Machine Learning Engineer - AI Data Trainer

Alignerr
Edinburgh
4 days ago
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Overview

At Alignerr, we partner with the world’s leading AI research teams and labs to build and train cutting-edge AI models. This project focuses on capturing how an LLM reasons and takes actions step by step to solve real tasks. Annotators write clear, structured traces that show planning, tool use, and decision making to create data that trains models to reason more reliably in real-world scenarios.

  • Location: Remote

Organization: Alignerr

Position: Machine Learning Engineer - AI Data Trainer

Type: Hourly Contract

Compensation: $50–$70 /hour

Location: Remote

Commitment: 10–40 hours/week

What You’ll Do
  • Author clear, structured reasoning traces for complex technical tasks.
  • Document step-by-step planning and decision-making processes.
  • Create training data that demonstrates effective tool use in real-world logic.
Requirements
  • Background in Machine Learning, Computer Science, or a related technical field.
  • Ability to articulate complex logical steps and technical reasoning in writing.
  • Strong analytical skills to evaluate and improve AI decision-making workflows.
Preferred
  • Prior experience with data annotation, data quality, or evaluation systems.
Why Join Us
  • Competitive pay and flexible remote work.
  • Collaborate with a team working on cutting-edge AI projects.
  • Exposure to advanced LLMs and how they’re trained.
  • Freelance perks: autonomy, flexibility, and global collaboration.
  • Potential for contract extension.
Application Process
  • Submit your resume
  • Complete a short screening
  • Project matching and onboarding


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