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PhD Computer Science Expert – AI Research
Location
Brazil
Posted
1 day ago
Salary
0
Seniority
Senior
Job Description
PhD Computer Science Expert – AI Research
Gramian Consulting
• Design advanced computer science problems focused on reasoning and conceptual understanding • Create structured reference solutions with clear logic and technical explanations • Evaluate AI-generated answers for correctness, reasoning quality, completeness, and clarity • Identify edge cases, logical flaws, and weak reasoning patterns in model outputs • Review complex topics across algorithms, systems, databases, networking, security, and theory • Contribute to benchmark and evaluation quality improvements • Provide detailed feedback to support AI model training and evaluation • Collaborate with researchers and reviewers on problem refinement • Maintain high-quality standards and consistent evaluation methodology
Job Requirements
- PhD in Computer Science or a closely related field (completed or in progress)
- Strong theoretical and problem-solving background across advanced CS domains
- Ability to design conceptual and reasoning-heavy technical problems
- Strong understanding of algorithms, systems, databases, networking, or cybersecurity
- Excellent written English communication skills
- Strong analytical skills and attention to technical detail
- Ability to critically evaluate reasoning, assumptions, and solution validity
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