Business Intelligence Engineer

Amazon
London
1 month ago
Applications closed

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Job ID: 2807745 | ADCI - BLR 14 SEZ - F07

Are you passionate about working with Amazon-scale data, analytics, and data science? Do you love bringing data together from diverse systems and sources and working on critical analytics problems for understanding customer behavior and generating actionable insights? Does the idea of partnering with a team of highly experienced machine-learning scientists and engineers excite you? Science and Analytics team is looking for an experienced, self-driven business-intelligence engineer to help us synthesize data into knowledge across a large number of businesses to help independent authors bring their creativity to customers, detect fraudulent and abusive behavior, and democratize content creation in a safe, efficient, and exciting way. Our team has mature areas and green-field opportunities. We offer technical autonomy, value end-to-end ownership, and have a strong customer-focused culture.

Come join us as we revolutionize the book industry and deliver an amazing experience to our authors and readers.

Key job responsibilities

As a Business Intelligence Engineer at Amazon, you will connect with world leaders in your field working on similar problems. You will be working with massive-scale data and providing analytic support to scientists, product managers, engineers using these data. You will utilize your deep expertise in business analysis, metrics, reporting, and analytic tooling/languages like SQL, Excel, and others, to translate the data into meaningful insights. You will have ownership of the insights you are building for the business and will play an integral role in tactical decision-making for critical risk areas.

About the team

Minerva is a cross-functional team of highly experienced scientists, data engineers, and software engineers with a critical business mission making revolutionary leaps forward using massive-scale data with advanced analytics and machine learning and helping democratize the publishing industry. We build science-based systems for marketing and content-discovery for indie authors, fraud/abuse, and content risk. We also use science to optimize manufacturing, fulfillment, and quality processes for our Print On Demand (POD) business.

BASIC QUALIFICATIONS

  1. 3+ years of analyzing and interpreting data with Redshift, Oracle, NoSQL etc. experience
  2. Experience with data visualization using Tableau, Quicksight, or similar tools
  3. Experience with data modeling, warehousing and building ETL pipelines
  4. Experience in Statistical Analysis packages such as R, SAS and Matlab
  5. Experience using SQL to pull data from a database or data warehouse and scripting experience (Python) to process data for modeling

PREFERRED QUALIFICATIONS

  1. Experience with AWS solutions such as EC2, DynamoDB, S3, and Redshift
  2. Experience in data mining, ETL, etc. and using databases in a business environment with large-scale, complex datasets

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 visitherefor more information.

Posted:February 28, 2025 (Updated about 2 hours ago)

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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