Sr. Product Manager, Relay Spot Supply (RSS) (Basé à London)

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3 days ago
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Sr. Product Manager, Relay Spot Supply (RSS)

Job ID: 2955461 | Amazon EU SARL (UK Branch)

It’s no secret that Amazon relies on its technology to deliver millions of packages every day to its customers – on time, with low cost. The Middle Mile Transportation Technology organization builds complex software solutions that work across our vendors, warehouses, and carriers to optimize both time & cost of getting the packages delivered. Our services already handle thousands of requests per second, make business decisions impacting billions of dollars a year, integrate with a network of small and large carriers, owner operators and drivers worldwide, manage business rules for millions of unique products, and improve ordering and delivery experience for millions of online shoppers.
That said, this remains a fast-growing business and our technical journey has only started. With rapid expansion into new geographies, innovations in supply chain, unique delivery models for products ranging from Amazon Fresh groceries, ultra-fast Prime Now deliveries of big-screen TVs, increasingly complex transportation network, and growing number of shipments worldwide, we see a brand new opportunity to fundamentally change the way people get the stuff they need, and make a big impact by cutting billions of dollars of transportation costs from the ecosystem.
Our mission is to build the most efficient and optimal transportation solution on the planet, using our technology and engineering muscle as our biggest advantage. We aim to leverage cutting-edge technologies in big data, machine learning, optimization techniques, and operate high volume, low latency, and high availability services.

Key job responsibilities

  1. Deliver results by owning business performance through effective product management for RSS suite of products.
  2. Develop long-term demand and cost forecasts in partnership with business and finance partners.
  3. Think big by enhancing existing product features and pitch new ideas to scale business.
  4. Scale and develop existing products in EU like ROCA, QL and PAT tailored for EU marketplace.
  5. Coordinate between PM teams to optimize demand orchestration, UI/CX opportunities, and external market inputs.


A day in the life

As a part of this team you would work on technology product management for an exciting and confidential initiative in the middle mile transportation organization. You will regularly interact with executive leadership and work with business and development teams to define the product strategy, create the product development road map, and lead technology architecture and execution. You’ll work in a fast-paced environment and will be required to lead not only at the strategic level, but also tactically day-to-day by diving deep into business and technical domains. As a multi-discipline leader, the buck will stop with you - you will work alongside the engineering (dev and QA) organization. You are expected to have an established background in technology product development, excellent program management skills, great communication skills, and a motivation to achieve results in a fast-paced environment. You should be somebody who enjoys working on complex system software, is customer-centric, and feels strongly about building good software as well as making that software achieve its operational goals. Experience with building and operating mobile applications, web-based applications and/or web services-based applications, especially at massive scale, will be very applicable and helpful. Prior experience in risk and compliance disciplines will be a big plus as well.

BASIC QUALIFICATIONS

  1. Relevant experience of product or program management, product marketing, business development or technology.
  2. Bachelor's degree or equivalent.
  3. Experience owning/driving roadmap strategy and definition.
  4. Experience with end-to-end product delivery.
  5. Experience with feature delivery and tradeoffs of a product.
  6. Experience as a product manager or owner.
  7. Experience owning technology products.

PREFERRED QUALIFICATIONS

  1. Experience in influencing senior leadership through data-driven insights.
  2. Experience working across functional teams and senior stakeholders.

Amazon is an equal opportunities employer. We believe passionately that employing a diverse workforce is central to our success. We make recruiting decisions based on your experience and skills. We value your passion to discover, invent, simplify and build. Protecting your privacy and the security of your data is a longstanding top priority for Amazon. Please consult our Privacy Notice (https://www.amazon.jobs/en/privacy_page) to know more about how we collect, use and transfer the personal data of our candidates.

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