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Software Development Manager III, Geospatial

Amazon
London
8 months ago
Applications closed

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Software Development Manager III, Geospatial

The Address Intelligence and Experience (AIX) team is part of Amazon Last Mile Technology and is responsible for ensuring best-in-class delivery experience for customers who shop on Amazon. The AIX team does this by learning all it can about every possible delivery location on the planet and using these inputs to drive faster delivery speed, lower cost, and most delivery convenience all at once and at scale.


Would you like to make an impact on each package delivered by Amazon? Our team aims to make every address printed on an Amazon shipping label accurate and deliverable, while ensuring we have additional intelligence such as access codes, location photos, geocodes, business hours, and customer delivery preferences. To achieve this worldwide, we focus on building comprehensive address data for the regions and on developing sophisticated ML-based software that recognizes and validates customer addresses, learns from historical data as well as through crowdsourced intelligence. While all our platforms and technology have to be global and scalable, our solutions are also customized for each region given that addresses are structured and managed very differently across countries.


In this role, you will be part of a world-class software engineering team that works on some of the most complex technology problems. You will be responsible for driving system architecture, leading the development and launch of core product features. You will have an opportunity to explore full-stack development to build multiple customer-facing experiences on the Retail website that enable millions of customers to provide how Amazon delivers the shipments to them. You will provide technical leadership to the team, drive best practices, mentor other engineers, and drive continuous improvements in engineering and operational excellence. You will lead a 2-pizza team that will lead multiple architectural initiatives.


Key Job Responsibilities

As a software development manager, you will lead a 2-pizza team leading multiple architectural initiatives in the Geospatial realm. You will work with multiple stakeholders and partner teams while tackling deep big data problems.


BASIC QUALIFICATIONS

- 7+ years of engineering experience
- 3+ years of engineering team management experience
- 8+ years of leading the definition and development of multi-tier web services experience
- Knowledge of engineering practices and patterns for the full software/hardware/networks development life cycle, including coding standards, code reviews, source control management, build processes, testing, certification, and livesite operations
- Experience partnering with product or program management teams


PREFERRED QUALIFICATIONS

- Experience in communicating with users, other technical teams, and senior leadership to collect requirements, describe software product features, technical designs, and product strategy
- Experience in recruiting, hiring, mentoring/coaching, and managing teams of Software Engineers to improve their skills, and make them more effective product software engineers.

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