Data Scientist (Masters) - AI Data Trainer

Alignerr
Christchurch
3 weeks ago
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Data Scientist (Masters) - AI Data Trainer

Join to apply for the Data Scientist (Masters) - AI Data Trainer role at Alignerr. This role is part of Alignerr’s partnership with leading AI research teams and labs to build and train cutting‑edge AI models.

Base Pay Range

$40.00/hr - $80.00/hr

Location: Remote
Commitment: 10–40 hours/week
Type: Hourly Contract

What You’ll Do
  • Design advanced data science challenges across domains such as hyperparameter optimization, Bayesian inference, cross‑validation strategies, and dimensionality reduction.
  • Create rigorous, step‑by‑step technical solutions—including Python/R scripts, SQL queries, and mathematical derivations—that serve as “golden responses.”
  • Evaluate AI‑generated code, data visualizations, and statistical summaries for technical accuracy and efficiency using tools like Scikit‑Learn, PyTorch, or TensorFlow.
  • Identify logical fallacies in AI reasoning—e.g., data leakage, overfitting, improper handling of imbalanced datasets—and provide structured feedback to improve the model’s reasoning process.
Requirements
  • Advanced degree: Master’s (pursuing or completed) or PhD in Data Science, Statistics, Computer Science, or a related quantitative field.
  • Strong foundational knowledge in supervised/unsupervised learning, deep learning, big data technologies (Spark/Hadoop), or NLP.
  • Excellent analytical writing skills to communicate highly technical algorithmic concepts and statistical results clearly and concisely.
  • High level of precision when checking code syntax, mathematical notation, and the validity of statistical conclusions.
  • No prior AI experience required.
Preferred
  • Prior experience with data annotation, data quality, or evaluation systems.
  • Proficiency in production‑level data science workflows (e.g., MLOps, CI/CD for models).
Why Join Us
  • Excellent compensation with location‑independent flexibility.
  • Direct engagement with industry‑leading LLMs.
  • Contractor advantages: high agency, agility, international reach.
  • Opportunities for contracting renewals.
Application Process (Takes 15‑20 min)
  • Submit your resume.
  • Complete a short screening.
  • Project matching and onboarding.

PS: Our team reviews applications daily. Please complete your AI interview and application steps to be considered for this opportunity.

About the role
  • Seniority level: Internship
  • Employment type: Contract
  • Job function: Engineering and Information Technology
  • Industry: Technology, Information and Internet


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