At Fashion/Fitness & Cross-category tech, we leverage advanced AI technologies, including the latest Large Language Models (LLMs) and Generative AI (GenAI), to build ranking and recommendation models to help customer find New and High-value products that are on-trend, in-season, and in alignment with consumers’ interests.
We're seeking innovative Applied Scientists passionate about leveraging advanced AI to tackle complex challenges in product intelligence, data integration, and knowledge discovery. In this role, you'll collaborate with our principal applied scientists, as well as teams across Amazon to drive customer-focused solutions and amplify the impact of your work on our global customer base.
Key job responsibilities
- Design and implement advanced AI models using the latest LLM and GenAI technologies to enhance product understanding, matching at unprecedented scale.
- Develop novel approaches to extract, generate, and validate product and customer attributes and relationships using multimodal AI, combining text, image, and structured data analysis.
- Create intelligent systems that can automatically surface high-quality products from large candidate pool.
- Implement advanced natural language processing and computer vision models to extract insights from diverse data sources, including web content, user-generated data, and product imagery.
- Develop innovative solutions for entity resolution, knowledge graph construction, and semantic reasoning to build a comprehensive understanding of the global product landscape.
- Collaborate with cross-functional teams to integrate AI-driven insights into Amazon's product selection strategies and decision-making processes.
- Lead the design and implementation of scalable, production-ready AI systems that can process billions of products efficiently on Amazon Web Services (AWS).
- Stay at the advance of AI research, continuously exploring and implementing new techniques in LLMs, GenAI, and multimodal learning to drive innovation in product intelligence.
- Contribute to the scientific community through publications, presentations, and collaborations with academic institutions.