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Graph-based technologies became first-class citizens in various industries and many practical applications. Still, building performant and reliable machine learning pipelines over graph data, e.g., graph machine learning applications and products, remains a non-trivial task.
This panel discussion brings together academic and industrial experts from fields where Graph ML yields significant gains and greatly improves traditional processes. In addition to highlighting successful business cases, the panel concentrates on questions often dismissed or hidden behind the curtains of modern Graph ML applications.
In particular, we will talk about the origins of graph data, its modeling, organization, and processing aspects; best communication interfaces; bridging a gap between products and ML algorithms as well as measuring their practical impact.
On a higher level, the panel will discuss upcoming trends in industrial Graph ML and prospective disruptive applications.
Key Topics
Target Audience
Goals
Session outline:
Panelists:
Mikhail Galkin. Researcher, Mila | McGill University
Dr. Tiffany Callahan. Researcher, University of Colorado, Anschutz Medical Campus
Andreea Deac. Researcher, Mila | Université de Montréal
Dr. Charles Hoyt. Researcher, Harvard Medical School, Laboratory of Systems Pharmacology
Sergei Ivanov. Research Scientist, Criteo AI Lab
---
Connected Data London 2024 has been announced!.
December 11-13, etc Venues St. Paul’s, City of London
Check #CDL24 for more Presentations, Keynotes, Masterclasses, and Workshops on cutting-edge topics from industry leaders and innovators: https://connected-data.london
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Graph-based technologies became first-class citizens in various industries and many practical applications. Still, building performant and reliable machine learning pipelines over graph data, e.g., graph machine learning applications and products, remains a non-trivial task.
This panel discussion brings together academic and industrial experts from fields where Graph ML yields significant gains and greatly improves traditional processes. In addition to highlighting successful business cases, the panel concentrates on questions often dismissed or hidden behind the curtains of modern Graph ML applications.
In particular, we will talk about the origins of graph data, its modeling, organization, and processing aspects; best communication interfaces; bridging a gap between products and ML algorithms as well as measuring their practical impact.
On a higher level, the panel will discuss upcoming trends in industrial Graph ML and prospective disruptive applications.
Key Topics
Target Audience
Goals
Session outline:
Panelists:
Mikhail Galkin. Researcher, Mila | McGill University
Dr. Tiffany Callahan. Researcher, University of Colorado, Anschutz Medical Campus
Andreea Deac. Researcher, Mila | Université de Montréal
Dr. Charles Hoyt. Researcher, Harvard Medical School, Laboratory of Systems Pharmacology
Sergei Ivanov. Research Scientist, Criteo AI Lab
---
Connected Data London 2024 has been announced!.
December 11-13, etc Venues St. Paul’s, City of London
Check #CDL24 for more Presentations, Keynotes, Masterclasses, and Workshops on cutting-edge topics from industry leaders and innovators: https://connected-data.london