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1
Intro
2
CPU vs GPU
3
Visualization
4
VTK
5
PartU
6
PartU Python
7
PartU User Interface
8
Python Confidence
9
Python scripting
10
Filter collection
11
Contour plot
12
Data inspection
13
Viewing data
14
Conclusion
15
Questions
Description:
Explore GPU-accelerated crystallography techniques using Python in this EuroPython 2017 conference talk. Discover how the Max Planck Computing and Data Facility leverages Python's data ecosystem for atom probe crystallography, scaling across multiple GPUs. Learn about the PyNX software package, which utilizes pyCUDA and pyOpenCL libraries for fast parallel computation scattering. Gain insights into the data workflow analysis process, from initial exploratory data analysis using Jupyter notebooks and Python packages like pandas, matplotlib, and plotly, to production-stage interactive visualization with Paraview. Understand the comparison between CPU and GPU performance, Python scripting techniques, and data inspection methods. Dive into topics such as VTK file generation, user interface development, and the creation of filter collections and contour plots for effective data visualization.

Big Data Analytics at the MPCDF - GPU Crystallography with Python

EuroPython Conference
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