# Solving The 8 Puzzle With A* Algorithm

I would like to solve/implement the 8 puzzle problem using the A* algorithm in Java. Am asking if someone can help me by explaining to me the steps i must follow to solve it. I have read on the net how the A* works but i don't know how to begin the implementation in Java.

I will be very grateful if you guys can help me and give me the guidelines so that i can implement it myself in Java. I really want to do it to be able to understand it, so i just need the guidelines to start.

I will use priority queues and will read the initial configuration from a text file which looks like for example this:

``````4  3  6
1  2  5
7  8
``````

Pointers to other sites for more explanation/tutorials are welcome.

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I'd begin with deciding how you want to represent the game board states, then implement the operators (eg. move (blank) tile up, move (blank) tile down, ...). Typically you will have a data structure to represent the open list (ie. those states discovered but as yet unexplored (ie. compared with goal state) and another for the closed list (ie. those states discovered and explored and found not to be the goal state). You seed the open list with the starting state, and repeatedly take the "next" state to be explored from the open list, apply the operators to it to generate new possible states and so on ...

There is a tutorial I prepared many years ago at:

http://www.cs.rmit.edu.au/AI-Search/

It is far from the definitive word on state space searching though, it is simply an educational tool for those brand new to the concept.

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You will need to choose a way to represent the game states. A state of the 8-puzzle problem can be represented with a 3x3 grid, a 9-element integer array, a 9-element char array, a string or just an integer (436125780 could represent the state in your example), with the blank cell being represented as 0. Using just an integer will be most space efficient and support very efficient set insertion/membership checking (for implementation of closed set). However, finding the successor states will be more difficult. Using a 9-element char array will make finding successor states easier. I suggest that you use both. Use the char array representation for successor finding and integer representation with closed set.

Then, you will need to choose a heuristic function. For 8-puzzle, Manhattan distance can be used which is a consistent heuristic and guarantees optimality of A* graph search algorithm.

Solving a problem with A* requires finding a way to represent the states, generating successors of states and choosing a heuristic function. The rest of the algorithm can be treated as a black box.

I wrote a post on A* search algorithm and provided python implementation of N-puzzle problem using A* and Manhattan distance as heuristic here: A* search explanation and N-puzzle python implementation

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The link comprehensively addressed the question so I thought it would be enough. Now I've added enough details to answer the question and kept the link only as a reference. –  Kartik Kukreja Dec 28 '13 at 18:22

Check http://olympiad.cs.uct.ac.za/presentations/camp1_2004/heuristics.pdf it describes ways of tackling this very problem.

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A* is a lot like Djikstra's algorithm except it includes a heuristic. You might want to read that wiki or read about single-source shortest path algorithms in general.

A lot of the basic stuff is important but obvious. You'll need to represent the board and create a method for generating the possible next states.

The base score for any position will obviously be the minimum number of actual moves to arrive at it. For A* to work, you need a heuristic that can help you pick the best option of possible next states. One heuristic might be the number of pieces in the correct position.

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