Revenue Forecast Economist/Modeler
Location: Singapore
Employment Type: Full-Time
Organisation: EDHECinfra and Private Assets
Role Overview
We are seeking a skilled and motivated Economist/Modeler to join our data team. The successful candidate will play a critical role in developing and implementing systematic models to forecast revenue based on economic variables. This position requires a strong foundation in econometrics, statistical analysis, and advanced programming skills in R and Python. The ideal candidate should be passionate about data-driven decision-making and have the ability to translate complex economic theories into practical insights.
Key Responsibilities
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- Assist with the design and building of econometric models to forecast revenue using economic and business variables.
- Implement and validate models to ensure accuracy, robustness, and reliability.
- Analyze large datasets to identify trends, correlations, and key economic indicators affecting revenue.
- Extract, clean, and preprocess data from diverse sources for use in predictive modeling.
- Conduct research on macroeconomic and microeconomic factors impacting revenue streams.
- Stay updated on economic trends, policy changes, and market developments to incorporate into models.
- Communicate findings, insights, and recommendations effectively to technical and non-technical stakeholders.
- Utilise programming languages (R, Python) and data visualization tools to develop and present insights.
- Leverage advanced statistical software and techniques to enhance modeling capabilities.
Qualifications & Skills
Essential:
- Education: Bachelors or Masters degree in Economics, Econometrics or a related field.
- Technical Skills:
- Strong proficiency in R and Python for data analysis and modeling.
- Expertise in econometric techniques such as time-series analysis, regression modeling, and panel data analysis.
- Experience working with large datasets and database management tools.
- Analytical Skills: Advanced understanding of economic theory and its application to real-world problems.
- Strong problem-solving skills with attention to detail.
Desirable:
- Experience in revenue forecasting or financial modeling.
- Knowledge of machine learning techniques and their integration with econometric models.
- Understanding of SQL or other database query languages.
Application Process:
Interested candidates are invited to submit their CV and cover letter.