Data Engineer, WW Installments Customer Experience

Arlington, Virginia, USA

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Job summary
WW Installments is one of the fastest growing businesses within Amazon and we are looking for a Data Engineer to join the team. This group has been entrusted with a massive charter that will impact every customer that visits Amazon.com. We are building the next generation of features and payment products that maximize customer enablement in a simple, transparent, and customer obsessed way. Through these products, we will deliver value directly to Amazon customers improving the shopping experience for hundreds of millions of customers worldwide. Our mission is to delight our customers by building payment experiences and financial services that are trusted, valued, and easy to use from anywhere in any way.

As the Data Engineer within WW Installments, you will be responsible for designing and implementing data pipelines to support machine learning and business teams. This core capability is fundamental to the success of the business. You will have high visibility across Amazon businesses and leadership.


Key job responsibilities
This role will be responsible for:
• Build the WW Installments Customer Experience Analytics data platform that will be used by teams worldwide to access reporting, deep dives, and installment related insights.
• Build data pipelines to support customer facing machine learning algorithms and data science teams.
• Interface with other technology teams to extract, transform, and load data from a wide variety of data sources.
• Design, implement, and maintain production data pipelines including DQ, SLA, and data agreements across data, ML, and partner teams.
• Continually improve the reporting and analysis pipeline, automating and simplifying whenever possible, and enabling self-service support for stakeholders.
• Engage business stakeholders in constructive dialogues to convert business problems into data pipeline logic. Identifying new opportunities to influence business strategy and product vision using data.
• Support fellow engineers and scientists to deliver analytical projects and build proof of concept applications. Partner with fellow Data/Applied Scientists to implement scalable, automated infrastructure for data extraction, processing, computation, and delivery.
• Learn new technology and techniques to support product and process innovation.
• Work through significant business and technical ambiguity delivering on analytics roadmap across the team with autonomy.

Basic Qualifications


• Bachelor's degree in computer science, engineering, mathematics, or a related technical discipline
• 3+ years of industry experience in software development, data engineering, business intelligence, data science, or related field with a track record of manipulating, processing, and extracting value from large datasets
• Experience using big data technologies (Spark, EMR, etc.)
• Basic/Intermediate proficiency in programming language (Python and Scala) for automation of data extraction/processing, statistical computation, and/or web scraping.
• Ability to deal with ambiguity and competing objectives in a fast-paced environment.

Preferred Qualifications

• Master's degree in computer science, engineering, mathematics, or a related technical discipline
• A desire to work in a collaborative, intellectually curious environment.
• 5+ years of industry experience as a Data Engineer or related specialty (e.g., Software Engineer, Business Intelligence Engineer, Data Scientist, and Applied Scientist) with a track record of manipulating, processing, and extracting value from large datasets.
• Knowledge of software engineering best practices across the development lifecycle, including agile methodologies, coding standards, code reviews, source management, build processes, testing, and operations
• Coding proficiency in at least one modern programming language (Python, Scala, Java, etc)
• Experience building/operating highly available, distributed systems of data extraction, ingestion, and processing of large data sets
Experience building data products incrementally and integrating and managing datasets from multiple sources
• Query performance tuning skills using Unix profiling tools and SQL
• Experience leading large-scale data warehousing and analytics projects, including using AWS technologies – Redshift, S3, EC2, Data-pipeline and other big data technologies
• Experience providing technical leadership and mentor other engineers for the best practices on the data engineering space
• Experience with AWS, cloud computing
• Prior experience in tech, ecommerce, retail, or finance/banking industry



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. For individuals with disabilities who would like to request an accommodation, please visit https://www.amazon.jobs/en/disability/us.

* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰

Tags: Agile AWS Banking Big Data Business Intelligence Computer Science Data pipelines Data Warehousing Distributed Systems EC2 E-commerce Engineering Finance Machine Learning Mathematics Pipelines Python Redshift Scala Spark SQL Testing

Perks/benefits: Career development

Region: North America
Country: United States
Job stats:  0  0  0
Category: Engineering Jobs

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