-
Bachelor degree in Business, Economics, Statistics, Data Science, Data Mining, or similar quantitative field.
-
Proven successful and trackable experience in an analytical role or data scientist role involving extraction, analysis, and/or modeling.
-
Solid experiences in SQL, familiar with SQL functions such as window functions and aggregate functions.
-
Solid experiences in Python, familiar with data analysis libraries such as pandas, numpy, matplotlib, scikit-learn, etc.
-
Experience in using analytical concepts and statistical techniques: hypothesis development, designing tests/experiments, analysing data, drawing conclusions, and developing actionable recommendations for business units.
-
Experience in developing production-grade ML systems including exploratory analysis, feature engineering, hyperparameter tuning, model training, model selection, creating data pipelines, etc.
-
Experience in working with deep learning frameworks such as PyTorch for real world problems.
-
Knowledge of Computer Science fundamentals such as object-oriented design, graph algorithm, algorithm design, data structures, problem solving and complexity analysis.
-
Self-driven, innovative, collaborative, with good communication and presentation skills, able to translate between business and technical audiences.