AI Trainer (Data Labeler) – Coding Domain [Traditional Chinese (TW)]

Job updated 11 days ago
The employer was active 2 days ago

Job Description


We are looking for an AI Trainer (Data Labeler) – Coding Domain with native or professional proficiency in Traditional Chinese (TW). Your role will be to design and review conversation examples that show how AI assistants should interact with users naturally.

No deep AI experience is required – if you can understand basic programming concepts and enjoy logical problem-solving, you’re a great fit! This is a unique chance to join an exciting AI project while growing your technical and communication skills.

  • Write and review short conversations between users and AI assistants.
  • Correct responses only when needed to improve accuracy.
  • Follow clear guidelines; full training provided.
  • Commitments Required: At least 4 hours per day and minimum 20 hours per week
  • Overlap: prefer a few hours overlap with PT for trainings.
  • Engagement Type: Contractor assignment (no medical/paid leave)
  • Duration of Contract: 6 Weeks


Requirements

  • Native or professional proficiency in Traditional Chinese (TW).
  • Basic understanding of programming (e.g., Python, JavaScript).
  • Good written English.

Interview process

Once we review your CV and determine that you may be a good fit for the role, we will contact you by email and provide further details about the interview process.

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EBIT Co., LTD
Artificial Intelligence / Machine Learning
1 ~ 10 people

About us

EBIT Co., Ltd. is a global talent supply agent founded in 2019, with a mission to drive future innovation through AI technology development. EBIT gathers top talent across Asia and connects them to various projects, primarily focusing on data labeling tasks that contribute to the advancement of AI models.