Data Scientist (AI Task Evaluation & Statistical Analysis)

Call For Referral β€’ Canada
Remote
This Job is No Longer Active This position is no longer accepting applications
AI Summary

Conduct comprehensive failure analysis on AI agent performance, identify systemic patterns, and improve model evaluation frameworks. Work closely with AI engineers and research analysts to transform raw evaluation data into actionable insights. Strengthen the quality, fairness, and reliability of large-scale AI systems.

Key Highlights
Conduct statistical failure analysis on AI agent performance
Identify recurring patterns in AI agent failures
Recommend refinements to rubric design, evaluation metrics, and task structures
Present key insights to data labeling teams, ML engineers, and research collaborators
Technical Skills Required
Python pandas scipy matplotlib seaborn R Excel SQL Tableau Looker
Benefits & Perks
Hourly rate: $100-$120
Part-time, 20-25 hours/week
Fully remote and asynchronous work
Independent contractor (via Mercor)

Job Description


Data Scientist (AI Task Evaluation & Statistical Analysis Specialist)

Hourly Contract | Part-Time Remote | $100 –$120 per hour

1. About the Role

Mercor is partnering with a leading AI research lab to hire experienced Data Scientists specializing in AI task evaluation and statistical analysis.

In this role, you will conduct comprehensive failure analysis on AI agent performance across finance-sector tasks β€” identifying systemic patterns, diagnosing performance bottlenecks, and improving model evaluation frameworks.

You’ll work closely with AI engineers and research analysts to transform raw evaluation data into actionable insights, strengthening the quality, fairness, and reliability of large-scale AI systems.

2. Key Responsibilities

  • Statistical Failure Analysis: Identify recurring patterns in AI agent failures across task components (prompts, rubrics, file types, tags, etc.).
  • Root Cause Analysis: Determine whether issues stem from task design, rubric clarity, file complexity, or agent limitations.
  • Dimensional Analysis: Examine performance variations across finance sub-domains, file structures, and evaluation criteria.
  • Visualization & Reporting: Build dashboards and analytical reports that highlight edge cases, performance clusters, and opportunities for improvement.
  • Framework Enhancement: Recommend refinements to rubric design, evaluation metrics, and task structures based on empirical findings.
  • Stakeholder Communication: Present key insights to data labeling teams, ML engineers, and research collaborators.

3. Required Qualifications

  • Strong foundation in statistical analysis, hypothesis testing, and pattern recognition.
  • Proficiency in Python (pandas, scipy, matplotlib/seaborn) or R for data analysis.
  • Hands-on experience with exploratory data analysis (EDA) and feature interpretation.
  • Understanding of AI/ML evaluation methodologies and LLM performance metrics.
  • Skilled in using Excel, SQL, and data visualization tools (e.g., Tableau, Looker).

4. Preferred Qualifications

  • Experience with AI/ML model evaluation or quality assurance pipelines.
  • Background in finance or interest in learning financial domain structures.
  • Familiarity with benchmark datasets, failure mode analysis, and evaluation frameworks.
  • 2–4 years of relevant professional experience in data science, analytics, or applied statistics.

5. More About the Opportunity

  • Commitment: Part-time, 20–25 hours/week
  • Schedule: Fully remote and asynchronous β€” work on your own time
  • Duration: 1–2 months, with strong potential for extension
  • Start Date: Immediate

6. Compensation & Contract Terms

  • Hourly Rate: $100–$120/hour (based on experience and region)
  • Classification: Independent Contractor (via Mercor)
  • Payments: Weekly via Stripe Connect for approved work

⚑ PS: Mercor reviews applications daily. Please complete your interview and onboarding steps to be considered for this opportunity. ⚑


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