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VOOZH | about |
The only agent that thinks for itself
Autonomous Monitoring with self-learning AI built-in, operating independently across your entire stack.
Centralized metrics streaming and storage
Aggregate metrics from multiple agents into centralized Parent nodes for unified monitoring across your infrastructure.
Fully managed cloud platform
Access your monitoring data from anywhere with our SaaS platform. No infrastructure to manage, automatic updates, and global availability.
Deploy Netdata Cloud in your infrastructure
Run the full Netdata Cloud platform on-premises for complete data sovereignty and compliance with your security policies.
Powerful, intuitive monitoring interface
Modern, responsive UI built for real-time troubleshooting with customizable dashboards and advanced visualization capabilities.
Monitor on the go
Native iOS and Android apps bring full monitoring capabilities to your mobile device with real-time alerts and notifications.
The future of infrastructure observability
See our strategic direction across AI-native observability, full-stack signals, operational intelligence, and enterprise platform maturity.
Best energy efficiency
True real-time per-second
100% automated zero config
Centralized observability
Multi-year retention
High availability built-in
Zero maintenance
Always up-to-date
Enterprise security
Complete data control
Air-gap ready
Compliance certified
Millisecond responsiveness
Infinite zoom & pan
Works on any device
Native performance
Instant alerts
Monitor anywhere
AI-native observability
Continuous delivery
Open source foundation
80% Faster Incident Resolution
True Real-Time and Simple, even at Scale
90% Cost Reduction, Full Fidelity
See and Map Your Entire Network
Single Pane of Glass
Control Without Surrender
Integrations
800+ collectors and notification channels, auto-discovered and ready out of the box.
Reduced monitoring costs by 46% while cutting staff overhead by 67%.
β Leonardo Antunez, Codyas
No data shipping. No central storage costs. Query at the edge.
So many out-of-the-box features! I mostly don't have to develop anything.
β Simon Beginn, LANCOM Systems
Point-and-click troubleshooting. No PromQL, no LogQL, no learning curve.
Enterprise efficiency without enterprise complexityβreal ROI from day one.
β Leonardo Antunez, Codyas
Zero data egress. Only metadata reaches the cloud. Your metrics stay on your infrastructure.
Auto-discovered and configured. No manual setup required.
Slack, PagerDuty, Teams, email, webhooksβall built-in.
Built for the People Who Get Paged
Every Industry Has Rules. We Master Them.
Monitor Any Technology. Configure Nothing.
Complete Visibility. Total Control.
Don't Take Our Word for It
Netdata gives more than you invest in it. A rare unicorn that obeys the Pareto rule.
β Eduard Porquet Mateu, TMB Barcelona
Reduced website downtime by 99% and cloud bill by 30% using Netdata alerts.
β Falkland Islands Government
Optimized resource allocation based on Netdata alerts cut cloud spending by 30%.
β Falkland Islands Government
Reduced monitoring staff by 67% while cutting operational costs by 46%.
β Codyas
Netdata has agent capacity or a plugin for everything, including Windows and Kubernetes.
β Eduard Porquet Mateu, TMB Barcelona
So many out-of-the-box features! I mostly don't have to develop anything.
β Simon Beginn, LANCOM Systems
From 2-3 minutes to 30 secondsβinstant visibility into any node issue.
β Matthew Artist, Nodecraft
20% less downtime and 40% budget optimization from out-of-the-box monitoring.
β Simon Beginn, LANCOM Systems
Pay per Node. Unlimited Everything Else.
One price per node. Unlimited metrics, logs, users, and retention. No per-GB surprises.
What's Your Monitoring Really Costing You?
Most teams overpay by 40-60%. Let's find out why.
Your Infrastructure Is Unique. Let's Talk.
Because monitoring 10 nodes is different from monitoring 10,000.
Monitoring That Sells Itself
Deploy in minutes. Impress clients in hours. Earn recurring revenue for years.
Per-Second Metrics at Homelab Prices
Same engine, same dashboards, same ML. Just priced for tinkerers.
$1,000 Per Referral. Unlimited Referrals.
Your colleagues get 10% off. You get 10% commission. Everyone wins.
"Netdata's significant positive impact" β LANCOM Systems
Compare vs Datadog, Grafana, Dynatrace
"Cut costs by 46%, staff by 67%" β Codyas
"Reduced cloud bill by 30%" β Falkland Islands Gov
"Better observability with Netdata than combining other tools." β TMB Barcelona
DPA, SLAs, on-prem, volume pricing
One command, 30 seconds, real dataβno sandbox needed
Auto-config + per-node pricing = predictable profit
8-episode Netdata tutorial by LearnLinux.tv
3rd most starred monitoring project
Customers report 40-67% cost cuts, 99% downtime reduction
Free tier lets them try before they buy
AI Support Assistant, Available 24/7
Nedi has access to all official documentation, source code, and resources. Ask any question about Netdataβresponds in your language.
Engineering Insights & Product Updates
Jun 2026
Network Monitoring, the Netdata Way: β¦
Interface counters tell you a port is busy. β¦
Jun 2026
5 Best SolarWinds Alternatives for 2026
As organizations modernize their β¦
Jun 2026
SolarWinds Price Increases 2026: What β¦
If youβre a SolarWinds customer facing β¦
May 2026
High-cardinality metrics at scale: why β¦
The βhigh cardinality is β¦
Never Fight Fires Alone
Docs, community, and expert helpβpick your path to resolution.
60 Seconds to First Dashboard
One command to install. Zero config. 850+ integrations documented.
Level Up Your Monitoring
76,000+ Engineers Strong
Per-Second. 90% Cheaper. Data Stays Home.
See why teams switch from Datadog, Prometheus, Grafana, and more.
> Browse all comparisonsTrace issues directly in the source code
Get architecture recommendations
One of the most popular open-source monitoring projects
Enterprise-grade security and compliance
Your metrics stay on your infrastructure
"Most energy-efficient monitoring solution" β ICSOC 2023, peer-reviewed
"Doesn't miss alertsβmission-critical trust for safety software"
Global community improving monitoring for everyone
Trusted by teams worldwide
Free forever, fully open source agent
Work from anywhere, async-friendly culture
Your work helps millions of systems
MCP available via Netdata Cloud for infrastructure-wide access (Business/Homelab plan) and built into every Agent and Parent for direct local access (free, open-source). Real-time metrics, ML anomaly detection, logs, and live system state - all accessible to AI assistants in natural language. The fastest path from AI question to infrastructure answer.
Cloud and Agent MCP servers eliminate the gap between question and answer
MCP via Netdata Cloud for infrastructure-wide access, plus built-in MCP server on every Agent and Parent - works with Claude, Cursor, ChatGPT, Gemini, VS Code
18 models per metric detect anomalies in real-time - AI assistants see which metrics are abnormal, not just their values
MCP tools expose metrics, logs, alerts, live processes, network connections, systemd services - comprehensive infrastructure context in every conversation
Agent MCP keeps data on-premises with zero egress. Cloud MCP streams queries securely without storing observability data. Complete compliance confidence either way
From installation to AI-powered insights in 60 seconds - API key auto-generated, algorithmic dashboards provide semantic context automatically
Per-node pricing with unlimited MCP queries - no per-query charges, no data volume fees, encourage AI usage without cost anxiety
Trusted by DevOps teams worldwide
80% MTTR Reduction
See AI Troubleshooting
99% False Positive Reduction
Explore ML Capabilities
Console-Level Access
View Live Functions
200Γ Query Accuracy
Learn About Logs
Linear Scalability
Understand Architecture
Zero Data Egress
Review Security Design
Built-In vs Bolt-On MCP Integration
Most monitoring tools bolt MCP onto existing architectures. Netdata ships with MCP built in from day one - eliminating integration complexity, configuration overhead, and external dependencies.
Capability
Netdata MCP
Traditional Monitoring
MCP Server Deployment
β
Built-In
Via Netdata Cloud (infrastructure-wide) and on every Agent/Parent (local)
β οΈ External Installation
Requires separate MCP server deployment and maintenance
Configuration Required
β
Zero Configuration
API key auto-generated on first startup
β οΈ Extensive Setup
Configuration files, endpoint mapping, authentication setup
ML Anomaly Detection
β
Ideal
18 models per metric, embedded in samples
β Not Available
AI sees values without anomaly context
Data Granularity
β
Real-Time
Per-second collection with sub-2-second latency
β οΈ Near Real-Time
10-60 second intervals with additional lag
Logs Access
β
Included
Direct systemd-journal and Windows Event Log access
β Not Available
Requires separate log management tools
Console Functions
β
Advanced
Live processes, network connections, services accessible
β Not Available
Monitoring only, no console replacement
Data Location
β
On-Premises
Edge-native architecture, zero egress costs
β οΈ Cloud-Centric
Data centralized in vendor cloud
Pricing Model
β
Included
Per-node flat rate, unlimited queries
β οΈ Expensive
Data volume charges plus feature fees
Production Status
β
Production-Ready
Fully supported since v2.6.0
β οΈ Limited
Preview, beta, or community-only support
AI assistants automatically discover all nodes, metrics, instances, dimensions, and labels. Query time-series data with ML anomaly rates embedded in every sample.
Comprehensive MCP Tools
View All MCP ToolsAI assistants leverage correlation analysis and ML anomaly ranking to identify root cause in top 30-50 results. Find correlated and anomalous metrics across entire infrastructure.
99% False Positive Reduction
Explore Anomaly DetectionAI assistants execute live functions - processes, network connections, systemd services, Windows events - with same per-second precision as console tools plus historical context.
Console-Level Access
View Live FunctionsAI assistants access systemd-journal and Windows Event Logs directly - no pipelines, no ingestion. Correlate logs with metrics automatically for complete incident context.
200Γ Query Accuracy
Learn About LogsAI assistants access currently raised alerts and complete alert transition history. Correlate alerts with metrics, logs, and anomalies automatically for complete context.
400+ Pre-Configured Alerts
Explore AlertingTransform infrastructure troubleshooting with AI assistants that understand your systems
Reduce MTTR by 80% through natural language queries with complete infrastructure context - metrics, logs, alerts, live system state in every conversation
AI assistants see which metrics are abnormal, not just their values - 18 models per metric with 99% false positive reduction through consensus
Edge-native architecture keeps observability data on-premises - AI queries run locally without cloud egress, maintaining compliance confidence
Debug production without SSH - AI accesses live processes, network connections, services with same precision as console tools plus historical context
Cloud MCP: connect in minutes with an API token. Agent MCP: from installation to AI-powered insights in 60 seconds with auto-generated API key
Cloud MCP for infrastructure-wide access, Agent/Parent MCP for local access - query 100,000 nodes as easily as one
Query millions of log entries instantly - direct systemd-journal and Windows Event Log access with 200Γ query accuracy versus traditional tools
Per-node pricing with unlimited MCP queries - no per-query charges, no data volume fees, encourage AI usage without cost anxiety
Read-only access model, Bearer token authentication, SOC 2 Type 2 certified - enterprise-grade security from day one
May 20, 2026
The netdata/skills repo is an open-source collection of 54 agent skills that teach Claude Code, Cursor, Copilot, and other AI coding agents how to set up OpenTelemetry instrumentation, configure Netdata, and troubleshoot production issues using live telemetry via MCP.
February 27, 2026
Connect AI coding agents like Claude Code, Codex, and Cursor to your entire infrastructure with a single endpoint. The Netdata Cloud MCP Server brings infrastructure-wide observability to any MCP-compatible AI tool.
June 18, 2025
Revolutionize how you interact with your monitoring data!
MCP is an open protocol enabling AI assistants to access external data sources through standardized interfaces. For infrastructure monitoring, MCP transforms AI assistants from generic chatbots into infrastructure experts - they can query real-time metrics, analyze ML-detected anomalies, search logs, and access live system state. Netdataβs built-in MCP server eliminates the gap between asking a question and getting an answer from your infrastructure.
Netdata provides MCP via Netdata Cloud for infrastructure-wide access (Business/Homelab plan) and as a built-in capability in every Agent and Parent (v2.6.0+, free and open-source) - no external server installation, no configuration required. Competitors require separate MCP server deployment, extensive configuration, or are in preview/beta status. Netdataβs MCP includes unique features competitors donβt offer: real-time ML anomaly detection embedded in every metric sample, direct logs access without pipelines, and console replacement capabilities (live processes, network connections, services).
All MCP-compatible clients work with Netdata: Claude Desktop, Claude Code, Cursor IDE, ChatGPT (via Cursor), Gemini CLI, VS Code (with MCP extensions), JetBrains IDEs, and any custom client using MCP protocol. Netdata supports multiple transports (streamable HTTP, SSE, WebSocket, stdio with a bridge) for maximum compatibility. Setup takes under 5 minutes - install Netdata, grab the auto-generated API key, add to AI assistant config.
Netdata provides MCP access in two ways: (1) Netdata Cloud MCP at app.netdata.cloud/api/v1/mcp - infrastructure-wide access to all your nodes, requires Business or Homelab plan, zero local setup needed. (2) Agent/Parent MCP - direct local access to individual Agents or Parents (v2.6.0+), free and open-source, requires API key from the local Netdata instance. Both options work with all MCP-compatible clients (Claude, Cursor, ChatGPT, Gemini, VS Code, etc.).
MCP tools provide comprehensive access: discover nodes/metrics/functions, query time-series with ML anomaly rates, find correlated/anomalous/unstable metrics for root cause analysis, list/query alerts with complete transition history, execute live functions (processes, network connections, systemd-journal, Windows events), and access complete logs without pipelines. AI assistants get same capabilities human users have, plus natural language interface.
Agent/Parent MCP is included free in all Netdata editions, including the open-source Community plan. Cloud MCP is available with Business or Homelab plans, providing infrastructure-wide access with zero local setup. Both include unlimited MCP queries with predictable per-node pricing. No per-query charges, no data volume fees, no feature gating. This is fundamentally different from competitors who charge based on data volume or queries - Netdataβs flat per-node pricing encourages unlimited AI usage.
Yes - designed with security-first architecture: read-only access model (no configuration changes possible), Bearer token authentication (API key required), claimed-agent requirement (production use requires Netdata Cloud authorization), no sensitive data exposure (passwords, secrets, API keys protected), complete audit trail (all queries logged), and data sovereignty (metrics/logs stay on-premises). SOC 2 Type 2 certified with GDPR/HIPAA alignment by design.
Same way Netdata scales - through distributed architecture. Cloud MCP provides infrastructure-wide queries across all your nodes from a single endpoint. Alternatively, query single Agent for single-node data or Parent for aggregated multi-node data. AI assistants see unified namespace regardless of infrastructure size (1 to 100,000+ nodes). No architectural changes required as you scale - same MCP interface works at any size.
Two distinct but complementary capabilities: MCP Server enables ANY MCP-compatible AI assistant to query Netdata data - available via Netdata Cloud for infrastructure-wide access (Business/Homelab plan) and on every Agent/Parent for local access (free, open-source). Bring your own LLM (Claude, ChatGPT, Gemini, etc.). Netdata AI Features are managed AI services (AI Insights, AI Chat, AI Troubleshoot) using Netdata-optimized playbooks - requires Netdata Cloud plus AI credits (10 free/month in Business plan). Many customers use both: MCP for ad-hoc developer troubleshooting, AI features for automated reports and management visibility.
Yes - Agent/Parent MCP servers work completely offline. AI assistants connect directly to local Netdata instances via streamable HTTP, SSE, or WebSocket. For multi-node visibility in air-gapped environments, deploy on-premises Netdata Cloud (which also provides Cloud MCP) or use Netdata Parents. No internet connectivity required for Agent/Parent MCP - all queries execute locally against edge-native data.
Two paths: Cloud MCP (simplest) - Log into Netdata Cloud, generate an API token, configure your AI assistant with endpoint https://app.netdata.cloud/api/v1/mcp - instant access to your entire infrastructure. Agent/Parent MCP - Install Netdata Agent/Parent (already includes MCP server), get API key from the configuration directory, add to AI assistant config with endpoint http://your-netdata:19999/mcp. Both paths take under 5 minutes. See detailed setup guide for specific AI assistant configurations.
APIs are designed for machines, not AI reasoning. MCP provides semantic context - AI understands what metrics mean, not just their values. Netdataβs MCP includes ML anomaly detection in every sample, so AI distinguishes normal from abnormal behavior automatically. Traditional APIs require AI to interpret raw values without context, leading to incorrect conclusions. MCP also provides standardized tool discovery - AI assistants automatically understand available capabilities without custom integration code.
Anomaly detection embedded in every metric sample transforms AI understanding. Instead of seeing just values, AI sees [value, anomaly_rate_%, annotations] - understanding which metrics are behaving abnormally without manual threshold definitions. 18 models per metric train continuously with 99% false positive reduction through consensus. This enables AI to provide accurate root cause analysis in the top 30-50 correlated metrics, identify cascading failures, and suggest remediation based on actual abnormal behavior - not just threshold violations.
Yes - Netdata MCP server handles concurrent connections from multiple AI assistants without conflicts. Each connection is independent with separate authentication. Multiple team members can use different AI assistants (Claude, Cursor, ChatGPT, etc.) simultaneously without performance degradation. This enables team collaboration where different engineers use their preferred AI tools while accessing the same infrastructure data.
Valid option for metrics-only access, but Netdata provides significantly more: ML anomaly detection (real-time, 18 models/metric, embedded in samples - Prometheus doesnβt have), logs access (direct systemd-journal/Windows Event Log querying - Prometheus doesnβt do logs), console functions (live processes, network connections, services - Prometheus doesnβt provide), zero configuration (built-in MCP server - Prometheus requires external MCP server setup), automated dashboards (algorithmic organization - Prometheus requires Grafana setup), and enterprise support (official product with SOC 2 Type 2 certification - community MCP servers unsupported).
Five common mistakes: (1) Not claiming agents - production use requires claiming for authorization, (2) Forgetting API key security - treat API keys as credentials, donβt commit to git, (3) Overwhelming AI with broad queries - start specific (βshow CPU on node-xβ) before broad (βanalyze entire infrastructureβ), (4) Ignoring anomaly context - train team to ask AI about anomaly rates, not just values, (5) Not using specialized tools - use find_correlated_metrics for root cause analysis instead of manual correlation. Following best practices accelerates adoption and maximizes value.
Effective query patterns: Discovery first (βList all nodesβ β βShow metrics for node-xβ β βQuery CPU metricsβ), Use context (βShow anomalous metrics in last hour on production nodesβ), Use ML (βFind metrics with highest anomaly rates during incident at 2pmβ), Combine data types (βShow logs for services with raised alertsβ), Time-bound queries (always specify time windows for metric queries), Filter appropriately (use labels, patterns to narrow large infrastructures). These patterns help AI assistants provide accurate, actionable insights.
No - Netdataβs MCP server provides data access only. YOUR chosen AI assistant (Claude, ChatGPT, Gemini, etc.) sends queries to Netdata and receives responses. What the AI provider does with that data depends on your agreement with them (many offer enterprise plans with no data retention). Netdata itself never sends your observability data to AI providers. This architecture maintains complete control over data sharing - you choose which AI provider to trust.
Yes - all MCP queries are logged with timestamps, source IPs, authenticated users, and queries executed. Netdata Cloud provides centralized audit logs across all Agents/Parents. For compliance, export audit logs to SIEM systems. API key-based authentication enables tracking which AI assistants/users accessed what data when. This complete audit trail satisfies regulatory requirements and enables security team oversight of AI assistant usage.
Negligible - MCP server adds approximately 5KB RAM per active session and less than 0.1% CPU. Netdataβs architecture processes queries from existing in-memory data structures without additional database load. Even with multiple AI assistants querying simultaneously, impact remains minimal due to efficient C implementation and read-only access model. The University of Amsterdam study validated Netdata as the most energy-efficient monitoring solution - MCP capability maintains this efficiency.