Data Science in bioscience engineering

lbrti2101a  2020-2021  Louvain-la-Neuve

Data Science in bioscience engineering
Due to the COVID-19 crisis, the information below is subject to change, in particular that concerning the teaching mode (presential, distance or in a comodal or hybrid format).
3 credits
22.5 h + 15.0 h
Q1
Teacher(s)
Bogaert Patrick; Hanert Emmanuel;
Language
French
Main themes
Notions of spatial/temporal dependency and its effect on statistical estimation. Quantification and modelling of dependencies through space and time. Random fields theory. Prediction and simulation of correlated data. Mapping and forecasting methods.
Aims

At the end of this learning unit, the student is able to :

1 Contribution de l'activité au référentiel AA (AA du programme) :
M.1.1, M.2.1, M.2.3, M.5.4, M.5.6., M.6.2, M.6.5
A the end of this activity, the student is able to :
* Name, describe and explain the theoretical concepts underlying the stochastic approach for the analysis and the modeling of spatial and temporal data in an environmental framework;
* Explain the mathematical concepts and use the mathematical tools that are relevant for statistical exploratory analyses and inferential estimations from environmental data;
* Use these concepts and tools in an operational framework in order to make statistical analyses and modeling from a real environmental data set in the framework of a group project;
* Explain and justify the methodological choices that are made for the analyses and the modeling steps by integrating the relevant underlying theoretical concepts that have been presented and used during the practical exercises;
* Write a concise report based on the main findings for this analysis and modeling work by using a relevant and accurate mathematical language and appropriate figures.
 
Content
This course will complete the basic notions already presented during the courses LBIR 1212 - Probability and Statistics (I) and LBIR 1315 - Probability and Statistics (II). The student will be able to analyze data that are correlated through space and time, as frequently encountered in the agro-environmental context. The course will emphasize the link between the general theory and the practical specificities of environmental data. It should allow the student to model such kind of processes and to use them in a mapping or forecasting context.
Teaching methods

Due to the COVID-19 crisis, the information in this section is particularly likely to change.

Regular course and supervised practical exercises. Practical exercises will take place in a computer room using the Matlab or R software. Students will work in groups and will process a specific spatial data set. This personal work will be part of a printed report that must be defended during the examination.
Evaluation methods

Due to the COVID-19 crisis, the information in this section is particularly likely to change.

The examination takes place in two parts : (1) written examination (about an hour);  (2) oral examination with a defense of the project completed by the students (abour half an hour)
Other information
This course can be taught in English
Online resources
Moodle
All the lecture notes and Matlab or R scripts used during the lectures are made available on Moodle.
Faculty or entity
AGRO


Programmes / formations proposant cette unité d'enseignement (UE)

Title of the programme
Sigle
Credits
Prerequisites
Aims
Master [120] in Biology of Organisms and Ecology

Certificat d'université : Statistique et sciences des données (15/30 crédits)

Master [120] in Forests and Natural Areas Engineering

Master [120] in Environmental Bioengineering

Master [120] in Statistic: Biostatistics

Master [120] in Agriculture and Bio-industries