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  4. Python code for: Modeling and Optimization of Complex Enzymatic Reactions: A Practical Guide for Biotechnologists and Bioprocess Engineers
 
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Python code for: Modeling and Optimization of Complex Enzymatic Reactions: A Practical Guide for Biotechnologists and Bioprocess Engineers

Citation Link: https://doi.org/10.15480/882.17328
Type
Software
Version
v1.0
Date Issued
2026-06-18
Author(s)
Paschalidis, Leandros  
Systemverfahrenstechnik V-4  
Tillmann, Märthe Theresa
Systemverfahrenstechnik V-4  
Contact
Skiborowski, Mirko  orcid-logo
Systemverfahrenstechnik V-4  
Language
English
TORE-DOI
10.15480/882.17328
TORE-URI
https://hdl.handle.net/11420/63560
Abstract
The Python codes accompanying the publication
'Modeling and Optimization of Complex Enzymatic Reactions: A Practical Guide for Biotechnologists and Bioprocess Engineers'
are provided in this repository. The codes are used to solve the application example within the tutorial.
Subjects
enzymes
modeling
optimization
reaction engineering
DDC Class
660.6: Biotechnology
660.2: Chemical Engineering
Funding(s)
SFB 1615 - SMARTe Reaktoren für die Verfahrenstechnik der Zukunft  
More Funding Information
This project is funded by the Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) – SFB 1615 – 503850735.
License
https://mit-license.org/
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initial rate.py

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sensitivity analysis.py

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simulation.py

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superstructure.zip

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README Tutorial.pdf

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optimal control.py

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progress curve.py

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validation unseen data.py

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Bayesian optimization.py

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confidence ellipses.py

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