- Position Purpose
- Solution and deliver analytics offerings for the bank to drive revenue or enable cost optimization
- Build models, move them to production and maintain/ enhance on an ongoing basis in production
- Become an analytics consultant and evangelist within the bank finding analytical solutions to business problems
Position Responsibilities
- Work closely with the data warehouse team/other business teams to obtain relevant data for implementation. Be comfortable working with structured / unstructured data sources and be conversant to perform secondary research to explore third party data sources to enrich existing data
- Support the overall digital acquisition strategy by focusing on segmenting/ predicting response rates for leads which are a pre-requisite for improving response rates
- Create/supervise building of models around channel migration, cross sell, upsell and support the overall customer engagement strategy
- Support the implementation of various technology (recommendation engine, campaign management solution, CRM) / data enablers (Creation of data sets, mart etc.) for the analytics practice within the bank
- Implementation of specific use cases on big data platforms
Qualifications and Experience Requirement
Qualifications
- Essential: Graduate (B.E / B.Sc Stats / M.Sc Stats or equivalent)
Experience
- Essential:
- 3 plus years in the analytics space
- Managed diverse stakeholders from various teams, in complex environments
- Grasp of basic Supervised/Unsupervised ML algorithms and a demonstrated ability to learn quickly
- Thorough understanding of banking domain would be a plus point
- Experience in working with SQL & R/other similar statistical programming languages. Knowledge of other statistical programming languages like Python will be an added advantage
Skills
Skill Attribute
- Team player, detail oriented, self-motivated individual
- Candidate should have a strong understanding of analytical modeling techniques and statistical concepts that are relevant to the application and evaluation of models