RelationalAI
01 January 2020
less than a minute read
This tutorial provides an end-to-end pipeline for performing image segmentation using the state-of-art deep learning approaches and public datasets.
Authors: Yuanbo Wang, Osama Sakhi, Ala Eddine Ayadi, Matthew Hagen, Estelle Afshar. 2020.
In Proceedings of the 26th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining (KDD ‘20).
Molham shares some history of relational databases, trends in modern cloud-native database systems, and the innovations pioneered at RelationalAI to bring deep learning with relations from idea to reality.
Read MoreThis incredible panel of experts gathered to discuss the current state of AI and machine learning workloads inside databases. The panel discussed new techniques, technologies, and recent papers that progress our understanding of what is possible. Q&A among the panel and from the audience concludes this deep and wide ranging conversation.
Read MoreThis talk explores several techniques to improve the runtime performance of machine learning by taking advantage of the underlying structure of relational data. While most data scientists use relational data in their work, the data science tooling that works with relational data is quite lacking today. Let’s explore these new techniques and see how we can drastically improve machine learning through a database-oriented lens.
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