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Ebay MTS Software Engineer Data 
India, Karnataka, Bengaluru 
846388472

Today
What you’ll do and learn
  • Designing & Building Data Pipelines: Creating systems (often called ETL or ELT pipelines) that automatically extract data from various sources (like databases, APIs, and log files), transform it into a usable format, and load it into a central repository.

  • Managing and optimizing large-scale data storage solutions, such as data warehouses (for structured data) and data lakes (for raw, unstructured data).

  • Support platform capabilities across ingestion, streaming, lakehouse/warehouse, catalog, and governance .

  • Data Modeling: Designing the structure of data to make it efficient for analysts and data scientists to query..

  • Ensuring Data Quality & Governance: Implementing checks and processes to ensure data is accurate, consistent, reliable, and secure.

  • Optimizing Performance: Tuning data pipelines and database queries to ensure they run quickly and efficiently, even with massive volumes of data.

  • Collaboration:

What you bring
  • 8+ years of professional software engineering experience (or equivalent impact)..

  • Expert-Level SQL: You must be able to write complex, efficient SQL queries to retrieve, manipulate, and transform data.

  • Strong coding skills in Java/Python and familiarity with CI/CD .

  • Hands-on with some of: Kafka/Flink , Spark , Delta/Iceberg , Kubernetes , NoSQL/columnar stores .

  • Proven ability to work independently , make sound tradeoffs, and deliver quality outcomes with minimal supervision.

  • Solid debugging, performance analysis, and system design skills.

  • Relational Databases (SQL): (e.g., PostgreSQL, MySQL)

  • NoSQL Databases: (e.g., MongoDB, Cassandra) for unstructured data.

Data Pipeline & Orchestration Tools:

  • Apache Airflow: The industry standard for scheduling, automating, and monitoring data pipelines.

Qualifications

  • Education: A Bachelor's degree in Computer Science, Engineering, Information Systems, Mathematics, or a related technical field. A Master's degree is a plus.


  • Impact at scale: Your platform work powers analytics and ML across a global marketplace.

  • Hard problems: Streaming freshness/correctness, storage/compute efficiency, multi-region resiliency.

  • Collaborative culture: