Job Search and Career Advice Platform

Enable job alerts via email!

Machine Learning Engineer

A-IT SOFTWARE SERVICES PTE LTD

Singapore

On-site

SGD 70,000 - 90,000

Full time

Yesterday
Be an early applicant

Generate a tailored resume in minutes

Land an interview and earn more. Learn more

Job summary

A technology services provider in Singapore seeks an experienced ML Engineer to operationalize ML models created by data scientists. The role involves developing CI/CD pipelines for continuous operation and monitoring of ML models, ensuring performance, and collaborating with data engineers. Proficiency in Python and knowledge of various MLOps tools is crucial. Ideal candidates will demonstrate strong analytical skills and attention to detail, making contributions to an innovative tech environment.

Qualifications

  • Proficiency in Python for ML and automation tasks.
  • Experience with CI/CD pipelines orchestration tools.
  • Knowledge of MLOps frameworks and tools.

Responsibilities

  • Operationalize ML models developed by data scientists.
  • Develop pipelines for monitoring ML model performance.
  • Optimize AI development environments for performance.

Skills

Python
Bash
CI/CD pipelines
OpenShift
Kubernetes
Panda
NumPy
H2O
TensorFlow
Spark
Airflow
Splunk
Cloud platforms

Tools

Jenkins
GitLab CI
GitHub Actions
Job description
Responsibilities

As an ML Engineer, your pivotal role involves operationalizing ML Models developed by bank’s data scientists. You will serve as the focal point for ML model refactoring, optimization, containerization, deployment, and quality monitoring.

  • Conduct reviews for compliance of the ML models in accordance with overall platform governance principles such as versioning, data/model lineage, code best practices and provide feedback to data scientists for potential improvements.
  • Develop pipelines for continuous operation, feedback and monitoring of ML models leveraging best practices from the CI/CD vertical within the MLOps domain. This can include monitoring for data drift, triggering model retraining and setting up rollbacks.
  • Optimize AI development environments (development, testing, production) for usability, reliability and performance.
  • Have a strong relationship with the infrastructure and application development team in order to understand the best method of integrating the ML model into enterprise applications (e.g., transforming resulting models into APIs).
  • Work with data engineers to ensure data storage (data warehouses or data lakes) and data pipelines feeding these repositories and the ML feature or data stores are working as intended.
  • Evaluate open‑source and AI/ML platforms and tools for feasibility of usage and integration from an infrastructure perspective. This also involves staying updated about the newest developments, patches and upgrades to the ML platforms in use by the data science teams.
Requirements
Technical Skills
  • Proficiency in Python used both for ML and automation tasks.
  • Good knowledge of Bash and Unix/Linux command‑line toolkit is a must‑have.
  • Hands on experience building CI/CD pipelines orchestration by Jenkins, GitLab CI, GitHub Actions or similar tools is a must‑have.
  • Knowledge of OpenShift / Kubernetes is a must‑have.
  • Good understanding of ML libraries such as Panda, NumPy, H2O, or TensorFlow.
  • Knowledge in the operationalization of Data Science projects (MLOps) using at least one of the popular frameworks or platforms (e.g., Kubeflow, AWS Sagemaker, Google AI Platform, Azure Machine Learning, DataRobot, Dataiku, H2O, or DKube).
  • Knowledge of Distributed Data Processing framework, such as Spark, or Dask.
  • Knowledge of Workflow Orchestrator, such as Airflow or Ctrl‑M.
  • Knowledge of Logging and Monitoring tools, such as Splunk and Geneos.
  • Experience in defining the processes, standards, frameworks, prototypes and toolsets in support of AI and ML development, monitoring, testing and operationalization.
  • Experience in ML operationalization and orchestration (MLOps) tools, techniques and platforms. This includes scaling delivery of models, managing and governing ML Models, and managing and scaling AI platforms.
  • Knowledge of cloud platforms (e.g. AWS, GCP) would be an advantage.
Soft Skills
  • Good knowledge of Devops process and principles.
  • Strong in Software Engineering fundamentals.
  • Excellent communication skills.
  • Attention to detail.
  • Analytical mind and problem‑solving aptitude.
  • Strong Organizational skills.
  • Visual Thinking.

Angeline Aw Kwee Choo (R24125869)

A‑IT Software Services Pte Ltd

EA License No: 24C2345

Get your free, confidential resume review.
or drag and drop a PDF, DOC, DOCX, ODT, or PAGES file up to 5MB.