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Causal Inference for Drug Repurposing & CausalLib | Ehud Karavani Ep 18 | CausalBanditsPodcast.com

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Manage episode 424096507 series 3526805
Contenuto fornito da Alex Molak. Tutti i contenuti dei podcast, inclusi episodi, grafica e descrizioni dei podcast, vengono caricati e forniti direttamente da Alex Molak o dal partner della piattaforma podcast. Se ritieni che qualcuno stia utilizzando la tua opera protetta da copyright senza la tua autorizzazione, puoi seguire la procedura descritta qui https://it.player.fm/legal.

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Was Deep Learning Revolution Bad For Causal Inference?
Did deep learning revolution slowed down the progress in causal research?
Can causality help in finding drug repurposing candidates?
What are the main challenges in using causal inference at scale?
Ehud Karavani, the author of the CausalLib Python library and Researcher at IBM Research shares his experiences and thoughts on these challenging questions.
Ehud believes in the power of good code, but for him code is not only about software development.
He sees coding as an inseparable part of modern-day research.
A powerful conversation for anyone interested in applied causal modeling.
In this episode we discuss:

  • Can causality help in finding drug repurposing candidates?
  • Challenges in data processing for causal inference at scale
  • Motivation behind Python causal inference library CausalLib
  • Working at IBM Research Ready to dive in?

About The Guest
Ehud Karavani, MSc is Research Staff Member at IBM Research in the Causal Machine Learning for Healthcare & Life Sciences Group. He focuses on high-throughput causal inference for finding new indications for existing drugs using electronic health records and insurance claims data. He's the original author of Causallib - one of the first Python libraries specialized in causal inference.
Connect with Ehud:

About The Host
Aleksander (Alex) Molak is an independent machine learning researcher, educator, entrepreneur and a best-selling author in the area of causality.
Connect with Alex: Alex on the Internet
Links
Links for this episode can be found here
Video version of this episode can be found here.

Support the show

Causal Bandits Podcast
Causal AI || Causal Machine Learning || Causal Inference & Discovery
Web: https://causalbanditspodcast.com
Connect on LinkedIn: https://www.linkedin.com/in/aleksandermolak/
Join Causal Python Weekly: https://causalpython.io
The Causal Book: https://amzn.to/3QhsRz4

  continue reading

Capitoli

1. Causal Inference for Drug Repurposing & CausalLib | Ehud Karavani Ep 18 | CausalBanditsPodcast.com (00:00:00)

2. [Ad] Rumi.ai (00:20:23)

3. (Cont.) Causal Inference for Drug Repurposing & CausalLib | Ehud Karavani Ep 18 | CausalBanditsPodcast.com (00:21:12)

28 episodi

Artwork
iconCondividi
 
Manage episode 424096507 series 3526805
Contenuto fornito da Alex Molak. Tutti i contenuti dei podcast, inclusi episodi, grafica e descrizioni dei podcast, vengono caricati e forniti direttamente da Alex Molak o dal partner della piattaforma podcast. Se ritieni che qualcuno stia utilizzando la tua opera protetta da copyright senza la tua autorizzazione, puoi seguire la procedura descritta qui https://it.player.fm/legal.

Send us a text

Was Deep Learning Revolution Bad For Causal Inference?
Did deep learning revolution slowed down the progress in causal research?
Can causality help in finding drug repurposing candidates?
What are the main challenges in using causal inference at scale?
Ehud Karavani, the author of the CausalLib Python library and Researcher at IBM Research shares his experiences and thoughts on these challenging questions.
Ehud believes in the power of good code, but for him code is not only about software development.
He sees coding as an inseparable part of modern-day research.
A powerful conversation for anyone interested in applied causal modeling.
In this episode we discuss:

  • Can causality help in finding drug repurposing candidates?
  • Challenges in data processing for causal inference at scale
  • Motivation behind Python causal inference library CausalLib
  • Working at IBM Research Ready to dive in?

About The Guest
Ehud Karavani, MSc is Research Staff Member at IBM Research in the Causal Machine Learning for Healthcare & Life Sciences Group. He focuses on high-throughput causal inference for finding new indications for existing drugs using electronic health records and insurance claims data. He's the original author of Causallib - one of the first Python libraries specialized in causal inference.
Connect with Ehud:

About The Host
Aleksander (Alex) Molak is an independent machine learning researcher, educator, entrepreneur and a best-selling author in the area of causality.
Connect with Alex: Alex on the Internet
Links
Links for this episode can be found here
Video version of this episode can be found here.

Support the show

Causal Bandits Podcast
Causal AI || Causal Machine Learning || Causal Inference & Discovery
Web: https://causalbanditspodcast.com
Connect on LinkedIn: https://www.linkedin.com/in/aleksandermolak/
Join Causal Python Weekly: https://causalpython.io
The Causal Book: https://amzn.to/3QhsRz4

  continue reading

Capitoli

1. Causal Inference for Drug Repurposing & CausalLib | Ehud Karavani Ep 18 | CausalBanditsPodcast.com (00:00:00)

2. [Ad] Rumi.ai (00:20:23)

3. (Cont.) Causal Inference for Drug Repurposing & CausalLib | Ehud Karavani Ep 18 | CausalBanditsPodcast.com (00:21:12)

28 episodi

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