Data Engineer

ELLIOTT MOSS CONSULTING PTE. LTD.
Penarth
1 month ago
Applications closed

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Job Description

The Data Engineer will be responsible for providing operational support for enterprise data platforms.
The role involves working closely with data product teams, business users, and vendors to implement, onboard, and maintain data platforms supporting BI, ingestion, and data governance needs.
The candidate must be willing to provide L2/L3 support, including occasional weekend support.


Key Responsibilities

  • Provide operational support for enterprise data platforms across BI, ingestion, and governance domains.
  • Work with data product teams and business stakeholders to implement and support data platforms using best practices and modern frameworks.
  • Collaborate with product vendors to design, deploy, integrate, and optimize data platforms within the organization’s ecosystem.
  • Ensure deployed platforms comply with IT security and regulatory policies.
  • Establish operational processes and implement monitoring mechanisms to ensure platform availability and reliability.
  • Act as a solution architect, assisting in the end-to-end onboarding of projects onto enterprise data platforms.
  • Perform testing and validation on deployed data platforms. Identify automation opportunities to streamline deployment, monitoring, incident response, and reduce manual operations (using Ansible, CI/CD tools, scripting, etc.).

Required Skills

  • Hands‑on platform support experience with Informatica or Tableau.
  • Willingness to provide L2/L3 support, including weekend support when required.
  • Familiarity with automation tools; Ansible experience is preferred.
  • Ability to support enterprise data platforms and collaborate with product teams, vendors, and end‑users for implementation, onboarding, and maintenance.
  • Good knowledge of Java, Python, and RDBMS (good to have).
  • Technical Requirements: Degree in Computer Science or related field.
  • Minimum 5 years of experience as a Data Engineer, Platform Support Engineer, or Software Engineer.
  • Strong knowledge of data structures and algorithms to build scalable applications in Java or Python.
  • Experience with application implementation and integration using RDBMS.
  • Hands‑on experience with Linux/Unix environments, shell scripting, and command-line tools.
  • Knowledge of data integration and visualization platforms such as Informatica, Tableau, and Power BI.
  • Experience in automation (Ansible, Python scripts, CI/CD pipelines, deployment automation).
  • Exposure to: Snowflake, Oracle, MS SQL, Denodo AWS services (advantageous). Understanding of SDLC and Agile frameworks (Scrum, Kanban).
  • Familiarity with industry best practices in version control, testing, CI/CD workflows, and documentation.


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