Case Study
Monday, March 10
09:00 AM - 09:30 AM
Live in Munich
Less Details
In our data driven world, embeddings getting more and more important. Embeddings are a method for representing complex data in dense vector spaces, tracing their evolution from pre-transformer approaches to the powerful transformer-based models used today. The pivotal role of embeddings across diverse applications are reaching from natural language processing to computer vision, where they facilitate breakthroughs in data understanding and processing. Additionally, it’s crucial to know the strategies for evaluating and managing embeddings, ensuring their effective application across various domains.
In this session, you will learn more about:
Doğukan Sönmez is a Machine Learning Engineer and Project Lead at BMW Group since 2022. A Marmara University Computer Science graduate, he specializes in AI-driven solutions for automotive innovation, focusing on vehicle performance and manufacturing efficiency.