B

BigID

Cybersecurity, Data Governance, Privacy Management

Data & AnalyticsData DiscoveryClassificationComplianceGDPR
Function:Security
Subfunction:Data Governance
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Founded
2016
Employees
501-1000 employees (~659-721)
Funding
$320M
Stage
Late-stage venture-backed, $84-90 million ARR (2023), Unicorn ($1B+ valuation)
Report version: Oct 20, 2025

1. Products/Services & Features

  • Main Offerings:

    • Data Discovery and Classification Platform
    • Privacy Automation Suite
    • AI Data Management and Governance Solution
  • Feature Breakdown: Automated data discovery across cloud, on-premises, and hybrid environments; AI-powered classification; sensitivity labeling; access intelligence; data minimization; privacy workflow automation; AI data cleansing; shadow AI detection; access control for AI conversations; Watchtower monitoring dashboard; MCP server for AI agent integration (Departments: Security, Data Governance, Compliance, IT Operations)

  • Business Industry Gearing: Enterprise-focused, primarily large organizations with complex data environments and strict compliance requirements

2. Security & Compliance

  • Certifications: SOC 2 Type II certified (verified December 23, 2024), ISO 27001 certified

  • Vendors/Tools: Fortanix (data encryption integration), Microsoft (Purview integration), MongoDB (vector database security)

  • Risk Profile:

    • Breaches: No major breaches reported; strong security posture with third-party audits
    • Features: Comprehensive data discovery, classification, and access controls; real-time monitoring; automated remediation; compliance reporting; AI-specific security controls

3. User Feedback & Adoption

  • Aggregated Reviews: Generally positive on G2, Capterra, and TrustRadius; praised for deep discovery and automation capabilities

    • Pros: Deep data discovery and classification; strong automation reducing manual effort; excellent security and compliance features; continuous product improvement; good customer support; cloud-based deployment
    • Cons: High cost compared to competitors; integration challenges with legacy systems; occasional portal latency; mobile app user experience issues; requires additional supporting solutions for full leverage
  • Adoption Insights:

    • Adoption Ease: Moderate to High - Platform is generally easy to use for data protection workflows, but deployment complexity varies based on environment scale and legacy system integration
    • Adoption Cultural Fit: High - Aligns well with organizations prioritizing data security, privacy compliance, and AI governance; requires cross-functional buy-in from security, compliance, and IT teams
  • Metrics: Strong retention indicated by recurring enterprise contracts and continued funding; no public NPS data available

  • Barriers: High licensing costs; integration complexity with legacy systems; need for organizational alignment across security, compliance, and IT; learning curve for advanced features

4. Monetization & Business Model

  • Revenue Model: SaaS subscription model with enterprise licensing; annual or installment payments; pricing based on data sources, connectors, deployment type, and service level

  • Pricing: Enterprise-only pricing; typical range $15,000-$175,000 annually; custom quotes based on organizational needs; no published per-user or fixed-tier pricing (Sources: BigID pricing page, industry analyst reports, customer reviews on TrustRadius and Capterra)

  • Market Context:

    • TAM: Data security and governance market estimated at $10B+; growing AI data governance segment
    • Growth Stage: High growth - driven by increasing regulatory requirements (GDPR, CCPA), AI adoption, and enterprise focus on data security

5. Leadership & Recent Developments

Name Description LinkedIn X Account
Dimitri Sirota CEO and Co-Founder; three-time entrepreneur with background in cybersecurity and identity management; drives company strategy and vision https://www.linkedin.com/in/dimitrisirota https://twitter.com/bigidsecure
Nimrod Vax Co-Founder and Head of Product; leads product strategy and development; focuses on innovation in data discovery and AI governance https://www.linkedin.com/in/nimrod-vax
Scott Casey Chief Operating Officer (COO) and Chief Financial Officer (CFO); oversees operations, finance, and business strategy https://www.linkedin.com/in/scottpcasey
  • Key Metrics Update:

    • Funding: Series E led by Riverwood Capital (April 2024), $60 million raised
    • Employee Growth: Approximately 400 employees as of 2025; consistent hiring across sales, engineering, and customer success
  • News/Trends:

    • News Launch: 2025: AI-powered Prompt Classification Engine, Shadow AI Discovery, AI Data Labeling, AI Data Cleansing, Watchtower for AI & Data, Access Control for AI Conversations, MCP Server for AI agents
    • News Partnerships: MongoDB (ISV Partner of the Year 2025), Microsoft (Security Store ecosystem partner), Fortanix (data encryption integration), Alliance Distribution (Ukraine/Central Asia expansion)
    • News Funding: Series E funding round (April 2024) led by Riverwood Capital; multiple venture rounds from Advent International, Tiger Global, Bessemer Venture Partners, Salesforce Ventures
    • News Challenges: Enterprises struggling with AI risk and shadow IT; 87% of organizations unprepared for AI adoption due to inadequate data strategies; integration complexity across fragmented tool ecosystems

6. Target Audience & Use Cases

  • Target Market: Large enterprises with complex multi-cloud, hybrid, and SaaS environments; organizations with strict compliance requirements (GDPR, CCPA, HIPAA, industry-specific regulations)

  • Target Users & Personas: Security teams, data governance professionals, compliance officers, enterprise IT stakeholders, CISOs, data protection officers

  • User Experience Level: Intermediate to Advanced - Requires understanding of data governance, security policies, and compliance frameworks

  • Key Use Cases:

    • Automated discovery and classification of sensitive data across Microsoft 365 and other cloud platforms to prevent unauthorized access through AI assistants like Microsoft Copilot
    • Privacy compliance automation for GDPR and CCPA, including data subject access requests, deletion workflows, and retention management
    • AI data governance - discovering sensitive data in AI pipelines, preventing data leakage in vector databases, and enforcing access controls for GenAI applications

7. Impact & Recommendations

  • Measurable Outcomes:

    • Workflow Improvements: Reduces manual data classification effort by 70-80%; automates compliance workflows; enables real-time policy enforcement; provides unified visibility across fragmented data environments; accelerates incident response
    • ROI Examples: Reduced compliance audit time by automating sensitive data discovery; prevented data breaches through automated access controls; accelerated AI adoption by ensuring data readiness and governance
  • Fit Assessment: Excellent fit for enterprises prioritizing data security, privacy compliance, and AI governance; strong product-market fit in regulated industries; growing adoption in AI-forward organizations

  • Custom Rec Flags:

    • Priority ICP: Fortune 500 companies, financial services firms, healthcare organizations, government agencies, and large tech companies with complex data environments and strict compliance requirements
    • Short Term Goals: Expand AI data governance capabilities; deepen integrations with Microsoft, MongoDB, and other enterprise platforms; grow market share in DSPM category; accelerate adoption in mid-market segment

8. Data Sourcing Notes

  • Other sources: BigID blog, Gartner reports, industry analyst coverage, customer case studies, press releases

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