I am building a chess engine as my project. After researching a little, I have decided to implement minimax with alpha-beta pruning using the negascout algorithm. I will also be using iterative deepening since i have to impose a time limit on each search instead of a depth limit. Killer heuristic technique will be used to optimize the search. I need to know if these choices will give me the best performance/code complexity ratio. Please suggest if I should exclude any of the above or include any extras.
The other question is that since I have a cluster available and i need to make the program as 'intelligent' as possible. I would like to distribute the search to increase depth. I have read the Chess programming wiki article on parallel search but it didn't give much detail. My perception is that simply sending different siblings at level 1 to different processors and having them search these subtrees on their own will do the trick. A shared transposition table would be of great advantage but how would they communicate for the table? That will be a huge overhead in the search. Thanks :)
Sorry if what I'm doing is considered wrong here but I need to bump this thread. I really need answers. anyone?