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.
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.
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:
Work Location: In person