▷ [15h Left] Software Development Engineer, PXT ITALEGENDS

Amazon
London
2 months ago
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Software Development Engineer, PXT ITA LEGENDS Job ID:2897426 | Amazon Development Centre (Scotland) Limited Do you wanta role with deep meaning and the ability to make a massive impact?Hiring top talent is not only critical to Amazon’s success—it canliterally change the world. As part of the Intelligent TalentAcquisition (ITA) team, youll have the opportunity to reinvent thehiring process and deliver unprecedented scale, sophistication, andaccuracy that Amazons Talent Acquisition operations need. ITA is anindustry-leading people science and technology organization made upof scientists, engineers, analysts, product professionals and more.Our shared goal is to fairly and precisely connect the right peopleto the right jobs. You’ll work on state-of-the-art research,advanced software tools, new AI systems, and machine learningalgorithms to solve complex hiring challenges. Leveraging Amazonsin-house tech stack built on AWS, youll have the autonomy andflexibility to bring innovative solutions to life. Join ITA totransform the hiring landscape and make a meaningful difference inpeoples lives. Were seeking an exceptional Software DevelopmentEngineer to join our Lead Generation and Detection Services(LEGENDS) organization within ITA. This role offers the excitingopportunity to be part of a newly established two-pizza team whiledriving the evolution of our existing services and pioneering newAI/ML-powered recruiting products. Key job responsibilities 1. Leadcomplex technical projects and make key architectural decisions forlarge-scale systems 2. Design and implement scalable solutionswhile maintaining high coding standards and best practices 3.Mentor junior engineers and provide technical leadership throughcode reviews and knowledge sharing 4. Partner with product andcross-functional teams to translate business requirements intotechnical solutions 5. Drive operational excellence through systemreliability, monitoring, and automated alerting systems 6. Identifyand resolve operational bottlenecks to improve system reliabilityand performance 7. Participate in and support 24x7 on-callrotations, leading incident response and post-mortems 8. Contributeto technical strategy and make decisions that balance businessneeds with technical trade-offs 9. Lead design reviews and providetechnical direction for critical initiatives 10. Collaborate acrossteams to drive engineering excellence and innovation BASICQUALIFICATIONS 1. Experience (non-internship) in professionalsoftware development 2. Experience programming with at least onemodern language such as Java, C++, or C# including object-orienteddesign 3. Bachelors degree or equivalent PREFERRED QUALIFICATIONS1. Bachelors degree in computer science or equivalent 2. Experiencewith full software development life cycle, including codingstandards, code reviews, source control management, buildprocesses, testing, and operations Amazon is an equal opportunitiesemployer. We believe passionately that employing a diverseworkforce is central to our success. We make recruiting decisionsbased on your experience and skills. We value your passion todiscover, invent, simplify and build. Amazon is committed to adiverse and inclusive workplace. If you have a disability and needa workplace accommodation or adjustment during the application andhiring process, including support for the interview or onboardingprocess, please visithttps://amazon.jobs/content/en/how-we-hire/accommodations for moreinformation. J-18808-Ljbffr

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