Senior Data Scientist at LYNEER CORP SINGAPORE PTE LTD
Singapore, , Singapore -
Full Time


Start Date

Immediate

Expiry Date

20 Nov, 25

Salary

13500.0

Posted On

21 Aug, 25

Experience

0 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Unstructured Data, Time Series Analysis, Reinforcement Learning, Object Oriented Programming, Design Patterns, Python, Evaluation Methodologies, Signal Processing

Industry

Information Technology/IT

Description

REQUIREMENTS:

  • Good understanding of the data science production life cycle with demonstrable experience working with structured, semi-structured and unstructured data.
  • Excellent software skills (Python, SQL variants) and knowledge in design patterns, code optimization, object-oriented programming.
  • Experience applying quantitative and machine learning algorithms for pricing and marketing.
  • Demonstrable expertise in some of the following domains - econometrics, statistical modelling,time-series analysis, signal processing, reinforcement learning, estimating causal relationships/ counterfactual effects, dynamic pricing.
  • Solid understanding of foreign exchange markets, including knowledge of currency pairs, market dynamics, and key drivers.
  • Hands-on experience in designing and executing digital campaigns and experimentation (A/B, Multivariate, Bandits, Sequential, quasi-experiments), evaluation methodologies (DiD variants), and conducting experiments to optimize campaign performance.
Responsibilities
  • Work with large and complex financial datasets to develop end-to-end data science solutions for pricing various financial products, dynamic campaign optimization,and customer personalization.
  • Conduct research and literature review to assess and evaluate trade-offs between different quantitative algorithms and models.
  • Implement and train AI/ML models and optimize algorithm efficiency (GPU distributed computing, concurrent programming)
  • Refactor and document code into reusable libraries/ APIs/ tools, deploy machine learning ecosystems, and perform sub-system integration as required.
  • Integrate solutions into enterprise MLOps ecosystem and automate CI/CD pipelines for model lifecycle maintenance and monitoring.
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