Pantomath is pioneering the Data Operations Center (DOC), establishing a centralized, AI-driven platform necessary to manage data reliability as a strategic operational function. We are the first platform designed to continuously monitor, diagnose, and autonomously resolve data incidents across the entire cross-platform data ecosystem.
Our approach transforms data reliability from a constant liability into an assured competitive advantage. Using purpose-built AI agents and a proprietary cross-platform interoperable data fabric, Pantomath automates the entire incident lifecycle: identifying the issue, pinpointing the single root cause, and executing immediate containment and mitigation. We empower organizations to move beyond costly reactive fixes, ensuring trustworthy data is delivered consistently and confidently to all stakeholders and consuming systems.
Pantomath is designed for platform reliability teams, data engineers, and leaders responsible for data quality and SLAs. It supports critical use cases such as:
- Detecting and resolving data incidents before stakeholders are affected
- Unifying metadata, lineage, and job execution data for faster RCA
- Automating resolution workflows and reducing mean time to acknowledge, detect, and resolve
- Improving data trust across business teams by enabling transparency and accountability
Key capabilities include:
- Automated Discovery and Monitoring: Map and monitor pipelines, datasets, stored procedures, and dependencies across your stack.
- AI-Powered RCA and Recommendations: Use built-in copilots to surface root cause and next steps in minutes.
- Incident Correlation and Impact Analysis: Highlight downstream impact and notify the right teams in real time.
- Autonomous Remediation: Self-heal pipelines through configurable automation policies.
- Bring Your Own Catalog (BYOC): Integrate existing metadata tools to centralize data context.
Pantomath gives enterprises a systemic, automated approach to data reliability - delivering trust, reducing noise, and empowering teams to scale data operations with confidence.