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#9: RecPack and Modularized Personalization by Froomle with Lien Michiels and Robin Verachtert

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Manage episode 341305916 series 3288795
Content provided by Marcel Kurovski. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Marcel Kurovski 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.

In episode number nine of Recsperts we talk with the creators of RecPack which is a new Python package for recommender systems. We discuss how Froomle provides modularized personalization for customers in the news and e-commerce sectors. I talk to Lien Michiels and Robin Verachtert who are both industrial PhD students at the University of Antwerp and who work for Froomle. We also hear about their research on filter bubbles as well as model drift along with their RecSys 2022 contributions.

In this episode we introduce RecPack as a new recommender package that is easy to use and to extend and which allows for consistent experimentation. Lien and Robin share with us how RecPack evolved, its structure as well as the problems in research and practice they intend to solve with their open source contribution.
My guests also share many insights from their work at Froomle where they focus on modularized personalization with more than 60 recommendation scenarios and how they integrate these with their customers. We touch on topics like model drift and the need for frequent retraining as well as on the tradeoffs between accuracy, cost, and timeliness in production recommender systems.

In the end we also exchange about Lien's critical reception of using the term 'filter bubble', an operationalized definition of them as well as Robin's research on model degradation and training data selection.

Enjoy this enriching episode of RECSPERTS - Recommender Systems Experts.

Links from the Episode:

Papers:

General Links:

  • (03:23) - Introduction Lien Michiels
  • (07:01) - Introduction Robin Verachtert
  • (09:29) - RecPack - Python Recommender Package
  • (52:31) - Modularized Personalization in News and E-commerce by Froomle
  • (01:09:54) - Research on Model Drift and Filter Bubbles
  • (01:18:07) - Closing Questions
  continue reading

29 episodes

Artwork
iconShare
 
Manage episode 341305916 series 3288795
Content provided by Marcel Kurovski. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Marcel Kurovski 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.

In episode number nine of Recsperts we talk with the creators of RecPack which is a new Python package for recommender systems. We discuss how Froomle provides modularized personalization for customers in the news and e-commerce sectors. I talk to Lien Michiels and Robin Verachtert who are both industrial PhD students at the University of Antwerp and who work for Froomle. We also hear about their research on filter bubbles as well as model drift along with their RecSys 2022 contributions.

In this episode we introduce RecPack as a new recommender package that is easy to use and to extend and which allows for consistent experimentation. Lien and Robin share with us how RecPack evolved, its structure as well as the problems in research and practice they intend to solve with their open source contribution.
My guests also share many insights from their work at Froomle where they focus on modularized personalization with more than 60 recommendation scenarios and how they integrate these with their customers. We touch on topics like model drift and the need for frequent retraining as well as on the tradeoffs between accuracy, cost, and timeliness in production recommender systems.

In the end we also exchange about Lien's critical reception of using the term 'filter bubble', an operationalized definition of them as well as Robin's research on model degradation and training data selection.

Enjoy this enriching episode of RECSPERTS - Recommender Systems Experts.

Links from the Episode:

Papers:

General Links:

  • (03:23) - Introduction Lien Michiels
  • (07:01) - Introduction Robin Verachtert
  • (09:29) - RecPack - Python Recommender Package
  • (52:31) - Modularized Personalization in News and E-commerce by Froomle
  • (01:09:54) - Research on Model Drift and Filter Bubbles
  • (01:18:07) - Closing Questions
  continue reading

29 episodes

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