Online Data Analyst

TELUS Digital
Bradford
2 months ago
Applications closed

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Online Data Analyst - TELUS Digital

We are hiring freelance English speaking Online Data Analysts for a project aimed at improving the content and quality of digital maps used by millions of users worldwide. The role is ideal for someone who is detail-oriented, enjoys research, and has strong knowledge of national and local geography.


This is a freelance position with a flexible schedule: you can work at your own pace whenever tasks are available. You will perform research and evaluation tasks in a web-based environment, such as verifying, comparing data and assessing the relevance and accuracy of information. All work follows specific guidelines and is paid per task.


Requirements

  • Full Professional Proficiency in English
  • Must have lived in the United Kingdom for the last 2 consecutive years
  • Ability to follow guidelines and conduct online research using search engines, online maps, and websites
  • Familiarity with current and historical business, media, sport, news, social media and cultural affairs in the United Kingdom
  • Open to working across a diverse set of task types (e.g., maps, news, audio, relevance)
  • Applicants must be 18 years or older

Working on this project requires completion of a standard recruitment process, including an open‑book assessment. This is a long‑term project, and your work will be subject to quality assurance checks.


Why Join TELUS International AI Community?

  • Earn additional income with flexible hours to fit your lifestyle
  • Better work‑life balance
  • Be your own boss
  • Complimentary Well‑Being package with a wealth of resources
  • Be part of an online community

If you have any questions, do not hesitate to contact us at



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