Command-line solver of the following network flows optimization problems:
Maximum Flow
: it seeks a feasible solution that sends the maximum amount of flow from a specified source note s to node t per unit of time.Minimum Cost Flow
: it is the most fundamental of all the network flow problems. It searches for the cheapest possible way of sending a certain amount of flow through a flow network.- In particular, the solver solves the
minimum cost maximum flow problem
, seeking the least-cost maximum flow.
Maximum Flow
:
Minimum Cost Flow
:
Basic algorithms
:
(See the implementations here)
- data: example graphs
- docs: report of the project and results of the algorithms applied to the graphs inside data directory
- pyTest: python tester which permits to easily solve the network flow problems and to draw a graph using matplotlib
- src: the command-line tool source files
The following commands are for a generic Linux system, you may need to adapt them depending on your os
CMake
: minimum version 3.20
, see here how to install.
Both the c++ command line tool and the Python solver requires an input graph described by a well-formed JSON file.
To run the algorithms on you own graph you have to create a JSON file formatted as following:
{
"Num_nodes": 5,
"Edges": [
{
"Source": 0,
"Sink": 1,
"Capacity": 3,
"Cost": 1
},
{
"Source": 0,
"Sink": 2,
"Capacity": 2,
"Cost": 1
},
{
"Source": 1,
"Sink": 2,
"Capacity": 2,
"Cost": 1
},
{
"Source": 1,
"Sink": 3,
"Capacity": 2,
"Cost": 1
},
{
"Source": 2,
"Sink": 3,
"Capacity": 3,
"Cost": 1
},
{
"Source": 2,
"Sink": 4,
"Capacity": 1,
"Cost": 1
},
{
"Source": 3,
"Sink": 4,
"Capacity": 3,
"Cost": 1
}
]
}
Num_nodes
: number of nodes of the graph;Edges
: JSON array containing all the edges;Source
: source node of the direct edge;Sink
: sink node of the edge;Capacity
: maximum capacity of the edge;Cost
: cost (or weight) per unit flow of the edge,
Note:
- The first node (
source
) has index 0; - The last node (
sink
) has index Num_nodes - 1; - Each edge must have positive (> 0)
capacity
andcost
.
See data directory for more examples.
- Clone the repo:
git clone git@github.com:LorenzoDrudi/network-flows.git
- Enter the repo:
cd network-flows
- Generate project build system:
cmake -S . -B build
This command creates a build folder containing all the cmake files and the executable.
- Build the project:
cmake --build build
- After doing the build, enter the build folder:
cd build
- Run the project:
./network_flows path/filename.json
The argument passed to the executable is the full or relative path of the JSON file of the graph
(e.g. ./network_flows ../data/graph1.json
).
The filename argument is optional, you can enter it during the execution.
Inside the pyTest directory there is a simple python solver developed using Networkx library. The solver permits to:
- draw a graph using
matplotlib
- solve the maximum flow problem
- solve the minimum cost maximum flow problem
Python3
: see here how to install
The following commands are for a generic linux system, you may need to adapt them depending on your os
- Enter the directory:
cd pyTest
(You can ignore the next 2 steps (2, 3) if you want to install Python dependencies locally)
- Create a python virtual environment where install all the required dependencies:
python3 -m venv venv
- Activate the virtual environment:
source venv/bin/activate
- Install requirements:
pip install -r requirements.txt
- Execute the Python solver:
python3 graph_solver.py path/filename.json
(e.g. python3 graph_solver.py ../data/graph1.json
)
- Then, when you don't need anymore the python solver, deactivate the virtual environment:
deactivate