Data Engineer

  • Full-time
  • Location: India - Hyderabad
  • Company: Mattel Global Business Services

Company Description

The Opportunity

Mattel is seeking a Senior Data Engineer or Senior ETL Developer, based out of our Technology & Innovation Center in Hyderabad, India, reporting to the IT Director for Enterprise Data and Analytics.

This role will lead the design and development of scalable cloud-based data pipelines using tools like BigQuery, Python, SQL, DBT, and Airflow. You will drive detailed designs decisions, ensure data quality, and collaborate with cross-functional teams to deliver trusted, analytics-ready datasets. This role also includes mentoring junior engineers and setting engineering best practices to support Mattel’s enterprise data strategy.

 

What Your Impact Will Be:

  • Lead the development of scalable, secure, and high-performing data integration pipelines for structured and semi-structured data using Google BigQuery.
  • Design and develop scalable data integration pipelines to ingest structured and semi-structured data from enterprise systems (e.g., ERP, CRM, E-commerce, Order Management) into a centralized cloud data warehouse using Google BigQuery.
  • Build analytics-ready pipelines that transform raw data into trusted, curated datasets for reporting, dashboards, and advanced analytics.
  • Implement transformation logic using DBT to create modular, maintainable, and reusable data models that evolve with business needs.
  • Apply BigQuery best practices—including partitioning, clustering, and query optimization—to ensure high performance and scalability.
  • Automate and monitor complex data workflows using Airflow/Cloud Composer, ensuring dependable pipeline orchestration and job execution.
  • Develop efficient, reusable Python and SQL code for data ingestion, transformation, validation, and performance tuning across the pipeline lifecycle.
  • Establish robust data quality checks and testing strategies to validate both technical accuracy and alignment with business logic.
  • Partner with architects and Technical leads to establish best practices, scalable frameworks, and reference implementations across projects.
  • Collaborate with cross-functional teams—including data analysts, BI developers, and product owners—to understand integration needs and deliver impactful, business-aligned data solutions.
  • Leverage modern ETL platforms such as Ascend.io, Databricks, Dataflow, or Fivetran to accelerate development and improve observability and orchestration.
  • Contribute to technical documentation, CI/CD workflows, and monitoring processes to drive transparency, reliability, and continuous improvement across the data engineering ecosystem.
  • Mentor junior engineers, conduct peer code reviews, and lead technical discussions.

Job Description

What We’re Looking For:

  • Bachelor’s or Master’s degree in Computer Science, Data Engineering, Information Systems, or related technical field.
  • Minimum 3+ years of hands-on experience in data engineering with strong expertise in data warehousing, pipeline development, and analytics on cloud platforms.
  • Expert-level experience in:
    • Google BigQuery for large-scale data warehousing and analytics.
    • Python for data processing, orchestration, and scripting.
    • SQL for data wrangling, transformation, and query optimization.
    • DBT for developing modular and maintainable data transformation layers.
    • Airflow / Cloud Composer for workflow orchestration and scheduling.
  • Proven experience building enterprise-grade ETL/ELT pipelines and scalable data architectures.
  • Strong understanding of data quality frameworks, validation techniques, and governance processes.
  • Proficiency in Agile methodologies (Scrum/Kanban) and managing IT backlogs in a collaborative, iterative environment.
  • Preferred experience with:
    • Tools like Ascend.io, Databricks, Fivetran, or Dataflow.
    • Data cataloging/governance tools (e.g., Collibra).
    • CI/CD tools, Git workflows, and infrastructure automation.
    • Real-time/event-driven data processing using Pub/Sub, Kafka, or similar platforms.
  • Strategic problem-solving skills and ability to architect innovative solutions.
  • Ability to adapt quickly to new technologies and lead adoption across teams.
  • Excellent communication skills and ability to influence cross-functional teams.
  • Good experience on Agile Methodologies like Scrum, Kanban, and managing IT backlog.
  • Be a “go-to” expert for data technologies and solutions.
Privacy Notice