Generative AI Engineer Job Description

Get a professionally crafted Generative AI Engineer Job Description Template to save time and attract the right candidates. Our template is tailored for clarity, consistency, and ease of customization, helping you create job descriptions that stand out to top talent.

What does a Generative AI Engineer do?

The Generative AI Engineer is responsible for building applications and systems powered by generative AI models, including large language models, image generation systems, and multimodal AI. This role focuses on applying the latest generative AI capabilities to solve real-world business problems at scale.

Free Generative AI Engineer Job Description Template

Free Generative AI Engineer Job Description Template

Write effective job descriptions in minutes with our free templates, designed to attract top talent.
Professionally crafted templates
Editable and easy to customize
Proven to save time

What are the Key Responsibilities of Generative AI Engineer

  • Design and develop generative AI applications using LLMs and diffusion models.
  • Build and optimize RAG (Retrieval-Augmented Generation) pipelines for enterprise use cases.
  • Fine-tune and adapt pre-trained foundation models for domain-specific applications.
  • Integrate generative AI capabilities into existing products via APIs and SDKs.
  • Evaluate outputs for quality, safety, and alignment with business requirements.
  • Stay current with rapidly evolving generative AI research and tooling.

What are the Skills and Requirements for a Generative AI Engineer?

  • Hands-on experience with LLM APIs (OpenAI, Anthropic, Google Gemini) and open-source models.
  • Proficiency in building RAG systems with vector databases such as Pinecone or Weaviate.
  • Strong Python skills and familiarity with LangChain or LlamaIndex.
  • Understanding of prompt engineering, fine-tuning, and RLHF concepts.

What are the KPIs to track for Generative AI Engineer?

Performance is measured by the quality and reliability of generative AI features shipped, user satisfaction with AI outputs, latency benchmarks, and cost per generation.
Output Quality
User satisfaction scores and human evaluation ratings of AI-generated content.
Feature Delivery
Number of generative AI features shipped on time and within scope.
Cost Efficiency
Optimization of inference costs without degrading output quality.
Reports to
Head of AI / VP of Engineering
Collaborates with
Product Managers, ML Engineers, Data Scientists, UX Designers
Leads

Are any specific tools or software required for the Generative AI Engineer role?

  • OpenAI API
  • LangChain
  • LlamaIndex
  • Pinecone
  • Hugging Face
  • Python

What is the qualification of Generative AI Engineer?

Bachelor's degree in Computer Science or related field; 2+ years of experience building production applications with generative AI or LLM technologies.

Hire a Generative AI Engineer with Ease

Instantly source top Generative AI Engineer candidates with AI-powered hiring. Need a guided walkthrough? Book a demo today.

AI-powered candidate recommendations
Access pre-screened profiles
Hire faster and smarter

Find Generative AI Engineer Now

Book a Demo
Need more HR resources?
Explore our ready-to-use templates!