AI in capital markets isn’t a question of if anymore. It’s a question of how. As firms push beyond experimentation into production, they’re running into hard constraints: latency-sensitive workloads, regulatory scrutiny, fragmented data estates, and increasing cost pressure. This is where many AI strategies quietly stall.
Our new whitepaper, Hybrid AI Architecture in Capital Markets, explores why hybrid architectures, combining cloud, on-premise, and edge, are emerging as the most viable path forward. Rather than treating architecture as an afterthought, the paper shows how architectural decisions directly shape risk posture, scalability, model performance, and time to value.
Written for CIOs, CTOs, and senior architecture, risk, and platform teams, the whitepaper balances strategic perspective with practical depth. It covers where different AI workloads belong, how to think about governance and regulatory alignment from day one, and what “production-ready” really means in capital markets environments.
If you’re responsible for turning AI ambition into operational reality without compromising performance, security, or compliance, this whitepaper will help you decide what to build, where to run it, and why hybrid is fast becoming the default.


