Mastercard powers economies and empowers people in 200+ countries and territories worldwide. Together with our customers, we’re helping build a sustainable economy where everyone can prosper. We support a wide range of digital payments choices, making transactions secure, simple, smart and accessible. Our technology and innovation, partnerships and networks combine to deliver a unique set of products and services that help people, businesses and governments realize their greatest potential.
We are looking for an AI Consultant (Principal AI Engineer) to support the design and adoption of Agentic AI based solutions with our partners and customers. This role is highly architecture focused and partner facing, combining deep systems thinking with practical AI knowledge. You will work closely with external partners to understand their existing architectures and data landscapes, and provide technical consultation on implementing scalable, secure AI solutions.
What you’ll do: * Partner-facing solution consulting: Engage directly with partners and customers to understand their system architectures, integration patterns, and data environments. Lead technical discovery sessions and act as a trusted advisor on applying Agentic AI solutions within their constraints. * Architect AI-enabled solutions: Design end to end architectures for Agentic AI systems, including agent orchestration, data flows, model integration, APIs, and security boundaries. Ensure designs align with partner environments such as cloud, hybrid, or on prem deployments. * Translate requirements into blueprints: Convert business and technical requirements into clear solution architectures, reference designs, and implementation guidance that partners can execute against. * Guide AI and data integration: Advise on data requirements, data readiness, and integration of AI models with enterprise systems. Provide guidance on patterns such as retrieval augmented generation (RAG), tool using agents, and human in the loop workflows. * Define best practices and guardrails: Apply Responsible AI principles, including data governance, security, safety controls, and risk mitigation. Contribute to standards, templates, and reference architectures for repeatable partner deployments. * Collaborate with internal teams: Work with product, engineering, and platform teams to align partner needs with product capabilities and roadmap. Support pilots, proofs of concept, and early customer implementations. * Technical communication and enablement: Produce architecture diagrams, documentation, and presentations. Clearly explain technical trade offs and architectural decisions to both technical and non technical stakeholders. * Stay current on Agentic AI: Track emerging tools, frameworks, and architectural patterns in generative and Agentic AI, and guide partners on practical adoption.
