Central Bikol Transcribers - Latin Script (Remote)

Sigma Group
1 year ago
Applications closed

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Learn more aboutSigma.AIandSigma Cognition.

Sigma.AIis a world leading technology company in data collection and annotation for the development of Artificial Intelligence systems with offices in Spain, the United States and the United Kingdom.

We are looking for native Central Bikol/Bikol Naga transcribers for a remote project using Latin Script.This is a flexible task which will be completed through an online application, available 24/7.

Requirements:

  • Good oral comprehension and written expression of the mentioned language is essential.
  • Intermediate level of English.
  • Computer skills at user level.

The following will be valued:

  • Experience in rating or data annotation.
  • Attention to detail.

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