Noah Weber

Geometric deep learning for drug discovery

What if we could design drugs for the 80% of proteins current methods can't target? Geometric deep learning is making it possible.

Geometric deep learning for drug discovery
#1about 2 minutes

Why many common diseases remain untreatable

Over 80% of pathogenic proteins are considered 'undruggable' because traditional inhibition methods are ineffective for them.

#2about 4 minutes

Introducing targeted protein degradation technology

This biotechnology shifts the paradigm from inhibiting symptoms to eliminating the cause of disease by degrading pathogenic proteins.

#3about 7 minutes

Using geometric deep learning for molecular data

Graphs provide a native, non-Euclidean way to represent complex molecular structures and interactions, which is essential for effective machine learning models.

#4about 11 minutes

An overview of the AI drug discovery pipeline

The process involves predicting protein-ligand interactions, generating molecular conformations, and using Bayesian optimization to find optimal candidates.

#5about 1 minute

Optimizing molecular poses with a fitness function

Bayesian optimization and active learning are used to efficiently search the high-dimensional space of molecular rotations and translations to find the best interaction.

#6about 3 minutes

Generating novel molecules with generative models

Generative models create entirely new linker molecules de novo, optimizing for properties like low toxicity and minimal energy during generation.

#7about 3 minutes

Building a cloud architecture for large-scale ML

A custom cloud architecture using AWS spot instances and persistent storage is necessary to handle the immense computational cost of geometric deep learning.

#8about 3 minutes

The key enablers for AI-driven drug discovery

Success requires a combination of high-quality data, advanced algorithms like geometric deep learning, cloud computing power, and an interdisciplinary team of domain experts.

#9about 9 minutes

Q&A on team collaboration and technical choices

The discussion covers the challenges of communication in interdisciplinary teams, the rationale for a multi-cloud strategy, and specific technical questions about the models.

Related jobs
Jobs that call for the skills explored in this talk.

Featured Partners

From learning to earning

Jobs that call for the skills explored in this talk.