
Global payments and technology company
Principal AI Engineer
Our Purpose
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.
Title and Summary
Principal AI Engineer:
Overview:
As a Principal AI Engineer on the AI Foundations team, you are an established subject matter expert in AI Engineering who applies expert knowledge and experience to drive achievement of key area goals and initiatives by making significant improvements to new or existing products, services, and/or processes. You lead the design and operationalization of complex, production-grade agentic systems—particularly multi-agent, multi-tool solutions that plan, call tools safely, maintain memory, and continuously improve through evaluation and feedback. You influence technical direction across programs, set engineering standards for reliability and responsible AI, and partner with platform, security, governance, and product stakeholders to ship measurable business outcomes.
Responsibilities:
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Serve as an established subject matter expert in AI Engineering, influencing stakeholders and shaping technical direction across multiple initiatives.
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Architect, design, develop, and maintain advanced AI/ML systems, with emphasis on complex agentic solutions (multi-agent orchestration, tool/function-calling, memory, reflection/self-correction, and autonomy policies).
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Lead production implementation of agentic AI systems, including scalable training and evaluation pipelines, deployment frameworks, and runtime orchestration patterns.
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Define and implement safe tool-use patterns: structured outputs, robust error handling, permissioning and auditability, human-in-the-loop (HITL) approval steps for sensitive actions, and guardrail enforcement.
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Establish end-to-end Agent Ops/LLMOps practices for agentic systems: release pipelines for prompts/tools/policies, canary strategies, safe rollback mechanisms, and continuous regression/safety evaluations as release gates.
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Build and optimize data ingestion, preprocessing, feature/embedding engineering, and retrieval/memory workflows to improve grounding quality and reduce failure modes.
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Own production observability for agentic systems: trace capture, cost/token telemetry, latency and reliability SLOs, and incident response practices for agent failures.
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Implement drift detection and performance decay monitoring (data drift, concept drift), and automate model/agent retraining, policy updates, and redeployment to maintain output quality over time.
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Drive measurable improvements in system effectiveness, safety, and efficiency by defining success metrics (task success, intervention rate, policy violations, cost and latency per task) and continuously improving evaluation coverage.
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Mentor and grow senior and junior engineers through design reviews, code reviews, hands-on coaching, and the creation of reusable patterns, playbooks, and standards for agentic delivery.
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Key Skills
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Agentic System Architecture: multi-agent orchestration, planning and goal decomposition, tool/function-calling, memory and retrieval patterns, and behavior optimization.
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Production Engineering for Agents: scalable deployment frameworks, high-availability runtime design, robust failure handling, and operational readiness.
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Agent Ops / LLMOps: CI/CD for prompts/tools/policies, release governance, experiment management, canaries, feature flags, and safe rollbacks.
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Evaluation & Safety: automated eval pipelines (behavioral, regression, adversarial), HITL workflows, guardrails, policy enforcement, and red-team testing as shipping gates.
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Observability & Reliability: distributed tracing for reasoning/tool calls, telemetry, cost and latency management, SLOs/SLIs, and incident response for agent systems.
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Data/Feature/Retrieval Engineering: ingestion and preprocessing pipelines, feature/embedding workflows, vector search and reranking, caching, and trace stores.
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Cross-Functional Influence: ability to align platform, security, governance, and product partners; communicate tradeoffs; and drive adoption of standards across teams.
Qualifications:
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Bachelor’s degree in Computer Science, Engineering, Data Science, Applied Mathematics, or related technical field; advanced degree preferred.
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Strong foundation in software engineering, distributed systems, and applied machine learning relevant to production AI systems.
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Demonstrated understanding of responsible AI, model/system risk, privacy/security considerations, and governance requirements for enterprise deployments.
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Experience Requirements (Production-Focused)
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Demonstrated, sustained ownership of production AI/ML systems, including design, build, deployment, and ongoing lifecycle operations.
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Real-world experience shipping complex agentic systems into production, including multi-agent coordination and multi-tool integration with safe action policies.
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Hands-on experience building production pipelines for evaluation, monitoring, versioning, and continuous improvement (including retraining or policy/guardrail updates).
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Proven ability to define and operationalize observability and reliability practices for agentic systems (traceability, telemetry, SLOs, incident management).
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Track record of influencing architecture and standards across multiple teams or programs, and mentoring engineers to raise overall engineering rigor.
Corporate Security Responsibility
All activities involving access to Mastercard assets, information, and networks comes with an inherent risk to the organization and, therefore, it is expected that every person working for, or on behalf of, Mastercard is responsible for information security and must:
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Abide by Mastercard’s security policies and practices;
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Ensure the confidentiality and integrity of the information being accessed;
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Report any suspected information security violation or breach, and
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Complete all periodic mandatory security trainings in accordance with Mastercard’s guidelines.
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关于Mastercard

Mastercard
PublicA financial network that processes payments between banks and cardholders
10,001+
员工数
Purchase
总部位置
$360B
企业估值
评价
10条评价
3.8
10条评价
工作生活平衡
2.8
薪酬
4.1
企业文化
4.2
职业发展
3.4
管理层
3.1
72%
推荐率
优点
Great team culture and supportive colleagues
Excellent benefits and compensation
Training and development opportunities
缺点
Work-life balance challenges and long hours
High pressure and stress during peak times
Management issues and lack of direction
薪资范围
51个数据点
L6
L7
L9
Mid/L4
Director
L5
L6 ·
0份报告
$198,500
年薪总额
基本工资
-
股票
-
奖金
-
$168,725
$228,275
面试评价
3条评价
难度
3.3
/ 5
时长
14-28周
录用率
33%
体验
正面 33%
中性 34%
负面 33%
面试流程
1
Application Review
2
Recruiter Screen
3
Technical Phone Screen
4
Behavioral Interview
5
Super Day/Final Round
6
Offer
常见问题
Coding/Algorithm
Technical Knowledge
Behavioral/STAR
System Design
Past Experience
最新动态
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