Job Description
Responsibilities:
- Support customer in adapting and deploying group-level ML solutions across business units on cloud platform.
- Enhance R&D code into production-grade pipelines, setting up APIs, ensuring CI/CD compliance
- Collaborate with infra teams to ensure operational readiness.
Requirements:
- Bachelor’s degree in business, Information Technology or relevant disciplines
- At least 4 years of working experience in Data Machine Learning
- Hands-on experience deploying machine learning models in cloud environments, including containerization (e.g., Docker) and orchestration frameworks
- Proficient in building and adapting ML pipelines using existing codebases or templates, with the ability to customize configurations for BU-specific needs
- Solid understanding of CI/CD practices and MLOps workflows (e.g., GitHub, Cloud Build, model registries)
- Experience designing and maintaining end-to-end ML pipelines, covering data ingestion, preprocessing, model serving, and logging
- Skilled in API deployment using frameworks such as Flask or FastAPI; capable of containerizing and scaling model services
- Strong proficiency in writing modular, testable, and production-grade Python code following software engineering best practices
- Familiarity with relational and NoSQL databases; understanding of vector databases (e.g., FAISS, Pinecone, Chroma) is a strong advantage
- Strong troubleshooting and debugging skills across data, code, infrastructure, and runtime layers
- Experience with distributed data processing tools (e.g., Spark) and cloud-native services
- Collaborative and results-driven, with the ability to work effectively across functions with Data Scientists, QA Engineers, and Product Managers
- Good communication skill in both spoken and written English and Chinese.
If you're interested in this role, please click the Apply button above or via Linkers website at https://jobs.linkerscareers.com/ with your CV.
If you would like to have a further discussion about this role, please contact us at +852 2391 2813.
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