CENG0039 Advanced Topics in Deep Learning

6 ECTS - 3-0 Duration (T+A)- . Semester- 3 National Credit

Information

Code CENG0039
Name Advanced Topics in Deep Learning
Semester . Semester
Duration (T+A) 3-0 (T-A) (17 Week)
ECTS 6 ECTS
National Credit 3 National Credit
Teaching Language İngilizce
Level Yüksek Lisans Dersi
Type Normal
Mode of study Yüz Yüze Öğretim
Catalog Information Coordinator


Course Goal

In this course, attendees will: Understand the context of neural networks and deep learning Know how to use a neural network Understand the data needs of deep learning Have a working knowledge of neural networks and deep learning Explore the parameters for neural networks

Course Content

You do not need an extensive math background to understand neural network. In understandable steps, this course builds from a one node neural network to a multiple features, multiple output neural networks. All the steps are explained using working code to solve problems. After an understanding of how neural networks work and the parameters that control deep learning systems, Keras is introduced and used to simplify the building of deep learning neural networks. A convolutional deep learning neural network is built using Keras to show how deep learning is used in specialized neural networks. This course provides the necessary required background to understand ROI’s Time Series Analysis and Natural Language Processing courses.

Course Precondition

None

Resources

Y. Bengio, I. Goodfellow and A. Courville, “Deep Learning”, MIT Press, 2016.

Notes

Some papers


Course Learning Outcomes

Order Course Learning Outcomes
LO01 Students can evaluate common deep learning methods in terms of effectiveness.
LO02 Students can evaluate the advantages and disadvantages of the deep learning method that is considered to be used.
LO03 Students can design and test basic deep learning solutions.
LO04 Students identify and apply the appropriate deep learning architecture and algorithm for the predicted solution.
LO05 Students have knowledge about editing and optimization methods of deep models.


Relation with Program Learning Outcome

Order Type Program Learning Outcomes Level
PLO01 Bilgi - Kuramsal, Olgusal On the basis of the competencies gained at the undergraduate level, it has an advanced level of knowledge and understanding that provides the basis for original studies in the field of Computer Engineering. 3
PLO02 Bilgi - Kuramsal, Olgusal By reaching scientific knowledge in the field of engineering, he/she reaches the knowledge in depth and depth, evaluates, interprets and applies the information. 3
PLO03 Yetkinlikler - Öğrenme Yetkinliği Being aware of the new and developing practices of his / her profession and examining and learning when necessary. 2
PLO04 Yetkinlikler - Öğrenme Yetkinliği Constructs engineering problems, develops methods to solve them and applies innovative methods in solutions. 4
PLO05 Yetkinlikler - Öğrenme Yetkinliği Designs and applies analytical, modeling and experimental based researches, analyzes and interprets complex situations encountered in this process.
PLO06 Yetkinlikler - Öğrenme Yetkinliği Develops new and / or original ideas and methods, develops innovative solutions in system, part or process design. 2
PLO07 Beceriler - Bilişsel, Uygulamalı Has the skills of learning. 4
PLO08 Beceriler - Bilişsel, Uygulamalı Being aware of new and emerging applications of Computer Engineering examines and learns them if necessary. 2
PLO09 Beceriler - Bilişsel, Uygulamalı Transmits the processes and results of their studies in written or oral form in the national and international environments outside or outside the field of Computer Engineering.
PLO10 Beceriler - Bilişsel, Uygulamalı Has comprehensive knowledge about current techniques and methods and their limitations in Computer Engineering. 2
PLO11 Beceriler - Bilişsel, Uygulamalı Uses information and communication technologies at an advanced level interactively with computer software required by Computer Engineering. 3
PLO12 Bilgi - Kuramsal, Olgusal Observes social, scientific and ethical values in all professional activities.


Week Plan

Week Topic Preparation Methods
1 Introduction – History and Theoretical Foundations Study to lecture notes and applications Öğretim Yöntemleri:
Anlatım
2 Mathematical Fundamentals: Linear Algebra, Probability and Information Theory Study to lecture notes and applications Öğretim Yöntemleri:
Anlatım
3 Artificial Neural Networks Fundamentals Study to lecture notes and applications Öğretim Yöntemleri:
Anlatım
4 Feed Forward Deep Networks Study to lecture notes and applications Öğretim Yöntemleri:
Anlatım
5 Editing Deep or Distributed Models Study to lecture notes and applications Öğretim Yöntemleri:
Anlatım
6 Optimization Techniques for Training Deep Models Study to lecture notes and applications Öğretim Yöntemleri:
Anlatım
7 Convolutional Networks Study to lecture notes and applications Öğretim Yöntemleri:
Anlatım
8 Mid-Term Exam All courses must be studied Ölçme Yöntemleri:
Yazılı Sınav
9 Autoencoders 1 Study to lecture notes and applications Öğretim Yöntemleri:
Anlatım
10 Autoencoders 2 Study to lecture notes and applications Öğretim Yöntemleri:
Anlatım
11 Linear Factor Models Study to lecture notes and applications Öğretim Yöntemleri:
Anlatım
12 Learning through Representation-1 Study to lecture notes and applications Öğretim Yöntemleri:
Anlatım
13 Learning through Representation-2 Study to lecture notes and applications Öğretim Yöntemleri:
Anlatım
14 Deep Productive Models Study to lecture notes and applications Öğretim Yöntemleri:
Anlatım
15 Boltzman Machines Study to lecture notes and applications Öğretim Yöntemleri:
Anlatım
16 Term Exams All courses must be studied Ölçme Yöntemleri:
Yazılı Sınav, Proje / Tasarım
17 Term Exams All courses must be studied Ölçme Yöntemleri:
Yazılı Sınav


Student Workload - ECTS

Works Number Time (Hour) Workload (Hour)
Course Related Works
Class Time (Exam weeks are excluded) 14 3 42
Out of Class Study (Preliminary Work, Practice) 14 5 70
Assesment Related Works
Homeworks, Projects, Others 0 0 0
Mid-term Exams (Written, Oral, etc.) 1 15 15
Final Exam 1 30 30
Total Workload (Hour) 157
Total Workload / 25 (h) 6,28
ECTS 6 ECTS