Hello,
Hope you are doing well.
This is Ram from ICS Global Soft. Kindly find the below job description and let me know your availability
Role: Data Platform Strategy Lead Payments & Transaction Banking
Location: NYC-hybrid
Duration: Long-term
Role Summary
The Data Platform Engineering Strategy Lead provides senior-level leadership to define, modernize and scale enterprise data platforms supporting Payments and Transaction Banking. The role blends platform architecture strategy with hands-on engineering oversight to enable high-volume, low-latency payments data use cases across clearing, settlement, liquidity and regulatory reporting. The position focuses on cloud-native data platforms, AI/ML enablement and governance-aligned delivery in a highly regulated, large-scale banking environment.
Key Responsibilities:
1) Data Platform Strategy & Architecture
- Define and own a multi-year data platform engineering roadmap aligned to Payments and Transaction Banking priorities (e.g., real-time payments, ACH, SWIFT, clearing and settlement).
- Establish cloud-native and lakehouse-style reference architectures, balancing near-term delivery with long-term modernization and cost efficiency.
- Translate architecture principles into pragmatic, implementable guidance for engineering and delivery teams.
2) Payments Data Modernization & Scale
- Lead modernization of legacy data warehouses and integration layers into scalable, cloud-ready platforms supporting high-volume transactional data.
- Enable ISO 20022-aligned data models, enriched payment event data and standardized integration patterns across batch and streaming use cases.
- Support data quality, reconciliation and lineage requirements critical to payments operations and downstream risk, finance and regulatory reporting.
3) Emerging Technology & AI/ML Enablement
- Assess and selectively adopt emerging data and analytics technologies (e.g., distributed query engines, open table formats, streaming frameworks, graph and NoSQL stores).
- Evaluate AI/ML use cases for payments data (e.g., anomaly detection, fraud signals, liquidity forecasting) with focus on scalability, risk and value realization.
- Define platform patterns for ML lifecycle management (MLOps) and secure integration into enterprise data platforms.
4) PoC-to-Production & Value Realization
- Sponsor and govern proofs of concept, ensuring clear success criteria, engineering guardrails and alignment with enterprise standards.
- Industrialize validated solutions into reusable accelerators, templates and patterns.
- Quantify business impact and ROI to support prioritization and scaling decisions.
5) Governance, Risk & Compliance Alignment
- Ensure alignment with enterprise data governance, metadata, lineage and data quality standards.
- Embed regulatory and conduct-risk considerations (e.g., data privacy, auditability, model risk) into platform and solution design.
- Promote responsible AI and controlled technology adoption in regulated payments environments.
6) Stakeholder Engagement & Enablement
- Act as a trusted advisor to payments business leaders, technology teams and risk/compliance stakeholders.
- Drive data literacy, best-practice adoption and engineering standards across distributed teams.
- Influence platform investment and delivery decisions through clear articulation of trade-offs, costs and benefits.