Senior AI Engineer
Job Fit Check
Base Career helps you apply smarter for this job.
Key skills for this role
About the Role
Design and deploy Agentic AI solutions, utilizing cloud services and AI orchestration frameworks, while ensuring scalability and compliance with industry standards.
Key Skills for This Role
Full Job Posting
Overview
The Senior AI Engineer is responsible for designing, developing, and deploying Agentic AI solutions and AI-enabled platforms within the Data & AI Lab.
The role focuses on building robust AI infrastructure, including integrations with cloud platforms, vector stores, document processing pipelines, and real-time data streaming capabilities.
This position requires strong engineering skills to work with AI orchestration frameworks (MCP), cloud services (Azure, GCP), and modern AI tooling.
The AI Engineer collaborates closely with AI Product Owners, Data Scientists, and other engineers to deliver production-grade AI solutions supporting banking operations and customer-facing applications.
The role bridges AI research and production deployment, ensuring AI capabilities are scalable, maintainable, and aligned with enterprise architecture standards.
1. Agentic AI Development
- Design and implement Agentic AI solutions, including autonomous workflows, multi-agent systems, and AI orchestration patterns.
- Develop and maintain integrations with Model Context Protocol (MCP) and similar AI orchestration frameworks.
- Build and optimize AI pipelines that combine multiple AI capabilities into cohesive solutions.
2. AI Platform Engineering
- Develop and maintain AI platform components, including vector stores, embedding pipelines, and retrieval systems.
- Implement document parsing, processing, and metadata extraction pipelines for knowledge management and RAG applications.
- Build and maintain APIs and integration layers for AI services consumption.
3. Cloud & Infrastructure
- Design and deploy AI solutions on cloud platforms (Azure, GCP) following best practices for scalability and security.
- Implement data streaming architectures using Kafka for real-time AI applications and event-driven AI workflows.
- Manage AI infrastructure, including model serving on OpenShift/Kubernetes, monitoring, and performance optimization.
4. Integration & Delivery
- Develop RESTful APIs and integration patterns for AI services consumption by internal and external applications.
- Collaborate with IT teams to integrate AI capabilities into existing systems and workflows.
- Participate in Agile delivery processes (Scrum, Kanban), contributing to sprint planning, code reviews, and continuous improvement.
5. Quality & Standards
- Ensure AI solutions comply with security, governance, and regulatory requirements.
- Maintain code quality through testing, documentation, CI/CD practices, and adherence to engineering best practices.
- Stay current with emerging AI technologies, tools, and frameworks to continuously improve delivery capabilities.
Apply for this job in 1 click
Skip the repetitive application forms
Install the Base Career Chrome Extension and autofill job applications across major job boards with your profile.
Trusted by over 500,000 job seekers on Base Career
More from this employer
More jobs at Client of Acquism SARL
Senior AI Product Owner
Doha, QAT
Responsible for delivering Data and AI products, managing stakeholder expectations, and ensuring alignment between business objectives and technology teams.
AI Engineer
Doha, QAT
Develop machine learning models for banking applications, conduct data analysis, and collaborate with stakeholders while ensuring compliance and utilizing cloud technologies.
Data Scientist
Doha, QAT
The role involves delivering advanced data science solutions, designing analytical models, and requires expertise in machine learning, data management, and programming languages.
Senior Data Scientist
Doha, QAT
Develop machine learning models for banking applications, conduct data analysis, and collaborate with stakeholders; requires advanced quantitative skills and banking domain expe...