
The Tech Trek How to Future-Proof Your AI Stack
Jul 9, 2025
Rishabh Poddar, CTO and co-founder of Opaque Systems, dives into the intersection of AI innovation and data privacy. He shares insights on the tension between tightening privacy laws and the need for diverse data in AI. Rishabh discusses the risks of agentic AI and emphasizes the necessity of integrating cryptographic guarantees into AI systems. He illustrates how Opaque Systems' encrypted platform ensures data safety throughout the AI lifecycle. A fascinating case study on ServiceNow showcases how they reinvented their helpdesk while maintaining strict data boundaries.
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Confidential AI Built With Cryptography
- Opaque builds confidential AI that keeps sensitive data verifiably private with cryptographic guarantees.
- The platform originated from UC Berkeley research and targets enterprise-grade data sovereignty.
Privacy Laws Collide With AI Data Needs
- Privacy laws tightened while AI needs more diverse proprietary data, creating a conflict.
- Organizations must balance using proprietary data for advantage with legal and sensitivity constraints.
Regulation Is Fragmented And Multi-Dimensional
- AI regulation is fragmentary with many proposed laws and evolving standards.
- Beyond privacy, enterprises need verifiability, auditability, and controls across the AI lifecycle.

