summaryrefslogtreecommitdiff
path: root/admin/meeting-notes/2025-10-13.md
blob: a191670aad441705eaffbe0ad274b2b55bf91163 (plain)
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
## Updates
- https://pythonnumericalmethods.studentorg.berkeley.edu/notebooks/Index.html
- Numerical Methods for Engineers Steven C Chapra

---
## Topics
and questions

- Decide on textbook 

---
## Discussion 


---
## Actions
- Send Ciprian PDF of Numerical methods PDF


- Ciprian to look at textbook in more detail and make a decision by next time.
- Christian to send PDF of the second book by Steven Chapra

Module 4: Data Analysis and Processing  

- 4.1. Introduction to Data Analysis (describe the Panda Toolbox)  -> One Lecture
- 4.2. We should focus on effective ways of looking at data  (philosophy of making that make sense) -> One Lecture
- 4.3. I/Ofile handling (different types of data files: ASCII, CSV, TXT, JPEG,...) -> Here they will learn how to read/handle: datasets including images. -> One Lecture
- 4.4. Statistical Anasis (mean/averaging, standard deviation, variance...) -> **_Reminder: Ciprian to send application from Spectroscopy and CFD -> One Lecture_**
- 4.5. Data Cleaning (linear regression, least square fitting, extrapolation, moving average) -> One Lecture
- 4.6. Data Filtering & Signal Processing (filters: Gaussian Filter, Sobel edge detection, Kalman, Butterworth, FFT) -> We need to give a lecture of what is/how it works Digital filter design (lowpass, highpass, bandpass, filter response curves, how does one select a given filter). One lecture all theory so that in the second lecture they learn how to select different filters. -> Two lectures
- 4.7 Image processing: apply some of the filtering to make images sharper/crispier, teach them how to make videos/gifs out of images. -> One Lecture. Possible application: **_from CFD density data obtain Synthetic Schlieren images (Ciprian will send you this!)_**



![[20251013_103651.jpg]]