Mastercard Logo

Mastercard

Senior / Lead Data Engineer

Posted Yesterday
Be an Early Applicant
Hybrid
Singapore
Senior level
Hybrid
Singapore
Senior level
The role involves designing data architecture, building ETL/ELT workflows, ensuring data quality, providing technical leadership, and collaborating with cross-functional teams to create scalable data systems for AI projects.
The summary above was generated by AI
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
Senior / Lead Data Engineer
We are seeking great talents for our roles - Lead Data Engineer & Senior Data Engineer to join Mastercard Foundry R&D. You will help shape our innovation roadmap by exploring new technologies and building scalable, data-driven prototypes and products. The ideal candidate is hands-on, curious, adaptable, and motivated to experiment and learn.
Lead Data Engineer
What You'll Do
* Drive Data Architecture: Own the data architecture and modeling strategy for AI projects. Define how data is stored, organized, and accessed. Select technologies, design schemas/formats, and ensure systems support scalable AI and analytics workloads.
* Build Scalable Data Pipelines: Lead development of robust ETL/ELT workflows and data models. Build pipelines that move large datasets with high reliability and low latency to support training and inference for AI and generative AI systems.
* Ensure Data Quality & Governance: Oversee data governance and compliance with internal standards and regulations. Implement data anonymization, quality checks, lineage, and controls for handling sensitive information.
* Provide Technical Leadership: Offer hands-on leadership across data engineering projects. Conduct code reviews, enforce best practices, and promote clean, well-tested code. Introduce improvements in development processes and tooling.
* Cross-Functional Collaboration: Work closely with engineers, scientists, and product stakeholders. Scope work, manage data deliverables in agile sprints, and ensure timely delivery of data components aligned with project milestones.
What You'll Bring
* Extensive Data Engineering Experience: 8-12+ years in data engineering or backend engineering, including senior/lead roles. Experience designing end-to-end data systems, solving scale/performance challenges, integrating diverse sources, and operating pipelines in production.
* Big Data & Cloud Expertise: Strong skills in Python and/or Java/Scala. Deep experience with Spark, Hadoop, Hive/Impala, and Airflow. Hands-on work with AWS, Azure, or GCP using cloud-native processing and storage services (e.g., S3, Glue, EMR, Data Factory). Ability to design scalable, cost-efficient workloads for experimental and variable R&D environments.
* AI/ML Data Lifecycle Knowledge: Understanding of data needs for machine learning-dataset preparation, feature/label management, and supporting real-time or batch training pipelines. Experience with feature stores or streaming data is useful.
* Leadership & Mentorship: Ability to translate ambiguous goals into clear plans, guide engineers, and lead technical execution.
* Problem-Solving Mindset: Approach issues systematically, using analysis and data to select scalable, maintainable solutions.
Required Skills
* Education & Background: Bachelor's degree in Computer Science, Engineering, or related field. 8-12+ years of proven experience architecting and operating production-grade data systems, especially those supporting analytics or ML workloads.
* Pipeline Development: Expert in ETL/ELT design and implementation, working with diverse data sources, transformations, and targets. Strong experience scheduling and orchestrating pipelines using Airflow or similar tools.
* Programming & Databases: Advanced Python and/or Scala/Java skills and strong software engineering fundamentals (version control, CI, code reviews). Excellent SQL abilities, including performance tuning on large datasets.
* Big Data Technologies: Hands-on Spark experience (RDDs/DataFrames, optimization). Familiar with Hadoop components (HDFS, YARN), Hive/Impala, and streaming systems like Kafka or Kinesis.
* Cloud Infrastructure: Experience deploying data systems on AWS/Azure/GCP. Familiar with cloud data lakes, warehouses (Redshift, BigQuery, Snowflake), and cloud-based processing engines (EMR, Dataproc, Glue, Synapse). Comfortable with Linux and shell scripting.
* Data Governance & Security: Knowledge of data privacy regulations, PII handling, access controls, encryption/masking, and data quality validation. Experience with metadata management or data cataloging tools is a plus.
* Collaboration & Agile Delivery: Strong communication skills and experience working with cross-functional teams. Ability to document designs clearly and deliver iteratively using agile practices.
Preferred Skills
* Advanced Cloud & Data Platform Expertise: Experience with AWS data engineering services, Databricks, and Lakehouse/Delta Lake architectures (including bronze/silver/gold layers).
* Modern Data Stack: Familiarity with dbt, Great Expectations, containerization (Docker/Kubernetes), and monitoring tools like Grafana or cloud-native monitoring.
* DevOps & CI/CD for Data: Experience implementing CI/CD pipelines for data workflows and using IaC tools like Terraform or CloudFormation. Knowledge of data versioning (e.g., Delta Lake time-travel) and supporting continuous delivery for ML systems.
* Continuous Learning: Motivation to explore emerging technologies, especially in AI and generative AI data workflows.
Senior Data Engineer
What You'll Do
* Drive Data Architecture: Own the data architecture and modeling strategy for AI projects. Define how data is stored, organized, and accessed. Select technologies, design schemas/formats, and ensure systems support scalable AI and analytics workloads.
* Build Scalable Data Pipelines: Lead development of robust ETL/ELT workflows and data models. Build pipelines that move large datasets with high reliability and low latency to support training and inference for AI and generative AI systems.
* Ensure Data Quality & Governance: Oversee data governance and compliance with internal standards and regulations. Implement data anonymization, quality checks, lineage, and controls for handling sensitive information.
* Provide Technical Leadership: Offer hands-on leadership across data engineering projects. Conduct code reviews, enforce best practices, and promote clean, well-tested code. Introduce improvements in development processes and tooling.
* Cross-Functional Collaboration: Work closely with engineers, scientists, and product stakeholders. Scope work, manage data deliverables in agile sprints, and ensure timely delivery of data components aligned with project milestones.
What You'll Bring
* Data Engineering Experience: Experience in data engineering or backend engineering. Experience designing end-to-end data systems, solving scale/performance challenges, integrating diverse sources, and operating pipelines in production would be a plus.
* Big Data & Cloud Expertise: Strong skills in Python and/or Java/Scala. Deep experience with Spark, Hadoop, Hive/Impala, and Airflow. Hands-on work with AWS, Azure, or GCP using cloud-native processing and storage services (e.g., S3, Glue, EMR, Data Factory). Ability to design scalable, cost-efficient workloads for experimental and variable R&D environments.
* AI/ML Data Lifecycle Knowledge: Understanding of data needs for machine learning-dataset preparation, feature/label management, and supporting real-time or batch training pipelines. Experience with feature stores or streaming data is useful.
* Leadership & Mentorship: Ability to translate ambiguous goals into clear plans, guide engineers, and lead technical execution.
* Problem-Solving Mindset: Approach issues systematically, using analysis and data to select scalable, maintainable solutions.
Required Skills
* Education & Background: Bachelor's degree in Computer Science, Engineering, or related field. 5+ years of proven experience architecting and operating production-grade data systems, especially those supporting analytics or ML workloads.
* Pipeline Development: Expert in ETL/ELT design and implementation, working with diverse data sources, transformations, and targets. Strong experience scheduling and orchestrating pipelines using Airflow or similar tools.
* Programming & Databases: Advanced Python and/or Scala/Java skills and strong software engineering fundamentals (version control, CI, code reviews). Excellent SQL abilities, including performance tuning on large datasets.
* Big Data Technologies: Hands-on Spark experience (RDDs/DataFrames, optimization). Familiar with Hadoop components (HDFS, YARN), Hive/Impala, and streaming systems like Kafka or Kinesis.
* Cloud Infrastructure: Experience deploying data systems on AWS/Azure/GCP. Familiar with cloud data lakes, warehouses (Redshift, BigQuery, Snowflake), and cloud-based processing engines (EMR, Dataproc, Glue, Synapse). Comfortable with Linux and shell scripting.
* Data Governance & Security: Knowledge of data privacy regulations, PII handling, access controls, encryption/masking, and data quality validation. Experience with metadata management or data cataloging tools is a plus.
* Collaboration & Agile Delivery: Strong communication skills and experience working with cross-functional teams. Ability to document designs clearly and deliver iteratively using agile practices.
Preferred Skills
* Advanced Cloud & Data Platform Expertise: Experience with AWS data engineering services, Databricks, and Lakehouse/Delta Lake architectures (including bronze/silver/gold layers).
* Modern Data Stack: Familiarity with dbt, Great Expectations, containerization (Docker/Kubernetes), and monitoring tools like Grafana or cloud-native monitoring.
* DevOps & CI/CD for Data: Experience implementing CI/CD pipelines for data workflows and using IaC tools like Terraform or CloudFormation. Knowledge of data versioning (e.g., Delta Lake time-travel) and supporting continuous delivery for ML systems.
* Continuous Learning: Motivation to explore emerging technologies, especially in AI and generative AI data workflows.
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:
  • Abide by Mastercard's security policies and practices;
  • Ensure the confidentiality and integrity of the information being accessed;
  • Report any suspected information security violation or breach, and
  • Complete all periodic mandatory security trainings in accordance with Mastercard's guidelines.

Top Skills

Airflow
AWS
Azure
BigQuery
Docker
Emr
GCP
Glue
Grafana
Hadoop
Hive
Impala
Java
Kafka
Kinesis
Kubernetes
Python
Redshift
S3
Scala
Snowflake
Spark
Terraform

Mastercard London, England Office

1 Angel Lane, London, United Kingdom, EC4R 3AB

Similar Jobs at Mastercard

5 Hours Ago
Hybrid
Singapore, SGP
Senior level
Senior level
Blockchain • Fintech • Payments • Consulting • Cryptocurrency • Cybersecurity • Quantum Computing
As Director of Services Business Development, drive growth through managing client relationships, achieving sales targets, and leading pitch presentations while mentoring team members.
Top Skills: Cybersecurity SolutionsData & AnalyticsSaaS
Yesterday
Hybrid
Singapore, SGP
Senior level
Senior level
Blockchain • Fintech • Payments • Consulting • Cryptocurrency • Cybersecurity • Quantum Computing
As a Lead AI Engineer, you will lead AI innovation, develop AI solutions, guide a team through development, and ensure model deployment in production. You will collaborate with cross-functional teams and stay on top of AI trends.
Top Skills: AWSAzureCi/CdGCPJavaLangchainLlamaindexNode.jsPythonPyTorchTensorFlow
Yesterday
Hybrid
Singapore, SGP
Expert/Leader
Expert/Leader
Blockchain • Fintech • Payments • Consulting • Cryptocurrency • Cybersecurity • Quantum Computing
Drive innovation in AI solutions by architecting scalable systems, collaborating with teams, and ensuring best practices in AI development. Lead technical design and implementation efforts.
Top Skills: AWSAzureCi/CdGCPJavaJavaScriptMicroservicesMlopsPythonTypescript

What you need to know about the London Tech Scene

London isn't just a hub for established businesses; it's also a nursery for innovation. Boasting one of the most recognized fintech ecosystems in Europe, attracting billions in investments each year, London's success has made it a go-to destination for startups looking to make their mark. Top U.K. companies like Hoptin, Moneybox and Marshmallow have already made the city their base — yet fintech is just the beginning. From healthtech to renewable energy to cybersecurity and beyond, the city's startups are breaking new ground across a range of industries.

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account