AI-Powered Security Analyst Co-Pilot for a Leading SIEM/SOAR Platform Provider

Key Metrics

60%

Reduction in investigation time

2x

Increase in analyst productivity

40%

Faster threat response (MTTR)

85%

Improved context retrieval
Customer

Leading SIEM/SOAR Platform Provider

Service Portfolio

AI Security Analyst Co-Pilot Development

Customer Pain Points

Fragmented investigation workflow
No single view of correlated data
Time-intensive manual navigation
Missing historical context
High Mean Time to Respond (MTTR)
Analyst burnout and alert fatigue

How did we resolve customer pain points?

Unified Contextual Intelligence

Aggregated all relevant alarm information in a single conversational interface, eliminating multi-page navigation.

RAG Architecture Implementation

Built vector database with semantic search across 2M+ historical alarms and 50M+ events for instant context retrieval.

Natural Language Interaction

Enabled analysts to query using plain English, reducing cognitive load and accelerating investigations.

Agentic AI for Root Cause Analysis

Autonomous agents navigate across Events, Assets, Vulnerabilities, and Threat Intelligence modules automatically.

Historical Pattern Learning

AI analyzes past successful investigations to provide relevant context and proven remediation strategies.

Native Platform Integration

Embedded Co-Pilot directly into SIEM/SOAR interface with no workflow disruption or separate tools required.

Guided Response Recommendations

Context-aware suggestions for response actions based on similar historical incidents and threat patterns.

Enterprise-Grade Governance

Full audit trails, explainable AI decision logic, and human-in-the-loop validation for critical actions.

Other Case Studies

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