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A stationary 13C-MFA tool.

Project description


This package is developed to perform stationary metabolic flux analysis
calculations for estimation of intracellular flux distribution.
FluxPyt is written in python3. The anaconda package list is provided in
the requirements.txt file.

The package was developed as a part of PhD work of Desai Trunil Shamrao at:

Systems Biology for Biofuels Group
Group Leader, Dr. Shireesh Srivastava
International Centre for Genetic Engineering and Biotechnology (ICGEB),
Aruna Asaf Ali Marg,
New Delhi.

The PhD fellowship of Trunil is funded by the Council for Scientific
and Industrial Research (CSIR).
The project is funded by Department of Biotechnology (DBT)

The author specially thanks Ahmad for being there to discuss issues and to
help get rid of few bugs.

Installation ( for Windows):
Download and install Anaconda distribution (version was used in this tutorial).

Open an Anaconda command prompt.
Click on Windows start button.
Type 'anaconda'. A link to open Anaconda command promt will be shown.

Type following commands to create environment in Anaconda for running fluxpyt:

conda create -n fluxpyt_env python=3.6.1 numpy=1.12.1 scipy=0.19.0 sympy=1.0
activate fluxpyt_env
conda install -c conda-forge lmfit
conda install -c sjpfenninger glpk
conda install csvkit=0.9.1
conda install matplotlib=2.0.2
conda install pandas=0.20.1
pip install fluxpyt


Version 0.1.2
-Changed installation directions in README.rst

Version 0.1.1
-Project setup created by Pyscaffold.

-Generated documentation using Sphinx

Version 0.1

-Initial release


This project has been set up using PyScaffold 2.5.8. For details and usage
information on PyScaffold see

Project details

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