Online Data Analyst - Bengali (UK)

TELUS Digital
London
1 day ago
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Online Data Analyst – Bengali (UK)

Position at TELUS Digital.


Overview


This part‑time, long‑term project involves enhancing the content and quality of digital maps used worldwide. The role is performed remotely from the United Kingdom.


Responsibilities

  • Conduct research and evaluation tasks in a web‑based environment, such as verifying and comparing data and determining the relevance and accuracy of information.
  • Work on a variety of task types, including maps, news, audio, and relevance assessments, following the provided guidelines.

Qualification Path

No previous professional experience is required; applicants must pass the basic requirements and a standard assessment process.


Basic Requirements

  • Full professional proficiency in Bengali and English.
  • Resident in the United Kingdom for the last two years and familiar with current and historical UK business, media, sport, news, social media, and cultural affairs.
  • Ability to follow guidelines and conduct online research using search engines, online maps, and website information.
  • Flexibility to work on diverse task types including maps, news, audio tasks, and relevance checks.
  • Daily access to broadband internet, a computer, and relevant software.

Assessment

Successful candidates will complete an open‑book qualification exam and ID verification. Guidelines and learning materials will be provided before the exam, which must be completed within a specific timeframe at the candidate’s convenience.


Equal Opportunity Statement

All qualified applicants will receive consideration for a contractual relationship without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, or protected veteran status. TELUS Digital AI is committed to diversity and inclusion.


Apply Here

Interested applicants should submit their application through TELUS Digital’s online portal.


Job Details

  • Seniority Level: Entry level
  • Employment Type: Part‑time
  • Job Function: Information Technology
  • Industries: IT Services & IT Consulting
  • Location: London, England, United Kingdom

Benefits

Work remotely from the comfort of your own home and join a global AI community of over 1 million contributors.


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