AI Insurance Tutor

Role Overview

As an AI Insurance Data Specialist at Mercor, you will annotate and structure insurance-related data to enhance AI models, focusing on areas like risk assessment and claims processing. This role requires strong analytical skills and independent judgment, making it suitable for mid to senior-level professionals. Your contributions will directly impact the accuracy and effectiveness of AI systems in the insurance industry.

Perks & Benefits

This position offers competitive pay ranging from $90,000 to $200,000 annually, with additional benefits based on location. The role allows for remote work with flexible scheduling after training, accommodating various time zones. Candidates will have opportunities for career growth and be part of an innovative team focused on the intersection of technology and insurance.

Full Job Description

This description is a summary of our understanding of the job description. Click on 'Apply' button to find out more.

Role Description

Mercor is partnering with a leading AI research organization to engage professionals with advanced expertise in insurance analysis, actuarial science, and data evaluation. As an

AI Insurance Data Specialist

, you will play a key role in enhancing next-generation AI models by providing expert annotations and structured data tailored to real-world insurance applications. Your work will directly influence how AI systems understand and reason about insurance operations, including areas such as risk assessment, actuarial modeling, claims adjustment, and policy evaluation. This is a full-time opportunity for individuals with a deep understanding of insurance data, strong analytical judgment, and a passion for innovation in AI-driven technologies.

Key Responsibilities

Use proprietary software to label and annotate insurance-related data, ensuring accuracy and consistency for AI model development

Curate and deliver high-quality datasets for actuarial, claims, and risk assessment scenarios

Collaborate with technical teams to improve annotation workflows and enhance model training tools

Identify and solve complex problems in insurance analytics to improve AI performance and accuracy

Design and refine efficient data collection and labeling systems for insurance datasets

Interpret and execute evolving task guidelines with precision, adaptability, and independent judgment

Qualifications

Professional experience in insurance or a related field such as actuarial analysis, risk management, or claims processing

Proficiency in both informal and professional English writing and communication

Strong analytical, organizational, and problem-solving skills with the ability to work independently

Demonstrated ability to interpret complex instructions and ensure data precision

Deep interest in the intersection of technology, data, and insurance innovation

Preferred Background

Professional certifications such as Associate or Fellow of the Society of Actuaries (ASA/FSA) or Chartered Property Casualty Underwriter (CPCU)

Experience mentoring or training others in insurance-related practices

Familiarity with AI, data annotation tools, or machine learning workflows

Comfort with recording short audio or video sessions for data training purposes

Work Environment & Requirements

This role is based in Palo Alto, CA (in-office, 5 days per week) or may be performed remotely with strong self-management skills

Work schedule: 9:00am 5:30pm PST during training, then local timezone thereafter

U.S.-based applicants must reside outside of Wyoming and Illinois

Visa sponsorship is not available

Required equipment: Chromebook, Mac (macOS 11+), or Windows 10+ device with reliable smartphone access

Compensation

Competitive pay ranging from $90,000 to $200,000 annually for U.S.-based professionals, depending on experience and location

International pay ranges available upon request

Compensation packages may include additional benefits based on location

Application Process

Submit your resume to begin the application process

Join a 20-minute initial interview to discuss your background and qualifications

If selected to advance, you ll move on to a technical discussion focused on insurance data, actuarial methods, and annotation experience

Complete a short take-home assessment centered on data labeling or analytical problem-solving

Conclude with a final conversation with the broader project team

The full interview process is typically completed within one week

Similar jobs

Found 6 similar jobs