Qureos

FIND_THE_RIGHTJOB.

JOB_REQUIREMENTS

Hires in

Not specified

Employment Type

Not specified

Company Location

Not specified

Salary

Not specified

Role Overview:

The Data Team Lead will be responsible for driving the overall strategy, governance, and operational excellence of the enterprise data platform. This role involves leading vendor-based data engineering and architecture teams, ensuring efficient resource planning, and overseeing critical platform initiatives.

Key Responsibilities:

  • Lead and manage vendor Data Engineering and Architecture teams, including task allocation and resource planning.
  • Serve as the primary owner of the Data Platform strategy and its roadmap.
  • Oversee Data Platform reporting activities, including system go-lives, KPI tracking, usage insights, and FinOps monitoring.
  • Act as the subject matter expert for the Data Platform ecosystem (Snowflake, AWS, Glue, etc.).
  • Define and evolve long-term platform strategy in alignment with business and technology goals.
  • Collaborate closely with Delivery and Operations Leads to address and prioritize business requirements.
  • Own the DRM process and establish future Data Catalogue and data-modelling standards, ensuring robust data architecture practices.

Skills and Qualifications:

The ideal candidate should have worked on end-to-end data warehousing, data lake solutions in cloud platforms (AWS). The candidate should have the following skills sets:

  • Strong data engineering (ETL) experience in cloud preferably in AWS.AWS Certification (developer/Devops/SA) preferred.
  • Excellent understanding of distributed computing paradigm.
  • Should have excellent experience in data warehouse and data lake implementation.
  • Should have excellent experience in Relational databases, ETL design patterns and ETL development.
  • Should have excellent experience in CICD frameworks and container based deployments.
  • Should have excellent programming and SQL skills.
  • Should have good exposure to No-SQL and Big Data technologies.
  • Should have strong implementation experience in all the below technology areas (breadth) and deep technical expertise in some of the below technologies:
  • Data integration/Engineering – ETL tools like Talend ETL, AWS Glue etc. Experience in Talend Cloud ETL will be plus.
  • Datawarehouse - Snowflake and or AWS Redshift. Experience in Snowflake cloud DWH would be an advantage.
  • Data modelling – Dimensional & transactional modelling using RDBMS, NO-SQL and Big Data technologies.
  • Programming - Java/Python/Scala and SQL.
  • Data visualization – Tools like Tableau, Quicksight.
  • Master data management (MDM) – Concepts and experience in tools like Informatica & Talend MDM.
  • Exposure to Big data – Hadoop eco-system, AWS EMR.
  • Exposure to Big Data processing frameworks – Kinesis, Spark & Spark streaming
  • Demonstrate strong analytical and problem solving capability
  • Good understanding of the data eco-system, both current and future data trends.
  • Should be a go to person for the above technologies


Key Technology – AWS Data Services (e.g. Glue), Snowflake, AWS Cloud Services

© 2025 Qureos. All rights reserved.