Data Engineer, DSP Analytics
Amazon
DESCRIPTION
Do you enjoy diving deep into data, building data models and developing real-time and batch data pipelines which generate actionable insights? Are you looking for an opportunity to define end to end analytics roadmap, work with cross functional teams and leverage modern technologies and cloud solutions to develop analytics products. DSP Analytics team has an exciting opportunity for a Data Engineer to improve Amazon’s Delivery Service Partner (DSP) program through impactful data solutions.
The goal of Amazon’s DSP organization is to exceed the expectations of our customers by ensuring that their orders, no matter how large or small, are delivered as quickly, accurately, and cost effectively as possible. To meet this goal, Amazon is continually striving to innovate and provide best in class delivery experience through the introduction of pioneering new products and services in the last mile delivery space.
This person will play a key role in providing the end-to-end engineering solutions to support key business initiatives related to safety of drivers. If you are passionate about technologies, strongly biased to go deep to find insights and build scalable real time analytical platform, relentless in ensuring quality and reliability, and feel comfortable communicating with different levels of leadership, you are the candidate we are looking for!
You will develop new engineering patterns that leverage new cloud architectures, and will extend or migrate existing data pipelines to these architectures as needed. You will be responsible for designing and implementing complex data pipelines in Amazon's platform and other BI solutions to support the rapidly growing and dynamic business demand for data, and use it to deliver data-driven insights that will have an immediate impact on day-to-day decision-making at Amazon.
Key job responsibilities
• Lead and design complex data architectures, ensuring scalability, security, and alignment with business objectives
• Drive implementation of large-scale data pipelines and ETL processes using AWS technologies
• Identify and resolve system-wide data challenges, including performance bottlenecks and architectural deficiencies
• Establish data engineering best practices, including governance, security standards, and operational excellence
• Ensure data solutions are auditable, accessible, and maintainable across the organization
• Collaborate with cross-functional teams to deliver innovative data solutions
About the team
Attention Amazonians exploring new roles within our company! We've streamlined the process to ensure fair consideration for all internal candidates. If you're in the US or Canada, start by using the 'Request Informational' button at the top of the job listing to set up a meeting with the hiring manager. For those in other locations or if the Request Informational button is unavailable, please reach out directly to the hiring manager.
After making your Informational Request, allow seven days for a response from the hiring manager. You can check your status on Amazon Jobs or the internal transfer workflow portal, if available in your region. If your request is still under consideration after seven days, feel free to contact the hiring manager directly.
For more detailed information about the process, from pre-application to pre-offer stages, visit the Internal Candidate Resource on MyHR. This comprehensive guide provides FAQs and valuable guidance to support your internal transfer journey. Remember, this process is designed to make your transition as smooth as possible. If you have any questions along the way, don't hesitate to reach out to your HR partner. We're here to support your growth and development within Amazon.
We are the core Amazon DSP Business Intelligence team with the vision to enable data, insights and science driven decision-making. We have exceptionally talented and fun loving team members. In our team, you will have the opportunity to dive deep into complex business and data problems, drive large scale technical solutions and raise the bar for operational excellence. We love to share ideas and learning with each other. We are a relatively new team and do not carry legacy operational burden. We believe in promoting and using ideas to disrupt the status quo.