Data Analyst - Working From Home

Peroptyx
Portsmouth
2 years ago
Applications closed

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Data Analyst

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Data Analyst

At Peroptyx, we are looking for Data Analysts who will review mapping data for digital mapping applications.

Your research capabilities will validate and ensure that the navigation of certain routes are accurate and safe. As part of this role you will verify that business names and opening hours are correct. You will check that the distance from a starting point to an end destination is listed accurately resulting in better user experiences.
 
With this job you can plan your days around this highly flexible working schedule, work weekends or late evenings, all from the comfort of your own office. The flexibility of our roles minimizes the impact on your daily routine.

So, whether you are a student looking to earn as you learn, a retiree looking for a new challenge a part-time/full time professional or a work from home parent, Peroptyx has the right role for you!

 
Ideal Candidate



  • Fluent in English.
  • Excellent research skills.
  • Excellent local knowledge of your home country.
  • Good understanding and general knowledge of the geography and culture of the UK.
  • Analytical mindset. 


 
Job Requirements
 
You must be living in the UK for a minimum of 5 consecutive years so that you are familiar with your local geography.



  • 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.  


Technical requirements to perform the work
 
Access to a laptop or computer which uses:
-       A log on account unique to you
-       Anti-virus solution that is kept up to date, with regular scans performed
-       Only one member per household may apply
    NB. All products should be provided at your own expense.
 
Benefits
 
· 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!
 
Apply Online Today!
  
This is a freelance, independent contractor position

Additional information:Employment type:Part-time

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