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June 29, 2026

Part III: Re-AI-lignment for Enterprise Data

AI needs context, not just data. Without trusted meaning, lineage, and policy controls, bad data becomes bad action at scale. Enterprise AI impact starts with governed data foundations.

June 28, 2026

Part II: Why Data Governance Matters More Now!

Part I showed how enterprise data debt accumulates quietly through legacy platforms, fragmented semantics, underpowered governance, SaaS transitions, regulatory overlays,[…]

June 27, 2026

The Weight [Wait] Of Legacy Data

Enterprise AI will only scale safely when data is governed by meaning, lineage, access control, and executable constraints—not legacy debt. Read why AI readiness starts with trusted data.

April 22, 2026

Institutional Escrow Redefined

The “trust tax” on global trade — intermediary fees, manual escrow, settlement delays — is a multi-billion-dollar drag on capital efficiency. We prototyped the alternative: a fully digital escrow system on Canton Network using Daml, with tri-party authority, pluggable institutional custody, and milestone-based settlement that executes in code, not in email threads.

March 23, 2026

How AI is Reshaping the CTO’s Responsibilities?

For much of the past two decades, the Chief Technology Officer (CTO) was often viewed as a role primarily associated with technology companies. In traditional enterprises, technology leadership frequently lived inside IT or was seen as a support function responsible for infrastructure and software delivery. Artificial intelligence has fundamentally changed that equation.

November 30, 2025

AI Demands Data Center Internals

Previously, we discussed the differences between AI Model building and AI Inference activities. We also talked about the location sensitivity[…]

October 8, 2025

AI Model Training vs Inference: Key Infrastructure Differences

The infrastructure requirements for training AI foundation models and deploying them into production are vastly different, primarily due to the nature of the tasks they perform. One is a resource-intensive, one-off (or infrequent) process, while the other is a continuous, scalable, and low-latency operation. Understanding use is critical to understanding opportunities.

Innovating on AI's Physical Constraints
September 27, 2025

The Physical World of AI

The Rise of AI has impacted everyone and everything. Growth is exponential, innovation is necessary to overcome the physical constraints.

May 21, 2021

Demystifying Enterprise Cybersecurity

Introduction It is interesting to me that Cybersecurity conversations with large enterprises almost always start with discussion of known gaps[…]