About Commercial Bank Of Qatar
Commercial Bank, founded in 1975 and headquartered in Doha, plays a vital role in Qatar’s economic development by offering a range of personal, business, government, international and investment services.
Job SummaryThe Senior AI Engineer is responsible for leading the design, development, and deployment of complex Agentic AI solutions and enterprise AI platforms within the Data & AI Lab. This senior role requires deep expertise in AI engineering, cloud architecture, and integration patterns, combined with financial services industry experience.
The position serves as a technical leader for AI initiatives, providing guidance on architecture decisions, best practices, and technology selection. The Senior AI Engineer will drive the adoption of AI orchestration frameworks (MCP), cloud-native AI services, and modern AI tooling across the organization.
The role requires a balance of hands‑on technical delivery and technical leadership, ensuring that AI solutions are production‑grade, scalable, and aligned with banking regulatory requirements.
Key Accountabilities- Agentic AI Architecture & Development
- Lead the design and implementation of complex Agentic AI solutions including autonomous workflows, multi-agent systems, and enterprise AI orchestration.
- Define architecture patterns and best practices for AI agent development and Model Context Protocol (MCP) integrations.
- Drive innovation in AI capabilities, evaluating emerging technologies and recommending adoption strategies.
- AI Platform Leadership
- Architect and oversee development of AI platform components including vector stores, embedding pipelines, and retrieval systems.
- Design scalable document parsing, processing, and metadata extraction frameworks for enterprise knowledge management.
- Define API standards and integration patterns for AI services consumption across the bank.
- Cloud Architecture & Infrastructure
- Lead cloud architecture for AI solutions on Azure and GCP, ensuring scalability, security, and cost optimization.
- Design event‑driven architectures using Kafka for real‑time AI applications and streaming cases.
- Establish infrastructure standards for model serving on Open Shift/Kubernetes, monitoring, and MLOps practices.
- Technical Leadership
- Provide technical mentorship to AI Engineers and contribute to team capability building.
- Lead technical design reviews, code reviews, and architecture discussions.
- Ensure adherence to best practices: CI/CD, code management, testing, knowledge management, and documentation.
- Collaborate with enterprise architecture and IT teams to ensure AI solutions align with bank‑wide technology strategy and target data architecture.
- Stakeholder Engagement
- Partner with AI Product Owners and business stakeholders to translate requirements into technical solutions.
- Communicate technical concepts and trade‑offs to senior management and steering committees.
- Contribute to AI governance, ensuring solutions comply with data policies, ethical standards, and regulatory requirements.
- Define and maintain SLAs for AI solutions, implementing necessary monitoring and alerting.
- AI & ML Engineering
- Deep expertise in LLMs, embedding models, and generative AI architectures.
- Advanced experience with AI orchestration frameworks, complex agent development, and multi‑agent systems.
- Expert knowledge of vector databases, RAG architectures, and knowledge retrieval patterns.
- Strong background in deep learning frameworks (Tensor Flow, PyTorch) and model deployment tools (MLflow, TFX).
- End‑to‑end ML lifecycle management and model monitoring.
- Software Engineering
- Expert proficiency in Python (Advanced level) and AI/ML frameworks (Lang Chain, Llama Index, Semantic Kernel, or similar).
- Strong experience with API design, microservices architecture, and event‑driven architecture.
- SQL – Advanced user (Stored Procedures, Window functions, Temp Tables, Recursive Queries).
- Git (Git Hub/Git Lab), CI/CD pipelines, and code management best practices.
- Cloud & Data Engineering
- Expert‑level experience with cloud platforms (Azure and/or GCP) and object storage (S3, GCS, ABS).
- Advanced knowledge of Kafka, Spark, and workflow orchestration (Airflow,…
(If this job is in fact in your jurisdiction, then you may be using a Proxy or VPN to access this site, and to progress further, you should change your connectivity to another mobile device or PC).