Mercurial > pylearn
view doc/v2_planning/plugin_RP.py @ 1176:b154979782bd
add the API_learner to the toc.
author | Frederic Bastien <nouiz@nouiz.org> |
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date | Fri, 17 Sep 2010 16:19:48 -0400 |
parents | fe6c25eb1e37 |
children | 7fff3d5c7694 |
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''' ================================================= Plugin system for interative algortithm Version B ================================================= After the meeting (September 16) we sort of stumbled on two possible versions of the plug-in system. This represents the second version. It suffered a few changes after seeing Olivier's code and talking to him. Concept ======= The basic idea behind this version is not to have a list of all possible events, but rather have plugin register to events.By specifying what plugin listens to which event produced by what plugin you define a sort of dependency graph. Structuring things in such a graph might make the script more intuitive when reading. I will first go through pseudo-code for two example and then enumerate my insights and concepts on the matter Example : Producer - Consumer that Guillaume described ====================================================== .. code-block:: ''' sch = Schedular() @FnPlugin(sch) def producer(self,event): self.fire('stuff', value = 'some text') @FnPlugin(sch) def consumer(self,event): print event.value @FnPlugin(sch) def prod_consumer(self,event): print event.value self.fire('stuff2', value = 'stuff') producer.act( on = Event('begin'), when = once() ) producer.act( on = Event('stuff'), when = always() ) consumer.act( on = Event('stuff'), when = always() ) prod_consumer.act( on = Event('stuff'), when = always() ) sch.run() ''' Example : Logistic regression ============================= Task description ---------------- Apply a logistic regression network to some dataset. Use early stopping. Save the weights everytime a new best score is obtained. Print trainnig score after each epoch. Possible script --------------- Notes : This would look the same for any other architecture that does not imply pre-training ( i.e. deep networks). For example the mlp. .. code-block:: ''' sched = Schedular() # Data / Model Building : # I skiped over how to design this part # though I have some ideas real_train_data, real_valid_data = load_mnist() model = logreg() # Main Plugins ( already provided in the library ); # This wrappers also registers the plugin train_data = create_data_plugin( sched, data = real_train_data) train_model = create_train_model(sched, model = model) validate_model = create_valid_model(sched, model = model, data = valid_data) early_stopper = create_early_stopper(sched) # On the fly plugins ( print random stuff); the main difference from my # FnPlugin from Olivier's version is that it also register the plugin in sched @FnPlugin(sched) def print_error(self, event): if event.type == Event('begin'): self.value = [] elif event.type == train_model.error(): self.value += [event.value] else event.type == train_data.eod(): print 'Error :', numpy.mean(self.value) @FnPlugin(sched) def save_model(self, event): if event.type == early_stopper.new_best_error(): cPickle.dump(model.parameters(), open('best_params.pkl','wb')) # Create the dependency graph describing what does what train_data.act( on = sched.begin(), when = once() ) train_data.act( on = Event('batch'), train_data.act( on = train_model.done(), when = always()) train_model.act(on = train_data.batch(), when = always()) validate_model.act(on = train_model.done(), when = every(n=10000)) early_stopper.act(on = validate_model.error(), when = always()) print_error.act( on = train_model.error(), when = always() ) print_error.act( on = train_data.eod(), when = always() ) save_model.act( on = eraly_stopper.new_best_errot(), when = always() ) # Run the entire thing sched.run() ''' Notes ===== * I think we should have a FnPlugin decorator ( exactly like Olivier's) just that also attaches the new created plugin to the schedule. This way you can create plugin on the fly ( as long as they are simple functions that print stuff, or compute simple statitics ). * I added a method act to a Plugin. You use that to create the dependency graph ( it could also be named listen to be more plugin like interface) * Plugins are obtained in 3 ways : - by wrapping a dataset / model or something similar - by a function that constructs it from nothing - by decorating a function In all cases I would suggest then when creating them you should provide the schedular as well, and the constructor also registers the plugin * The plugin concept works well as long as the plugins are a bit towards heavy duty computation, disregarding printing plugins and such. If you have many small plugins this system might only introduce an overhead. I would argue that using theano is restricted to each plugin. Therefore I would strongly suggest that the architecture to be done outside the schedular with a different approach. * I would suggest that the framework to be used only for the training loop (after you get the adapt function, compute error function) so is more about the meta-learner, hyper-learner learner level. * A general remark that I guess everyone will agree on. We should make sure that implementing a new plugin is as easy/simple as possible. We have to hide all the complexity in the schedular ( it is the part of the code we will not need or we would rarely need to work on). * I have not went into how to implement the different components, but following Olivier's code I think that part would be more or less straight forward. ''' '''