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AI + Knowledge - a match made in heaven? | Panel Discussion

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Manage episode 306094082 series 2773575
Content provided by Connected Data World. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Connected Data World or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://staging.podcastplayer.com/legal.

What does graph have to do with machine learning?

A lot, actually. And it goes both ways

Machine learning can help bootstrap and populate knowledge graphs.

The information contained in graphs can boost the efficiency of machine learning approaches.

Machine learning, and its deep learning subdomain, make a great match for graphs. Machine learning on graphs is still a nascent technology, but one which is full of promise.

Amazon, Alibaba, Apple, Facebook and Twitter are just some of the organizations using this in production, and advancing the state of the art.

More than 25% of the research published in top AI conferences is graph-related.

Domain knowledge can effectively help a deep learning system bootstrap its knowledge, by encoding primitives instead of forcing the model to learn these from scratch.

Machine learning can effectively help the semantic modeling process needed to construct knowledge graphs, and consequently populate them with information.

Key Topics

  • What can knowledge-based technologies do for Deep Learning?
  • What is Graph AI, how does it work, what can it do?
  • What's next? What are the roadblocks and opportunities?

Target Audience

  • Machine Learning Practitioners
  • Data Scientists
  • Data Modelers
  • CxOs
  • Investors

Goals

  • Explore the interplay between machine learning and knowledge based technologies
  • Answer questions that matter
  • 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?
  • What are the next milestones / roadblocks?
  • Where are the opportunities for investment?

Session outline

  • Introduction
  • Meet and Greet
  • Setting the stage
  • Knowledge Graphs, meet Machine Learning
  • How can machine learning help create and populate knowledge graphs?
  • What kind of problems can we solve by using it?
  • Where is this used in production?
  • What is the current state of the art in knowledge graph bootstrapping and population?
  • What are the major roadblocks / goals, how could we address them, and what would that enable?
  • Who are some key players to keep an eye on?
  • Graph Machine Learning
  • What is special about Graph Machine Learning?
  • What kind of problems can we solve by using it?
  • Where is it used in production?
  • What is the current state of the art?
  • What are the major roadblocks / goals, how could we address them, and what would that enable?
  • Who are some key players to keep an eye on?

Format

  • Extended panel
  • Expert discussion, coordinated by moderator
  • 2 hours running time
  • Running time includes modules of expert discussion, interspersed with modules of audience Q&A / interaction

Level

  • Intermediate - Advanced

Prerequisite Knowledge

  • Basic understanding of Knowledge Graphs
  • Basic understanding of Machine Learning / Deep Learning

---

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

  continue reading

41 episodes

Artwork
iconShare
 
Manage episode 306094082 series 2773575
Content provided by Connected Data World. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Connected Data World or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://staging.podcastplayer.com/legal.

What does graph have to do with machine learning?

A lot, actually. And it goes both ways

Machine learning can help bootstrap and populate knowledge graphs.

The information contained in graphs can boost the efficiency of machine learning approaches.

Machine learning, and its deep learning subdomain, make a great match for graphs. Machine learning on graphs is still a nascent technology, but one which is full of promise.

Amazon, Alibaba, Apple, Facebook and Twitter are just some of the organizations using this in production, and advancing the state of the art.

More than 25% of the research published in top AI conferences is graph-related.

Domain knowledge can effectively help a deep learning system bootstrap its knowledge, by encoding primitives instead of forcing the model to learn these from scratch.

Machine learning can effectively help the semantic modeling process needed to construct knowledge graphs, and consequently populate them with information.

Key Topics

  • What can knowledge-based technologies do for Deep Learning?
  • What is Graph AI, how does it work, what can it do?
  • What's next? What are the roadblocks and opportunities?

Target Audience

  • Machine Learning Practitioners
  • Data Scientists
  • Data Modelers
  • CxOs
  • Investors

Goals

  • Explore the interplay between machine learning and knowledge based technologies
  • Answer questions that matter
  • 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?
  • What are the next milestones / roadblocks?
  • Where are the opportunities for investment?

Session outline

  • Introduction
  • Meet and Greet
  • Setting the stage
  • Knowledge Graphs, meet Machine Learning
  • How can machine learning help create and populate knowledge graphs?
  • What kind of problems can we solve by using it?
  • Where is this used in production?
  • What is the current state of the art in knowledge graph bootstrapping and population?
  • What are the major roadblocks / goals, how could we address them, and what would that enable?
  • Who are some key players to keep an eye on?
  • Graph Machine Learning
  • What is special about Graph Machine Learning?
  • What kind of problems can we solve by using it?
  • Where is it used in production?
  • What is the current state of the art?
  • What are the major roadblocks / goals, how could we address them, and what would that enable?
  • Who are some key players to keep an eye on?

Format

  • Extended panel
  • Expert discussion, coordinated by moderator
  • 2 hours running time
  • Running time includes modules of expert discussion, interspersed with modules of audience Q&A / interaction

Level

  • Intermediate - Advanced

Prerequisite Knowledge

  • Basic understanding of Knowledge Graphs
  • Basic understanding of Machine Learning / Deep Learning

---

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

  continue reading

41 episodes

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