AI for processors, acquirers, issuers, and gateway providers — real-time fraud detection at sub-50ms latency, authorization optimization models that lift approval rates without increasing loss, AML transaction monitoring, and the merchant underwriting models KYB-at-scale requires.
ML fraud models at sub-50ms P99 latency — for card-present, card-not-present, account-to-account transfers, and wallet transactions. With feature stores providing merchant and cardholder history in real time and the graceful degradation that keeps authorization streams running during model impairment.
Models that improve authorization rates without increasing loss — issuer behavior prediction, BIN routing optimization, retry strategy, and soft-decline recovery with the A/B testing framework that proves lift before rollout.
AML transaction monitoring with SAR investigation workflow, merchant underwriting models for KYB-at-scale with adverse media and sanctions screening, and the explainability compliance and risk require.
Generative AI for payments — merchant support, chargeback evidence, SAR narratives with scheme and compliance discipline...
Data analytics for payments — authorization lift diagnosis, fraud concentration, chargeback representment, and interchan...
RPA for payments — chargeback retrieval, scheme compliance cases, merchant file updates, reconciliation exceptions....
Microsoft Copilot for payments — productivity with CDE boundaries, scheme compliance discipline, and PAN refusal pattern...
Yes — with the right architecture. Feature stores that provide real-time cardholder, merchant, and device features with sub-5ms retrieval. Gradient-boosted models or small neural networks optimized for inference latency. Model servers at the authorization stream's latency profile. Graceful degradation to rules-based fallback when models are impaired. We've built this at processor scale.
Through the processor's authorization stream hook — typically a pre-authorization call with the model's decision integrated before the issuer send. For orchestration platforms (Spreedly, IXOPAY, Primer), integration happens at the orchestration layer. For proprietary streams, we build against the operator's stream manager with the latency discipline real-time payments requires.
Yes. Pre-qualified data scientists and ML engineers with payments experience — real-time fraud, authorization optimization, AML, KYB, and the production latency discipline payments AI requires. 4-stage consulting-led matching, 92% first-match acceptance.
Sub-50ms fraud, authorization lift, AML, KYB — AI built for the latency, loss rate, and approval rate reality payments actually operates at.
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