Senior Data Engineer

Rapsys Technologies · Singapore

Sector
Data & Analytics
Function
Product & Engineering
Level
Mid-Level
Employment type
Contract
Posted
2026-07-07
Source
mycareersfuture

Bachelor’s degree in computer science, Information Technology, Computer Engineering, or related fieldMinimum 3 years of relevant experience in data systems architecture, data systems integration, and data pipeline setup at production scaleGood understanding of cloud computing principles including infrastructure as code, containerisation, microservices architecture, cloud security frameworks, identity and access management, network architecture, and distributed systemsProven ability to translate business requirements into technical solutionsExcellent communication skills for presenting complex concepts to diverse audiencesExperience with cloud security frameworks, compliance requirements, and risk managementExperience in data domains (e.g. DataOps, Data Lakehouse) and AI/ML Domains (e.g. MLOps, LLMOps)Strong Knowledge and Hands-on experience with SQL, Python and Apache Spark Hands-on experience with Apache Kafka, Airflow, or similar technologiesGood to Have:Proficiency in Amazon Web Services (AWS) servicesRelevant cloud certifications (e.g. AWS Solutions Architect Professional, AWS Data Engineer Associate) would be an advantageExperience with Data & AI cloud-native services (e.g. Amazon Sage Maker Unified Studio, Amazon Quick Suite, AWS S3, AWS Glue, AWS Lake Formation, AWS Bedrock, AWS Agent Core).Familiarity with serverless computing, edge computing, and IoT architectures would be an advantage.Experience with machine learning operations (MLOps) and ML model deployment pipelinesKnowledge of data governance frameworks and metadata management tools  Familiarity with data visualization tools and business intelligence platforms

Apply on mycareersfuture →
Data & Analytics Technology Infrastructure Computer Engineering Model Deployment SageMaker Cloud Native Architecture Translate Into Technical Requirements Data Domain