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Statistics and results elaboration

Some basic information about the module

Cycle of education: 2022/2023

The name of the faculty organization unit: The faculty Chemistry

The name of the field of study: Chemical Technology

The area of study: technical sciences

The profile of studing:

The level of study: first degree study

Type of study: full time

discipline specialities : Chemical analysis in industry and environment, Chemical and bioprocess engineering, Organic and polymer technology

The degree after graduating from university: Bachelor of Science (BSc)

The name of the module department : Department of Biochemistry and Bioinformatics

The code of the module: 206

The module status: mandatory for teaching programme

The position in the studies teaching programme: sem: 3 / W15 L15 / 2 ECTS / Z

The language of the lecture: Polish

The name of the coordinator: Lucjan Dobrowolski, PhD, Eng.

The aim of studying and bibliography

The main aim of study: Knowledge of statistical methods for evaluation of the experiment results.

The general information about the module: The student gains knowledge about the basic methods of statistical analysis of the results of experimental studies, as well as he becomes familiar with the STATISTICA system.

Teaching materials: Materiały dydaktyczne opublikowane na stronach Zakładu Informatyki Chemicznej

Bibliography required to complete the module
Bibliography used during lectures
1 B. Dębska, B.Guzowska-Świder Statystyka i opracowanie wyników Oficyna wydawnicza Politechniki Rzeszowskiej. 2011
Bibliography used during classes/laboratories/others
1 B. Dębska, B.Guzowska-Świder Statystyka i opracowanie wyników Oficyna wydawnicza Politechniki Rzeszowskiej. 2011
2 StatSoft Manual System STATISTICA for Windows Wyd. Stat Soft Polska Sp. z.o.o., Kraków . 2012
Bibliography to self-study
1 J. Czermiński Metody statystyczne dla chemików PWN, Warszawa. 1992
2 B. Dębska, B. Guzowska-Świder kurs Statystyka www.e-chemia.pl. 2011
3 STATISTICA w badaniach naukowych i nauczaniu statystyki StatSoft, Kraków. 2010

Basic requirements in category knowledge/skills/social competences

Formal requirements: None

Basic requirements in category knowledge: Basic knowledge of probability

Basic requirements in category skills: Ability to use a computer.

Basic requirements in category social competences: Ability to work individually and in a group

Module outcomes

MEK The student who completed the module Types of classes / teaching methods leading to achieving a given outcome of teaching Methods of verifying every mentioned outcome of teaching Relationships with KEK Relationships with PRK
01 has the ability to use statistical methods to describe the chemical processes. Interactive lecture, laboratory, e-learning Final test K_W01+++
P6S_WG
02 has a basic ability to use programs that are designed to elaborate results of analytical experimentals laboratory, e-learning observation of the task performance K_W07+++
P6S_WG
03 can use basic practical methods, techniques, tools and materials used in solving the basic engineering tasks associated with chemical technology laboratory observation of the task performance K_W13+
P6S_WG
04 has the ability to use knowledge of mathematical statistics to pose and test hypotheses in the field of chemistry experiments and interpret their results interactive lecture test K_U12+++
P6S_UW
05 has the ability to use computational methods to solve problems from the scope of chemical technology interactive lecture, laboratory observation of the task performance
06 has an acquired habit of systematic self-education and improving its professional knowledge through the knowledge updating. interactive lecture, laboratory at which the student solves the problems observation of the task performance K_U06+++
P6S_UU

Attention: Depending on the epidemic situation, verification of the achieved learning outcomes specified in the study program, in particular credits and examinations at the end of specific classes, can be implemented remotely (real-time meetings).

The syllabus of the module

Sem. TK The content realized in MEK
3 TK01 LIMS (Laboratory Information Management System) – selected problems. W01 MEK01 MEK06
3 TK02 Experimental database. Rejection outliers in data. Selective use of data W02 MEK03 MEK06
3 TK03 Exploratory data analysis of the analytical measurements, descriptive statistics, cross-sectional data, normality tests, statistical graphs. The frequency distribution of a variable W03 MEK02
3 TK04 Statistical hypothesis testing. Parametric and non-parametric tests. W04 MEK04
3 TK05 Multiple regression. Study of correlation between variables W05 MEK05
3 TK06 One-way and multiple analysis of variance. W06 MEK03
3 TK07 Fitting the observed variable distribution to a theoretical distribution. Linear and non-linear regression. W07 MEK02
3 TK08 Management of Statistica program data. Parameters of variable distribution. L01 MEK02 MEK06
3 TK09 Study of empirical variable distribution. Statistical inference- nonparametric tests. L02 MEK03
3 TK10 Statistical inference - parametric tests. L03 MEK04
3 TK11 Analysis of the relationship between variables: linear and non-linear regression. L05 MEK05
3 TK12 Analysis of Variance. L04 MEK03

The student's effort

The type of classes The work before classes The participation in classes The work after classes
Lecture (sem. 3) contact hours: 15.00 hours/sem.
complementing/reading through notes: 4.00 hours/sem.
Studying the recommended bibliography: 7.00 hours/sem.
Laboratory (sem. 3) The preparation for a Laboratory: 5.00 hours/sem.
The preparation for a test: 5.00 hours/sem.
contact hours: 15.00 hours/sem.
Finishing/Making the report: 5.00 hours/sem.
Advice (sem. 3)
Credit (sem. 3) The preparation for a Credit: 3.00 hours/sem.
Others: 1.00 hours/sem.

The way of giving the component module grades and the final grade

The type of classes The way of giving the final grade
Lecture Lecture: credit course based on the evaluation of the test – OW
Laboratory Computer laboratory: credit based on the evaluation of completed tasks – OL
The final grade Final evaluation of the module is calculated by the following formula: OK = 50% OW + 50% OL

Sample problems

Required during the exam/when receiving the credit
(-)

Realized during classes/laboratories/projects
(-)

Others
(-)

Can a student use any teaching aids during the exam/when receiving the credit : no

The contents of the module are associated with the research profile: no