Remote Search Analyst English (UK)

TELUS International AI Inc
London
2 months ago
Applications closed

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Ready to say goodbye to the boring, traditional 9-5 routine and embrace a dynamic and exciting work environment that puts you in control? If you are an iOS device user who has a passion for Music, Video, and Apple products, this opportunity offers you the flexibility to set your own schedule and complete exciting tasks using an innovative web-based evaluation tool!

A Day in the Life of a Media Search Analyst:

  • In this role, you will be doing a comprehensive assessment of diverse task categories, encompassing music, video, and home pod evaluations spanning various media domains

  • Analyzing and evaluating search outcomes for App Store Content and conducting research using online tools to assess and validate query accuracy and intent by applying market expertise in conjunction with provided directives to evaluate the relevance and purpose of task-related information for your specific market.

Join us today and have the chance to contribute to a global tech giant!

TELUS International AI Community

Our global AI Community is a vibrant network of 1 million+ contributors from diverse backgrounds who help our customers collect, enhance, train, translate, and localize content to build better AI models. Become part of our growing community and make an impact supporting the machine learning models of some of the world’s largest brands.

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