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YZM4038Deep Learning2+0+0ECTS:4
Year / SemesterSpring Semester
Level of CourseFirst Cycle
Status Elective
DepartmentDEPARTMENT of SOFTWARE ENGINEERING
Prerequisites and co-requisitesNone
Mode of Delivery
Contact Hours14 weeks - 2 hours of lectures per week
LecturerDr. Öğr. Üyesi Mustafa Hakan BOZKURT
Co-Lecturer
Language of instructionTurkish
Professional practise ( internship ) None
 
The aim of the course:
This course content includes understanding the concept of deep learning, learning how different deep learning models work, applying deep learning configurations, deep learning data preparation and gaining experience working with different deep neural network models.
 
Learning OutcomesCTPOTOA
Upon successful completion of the course, the students will be able to :
LO - 1 : Gain programming skills for deep learning with Python language4,81,
LO - 2 : Understand classical shallow neural networks, deep neural networks and their differences4,81,
LO - 3 : Understand the differences and uses of deep neural network models4,81,
LO - 4 : Gain experience working with different data structures4,81,6,
LO - 5 : Evaluate the results obtained after neural network training4,81,
CTPO : Contribution to programme outcomes, TOA :Type of assessment (1: written exam, 2: Oral exam, 3: Homework assignment, 4: Laboratory exercise/exam, 5: Seminar / presentation, 6: Term paper), LO : Learning Outcome

 
Contents of the Course
Introduction to deep learning. Learning process in neural networks. Single layer networks, multilayer networks. Software technologies used in deep learning. Convolutional neural networks and application. Recurrent neural networks and their applications. Long-short term memory networks and applications. Generative networks and applications. Examination and evaluation of applications of different problem types with deep neural networks.
 
Course Syllabus
 WeekSubjectRelated Notes / Files
 Week 1Introduction to Deep Learning
 Week 2Learning in Neural Networks
 Week 3Fully Connected Neural Networks
 Week 4Fully Connected Neural Networks
 Week 5Deep Learning Libraries
 Week 6Convolutional Neural Networks
 Week 7Classification with Convolutional Neural Network
 Week 8Network Optimization and Configurations
 Week 9Midterm Exam
 Week 10Recurrent Neural Networks
 Week 11Long-Short Term Memory
 Week 12Forecasting with Long Short-Term Memory
 Week 13Generative Adversarial Networks
 Week 14Generative Adversarial Networks
 Week 15Neural network training and interpretation of results
 Week 16Final Exam
 
Textbook / Material
1Derin Öğrenme, Ian Goodfellow, Yoshua Bengio, Aaron Courville (2018) Buzdağı Yayınevi
2Python ile Derin Öğrenme, François Chollet (2021), Buzdağı Yayınevi
3Scikit-Learn, Keras ve TensorFlow ile Uygulamalı Makine Öğrenmesi, (2021), Aure?lien Ge?ron Buzdağı Yayınevi
 
Recommended Reading
 
Method of Assessment
Type of assessmentWeek NoDate

Duration (hours)Weight (%)
Project 15 1 40
End-of-term exam 16 3 60
 
Student Work Load and its Distribution
Type of workDuration (hours pw)

No of weeks / Number of activity

Hours in total per term
Yüz yüze eğitim 2 14 28
Sınıf dışı çalışma 2 14 28
Ödev 2 9 18
Proje 1 14 14
Dönem sonu sınavı için hazırlık 1 14 14
Dönem sonu sınavı 3 1 3
Total work load105