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System Engineer (AI/ML & Video Analytics)

3-5 Years
SGD 4,000 - 6,500 per month
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Job Description

  • 1-year contract, renewable
  • Hybrid work arrangement
  • Government project

We are seeking a Systems Engineer with strong foundations in cloud infrastructure, DevOps, and system integration, complemented by specialized expertise in AI/ML technologies and video analytics applications.

As you will be working on a systems engineering role with AI/ML serving as augmented skillsets, core systems engineering competencies such as cloud platforms, DevOps practices, API integration are mandatory foundations.

Operating at the intersection of systems engineering, edge computing, and AI/ML technologies, this role drives the design, deployment, and operation of intelligent transportation systems for Singapore's Land Transport Authority, ensuring AI-powered solutions are architected with systems engineering rigor and operated with production reliability.

Key Responsibilities

  • Design and build application/cloud/edge infrastructure for AI/ML experimentation and prototyping with established frameworks and best practices
  • Set up CI/CD pipelines for ML model testing, training, and deployment automation
  • Deploy and evaluate AI/ML models on cloud and edge platforms with focus on system integration and production readiness
  • Translate stakeholder needs into actionable system requirements with full traceability
  • Integrate emerging AI technologies with existing LTA infrastructure ensuring seamless interoperability
  • Conduct proof-of-concept implementations focusing on deployment feasibility and performance benchmarks
  • Automate data pipelines and model training workflows using DevOps and MLOps practices
  • Foster cross-functional collaboration among AI/ML engineers, developers, security teams, and operations staff
  • Deploy and operate production-ready video analytics systems at scale across LTA infrastructure
  • Build and manage edge computing infrastructure with containerization, monitoring, and automated health checks
  • Implement comprehensive monitoring, logging, and alerting for AI/ML production systems
  • Integrate video analytics solutions with LTA's APIs, databases, message queues, and network systems
  • Optimize system performance, GPU allocation, and real-time processing for latency and throughput requirements
  • Work with ML platforms to support model development, versioning, and deployment pipelines
  • Implement security, compliance, and data governance including PDPA compliance, encryption, and access controls
  • Maintain and troubleshoot deployed infrastructure with systematic debugging and root cause analysis
  • Monitor system health, implement automated remediation, and respond to production incidents
  • Manage model retraining pipelines and version control ensuring reproducibility and rollback capabilities
  • Provide technical support for infrastructure, networking, and AI/ML system performance issues
  • Collaborate with operations teams ensuring reliability, uptime SLAs, and operational excellence

Qualifications

  • Bachelor's degree in Computer Science, Engineering, Information Systems, or related technical field (required)
  • Master's degree in AI/ML, Computer Vision, Computer Science, or related field (preferred)
  • AWS certifications: Solutions Architect, Machine Learning Specialty, DevOps Engineer Professional
  • Kubernetes certifications: CKA, CKAD
  • NVIDIA Deep Learning Institute certifications
  • Cloud Platforms: AWS infrastructure and services including EC2, S3, Lambda, VPC, IAM, CloudWatch, ECS/EKS cloud architecture for compute, storage, networking, and security
  • DevOps & Automation: Git version control, CI/CD pipelines, Infrastructure as Code, Docker containerization, Kubernetes orchestration, automated testing and deployment strategies
  • Systems Integration: RESTful API design and development, data pipelines and ETL processes, database integration, networking fundamentals, distributed systems and microservices
  • Programming: Python/TypeScript/Java/similar for systems automation and ML applications scripting for infrastructure management production-grade code practices including testing, logging, and documentation
  • AI/ML Frameworks: PyTorch, TensorFlow for computer vision OpenCV for image/video processing object detection and tracking algorithms model optimization techniques
  • Edge AI & IoT: Nvidia Jetson platform development and optimization edge computing deployment strategies IoT camera infrastructure real-time data processing
  • ML Operations: AWS SageMaker and ML services ML platforms experience model training, versioning, and deployment pipelines production model monitoring and maintenance
  • Traffic monitoring and analysis: vehicle detection, traffic flow, congestion analysis
  • Safety and compliance monitoring: violation detection, construction safety, pedestrian safety
  • Experience with transportation, smart city projects, or intelligent transportation systems is a strong plus
  • Strong systems-thinking mindset to decompose complex problems into modular solutions
  • Excellent communication and stakeholder management translating technical concepts to non-technical audiences
  • Ability to balance technical depth with production delivery and operational reliability
  • Proactive, collaborative, and adaptable in fast-evolving technical environments
  • Documentation expertise: technical documentation, architecture diagrams, runbooks, API documentation
  • Mentoring and knowledge transfer capabilities
  • Agile/project management experience

Experience Requirements

  • Minimum 3 years hands-on experience as Systems Engineer working with cloud infrastructure, DevOps practices, and system integration in production environments
  • Proven track record deploying and operating production systems at scale with reliability, monitoring, and incident response
  • Strong foundation in system architecture, networking, security, and distributed systems design
  • Demonstrated experience applying AI/ML technologies in production including model deployment and lifecycle management
  • Experience with edge AI deployment on Nvidia Jetson or similar platforms highly valued
  • Experience with video analytics, computer vision, or outdoor AI applications is a plus
  • Government or public sector project experience with compliance requirements advantageous
  • Portfolio demonstrating successful AI/ML deployment integrated with enterprise/government infrastructure
  • Ability to work with non-technical stakeholders and translate complex technical concepts clearly
  • Understanding of data privacy, security, and compliance in government contexts
  • Problem-solving mindset with ability to work independently and in cross-functional teams
  • On-call availability for production infrastructure support on rotation basis
  • Ability to respond to incidents with systematic troubleshooting under pressure

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Job ID: 145511127