Full-Stack AI Engineer
Altibbi
Posted on: Jan 12, 2026
Job Title: Full-Stack AI Engineer
Location: Amman, Jordan (On-site)
Experience: 1–2+ Years in Production Environments
Role Overview
We are seeking a highly skilled Full-Stack AI Engineer to join our team. You will be responsible
for the end-to-end lifecycle of AI products, from designing sophisticated RAG pipelines and
fine-tuning LLMs to deploying scalable models on bare-metal and cloud infrastructure. The ideal candidate thrives at the intersection of software engineering and cutting-edge AI.
Key Responsibilities
● AI Development: Design, implement, and optimize RAG and CAG systems.
● Model Optimization: Perform fine-tuning and quantization of LLMs to balance performance and resource efficiency.
● Agentic Frameworks: Build autonomous workflows using agentic AI frameworks (e.g., LangGraph, AutoGPT, or CrewAI).
● Production Deployment: Deploy and maintain AI models in production environments, with a focus on high availability and low latency.
● Backend & Infrastructure: Develop robust APIs in Python and manage containerized environments using Docker.
● Database Management: Architect and query diverse data systems including SQL, NoSQL (MongoDB), and Graph databases.
Technical Requirements
● Core Languages: Mastery of Python and a strong command of Linux environments.
● AI/ML Expertise: Hands-on experience with LLM integration, prompt engineering, and vector databases.
● DevOps & Tooling: Proficient in Docker and version control systems (Git).
● Environment Experience: At least 1–2 years of experience deploying models in production, preferably with bare-metal server management.
● Data Systems: Excellent command of SQL; Experience with NoSQL databases (e.g., MongoDB), and Graph databases.
Preferred & Bonus Skills
● Experience with Apache Kafka for real-time data streaming.
● Knowledge of Graph-based RAG architectures.
Soft Skills
● Analytical Thinking: Ability to decompose complex problems into manageable technical tasks.
● Problem-Solving: A proactive mindset for debugging production issues and optimizing model bottlenecks.
● Communication: Fluent in technical English and capable of documenting complex workflows.