Data Analysis (3 cr)
Code: TZLM7300-3012
General information
Enrollment
01.08.2024 - 22.08.2024
Timing
21.10.2024 - 15.12.2024
Number of ECTS credits allocated
3 op
Mode of delivery
Face-to-face
Unit
School of Technology
Campus
Main Campus
Teaching languages
- English
Seats
20 - 36
Degree programmes
- Bachelor's Degree Programme in Purchasing and Logistics Engineering
Teachers
- Kalle Niemi
Groups
-
TLP22S1Bachelor's Degree Programme in Purchasing and Logistics Engineering
-
TLP24VSBachelor's Degree Programme in Purchasing and Logistics Engineering (AMK) vaihto-opiskelu/Exchange studies
- 30.10.2024 14:15 - 16:45, Data Analysis TZLM7300-3012
- 07.11.2024 13:15 - 15:45, Data Analysis TZLM7300-3012
- 13.11.2024 14:15 - 16:45, Data Analysis TZLM7300-3012
- 20.11.2024 14:15 - 16:45, Data Analysis TZLM7300-3012
- 27.11.2024 14:15 - 16:45, Data Analysis TZLM7300-3012
- 04.12.2024 14:15 - 16:45, Data Analysis TZLM7300-3012
- 11.12.2024 14:15 - 16:45, Data Analysis TZLM7300-3012
Objectives
Purpose
After the course you will understand how analysis of statistical data can help an engineer to make better business decisions.
Learning outcomes
You can analyze, visualize and interpret small and big data to draw conclusions and make forecasts using statistical methods.
Content
Descriptive, exploratory, and prescriptive statistics
Confidence interval estimation and hypotheses testing
Multi-variable regression models
Time series analysis, smoothing and forecasting methods
Big data analysis using a computer
Use of Excel and some machine learning software
Learning materials and recommended literature
Morrison, S. J. (2009) Introduction to engineering statistics. Hoboken, NJ: Wiley
Hoerl, R & Snee, R. (2012) Statistical Thinking: Improving Business Performance. Hoboken, NJ: Wiley
Kelleher, Mac Namee & D'Arcy (2020) Fundamentals of Machine Learning for Predictive Data Analytics. Cambridge, MA: MIT Press
Other material accessible in Moodle
Teaching methods
The contact lessons are in a computer class and involve use of computers. The theory should be independently acquired before class exercises. The learning is accomplished by assignments where theory is put into practice.
Exam dates and retake possibilities
The date and execution of the exam will be announced in the beginning of the course and in Moodle.
Alternative completion methods
The admission procedures are described in the degree rule and the study guide.
Student workload
Contact lessons about 20 hours
Independent study about 20 hours
Learning tasks about 20 hours
Further information for students
The assessment is based on learning tasks and exams.
An equivalent course in Finnish TZLM7300-3011 Datan analysointi.
Open AMK: at most 5 students if there are seats in the classroom.
Evaluation scale
0-5
Evaluation criteria, satisfactory (1-2)
Adequate 1
You have achieved the desired goals. You know a few of the concepts and methods and how to apply them in familiar situations but your reasoning is often deficient and you make mistakes in calculations.
Satisfactory 2
You have achieved the desired goals. You know many of the concepts and methods and how to apply them in familiar situations but your reasoning is sometimes deficient or you make mistakes in calculations.
Evaluation criteria, good (3-4)
Good 3
You have achieved the desired goals. You know most of the concepts and methods and how to apply them in familiar situations showing often the ability to reason completely and calculate flawlessly
Very good 4
You have achieved the desired goals. You know most of the concepts and methods and how to apply them in new situations showing in most cases the ability to reason completely and calculate flawlessly.
Evaluation criteria, excellent (5)
Excellent 5
You have achieved the desired goals. You know all the concepts and methods and how to apply them in new situations showing always the ability to combine things, reason completely and calculate flawlessly.
Prerequisites
You master basic statistics and related Excel functions.