PředmětyPředměty(verze: 945)
Předmět, akademický rok 2023/2024
   Přihlásit přes CAS
4EU+ Deep Learning for Life Sciences (DeepLife) - MB151P143
Anglický název: 4EU+ Deep Learning for Life Sciences (DeepLife)
Český název: Hluboké učení pro přírodní vědy
Zajišťuje: Katedra buněčné biologie (31-151)
Fakulta: Přírodovědecká fakulta
Platnost: od 2023
Semestr: letní
E-Kredity: 5
Způsob provedení zkoušky: letní s.:
Rozsah, examinace: letní s.:2/2, Zk [HT]
Počet míst: 20
Minimální obsazenost: neomezen
4EU+: ano
Virtuální mobilita / počet míst pro virtuální mobilitu: ne
Stav předmětu: vyučován
Jazyk výuky: angličtina
Vysvětlení: dodatečně založeno 15.2.24
Poznámka: povolen pro zápis po webu
Garant: Mgr. Marian Novotný, Ph.D.
Vyučující: doc. RNDr. David Hoksza, Ph.D.
Mgr. Marian Novotný, Ph.D.
Ing. Martin Schätz, Ph.D.
Anotace - angličtina
Poslední úprava: Mgr. Marian Novotný, Ph.D. (16.02.2024)
Project DeepLife intends to be a comprehensive and application-oriented teaching project which will introduce students to the most advanced algorithms and applications of deep learning in life sciences. For this, we will build on existing complementarities between the bioinformatics master programs of the five universities identified during the first educational project, and offer a new and comprehensive course covering the different aspects of Deep learning approaches in life sciences. We will set a strong focus on complementary application areas in life sciences and practical implementations. We will cover three very active application areas of deep learning in life sciences: (1) structural bioinformatics, (2) application of deep-learning to single-cell genomics, (3) biomedical image analysis. This course will be held in hybrid mode, with online lectures by teachers from different institutions and on-site practical exercises in the form of Q&A sessions in smaller groups. Our objective is to bring together the strong and complementary expertise in structural bioinformatics (Paris, Prag, Warsaw), single-cell genomics (Heidelberg, Warsaw) and image analysis (Heidelberg, Prag, Milano).

The course is composed of online lectures and online exercises in the form of notebooks that are students supposed to succesfully complete.

The course will be extended for best 15 students with an on-site 2-day hackathon during which mixed teams will work on small implementation projects around selected topics of deep-learning.
Sylabus - angličtina
Poslední úprava: Mgr. Marian Novotný, Ph.D. (16.02.2024)

Sylabus:

Date

Title

Speaker

26.02

Intro and Mathematical foundation to DL

Bartek Wilczynski (Warsaw)

04.03

Convolutional and Recurrent neural networks

Marco Frasca (Milano)

11.03

Autoencoders and variational autoencoders

Carl Herrmann (Heidelberg)

18.03

Attention mechanisms and transformers

Dario Malchiodi (Milano)

08.04

Transformers and RNN for sequence analysis

Dario Malchiodi (Milano)

15.04

Models for multimodal data integration

Britta Velten (Heidelberg)

22.04

VAE in single-cell genomics

Carl Herrmann (Heidelberg)

29.04

AF, EMSFold to predict structure of proteins

Joanna Sulkowska (Warsaw)

06.05

RNN, CNN models for topology/graph analysis in biopolymers

Joanna Sulkowska (Warsaw)

13.05

Deep learning models for protein-ligand binding site prediction

David Hoksza (Prague)

23.05

Diffusion models for protein design

Elodie Laine (Paris)

27.05

Intro to BioImage Analysis and Deep Learning Utilization

Martin Schatz (Prag)

03.06

Deep Architectures for sampling macromolecules

Grégoire Sergeant-Perthuis (Paris)

10.06

Deep learning for segmentation

Karl Rohr (Heidelberg)

 

 

 
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