RAC

Resolve AI Copilot

Agentic AI for IT/Production Engineering Automation

Developer ToolsAISREObservabilityDebugging
Function:IT
Subfunction:Help Desk / IT Support
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Founded
2024
Employees
51-200 employees
Funding
$160M+ total ($35M Seed Oct 2024 + $125M Series A Dec 2025 at $1B val)
Stage
Seed stage; pre-revenue or early-revenue, rapid scaling phase
Report version: Sep 24, 2025

1. Products/Services & Features

  • Main Offerings:

    • AI Production Engineer - autonomous incident response and root cause analysis
    • Agentic AI SRE that investigates & resolves incidents automatically
    • Production debugging automation with 5x MTTR reduction
  • Feature Breakdown: Autonomous incident response, root cause analysis, production debugging, alert triage, hypothesis-driven troubleshooting, multi-step agentic workflows, real-time action recommendations (Departments: SRE, DevOps, Platform Engineering, Infrastructure Operations)

  • Business Industry Gearing: Cloud-native enterprises, tech companies, SaaS, fintech, VC/PE-backed firms scaling beyond 200+ employees

2. Security & Compliance

  • Certifications: SOC 2 Type I certified, No public GDPR or ISO 27001 certification found

  • Vendors/Tools: Not publicly disclosed - likely AWS/Azure/GCP for cloud hosting

  • Risk Profile:

    • Breaches: No reported security breaches or compliance issues on record
    • Features: SOC 2 compliance includes audit trails, encryption, access controls, risk assessments, vendor screening, documentation of security policies

3. User Feedback & Adoption

  • Aggregated Reviews: No verified ratings found on G2, Capterra, or other review platforms

    • Pros: No direct user reviews available
    • Cons: No direct user reviews available
  • Adoption Insights:

    • Adoption Ease: No verifiable public user testimonials or integration assessments available
    • Adoption Cultural Fit: No published details about training modules or cultural programs
  • Metrics: No public churn rate or NPS reported

  • Barriers: No documented adoption barriers or user resistance metrics available

4. Monetization & Business Model

  • Revenue Model: Usage-based SaaS pricing focused on per-resolution billing (consumption model)

  • Pricing: No public pricing details currently available - typical for early-stage SaaS startups (Sources: No public pricing information found)

  • Market Context:

    • TAM: $10B-$15B AI customer support sector by 2025
    • Growth Stage: Early scaling phase with pilot deployments and ongoing product iteration

5. Leadership & Recent Developments

Name Description LinkedIn X Account
Spiros Xanthos CEO & Founder - Previously SVP & GM, Observability at Splunk; co-creator of OpenTelemetry https://www.linkedin.com/in/spiros-xanthos
Mayank Agarwal CTO & Co-founder - Co-creator of OpenTelemetry, long-term collaborator with Spiros Xanthos
  • Key Metrics Update:

    • Funding: $35M seed round led by Greylock, Unusual Ventures (October 2024)
    • Employee Growth: Significant team expansion since launch but no specific percentage reported
  • News/Trends:

    • News Launch: Launched agentic AI SRE product in 2024 with autonomous incident response capabilities
    • News Partnerships: No publicly disclosed major platform integrations or brand partnerships found
    • News Funding: $35M seed funding led by Greylock Partners with notable angel investors from AWS, Google, GitHub, OpenAI
    • News Challenges: No public pivots or business model challenges disclosed

6. Target Audience & Use Cases

  • Target Market: Cloud-native enterprises (tech, SaaS, fintech) with complex infrastructure, typically VC/PE-backed firms scaling beyond 200+ employees

  • Target Users & Personas: Site Reliability Engineers (SREs), Platform Engineers, DevOps professionals, Infrastructure and Operations leaders

  • User Experience Level: Designed for experienced engineers and power users but accessible UI with prebuilt workflows and natural language inputs

  • Key Use Cases:

    • Automating triage and root-cause analysis for production incidents in Kubernetes-based systems
    • Auto-remediation of recurring infrastructure failures and on-call escalations
    • Providing engineering teams with summarized diagnostics, fixes, and real-time action recommendations

7. Impact & Recommendations

  • Measurable Outcomes:

    • Workflow Improvements: 5x reduction in MTTR, 75% productivity gains for SRE teams, eliminates alert fatigue, accelerates incident response
    • ROI Examples: Up to 80% reduction in Mean Time To Resolution (MTTR), 75% productivity gains for SRE teams
  • Fit Assessment: Strong fit for cloud-native enterprises with complex infrastructure, SRE/DevOps teams, and need for automated incident response

  • Custom Rec Flags:

    • Priority ICP: VC/PE-backed tech companies, SaaS platforms, fintech firms with 200+ employees and dedicated SRE/Platform Engineering teams
    • Short Term Goals: Scale product adoption, build enterprise integrations, expand agentic AI capabilities for production engineering

8. Data Sourcing Notes

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