Artificial Intelligence Engineering Trainer - LLM
VAYUZ Technologies
- Location
- Coimbatore, Tamil Nadu, India
- Job type
- Full-time
Required skills
- Python
- design patterns
- Docker
- FastAPI
- GitHub
- Matplotlib
- NumPy
- Pandas
- React
- TDD
About the role
VAYUZ Technologies
Website:
vayuz.com
Job details:
Key Requirements
- 6+ years in AI/ML engineering, LLM product development, or senior technical AI education
- Strong hands-on familiarity with the current LLM tooling ecosystem
- Prior experience designing or governing AI-first learning programs
- Strong understanding of AI-assisted assessments, oral defense models, and trainer calibration
- 5+ years in curriculum design and L&D for technical learners
- Experience conducting train-the-trainer programs and assessment governance
- Exposure to iamneo.ai platform or similar ed-tech delivery platforms is a plus
Required Technical Skills
- LLM tooling ecosystem : Claude Code, Anthropic APIs, OpenAI, Cursor, GitHub Copilot, v0.dev, Lovable, Bolt.new
- Prompt engineering design patterns : few-shot, chain-of-thought, role-based prompting, negative space, 10-component prompt anatomy
- AI pedagogy frameworks : 70% Rule, UMPIRE framework, AI Tool Usage Charter, blameless AI audit culture
- Curriculum sequencing : prerequisite mapping, spiral curriculum design, backwards design, Blooms taxonomy in AI learning
- Assessment design for AI-augmented environments : AI-permitted exams, oral defense, prompt log evaluation, AI decision journals, live coding with AI + questioning
- Web Dev stack : React, Tailwind, shadcn/ui, react-hook-form, Zod, REST API integration, Zustand
- Python & data stack : Python fundamentals, DSA, NumPy, Pandas, matplotlib, pytest TDD, GitHub Copilot integration
- AI Engineering stack : FastAPI, Docker, GitHub Actions, CodeRabbit, OWASP ZAP
- LMS & ed-tech : iamneo platform administration, SCORM, xAPI, cohort analytics, content
versioning governance
Core Responsibilities
- Define and govern assessment standards, calibrated rubrics, AI-permitted exam policies, oral defense protocols, and grading calibration
- Ensure strong pedagogical coherence across modules, including the 70% Hands-On / 30% Delivery ratio and consistent use of the 70% Rule
- Lead quarterly curriculum review cycles and ensure content is updated when tools change
- Run train-the-trainer certification programs and define re-certification criteria
- Mentor AI Engineering Trainers through regular content reviews, observed feedback, and grading calibration
- Partner with iamneo leadership to align curriculum milestones with batch delivery timelines
- Design the iamneo AI Pedagogy Framework as the canonical guide for AI teaching, usage, and assessment
(ref:hirist.tech)
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