cobrapy
COBRApy - Constraint-Based Reconstruction and Analysis
Overview
COBRApy is a Python library for constraint-based reconstruction and analysis (COBRA) of metabolic models, essential for systems biology research. Work with genome-scale metabolic models, perform computational simulations of cellular metabolism, conduct metabolic engineering analyses, and predict phenotypic behaviors.
Core Capabilities
COBRApy provides comprehensive tools organized into several key areas:
1. Model Management
Load existing models from repositories or files:
from cobra.io import load_model
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