Contributor Spotlight: Patricia

February’s Contributor Spotlight is Patricia. At Appen, we’re proud to have talented Contributors from all over the world. Our interview questions and these photos highlight just one of those communities. We hope you enjoy getting to know Patricia!

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Please tell us about yourself?

Hello my name is Patricia and I live in Brazil, in the state of Paraná’, which is in the southern region. I live with my husband and my daughter. I love to read, and because of the desire to read since I was a child, I managed to overcome dyslexia.

Why did you choose to be a Contributor for Appen?

I read quickly and easily understand texts, so when I saw a video talking about Appen I got excited and soon I enrolled.

When do you do your work for Appen?

When I have projects I like to work in the morning and it’s great to know that I’ll wake up and have work to do.

What’s your favorite part about being a Contributor?

I’m still learning a lot. But I really enjoy contributing to Appen, it allows me to have more knowledge and learn about the world.

Thank you for sharing Patricia!

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Are YOU interested becoming an Appen Contributor?

Interested in flexible work hours and fair pay? You can become an Appen contributor, just like Patricia! To get started, visit our jobs page and follow these simple steps:

1. Select a project that interests you and read the instructions.

2. Apply to work on the task.

3. Start tasking! We track your task accuracy. A high accuracy rate means you can level up on work on more projects.

The best part about working for Appen as a Contributor is that you get to set your own hours. Work when you can and for as long as you want. If your work gets interrupted, that’s ok – come back anytime to finish!

We are always looking for great people to work as Appen contributors. If you’re looking for a flexible job and hours, apply today to get started.

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