Job Role & Responsibility/Designation - Sr Manager - Data Analytics
Location - Gurgaon / Noida / Mumbai
- Candidate must have statistical modeling experience and possess deep understanding of advance Machine learning concepts.
- Candidate should also have practical experience developing sophisticated statistical or econometric models.
- Worked on techniques like Logistic regression, Ordinal regression, Time series forecasting (ARIMA, Exponential Smoothing, WMA etc.), Decision Tree Multivariate, Random Forest, Cluster Analysis (K Means, Hierarchical) for segmentation.
- Use Multivariate data analysis and factor reduction techniques such as Discriminant, Principal Component and Factor analysis.
- Design, build and maintain forecast models, interpret results to the Leadership Team.
- Strong background in statistics such as Analysis of Variance, Correlation, Simple Regression, Multiple Regression, Hypothesis Testing, Multivariate Analysis, Cluster Analysis, Time series.
- Experience in Machine (Supervised and unsupervised) Learning.
- Experience in using R, Python, SPPS, SAS, Excel or any other Statistical software.
- Experience in RDBMS, SQL, PL SQL, Data Warehouse for data extraction and transformation.
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- 12+ years of industrial experience in Predictive Modeling and Data Analytics.
- Advanced Degree in Statistics, Mathematics, Operational Research, Economics, or equivalent is required.
- Must have excellent written and verbal communication skills, including proven ability to write clear concise reports, and explanation of technical concepts to technical and non-technical audiences, and be self-motivated to manage, coordinate and facilitate multiple initiatives in a fast paced, dynamic environment
- Strong Problem solving ability and learning agility
- Experience in mentoring junior team members, and guiding them on machine learning and data modeling applications
- Strong communication and data presentation skills