IT Asset Intelligence

Overview IT asset intelligence uses AI to give your organization a real‑time, unified view of all hardware, software, cloud resources, licenses, and configurations across the enterprise. Instead of relying on outdated spreadsheets, fragmented CMDBs, or manual audits, teams receive continuously updated insights that show what assets exist, where they live, who owns them, and how … Read more

Vulnerability Prioritization

Overview Vulnerability prioritization uses AI to analyze security findings across scanners, cloud platforms, code repositories, and infrastructure so your teams know which issues matter most. Instead of sorting through long lists of CVEs or relying on generic severity scores, you receive context‑aware rankings that reflect exploitability, business impact, asset importance, and real‑world threat activity. This … Read more

Security Log Summaries

Overview Security log summaries use AI to turn massive volumes of raw security logs into clear, actionable insights that teams can understand quickly. Instead of combing through thousands of entries from firewalls, identity systems, endpoints, and cloud services, analysts receive concise narratives that highlight suspicious activity, unusual patterns, and potential threats. This helps your SOC … Read more

Infrastructure Drift Detection

Overview Infrastructure drift detection uses AI to identify when your cloud or on‑prem environments deviate from the desired state defined in your IaC templates, policies, or architectural standards. Instead of discovering drift during outages, failed deployments, or compliance reviews, you receive early signals that highlight what changed, when it changed, and how it impacts stability … Read more

Code Generation

Overview Code generation uses AI to translate requirements, tickets, or architectural patterns into working code that developers can refine and extend. Instead of starting from a blank file or manually wiring boilerplate, teams receive high‑quality scaffolds, functions, tests, and configuration blocks that match their tech stack. This helps engineers move faster while keeping code aligned … Read more

Code Review Copilots

Overview Code review copilots use AI to analyze pull requests, highlight potential issues, and suggest improvements before human reviewers step in. Instead of relying solely on manual review cycles or waiting for senior engineers to provide feedback, teams receive immediate insights that surface bugs, security risks, style inconsistencies, and architectural concerns. This helps developers move … Read more

Incident Triage Automation

Overview Incident triage automation uses AI to analyze alerts, logs, and telemetry so your teams can understand what’s happening faster and with less noise. Instead of sifting through dozens of alerts or waiting for engineers to piece together context, you receive clear summaries that highlight the root signals, likely causes, and recommended next steps. This … Read more

Cloud Cost Optimization

Overview Cloud cost optimization uses AI to analyze usage patterns, resource configurations, and spending trends across your cloud environments so you can reduce waste without slowing innovation. Instead of manually reviewing dashboards or relying on periodic audits, you receive continuous insights that highlight where costs are drifting, which resources are underutilized, and where rightsizing or … Read more