Job Description: AI Task Evaluation & Statistical Analysis Specialist
Role Overview
We're seeking a data-driven analyst to conduct comprehensive failure analysis on AI agent performance across finance-sector tasks. You'll identify patterns, root causes, and systemic issues in our evaluation framework by analyzing task performance across multiple dimensions (task types, file types, criteria, etc.).
Key Responsibilities
Role Overview
We're seeking a data-driven analyst to conduct comprehensive failure analysis on AI agent performance across finance-sector tasks. You'll identify patterns, root causes, and systemic issues in our evaluation framework by analyzing task performance across multiple dimensions (task types, file types, criteria, etc.).
Key Responsibilities
- Statistical Failure Analysis: Identify patterns in AI agent failures across task components (prompts, rubrics, templates, file types, tags)
- Root Cause Analysis: Determine whether failures stem from task design, rubric clarity, file complexity, or agent limitations
- Dimension Analysis: Analyze performance variations across finance sub-domains, file types, and task categories
- Reporting & Visualization: Create dashboards and reports highlighting failure clusters, edge cases, and improvement opportunities
- Quality Framework: Recommend improvements to task design, rubric structure, and evaluation criteria based on statistical findings
- Stakeholder Communication: Present insights to data labeling experts and technical teams
- Statistical Expertise: Strong foundation in statistical analysis, hypothesis testing, and pattern recognition
- Programming: Proficiency in Python (pandas, scipy, matplotlib/seaborn) or R for data analysis
- Data Analysis: Experience with exploratory data analysis and creating actionable insights from complex datasets
- AI/ML Familiarity: Understanding of LLM evaluation methods and quality metrics
- Tools: Comfortable working with Excel, data visualization tools (Tableau/Looker), and SQL
- Experience with AI/ML model evaluation or quality assurance
- Background in finance or willingness to learn finance domain concepts
- Experience with multi-dimensional failure analysis
- Familiarity with benchmark datasets and evaluation frameworks
- 2-4 years of relevant experience