The roadmap to scalable, real-time AI in financial services
Closing the context gap
Serve your agents fresh data at Redis speed.

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Most enterprise AI initiatives in financial services aren't failing because of the model — they're failing because people aren’t using them because the answers are not in the context of the user. With 55% of financial services AI rollouts stalling before production, the context gap has become the defining obstacle between pilot and scale.
• This ebook maps the path from fragmented, latency-prone data infrastructure to a production-ready context engine built for the demands of financial services. Inside you'll find:
• Why context infrastructure—not model capability—is the real bottleneck blocking AI at scale
• The three systemic risks driving deployment failures: legal liability, latency-driven fraud exposure, and hallucination from data blind spots
• How a unified context engine replaces a fragmented stack of vector databases and custom glue code
• Architecture patterns for fraud detection, global trading, and client advisory AI workflows
• A reference architecture for deploying a Real-Time Context Engine on AWS
• Built in partnership with AWS
Agent capability is accelerating, but 55% of financial AI projects still never reach production—the bottleneck is context, not the model.
A 50ms data retrieval delay is enough for fraudulent transactions to clear before detection—real-time feature serving eliminates that window.
Persistent agentic memory reduces cost and latency by preserving context across sessions, so agents never re-derive what they already know.
Firms deploying this architecture report 500% three-year ROI, payback in under four months, and 99.999% uptime.
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