Remote Data Analyst (Latvian) — Maps & Content Quality

TELUS Digital
Glasgow
1 month ago
Applications closed

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A digital services company is seeking a Freelance Online Data Analyst who speaks Latvian to enhance the quality of digital maps used worldwide. The role allows for flexible remote work and involves tasks such as researching and evaluating data online. Candidates must be fluent in Latvian and English and should have a solid understanding of UK affairs. This position requires reliable internet access and the ability to work across various task types, ideal for a detail-oriented individual.
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