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GenAI Solutions Architect

Deeplight

United Arab Emirates

On-site

AED 367,000 - 515,000

Full time

Today
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Job summary

A forward-thinking AI company in the United Arab Emirates is seeking an experienced GenAI Solutions Architect to design and build real-world LLM systems. You'll collaborate with product managers and engineers, focusing on deploying scalable solutions. This role demands strong stakeholder management skills and a solid background in machine learning, particularly in vector search and GenAI applications. Join us for an opportunity to work on cutting-edge projects and enjoy flexible working arrangements.

Benefits

Competitive salary and performance bonuses
Comprehensive health insurance
Professional development support
Opportunity to work on AI projects
Flexible working arrangements

Qualifications

  • Proven experience building GenAI applications in enterprise settings.
  • Deep understanding of LLMs and vector search.
  • Experience with cloud infrastructure and MLOps concepts.

Responsibilities

  • Architect end-to-end GenAI systems.
  • Design and optimise RAG workflows.
  • Collaborate with cross-functional teams.

Skills

Machine Learning
GenAI applications
Stakeholder management
Python
Node.js
Graph RAG architectures

Tools

LangChain
FAISS
Pinecone
GCP
AWS
Azure
Job description
About the Role

We’re looking for an experienced and personable GenAI Solutions Architect to join our growing AI delivery team. You’ll design and build large language model (LLM) systems that move beyond experimentation into real‑world production – powering search, summarisation, knowledge assistants, and automation for enterprise clients. This is a hands‑on, execution‑focused role that requires strong stakeholder‑management skills. You’ll work closely with product managers, engineers, and AI specialists to ship scalable solutions. You won’t be buried in research or building theoretical models – you’ll be deploying actual systems that users rely on every day.



Benefits & Growth Opportunities


  • Competitive salary and performance bonuses

  • Comprehensive health insurance

  • Professional development and certification support

  • Opportunity to work on cutting‑edge AI projects

  • International exposure and travel opportunities

  • Flexible working arrangements

  • Career advancement opportunities in a rapidly growing AI company



What You’ll Do


  • Architect end‑to‑end GenAI systems, including prompt chaining, memory strategies, token budgeting, and embedding pipelines

  • Design and optimise RAG (Retrieval‑Augmented Generation) workflows using tools such as LangChain, LlamaIndex, and vector databases (FAISS, Pinecone, Qdrant)

  • Experience with Graph RAG architectures and proficiency in Node.js required

  • Evaluate trade‑offs between zero‑shot prompting, fine‑tuning, LoRA/QLoRA, and hybrid approaches, aligning solutions with user goals and constraints

  • Integrate LLMs and APIs (OpenAI, Anthropic, Cohere, Hugging Face) into real‑time products and services with latency, scalability, and observability in mind

  • Collaborate with cross‑functional teams – translating complex GenAI architectures into stable, maintainable features that support product delivery

  • Write and review technical design documents and remain actively involved in implementation decisions

  • Deploy to production with industry best practices around version control, API lifecycle management, and monitoring (e.g., hallucination detection, prompt drift)



What You’ll Bring


  • Proven background in Machine Learning

  • Proven experience building and deploying GenAI‑powered applications in enterprise or regulated environments

  • Deep understanding of LLMs, vector search, embeddings, and GenAI design patterns (e.g., RAG, prompt‑injection protection, tool use with agents)

  • Proficiency in Python and fluency with frameworks and libraries such as LangChain, Transformers, Hugging Face, and OpenAI SDKs

  • Experience with vector databases such as FAISS, Qdrant, or Pinecone

  • Familiarity with cloud infrastructure (AWS, GCP, or Azure) and core MLOps concepts (CI/CD, monitoring, containerisation)

  • Proven experience supporting and/or delivering AI/ML products

  • Commercial and delivery mindset – balancing speed, quality, and feasibility in fast‑moving projects



Nice to Have


  • Experience building multi‑tenant GenAI platforms

  • Exposure to enterprise‑grade AI governance and security standards

  • Familiarity with multi‑modal architectures (e.g., text + image or audio)

  • Knowledge of cost‑optimisation strategies for LLM inference and token usage



Not for

This role is not for ML researchers focused on academic model development without delivery/product experience, data scientists unfamiliar with vector search, LLM prompt engineering, or system architecture, or engineers who haven’t shipped GenAI products into production environments.

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