Qureos

Find The RightJob.

AI Automation Engineer / Architect of Agentic AI (Automator)

01. ABOUT THE COMPANY

Dizzaract is a product-driven company operating at the intersection of gaming, digital platforms, and AI. We build and scale multiple products — including Farcana 2.0, Gamed, and FAR Labs — each exploring a different space, but united by a shared approach: moving fast, staying curious, and focusing on things that people actually use. We operate as a collaborative, non-hierarchical team where ideas are valued based on their impact, not their origin, and where AI is embedded across everything we build — from infrastructure to product decisions.

02. ABOUT THE ROLE

FAR Labs is building FAR AI — a high-performance decentralized AI inference network that transforms the global computing landscape by turning consumer and enterprise GPUs into a unified AI engine. Following a successful alpha launch in internet cafes across the UAE, we are scaling infrastructure to onboard large-scale gaming cafe fleets and top-tier data centers worldwide.

We’re looking for an AI Automation Engineer (Agent Systems Builder) who can design and deploy multi-agent systems that operate across the company — from internal workflows to product-level automation.

This is a hands-on role focused on building structured, reliable AI systems. You will turn LLMs into coordinated agents that can reason, take action, and operate within defined environments.

03. WHO YOU ARE

  • LLM Engineer
  • You understand how language models actually work — tokenisation, logits, prompting, and system behaviour.
  • Agent Systems Builder

You’ve worked with or built multi-agent systems and understand orchestration, roles, and control flows.

  • Automation Thinker

You design systems that take action — not just generate outputs.You can wrap agents into APIs, manage integrations, and handle async workflows.You understand access control, permissions, and how to prevent unsafe behaviour in agent systems.04. RESPONSIBILITIES

  • Backend Engineer
  • Security-Aware
  • Prompt Engineering & System Design
  • Design structured, multi-layered prompt systems with context management, self-correction, and reliability controls.
  • AI Hub Development

Build and configure internal AI systems (Claude, GPT, open-source models) connected to company data, tools, and APIs.

  • Multi-Agent Architecture

Design and implement hierarchical agent systems (orchestrators, specialised agents, execution layers) with clear responsibilities and control flows.Integrate AI agents with internal systems — CRM, databases, messaging platforms, CI/CD — enabling real actions and workflows.Build and maintain tools that allow agents to interact with external systems (APIs, services, internal infrastructure).05. REQUIREMENTS

  • Integration & Automation
  • Tooling & Execution
  • Strong understanding of LLM internals (tokenisation, logits, temperature, system prompts, RAG).
  • Experience building or working with agent frameworks (LangChain, LangGraph, AutoGen, CrewAI, or custom systems).
  • Strong backend experience (Python or TypeScript).
  • Experience building APIs, handling async workflows, and integrating external systems.
  • Experience implementing function calling, tools, and agent execution workflows.
  • Understanding of prompt security, injection risks, and hallucination control.
  • Experience integrating AI systems into real business processes or products.

06. NICE TO HAVE

  • Experience building multi-agent systems in production.
  • Experience integrating agents with CRM, databases, or CI/CD pipelines.
  • Experience with Model Context Protocol (MCP) or similar tooling approaches.
  • Experience working in fast-paced or AI-first environments.

07. WHAT WE OFFER

  • Real ownership and direct impact on a global AI infrastructure product
  • Fast execution, low bureaucracy, and a highly collaborative, idea-driven team
  • Exposure to cutting-edge AI, distributed systems, and hardware-level optimisation
  • Competitive salary with performance-based incentives
  • 24 days annual leave, plus public holidays
  • Health insurance
  • Modern office in Yas Creative Hub
  • Continuous learning through real-world problem solving — not just theory
  • The opportunity to shape what you’re working on and influence product direction
  • A diverse, open-minded team where ideas are genuinely heard

08. HOW TO APPLY

As part of your application, please share:

  • A diagram or description of a multi-agent system you’ve built (or would build).
  • An example of a complex prompt using tools/function calling.
  • Your approach to enforcing access control across agent systems.

Application Question(s):

  • Do you understand tokenization, logits, temperature, and their effect on LLM output behavior?
  • Have you ever implemented a Retrieval-Augmented Generation (RAG) pipeline from scratch (not using a managed service)?
  • On a scale of 1–5, how confident are you in building prompts resistant to injection attacks? (1 = not confident, 5 = expert)
  • Rate your understanding of API authentication methods (OAuth, API keys, JWT) (1 = vague, 5 = expert)
  • Have you built a self-correcting prompt with an automated feedback loop?
  • Number of years of professional experience in LLM engineering (0, 1, 2, 3, 4, 5+) → (0–5)
  • Is your portfolio submission complete with all three requested items (diagram, complex prompt, access control thoughts)?
  • Have you built or deployed a multi-agent system (not just single-agent chatbots)?
  • Have you implemented function calling (tools) where an agent executes external APIs autonomously?
  • Number of production LLM automation projects you have shipped? (0, 1–2, 3–5, 6-8, 10+) → (0,1,2,3,4)
  • Have you integrated LLM agents with CRM, database, or CI/CD pipelines?
  • Can you build an API wrapper around an agent that handles async webhooks?
  • Rate your Python proficiency (1 = basic, 5 = architect-level)
  • Rate your TypeScript proficiency (1 = basic, 5 = architect-level)

Location:

  • Abu Dhabi (Preferred)

Work Location: In person

Similar jobs

No similar jobs found

© 2026 Qureos. All rights reserved.