Welcome,
Guest
.
Login
.
Türkçe
NİNOVA
COURSES
HELP
ABOUT
Where Am I:
Ninova
/
Courses
/
Eurasia Institute of Earth Sciences
/
YSB 579E
/
Course Informations
Return to Faculty
Home Page
Course Information
Course Weekly Lecture Plan
Course Evaluation Criteria
Course Information
Course Name
Turkish
Special Top.in Earth Sys.Sci. (Machine Learning and Deep Learning for Earth Scientists)
English
Special Top.in Earth Sys.Sci. (Machine Learning and Deep Learning for Earth Scientists)
Course Code
YSB 579E
Credit
Lecture
(hour/week)
Recitation
(hour/week)
Laboratory
(hour/week)
Semester
-
3
3
1
-
Course Language
English
Course Coordinator
Yusuf Aydın
Course Objectives
By the end of this course, students will be able to:
1. Understand the foundational concepts of Machine Learning (ML) and Deep Learning (DL), including key algorithms and methodologies relevant to Earth Sciences.
2. Develop proficiency in Python programming for data analysis, model development, and performance evaluation in Earth Science applications.
3. Apply ML and DL techniques to real-world problems such as weather forecasting, climate modeling, and environmental monitoring.
4. Gain insight into current trends, challenges, and research directions at the intersection of Earth Sciences, Machine Learning, and Deep Learning to prepare for advanced study or professional practice.
Course Description
By the end of this course, students will be able to:
1. Understand the foundational concepts of Machine Learning (ML) and Deep Learning (DL), including key algorithms and methodologies relevant to Earth Sciences.
2. Develop proficiency in Python programming for data analysis, model development, and performance evaluation in Earth Science applications.
3. Apply ML and DL techniques to real-world problems such as weather forecasting, climate modeling, and environmental monitoring.
4. Gain insight into current trends, challenges, and research directions at the intersection of Earth Sciences, Machine Learning, and Deep Learning to prepare for advanced study or professional practice.
Course Outcomes
Pre-requisite(s)
Required Facilities
Other
Textbook
Other References
Courses
.
Help
.
About
Ninova is an ITU Office of Information Technologies Product. © 2026