Course Summary Course Objectives Learning Outcomes Course Materials Teaching Methods Weekly Topics Course Schedule Office Hours Assestment ECTS Calculation Course Policies Learning Tips Print Syllabi Download as PNG

CS540 Data Analytical Problem Solving

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

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Computer Sciences and Engineering

Spring 2023 - 2024 | 6 ECTS Credits | International University of Sarajevo

Academic Year
2023 - 2024
Semester
Spring
Course Code
CS540
Weekly Hours
3 Teaching + 2 Practice
ECTS
6
Prerequisites
None
Teaching Mode Delivery
Prerequisite For
-
Teaching Mode Delivery Notes
-
Cycle
II Cycle
Prof. Jane Doe

TBA

Course Lecturer

Position
-
Email
tba@ius.edu.ba
Phone
033 957
Assistant(s)
-
Assistant E-mail
-

Course Objectives

The aim of this course is to train students in data-oriented approach to problem solving from a business, health care, or some other domain where optimizing according to constraints is a way to solution. Data will serve as an insight into the context and the system within which problem lies. For example, dataset might come from insurance company and the question might be to identify clients for a new marketing strategy that the company wants to try out. The emphasis will be upon the understanding and use of statistical methodology, and the written communication of the results of such a data analysis. Students should gain practical experience in elementary data management and analysis techniques. Upon completion of the course students should be able to use data to make recommendations and make informed decisions regarding any process or phenomenon for which it is possible to collect data. In the first part of the course students will get to know the statistical software package R since that will be the tool with which data will be manipulated and analyzed.

Learning Outcomes

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

1
Demonstrate ability to decide on appropriateness and the type of descriptive statistical techniques, tools and visualization methods for decision making purposes.
2
Identify the relationship between data at hand and an issue or a problem that needs a solution.
3
Translate statistical graphs, estimation techniques and tests into actionable points in the domain of application.
4
Apply statistical methods like regression, cluster analysis or PCA using R statistical software.
5
Write in concise and clear English one's findings, conclusions and build hypothesis on them.

Course Materials

Required Textbook

It is envisioned for the course to be very practical, hands-on, code-producing course. For the part of the course where students need to familiarize themselves with programming in R a good free reference is "An Introduction to R for Beginners" - S.D. Hafner readily available at https://www.researchgate.net/publication/325170649_An_Introduction_to_R_for_Beginners. We will make use of few chapters from “Introduction To Data Technologies" - Paul Murrel, again, available online for free.

Additional Literature

Teaching Methods

Lecture slides will be available throughout the introductory part where R programming will be the focus
We will right away start using a single real data set
Each student will get the same data set at the beginning of the class
At midterm mark this data set students practiced all the concepts on so far will be the object of the midterm exam
In the midterm students will have to put the taught concepts to use with familiar data
Lectures will therefore involve real data, computer analysis, summary, interpretation and reporting
After the midterm, all students will receive, each their own data set which will serve from that point on as the context for the final exam (report)

Weekly Topics

This weekly planning is subject to change with advance notice.
Week Topic Readings / References
1 Introduction to data concepts; Population and Sample; Random Sampling; Some important statistics; Data description and visualization techniques. Slides
2 R essentials (import, export, manipulate, data); R data constructs (data.frames, variables, types, missing values ); Omnipresent web-resources on R
3 Binding, merging, subsetting, saving data.frames permanently Slides and online resources
4 Vizualization techniques revisited (scales, missing data, graph customization) Slides and online resources
5 Higher level R functions from the "apply" - family. Slides and online resources
6 Statistical methodology in R (correlation, reression, cluster-analysis, PCA) Slides and online resources
7 Reporting on data and its context Slides and online resources
8 Midterm Slides and online resources
9 Data cleaning, identifying outliers and casting of variables in a ready-to-analyze format. Slides and online resources
10 Creating an R script that imports, cleans and saves a data set. Slides and online resources
11 Techniques for relating components in the data that might help answer the question or solve a particular problem that students will be given in week 8. (UML diagrams, RapidMiner tool, Slides and online resources
12 Data analysis (supervised self study) Slides and online resources
13 Data analysis (supervised self study) Slides and online resources
14 Data analysis (supervised self study) Slides and online resources
15 Final presentation of ones findings and recommendations. Slides and online resources

Course Schedule (All Sections)

SectionTypeDay 1Venue 1Day 2Venue 2
CS540.1 Course - - - -

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 : 

30%x12
Final Presentation
AI: Not Allowed

Alignment with Learning Outcomes :  Demonstrate ability to decide on appropriateness and the type of descriptive statistical techniques   tools and statistical visualization software; Apply regression and correlation analysis techniques correctly using R statistical software;

30%x2
Midterm
AI: Not Allowed

Alignment with Learning Outcomes :  Demonstrate ability to decide on appropriateness and the type of descriptive statistical techniques   tools and visualization methods for decision making purposes. Apply statistical methods like regression   cluster analysis or PCA using R statistical softw

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

IUS Grading System

Letter marks that do not affect student's CGPA:
  • "IP" – In progress is assigned for recording unfulfilled student obligations related to graduation project/thesis/dissertation and internship.
  • "S" – Satisfactory is assigned to a student who passed the examinations that are not numerically graded or whose written assignment has been accepted.
  • "U" – Unsatisfactory is assigned to a student who failed to pass the examinations that are not numerically graded.
  • "W" – Withdrawal signifies that student has withdrawn from the relevant course.
Additional letter mark that affects student's CGPA:

"N/A" – Not attending, and it is assigned to a student who is suspended from the course or who does not meet the minimal requirement for attendance on lectures or tutorials. The course lecturer must follow the attendance policy and assign "N/A" in each case of a student failing attendance.

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:

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 [CS540] 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

Article 112: Evaluation of Work of the Academic Staff

  1. 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.
  2. Evaluation of work of each academic staff member is to be carried out in accordance with the Statute of the institution of higher education by the institution as well as by students.
  3. The institutions of higher education are obliged to carry out a students’ evaluation survey on the academic staff performance after the end of each semester, or after the completed teaching cycle for the subject taught.
  4. Evaluation must evaluate: lecture quality, student-academic staff interaction, correctness of communication, teacher’s attitudes towards students attending the teaching activities and at assessments, availability of suggested reading material, attendance and punctuality of the teacher, along with other criteria which are defined in the Statute.
  5. The institution of higher education by a specific act determines the procedure for evaluation of the academic staff performance, the content of survey forms, the manner of conducting the evaluation, grading criteria for the evaluation, as well as adequate measures for the academic staff who received negative evaluation for two consecutive years.
  6. The evaluation of the academic staff performance is an integral process of establishment the quality assurance system, or self-control and internal quality assurance.
  7. Results of the evaluation of the academic staff performance are to be adequately analyzed by the institution of higher education, and the decision of the head of the organizational unit about the employee’s work performance is an integral part of the personal file of each member of academic staff.

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.

Course Academic Quality Assurance: Semester Student Survey

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

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Referencing Curricula Print this page

Course Code Course Title Weekly Hours* ECTS Weekly Class Schedule
T P
CS540 Data Analytical Problem Solving 3 2 6
Prerequisite None It is a prerequisite to -
Lecturer TBA Office Hours / Room / Phone

Currently not available

E-mail TBA
Assistant Assistant E-mail
Course Objectives The aim of this course is to train students in data-oriented approach to problem solving from a business, health care, or some other domain where optimizing according to constraints is a way to solution. Data will serve as an insight into the context and the system within which problem lies. For example, dataset might come from insurance company and the question might be to identify clients for a new marketing strategy that the company wants to try out. The emphasis will be upon the understanding and use of statistical methodology, and the written communication of the results of such a data analysis. Students should gain practical experience in elementary data management and analysis techniques. Upon completion of the course students should be able to use data to make recommendations and make informed decisions regarding any process or phenomenon for which it is possible to collect data. In the first part of the course students will get to know the statistical software package R since that will be the tool with which data will be manipulated and analyzed.
Textbook It is envisioned for the course to be very practical, hands-on, code-producing course. For the part of the course where students need to familiarize themselves with programming in R a good free reference is "An Introduction to R for Beginners" - S.D. Hafner readily available at https://www.researchgate.net/publication/325170649_An_Introduction_to_R_for_Beginners. We will make use of few chapters from “Introduction To Data Technologies" - Paul Murrel, again, available online for free.
Additional Literature
Learning Outcomes After successful  completion of the course, the student will be able to:
  1. Demonstrate ability to decide on appropriateness and the type of descriptive statistical techniques, tools and visualization methods for decision making purposes.
  2. Identify the relationship between data at hand and an issue or a problem that needs a solution.
  3. Translate statistical graphs, estimation techniques and tests into actionable points in the domain of application.
  4. Apply statistical methods like regression, cluster analysis or PCA using R statistical software.
  5. Write in concise and clear English one's findings, conclusions and build hypothesis on them.
Teaching Methods Lecture slides will be available throughout the introductory part where R programming will be the focus. We will right away start using a single real data set. Each student will get the same data set at the beginning of the class. At midterm mark this data set students practiced all the concepts on so far will be the object of the midterm exam. In the midterm students will have to put the taught concepts to use with familiar data. Lectures will therefore involve real data, computer analysis, summary, interpretation and reporting. After the midterm, all students will receive, each their own data set which will serve from that point on as the context for the final exam (report).
Teaching Method Delivery Teaching Method Delivery Notes
WEEK TOPIC REFERENCE
Week 1 Introduction to data concepts; Population and Sample; Random Sampling; Some important statistics; Data description and visualization techniques. Slides
Week 2 R essentials (import, export, manipulate, data); R data constructs (data.frames, variables, types, missing values ); Omnipresent web-resources on R
Week 3 Binding, merging, subsetting, saving data.frames permanently Slides and online resources
Week 4 Vizualization techniques revisited (scales, missing data, graph customization) Slides and online resources
Week 5 Higher level R functions from the "apply" - family. Slides and online resources
Week 6 Statistical methodology in R (correlation, reression, cluster-analysis, PCA) Slides and online resources
Week 7 Reporting on data and its context Slides and online resources
Week 8 Midterm Slides and online resources
Week 9 Data cleaning, identifying outliers and casting of variables in a ready-to-analyze format. Slides and online resources
Week 10 Creating an R script that imports, cleans and saves a data set. Slides and online resources
Week 11 Techniques for relating components in the data that might help answer the question or solve a particular problem that students will be given in week 8. (UML diagrams, RapidMiner tool, Slides and online resources
Week 12 Data analysis (supervised self study) Slides and online resources
Week 13 Data analysis (supervised self study) Slides and online resources
Week 14 Data analysis (supervised self study) Slides and online resources
Week 15 Final presentation of ones findings and recommendations. Slides and online resources
Assessment Methods and Criteria Evaluation Tool Quantity Weight Alignment with LOs AI Usage
Final Exam 1 40 Identify the relationship between data at hand and an issue or a problem that needs a solution. Not Allowed
Semester Evaluation Components
Final Presentation 12 30 Demonstrate ability to decide on appropriateness and the type of descriptive statistical techniques, tools and statistical visualization software; Apply regression and correlation analysis techniques correctly using R statistical software; Not Allowed
Midterm 2 30 Demonstrate ability to decide on appropriateness and the type of descriptive statistical techniques, tools and visualization methods for decision making purposes. Apply statistical methods like regression, cluster analysis or PCA using R statistical softw Not Allowed
***     ECTS Credit Calculation     ***
 Activity Hours Weeks Student Workload Hours Activity Hours Weeks Student Workload Hours
        Total Workload Hours = 0
*T= Teaching, P= Practice ECTS Credit = 6
Course Academic Quality Assurance: Semester Student Survey Last Update Date: 27/03/2026

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