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Knapsacks.jl

Stable Dev Build Status Coverage Project Status: Active – The project has reached a stable, usable state and is being actively developed.

This package solves Knapsack Problems (KPs) using different algorithms.

Usage

First, the package defines the Knapsack type:

struct Knapsack
    capacity::Int64            # Knapsack capacity
    weights ::Vector{Int64}    # Items' weights
    profits ::Vector{Int64}    # Items' profits
end

Then, there are four available solvers, called from a single function which takes a Knapsack instance, and returns the optimal/best value and an Array with the selected items:

function solveKnapsack(data::KnapsackData, algorithm::Symbol = :ExpandingCore; optimizer = nothing)

Where algorithm must be one of the following:

  • DynamicProgramming: Solves KP using a naïve dynamic programming.
  • BinaryModel: Solves KP using a binary programming model.
  • ExpandingCore: Solves KP using Pisinger's expanding core algorithm.
  • Heuristic: Solves KP using a simple heuristic.

Algorithm BinaryModel uses JuMP, and the user must pass the optimizer.

For example, given a Knapsack instance data:

optimal, selected = solveKnapsack(data, :DynamicProgramming)
optimal, selected = solveKnapsack(data, :BinaryModel; optimizer = GLPK.Optimizer)
optimal, selected = solveKnapsack(data, :ExpandingCore)
value, selected = solveKnapsack(data, :Heuristic)

Instance generator

The package is able to generate random instances of Knapsack with the following function (based on this code):

function generateKnapsack(num_items::Int64, range::Int64 = 1000; type::Symbol = :Uncorrelated, seed::Int64 = 42, num_tests::Int64 = 1000)::Knapsack

Where:

  • num_items: Number of items.
  • range: Maximum weight value.
  • type: Profit type (:Uncorrelated, :WeakCorrelated, :StrongCorrelated, :SubsetSum).
  • seed: Random seed value.
  • num_tests: Check source code or original code.

Installation

This package is a registered Julia Package, and can be installed through the Julia package manager.
Open Julia's interactive session (REPL) and type:

] add Knapsacks

Benchmark

Benchmark results (time in seconds) for different maximum values for weights and profits, number of items and algorithms. Average times for 10 runs and using @timed (BinaryModel using GLPK.jl).

--------------------------------------------------------------------------------------------------
 MaxV\Items         10        100        500       1000       2000       4000  Algorithm
--------------------------------------------------------------------------------------------------
             0.0000022  0.0000111  0.0000565  0.0001892  0.0007063  0.0026810  DynamicProgramming
         10  0.0001429  0.0003092  0.0009412  0.0019578  0.0039707  0.0122269  BinaryModel
             0.0000072  0.0000293  0.0001384  0.0003038  0.0006792  0.0013258  ExpandingCore
             0.0000016  0.0000052  0.0000235  0.0000478  0.0001008  0.0002182  Heuristic
--------------------------------------------------------------------------------------------------
             0.0000062  0.0000499  0.0003760  0.0011797  0.0110915  0.0434132  DynamicProgramming
        100  0.0001357  0.0004809  0.0017649  0.0040757  0.0093222  0.0269660  BinaryModel
             0.0000095  0.0000600  0.0002152  0.0003791  0.0007064  0.0010730  ExpandingCore
             0.0000013  0.0000050  0.0000192  0.0000409  0.0000928  0.0001957  Heuristic
--------------------------------------------------------------------------------------------------
             0.0000167  0.0001582  0.0013383  0.0115258  0.0674425  0.3561994  DynamicProgramming
        500  0.0001290  0.0006400  0.0017707  0.0056317  0.0174576  0.0483382  BinaryModel
             0.0000090  0.0000473  0.0002074  0.0003911  0.0006959  0.0014079  ExpandingCore
             0.0000013  0.0000044  0.0000191  0.0000417  0.0000866  0.0001854  Heuristic
--------------------------------------------------------------------------------------------------
             0.0000306  0.0003130  0.0063493  0.0296504  0.1574919  0.7645551  DynamicProgramming
       1000  0.0001279  0.0003963  0.0021209  0.0089878  0.0247364  0.0634847  BinaryModel
             0.0000084  0.0000498  0.0002309  0.0004473  0.0010606  0.0015858  ExpandingCore
             0.0000014  0.0000043  0.0000209  0.0000423  0.0000873  0.0001845  Heuristic
--------------------------------------------------------------------------------------------------
             0.0000616  0.0007209  0.0174228  0.0695316  0.3422440  1.6595295  DynamicProgramming
       2000  0.0001297  0.0004131  0.0024877  0.0062686  0.0211603  0.0714104  BinaryModel
             0.0000090  0.0000538  0.0002315  0.0004709  0.0008501  0.0018993  ExpandingCore
             0.0000014  0.0000045  0.0000225  0.0000422  0.0000866  0.0001845  Heuristic
--------------------------------------------------------------------------------------------------

Intel(R) Core(TM) i7-8700K CPU @ 3.70GHz, 64GB RAM, using Julia 1.7.2 on Ubuntu 20.04 LTS.

How to cite this package

You can use the bibtex file available in the project.

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