Master New Relic AI with our step-by-step tutorial, detailed feature walkthrough, and expert tips.
Explore the key features that make New Relic AI powerful for deployment & hosting workflows.
Traditional APM tools rely on manually configured static thresholds to trigger alerts—for example, alerting when CPU exceeds 80% or response time crosses 500ms. New Relic AI instead builds dynamic baselines by continuously analyzing your system's normal behavior patterns and detects statistically significant deviations automatically. This means it can catch subtle performance degradations that static thresholds would miss, while also reducing alert noise from benign spikes that fall within normal variance. The AI also correlates anomalies across related services to surface root causes rather than just symptoms.
New Relic's free tier includes 100 GB of data ingest per month, one full-platform user, unlimited basic users, and access to all 30+ observability capabilities including APM, infrastructure monitoring, log management, and browser monitoring. This is genuinely usable for production workloads in small teams or startups with moderate telemetry volumes. The key limitation is the single full-platform user seat—only one person gets full query, alerting, and dashboard capabilities, while basic users have read-only access. There are no feature gates on the free tier, making it one of the more generous offerings in the observability space.
New Relic uses a consumption-based model with two billing dimensions: data ingest (charged per GB beyond the free 100 GB/month) and user seats (charged per full-platform user per month). Data pricing varies by type—metrics, events, logs, and traces each have different per-GB rates. Exact rates depend on your plan tier and committed volume; check New Relic's current pricing page for the latest per-GB rates as these are updated periodically. The biggest cost surprise for most teams is log data, which can be extremely voluminous. To manage costs, New Relic provides data management tools including drop filters, sampling rules, and ingest dashboards. Setting data ingest budgets and alerts before onboarding production workloads is strongly recommended.
Yes, New Relic provides comprehensive Kubernetes observability through its Kubernetes integration, which deploys as a Helm chart into your cluster. It collects metrics from nodes, pods, containers, and deployments, and correlates them with APM data from instrumented applications running in those containers. The platform provides pre-built Kubernetes dashboards showing cluster health, resource utilization, pod restarts, and deployment status. Distributed tracing works across containerized microservices, and the Kubernetes cluster explorer provides a visual map of your cluster topology with real-time health indicators.
The New Relic AI assistant (NRAI) is a conversational interface embedded in the platform that lets you interact with your telemetry data using natural language. You can ask questions like 'What caused the latency spike in the checkout service at 3pm?' and it will generate and execute the appropriate NRQL queries, analyze the results, and explain findings in plain English. It can also help build dashboards, create alert conditions, and explain error traces. The assistant is powered by large language models with access to your New Relic data context, making it particularly useful for on-call engineers who need to investigate incidents quickly without deep platform expertise.
Now that you know how to use New Relic AI, it's time to put this knowledge into practice.
Sign up and follow the tutorial steps
Check pros, cons, and user feedback
See how it stacks against alternatives
Follow our tutorial and master this powerful deployment & hosting tool in minutes.
Tutorial updated March 2026