cpu-requirements.md 3.0 KB

CPU

Netdata's CPU usage depends on the features you enable. For details, see resource utilization.

Children

With default settings on Children, CPU utilization typically falls within the range of 1% to 5% of a single core. This includes the combined resource usage of:

  • Three database tiers for data storage.
  • Machine learning for anomaly detection.
  • Per-second data collection.
  • Alerts.
  • Streaming to a Parent Agent.

Parents

For Netdata Parents (Metrics Centralization Points), we estimate the following CPU utilization:

Feature Depends On Expected Utilization (CPU cores per million) Key Reasons
Metrics Ingest Number of samples received per second 2 Decompress and decode received messages, update database
Metrics re-streaming Number of samples resent per second 2 Encode and compress messages towards another Parent
Machine Learning Number of unique time-series concurrently collected 2 Train machine learning models, query existing models to detect anomalies

To ensure optimal performance, keep total CPU utilization below 60% when the Parent is actively processing metrics, training models, and running health checks.

Increased CPU consumption on Parent startup

When a Netdata Parent starts up, it undergoes a series of initialization tasks that can temporarily increase CPU, network, and disk I/O usage:

  1. Backfilling Higher Tiers: The Parent calculates aggregated metrics for missing data points, ensuring consistency across different time resolutions.
  2. Metadata Synchronization: The Parent and Children exchange metadata information about collected metrics.
  3. Data Replication: Missing data is transferred from Children to the Parent.
  4. Normal Streaming: Regular streaming of new metrics begins.
  5. Machine Learning Initialization: Machine learning models are loaded and prepared for anomaly detection.
  6. Health Check Initialization: The health engine starts monitoring metrics and triggering alerts.

Additional considerations:

  • Compression Optimization: The compression algorithm learns data patterns to optimize compression ratios.
  • Database Optimization: The database engine adjusts page sizes for efficient disk I/O.

These initial tasks can temporarily increase resource usage, but the impact typically diminishes as the Parent stabilizes and enters a steady-state operation.