AI Senior Rollout and Support Manager

💼 Role Overview

As an AI Senior Rollout and Support Manager, you'll lead the design and deployment of end-to-end AI solutions that are robust, scalable, and span data ingestion, model deployment, API orchestration, and business system integration across hybrid cloud and on-premises environments. This role offers an exciting opportunity to grow your expertise in AI platform development while making a meaningful impact on our organization's digital transformation.


🎯 What you will do (Key Responsibilities)

  • Lead the planning, testing, and delivery of solutions for the MA Global AI self-service platform, including Agentic AI, AI Workbench and Tooling, Model Management, shared RAG service, MCP, and AI Runtime environments
  • Develop solution blueprints by translating business requirements into technical architecture, gaining hands-on experience in selecting appropriate tools, frameworks, and infrastructure for AI model development and operations
  • Integrate AI capabilities with internal APIs, enterprise platforms, and user-facing applications in IT and Networks, working with LLM-based and agentic workflows
  • Collaborate with security and governance teams to ensure solutions are secure and compliant, embedding PDPA and enterprise policy requirements into your designs
  • Partner with MA AI and data teams to operationalize AI models, learning how to ensure architectural alignment, scalability, and lifecycle support
  • Contribute to proof-of-concepts (PoCs), technical evaluations, and prototyping efforts, gaining valuable experience in emerging AI technologies
  • Stay current with AI technologies and best practices in integration, model lifecycle management, and platform operations
  • Participate actively in architecture reviews, technical discussions, and sprint planning with cross-functional teams
  • Define and enforce architectural standards, reusable design patterns, open standards, and reference implementations to streamline AI deployment across business units
  • Explore emerging AI technologies such as vector databases, context-aware agents, and orchestration protocols (e.g., LangChain, LangGraph, MCP, A2A), and assess their applicability within the enterprise
  • Lead solutioning activities and mentor a small development team consisting of AI engineers and application developers on selected use cases
  • Own the business knowledge strategy for AI, including documents, data, FAQs, and rules; coordinate with data owners and regions for knowledge onboarding
  • Drive improvements in AI quality through prompt optimization, knowledge management, and feedback loops
  • Support the auto-learning framework and guide the organization in adopting the self-service AI Framework and API interface.

👤 What We’re Looking For (Qualifications & Skills)

  • Bachelor's degree in computer science, engineering, data, AI/ML, or related field (master's degree preferred).
  • 3+ years of experience in solution management, AI/ML platform integration, data pipeline design, or API-driven systems, or equivalent project-based experience.
  • Experience designing and integrating AI workflows, including exposure to data pipelines, model orchestration, and API serving across cloud environments.
  • Understanding of AI/ML systems, cloud-native architectures, and API ecosystems, with willingness to deepen expertise.
  • Hands-on or project experience with cloud-based AI services such as Microsoft Azure ML, AI Foundry, BTP AI Core, or Bedrock, including model deployment and monitoring.
  • Familiarity with open-source and open-standard tooling for AI and agentic frameworks (e.g., n8n, Portkey, or equivalent).
  • Knowledge of API architecture and integration standards, with experience enabling secure and scalable interfaces between AI models and enterprise systems.
  • Ability to evaluate and learn new AI technologies, frameworks, and vendor solutions for enterprise environments.
  • Strong collaboration and communication skills to work effectively across data, API, ML, and AI platform teams, translating between business and technical stakeholders.
  • Solid project management competencies and organizational skills.
  • Good technical and presentation skills, with the ability to explain complex concepts clearly to diverse audiences.
  • Proactive mindset and eagerness to learn emerging technologies and industry trends.
  • Foundational knowledge of business processes and data-driven use cases, with genuine interest in AI and data technologies.