
Data Anlayst
Peroptyx- Work up to 20 hours per week.
- Earn a competitive rate of pay.
- Develop your research skills.
- Avoid the long commute.
- Work from the comfort of your home office.
- Enjoy the flexibility of setting your own working hours!
- Fluent in English and Swedish.
- Excellent research skills.
- Excellent local knowledge of your home country.
- Good understanding and general knowledge of the geography and culture of Sweden.
- Analytical mindset.
- Must be living in Sweden for a minimum of 5 consecutive years.
- Must pass an online open-book exam that can verify your full understanding of the material and concepts.
- Must be willing to work a minimum of 10 hours and up to 20 hours per week depending on task availability.
- Good working knowledge of search engines, map applications and familiarity with social media platforms.
- Strong ability to learn, understand and apply multiple sets of different instructions.
- All work must be of an independent nature.
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