You are viewing a preview of this job. Log in or register to view more details about this job.
Hs emp logo data

Labor Systems Big Data & Analytics Internship - Orlando, Fall 2019

Job Summary:

Disney Parks, Experiences, and Consumer Products (DPECP) brings stories, characters and franchises to life through Parks & Resorts, toys, apps, apparel, books, and stores. As Walt said, “You can dream, create, and design the most wonderful place in the world…but it takes people to make the dream a reality.” DPECP is an industry leader in labor management, empowering best-in-class Cast Members to deliver Disney’s legendary guest service. The DPECP Labor Systems team works closely with business partners to create innovative applications that support workload, scheduling, time, and deployment for operations leaders and Cast. We produce robust applications that enhance key aspects of the Cast experience. Labor Systems is transitioning the legacy data strategy to a cloud-based platform with a data lake in development, while also supporting clients with visualization tools and advanced analytics. Labor Systems seeks forward-thinking team members who are passionate about delivering a quality product and enjoy working closely with business partners on both strategic and tactical challenges.

As the ideal candidate, you should have strong verbal and written communication skills, and be able to work independently as a self-starter, utilize good time management skills, and function well within a diverse team.


In this internship, you will be expected to work on engineering and migration of multiple data flows/pipelines from on premise infrastructure to a big data Hadoop cloud platform. You will work on developing/migrating workflows to move, transform, store and consume the data using big data/Hadoop technologies. You will work on deploying various application code/modules on the platform and verifying the executions. In this internship, you will also work on creating an automated monitoring process and reporting on critical alerts within the platform.