Skip to content

Commit a210293

Browse files
committed
small changes
1 parent 8c7b9a5 commit a210293

File tree

1 file changed

+59
-2
lines changed

1 file changed

+59
-2
lines changed

README.md

Lines changed: 59 additions & 2 deletions
Original file line numberDiff line numberDiff line change
@@ -1,5 +1,62 @@
1-
## A Quarto Manuscript Template
1+
# Machine Learning in Materials Processing & Characterization
22

3-
This is a template repo for generating a manuscript from Quarto that accompanies the tutorial at: [Quarto Manuscripts: VS Code](https://quarto.org/docs/manuscripts/authoring/vscode.html)
3+
Course curriculum and materials for a 4th semester undergraduate course (5 ECTS) focusing on applying machine learning techniques to experimental materials science data.
44

5+
## Course Overview
56

7+
This course provides students with essential skills and practical knowledge to harness machine learning techniques for accelerating materials discovery and design. Specifically tailored for students interested in the BSc program "KI-Materialtechnologie" (AI for materials technology), it provides hands-on experience with core and advanced machine learning methods—including neural networks, optimization strategies, and generative modelling—to tackle real-world materials science problems.
8+
9+
**Key Focus Areas:**
10+
- Machine learning techniques for materials processing and characterization data
11+
- Vision-based ML for microstructure analysis and classification
12+
- Time-series ML for process monitoring and optimization
13+
- Spectral data analysis using dimensionality reduction and ML
14+
- Multi-modal data fusion combining images, spectra, and process parameters
15+
16+
## Course Structure
17+
18+
**Duration:** 14 weeks
19+
**Credits:** 5 ECTS
20+
**Format:** 2h lecture + 2h exercises per week
21+
22+
The course is organized into five units:
23+
1. **Foundations:** From Materials Signals to Machine Learning (Weeks 1-3)
24+
2. **ML for Microstructure:** Vision & Representation (Weeks 4-6)
25+
3. **ML in Processing:** Time-Series, Optimization, Thermal/Mechanical Data (Weeks 7-9)
26+
4. **ML for Characterization Signals** (Weeks 10-12)
27+
5. **Project + Reflection** (Weeks 13-14)
28+
29+
## Prerequisites
30+
31+
- Basic knowledge of Python programming
32+
- Familiarity with machine learning fundamentals (covered in parallel ML intro course)
33+
- Understanding of materials science fundamentals
34+
35+
36+
## Learning Outcomes
37+
38+
Upon completion of this course, students should be able to:
39+
40+
- Interpret materials characterization and processing data in an ML-ready way
41+
- Build ML pipelines for microstructure classification, process prediction, and spectral analysis
42+
- Understand the physics of image/signal formation well enough to avoid "garbage in → garbage out"
43+
- Evaluate uncertainty and biases in experimental ML models
44+
- Combine processing and characterization data for property prediction
45+
- Critically evaluate claims about ML in materials science
46+
47+
## Author
48+
49+
**Philipp Pelz**
50+
Materials Science and Engineering
51+
Course Instructor & Content Development
52+
53+
## License
54+
55+
This work is licensed under a [Creative Commons Attribution 4.0 International License (CC BY 4.0)](https://creativecommons.org/licenses/by/4.0/).
56+
57+
58+
59+
60+
## References
61+
62+
Course materials and references are maintained in `references.bib` using BibTeX format.

0 commit comments

Comments
 (0)