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Solution Architect – Cloud/AI/LLM - Qatar

Tech Recruit

Doha, Doha Municipality, Qatar · Tempo total

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Experiência
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Salário
Vagas
1
Publicado
há 4 dias
Modo de trabalho
No escritório
Educação
diploma de bacharel
Elegibilidade
Professionals with experience in solution architecture, technical pre-sales, sales engineering, or implementation consulting can apply, provided they are legally allowed to work in Qatar and can communicate in both Arabic and English.
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Descrição da vaga

Role overview

This opportunity is for an experienced Mid/Senior Solution Architect to join a global AI and deep-tech organization during its growth in the Middle East. The position sits within the pre-sales function and focuses on connecting customer challenges with the company’s technology offerings to design intelligent, scalable, and resilient AI-driven solutions.

Key responsibilities

The role centers on pre-sales solution design and customer engagement. You will work closely with both technical and non-technical stakeholders, shape proposals, lead product demonstrations, and help define practical solution architectures that align with business needs.

Requirements

  • A bachelor’s or master’s qualification in Computer Science, Data Science, Engineering, or a closely related discipline.
  • Prior exposure to technical pre-sales, consulting, or partner-facing roles such as Solution Architect, Sales Engineer, or Implementation Consultant.
  • Strong verbal and written communication skills, along with the ability to present effectively to varied audiences.
  • Experience preparing technical proposals and responding to RFPs or tenders, plus confidence in independently delivering hands-on product demos.
  • Solid understanding of major cloud platforms including AWS, Azure, and GCP, as well as AI/ML services such as SageMaker, Vertex AI, and AzureML.
  • Knowledge of sovereign, on-premise, and hybrid deployment approaches.
  • Familiarity with MLOps workflows and tools, including CI/CD, monitoring, orchestration frameworks like Kubeflow, Flyte, and MLflow, and containerization with Docker and Kubernetes.
  • Understanding of LLM inference technologies such as vLLM, llama.cpp, and OpenVINO, plus model formats like ONNX, .safetensors, and Hugging Face model hub assets.
  • Experience estimating GPU requirements for LLM training or inference, including memory, throughput, and hardware tiers from A10 through H200.
  • Ability to benchmark and assess LLM performance across metrics such as accuracy, latency, and throughput.
  • Practical coding knowledge in Python and SQL, along with familiarity with ML frameworks and libraries such as PyTorch, TensorFlow, and Hugging Face.
  • Availability to travel when needed for meetings, conferences, and project-related work.
  • Fluency in both Arabic and English.
  • Applicants must be legally authorized to work in Qatar.

Preferred experience

  • Exposure to computer vision, speech, vision-language, or other multimodal AI systems.
  • Experience with model optimization, quantization, or edge deployment.
  • Hands-on work with RAG pipelines and/or multi-agent architectures.
  • Background in data architecture, including batch and streaming systems, and familiarity with big data technologies.
  • Awareness of data privacy, ethical AI practices, GDPR, and relevant country-specific AI regulations.

Additional information

This role is based in Doha, Qatar, and is offered on a full-time, onsite basis.

A privacy notice applies to the handling of applicant data, including collection, storage, and processing for recruitment purposes.

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