
Budapest, Hungary
Building Skills in Business Communication
When:
14 July - 18 July 2025
Credits:
3 EC
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Economics & Artificial Intelligence Summer Course
When:
30 June - 04 July 2025
School:
Tinbergen Institute & Business Data Science Summer School
Institution:
Tinbergen Institute & Business Data Science
City:
Country:
Language:
English
Credits:
3 EC
Fee:
800 EUR
This one-week Deep Learning course covers theoretical and practical aspects, state-of-the-art deep learning architectures and application examples.
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.
Topics covered
Introduction to Deep Learning (High-level definitions of fundamental concepts and first examples)
Deep Learning components (gradient descent models, loss functions, avoiding over-fitting, introducing asymmetry)
Feed forward neural networks
Convolutional neural networks
Embeddings (pre-trained embeddings, examples of pre-trained models, e.g., Word2Vec)
Generative Adversarial Network (GAN)
Advanced architectures (Densely connected networks, Adaptive structural learning)
Eran Raviv holds a PhD in econometrics from Erasmus University Rotterdam, a masterβs degree in applied statistics from Tel Aviv University and a second masterβs degree in quantitative finance from Erasmus University Rotterdam.
The summer course welcomes Masterβs 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.
Admission requirements
Students are expected to have a solid background in calculus, linear algebra, and classical statistics. Familiarity with open source languages such as R or Python is a must.
This one-week Deep Learning course covers theoretical and practical aspects, state-of-the-art deep learning architectures and application examples. 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.
Fee
800 EUR, PhD and Master Students (Early Bird April 15, 2025)
Fee
1500 EUR, Academics (incl. postdocs) and Professionals (Early Bird April 15, 2025)
The course fee covers tuition, course materials, daily lunches and coffee/tea during short breaks, social event including a dinner and farewell drinks. The course fee does not include accommodation.
When:
30 June - 04 July 2025
School:
Tinbergen Institute & Business Data Science Summer School
Institution:
Tinbergen Institute & Business Data Science
Language:
English
Credits:
3 EC
Budapest, Hungary
When:
14 July - 18 July 2025
Credits:
3 EC
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St. Gallen, Switzerland
When:
16 June - 20 June 2025
Credits:
4 EC
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Venice, Italy
When:
09 June - 13 June 2025
Credits:
2 EC
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