Responsibilities
- Effectively engage with stakeholders to understand their business problems and then formulate a data-driven approach for resolution.
- Perform hands-on analysis and conduct in-depth investigations with the team, assist/lead & execute end-to-end measurement projects, and make actionable recommendations to the business.
- Actively look for areas of potential optimization/ automation and implement these changes.
- Document and follow existing processes to reporting and data quality management.
- Continuous research and improvement to become subject matter expert on our data repositories/ analytic solutions. Provide thought leadership to the team on use and interpretation.
- Build predictive models and machine learning algorithms. Propose solutions and strategies to business challenges.
- Ability to communicate with non-technical/ technical peers.
- Provide ad-hoc data and analytics support to the business and perform other related duties as assigned.
- Inherently curious about data with a strong desire to keep up to date with the latest developments in analytics/ visualization and machine learning.
Qualifications/ Skills
- Bachelor's degree in a quantitative field (e.g., statistics, economics, mathematics, business administration, marketing).
- 2+ years of experience in data analytics/ integrated marketing analytics and measurement, working closely with business functions.
- Knowledge of predictive modeling concepts, machine learning approaches, clustering, regression, classification techniques, recommendation system and optimization algorithms is preferred.
- Strong understanding of mathematical and statistical concepts. Experience with utilizing advanced mathematical, statistical and data mining techniques to collect data, analyze and construct solutions for complex business problems.
- Programming skills - knowledge of statistical programming languages like R, Python, and database query languages like SQL.
- Experience in the retail/ fnb industry is highly desirable but not mandatory.
- Attention to details.
- Critical thinking.
- Can-do attitude.
- Decent communication skills, describe findings to a technical and non-technical audience.