Are you ready to make a global impact with your expertise in Machine Learning, Statistics, and Multimodality? Amazon is looking for an innovative and driven Applied Scientist to join our team and help shape the future of cutting-edge technology. In this role, you will design, develop, and deploy advanced machine-learning models to tackle some of the most complex and meaningful challenges in the digital world. From automating compliance processes to building systems capable of intelligent, autonomous classification, your work will directly enhance the experience of millions of customers on the largest online retail platform. This is your opportunity to collaborate with world-class scientists and engineers, advancing innovation in machine learning, natural language processing, and statistical modeling. Your contributions will extend beyond technology—transforming research into scalable solutions that redefine customer experience and operational efficiency. Whether publishing scientific papers, developing patents, or presenting your work to stakeholders, you'll have a platform to showcase your expertise while driving real-world impact. Conduct pioneering research in machine learning, statistics, and multimodal systems to create groundbreaking solutions for customer and operational challenges. Develop high-performance, production-ready code optimized for large-scale, high-traffic applications. Analyze vast datasets to uncover actionable insights, design scalable algorithms, and seize opportunities for innovation. Validate machine-learning models through rigorous statistical experiments involving millions of users. Partner with software engineering teams to prototype and integrate successful models into global production systems. Collaborate with a multidisciplinary team of applied scientists and engineers to push the boundaries of innovation. About the Location This role is based in Luxembourg, home to Amazon's European headquarters. Nestled in the heart of Europe and bordered by France, Belgium, and Germany, Luxembourg is a vibrant, multicultural hub offering a high standard of living and easy access to major European cities. Known for its thriving financial and tech sectors, Luxembourg combines innovation with a rich cultural scene and stunning natural landscapes. Discover more about life in Luxembourg at Promote Luxembourg. Key job responsibilities Push the boundaries of machine learning by developing cutting-edge models to classify products on Amazon's website. Leverage multimodal approaches, transformers, and computer vision to create state-of-the-art solutions. Dive into innovative research on ML techniques to overcome the challenge of meeting strict latency requirements for real-time online inference, shaping the future of seamless customer experiences! A day in the life A Day in the Life of an Applied Scientist II at Amazon As an Applied Scientist II at Amazon, each day is a blend of technical challenges, innovation, and collaboration. Here's a glimpse into a typical day: 8:30 AM – Start the Day with Focus The day begins with a quick check-in on emails, project updates, and pending code reviews. Any blockers flagged by the team are prioritized to keep progress smooth. 9:00 AM – Team Stand-Up Join the daily stand-up meeting with scientists, engineers, and stakeholders. Share updates on experiments, discuss challenges, and align on priorities. The collaborative environment ensures everyone is on the same page. 10:00 AM – Deep Dive into Research Dive into ongoing research tasks. This could mean reading the latest papers on transformers or multimodal learning, brainstorming ways to integrate new ideas into Amazon's systems, or designing experiments to test novel approaches. 12:00 PM – Lunch and Networking Take a break to recharge. Amazon offers opportunities to connect with peers over lunch, whether it's discussing industry trends or exploring ideas for cross-team collaboration. 1:00 PM – Model Development and Experimentation Head into coding and experimentation mode. You might be refining a multimodal model for product classification, training transformers on massive datasets, or fine-tuning a computer vision model to improve prediction accuracy. Metrics are monitored closely to ensure models meet Amazon's high standards. 3:30 PM – Collaboration Time Meet with engineers to optimize deployment strategies for models in production. Discussions often focus on meeting latency requirements for real-time inference without compromising accuracy. This synergy between science and engineering is key to delivering scalable solutions. 4:30 PM – Results Review and Insights Analyze experimental results, document findings, and prepare for upcoming iterations. Insights gained here shape the next steps, whether it's tweaking hyperparameters or exploring a new approach entirely. 5:30 PM – Wrap-Up Before wrapping up, check in with teammates on Slack or work on updating project documentation. Reflect on the day's achievements and prepare a to-do list for tomorrow. 6:00 PM – Personal Development and Learning Amazon values continuous learning, so evenings might include taking a course, attending a tech talk, or participating in a knowledge-sharing session within the team. As an Applied Scientist II at Amazon, no two days are exactly the same, but every day is filled with opportunities to solve challenging problems, contribute to impactful projects, and grow as a scientist. Basic Qualifications PhD, or a Master's degree and experience in CS, CE, ML or related field Experience in building models for business application Experience in patents or publications at top-tier peer-reviewed conferences or journals Experience programming in Java, C++, Python or re... Push Boundaries, Synergy, Brainstorming, Python, Innovation, Updates, Prototyping, Knowledge Transfer, Business, Experimentation, Unix, Findings, Projects, Production System, Contracts, Design, Slack, CS, Publications, High Standards, Linux, Dataset, Networking, Java, Conferences, Statistics, Expertise, Check-In, Transformers, Science, Customer Experience, Iteration, Strategies, Algorithms, Model development, Design, Data structure, Research, Headquarters, Machine learning, Training, Data Mining, Machine vision, Metric, Research Innovation, Realtime, Code review, Landscaping, Production, C++, Patent, Parsing, Journal, Updates Originele vacature is te vinden op StepStone.be – Maak nu een Jobagent aan op StepStone en vind je droombaan! https://bit.ly/2jPYsZC Vind gelijkaardige jobs, informatie over werkgevers en carrièretips op StepStone.be!
Original job ad is published on StepStone.be - Set up a Jobagent at StepStone now and find your dream job! https://bit.ly/2jPYsZC For similar jobs, information on employers and career tips visit StepStone.be!
La version originale de cette offre d'emploi est disponible sur stepstone.be – Créez maintenant votre Job Agent sur StepStone et trouvez le job de vos rêves ! https://bit.ly/2jPYsZC Trouvez des jobs similaires, des informations sur les employeurs qui recrutent et des conseils de carrière sur stepstone.be!