Purpose   of the job
A Data Modeler will support the   creation of Logical and Physical Data Models using normalized (3NF) and   dimensional structures. This role is enabling Enterprise Data Analytics and   decision-making by adhering to architectural standards, governance best practices,   and ensuring data consistency. Collaboration with business stakeholders to   define and document business requirements while promoting data modeling best   practices across the organization.
  
 
 
  
  
  
 
 
  
  
Duties   and responsibilities
   - Develop        Logical and Physical data models for OLAP and OLTP systems.
- Enforce        modeling standards including normalization, denormalization, data        transformation, data lineage, and data quality for the Enterprise Data        Platform.
- Transform        raw data from multiple sources into actionable insights.
- Conduct        modeling sessions with project teams across business units to gather and        define data requirements for the Enterprise Data Models.
- Collaborate        with business and data teams to enhance data models quality and validity        for decision support entities.
- Perform        light data analysis and profiling using SQL queries on metadata as        needed.
- Document        data models for building reference that includes definitions for        business terms and KPIs. 
- Conceptualize        complex data schemes while ensuring alignment with modern data        architectures like Data Lakehouse.
- Collaborate        with business stakeholders for requirements gathering and ensure        alignment of data models with business needs.
  
 
 
  
Job   specification
  
 
 
  
Education
Bachelor's        degree from a recognized university in Computer Science, Engineering, or        any relevant field.
  
 
 
  
Experience
   - 3 - 5        Years Experience In data modeling, statistical analysis, data        manipulation, and ETL.
- Telecom industry experience is   a strong plus
  
 
 
  
  
  
 
 
  
  
Skills   and abilities
   - Strong        proficiency of English language spoken and written
- Advanced        level in using SQL for analytics.
- Knowledgeable        in Inmon and Kimball approaches for designing Data Warehouse and Data        Mart architectures.
- Familiar        with using Data Build Tool (DBT) and Python.
- Knowledge        of big data ecosystems and trending data platform architectures.
- Strong        analytical mindset with experience in turning business requirements into        logical and physical models.
- Ability        to grasp concepts quickly.