find arrangement for n Queens in n*n board of chees using Genetic algorithms
-
Updated
Jul 2, 2022 - Python
find arrangement for n Queens in n*n board of chees using Genetic algorithms
The N Queen is the problem of placing N chess queens on an N×N chessboard so that no two queens attack each other.
Solving the nqueens problem using genetic algorithm
Python Implementation for N-Queen problem using Hill Climbing, Genetic Algorithm, K-Beam Local search and CSP
The 8-queens problems asks us to place 8 queens on a chessboard so that no two can capture one another; that is, no two are on the same row, column, or diagonal.
Hill Climbing and Hill Climbing With Random Restart implemented in Java.
Design and Analysis of Algorithms
An Online n queens board
An interactive visualizer for N-Queen problem using backtracking.
Genetic Algorithm for Solving NQueens Problem
Solving N-Queen problem using Genetic Algorithm.
A simple python(also cython) script to solve and visualize N-Queens problem
Solving N-queens problem with Genetic Algorithm - Artificial Intelligence
Implementation of the N-Queens problem by using Simulated Annealing as a local search algorithm and Min Conflicts as the CSP (Constraint Satisfaction Problem) algorithm.
N-Queens problem solution using Hill-Climbing algorithm rewritten from Common Lisp to Go (https://github.com/joaobap/clisp-hill-climbing)
//contains recursion programs for practice and learning
Solve N queens problem with an algorithm written in JavaScript. Solutions are displayed in a chess board drawn by D3js. You can choose the n size between 4 and 10.
Basically it is a solution for "N-Queen" Problem. I added mix of humor to the code. Sounds like "The King" wanted date all "The Queen" :)
Implementation of search algorithms, BFS (Breadth First Search) and DFS (Depth First Search), to solve the NQueens problem.
Add a description, image, and links to the nqueens-problem topic page so that developers can more easily learn about it.
To associate your repository with the nqueens-problem topic, visit your repo's landing page and select "manage topics."