Technology Category
- Functional Applications - Computerized Maintenance Management Systems (CMMS)
- Infrastructure as a Service (IaaS) - Cloud Databases
Applicable Industries
- Buildings
- Cement
Applicable Functions
- Maintenance
- Warehouse & Inventory Management
Use Cases
- Asset Health Management (AHM)
- Predictive Maintenance
Services
- Cloud Planning, Design & Implementation Services
- Data Science Services
About The Customer
JetBlue is a major airline that carries customers to more than 110 cities throughout the United States, Latin America, the Caribbean, Canada, and the United Kingdom. The airline operates an average of 900+ flights per day. Every person, plane, and journey generates data points that reveal customer sentiments, inform revenue forecasting, help predict fuel consumption, prescribe aircraft maintenance, and give critical insight into operational readiness. The airline was facing challenges in managing and analyzing this vast amount of data, which was sourced from 130 different systems.
The Challenge
JetBlue, a major airline operating over 900 flights daily to more than 110 cities, was grappling with the challenge of managing and analyzing the vast amount of data generated by its operations. Every person, plane, and journey generated data points that could provide insights into customer sentiments, revenue forecasting, fuel consumption, aircraft maintenance, and operational readiness. However, the sheer volume of data, sourced from 130 different systems, was overwhelming and difficult to organize. The airline needed a solution that could centralize this data, making it readily accessible for analysis and decision-making. The challenge was to bring all this data into a single platform quickly and accurately for analysis.
The Solution
JetBlue decided to build a modern, cloud-based data stack using Fivetran and Snowflake. Fivetran's pipelining tools enabled JetBlue to move data from multiple sources to its Snowflake data cloud. This allowed the data engineering team to rapidly access information for analytic use cases and significantly reduced the time it took to manually build data pipelines. JetBlue's Snowflake data warehouse now contains over 115TB of data, and fresh data is readily available for analysis. The airline also built a suite of self-service analytics products, used by analysts and leaders across many workgroups to deliver meaningful insights. For instance, JetBlue integrated Qualtrics customer survey data into Snowflake using Fivetran's Qualtrics connector, enabling the airline to better understand its customers and enhance their experiences.
Operational Impact
Quantitative Benefit
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