Key Responsibilities:
Technical & Domain Skills Required:
- Advanced SQL & T-SQL: Expert-level database query optimization, view creation, and deep structured analytical querying
- Advanced Programming: Hands-on capability in Python for exploratory data analysis (EDA), hypothesis testing, and implementing fundamental Machine Learning (ML) models
- Microsoft BI Stack: Solid foundation across SSIS, SSAS, and SSRS ecosystems
- Modern Product Analytics: Experience tracking user behavior via Google Analytics, Google Tag Manager, or clickstream events is highly preferred.
1. Advanced Analytics, Modeling & RCA:
- Root-Cause Analysis (RCA): Lead complex RCAs on volatile business shifts (e.g., sudden booking drops or cancellation spikes) and deliver quick-turnaround strategic interventions
- Rule Based Frameworks: Apply cohort analysis, funnel tracking, and statistical forecasting techniques to predict peak seasonal travel demand
- Advanced Decision Models: Build heuristic and predictive data models to unlock alternative ancillary revenue streams and operational efficiencies
2. BI Engineering & Data Architecture Management:
- Data Visualization Integration: Oversee the construction of enterprise-level Power BI dashboards utilizing complex DAX logic and Power Query to surface executive-level insights
- ETL Pipeline Governance: Supervise the development and continuous execution of data pipelines using SSIS, SSAS, or modern data orchestrators
- Data Quality Assurance: Maintain ownership over data modeling, transformation structures, SQL views, and procedures to guarantee data validity.
3. Team Leadership & Stakeholder Management:
- Team Mentorship: Lead, mentor, and define performance benchmarks for a high-performing team of data analysts.
- Cross-Functional Collaboration: Act as the primary consultant for Product Managers, Business Development heads, and Engineering teams to transform raw analytics into real feature deployments
4. Strategic Business Drive & Domain Analytics:
- Revenue & Pricing Optimization: Analyze demand-supply gaps, inventory utilization patterns, and dynamic pricing effectiveness across routes and geographies
- Conversion & Funnel Management: Deep-dive into customer checkout cohorts, shopping cart drop-offs, and cancellation bottlenecks to drive user retention
- Campaign & Loyalty Analysis: Partner with marketing teams to design, track, and optimize customer rewards and sales promotion campaigns.
Experience Level - 5 to 8 Years