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Data Engineer

Times Higher Education
London
1 month ago
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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Report to:Director of Data Science

Location: Hybrid (2 days/week in office, London Holborn)

Salary: 60-65k DOE

About Us

The data team atTimes Higher Educationworks with real-world data inputs from a number of external sources, and our work is reliant on this data being easily accessible; the results of our analyses also need to be shared across the company and to external parties, for a growing number of applications.

Your role will be focused on supporting the delivery of data to our various internal stakeholders, within and outside the data team.

You will work closely with our Dir. Of Data Science, Data Scientists and Product Owners to ensure our data pipelines are reliable and scalable.

This is a role that will suit ahands-on data engineer(ordata analyst/scientist with strong data engineering skills),who can work on ad-hoc data delivery as well as help strengthen our whole pipeline and governance, providing expert input and support to the team.

Responsibilities

  • SupportData Delivery teamin data collection and provision processes
  • SupportConsultancy teamin accessing data outputs in a replicable way
  • Data governance of ourinternal reference data, including monitoring data feeds and changes
  • SupportData QA managerin running QA processes on external inputs
  • Work withEngineering and Product teamto build consistent and reliable data delivery mechanisms to our various products
  • Work withDirs. of Data ScienceandData Deliveryto optimise data processes and improve interoperability
  • Strengthen and help scale our existing ETL pipelines, with a focus on flexible and adaptable delivery mechanisms
  • Work withData Governance Managerto monitor, maintain and utilise our internal university database
  • Work with ourEngineering teamon our data collection platform, ensuring efficient and accurate data entry and flows
  • Maintain documentation of our data storage and processes, sharing knowledge and access across the company

Experience

  • Building end-to-end data pipelines (data collection, processing and delivery)
  • Improving, maintaining and managing existing pipelines, incl. building and disseminating documentation
  • Working with external data
  • Data provision to (data) product
  • Data governance
  • Building scalable and robust data flows

Skills

Technical:

  • SQL / PostgreSQL
  • Mongo
  • DataBricks
  • AWS
  • Data governance and management
  • An interest in data analysis and a close management of data flows (very hands-on processes, data exploration)

Non-technical:

  • Structured thinking and approach to problem-solving
  • Excellent written and verbal communication skills; able to provide succinct and precise summaries of complex processes
  • Highly collaborative, able to work efficiently with technical and non-technical colleagues, proactive in providing information and moving projects ahead
  • An investigative mindset, keen to understand the data in-depth and resolve complex issues
  • An ability to organise and drive projects without close ticket-type management

Desirable

  • Python
  • API build and management
  • GDPR and regulatory frameworks
  • Data QA


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