Filters
total: 8716
filtered: 190
-
Catalog
- Publications 5453 available results
- Journals 142 available results
- Conferences 114 available results
- People 157 available results
- Inventions 1 available results
- Projects 8 available results
- Laboratories 1 available results
- Research Teams 1 available results
- e-Learning Courses 190 available results
- Events 23 available results
- Open Research Data 2626 available results
Chosen catalog filters
Search results for: DATA-DRIVEN MODELLING
-
Modelling and Simulation of Control Systems Applied in Energy Technologies, W,L, Energetyka, sem.05, zimowy 2024/2025 (PG_00042105)
e-Learning CoursesThis course is titled Modelling and Simulation of Control Systems Applied in Energy Technologies intended for seventh-semester students in the BSc program in Power Engineering, specializing in Energy Technologies.
-
Spatial data processing technologies
e-Learning Courses -
Business Data Analytics-2022
e-Learning Courses -
Operating systems (Data Engineering)
e-Learning Courses -
DATA MINING NSTAC 2022
e-Learning CoursesNSTAC
-
Inżynieria Danych Data Science
e-Learning Courses -
Numerical Methods - Data Engineering
e-Learning Coursesstudia inżynierskie, informatyka i inżynieria danych
-
Data Mining 2023/24
e-Learning Courses -
Numerical Modelling in flow systems design_W/S_Energetyka_sem6_lato 23/24_PG_00042087
e-Learning CoursesPrzedstawienie podstaw modelowania komputerowego procesów mających zastosowanie w technice cieplnej tak aby słuchacz był w stanie zrozumieć i zinterpretować wyniki otrzymane przy pomocy kodów obliczeniowych
-
Computer controlled systems - 2022/2023
e-Learning Coursesmateriały wspierające wykład na studiach II stopnia na kierunku ACR pod tytułem komputerowe systemy automatyki 1. Computer system – controlled plant interfacing technique; simple interfacing and with both side acknowledgement; ideas, algorithms, acknowledge passing. 2. Methods of acknowledgement passing: software checking and passing, using interrupt techniques, using readiness checking (ready – wait lines). The best solution...
-
CCS-lecture-2023-2024
e-Learning Coursesmateriały wspierające wykład na studiach II stopnia na kierunku ACR pod tytułem komputerowe systemy automatyki 1. Computer system – controlled plant interfacing technique; simple interfacing and with both side acknowledgement; ideas, algorithms, acknowledge passing. 2. Methods of acknowledgement passing: software checking and passing, using interrupt techniques, using readiness checking (ready – wait lines). The best solution optimization...
-
Visualization of Economic Data - 2022
e-Learning Courses -
CAD. 3D modelling (2022/2023) BSc Arch, sem 2
e-Learning CoursesConducting unit: Faculty of ArchitectureField of the study: ArchitectureAcademic year: 2022/2023 Summer TermDuration: 15 weeks (30 hours laboratory per term) Subject objectives: The course aim is to demonstrate the application of Computer Aided Design in preparation of architectural 3D models and project presentations. No previous CAD experience is necessary. Using hands-on exercises, students explore how to create project presentations...
-
DATA MINING STAC 2022/2023
e-Learning CoursesSTAC
-
Advanced Data Mining 2022/23
e-Learning Courses -
Numerical Methods - Data Engineering - 2023
e-Learning Coursesstudia inżynierskie, informatyka i inżynieria danych
-
Business Data Analytics-2024 /2025
e-Learning Courses -
Data analysis - team project 2024
e-Learning Courses -
Analiza danych typu Big Data
e-Learning Courses -
Numerical Methods - Data Engineering - 2024
e-Learning CoursesInżynieria danych
-
Business Data Analytics-2023 /2024
e-Learning Courses -
Big Data ST (2024/2025_zima)
e-Learning Courses -
Inżynieria Danych Data Science 2024
e-Learning Courses -
Advanced Data Mining 2023/24
e-Learning Courses -
Selected topics in electrical engineering – modelling of, electrical machines [2021/22]
e-Learning Courses -
DATA MINING NSTAC 2022 ON-LINE
e-Learning CoursesNSTAC
-
Business data semantics and representation 2023
e-Learning Courses -
Visualization of economic data 2024/2025
e-Learning Courses -
Business data semantics and representation - 2024
e-Learning Courses -
Business data semantics and representation 2024
e-Learning Courses -
Visualization of Economic Data - 2023/24
e-Learning Courses -
Repetytorium: POP + WAI + HiH (Data Engineering)
e-Learning Courses -
Qualitative Data Analysis Methods -Summer 2022
e-Learning Courses -
D. Zalewska 4 Data Engineering 4
e-Learning Courses -
Operating systems (Data Engineering) - 2023/24
e-Learning Courses -
Algorithms & Data Structures 2022/23
e-Learning Courses -
Algorithms & Data Structures 23/24
e-Learning Courses -
Big Data 2024 nst (2024/2025_zima)
e-Learning Courses -
Operating systems (Data Engineering) - 2024/25
e-Learning Courses -
[ITiT] Technologies of Spatial Data Analysis and Processing
e-Learning Courses{mlang pl} Dyscyplina: Informatyka Techniczna i Telekomunikacja Zajęcia obowiązkowe dla doktorantów II roku Prowadzący: dr hab. inż. Marcin Kulawiak Liczba godzin: 30 h Forma zajęć: wykład/seminarium {mlang} {mlang en} Discipline: Technical Informatics and Telecommunications Obligatory course for 2nd year PhD students Academic teacher: dr hab. inż. Marcin Kulawiak Total hours of training: 30 teaching hours Course...
-
Scientific methods of computer data analysis and presentation
e-Learning Courses -
Qualitative Data Analysis Methods -Summer 22/23
e-Learning Courses -
Data Warehouses - Part-time studies - 2022/2023
e-Learning CoursesThe curse is led for part-time studies, on the first semester of postgraduate studies.
-
WETI (Data Engineering) - Mathematics 2021/22 (M.Musielak)
e-Learning Courses -
WETI (Data Engineering) - Mathematics 2022/23 (M.Musielak)
e-Learning Courses -
WETI (Data Engineering) - Mathematics 2019/20 (M.Musielak)
e-Learning Courses -
Data Warehouses - Part-time studies - 2023/2024
e-Learning CoursesThe curse is led for part-time studies, on the first semester of postgraduate studies.
-
Analiza danych typu Big Data 2023/24
e-Learning Courses -
Deep neural networks for data analysis 24/25
e-Learning CoursesThis course covers introduction to supervised machine learning, construction of basic artificial deep neural networks (DNNs) and basic training algorithms, as well as the overview of popular DNNs architectures (convolutional networks, recurrent networks, transformers). The course introduces students to popular regularization techniques for deep models. Besides theory, large part of the course is the project in which students apply...
-
WETI - Data Engineering - Mathematics 2024/25 (E.Kozłowska-Walania)
e-Learning Courses