As a champion of technical excellence, the Technical Analyst contributes to a culture of innovation, collaboration, and continuous improvement. You’ll work closely with architects, developers, and product teams to enhance operational efficiency, ensure platform stability, and explore emerging technologies—including AI and data-driven insights—that help keep our airline systems modern, scalable, and customer-focused.
Let your career take flight by joining a team that’s redefining the digital passenger experience at the forefront of global aviation.
Responsibilities:
Design & Implementation
- Manage implementation of solutions for exploratory data analysis and conducts implementation assessments based on Architecture Overview Documents (AOD) and Detailed Data Solutions.
- Provide accurate effort estimations and assess feasibility of proposed architectures and data models.
Pipeline Design & Development
- Design and develop cost-effective, scalable ELT pipelines using reusable components and frameworks.
- Document pipeline implementation approach including scheduling, dependencies, error handling, monitoring, and alerting.
- Monitor and resolve alerts/failures in prod/non-prod environments.
- Review and approve pipelines developed by data engineers.
Environment Setup & Collaboration
- Set up non-production and production environments including MFT flows, database/schema configurations, RBAC, cloud services, Git repositories, and defining appropriate branching strategies.
- Collaborate with stakeholders on UAT and production release strategies.
Technical Leadership & Mentorship
- Mentor and guide data engineers on best practices, business logic implementation, and quality assurance.
- Scramble and generate mock data for testing purposes.
- Identify and document technical debt; differentiate between defects and scope changes and effectively communicate with product team
DevOps & Data Modeling
- Lead deployment and transition-to-operations (TTO) activities for UAT and production.
- Apply strong understanding of DevOps processes, Star Schema, Data Vault, and data warehousing principles.
Qualifications
Professional Experience
- 3-5 years of experience leading enterprise data warehouse development teams.
- Proven success in Agile environments and cloud-based data platforms, especially Azure and Snowflake.
Technical Skills
- Expertise in building robust, scalable data pipelines for batch and streaming data.
- Proficiency in SQL, Python, stored procedures, and scheduling tools.
- Hands-on experience with ETL/ELT tools such as Azure Data Factory (ADF), Databricks, Snowflake, DBT and Talend.
- Skilled in implementing monitoring and alerting mechanisms for data pipelines.
- Strong capability in reviewing engineering deliverables for performance, scalability, and maintainability.
- Experience with prompt engineering and leveraging Generative AI (GenAI) to accelerate development and automate engineering workflows.
Education
- Bachelor’s degree in Engineering, Computer Science, Mathematics, or a related field.
Soft Skills
- Excellent communication, problem-solving, and analytical skills.
- Proven leadership and mentoring capabilities.
- Strong collaboration skills with cross-functional teams.
- Demonstrate punctuality and dependability to support overall team success in a fast-paced environment.
