Machine Learning Engineer | Amazon.com Services LLC | 68,352 reviews

Local Jobs Amazon.com Services LLC in Machine Learning
  • United States, 68,352 reviews View on Map
  • Post Date : January 14, 2021
  • Apply Before : February 13, 2021
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Job Description

  • Bachelor’s or Masters in Computer Science or equivalent
  • 5+ years of as a full stack and/or backend development experience
  • 5+ years of in system design, object programming, test driven development
  • 5+ years of with backend services in the cloud.
  • 5+ years of with the tools of the trade, including a variety of modern programming languages (Java, Javascript, C/C++, Objective C, Python) and open-source technologies (Linux, Spring, JQuery, PyFlask etc)

The Smart Home team is focused on making Alexa the user interface for the home. From the simplest voice commands (turn on the lights, turn down the heat) to use cases spanning home security, home entertainment, and the home environment, we are evolving Alexa into an intelligent, indispensable companion that automates daily routines, simplifies interaction with appliances and electronics, and helps customers get the most out of the technology in their lives.

As a Machine Learning SDE on the team you will develop design patterns, APIs, and high-scale services for machine learning that make the Smart Home intelligent. Your work will span Alexa skills, voice user interfaces, cloud services, and a rapidly-growing ecosystem of IoT devices. You will have the satisfaction of working on a product your friends and family can relate to, and want to use every day. Like the world of smart phones less than 10 years ago, this is a rare opportunity to have a giant impact on the way people live.

  • Experience designing internet-scale public APIs.
  • Experience building solutions for home networks, IoT device and cloud systems, context-awareness, pervasive computing, or home/industrial control systems.
  • Experience working with modern tools for big data processing and scalable machine learning (e.g., AWS, Kafka, Kinesis, Apache Spark, Hadoop, SQL, NoSQL).
  • Experience defining and championing best practices across a software team.
  • Comfortable presenting to senior management, business stakeholders, and external partners.

Amazon is an Equal Opportunity Employer – Minority / Women / Disability / Veteran / Gender Identity / Sexual Orientation

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