Ezgi Siir Kibris Headshot

Ezgi Siir Kibris

Lecturer

School of Information
Golisano College of Computing and Information Sciences

Ezgi Siir Kibris

Lecturer

School of Information
Golisano College of Computing and Information Sciences

Currently Teaching

DSCI-633
3 Credits
A foundations course in data science, emphasizing both concepts and techniques. The course provides an overview of data analysis tasks and the associated challenges, spanning data preprocessing, model building, model evaluation, and visualization. The major areas of machine learning, such as unsupervised, semi-supervised and supervised learning are covered by data analysis techniques including classification, clustering, association analysis, anomaly detection, and statistical testing. The course includes a series of assignments utilizing practical datasets from diverse application domains, which are designed to reinforce the concepts and techniques covered in lectures. A substantial project related to one or more data sets culminates the course.
DSCI-799
3 Credits
This non-class-based experience provides the student with an individual opportunity to explore a project-based or a research-based project that advances knowledge in an area of data science. The student selects a problem, conducts background research, develops the system or devises a research approach, analyses the results, and builds a professional document and presentation that disseminates the project. The report must include a literature review. The final report structure is to be determined by the capstone advisor.
GCIS-123
4 Credits
A first course introducing students to the fundamentals of computational problem solving. Students will learn a systematic approach to problem solving, including how to frame a problem in computational terms, how to decompose larger problems into smaller components, how to implement innovative software solutions using a contemporary programming language, how to critically debug their solutions, and how to assess the adequacy of the software solution. Additional topics include an introduction to object-oriented programming and data structures such as arrays and stacks. Students will complete both in-class and out-of-class assignments.
ISTE-612
3 Credits
This course provides students with exposure to foundational data analytics technologies, focusing on unstructured data. Topics include unstructured data modeling, indexing, retrieval, text classification, text clustering, and information visualization.
ISTE-782
3 Credits
This course introduces students to Visual Analytics, or the science of analytical reasoning facilitated by interactive visual interfaces. Course lectures, reading assignments, and practical lab experiences will cover a mix of theoretical and technical Visual Analytics topics. Topics include analytical reasoning, human cognition and perception of visual information, visual representation and interaction technologies, data representation and transformation, production, presentation, and dissemination of analytic process results, and Visual Analytic case studies and applications. Furthermore, students will learn relevant Visual Analytics research trends such as Space, Time, and Multivariate Analytics and Extreme Scale Visual Analytics.
ISTE-793
3 Credits
This course is one of the capstone options in the MS in Information Technology and Analytics. It provides the student with an individual opportunity to implement a solution to a substantial project in the field of Information Technology and Analytics. Students will enter the course having successfully written a proposal for a project that was chosen from a list of possible projects that were crafted by faculty members in the School of Information. Several checkpoint meetings will be held throughout the semester to ensure that students remain on track for project completion. The project culminates in a well-written and professional report documenting the results of the project as well as a high-quality presentation of the project work and its results.