1 hr 35 min

Graph Machine Learning - Research and Industry Applications | Panel Discussion The Connected Data Podcast

    • Technology

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


Graph Machine LearningDeep LearningGraph Data ManagementKnowledge GraphsGraph ML in Production

Target Audience


Machine Learning PractitionersData ScientistsData ModelersCxOsInvestors

Goals


Explore the interplay between machine learning and knowledge based technologiesHow to get the “actionable” knowledge from the graph data?How can those approaches complement one another, and what would that unlock?What is the current state of the art, how and where is it used in the wild?NLPBiomedIndustry (say, Ad Tech)What are the next milestones / roadblocks?Where are the opportunities for investment?We know drug discovery is on its highs, NLP is being democratized rapidly, what else?

Session outline:


IntroductionMeet and GreetSetting the stageKnowledge Graphs, meet Graph Machine LearningIt’s all about the data:How do you create, maintain, and process graphs?Databases or tabular sources?Do you consider data modeling aspects?Best communication interface: natural language or structured query languages?How can machine learning help create and populate graphs (including KGs)?Cover some of the current state of the artAn edge - does it appear naturally or derived from node similarities?What kind of problems can we solve by using it?NLP, Biomed, Industry (say, adtech)How academic datasets align with real-world tasksWhere is this used in production?Success stories and business casesWhat are the major roadblocks / goals, how could we address them, and what would that enable?How to bridge the gap between business goals and Graph ML models?How do we measure the impact of applying ML models in real-world tasks? Metrics, A/B testing, generally about setting things in productionWho are some key players to keep an eye on?Both from industry and research

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


---


Subscribe to our YouTube channel for more gems from the vault:


https://www.youtube.com/@ConnectedDataWorld

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


Graph Machine LearningDeep LearningGraph Data ManagementKnowledge GraphsGraph ML in Production

Target Audience


Machine Learning PractitionersData ScientistsData ModelersCxOsInvestors

Goals


Explore the interplay between machine learning and knowledge based technologiesHow to get the “actionable” knowledge from the graph data?How can those approaches complement one another, and what would that unlock?What is the current state of the art, how and where is it used in the wild?NLPBiomedIndustry (say, Ad Tech)What are the next milestones / roadblocks?Where are the opportunities for investment?We know drug discovery is on its highs, NLP is being democratized rapidly, what else?

Session outline:


IntroductionMeet and GreetSetting the stageKnowledge Graphs, meet Graph Machine LearningIt’s all about the data:How do you create, maintain, and process graphs?Databases or tabular sources?Do you consider data modeling aspects?Best communication interface: natural language or structured query languages?How can machine learning help create and populate graphs (including KGs)?Cover some of the current state of the artAn edge - does it appear naturally or derived from node similarities?What kind of problems can we solve by using it?NLP, Biomed, Industry (say, adtech)How academic datasets align with real-world tasksWhere is this used in production?Success stories and business casesWhat are the major roadblocks / goals, how could we address them, and what would that enable?How to bridge the gap between business goals and Graph ML models?How do we measure the impact of applying ML models in real-world tasks? Metrics, A/B testing, generally about setting things in productionWho are some key players to keep an eye on?Both from industry and research

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


---


Subscribe to our YouTube channel for more gems from the vault:


https://www.youtube.com/@ConnectedDataWorld

1 hr 35 min

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