
NeuBird AI announced support for virtual private cloud and isolated and regulated environments, including air-gapped deployments, completing the agent’s coverage of every major enterprise deployment model.
The platform now runs on-premises, in a VPC, the cloud, hybrid topologies, and isolated and regulated environments, and gives engineers complete flexibility in how they engage — including through a web app, desktop app, terminal, or alerts delivered into the communication channels they already use.
NeuBird AI is a platform of specialized agents that deliver continuous predictive intelligence across cloud, on-premises, and hybrid systems, so teams can prevent issues before they impact services, resolve incidents in minutes, and continuously optimize all aspects of their production operations. Expanding beyond an alert system or dashboard, the platform’s specialized agents work across the operational lifecycle to:
- Prevent issues by catching degradation 30 to 60 minutes before it becomes an incident, completely avoiding the 2 am page and allowing leaders to carry a prevention posture into the boardroom instead of a recovery story.
- Resolve incidents autonomously with a 2-minute RCA at 94% accuracy and resolution in under 3 minutes. The platform autonomously investigates every incident in real time, identifies root cause, and guides teams to resolution with clear, evidence-based insights.
- Operate production environments efficiently, continuously optimizing costs, running fixes, and capturing knowledge to enhance future investigations.
Customers using NeuBird AI recover over 200 engineering hours per month, cut incident costs by over 60%, and reduce P1 war rooms by 80%.
NeuBird AI scales and operates regardless of where infrastructure is running:
- On-premises: For teams that keep data inside their own environment.
- Virtual Private Cloud: Full isolation with the speed and elasticity of cloud.
- Hybrid infrastructure: Spanning more than one environment.
- Isolated and regulated environments: For the most sensitive and tightly controlled workloads, including air-gapped deployments.
NeuBird AI is SOC 2 Type II certified with a zero storage footprint and is read-only by design. All actions are orchestrated within predefined guardrails with a human-in-the-loop approach, complete visibility, and a full audit trail.
NeuBird AI works alongside existing SRE, DevOps tools, and workflows without requiring wholesale changes to tooling or processes. Engineers always decide how they investigate and get answers grounded in real-time context of their environment. Engineers choose how they engage:
- Slack and communication channels: Remediation steps delivered directly into the channels teams already use, including via AWS CLI.
- Web app: Configurable, granular interface with full metrics and visibility.
- Mac and Windows desktop app: A dedicated always-on workspace that connects to your stack in minutes.
- Terminal: For engineering teams who live on the command line.
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