CS415 Pattern Recognition


CS415 Pattern Recognition

Syllabus   |  International University of Sarajevo  -  Last Update on Mar 03, 2026

Referencing Curricula

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Computer Sciences and Engineering

Academic Year
2018 - 2019
Semester
Fall
Course Code
CS415
Weekly Hours
3 Teaching + 2 Practice
ECTS
6
Prerequisites
Teaching Mode Delivery
Prerequisite For
-
Teaching Mode Delivery Notes
-
Cycle
I Cycle
Prof. Jane Doe

TBA

Course Lecturer

Position
-
Email
Phone
033 957
Assistant(s)
-
Assistant E-mail

Course Objectives

The main objective of this course is to help students understand how we can learn from data. The course aims to introduce the algorithms that analyze data and is a fundamental course of that type for all students wishing to work in the field of machine learning. The tools introduced serve the purpose of learning how to work with data in general and understand the principles of analyzing data, as oppose to learning those particular tools. Some interesting topics include facial expression detection and intrusion detection using pattern recognition.

Learning Outcomes

After successful completion of the course, the student will be able to:

1
Ability to describe why a particular model is appropriate in a given situations, formulate the model and use it appropriately.
2
Analytically demonstrate how different algorithms and models are related to each other.
3
Knowing how to use tools such as MATLAB to solve practical pattern recognition problems.
4
Tweak existing machine learning algorithms to suit a particular problem at hand.
5
Critically analyze the solutions presented by a pattern recognition algorithm

Course Materials

Required Textbook

Pattern Recognition and Machine Learning, by Christopher Bishop, Springer 2006.

Additional Literature

Teaching Methods

This course employs a range of teaching and learning methods (lecturing, home assignments, working in lab, discussion, and project)
Students have three hours lectures and two hours practical training a week
Students are also expected to realise a project
Learning will consist of knowledge acquisition and practical use of that knowledge
Students’ independent learning and activities will greatly influence the achievement of learning outcomes
Consultations with staff should be used to its maximal potentials since individuals have different background and learning styles
Regular homework assignments will guide students’ individual learning and students’ progression in acquiring required knowledge and practice will be additionally checked through quizzes and midterm and final exams

Weekly Topics

This weekly planning is subject to change with advance notice.
Week Topic Readings / References
1 Introduction to Pattern Recognition Chapter 1
2 Bayesian Decision Theory I Chapter 2
3 Bayesian Decision Theory II Chapter 2
4 Parameter Estimation Methods I Chapter 3
5 Parameter Estimation Methods II Chapter 3
6 Hidden Markov models for sequential pattern classification Chapter 4
7 Dimension reduction methods Chapter 5
8 Midterm preparation and MIDTERM EXAM Chapters 1-5
9 Non-parametric techniques for density estimation Chapter 6
10 Linear discriminate function based classifiers Chapter 7
11 Non-metric methods for pattern classification Chapter 8
12 Unsupervised learning and clustering Chapter 9
13 Unsupervised learning and clustering Chapter 9
14 Review Chapters 1-9
15 Review and final exam preparation

Course Schedule (All Sections)

Course Schedules with all sections will be available here soon.

Office Hours & Room

Course Office hours will be available here soon.

Assessment Methods and Criteria

Assessment Components

40%x1
Final Exam
AI: Not Allowed

Alignment with Learning Outcomes :  1  2  3  4  5

10%x10
Assignments / Labs
AI: Not Allowed

Alignment with Learning Outcomes :  1  2  3  4  5

25%x1
Midterm Exam
AI: Not Allowed

Alignment with Learning Outcomes :  1  2  3  4  5

15%x3
Quizes
AI: Not Allowed

Alignment with Learning Outcomes :  1  2  3  4  5

10%x1
Project
AI: Not Allowed

Alignment with Learning Outcomes :  1  2  3  4  5

IUS Grading System

Grading Scale IUS Grading System IUS Coeff. Letter (B&H) Numerical (B&H)
0 - 44 F 0 F 5
45 - 54 E 1
55 - 64 C 2 E 6
65 - 69 C+ 2.3 D 7
70 -74 B- 2.7
75 - 79 B 3 C 8
80 - 84 B+ 3.3
85 - 94 A- 3.7 B 9
95 - 100 A 4 A 10

Late Work Policy

Information about late submission policies will be shared during class and posted in this section. Please check back for official guidelines.

ECTS Credit Calculation

📚 Student Workload

This 6 ECTS credit course corresponds to 150 hours of total student workload, distributed as follows:

Lecture hours

42 hours ⏳ (14 week × 3 h)

Mid-term exam study

15 hours ⏳ (1 week × 15 h)

Labs

42 hours ⏳ (14 week × 3 h)

Final exam study

12 hours ⏳ (1 week × 12 h)

Assignments

10 hours ⏳ (10 week × 1 h)

Project

24 hours ⏳ (8 week × 3 h)

Quizzes

15 hours ⏳ (3 week × 5 h)

150 Total Workload Hours

6 ECTS Credits


Course Policies

Academic Integrity

All work submitted must be your own. Plagiarism, cheating, or any form of academic dishonesty will result in disciplinary action according to university policies. When in doubt about citation practices, consult the instructor.

Attendance Policy

Students are expected to adhere to the attendance requirements as outlined in the International University of Sarajevo Study Rules and Regulations. Excessive absences, whether excused or unexcused, may impact academic performance and eligibility for assessment. Mandatory sessions (e.g., labs, workshops) require attendance unless formally exempted. For detailed policies on absences, documentation, and penalties, please refer to the official university regulations.

Technology & AI Policy

Laptops/tablets may be used for note-taking only during lectures. Phones should be silenced and put away during all class sessions. Audio/video recording requires prior permission from the instructor.

Artificial Intelligence (AI) Usage: The use of AI tools (e.g., ChatGPT, Copilot, Gemini) varies by assessment component. Please refer to the AI usage indicator next to each assessment item in the Assessment Methods and Criteria section above. Submitting AI-generated content as your own work, where AI is not explicitly allowed, constitutes an academic integrity violation.

Communication Policy

All course-related communication should occur through official university channels (institutional email or SIS). Emails should include [CS415] in the subject line.

Academic Quality Assurance Policy

Course Academic Quality Assurance is achieved through Semester Student Survey. At the end of each academic year, the institution of higher education is obliged to evaluate work of the academic staff, or the success of realization of the curricula.

More info

Learning Tips

Engage Actively

Be prepared to contribute thoughtfully during class discussions, labs, or collaborative work. Active participation deepens understanding and encourages critical thinking.

Read and Review Purposefully

Complete assigned readings or prep materials before class. Take notes, highlight key ideas, and jot down questions. Aim to grasp core concepts and their applications—not just facts.

Think Critically in Assignments

Use course frameworks or methodologies to analyze problems, case studies, or projects. Begin early to allow time for reflection and refinement. Seek feedback to improve your work.

Ask Questions Early

Don’t hesitate to reach out when something is unclear. Use office hours, discussion boards, or peer networks to clarify concepts and stay on track.

Syllabus Last Updated on Mar 03, 2026 | International University of Sarajevo

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