Machine Learning Engineer , WFI Field: Data, Greater London

TN United Kingdom
London
4 days ago
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Social network you want to login/join with:Machine Learning Engineer, WFI Field: Data, Greater LondonClient: Amazon UK Services Ltd. - A10Location: Greater London, United KingdomEU work permit required: YesJob Reference: 0efdac968844Job Views: 6Posted: 03.03.2025Expiry Date: 17.04.2025Job Description: Want to work for a fast-paced, innovative team? Want to work on ground-breaking initiatives? Want to work on problems that have massive scale but also need high precision? We are seeking a strong data science leader for our Workforce Staffing organization.

Skills, Experience, Qualifications, If you have the right match for this opportunity, then make sure to apply today.Workforce Staffing is responsible for hiring hourly associates into our global fulfillment operation. Each year we hire over 1 million associates across the globe. Workforce Intelligence (WFI), a subsidiary of Workforce Staffing (WFS), is responsible for driving decisions that help Workforce Staffing deliver the scale and precision it needs while minimizing the cost of hiring. WFI manages data acquisition, engineering, research, science and products that help WFS make the best decisions. Hiring over 1 million associates around the world presents the largest staffing challenge in a private company environment. The complexity is high and precision is needed because over hiring leads to unnecessary increase in wage and under hiring leads to delayed delivery of products to Amazon’s customers. There are over a dozen levers that WFS can pull to manage the scale and precision of hiring.

Key job responsibilities:As a Machine Learning Engineer, you will work closely with science teams to bring research to production. This is a role that combines engineering knowledge, technical strength, and product focus. It will be your job to implement novel ML systems, product integrations, and performance optimizations. You will guide the direction of a MLOPS automation framework via collaboration with the engineering and research communities.You will collaborate with software engineering teams to integrate successful experimental results into complex Amazon production systems and you will provide support for business continuity on a rotating on-call basis.

A day in the life:Almost every day offers new challenges and opportunities for growth. One day may offer implementation of Self-Service MLOps tooling, while the next may focus on our operational excellence in maintaining our code base. Later in the week, you may sort technical challenges with our partners to help them enrich their products with our models. On some days or weeks, you may oversee our products and stand ready to intervene and provide support to partners consuming our models.

About the team:We work back to back to address the technical challenges of automation across a variety of products, software, and systems. Our scientists and machine learning engineers work in synergy to solve hard problems and enrich each other's skills. Together, we are a powerful team of global specialists bringing the potential of practical ML and AI to the max with impact on over a million candidates applying for a job at Amazon.

BASIC QUALIFICATIONS3+ years of non-internship professional software development experience3+ years experience and knowledge in MLOps, in deploying, operationalizing, and maintaining scalable AI/ML solutions in production1+ years of non-internship design or architecture (design patterns, reliability, and scaling) of new and existing systems experienceExperience programming with at least one software programming languageBachelor's degree in computer science or equivalentPREFERRED QUALIFICATIONS2+ years of full software development life cycle, including coding standards, code reviews, source control management, build processes, testing, and operations experienceMaster's degree in computer science or equivalentExperience in machine learning, data mining, information retrieval, and statistics.

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