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Graph-Based Data Science: Hybrid AI meets data science process | Paco Nathan

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Manage episode 459567737 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://ppacc.player.fm/legal.

Python offers excellent libraries for working with graphs: semantic technologies, graph queries, interactive visualizations, graph algorithms, probabilistic graph inference, as well as embedding and other integrations with deep learning.

However, most of these approaches share little common ground, nor do many of them integrate effectively with popular data science tools (pandas, scikit-learn, spacy, pytorch), nor efficiently with popular data engineering infrastructure such as Spark, RAPIDS, Ray, Parquet, fsspect, etc.

In this podcast episode, Paco Nathan reviews kglab – an open source project that integrates most all of the above, and moreover provides ways to leverage disparate techniques in ways that complement each other, to produce Hybrid AI solutions for industry use cases.

Slides available: https://derwen.ai/s/kcgh

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If you liked this podcast, check #CDL24 for more Presentations, Keynotes, Masterclasses, and Panels on cutting-edge topics from industry leaders and innovators:

https://2024.connected-data.london/

  continue reading

41 episodes

Artwork
iconShare
 
Manage episode 459567737 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://ppacc.player.fm/legal.

Python offers excellent libraries for working with graphs: semantic technologies, graph queries, interactive visualizations, graph algorithms, probabilistic graph inference, as well as embedding and other integrations with deep learning.

However, most of these approaches share little common ground, nor do many of them integrate effectively with popular data science tools (pandas, scikit-learn, spacy, pytorch), nor efficiently with popular data engineering infrastructure such as Spark, RAPIDS, Ray, Parquet, fsspect, etc.

In this podcast episode, Paco Nathan reviews kglab – an open source project that integrates most all of the above, and moreover provides ways to leverage disparate techniques in ways that complement each other, to produce Hybrid AI solutions for industry use cases.

Slides available: https://derwen.ai/s/kcgh

---

If you liked this podcast, check #CDL24 for more Presentations, Keynotes, Masterclasses, and Panels on cutting-edge topics from industry leaders and innovators:

https://2024.connected-data.london/

  continue reading

41 episodes

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