
Consistent performance 1-100K+ nodes
⚠️ Challenging
Centralized bottlenecks degrade performance
Expertise Required
✅ None
Junior engineers effective immediately
⚠️ Specialized Skills
Query languages, ML tuning, correlation rules
Data Sovereignty
✅ Complete
All ML computation local to your infrastructure
❌ Cloud-Dependent
Data streams externally for processing
How Anomaly Advisor Works
Unanimous Agreement Filters Noise
Each metric monitored by 18 independent k-means models trained on 6-hour windows at 3-hour intervals. Anomaly flagged only when all models unanimously agree - achieving theoretical 10^-36 false positive rate per metric.
99% false positive reduction in anomaly detection
Learn ML Architecture
Key Capabilities That Transform Operations
Six breakthrough features that accelerate troubleshooting through intelligent analysis
Consensus-Based Detection
18 independent models achieve 99% false positive reduction through unanimous agreement - providing high-confidence anomaly signals.
Sub-2-Second Analysis
Edge-native processing maintains consistent performance from 1 to 100,000+ nodes - enabling immediate response regardless of infrastructure scale.
Automated Correlation
Discover hidden relationships across all metrics without manual rules - revealing cascading failures and blast radius automatically.
Intelligent Ranking
Root causes surface in top 30-50 results from thousands of metrics - transforming hours of investigation into minutes of discovery.
Transient Detection
Per-second granularity captures anomalies lasting 2-10 seconds - preventing escalation of issues invisible to minute-level monitoring.
Universal Applicability
Works identically across heterogeneous infrastructure without configuration - empowering engineers at any experience level.

September 1, 2022
How Netdata’s Machine Learning works
Uncover how Netdata’s machine learning detects anomalies, predicts issues, and optimizes performance automatically. Boost your monitoring today!

June 23, 2022
Anomaly rate in every chart
Monitor anomalies effortlessly with Netdata’s anomaly rate in every chart. Get real-time insights and detect issues faster. Learn how it works—read now!
April 22, 2026
Nagios Plugins Collector: Run Your Existing Checks and Custom Scripts Inside Netdata
Netdata can now execute Nagios-compatible plugins and custom scripts in any language, tracking check states, execution metrics, and automatically charting performance data with built-in alerting.





















































