Code |
Course Name |
Language |
Type |
MAT 386 |
Computational Data Science |
Turkish |
Elective |
Local Credits |
ECTS |
Theoretical |
Tutorial |
Laboratory |
3 |
6 |
2 |
2 |
0 |
Course Prerequisites and Class Restriction |
Prerequisites |
MAT 244 MIN DD or MAT 244E MIN DD or MAT 242 MIN DD or MAT 242E MIN DD
|
Class Restriction |
None |
Course Description |
Big Data and project management. Statistical methods and machine learning in data science: Regression analysis and modelling,
basic classification and clustering methods.
Data warehousing and structure, data extraction, transform and loading (ETL).
Performance metrics and risk management. Big data platforms: Architecture (Hadoop, Spark), tools (MapReduce, Spark ML,
Kafka, Flink, Hive). Data processing methods. Sectoral applications. Model visualization and evaluation. Data Visualization and
reporting and interpretation of results. |
|