Program Image Deep Learning

Deep Learning

Short or summer course

Erasmus University Rotterdam mapmarker icon Rotterdam Research university
Institution Logo Erasmus University Rotterdam

This one-week Deep Learning course covers theoretical and practical aspects, state-of-the-art deep learning architectures and application examples.

We offer a highly interactive remote learning environment.

The lectures will introduce to students the fundamental building blocks of deep learning methods and the weaknesses and strengths of the different architectures. Students will learn how to tailor a model for a particular application. During tutorials students practice the theory using exercises and have the opportunity to ask for additional explanation for those parts of the material perceived as more difficult. Computer lab sessions aim at making the material come alive and train students in how the methods learnt in class can actually be applied to data. The lab sessions are meant to work on the assignments, such that the students automatically keep up with the material.

Language

English

Title

-

Duration

5 days

ECTS credits

Accreditation

Information not available

Numerus Fixus

Tuition fee 2023/2024

€ 800

€ 800


Admission

Application requirements

The summer course welcomes Master's and PhD students, alumni, professionals in economics and related fields, who are interested in deep learning. The level is introductory, targeted at participants who would like to familiarize themselves with the topic, and acquire a good basis from which to approach deep learning potential applications.

Check when you can start and what you have to pay!

Tuition fees  
€ 800
€ 800
Information not available
Start date App. deadline EU/EEA App. deadline Non-EU/EEA
24 Jul '23 1 Jun '23 -

Contact

Erasmus University Rotterdam

Main address
Burgemeester Oudlaan 50
3062 PA Rotterdam
010 - 4081111

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