resu·mail

Sr. Data Engineer (Big Data & Analytics Engineering)

at Mastercard

Pune, India Posted 2026-04-30

Don't apply into the void — reach the hiring manager

ResuMail finds the recruiters and hiring managers behind this Sr. Data Engineer (Big Data & Analytics Engineering) role at Mastercard, drafts a personalised outreach email, and schedules the send — so your application actually gets seen.

Reach the hiring manager ›

About this role

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 Sr. Data Engineer (Big Data & Analytics Engineering) Job Posting Title: Sr. Data Engineer (Big Data & Analytics Engineering) ________________________________________ About Mastercard Mastercard is a global technology company in the payments industry. Our mission is to connect and power an inclusive, digital economy that benefits everyone, everywhere—by making transactions safe, simple, smart, and accessible. Through secure data, trusted networks, partnerships, and innovation, we enable individuals, financial institutions, governments, and businesses to realise their greatest potential. Our culture is defined by our Decency Quotient (DQ), guiding how we work, collaborate, and create impact—inside and outside our company. With a presence across more than 210 countries and territories, we are building a sustainable world that unlocks priceless possibilities for all. ________________________________________ About the Role The Sr. Data Engineer will design, build, and operate scalable data pipelines and curated datasets that power analytics products, reporting, and advanced modeling. Working closely with the Lead and cross-functional partners (Product, Data Science, and Platform teams), this role focuses on reliability, performance, data quality, and governance across batch and (where applicable) streaming workloads. Key Responsibilities • Build and maintain robust ETL/ELT pipelines for ingestion, transformation, and aggregation of large-scale datasets on Hadoop and enterprise data platforms. • Develop high-performance data processing jobs using PySpark/Spark, Python, and SQL (including engines such as Impala where applicable). • Partner with Product and Analytics stakeholders to translate requirements into reusable, governed data models (facts/dimensions, curated layers, and semantic-ready datasets). • Implement and automate data quality checks, reconciliation, lineage documentation, and monitoring to ensure trust in downstream analytics and AI use cases. • Optimize pipeline performance and cost through partitioning, file formats, compute tuning, and efficient query patterns. • Optimize pipeline performance and cost through partitioning strategies, columnar file formats (Parquet, ORC, Delta), compute tuning, caching, and efficient query patterns. • Contribute to CI/CD for data workflows (testing, code reviews, deployment automation), promoting engineering best practices and maintainable codebases. • Support data governance, privacy, and security requirements (PII handling, access controls, auditability) in collaboration with platform and risk partners. • Collaborate with data scientists to publish analysis-ready and ML-ready datasets, including feature generation and repeatable data preparation processes. • Troubleshoot production issues, participate in on-call/operational rotations, and drive root-cause fixes to improve reliability. • Communicate data platform capabilities, limitations, and trade-offs clearly to technical and non-technical stakeholders. • Strong problem-solving skills with ability to debug complex distributed data issues independently. • Clear written and verbal communication with both technical engineers and non-technical business stakeholders. All About You Technical Skills & Experience • Strong hands-on experience in data engineering building production-grade pipelines on big data platforms (Hadoop ecosystem and/or cloud data platforms). • Strong hands-on experience in data engineering building production-grade pipelines on big data platforms (Hadoop ecosystem: HDFS, Hive, Impala, YARN, Oozie). • Proficiency in PySpark and Python and strong SQL skills across distributed and relational data stores. • Experience with orchestration/integration tools such as Apache Airflow, Apache NiFi, Azure Data Factory, Pentaho, or Talend. • Solid understanding of data modeling, incremental processing patterns (CDC, SCD Type 1/2), and building curated datasets for analytics and reporting • Experience with cloud services (Azure/AWS/GCP) for data lakes, compute, and storage is preferred. • Proficiency in columnar and open table formats: Parquet, ORC, Delta Lake, Apache Iceberg, or Apache Hudi. • Strong knowledge of distributed computing patterns: partitioning, bucketing, broadcast joins, shuffle optimization. • Working knowledge of DevOps/CI-CD practices: version control (Git), automated testing, release pipelines, and observability. • Strong problem-solving skills with the ability to debug complex data issues and communicate clearly with technical and non-technical stakeholders. • Bachelor’s degree in computer science, Engineering, or equivalent practical experience. • 5+ years of relevant experience in data engineering or big data analytics engineering (flexible based on depth of expertise). GenAI / LLM Data Enablement (Preferred) • Experience preparing curated, governed datasets (including semi-structured/unstructured) for AI/GenAI consumption with attention to privacy, quality, and reproducibility ________________________________________ 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.

How to get this job at Mastercard

  1. Don't rely on the portal. Cold applications for a role like Sr. Data Engineer (Big Data & Analytics Engineering) land in a pile of hundreds. A direct, personalised message to the hiring manager or a referrer is the fastest way in.
  2. Find the right person. ResuMail surfaces the actual recruiters and hiring managers at Mastercard — not a generic careers inbox.
  3. Send tailored outreach. ResuMail drafts an email personalised to your resume and this role, then paces and schedules sends so you stay out of spam.
  4. Follow up. One polite nudge after 5–7 days roughly doubles reply rates — scheduled for you.

Reach Mastercard's hiring managers today.

Free to start. No credit card. Built for Indian job seekers.

Start free with ResuMail ›