: As of early 2026, AI is being integrated to bolster XRPL's reliability as it scales for global payments and tokenized assets .
: ML models predict global customer demand on a daily and long-term basis to determine exactly how much liquidity is needed, where, and when.
Ripple utilizes ML specifically to address the complex problem of for its customers. : As of early 2026, AI is being
: Some ML models are already in pre-production, making critical business decisions that drive faster transactions and 24/7 global availability. AI and Security for Developers
: Developers are adopting AI-assisted testing and threat analysis to identify ledger vulnerabilities before they reach production. : Some ML models are already in pre-production,
: These models enable On-Demand Liquidity (ODL) to scale efficiently, delivering transactions at the optimal cost and passing those savings back to customers.
For the , Ripple is shifting toward a proactive, AI-driven security model . For the , Ripple is shifting toward a
: Research is underway with academic partners like Nanyang Technological University to build a multi-agent execution layer on the XRPL. This would allow developers to deploy task-specific agents, such as trading bots and IoT services, directly on the ledger. CBDCs and the Private Ledger