Datavault AI Inc. announced an expanded collaboration with IBM to deliver enterprise-grade artificial intelligence performance at the edge in New York and Philadelphia. The deployment utilizes IBM watsonx AI products running within SanQtum AI's zero-trust, micro edge data center network operated by Available Infrastructure. This infrastructure supports enterprise AI workloads without reliance on public cloud infrastructure, addressing growing concerns about data sovereignty, latency, and security in AI deployments.
The implementation enables cybersecure data storage and compute, real-time data scoring, tokenization, credentialing, and ultra-low-latency processing across two of the most data-dense metropolitan regions in the United States. The SanQtum AI platform's architecture provides a foundation for secure AI operations at the edge, where data processing occurs closer to its source rather than in centralized cloud facilities. This approach reduces latency for time-sensitive applications and enhances data privacy by minimizing data transmission across networks. The platform's zero-trust security model ensures that all access requests are verified regardless of origin, providing additional protection for sensitive enterprise data.
Datavault AI's technology focuses on instant data monetization and enterprise digital twins, with applications spanning multiple industries including sports and entertainment, biotech, education, fintech, real estate, healthcare, and energy. The company's Information Data Exchange enables Digital Twins and licensing of name, image, and likeness by securely attaching physical real-world objects to immutable metadata objects. More information about the company is available at https://ibn.fm/DVLT.
The expansion into New York and Philadelphia represents a strategic move to position enterprise AI infrastructure in regions with high concentrations of financial, healthcare, and technology organizations. These deployments could accelerate AI adoption across sectors that require real-time processing of sensitive data while maintaining strict compliance with regional data protection regulations. The collaboration demonstrates how traditional enterprise technology providers like IBM are partnering with specialized AI companies to address the unique requirements of edge computing environments. This development matters because it provides organizations with alternatives to public cloud infrastructure while meeting increasing demands for data sovereignty and reduced latency in AI applications.

