Skip to main content

Data Engineer 新卒採用2026, LMEA Science

Job ID: 2852619 | Amazon Japan G.K.

DESCRIPTION

Have you ever ordered a product on Amazon and when that box with the smile arrived you wondered how it got to you so fast?
Have you wondered where it came from and how much it cost Amazon to deliver it to you?
If so, Amazon Logistics (AMZL), Last Mile team is for you. We manage the delivery of tens of millions of products every week to Amazon’s customers, achieving on-time delivery in a cost-effective manner to deliver a smile for our customers.
Amazon Logistics is looking for a customer focused, analytically and technically skilled Data Engineer to build cutting edge data and reporting solutions for AMZL leadership and BI teams. This position will be responsible for building and managing real time data pipelines, maintaining reporting infrastructures, work on complex automation pipelines leveraging AWS and building analytical tools to support our growing Amazon Logistics business in Japan.
The successful candidate will be able to effectively extract, transform, load and visualize critical data to improve the latency and accuracy of the existing data pipelines and drive faster analytics through data. This individual will work with business, software development and science teams to understand their data requirements and ensure all the teams have reliable data that drives effective business analytics. This role requires an individual with software development and data warehouse skills. The successful candidate will be a self-starter comfortable with ambiguity, with strong attention to detail, and enjoy working with large scale of data.

Application process:
Submit your resume in English by Jan 31 18:00 (After this time application window will be closed.)

Recruiting Process (Online):
1st interview
Final interviews (x 3)

Key job responsibilities
• Own the design, development, and maintenance of last mile data sets
• Manipulate/mine data from database tables (Redshift, Apache Spark SQL)
• Conduct deep dive investigations into issues related to incorrect and missing data
• Identify and adopt best practices in developing data pipelines and tables: data integrity, test design, build, validation, and documentation.
• Continually improve ongoing reporting and data processes in AMZL
• Work with in-house scientists, global supply chain, transportation and logistics teams, and software teams to identify new features and projects.
• Identify ways to automate complex processes through AWS.
• This is an individual contributor role that will partner with internal stakeholders across multiple teams, gathering requirements and delivering complete solutions

BASIC QUALIFICATIONS

• Bachelor's or Master’s degree in information systems, computer science or a related technical discipline.
• experience in data modeling, ETL, data warehousing, and transformation of large scale data sources using SQL, Redshift, Oracle, or other Big Data technologies.
• Experience in python programming
• Ability to work in a deadline-driven work environment; ability to re-prioritize on a regular basis in order to remain current with business needs.
• Ability to influence others in a positive and professional manner.
• Familiarity with AWS or strong interest to learn (Glue, Lambda, Fargate, etc.)
• Business proficiency in both English and Japanese

PREFERRED QUALIFICATIONS

• Master degree in Computer Science, Information Technology, Engineering or Math/Statistics/Finance or related discipline.
• Advanced knowledge and expertise with Data modelling skills, Advanced SQL with Redshift, postgresql, and Columnar Databases.

Our inclusive culture empowers Amazonians to deliver the best results for our customers. If you have a disability and need a workplace accommodation or adjustment during the application and hiring process, including support for the interview or onboarding process, please visit https://amazon.jobs/content/en/how-we-hire/accommodations for more information. If the country/region you’re applying in isn’t listed, please contact your Recruiting Partner.