AI & ML Engineer
Indexed description
About The Role
We are looking for a highly capable Machine Learning Engineer / Applied AI Engineer with a strong multidisciplinary ML background and the ability to solve complex, real-world problems across multiple AI domains. This role is ideal for someone who is not limited to one narrow specialization, but can think across computer vision, NLP/LLMs, MLOps, audio AI, edge deployment, and mathematical model design.
You will work on applied AI systems that need to run reliably in real operational environments, including on-premises, edge devices, hybrid infrastructure, and cloud platforms. The ideal candidate should combine strong engineering capability with mathematical depth, practical deployment experience, and the ability to evaluate models rigorously beyond surface-level experimentation.
Requirements
Key Responsibilities
- Design, build, evaluate, and deploy machine learning models for real-world AI applications.
- Work across multiple ML domains such as computer vision, NLP/LLMs, MLOps, and audio AI.
- Develop AI solutions that can operate in on-premises, edge, hybrid, and cloud environments.
- Translate ambiguous business or operational problems into structured ML approaches.
- Evaluate problems from different machine learning perspectives and select the most suitable technical path.
- Apply strong mathematical reasoning to model selection, model design, validation, and performance evaluation.
- Build scalable ML pipelines, inference workflows, and deployment-ready AI systems.
- Work closely with engineering, product, and research teams to turn prototypes into reliable production systems.
- Support deployment standards for environments where cloud-native assumptions may not apply.
- Ensure models are tested, monitored, optimized, and production-ready for real-world use cases
- Strong multidisciplinary machine learning background across at least two of the following areas:
- Computer Vision
- NLP / Large Language Models
- MLOps
- Audio AI / Speech AI
- Strong mathematical foundations in areas such as:
- Linear algebra
- Probability and statistics
- Optimization
- Numerical methods
- Model evaluation and validation
- Hands-on experience deploying AI/ML systems in on-premises and edge device environments.
- Familiarity with cloud infrastructure, particularly one or more of: AWS, Microsoft Azure, Microsoft technology stack
- Practical experience taking ML models from experimentation to deployment.
- Ability to work across different company or project contexts, rather than experience limited to one employer or one broad job title.
- Strong understanding of model performance, trade-offs, latency, scalability, and infrastructure constraints.
- Experience with production-grade ML engineering, not just research notebooks or proof-of-concepts
- Cross-domain problem solving - able to approach a problem through multiple ML lenses, not just one preferred technique.
- Mathematical rigour - able to explain why a model, metric, architecture, or evaluation method is appropriate.
- Deployment maturity - understands the difference between cloud-native deployment and real-world on-premises or edge deployment.
- Practical AI mindset - focused on building systems that work reliably in production, not just experimental demos.
- Adaptability - comfortable working across different industries, technical environments, and operational constraints.
- Experience with real-time inference systems.
- Experience with video analytics, object detection, tracking, or sensor-based AI.
- Experience with LLM-powered workflows, RAG, agents, or enterprise AI systems.
- Experience with containerization, orchestration, and deployment automation.
- Familiarity with NVIDIA edge/cloud AI tooling, GPU optimization, or inference acceleration.
- Experience working in startup, scale-up, research lab, consulting, or product engineering environments.
Benefits
WHAT WE OFFER:
- Competitive salary benchmarked to market
- Direct exposure to cutting-edge enterprise AI projects across UAE and GCC
- Flat team structure - work directly with founders and senior engineers
- Opportunity to grow into a Senior or Lead Engineer role
- Flexible remote/hybrid work arrangements
- Fast-paced environment where your work ships to production and reaches real clients
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