SCIENTE
Machine Learning Engineer
SCIENTESingapore12 hours ago
ContractInformation Technology, Engineering +1

Job Summary


We are seeking an experienced Machine Learning / AI Engineer to join a dynamic and multicultural team within a leading global financial institution at the forefront of digital transformation and innovation. This role involves designing, building, and deploying end-to-end machine learning solutions across international and cross-functional projects supporting strategic business functions across banking, finance, and risk domains. The ideal candidate will be hands-on in both model development and engineering scalable, production-grade ML systems, while ensuring alignment with AI governance and compliance standards. This is a 12 months contract hiring.

Mandatory Skill-set


  • Master’s degree in AI, Machine Learning, or Data Science;
  • Must have 6+ years in data science and ML, including 3+ years in ML engineering lifecycle;
  • Proficiency in Python and ML libraries (pandas, scikit-learn, TensorFlow/PyTorch);
  • Must have experience with NoSQL databases; exposure to graph databases is a plus;
  • Familiarity with MLOps tools such has MLflow, TFX, Airflow, Kubeflow;
  • Cloud deployment experience such as AWS, GCP, or Azure;
  • Strong grasp of supervised/unsupervised learning, NLP, time series analysis;
  • CI/CD pipeline and containerization expertise (Docker, Kubernetes);
  • Understanding of AI governance, model risk, and regulatory compliance and the ability to explain technical concepts to non-technical stakeholders;
  • Proven experience in end-to-end ML lifecycle.


Desired Skill-set


  • Knowledge of Responsible AI frameworks and fairness/bias testing;
  • Experience with feature stores, model registries, and data versioning;
  • Familiarity with data privacy, anonymization, and compliance in regulated sectors.


Responsibilities


  • Collaborate with data scientists and business teams to define ML solutions and build PoCs;
  • Deploy and maintain ML models using MLOps best practices;
  • Build scalable data pipelines and monitor model performance;
  • Ensure models comply with internal AI policies and audit standards;
  • Support feature engineering and occasional model development;
  • Automate model retraining, testing, and performance tracking;
  • Document workflows, governance checkpoints, and risk assessments;
  • Work closely with DevOps, IT, and security teams to integrate ML solutions into enterprise platforms.


Should you be interested in this career opportunity, please send in your updated resume to [email protected] at the earliest.


When you apply, you voluntarily consent to the disclosure, collection and use of your personal data for employment/recruitment and related purposes in accordance with the SCIENTE Group Privacy Policy, a copy of which is published at SCIENTE’s website (https://www.sciente.com/privacy-policy).


Confidentiality is assured, and only shortlisted candidates will be notified for interviews.

EA Licence No. 07C5639

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