Senior AI Engineer (MLOps)
- Location
- Singapore
- Salary Package
- Negotiable
- Posted
- 8th Sep 2025
- Consultants
- Adrian Chua
Responsibilities
Drive end-to-end application development and delivery for AI/ML initiatives.
Design, implement, and deploy scalable AI, ML, and DL models leveraging advanced techniques.
Build, fine-tune, and operationalize large language models and agentic AI solutions for enterprise-grade contexts.
Utilize leading cloud-based AI services (e.g., Azure OpenAI, AWS AI, or equivalents) for integrating state-of-the-art capabilities.
Work closely with data engineering to ensure seamless integration of data pipelines and optimized model deployment processes.
Implement MLOps/DevOps best practices for CI/CD, monitoring, and automation of model lifecycles.
Translate complex business challenges into technical solutions through close collaboration with stakeholders and cross-functional teams.
Continuously optimize deployed models for reliability, scalability, and production readiness.
Stay current on advancements in AI, ML, cloud, and data infrastructure, and proactively apply new concepts to drive innovation.
Contribute across multiple phases of the SDLC for technologic project delivery, interfacing with technical teams, vendors, and business leaders as needed.
Author clear and comprehensive technical documentation and design artifacts.
Conduct peer code reviews, unit testing, and remediation of defects identified during quality assurance or user acceptance test stages.
Ensure compliance with all internal project governance and external regulatory guidelines (e.g., audit, compliance, data governance).
Requirements
Education
Bachelor's or Master's degree in Computer Science, Information Technology, Engineering, or a related discipline.
Experience & Skills
Minimum 5 years' experience in AI/ML/DL development, with advanced knowledge in deep learning and generative AI.
Strong proficiency in Python and common frameworks such as PyTorch or TensorFlow, and experience with distributed computing (e.g., Apache Spark) and SQL.
Hands-on experience with at least one open-source or managed MLOps platform (such as Kubeflow or MLflow).
Demonstrated ability to leverage enterprise cloud AI services (e.g., Azure AI or comparable platforms) for solution delivery.
Proficiency with data engineering concepts and tooling (e.g., cloud data factories, Delta Lake or equivalent).
Production experience deploying generative and agentic AI architectures (e.g., LangChain, semantic kernel, RAG pipelines, prompt engineering, vector databases).
Experience working with Agile and Waterfall methodologies in dynamic environments.
Solid understanding of DevOps and MLOps, including CI/CD automation, monitoring, version control, and familiarity with secure software development practices (DevSecOps).
EA Licence: 16S8091
EA Reg No.: R1549798