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Data Scientist (Machine Learning)

Flintex Consulting Pte Ltd

SingaporeFull-timeOn-siteS$6,000 – S$8,500/mo

Posted 17 Jul 2026

About this role

Develop and deploy advanced machine learning models and data pipelines to support business operations and digital transformation. Collaborate with stakeholders to translate business requirements into actionable, data-driven insights and production-ready solutions. Requires a degree in Data Science, Computer Science, or a related field with 3-8 years of experience in machine learning and advanced analytics. Proficiency in Python, SQL, and ML frameworks is essential, with a preference for experience in industrial sectors.

What they're looking for

Required

  • Degree in Data Science, Computer Science, or related field
  • years of experience in machine learning and advanced analytics
  • Proficiency in Python
  • Proficiency in SQL
  • Proficiency in ML frameworks

Nice to have

  • Experience in industrial sectors

Frequently asked questions

What does a Data Scientist (Machine Learning) at Flintex Consulting Pte Ltd do?

Develop and deploy advanced machine learning models and data pipelines to support business operations and digital transformation. Collaborate with stakeholders to translate business requirements into actionable, data-driven insights and production-ready solutions. Requires a degree in Data Science, …

What skills does this Data Scientist (Machine Learning) role need?

Key skills for this role include Python, Machine Learning, TensorFlow, PyTorch, XGBoost, SQL.

How much does a Data Scientist (Machine Learning) at Flintex Consulting Pte Ltd pay?

This role lists a salary of S$6,000 – S$8,500 per month.

Is this Data Scientist (Machine Learning) role remote, hybrid, or on-site?

This role is on-site, based in Singapore.

How do I apply for this Data Scientist (Machine Learning) role?

You can apply directly on Flintex Consulting Pte Ltd's careers page. ApplyLah can tailor your résumé and cover letter to this exact role in seconds first.