Senior Data Engineer, Japan Consumer Innovation (JCI), JP Science and Data Technologies

Amazon
London
1 month ago
Applications closed

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Senior Data Engineer, Japan Consumer Innovation (JCI), JP Science and Data Technologies

Are you passionate about working with data and eager to make broad business impact in the rapidly evolving e-commerce business? Are you interested in building data and science solutions to drive strategic direction? Based in Tokyo, the JP Science and Data Technologies team designs, builds, operates, and scales the data infrastructure powering Amazon's retail business in Japan. Working with a diverse, global team serving customers and partners worldwide, you can make a significant impact while continuously learning and experimenting with cutting-edge technologies. The ideal senior data engineer thrives on working with large-scale data, excels in highly complex technical environments, and above all, has a passion for data.

You will spearhead the development of Generative AI and data-driven solutions to optimize retail business efficiency. Leveraging your deep experience in data infrastructure and passion for enabling data-driven business impact, you will work closely with economists, scientists, ML engineers and business teams to identify and implement strategic data opportunities.

Key Job Responsibilities

Your key responsibilities include:

  1. Create data solutions with AWS services such as Bedrock, Redshift, S3, Glue, EMR, Lambda, SageMaker, CloudWatch etc.
  2. Implement Generative AI and ML models by developing robust and scalable data architectures.
  3. Develop and improve the operational excellence, data quality, monitoring and data governance.

BASIC QUALIFICATIONS

  1. Bachelor's degree in computer science, engineering, mathematics, or a related technical discipline.
  2. 5+ years of experience as a Data Engineer or in a similar role.
  3. 5+ years of experience with data modeling, data warehousing, ETL/ELT pipelines and BI tools.
  4. Experience with cloud-based big data technology stacks (e.g., Hadoop, Spark, Redshift, S3, Glue, SageMaker etc.)
  5. Knowledge of data management and data storage principles.
  6. Experience in at least one modern object-oriented programming language (Python, Java).
  7. Business level English (written and verbal).

PREFERRED QUALIFICATIONS

  1. Experience working with AWS technologies (e.g., Lambda, CloudWatch, QuickSight, Athena, EMR, DynamoDB, RDS, etc.).
  2. Experience in MLOps, generative AI, large language models (LLMs), and collaborating with data science teams.
  3. Experience providing technical leadership and mentoring other engineers on best practices for data engineering.
  4. Experience in software engineering - agile processes, coding standards/reviews, source control, CI/CD, testing, deployment, and production operations.
  5. Proficiency in Japanese language (verbal and written).

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 visitthis linkfor more information.

Amazon is committed to a diverse and inclusive workplace. Amazon is an equal opportunity employer and does not discriminate on the basis of race, national origin, gender, gender identity, sexual orientation, protected veteran status, disability, age, or other legally protected status.

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