Senior Data Analyst

IDP Education, UK and Ireland
City of London
1 day ago
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Company Description

IDP Education Ltd. is a global leader in international education with a history of fostering trusted human connections for over 50 years. Our extensive investment in digital technology and customer research enhances these connections, helping us deliver success to students, test takers, and partners worldwide. With a customer-first approach, we leverage our expert team and innovative technology to turn aspirations into realities. Committed to driving global success, IDP Education continues to expand its impact in supporting international education and growth.


Role Description

As a Senior Data Analyst, you will play a key role in driving data-led decision-making across the business. You will be responsible for building scalable data models, delivering high-impact dashboards, and partnering with stakeholders to translate business requirements into actionable insights.


You will:

Design, develop, and maintain advanced SQL-based data models

Build and optimise Tableau dashboards for business and client reporting

Work with AWS/Redshift environments and ELT pipelines

Collaborate closely with engineering teams to scope and implement data pipeline changes

Translate complex datasets into clear, strategic insights for senior stakeholders

Define and track KPIs to support performance monitoring and decision-making

Ensure data accuracy, governance, and reporting best practices


Qualifications & Experience

  • 4+ years of experience in Data Analytics or Business Intelligence roles
  • Strong expertise in Advanced SQL and data modelling
  • Proven experience building and maintaining Tableau dashboards
  • Experience working with AWS, Redshift, and ELT workflows
  • Strong understanding of data warehousing concepts (star schema, fact/dimension models)
  • Experience collaborating with cross-functional stakeholders
  • Excellent analytical, problem-solving, and communication skills
  • Ability to work independently and own analytics initiatives end-to-end

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