This is the old template-directory README. Most of this information is still accurate and it contains more details than the new README. However, see there first for the creation of new projects. ======================================================================== This directory contains sample files that should make it easy to create an EO algorithm to evolve any type of structure (EO comes with two examples, bitstrings and vector of real variables, so you'll need this as soon as you want to evolve something else). At the moment, only algorithms involving a scalar fitness (double) are implemented (see test dir for Pareto optimization of multiple- objective fitness - or be patient :-) This file will help you to build the same algorithm than the ones in the Lesson4 of the tutorial, but with YOUR genotype instead of bitstrings or vector. More details in Lesson5 of the tutorial. It is assumed in the following that you have read the first part of the tutorial (Lessons 1 to 4). Creating the algorithm for your genotype ---------------------------------------- In what follows, we will suppose that you want to evolve some data structure, and that you have enough programming skills to be able to write C code for its random initilialization, its crossover, its mutation and the computation of its fitness. The helper script * create.sh * will create for you the files you need from the samples in tutorial/Templates dir, and all you'll have to do is to include the actual code where indicated in those files (between keywords START and END). First, let's choose a name: let's call the new EO class eoAppli. All newly created classes will be named eoAppliXXX (in the file eoAppliXXX) 1- cd to the tutorial dir 2- create the directory for your application (let's assume you call it APPLICATION): type in mkdir APPLICATION 3- go to the Templates dir cd Templates and run the helper script create.sh with the following arguments ./create.sh Appli ../APPLICATION 4- cd to the APPLICATION dir (cd ../APPLICATION). You should see there the following files: AppliEA.cpp the main file, includes all other, to be compiled Makefile with default target eoAppliEA eoAppli.h class eoAppli, FitT = template fitness eoAppliEvalFunc.h class for the computation of fotness eoAppliInit.h class for genotype initlialization eoAppliMutation.h class for mutation eoAppliQuadCrossover.h class for (quadratic) crossover make_genotype_Appli.h helper function that create the initializer make_op_Appli.h helper function that creates the variatin operators Note: You can go directly to step 6 and 7: you'll get a lot of warnings, but will be able to run an EA that does nothing! 5- Edit those files to suit your needs. The minimal addition you'll need to make are in eoAppli.h define your genotype in eoAppliInit.h define the initialization of one genotype in eoAppliMutation.h define the mutation of one genotype in eoAppliQuadCrossover.h define the crossover of 2 genotypes HINT: look for keywords START and END and modify code in between. 6- Compile eoAppliEA.cpp. If your APPLICATION dir is in the tutorial dir, you don't need to modify Makefile. Just type in % make 7- Run the resulting program: % eoAppliEA The default output is one line per generation with the generation number, the number of evaluations performed, the best and average fitnesses in the population. The algorithm stops by default after 100 generations. 8- Customize the parameters: copy eoAppliEA.status into e.g. eoAppliEA.param, edit eoAppliEA.param (uncomment the lines you want to become active), and run % eoAppliEA @eoAppliEA.param (see the Lesson 5 of the tutorial for more details now). HINTS ----- 1- If some new classes you create require some user parameter, you can either read them in the file where they are created (e.g. make_op_Appli.h for variation operators), or pass the eoParser to the constructor of the class, and read the parameter from the parser. 2- If you stick to privacy for the data in your EO class, you will probably need to write accessors to those data, as well as some public methods to modify them, as soon as some other methods need them too. 3- The sample make_op_Appli.h supposes that you ony have one crossover and one mutation operator. However, the code for multiple operators is there: you can have for instance 2 crossover operators, and choose among them according to relative weights (proportional choice) - same for mutation. Look at the operator section in eoAppliEA.cpp In particular, the user parameters cross1Rate and mut1Rate are totally useless for a single operator. To add another operator, you have to create another class by mimicking what has been done for the first operator. For instance, let's suppose you want to create another mutation. * duplicate the code for eoAppliMutation class * in the second version, change the class name (eoAppliMutation) into another name (let's say eoAppliBetterMutation) - you must change the name in the class declaration, in the constructor and in the className() method. * in the new eoAppliBetterMutation class, change the code for the operator() - and eventually the code for the constructor. * in the make_op_Appli.h file, in the mutation section, uncomment the lines mut = new eoAppliSecondMutation(varType _anyVariable); _state.storeFunctor(mut); double mut2Rate = _parser.createParam(1.0, "mut2Rate", "Relative rate for mutation 2", '2', "Variation Operators").value(); propMutation.add(*mut, mut2Rate); and change the name of the class from eoAppliSecondMutation to your name eoAppliBetterMutation (you can also change the keyword from mut2Rate to something more meaningful like BetterMutationRate). You're done! In case of problem: Marc.Schoenauer@inria.fr