def get_corrupted_input(rng, input, corruption_level, ntype='zeromask'): MRG = RNG_MRG.MRG_RandomStreams(rng.randint(2**30)) #theano_rng = RandomStreams() if corruption_level == 0.0: return input if ntype == 'zeromask': return MRG.binomial(size=input.shape, n=1, p=1 - corruption_level, dtype=theano.config.floatX) * input elif ntype == 'gaussian': return input + MRG.normal(size=input.shape, avg=0.0, std=corruption_level, dtype=theano.config.floatX) elif ntype == 'salt_pepper': # salt and pepper noise print 'DAE uses salt and pepper noise' a = MRG.binomial(size=input.shape, n=1,\ p=1-corruption_level,dtype=theano.config.floatX) b = MRG.binomial(size=input.shape, n=1,\ p=corruption_level,dtype=theano.config.floatX) c = T.eq(a, 0) * b return input * a + c
def add_gaussian_noise(IN, std=1, MRG=None): if MRG is None: MRG = RNG_MRG.MRG_RandomStreams(1) print 'GAUSSIAN NOISE : ', std noise = MRG.normal(avg=0, std=std, size=IN.shape, dtype='float32') OUT = IN + noise return OUT
def corrupt_input(IN, p=0.5, MRG=None): if MRG is None: MRG = RNG_MRG.MRG_RandomStreams(1) # salt and pepper? masking? noise = MRG.binomial(p=p, n=1, size=IN.shape, dtype='float32') IN = IN * noise return IN
def __init__(self, input=None, n_visible=784, n_hidden=500, \ W=None, hbias=None, vbias=None, numpy_rng=None, theano_rng=None, enhanced_grad_flag=False, batch_sz=100, mpf_type='1bit'): self.n_visible = n_visible self.n_hidden = n_hidden self.enhanced_grad_flag = enhanced_grad_flag self.batch_sz = batch_sz if numpy_rng is None: # create a number generator numpy_rng = np.random.RandomState(1234) if theano_rng is None: theano_rng = RNG_MRG.MRG_RandomStreams(numpy_rng.randint(2**30)) #theano_rng = RandomStreams(numpy_rng.randint(2 ** 30)) num_vishid = n_visible * n_hidden # initialize input layer for standalone RBM or layer0 of DBN self.input = input if not input: self.input = T.matrix('input') self.mpf_type = mpf_type self._init_params(numpy_rng, n_hidden, n_visible, mpf_type) self.theano_rng = theano_rng
def salt_and_pepper(IN, p=0.2, MRG=None): if MRG is None: MRG = RNG_MRG.MRG_RandomStreams(1) # salt and pepper noise a = MRG.binomial(size=IN.shape, n=1, p=1 - p, dtype='float32') b = MRG.binomial(size=IN.shape, n=1, p=0.5, dtype='float32') c = T.eq(a, 0) * b return IN * a + c
def __init__(self, eta=0, gamma=0.55, seed=180891): self.eta_sqrt = shared_floatx(sqrt(eta), "eta") add_role(self.eta_sqrt, ALGORITHM_HYPERPARAMETER) self.gamma_half = shared_floatx(gamma/2, "gamma") add_role(self.gamma_half, ALGORITHM_HYPERPARAMETER) self.theano_random = rng_mrg.MRG_RandomStreams(seed=seed)
def __init__(self, model_params): [ self.batch_sz, self.num_dim, self.num_hids, numpy_rng, self.dim_sample, binaryF ] = model_params self.numpy_rng = numpy_rng self.init_params(numpy_rng) self.last_layer = stochastic_layer(self.num_hids[0], self.num_dim, binaryF, numpy_rng) self.params = self.params + self.last_layer.params self.MRG = RNG_MRG.MRG_RandomStreams(numpy_rng.randint(2**30))
def main(): data = TextDataset( path='../../../../datasets/shakespeare_input.txt', source= "http://cs.stanford.edu/people/karpathy/char-rnn/shakespeare_input.txt", target_n_future=1, sequence_length=50) rnn = RNN(outdir='outputs/rnn/', input_size=len(data.vocab), hidden_size=128, output_size=len(data.vocab), layers=2, activation='softmax', hidden_activation='relu', mrg=RNG_MRG.MRG_RandomStreams(1), weights_init='uniform', weights_interval='montreal', bias_init=0.0, r_weights_init='identity', r_bias_init=0.0, cost_function='nll', cost_args=None, noise='dropout', noise_level=.7, noise_decay='exponential', noise_decay_amount=.99, direction='forward') cost_monitor = Monitor("cost", rnn.get_train_cost(), train=False, valid=True, test=True) optimizer = RMSProp(model=rnn, dataset=data, grad_clip=5., hard_clip=False, learning_rate=2e-3, lr_decay='exponential', lr_decay_factor=0.97, decay=0.95, batch_size=50, epochs=50) # optimizer = AdaDelta(model=gsn, dataset=mnist, n_epoch=200, batch_size=100, learning_rate=1e-6) optimizer.train(monitor_channels=cost_monitor)
def compile_sampling(self, data_train, data_valid, data_test, training_n_samples): X = tt.matrix('X') batch = tt.iscalar('batch') n_samples = tt.iscalar('n_samples') n_layers = len(self.layers) samples = [None] * n_layers samples[0] = replicate_batch(X, n_samples) if "gpu" in theano.config.device: from theano.sandbox import rng_mrg srng = rng_mrg.MRG_RandomStreams(seed=42) else: srng = tt.shared_randomstreams.RandomStreams(seed=42) for layer in range(n_layers - 1): samples[layer + 1] = self.compute_samples(srng, samples[layer], layer) givens = dict() givens[X] = data_valid[batch * self.batch_size:(batch + 1) * self.batch_size] self.sample_convergence = theano.function([batch, n_samples], samples, givens=givens) givens[n_samples] = np.int32(training_n_samples) givens[X] = data_train[batch * self.batch_size:(batch + 1) * self.batch_size] self.sample_train = theano.function([batch], samples, givens=givens) givens[X] = data_valid[batch * self.batch_size:(batch + 1) * self.batch_size] self.sample_valid = theano.function([batch], samples, givens=givens) givens[X] = data_test[batch * self.batch_size:(batch + 1) * self.batch_size] self.sample_test = theano.function([batch], samples, givens=givens)
class DenoisingAutoencoder(GSN): ''' Class for creating a new Denoising Autoencoder (DAE) This is a special case of a GSN with only one hidden layer ''' # Default values to use for some DAE parameters _defaults = {# gsn parameters "walkbacks": 1, "input_size": None, # number of input units - please specify for your dataset! "hidden_size": 1500, "visible_activation": 'sigmoid', "hidden_activation": 'tanh', "input_sampling": True, "MRG": RNG_MRG.MRG_RandomStreams(1), # train param "cost_function": 'binary_crossentropy', # noise parameters "noise_annealing": 1.0, #no noise schedule by default "add_noise": True, "noiseless_h1": True, "hidden_add_noise_sigma": 2, "input_salt_and_pepper": 0.4, # data parameters "output_path": 'outputs/dae/', "is_image": True, "vis_init": False} def __init__(self, config=None, defaults=_defaults, inputs_hook=None, hiddens_hook=None, dataset=None): # init Model # force the model to have one layer - DAE is a specific GSN with a single hidden layer defaults['layers'] = 1 if config: config['layers'] = 1 super(DenoisingAutoencoder, self).__init__(config=config, defaults=defaults, inputs_hook=inputs_hook, hiddens_hook=hiddens_hook, dataset=dataset)
def __init__(self, inputs=None, hiddens=None, params=None, outdir='outputs/lstm/', activation='relu', gate_activation='sigmoid', mrg=RNG_MRG.MRG_RandomStreams(1), weights_init='uniform', weights_interval='montreal', weights_mean=0, weights_std=5e-3, bias_init=0.0, r_weights_init='identity', r_weights_interval='montreal', r_weights_mean=0, r_weights_std=5e-3, r_bias_init=0.0, direction='forward', clip_recurrent_grads=False): """ Initialize an LSTM. Parameters ---------- inputs : List of [tuple(shape, `Theano.TensorType`)] The dimensionality of the inputs for this model, and the routing information for the model to accept inputs from elsewhere. `inputs` variable are expected to be of the form (timesteps, batch, data). `shape` will be a monad tuple representing known sizes for each dimension in the `Theano.TensorType`. The length of `shape` should be equal to number of dimensions in `Theano.TensorType`, where the shape element is an integer representing the size for its dimension, or None if the shape isn't known. For example, if you have a matrix with unknown batch size but fixed feature size of 784, `shape` would be: (None, 784). The full form of `inputs` would be: [((None, 784), <TensorType(float32, matrix)>)]. hiddens : int or Tuple of (shape, `Theano.TensorType`) Int for the number of hidden units to use, or a tuple of shape, expression to route the starting hidden values from elsewhere. params : Dict(string_name: theano SharedVariable), optional A dictionary of model parameters (shared theano variables) that you should use when constructing this model (instead of initializing your own shared variables). This parameter is useful when you want to have two versions of the model that use the same parameters - such as siamese networks or pretraining some weights. outdir : str The location to produce outputs from training or running the :class:`LSTM`. If None, nothing will be saved. activation : str or callable The nonlinear (or linear) activation to perform for the hidden units. This activation function should be appropriate for the output unit types, i.e. 'sigmoid' for binary. See opendeep.utils.activation for a list of available activation functions. Alternatively, you can pass your own function to be used as long as it is callable. gate_activation : str or callable The activation to perform for the hidden gates (default sigmoid). See opendeep.utils.activation for a list of available activation functions. Alternatively, you can pass your own function to be used as long as it is callable. mrg : random A random number generator that is used when adding noise. I recommend using Theano's sandbox.rng_mrg.MRG_RandomStreams. weights_init : str Determines the method for initializing input-hidden model weights. See opendeep.utils.nnet for options. weights_interval : str or float If Uniform `weights_init`, the +- interval to use. See opendeep.utils.nnet for options. weights_mean : float If Gaussian `weights_init`, the mean value to use. weights_std : float If Gaussian `weights_init`, the standard deviation to use. bias_init : float The initial value to use for the bias parameter. Most often, the default of 0.0 is preferred. r_weights_init : str Determines the method for initializing recurrent hidden-hidden model weights. See opendeep.utils.nnet for options. r_weights_interval : str or float If Uniform `r_weights_init`, the +- interval to use. See opendeep.utils.nnet for options. r_weights_mean : float If Gaussian `r_weights_init`, the mean value to use. r_weights_std : float If Gaussian `r_weights_init`, the standard deviation to use. r_bias_init : float The initial value to use for the recurrent bias parameter. Most often, the default of 0.0 is preferred. direction : str The direction this recurrent model should go over its inputs. Can be 'forward', 'backward', or 'bidirectional'. In the case of 'bidirectional', it will make two passes over the sequence, computing two sets of hiddens and adding them together. clip_recurrent_grads : False or float, optional Whether to clip the gradients for the parameters that unroll over timesteps (such as the weights connecting previous hidden states to the current hidden state, and not the weights from current input to hiddens). If it is a float, the gradients for the weights will be hard clipped to the range `+-clip_recurrent_grads`. """ initial_parameters = locals().copy() initial_parameters.pop('self') super(LSTM, self).__init__(**initial_parameters) ################## # specifications # ################## backward = direction.lower() == 'backward' bidirectional = direction.lower() == 'bidirectional' ######################## # activation functions # ######################## # recurrent hidden activation functions! self.hidden_activation_func = get_activation_function(activation) self.gate_activation_func = get_activation_function(gate_activation) ########## # inputs # ########## # inputs are expected to have the shape (n_timesteps, batch_size, data) if len(self.inputs) > 1: raise NotImplementedError( "Expected 1 input, found %d. Please merge inputs before passing " "to the model!" % len(self.inputs)) # self.inputs is a list of all the input expressions (we enforce only 1, so self.inputs[0] is the input) input_shape, self.input = self.inputs[0] if isinstance(input_shape, int): self.input_size = ((None, ) * (self.input.ndim - 1)) + (input_shape, ) else: self.input_size = input_shape assert self.input_size is not None, "Need to specify the shape for at least the last dimension of the input!" # input is 3D tensor of (timesteps, batch_size, data_dim) # if input is 2D tensor, assume it is of the form (timesteps, data_dim) i.e. batch_size is 1. Convert to 3D. # if input is > 3D tensor, assume it is of form (timesteps, batch_size, data...) and flatten to 3D. if self.input.ndim == 1: self.input = unbroadcast(self.input.dimshuffle(0, 'x', 'x'), [1, 2]) elif self.input.ndim == 2: self.input = unbroadcast(self.input.dimshuffle(0, 'x', 1), 1) elif self.input.ndim > 3: self.input = self.input.flatten(3) self.input_size = self.input_size[:2] + (prod(self.input_size[2:])) ########### # hiddens # ########### # have only 1 hiddens assert len( self.hiddens) == 1, "Expected 1 `hiddens` param, found %d" % len( self.hiddens) self.hiddens = self.hiddens[0] # if hiddens is an int (hidden size parameter, not routing info) h_init = None if isinstance(self.hiddens, int): self.hidden_size = self.hiddens elif isinstance(self.hiddens, tuple): hidden_shape, h_init = self.hiddens if isinstance(hidden_shape, int): self.hidden_size = hidden_shape else: self.hidden_size = hidden_shape[-1] else: raise AssertionError( "Hiddens need to be an int or tuple of (shape, theano_expression), found %s" % type(self.hiddens)) # output shape is going to be 3D with (timesteps, batch_size, hidden_size) self.output_size = (None, None, self.hidden_size) ########################################################## # parameters - make sure to deal with params dict input! # ########################################################## # all input-to-hidden weights W_c, W_i, W_f, W_o = [ self.params.get( "W_%s" % sub, get_weights( weights_init=weights_init, shape=(self.input_size[-1], self.hidden_size), name="W_%s" % sub, # if gaussian mean=weights_mean, std=weights_std, # if uniform interval=weights_interval)) for sub in ['c', 'i', 'f', 'o'] ] # all hidden-to-hidden weights U_c, U_i, U_f, U_o = [ self.params.get( "U_%s" % sub, get_weights( weights_init=r_weights_init, shape=(self.hidden_size, self.hidden_size), name="U_%s" % sub, # if gaussian mean=r_weights_mean, std=r_weights_std, # if uniform interval=r_weights_interval)) for sub in ['c', 'i', 'f', 'o'] ] # if bidirectional, make hidden-to-hidden weights again to go the opposite direction U_c_b, U_i_b, U_f_b, U_o_b = None, None, None, None if bidirectional: U_c_b, U_i_b, U_f_b, U_o_b = [ self.params.get( "U_%s_b" % sub, get_weights( weights_init=r_weights_init, shape=(self.hidden_size, self.hidden_size), name="U_%s_b" % sub, # if gaussian mean=r_weights_mean, std=r_weights_std, # if uniform interval=r_weights_interval)) for sub in ['c', 'i', 'f', 'o'] ] # biases b_c, b_i, b_f, b_o = [ self.params.get( "b_%s" % sub, get_bias(shape=(self.hidden_size, ), name="b_%s" % sub, init_values=r_bias_init)) for sub in ['c', 'i', 'f', 'o'] ] # clip gradients if we are doing that recurrent_params = [U_c, U_i, U_f, U_o, U_c_b, U_i_b, U_f_b, U_o_b] if clip_recurrent_grads: clip = abs(clip_recurrent_grads) U_c, U_i, U_f, U_o, U_c_b, U_i_b, U_f_b, U_o_b = [ grad_clip(param, -clip, clip) if param is not None else None for param in recurrent_params ] # put all the parameters into our dictionary self.params = { "W_c": W_c, "W_i": W_i, "W_f": W_f, "W_o": W_o, "U_c": U_c, "U_i": U_i, "U_f": U_f, "U_o": U_o, "b_c": b_c, "b_i": b_i, "b_f": b_f, "b_o": b_o, } if bidirectional: self.params.update({ "U_c_b": U_c_b, "U_i_b": U_i_b, "U_f_b": U_f_b, "U_o_b": U_o_b, }) # make h_init the right sized tensor if h_init is None: h_init = zeros_like(dot(self.input[0], W_c)) c_init = zeros_like(dot(self.input[0], W_c)) ############### # computation # ############### # move some computation outside of scan to speed it up! x_c = dot(self.input, W_c) + b_c x_i = dot(self.input, W_i) + b_i x_f = dot(self.input, W_f) + b_f x_o = dot(self.input, W_o) + b_o # now do the recurrent stuff (self.hiddens, _), self.updates = scan(fn=self.recurrent_step, sequences=[x_c, x_i, x_f, x_o], outputs_info=[h_init, c_init], non_sequences=[U_c, U_i, U_f, U_o], go_backwards=backward, name="lstm_scan", strict=True) # if bidirectional, do the same in reverse! if bidirectional: (hiddens_b, _), updates_b = scan(fn=self.recurrent_step, sequences=[x_c, x_i, x_f, x_o], outputs_info=[h_init, c_init], non_sequences=[U_c_b, U_i_b, U_f_b, U_o_b], go_backwards=not backward, name="lstm_scan_back", strict=True) # flip the hiddens to be the right direction hiddens_b = hiddens_b[::-1] # update stuff self.updates.update(updates_b) self.hiddens += hiddens_b log.info("Initialized an LSTM!")
import numpy import theano from theano.sandbox import rng_mrg from ssrbm.truncated import truncated_normal as tnorm from utils import sharedX import pylab as pl rng = rng_mrg.MRG_RandomStreams(1231) avg = sharedX(5., name='mean') std = sharedX(1, name='std') r = tnorm(size=(10000,), avg=avg, std=std, lbound=numpy.cast['float32'](-2), ubound=numpy.cast['float32'](-0.5), theano_rng=rng, dtype=theano.config.floatX) f = theano.function([], r) x = f() import pdb; pdb.set_trace() pl.hist(x) pl.show()
def __init__(self, inputs=None, params=None, outdir='outputs/conv1d', n_filters=None, filter_size=None, stride=None, border_mode='valid', weights_init='uniform', weights_interval='montreal', weights_mean=0, weights_std=5e-3, bias_init=0, activation='rectifier', convolution='mc0', mrg=RNG_MRG.MRG_RandomStreams(1), **kwargs): """ Initialize a 1-D convolutional layer. Parameters ---------- inputs : tuple(shape, `Theano.TensorType`) The dimensionality of the inputs for this model, and the routing information for the model to accept inputs from elsewhere. `shape` will be a monad tuple representing known sizes for each dimension in the `Theano.TensorType`. Shape of the incoming data: (batch_size, num_channels, data_dimensionality). Most likely, your channels will be 1. For example, batches of text will be of the form (N, 1, D) where N=examples in minibatch and D=dimensionality (chars, words, etc.) params : Dict(string_name: theano SharedVariable), optional A dictionary of model parameters (shared theano variables) that you should use when constructing this model (instead of initializing your own shared variables). This parameter is useful when you want to have two versions of the model that use the same parameters - such as siamese networks or pretraining some weights. outdir : str The directory you want outputs (parameters, images, etc.) to save to. If None, nothing will be saved. n_filters : int The number of filters to use (convolution kernels). filter_size : int The size of the convolution filter. stride : int The distance between the receptive field centers of neighboring units. This is the 'stride' of the convolution operation. border_mode : str, one of 'valid', 'full', 'same' A string indicating the convolution border mode. If 'valid', the convolution is only computed where the input and the filter fully overlap. If 'full', the convolution is computed wherever the input and the filter overlap by at least one position. weights_init : str Determines the method for initializing model weights. See opendeep.utils.nnet for options. weights_interval : str or float If Uniform `weights_init`, the +- interval to use. See opendeep.utils.nnet for options. weights_mean : float If Gaussian `weights_init`, the mean value to use. weights_std : float If Gaussian `weights_init`, the standard deviation to use. bias_init : float The initial value to use for the bias parameter. Most often, the default of 0.0 is preferred. activation : str or Callable The activation function to apply to the layer. See opendeep.utils.activation for options. convolution : str or Callable The 1-dimensional convolution implementation to use. The default of 'mc0' is normally fine. See opendeep.utils.conv1d_implementations for alternatives. (This is necessary because Theano only supports 2D convolutions at the moment). mrg : random A random number generator that is used when adding noise. I recommend using Theano's sandbox.rng_mrg.MRG_RandomStreams. Notes ----- Theano's default convolution function (`theano.tensor.nnet.conv.conv2d`) does not support the 'same' border mode by default. This layer emulates it by performing a 'full' convolution and then cropping the result, which may negatively affect performance. """ initial_parameters = locals().copy() initial_parameters.pop('self') super(Conv1D, self).__init__(**initial_parameters) if self.inputs is None: return ################## # specifications # ################## # grab info from the inputs_hook, or from parameters # expect input to be in the form (B, C, I) (batch, channel, input data) # inputs_hook is a tuple of (Shape, Input) # self.inputs is a list of all the input expressions (we enforce only 1, so self.inputs[0] is the input) input_shape, self.input = self.inputs[0] assert self.input.ndim == 3, "Expected 3D input variable with form (batch, channel, input_data)" assert len(input_shape) == 3, "Expected 3D input shape with form (batch, channel, input_data)" n_channels = input_shape[1] filter_shape = (n_filters, n_channels, filter_size) # activation function! activation_func = get_activation_function(activation) # convolution function! convolution_func = get_conv1d_function(convolution) outshape = ConvOp.getOutputShape( inshp=(input_shape[-1],), kshp=(filter_size,), stride=(stride,), mode=border_mode ) self.output_size = (input_shape[0], n_filters) + outshape ########## # Params # ########## W = self.params.get( "W", get_weights(weights_init=weights_init, shape=filter_shape, name="W", rng=mrg, # if gaussian mean=weights_mean, std=weights_std, # if uniform interval=weights_interval) ) b = self.params.get( "b", get_bias(shape=(n_filters,), name="b", init_values=bias_init) ) # Finally have the two parameters! self.params = OrderedDict([("W", W), ("b", b)]) ######################## # Computational Graph! # ######################## if border_mode in ['valid', 'full']: conved = convolution_func(self.input, W, subsample=(stride,), image_shape=input_shape, filter_shape=filter_shape, border_mode=border_mode) else: log.error("Invalid border mode: '%s'" % border_mode) raise RuntimeError("Invalid border mode: '%s'" % border_mode) self.output = activation_func(conved + b.dimshuffle('x', 0, 'x'))
def __init__(self, inputs=None, params=None, outdir='outputs/conv2d', n_filters=None, filter_size=None, stride=(1, 1), border_mode='valid', weights_init='uniform', weights_interval='montreal', weights_mean=0, weights_std=5e-3, bias_init=0, activation='rectifier', convolution='conv2d', mrg=RNG_MRG.MRG_RandomStreams(1), **kwargs): """ Initialize a 2-dimensional convolutional layer. Parameters ---------- inputs : tuple(shape, `Theano.TensorType`) The dimensionality of the inputs for this model, and the routing information for the model to accept inputs from elsewhere. `shape` will be a monad tuple representing known sizes for each dimension in the `Theano.TensorType`. Shape of the incoming data: (batch_size, num_channels, input_height, input_width). If input_size is None, it can be inferred. However, border_mode can't be 'same'. params : Dict(string_name: theano SharedVariable), optional A dictionary of model parameters (shared theano variables) that you should use when constructing this model (instead of initializing your own shared variables). This parameter is useful when you want to have two versions of the model that use the same parameters - such as siamese networks or pretraining some weights. outdir : str The directory you want outputs (parameters, images, etc.) to save to. If None, nothing will be saved. n_filters : int The number of filters to use (convolution kernels). filter_size : tuple(int) or int (filter_height, filter_width). If it is an int, size will be duplicated across height and width. stride : tuple(int) The distance between the receptive field centers of neighboring units. This is the 'stride' of the convolution operation. border_mode : str, one of 'valid', 'full' A string indicating the convolution border mode. If 'valid', the convolution is only computed where the input and the filter fully overlap. If 'full', the convolution is computed wherever the input and the filter overlap by at least one position. weights_init : str Determines the method for initializing model weights. See opendeep.utils.nnet for options. weights_interval : str or float If Uniform `weights_init`, the +- interval to use. See opendeep.utils.nnet for options. weights_mean : float If Gaussian `weights_init`, the mean value to use. weights_std : float If Gaussian `weights_init`, the standard deviation to use. bias_init : float The initial value to use for the bias parameter. Most often, the default of 0.0 is preferred. activation : str or Callable The activation function to apply to the layer. See opendeep.utils.activation for options. convolution : str or Callable The 2-dimensional convolution implementation to use. The default of 'conv2d' is normally fine because it uses theano's tensor.nnet.conv.conv2d, which cherry-picks the best implementation with a meta-optimizer if you set the theano configuration flag 'optimizer_including=conv_meta'. Otherwise, you could pass a callable function, such as cudnn or cuda-convnet if you don't want to use the meta-optimizer. mrg : random A random number generator that is used when adding noise. I recommend using Theano's sandbox.rng_mrg.MRG_RandomStreams. Notes ----- Theano's default convolution function (`theano.tensor.nnet.conv.conv2d`) does not support the 'same' border mode by default. This layer emulates it by performing a 'full' convolution and then cropping the result, which may negatively affect performance. """ super(Conv2D, self).__init__(**{arg: val for (arg, val) in locals().items() if arg is not 'self'}) ################## # specifications # ################## # expect input to be in the form (B, C, 0, 1) (batch, channel, rows, cols) # self.inputs is a list of all the input expressions (we enforce only 1, so self.inputs[0] is the input) input_shape, self.input = self.inputs[0] assert self.input.ndim == 4, "Expected 4D input variable with form (batch, channel, rows, cols)" assert len(input_shape) == 4, "Expected 4D input shape with form (batch, channel, rows, cols)" n_channels = input_shape[1] if isinstance(filter_size, int): filter_size = (filter_size, )*2 # activation function! activation_func = get_activation_function(activation) # convolution function! if convolution == 'conv2d': # using the theano flag optimizer_including=conv_meta will let this conv function optimize itself. convolution_func = conv2d else: assert callable(convolution), "Input convolution was not 'conv2d' and was not Callable." convolution_func = convolution # filter shape should be in the form (num_filters, num_channels, filter_size[0], filter_size[1]) outshape = ConvOp.getOutputShape( inshp=input_shape[-2:], kshp=filter_size, stride=stride, mode=border_mode ) self.output_size = (input_shape[0], n_filters) + outshape filter_shape = (n_filters, n_channels) + filter_size ########## # Params # ########## W = self.params.get( "W", get_weights(weights_init=weights_init, shape=filter_shape, name="W", rng=mrg, # if gaussian mean=weights_mean, std=weights_std, # if uniform interval=weights_interval) ) b = self.params.get( "b", get_bias(shape=(n_filters, ), name="b", init_values=bias_init) ) # Finally have the two parameters! self.params = OrderedDict([("W", W), ("b", b)]) ######################## # Computational Graph! # ######################## if border_mode in ['valid', 'full']: conved = convolution_func(self.input, W, subsample=stride, image_shape=input_shape, filter_shape=filter_shape, border_mode=border_mode) else: raise RuntimeError("Invalid border mode: '%s'" % border_mode) self.output = activation_func(conved + b.dimshuffle('x', 0, 'x', 'x'))
def __init__(self, inputs_hook=None, hiddens_hook=None, params_hook=None, outdir='outputs/rnn/', input_size=None, hidden_size=None, output_size=None, layers=1, activation='sigmoid', hidden_activation='relu', mrg=RNG_MRG.MRG_RandomStreams(1), weights_init='uniform', weights_interval='montreal', weights_mean=0, weights_std=5e-3, bias_init=0.0, r_weights_init='identity', r_weights_interval='montreal', r_weights_mean=0, r_weights_std=5e-3, r_bias_init=0.0, cost_function='mse', cost_args=None, noise='dropout', noise_level=None, noise_decay=False, noise_decay_amount=.99, direction='forward', clip_recurrent_grads=False): """ Initialize a simple recurrent network. Parameters ---------- inputs_hook : Tuple of (shape, variable) Routing information for the model to accept inputs from elsewhere. This is used for linking different models together (e.g. setting the Softmax model's input layer to the DAE's hidden layer gives a newly supervised classification model). For now, it needs to include the shape information (normally the dimensionality of the input i.e. n_in). hiddens_hook : Tuple of (shape, variable) Routing information for the model to accept its hidden representation from elsewhere. For recurrent nets, this will be the initial starting value for hidden layers. params_hook : List(theano shared variable) A list of model parameters (shared theano variables) that you should use when constructing this model (instead of initializing your own shared variables). This parameter is useful when you want to have two versions of the model that use the same parameters. outdir : str The location to produce outputs from training or running the :class:`RNN`. If None, nothing will be saved. input_size : int The size (dimensionality) of the input. If shape is provided in `inputs_hook`, this is optional. hidden_size : int The size (dimensionality) of the hidden layers. If shape is provided in `hiddens_hook`, this is optional. output_size : int The size (dimensionality) of the output. layers : int The number of stacked hidden layers to use. activation : str or callable The nonlinear (or linear) activation to perform after the dot product from hiddens -> output layer. This activation function should be appropriate for the output unit types, i.e. 'sigmoid' for binary. See opendeep.utils.activation for a list of available activation functions. Alternatively, you can pass your own function to be used as long as it is callable. hidden_activation : str or callable The activation to perform for the hidden layers. See opendeep.utils.activation for a list of available activation functions. Alternatively, you can pass your own function to be used as long as it is callable. mrg : random A random number generator that is used when adding noise. I recommend using Theano's sandbox.rng_mrg.MRG_RandomStreams. weights_init : str Determines the method for initializing model weights. See opendeep.utils.nnet for options. weights_interval : str or float If Uniform `weights_init`, the +- interval to use. See opendeep.utils.nnet for options. weights_mean : float If Gaussian `weights_init`, the mean value to use. weights_std : float If Gaussian `weights_init`, the standard deviation to use. bias_init : float The initial value to use for the bias parameter. Most often, the default of 0.0 is preferred. r_weights_init : str Determines the method for initializing recurrent model weights. See opendeep.utils.nnet for options. r_weights_interval : str or float If Uniform `r_weights_init`, the +- interval to use. See opendeep.utils.nnet for options. r_weights_mean : float If Gaussian `r_weights_init`, the mean value to use. r_weights_std : float If Gaussian `r_weights_init`, the standard deviation to use. r_bias_init : float The initial value to use for the recurrent bias parameter. Most often, the default of 0.0 is preferred. cost_function : str or callable The function to use when calculating the output cost of the model. See opendeep.utils.cost for options. You can also specify your own function, which needs to be callable. cost_args : dict Any additional named keyword arguments to pass to the specified `cost_function`. noise : str What type of noise to use for the hidden layers and outputs. See opendeep.utils.noise for options. This should be appropriate for the unit activation, i.e. Gaussian for tanh or other real-valued activations, etc. noise_level : float The amount of noise to use for the noise function specified by `hidden_noise`. This could be the standard deviation for gaussian noise, the interval for uniform noise, the dropout amount, etc. noise_decay : str or False Whether to use `noise` scheduling (decay `noise_level` during the course of training), and if so, the string input specifies what type of decay to use. See opendeep.utils.decay for options. Noise decay (known as noise scheduling) effectively helps the model learn larger variance features first, and then smaller ones later (almost as a kind of curriculum learning). May help it converge faster. noise_decay_amount : float The amount to reduce the `noise_level` after each training epoch based on the decay function specified in `noise_decay`. direction : str The direction this recurrent model should go over its inputs. Can be 'forward', 'backward', or 'bidirectional'. In the case of 'bidirectional', it will make two passes over the sequence, computing two sets of hiddens and merging them before running through the final decoder. clip_recurrent_grads : False or float, optional Whether to clip the gradients for the parameters that unroll over timesteps (such as the weights connecting previous hidden states to the current hidden state, and not the weights from current input to hiddens). If it is a float, the gradients for the weights will be hard clipped to the range `+-clip_recurrent_grads`. Raises ------ AssertionError When asserting various properties of input parameters. See error messages. """ initial_parameters = locals().copy() initial_parameters.pop('self') super(RNN, self).__init__(**initial_parameters) ################## # specifications # ################## self.direction = direction self.bidirectional = (direction == "bidirectional") self.backward = (direction == "backward") self.layers = layers self.noise = noise self.weights_init = weights_init self.weights_mean = weights_mean self.weights_std = weights_std self.weights_interval = weights_interval self.r_weights_init = r_weights_init self.r_weights_mean = r_weights_mean self.r_weights_std = r_weights_std self.r_weights_interval = r_weights_interval self.bias_init = bias_init self.r_bias_init = r_bias_init ######################################### # activation, cost, and noise functions # ######################################### # recurrent hidden activation function! self.hidden_activation_func = get_activation_function( hidden_activation) # output activation function! self.activation_func = get_activation_function(activation) # Cost function self.cost_function = get_cost_function(cost_function) self.cost_args = cost_args or dict() # Now deal with noise if we added it: if self.noise: log.debug('Adding %s noise switch.' % str(noise)) if noise_level is not None: noise_level = sharedX(value=noise_level) self.noise_func = get_noise(noise, noise_level=noise_level, mrg=mrg) else: self.noise_func = get_noise(noise, mrg=mrg) # apply the noise as a switch! # default to apply noise. this is for the cost and gradient functions to be computed later # (not sure if the above statement is accurate such that gradient depends on initial value of switch) self.noise_switch = sharedX(value=1, name="basiclayer_noise_switch") # noise scheduling if noise_decay and noise_level is not None: self.noise_schedule = get_decay_function( noise_decay, noise_level, noise_level.get_value(), noise_decay_amount) ############### # inputs hook # ############### # grab info from the inputs_hook # in the case of an inputs_hook, recurrent will always work with the leading tensor dimension # being the temporal dimension. # input is 3D tensor of (timesteps, batch_size, data_dim) # if input is 2D tensor, assume it is of the form (timesteps, data_dim) i.e. batch_size is 1. Convert to 3D. # if input is > 3D tensor, assume it is of form (timesteps, batch_size, data...) and flatten to 3D. if self.inputs_hook is not None: self.input = self.inputs_hook[1] if self.input.ndim == 1: self.input = T.unbroadcast(self.input.dimshuffle(0, 'x', 'x'), [1, 2]) self.input_size = 1 elif self.input.ndim == 2: self.input = T.unbroadcast(self.input.dimshuffle(0, 'x', 1), 1) elif self.input.ndim == 3: pass elif self.input.ndim > 3: self.input = self.input.flatten(3) self.input_size = sum(self.input_size) else: raise NotImplementedError( "Recurrent input with %d dimensions not supported!" % self.input.ndim) else: # Assume input coming from optimizer is (batches, timesteps, data) # so, we need to reshape to (timesteps, batches, data) xs = T.tensor3("Xs") xs = xs.dimshuffle(1, 0, 2) self.input = xs # The target outputs for supervised training - in the form of (batches, timesteps, output) which is # the same dimension ordering as the expected input from optimizer. # therefore, we need to swap it like we did to input xs. ys = T.tensor3("Ys") ys = ys.dimshuffle(1, 0, 2) self.target = ys ################ # hiddens hook # ################ # set an initial value for the recurrent hiddens from hook if self.hiddens_hook is not None: self.h_init = self.hiddens_hook[1] self.hidden_size = self.hiddens_hook[0] else: # deal with h_init after parameters are made (have to make the same size as hiddens that are computed) self.hidden_size = hidden_size ################## # for generating # ################## # symbolic scalar for how many recurrent steps to use during generation from the model self.n_steps = T.iscalar("generate_n_steps") self.output, self.hiddens, self.updates, self.cost, self.params = self.build_computation_graph( )
def __init__(self, inputs_hook=None, params_hook=None, outdir='outputs/convpool', input_size=None, filter_shape=None, convstride=4, padsize=0, group=1, poolsize=3, poolstride=2, weights_init='gaussian', weights_interval='montreal', weights_mean=0, weights_std=.01, bias_init=0, local_response_normalization=False, convolution='conv2d', activation='rectifier', mrg=RNG_MRG.MRG_RandomStreams(1)): """ Initialize a convpool layer. Parameters ---------- inputs_hook : Tuple of (shape, variable) Routing information for the model to accept inputs from elsewhere. This is used for linking different models together. For now, it needs to include the shape information. params_hook : List(theano shared variable) A list of model parameters (shared theano variables) that you should use when constructing this model (instead of initializing your own shared variables). outdir : str The directory you want outputs (parameters, images, etc.) to save to. If None, nothing will be saved. input_size : tuple Shape of the incoming data: (batch_size, num_channels, input_height, input_width). filter_shape : tuple (num_filters, num_channels, filter_height, filter_width). This is also the shape of the weights matrix. convstride : int The distance between the receptive field centers of neighboring units. This is the 'subsample' of theano's convolution operation. padsize : int This is the border_mode for theano's convolution operation. group : int Not yet supported, used for multi-gpu implementation. .. todo:: support multi-gpu poolsize : int How much to downsample the output. poolstride : int The stride width for downsampling the output. weights_init : str Determines the method for initializing model weights. See opendeep.utils.nnet for options. weights_interval : str or float If Uniform `weights_init`, the +- interval to use. See opendeep.utils.nnet for options. weights_mean : float If Gaussian `weights_init`, the mean value to use. weights_std : float If Gaussian `weights_init`, the standard deviation to use. bias_init : float The initial value to use for the bias parameter. Most often, the default of 0.0 is preferred. activation : str or Callable The activation function to apply to the layer. See opendeep.utils.activation for options. convolution : str or Callable The 2-dimensional convolution implementation to use. The default of 'conv2d' is normally fine because it uses theano's tensor.nnet.conv.conv2d, which cherry-picks the best implementation with a meta-optimizer if you set the theano configuration flag 'optimizer_including=conv_meta'. Otherwise, you could pass a callable function, such as cudnn or cuda-convnet if you don't want to use the meta-optimizer. mrg : random A random number generator that is used when adding noise. I recommend using Theano's sandbox.rng_mrg.MRG_RandomStreams. """ super(ConvPoolLayer, self).__init__( ** {arg: val for (arg, val) in locals().items() if arg is not 'self'}) # deal with the inputs coming from inputs_hook - necessary for now to give an input hook # inputs_hook is a tuple of (Shape, Input) if self.inputs_hook: assert len( self.inputs_hook ) == 2, "expecting inputs_hook to be tuple of (shape, input)" self.input = inputs_hook[1] else: self.input = T.ftensor4("X") self.group = group ####################### # layer configuration # ####################### # activation function! self.activation_func = get_activation_function(activation) # convolution function! if convolution == 'conv2d': # using the theano flag optimizer_including=conv_meta will let this conv function optimize itself. self.convolution_func = T.nnet.conv2d else: assert callable( convolution ), "Input convolution was not 'conv2d' and was not Callable." self.convolution_func = convolution # expect image_shape to be bc01! self.channel = self.input_size[1] self.convstride = convstride self.padsize = padsize self.poolstride = poolstride self.poolsize = poolsize # if lib_conv is cudnn, it works only on square images and the grad works only when channel % 16 == 0 assert self.group in [ 1, 2 ], "group argument needs to be 1 or 2 (1 for default conv2d)" filter_shape = numpy.asarray(filter_shape) self.input_size = numpy.asarray(self.input_size) if local_response_normalization: lrn_func = cross_channel_normalization_bc01 else: lrn_func = None ################################################ # Params - make sure to deal with params_hook! # ################################################ if self.group == 1: if self.params_hook: # make sure the params_hook has W and b assert len(self.params_hook) == 2, \ "Expected 2 params (W and b) for ConvPoolLayer, found {0!s}!".format(len(self.params_hook)) self.W, self.b = self.params_hook else: self.W = get_weights( weights_init=weights_init, shape=filter_shape, name="W", rng=mrg, # if gaussian mean=weights_mean, std=weights_std, # if uniform interval=weights_interval) self.b = get_bias(shape=filter_shape[0], init_values=bias_init, name="b") self.params = [self.W, self.b] else: filter_shape[0] = filter_shape[0] / 2 filter_shape[1] = filter_shape[1] / 2 self.input_size[0] = self.input_size[0] / 2 self.input_size[1] = self.input_size[1] / 2 if self.params_hook: assert len(self.params_hook ) == 4, "expected params_hook to have 4 params" self.W0, self.W1, self.b0, self.b1 = self.params_hook else: self.W0 = get_weights_gaussian(shape=filter_shape, name="W0") self.W1 = get_weights_gaussian(shape=filter_shape, name="W1") self.b0 = get_bias(shape=filter_shape[0], init_values=bias_init, name="b0") self.b1 = get_bias(shape=filter_shape[0], init_values=bias_init, name="b1") self.params = [self.W0, self.b0, self.W1, self.b1] ############################################# # build appropriate graph for conv. version # ############################################# self.output = self._build_computation_graph() # Local Response Normalization (for AlexNet) if local_response_normalization and lrn_func is not None: self.output = lrn_func(self.output) log.debug("convpool layer initialized with shape_in: %s", str(self.input_size))
def experiment(state, channel): if state.test_model and 'config' in os.listdir('.'): print('Loading local config file') config_file = open('config', 'r') config = config_file.readlines() try: config_vals = config[0].split('(')[1:][0].split(')')[:-1][0].split( ', ') except: config_vals = config[0][3:-1].replace(': ', '=').replace("'", "").split(', ') config_vals = filter( lambda x: not 'jobman' in x and not '/' in x and not ':' in x and not 'experiment' in x, config_vals) for CV in config_vals: print(CV) if CV.startswith('test'): print('Do not override testing switch') continue try: exec('state.' + CV) in globals(), locals() except: exec('state.' + CV.split('=')[0] + "='" + CV.split('=')[1] + "'") in globals(), locals() else: # Save the current configuration # Useful for logs/experiments print('Saving config') f = open('config', 'w') f.write(str(state)) f.close() print(state) # Load the data, train = train+valid, and shuffle train # Targets are not used (will be misaligned after shuffling train if state.dataset == 'MNIST': (train_X, train_Y), (valid_X, valid_Y), (test_X, test_Y) = load_mnist(state.data_path) train_X = numpy.concatenate((train_X, valid_X)) elif state.dataset == 'MNIST_binary': (train_X, train_Y), (valid_X, valid_Y), (test_X, test_Y) = load_mnist_binary(state.data_path) train_X = numpy.concatenate((train_X, valid_X)) elif state.dataset == 'TFD': (train_X, train_Y), (valid_X, valid_Y), (test_X, test_Y) = load_tfd(state.data_path) N_input = train_X.shape[1] root_N_input = int(numpy.sqrt(N_input)) # numpy.random.seed(1) numpy.random.shuffle(train_X) train_X = theano.shared(train_X) valid_X = theano.shared(valid_X) test_X = theano.shared(test_X) # Theano variables and RNG X = T.fmatrix() # Input of the graph index = T.lscalar() # index to minibatch MRG = RNG_MRG.MRG_RandomStreams(1) # Network and training specifications K = state.K # number of hidden layers N = state.N # number of walkbacks layer_sizes = [ N_input ] + [state.hidden_size ] * K # layer sizes, from h0 to hK (h0 is the visible layer) learning_rate = theano.shared(cast32(state.learning_rate)) # learning rate annealing = cast32(state.annealing) # exponential annealing coefficient momentum = theano.shared(cast32(state.momentum)) # momentum term # PARAMETERS : weights list and bias list. # initialize a list of weights and biases based on layer_sizes weights_list = [ get_shared_weights( layer_sizes[i], layer_sizes[i + 1], numpy.sqrt(6. / (layer_sizes[i] + layer_sizes[i + 1])), 'W') for i in range(K) ] bias_list = [get_shared_bias(layer_sizes[i], 'b') for i in range(K + 1)] if state.test_model: # Load the parameters of the last epoch # maybe if the path is given, load these specific attributes param_files = list( filter(lambda x: 'params' in x, os.listdir('.')) ) # https://stackoverflow.com/questions/15876259/typeerror-filter-object-is-not-subscriptable max_epoch_idx = numpy.argmax( [int(x.split('_')[-1].split('.')[0]) for x in param_files]) params_to_load = param_files[max_epoch_idx] with open(params_to_load, 'rb') as f: PARAMS = pk.load(f, encoding='bytes') [ p.set_value(lp.get_value(borrow=False)) for lp, p in zip(PARAMS[:len(weights_list)], weights_list) ] [ p.set_value(lp.get_value(borrow=False)) for lp, p in zip(PARAMS[len(weights_list):], bias_list) ] # Util functions def dropout(IN, p=0.5): noise = MRG.binomial(p=p, n=1, size=IN.shape, dtype='float32') OUT = (IN * noise) / cast32(p) return OUT def add_gaussian_noise(IN, std=1): print('GAUSSIAN NOISE : ', std) noise = MRG.normal(avg=0, std=std, size=IN.shape, dtype='float32') OUT = IN + noise return OUT def corrupt_input(IN, p=0.5): # salt and pepper? masking? noise = MRG.binomial(p=p, n=1, size=IN.shape, dtype='float32') IN = IN * noise return IN def salt_and_pepper(IN, p=0.2): # salt and pepper noise print('DAE uses salt and pepper noise') a = MRG.binomial(size=IN.shape, n=1, p=1 - p, dtype='float32') b = MRG.binomial(size=IN.shape, n=1, p=0.5, dtype='float32') c = T.eq(a, 0) * b return IN * a + c # Odd layer update function # just a loop over the odd layers def update_odd_layers(hiddens, noisy): for i in range(1, K + 1, 2): print(i) if noisy: simple_update_layer(hiddens, None, i) else: simple_update_layer(hiddens, None, i, add_noise=False) # Even layer update # p_X_chain is given to append the p(X|...) at each update (one update = odd update + even update) def update_even_layers(hiddens, p_X_chain, noisy): for i in range(0, K + 1, 2): print(i) if noisy: simple_update_layer(hiddens, p_X_chain, i) else: simple_update_layer(hiddens, p_X_chain, i, add_noise=False) # The layer update function # hiddens : list containing the symbolic theano variables [visible, hidden1, hidden2, ...] # layer_update will modify this list inplace # p_X_chain : list containing the successive p(X|...) at each update # update_layer will append to this list # add_noise : pre and post activation gaussian noise def simple_update_layer(hiddens, p_X_chain, i, add_noise=True): # Compute the dot product, whatever layer post_act_noise = 0 if i == 0: hiddens[i] = T.dot(hiddens[i + 1], weights_list[i].T) + bias_list[i] elif i == K: hiddens[i] = T.dot(hiddens[i - 1], weights_list[i - 1]) + bias_list[i] else: # next layer : layers[i+1], assigned weights : W_i # previous layer : layers[i-1], assigned weights : W_(i-1) hiddens[i] = T.dot(hiddens[i + 1], weights_list[i].T) + T.dot( hiddens[i - 1], weights_list[i - 1]) + bias_list[i] # Add pre-activation noise if NOT input layer if i == 1 and state.noiseless_h1: print('>>NO noise in first layer') add_noise = False # pre activation noise if i != 0 and add_noise: print('Adding pre-activation gaussian noise') hiddens[i] = add_gaussian_noise(hiddens[i], state.hidden_add_noise_sigma) # ACTIVATION! if i == 0: print('Sigmoid units') hiddens[i] = T.nnet.sigmoid(hiddens[i]) else: print('Hidden units') hiddens[i] = hidden_activation(hiddens[i]) # post activation noise if i != 0 and add_noise: print('Adding post-activation gaussian noise') hiddens[i] = add_gaussian_noise(hiddens[i], state.hidden_add_noise_sigma) # build the reconstruction chain if i == 0: # if input layer -> append p(X|...) p_X_chain.append(hiddens[i]) # sample from p(X|...) if state.input_sampling: print('Sampling from input') sampled = MRG.binomial(p=hiddens[i], size=hiddens[i].shape, dtype='float32') else: print('>>NO input sampling') sampled = hiddens[i] # add noise sampled = salt_and_pepper(sampled, state.input_salt_and_pepper) # set input layer hiddens[i] = sampled def update_layers(hiddens, p_X_chain, noisy=True): print('odd layer update') update_odd_layers(hiddens, noisy) print print('even layer update') update_even_layers(hiddens, p_X_chain, noisy) ''' F PROP ''' if state.act == 'sigmoid': print('Using sigmoid activation') hidden_activation = T.nnet.sigmoid elif state.act == 'rectifier': print('Using rectifier activation') hidden_activation = lambda x: T.maximum(cast32(0), x) elif state.act == 'tanh': hidden_activation = lambda x: T.tanh(x) ''' Corrupt X ''' X_corrupt = salt_and_pepper(X, state.input_salt_and_pepper) ''' hidden layer init ''' hiddens = [X_corrupt] p_X_chain = [] print("Hidden units initialization") for w, b in zip(weights_list, bias_list[1:]): # init with zeros print("Init hidden units at zero before creating the graph") hiddens.append(T.zeros_like(T.dot(hiddens[-1], w))) # The layer update scheme print("Building the graph :", N, "updates") for i in range(N): update_layers(hiddens, p_X_chain) # COST AND GRADIENTS print('Cost w.r.t p(X|...) at every step in the graph') #COST = T.mean(T.nnet.binary_crossentropy(reconstruction, X)) COST = [T.mean(T.nnet.binary_crossentropy(rX, X)) for rX in p_X_chain] #COST = [T.mean(T.sqr(rX-X)) for rX in p_X_chain] show_COST = COST[-1] COST = numpy.sum(COST) #COST = T.mean(COST) params = weights_list + bias_list print('======== COST:', COST) print('======== params:', params) gradient = T.grad(COST, params) gradient_buffer = [ theano.shared(numpy.zeros(x.get_value().shape, dtype='float32')) for x in params ] m_gradient = [ momentum * gb + (cast32(1) - momentum) * g for (gb, g) in zip(gradient_buffer, gradient) ] g_updates = [(p, p - learning_rate * mg) for (p, mg) in zip(params, m_gradient)] b_updates = zip(gradient_buffer, m_gradient) updates = OrderedDict(g_updates + list(b_updates)) f_cost = theano.function(inputs=[X], outputs=show_COST) indexed_batch = train_X[index * state.batch_size:(index + 1) * state.batch_size] sampled_batch = MRG.binomial(p=indexed_batch, size=indexed_batch.shape, dtype='float32') f_learn = theano.function(inputs=[index], updates=updates, givens={X: indexed_batch}, outputs=show_COST) f_test = theano.function(inputs=[X], outputs=[X_corrupt] + hiddens[0] + p_X_chain, on_unused_input='warn') ############# # Denoise some numbers : show number, noisy number, reconstructed number ############# import random as R R.seed(1) random_idx = numpy.array(R.sample(range(len(test_X.get_value())), 100)) numbers = test_X.get_value()[random_idx] f_noise = theano.function(inputs=[X], outputs=salt_and_pepper( X, state.input_salt_and_pepper)) noisy_numbers = f_noise(test_X.get_value()[random_idx]) # Recompile the graph without noise for reconstruction function hiddens_R = [X] p_X_chain_R = [] for w, b in zip(weights_list, bias_list[1:]): # init with zeros hiddens_R.append(T.zeros_like(T.dot(hiddens_R[-1], w))) # The layer update scheme for i in range(N): update_layers(hiddens_R, p_X_chain_R, noisy=False) f_recon = theano.function(inputs=[X], outputs=p_X_chain_R[-1]) ############ # Sampling # ############ # the input to the sampling function network_state_input = [X] + [T.fmatrix() for i in range(K)] # "Output" state of the network (noisy) # initialized with input, then we apply updates #network_state_output = network_state_input network_state_output = [X] + network_state_input[1:] visible_pX_chain = [] # ONE update update_layers(network_state_output, visible_pX_chain, noisy=True) if K == 1: f_sample_simple = theano.function(inputs=[X], outputs=visible_pX_chain[-1]) # WHY IS THERE A WARNING???? # because the first odd layers are not used -> directly computed FROM THE EVEN layers # unused input = warn f_sample2 = theano.function(inputs=network_state_input, outputs=network_state_output + visible_pX_chain, on_unused_input='warn') def sample_some_numbers_single_layer(): x0 = test_X.get_value()[:1] samples = [x0] x = f_noise(x0) for i in range(399): x = f_sample_simple(x) samples.append(x) x = numpy.random.binomial(n=1, p=x, size=x.shape).astype('float32') x = f_noise(x) return numpy.vstack(samples) def sampling_wrapper(NSI): out = f_sample2(*NSI) NSO = out[:len(network_state_output)] vis_pX_chain = out[len(network_state_output):] return NSO, vis_pX_chain def sample_some_numbers(N=400): # The network's initial state init_vis = test_X.get_value()[:1] noisy_init_vis = f_noise(init_vis) network_state = [[noisy_init_vis] + [ numpy.zeros((1, len(b.get_value())), dtype='float32') for b in bias_list[1:] ]] visible_chain = [init_vis] noisy_h0_chain = [noisy_init_vis] for i in range(N - 1): # feed the last state into the network, compute new state, and obtain visible units expectation chain net_state_out, vis_pX_chain = sampling_wrapper(network_state[-1]) # append to the visible chain visible_chain += vis_pX_chain # append state output to the network state chain network_state.append(net_state_out) noisy_h0_chain.append(net_state_out[0]) return numpy.vstack(visible_chain), numpy.vstack(noisy_h0_chain) def plot_samples(epoch_number): to_sample = time.time() if K == 1: # one layer model V = sample_some_numbers_single_layer() else: V, H0 = sample_some_numbers() img_samples = PIL.Image.fromarray( tile_raster_images(V, (root_N_input, root_N_input), (20, 20))) fname = 'samples_epoch_' + str(epoch_number) + '.png' img_samples.save(fname) print('Took ' + str(time.time() - to_sample) + ' to sample 400 numbers') ############## # Inpainting # ############## def inpainting(digit): # The network's initial state # NOISE INIT init_vis = cast32(numpy.random.uniform(size=digit.shape)) #noisy_init_vis = f_noise(init_vis) #noisy_init_vis = cast32(numpy.random.uniform(size=init_vis.shape)) # INDEXES FOR VISIBLE AND NOISY PART noise_idx = (numpy.arange(N_input) % root_N_input < (root_N_input / 2)) fixed_idx = (numpy.arange(N_input) % root_N_input > (root_N_input / 2)) # function to re-init the visible to the same noise # FUNCTION TO RESET HALF VISIBLE TO DIGIT def reset_vis(V): V[0][fixed_idx] = digit[0][fixed_idx] return V # INIT DIGIT : NOISE and RESET HALF TO DIGIT init_vis = reset_vis(init_vis) network_state = [[init_vis] + [ numpy.zeros((1, len(b.get_value())), dtype='float32') for b in bias_list[1:] ]] visible_chain = [init_vis] noisy_h0_chain = [init_vis] for i in range(49): # feed the last state into the network, compute new state, and obtain visible units expectation chain net_state_out, vis_pX_chain = sampling_wrapper(network_state[-1]) # reset half the digit net_state_out[0] = reset_vis(net_state_out[0]) vis_pX_chain[0] = reset_vis(vis_pX_chain[0]) # append to the visible chain visible_chain += vis_pX_chain # append state output to the network state chain network_state.append(net_state_out) noisy_h0_chain.append(net_state_out[0]) return numpy.vstack(visible_chain), numpy.vstack(noisy_h0_chain) def save_params(n, params): print('saving parameters...') save_path = 'params_epoch_' + str(n) + '.pkl' f = open(save_path, 'wb') try: pk.dump(params, f, protocol=pk.HIGHEST_PROTOCOL) finally: f.close() # TRAINING n_epoch = state.n_epoch batch_size = state.batch_size STOP = False counter = 0 train_costs = [] valid_costs = [] test_costs = [] if state.vis_init: bias_list[0].set_value( logit(numpy.clip(0.9, 0.001, train_X.get_value().mean(axis=0)))) if state.test_model: # If testing, do not train and go directly to generating samples, parzen window estimation, and inpainting print('Testing : skip training') STOP = True while not STOP: counter += 1 t = time.time() print( counter, '\t', ) #train train_cost = [] for i in range(len(train_X.get_value(borrow=True)) // batch_size): #train_cost.append(f_learn(train_X[i * batch_size : (i+1) * batch_size])) #training_idx = numpy.array(range(i*batch_size, (i+1)*batch_size), dtype='int32') train_cost.append(f_learn(i)) train_cost = numpy.mean(train_cost) train_costs.append(train_cost) print( 'Train : ', trunc(train_cost), '\t', ) #valid valid_cost = [] for i in range(len(valid_X.get_value(borrow=True)) // 100): valid_cost.append( f_cost(valid_X.get_value()[i * 100:(i + 1) * batch_size])) valid_cost = numpy.mean(valid_cost) #valid_cost = 123 valid_costs.append(valid_cost) print( 'Valid : ', trunc(valid_cost), '\t', ) #test test_cost = [] for i in range(len(test_X.get_value(borrow=True)) // 100): test_cost.append( f_cost(test_X.get_value()[i * 100:(i + 1) * batch_size])) test_cost = numpy.mean(test_cost) test_costs.append(test_cost) print( 'Test : ', trunc(test_cost), '\t', ) if counter >= n_epoch: STOP = True print( 'time : ', trunc(time.time() - t), ) print( 'MeanVisB : ', trunc(bias_list[0].get_value().mean()), ) print('W : ', [ trunc(abs(w.get_value(borrow=True)).mean()) for w in weights_list ]) if (counter % 5) == 0: # Checking reconstruction reconstructed = f_recon(noisy_numbers) # Concatenate stuff stacked = numpy.vstack([ numpy.vstack([ numbers[i * 10:(i + 1) * 10], noisy_numbers[i * 10:(i + 1) * 10], reconstructed[i * 10:(i + 1) * 10] ]) for i in range(10) ]) number_reconstruction = PIL.Image.fromarray( tile_raster_images(stacked, (root_N_input, root_N_input), (10, 30))) #epoch_number = reduce(lambda x,y : x + y, ['_'] * (4-len(str(counter)))) + str(counter) number_reconstruction.save('number_reconstruction' + str(counter) + '.png') #sample_numbers(counter, 'seven') plot_samples(counter) #save params save_params(counter, params) # ANNEAL! new_lr = learning_rate.get_value() * annealing learning_rate.set_value(new_lr) # Save state.train_costs = train_costs state.valid_costs = valid_costs state.test_costs = test_costs # if test # 10k samples print('Generating 10,000 samples') samples, _ = sample_some_numbers(N=10000) f_samples = 'samples.npy' numpy.save(f_samples, samples) print('saved digits') # parzen print('Evaluating parzen window') import likelihood_estimation_parzen likelihood_estimation_parzen.main(0.20, 'mnist') # Inpainting print('Inpainting') test_X = test_X.get_value() numpy.random.seed(2) test_idx = numpy.arange(len(test_Y)) for Iter in range(10): numpy.random.shuffle(test_idx) test_X = test_X[test_idx] test_Y = test_Y[test_idx] digit_idx = [(test_Y == i).argmax() for i in range(10)] inpaint_list = [] for idx in digit_idx: DIGIT = test_X[idx:idx + 1] V_inpaint, H_inpaint = inpainting(DIGIT) inpaint_list.append(V_inpaint) INPAINTING = numpy.vstack(inpaint_list) plot_inpainting = PIL.Image.fromarray( tile_raster_images(INPAINTING, (root_N_input, root_N_input), (10, 50))) fname = 'inpainting_' + str(Iter) + '.png' #fname = os.path.join(state.model_path, fname) plot_inpainting.save(fname) if False and __name__ == "__main__": os.system('eog inpainting.png') if __name__ == '__main__': import ipdb ipdb.set_trace() return
def experiment(state, outdir_base='./'): rng.seed(1) #seed the numpy random generator # Initialize output directory and files data.mkdir_p(outdir_base) outdir = outdir_base + "/" + state.dataset + "/" data.mkdir_p(outdir) logfile = outdir + "log.txt" with open(logfile, 'w') as f: f.write("MODEL 2, {0!s}\n\n".format(state.dataset)) train_convergence_pre = outdir + "train_convergence_pre.csv" train_convergence_post = outdir + "train_convergence_post.csv" valid_convergence_pre = outdir + "valid_convergence_pre.csv" valid_convergence_post = outdir + "valid_convergence_post.csv" test_convergence_pre = outdir + "test_convergence_pre.csv" test_convergence_post = outdir + "test_convergence_post.csv" print print "----------MODEL 2, {0!s}--------------".format(state.dataset) print #load parameters from config file if this is a test config_filename = outdir + 'config' if state.test_model and 'config' in os.listdir(outdir): config_vals = load_from_config(config_filename) for CV in config_vals: print CV if CV.startswith('test'): print 'Do not override testing switch' continue try: exec('state.' + CV) in globals(), locals() except: exec('state.' + CV.split('=')[0] + "='" + CV.split('=')[1] + "'") in globals(), locals() else: # Save the current configuration # Useful for logs/experiments print 'Saving config' with open(config_filename, 'w') as f: f.write(str(state)) print state # Load the data, train = train+valid, and sequence artificial = False if state.dataset == 'MNIST_1' or state.dataset == 'MNIST_2' or state.dataset == 'MNIST_3': (train_X, train_Y), (valid_X, valid_Y), (test_X, test_Y) = data.load_mnist(state.data_path) train_X = numpy.concatenate((train_X, valid_X)) train_Y = numpy.concatenate((train_Y, valid_Y)) artificial = True try: dataset = int(state.dataset.split('_')[1]) except: raise AssertionError( "artificial dataset number not recognized. Input was " + state.dataset) else: raise AssertionError("dataset not recognized.") train_X = theano.shared(train_X) train_Y = theano.shared(train_Y) valid_X = theano.shared(valid_X) valid_Y = theano.shared(valid_Y) test_X = theano.shared(test_X) test_Y = theano.shared(test_Y) if artificial: print 'Sequencing MNIST data...' print 'train set size:', len(train_Y.eval()) print 'valid set size:', len(valid_Y.eval()) print 'test set size:', len(test_Y.eval()) data.sequence_mnist_data(train_X, train_Y, valid_X, valid_Y, test_X, test_Y, dataset, rng) print 'train set size:', len(train_Y.eval()) print 'valid set size:', len(valid_Y.eval()) print 'test set size:', len(test_Y.eval()) print 'Sequencing done.' print N_input = train_X.eval().shape[1] root_N_input = numpy.sqrt(N_input) # Network and training specifications layers = state.layers # number hidden layers walkbacks = state.walkbacks # number of walkbacks layer_sizes = [ N_input ] + [state.hidden_size ] * layers # layer sizes, from h0 to hK (h0 is the visible layer) learning_rate = theano.shared(cast32(state.learning_rate)) # learning rate annealing = cast32(state.annealing) # exponential annealing coefficient momentum = theano.shared(cast32(state.momentum)) # momentum term # PARAMETERS : weights list and bias list. # initialize a list of weights and biases based on layer_sizes weights_list = [ get_shared_weights(layer_sizes[i], layer_sizes[i + 1], name="W_{0!s}_{1!s}".format(i, i + 1)) for i in range(layers) ] # initialize each layer to uniform sample from sqrt(6. / (n_in + n_out)) recurrent_weights_list = [ get_shared_weights(layer_sizes[i + 1], layer_sizes[i], name="V_{0!s}_{1!s}".format(i + 1, i)) for i in range(layers) ] # initialize each layer to uniform sample from sqrt(6. / (n_in + n_out)) bias_list = [ get_shared_bias(layer_sizes[i], name='b_' + str(i)) for i in range(layers + 1) ] # initialize each layer to 0's. # Theano variables and RNG MRG = RNG_MRG.MRG_RandomStreams(1) X = T.fmatrix('X') Xs = [ T.fmatrix(name="X_initial") if i == 0 else T.fmatrix(name="X_" + str(i + 1)) for i in range(walkbacks + 1) ] hiddens_input = [X] + [ T.fmatrix(name="h_" + str(i + 1)) for i in range(layers) ] hiddens_output = hiddens_input[:1] + hiddens_input[1:] # Check variables for bad inputs and stuff if state.batch_size > len(Xs): warnings.warn( "Batch size should not be bigger than walkbacks+1 (len(Xs)) unless you know what you're doing. You need to know the sequence length beforehand." ) if state.batch_size <= 0: raise AssertionError("batch size cannot be <= 0") ''' F PROP ''' if state.hidden_act == 'sigmoid': print 'Using sigmoid activation for hiddens' hidden_activation = T.nnet.sigmoid elif state.hidden_act == 'rectifier': print 'Using rectifier activation for hiddens' hidden_activation = lambda x: T.maximum(cast32(0), x) elif state.hidden_act == 'tanh': print 'Using hyperbolic tangent activation for hiddens' hidden_activation = lambda x: T.tanh(x) else: raise AssertionError( "Did not recognize hidden activation {0!s}, please use tanh, rectifier, or sigmoid" .format(state.hidden_act)) if state.visible_act == 'sigmoid': print 'Using sigmoid activation for visible layer' visible_activation = T.nnet.sigmoid elif state.visible_act == 'softmax': print 'Using softmax activation for visible layer' visible_activation = T.nnet.softmax else: raise AssertionError( "Did not recognize visible activation {0!s}, please use sigmoid or softmax" .format(state.visible_act)) def update_layers(hiddens, p_X_chain, Xs, sequence_idx, noisy=True, sampling=True): print 'odd layer updates' update_odd_layers(hiddens, noisy) print 'even layer updates' update_even_layers(hiddens, p_X_chain, Xs, sequence_idx, noisy, sampling) # choose the correct output for hidden_outputs based on batch_size and walkbacks (this is due to an issue with batches, see note in run_story2.py) if state.batch_size <= len( Xs) and sequence_idx == state.batch_size - 1: return hiddens else: return None print 'done full update.' print # Odd layer update function # just a loop over the odd layers def update_odd_layers(hiddens, noisy): for i in range(1, len(hiddens), 2): print 'updating layer', i simple_update_layer(hiddens, None, None, None, i, add_noise=noisy) # Even layer update # p_X_chain is given to append the p(X|...) at each full update (one update = odd update + even update) def update_even_layers(hiddens, p_X_chain, Xs, sequence_idx, noisy, sampling): for i in range(0, len(hiddens), 2): print 'updating layer', i simple_update_layer(hiddens, p_X_chain, Xs, sequence_idx, i, add_noise=noisy, input_sampling=sampling) # The layer update function # hiddens : list containing the symbolic theano variables [visible, hidden1, hidden2, ...] # layer_update will modify this list inplace # p_X_chain : list containing the successive p(X|...) at each update # update_layer will append to this list # add_noise : pre and post activation gaussian noise def simple_update_layer(hiddens, p_X_chain, Xs, sequence_idx, i, add_noise=True, input_sampling=True): # Compute the dot product, whatever layer # If the visible layer X if i == 0: print 'using', recurrent_weights_list[i] hiddens[i] = (T.dot(hiddens[i + 1], recurrent_weights_list[i]) + bias_list[i]) # If the top layer elif i == len(hiddens) - 1: print 'using', weights_list[i - 1] hiddens[i] = T.dot(hiddens[i - 1], weights_list[i - 1]) + bias_list[i] # Otherwise in-between layers else: # next layer : hiddens[i+1], assigned weights : W_i # previous layer : hiddens[i-1], assigned weights : W_(i-1) print "using {0!s} and {1!s}".format(weights_list[i - 1], recurrent_weights_list[i]) hiddens[i] = T.dot( hiddens[i + 1], recurrent_weights_list[i]) + T.dot( hiddens[i - 1], weights_list[i - 1]) + bias_list[i] # Add pre-activation noise if NOT input layer if i == 1 and state.noiseless_h1: print '>>NO noise in first hidden layer' add_noise = False # pre activation noise if i != 0 and add_noise: print 'Adding pre-activation gaussian noise for layer', i hiddens[i] = add_gaussian_noise(hiddens[i], state.hidden_add_noise_sigma) # ACTIVATION! if i == 0: print 'Sigmoid units activation for visible layer X' hiddens[i] = visible_activation(hiddens[i]) else: print 'Hidden units {} activation for layer'.format(state.act), i hiddens[i] = hidden_activation(hiddens[i]) # post activation noise # why is there post activation noise? Because there is already pre-activation noise, this just doubles the amount of noise between each activation of the hiddens. # if i != 0 and add_noise: # print 'Adding post-activation gaussian noise for layer', i # hiddens[i] = add_gaussian(hiddens[i], state.hidden_add_noise_sigma) # build the reconstruction chain if updating the visible layer X if i == 0: # if input layer -> append p(X|...) p_X_chain.append( hiddens[i]) #what the predicted next input should be if sequence_idx + 1 < len(Xs): next_input = Xs[sequence_idx + 1] # sample from p(X|...) - SAMPLING NEEDS TO BE CORRECT FOR INPUT TYPES I.E. FOR BINARY MNIST SAMPLING IS BINOMIAL. real-valued inputs should be gaussian if input_sampling: print 'Sampling from input' sampled = MRG.binomial(p=next_input, size=next_input.shape, dtype='float32') else: print '>>NO input sampling' sampled = next_input # add noise sampled = salt_and_pepper(sampled, state.input_salt_and_pepper) # DOES INPUT SAMPLING MAKE SENSE FOR SEQUENTIAL? - not really since it was used in walkbacks which was gibbs. # set input layer hiddens[i] = sampled def build_graph(hiddens, Xs, noisy=True, sampling=True): predicted_X_chain = [ ] # the visible layer that gets generated at each update_layers run H_chain = [ ] # either None or hiddens that gets generated at each update_layers run, this is used to determine what the correct hiddens_output should be print "Building the graph :", walkbacks, "updates" for i in range(walkbacks): print "Forward Prediction {!s}/{!s}".format(i + 1, walkbacks) H_chain.append( update_layers(hiddens, predicted_X_chain, Xs, i, noisy, sampling)) return predicted_X_chain, H_chain '''Build the main training graph''' # corrupt x hiddens_output[0] = salt_and_pepper(hiddens_output[0], state.input_salt_and_pepper) # build the computation graph and the generated visible layers and appropriate hidden_output predicted_X_chain, H_chain = build_graph(hiddens_output, Xs, noisy=True, sampling=state.input_sampling) # predicted_X_chain, H_chain = build_graph(hiddens_output, Xs, noisy=False, sampling=state.input_sampling) #testing one-hot without noise # choose the correct output for hiddens_output (this is due to the issue with batches - see note in run_story2.py) # this finds the not-None element of H_chain and uses that for hiddens_output h_empty = [True if h is None else False for h in H_chain] if False in h_empty: # if there was a not-None element hiddens_output = H_chain[h_empty.index( False )] # set hiddens_output to the appropriate element from H_chain ###################### # COST AND GRADIENTS # ###################### print if state.cost_funct == 'binary_crossentropy': print 'Using binary cross-entropy cost!' cost_function = lambda x, y: T.mean(T.nnet.binary_crossentropy(x, y)) elif state.cost_funct == 'square': print "Using square error cost!" cost_function = lambda x, y: T.mean(T.sqr(x - y)) else: raise AssertionError( "Did not recognize cost function {0!s}, please use binary_crossentropy or square" .format(state.cost_funct)) print 'Cost w.r.t p(X|...) at every step in the graph' costs = [ cost_function(predicted_X_chain[i], Xs[i + 1]) for i in range(len(predicted_X_chain)) ] # outputs for the functions show_COSTs = [costs[0]] + [costs[-1]] # cost for the gradient # care more about the immediate next predictions rather than the future - use exponential decay # COST = T.sum(costs) COST = T.sum([ T.exp(-i / T.ceil(walkbacks / 3)) * costs[i] for i in range(len(costs)) ]) params = weights_list + recurrent_weights_list + bias_list print "params:", params print "creating functions..." gradient = T.grad(COST, params) gradient_buffer = [ theano.shared(numpy.zeros(param.get_value().shape, dtype='float32')) for param in params ] m_gradient = [ momentum * gb + (cast32(1) - momentum) * g for (gb, g) in zip(gradient_buffer, gradient) ] param_updates = [(param, param - learning_rate * mg) for (param, mg) in zip(params, m_gradient)] gradient_buffer_updates = zip(gradient_buffer, m_gradient) updates = OrderedDict(param_updates + gradient_buffer_updates) #odd layer h's not used from input -> calculated directly from even layers (starting with h_0) since the odd layers are updated first. f_cost = theano.function(inputs=hiddens_input + Xs, outputs=hiddens_output + show_COSTs, on_unused_input='warn') f_learn = theano.function(inputs=hiddens_input + Xs, updates=updates, outputs=hiddens_output + show_COSTs, on_unused_input='warn') print "functions done." print ############# # Denoise some numbers : show number, noisy number, reconstructed number ############# import random as R R.seed(1) # a function to add salt and pepper noise f_noise = theano.function(inputs=[X], outputs=salt_and_pepper( X, state.input_salt_and_pepper)) # Recompile the graph without noise for reconstruction function - the input x_recon is already going to be noisy, and this is to test on a simulated 'real' input. X_recon = T.fvector("X_recon") Xs_recon = [T.fvector("Xs_recon")] hiddens_R_input = [X_recon] + [ T.fvector(name="h_recon_" + str(i + 1)) for i in range(layers) ] hiddens_R_output = hiddens_R_input[:1] + hiddens_R_input[1:] # The layer update scheme print "Creating graph for noisy reconstruction function at checkpoints during training." p_X_chain_R, H_chain_R = build_graph(hiddens_R_output, Xs_recon, noisy=False) # choose the correct output from H_chain for hidden_outputs based on batch_size and walkbacks # choose the correct output for hiddens_output h_empty = [True if h is None else False for h in H_chain_R] if False in h_empty: # if there was a set of hiddens output from the batch_size-1 element of the chain hiddens_R_output = H_chain_R[h_empty.index( False )] # extract out the not-None element from the list if it exists # if state.batch_size <= len(Xs_recon): # for i in range(len(hiddens_R_output)): # hiddens_R_output[i] = H_chain_R[state.batch_size - 1][i] f_recon = theano.function(inputs=hiddens_R_input + Xs_recon, outputs=hiddens_R_output + [p_X_chain_R[0], p_X_chain_R[-1]], on_unused_input="warn") ############ # Sampling # ############ # the input to the sampling function X_sample = T.fmatrix("X_sampling") network_state_input = [X_sample] + [ T.fmatrix("H_sampling_" + str(i + 1)) for i in range(layers) ] # "Output" state of the network (noisy) # initialized with input, then we apply updates network_state_output = [X_sample] + network_state_input[1:] visible_pX_chain = [] # ONE update print "Performing one walkback in network state sampling." _ = update_layers(network_state_output, visible_pX_chain, [X_sample], 0, noisy=True) if layers == 1: f_sample_simple = theano.function(inputs=[X_sample], outputs=visible_pX_chain[-1]) # WHY IS THERE A WARNING???? # because the first odd layers are not used -> directly computed FROM THE EVEN layers # unused input = warn f_sample2 = theano.function(inputs=network_state_input, outputs=network_state_output + visible_pX_chain, on_unused_input='warn') def sample_some_numbers_single_layer(): x0 = test_X.get_value()[:1] samples = [x0] x = f_noise(x0) for i in range(399): x = f_sample_simple(x) samples.append(x) x = numpy.random.binomial(n=1, p=x, size=x.shape).astype('float32') x = f_noise(x) return numpy.vstack(samples) def sampling_wrapper(NSI): # * is the "splat" operator: It takes a list as input, and expands it into actual positional arguments in the function call. out = f_sample2(*NSI) NSO = out[:len(network_state_output)] vis_pX_chain = out[len(network_state_output):] return NSO, vis_pX_chain def sample_some_numbers(N=400): # The network's initial state init_vis = test_X.get_value()[:1] noisy_init_vis = f_noise(init_vis) network_state = [[noisy_init_vis] + [ numpy.zeros((1, len(b.get_value())), dtype='float32') for b in bias_list[1:] ]] visible_chain = [init_vis] noisy_h0_chain = [noisy_init_vis] for i in range(N - 1): # feed the last state into the network, compute new state, and obtain visible units expectation chain net_state_out, vis_pX_chain = sampling_wrapper(network_state[-1]) # append to the visible chain visible_chain += vis_pX_chain # append state output to the network state chain network_state.append(net_state_out) noisy_h0_chain.append(net_state_out[0]) return numpy.vstack(visible_chain), numpy.vstack(noisy_h0_chain) def plot_samples(epoch_number, iteration): to_sample = time.time() if layers == 1: # one layer model V = sample_some_numbers_single_layer() else: V, H0 = sample_some_numbers() img_samples = PIL.Image.fromarray( tile_raster_images(V, (root_N_input, root_N_input), (20, 20))) fname = outdir + 'samples_iteration_' + str( iteration) + '_epoch_' + str(epoch_number) + '.png' img_samples.save(fname) print 'Took ' + str(time.time() - to_sample) + ' to sample 400 numbers' ############## # Inpainting # ############## def inpainting(digit): # The network's initial state # NOISE INIT init_vis = cast32(numpy.random.uniform(size=digit.shape)) #noisy_init_vis = f_noise(init_vis) #noisy_init_vis = cast32(numpy.random.uniform(size=init_vis.shape)) # INDEXES FOR VISIBLE AND NOISY PART noise_idx = (numpy.arange(N_input) % root_N_input < (root_N_input / 2)) fixed_idx = (numpy.arange(N_input) % root_N_input > (root_N_input / 2)) # function to re-init the visible to the same noise # FUNCTION TO RESET HALF VISIBLE TO DIGIT def reset_vis(V): V[0][fixed_idx] = digit[0][fixed_idx] return V # INIT DIGIT : NOISE and RESET HALF TO DIGIT init_vis = reset_vis(init_vis) network_state = [[init_vis] + [ numpy.zeros((1, len(b.get_value())), dtype='float32') for b in bias_list[1:] ]] visible_chain = [init_vis] noisy_h0_chain = [init_vis] for i in range(49): # feed the last state into the network, compute new state, and obtain visible units expectation chain net_state_out, vis_pX_chain = sampling_wrapper(network_state[-1]) # reset half the digit net_state_out[0] = reset_vis(net_state_out[0]) vis_pX_chain[0] = reset_vis(vis_pX_chain[0]) # append to the visible chain visible_chain += vis_pX_chain # append state output to the network state chain network_state.append(net_state_out) noisy_h0_chain.append(net_state_out[0]) return numpy.vstack(visible_chain), numpy.vstack(noisy_h0_chain) def save_params_to_file(name, n, params, iteration): print 'saving parameters...' save_path = outdir + name + '_params_iteration_' + str( iteration) + '_epoch_' + str(n) + '.pkl' f = open(save_path, 'wb') try: cPickle.dump(params, f, protocol=cPickle.HIGHEST_PROTOCOL) finally: f.close() ################ # GSN TRAINING # ################ def train_recurrent_GSN(iteration, train_X, train_Y, valid_X, valid_Y, test_X, test_Y): print '----------------------------------------' print 'TRAINING GSN FOR ITERATION', iteration with open(logfile, 'a') as f: f.write( "--------------------------\nTRAINING GSN FOR ITERATION {0!s}\n" .format(iteration)) # TRAINING n_epoch = state.n_epoch batch_size = state.batch_size STOP = False counter = 0 if iteration == 0: learning_rate.set_value(cast32( state.learning_rate)) # learning rate times = [] best_cost = float('inf') patience = 0 print 'learning rate:', learning_rate.get_value() print 'train X size:', str(train_X.shape.eval()) print 'valid X size:', str(valid_X.shape.eval()) print 'test X size:', str(test_X.shape.eval()) train_costs = [] valid_costs = [] test_costs = [] train_costs_post = [] valid_costs_post = [] test_costs_post = [] if state.vis_init: bias_list[0].set_value( logit(numpy.clip(0.9, 0.001, train_X.get_value().mean(axis=0)))) if state.test_model: # If testing, do not train and go directly to generating samples, parzen window estimation, and inpainting print 'Testing : skip training' STOP = True while not STOP: counter += 1 t = time.time() print counter, '\t', with open(logfile, 'a') as f: f.write("{0!s}\t".format(counter)) #shuffle the data data.sequence_mnist_data(train_X, train_Y, valid_X, valid_Y, test_X, test_Y, dataset, rng) #train #init hiddens # hiddens = [(T.zeros_like(train_X[:batch_size]).eval())] # for i in range(len(weights_list)): # # init with zeros # hiddens.append(T.zeros_like(T.dot(hiddens[i], weights_list[i])).eval()) hiddens = [ T.zeros((batch_size, layer_size)).eval() for layer_size in layer_sizes ] train_cost = [] train_cost_post = [] for i in range(len(train_X.get_value(borrow=True)) / batch_size): xs = [ train_X.get_value( borrow=True)[(i * batch_size) + sequence_idx:((i + 1) * batch_size) + sequence_idx] for sequence_idx in range(len(Xs)) ] xs, hiddens = fix_input_size(xs, hiddens) hiddens[0] = xs[0] _ins = hiddens + xs _outs = f_learn(*_ins) hiddens = _outs[:len(hiddens)] cost = _outs[-2] cost_post = _outs[-1] train_cost.append(cost) train_cost_post.append(cost_post) train_cost = numpy.mean(train_cost) train_costs.append(train_cost) train_cost_post = numpy.mean(train_cost_post) train_costs_post.append(train_cost_post) print 'Train : ', trunc(train_cost), trunc(train_cost_post), '\t', with open(logfile, 'a') as f: f.write("Train : {0!s} {1!s}\t".format(trunc(train_cost), trunc(train_cost_post))) with open(train_convergence_pre, 'a') as f: f.write("{0!s},".format(train_cost)) with open(train_convergence_post, 'a') as f: f.write("{0!s},".format(train_cost_post)) #valid #init hiddens hiddens = [ T.zeros((batch_size, layer_size)).eval() for layer_size in layer_sizes ] valid_cost = [] valid_cost_post = [] for i in range(len(valid_X.get_value(borrow=True)) / batch_size): xs = [ valid_X.get_value( borrow=True)[(i * batch_size) + sequence_idx:((i + 1) * batch_size) + sequence_idx] for sequence_idx in range(len(Xs)) ] xs, hiddens = fix_input_size(xs, hiddens) hiddens[0] = xs[0] _ins = hiddens + xs _outs = f_cost(*_ins) hiddens = _outs[:-2] cost = _outs[-2] cost_post = _outs[-1] valid_cost.append(cost) valid_cost_post.append(cost_post) valid_cost = numpy.mean(valid_cost) valid_costs.append(valid_cost) valid_cost_post = numpy.mean(valid_cost_post) valid_costs_post.append(valid_cost_post) print 'Valid : ', trunc(valid_cost), trunc(valid_cost_post), '\t', with open(logfile, 'a') as f: f.write("Valid : {0!s} {1!s}\t".format(trunc(valid_cost), trunc(valid_cost_post))) with open(valid_convergence_pre, 'a') as f: f.write("{0!s},".format(valid_cost)) with open(valid_convergence_post, 'a') as f: f.write("{0!s},".format(valid_cost_post)) #test #init hiddens hiddens = [ T.zeros((batch_size, layer_size)).eval() for layer_size in layer_sizes ] test_cost = [] test_cost_post = [] for i in range(len(test_X.get_value(borrow=True)) / batch_size): xs = [ test_X.get_value( borrow=True)[(i * batch_size) + sequence_idx:((i + 1) * batch_size) + sequence_idx] for sequence_idx in range(len(Xs)) ] xs, hiddens = fix_input_size(xs, hiddens) hiddens[0] = xs[0] _ins = hiddens + xs _outs = f_cost(*_ins) hiddens = _outs[:-2] cost = _outs[-2] cost_post = _outs[-1] test_cost.append(cost) test_cost_post.append(cost_post) test_cost = numpy.mean(test_cost) test_costs.append(test_cost) test_cost_post = numpy.mean(test_cost_post) test_costs_post.append(test_cost_post) print 'Test : ', trunc(test_cost), trunc(test_cost_post), '\t', with open(logfile, 'a') as f: f.write("Test : {0!s} {1!s}\t".format(trunc(test_cost), trunc(test_cost_post))) with open(test_convergence_pre, 'a') as f: f.write("{0!s},".format(test_cost)) with open(test_convergence_post, 'a') as f: f.write("{0!s},".format(test_cost_post)) #check for early stopping cost = train_cost if cost < best_cost * state.early_stop_threshold: patience = 0 best_cost = cost else: patience += 1 if counter >= n_epoch or patience >= state.early_stop_length: STOP = True save_params_to_file('gsn', counter, params, iteration) timing = time.time() - t times.append(timing) print 'time : ', trunc(timing), print 'remaining: ', trunc( (n_epoch - counter) * numpy.mean(times) / 60 / 60), 'hrs', print 'B : ', [ trunc(abs(b.get_value(borrow=True)).mean()) for b in bias_list ], print 'W : ', [ trunc(abs(w.get_value(borrow=True)).mean()) for w in weights_list ], print 'V : ', [ trunc(abs(v.get_value(borrow=True)).mean()) for v in recurrent_weights_list ] with open(logfile, 'a') as f: f.write("MeanVisB : {0!s}\t".format( trunc(bias_list[0].get_value().mean()))) with open(logfile, 'a') as f: f.write("W : {0!s}\t".format( str([ trunc(abs(w.get_value(borrow=True)).mean()) for w in weights_list ]))) with open(logfile, 'a') as f: f.write("Time : {0!s} seconds\n".format(trunc(timing))) if (counter % state.save_frequency) == 0: # Checking reconstruction nums = test_X.get_value()[range(100)] noisy_nums = f_noise(test_X.get_value()[range(100)]) reconstructed_prediction = [] reconstructed_prediction_end = [] #init reconstruction hiddens hiddens = [ T.zeros(layer_size).eval() for layer_size in layer_sizes ] for num in noisy_nums: hiddens[0] = num for i in range(len(hiddens)): if len(hiddens[i].shape ) == 2 and hiddens[i].shape[0] == 1: hiddens[i] = hiddens[i][0] _ins = hiddens + [num] _outs = f_recon(*_ins) hiddens = _outs[:len(hiddens)] [reconstructed_1, reconstructed_n] = _outs[len(hiddens):] reconstructed_prediction.append(reconstructed_1) reconstructed_prediction_end.append(reconstructed_n) with open(logfile, 'a') as f: f.write("\n") for i in range(len(nums)): if len( reconstructed_prediction[i].shape ) == 2 and reconstructed_prediction[i].shape[0] == 1: reconstructed_prediction[i] = reconstructed_prediction[ i][0] print nums[i].tolist( ), "->", reconstructed_prediction[i].tolist() with open(logfile, 'a') as f: f.write("{0!s} -> {1!s}\n".format( nums[i].tolist(), [ trunc(n) if n > 0.0001 else trunc(0.00000000000000000) for n in reconstructed_prediction[i].tolist() ])) with open(logfile, 'a') as f: f.write("\n") # # Concatenate stuff # stacked = numpy.vstack([numpy.vstack([nums[i*10 : (i+1)*10], noisy_nums[i*10 : (i+1)*10], reconstructed_prediction[i*10 : (i+1)*10], reconstructed_prediction_end[i*10 : (i+1)*10]]) for i in range(10)]) # numbers_reconstruction = PIL.Image.fromarray(tile_raster_images(stacked, (root_N_input,root_N_input), (10,40))) # numbers_reconstruction.save(outdir+'gsn_number_reconstruction_iteration_'+str(iteration)+'_epoch_'+str(counter)+'.png') # # #sample_numbers(counter, 'seven') # plot_samples(counter, iteration) # # #save params # save_params_to_file('gsn', counter, params, iteration) # ANNEAL! new_lr = learning_rate.get_value() * annealing learning_rate.set_value(new_lr) # 10k samples print 'Generating 10,000 samples' samples, _ = sample_some_numbers(N=10000) f_samples = outdir + 'samples.npy' numpy.save(f_samples, samples) print 'saved digits' ##################### # STORY 2 ALGORITHM # ##################### for iter in range(state.max_iterations): train_recurrent_GSN(iter, train_X, train_Y, valid_X, valid_Y, test_X, test_Y)
def __init__(self, inputs=None, outputs=None, params=None, outdir='outputs/basic', activation='rectifier', weights_init='uniform', weights_mean=0, weights_std=5e-3, weights_interval='glorot', bias_init=0.0, mrg=RNG_MRG.MRG_RandomStreams(1), **kwargs): """ Initialize a basic layer. Parameters ---------- inputs : List of [tuple(shape, `Theano.TensorType`)] The dimensionality of the inputs for this model, and the routing information for the model to accept inputs from elsewhere. `shape` will be a monad tuple representing known sizes for each dimension in the `Theano.TensorType`. The length of `shape` should be equal to number of dimensions in `Theano.TensorType`, where the shape element is an integer representing the size for its dimension, or None if the shape isn't known. For example, if you have a matrix with unknown batch size but fixed feature size of 784, `shape` would be: (None, 784). The full form of `inputs` would be: [((None, 784), <TensorType(float32, matrix)>)]. outputs : int The dimensionality of the output for this model. params : Dict(string_name: theano SharedVariable), optional A dictionary of model parameters (shared theano variables) that you should use when constructing this model (instead of initializing your own shared variables). This parameter is useful when you want to have two versions of the model that use the same parameters - such as siamese networks or pretraining some weights. outdir : str The directory you want outputs (parameters, images, etc.) to save to. If None, nothing will be saved. activation : str or callable The activation function to use after the dot product going from input -> output. This can be a string representing an option from opendeep.utils.activation, or your own function as long as it is callable. weights_init : str Determines the method for initializing input -> output weights. See opendeep.utils.nnet for options. weights_interval : str or float If Uniform `weights_init`, the +- interval to use. See opendeep.utils.nnet for options. weights_mean : float If Gaussian `weights_init`, the mean value to use. weights_std : float If Gaussian `weights_init`, the standard deviation to use. bias_init : float The initial value to use for the bias parameter. Most often, the default of 0.0 is preferred. mrg : random A random number generator that is used when adding noise. I recommend using Theano's sandbox.rng_mrg.MRG_RandomStreams. """ # init Model to combine the defaults and config dictionaries with the initial parameters. initial_parameters = locals().copy() initial_parameters.pop('self') super(Dense, self).__init__(**initial_parameters) if self.inputs is None: return ################## # specifications # ################## if len(self.inputs) > 1: raise NotImplementedError( "Expected 1 input to Dense, found %d. Please merge inputs before passing " "to the Dense model!" % len(self.inputs)) # self.inputs is a list of all the input expressions (we enforce only 1, so self.inputs[0] is the input) input_shape, self.input = self.inputs[0] if isinstance(input_shape, int): self.input_size = ((None, ) * (self.input.ndim - 1)) + (input_shape, ) else: self.input_size = input_shape assert self.input_size is not None, "Need to specify the shape for the last dimension of the input!" # We also only have 1 output assert self.output_size is not None, "Need to specify outputs size!" out_size = self.output_size[0] if isinstance(out_size, int): self.output_size = self.input_size[:-1] + (out_size, ) else: self.output_size = out_size # activation function! activation_func = get_activation_function(activation) ######################################################### # parameters - make sure to deal with input dictionary! # ######################################################### W = self.params.get("W") or get_weights( weights_init=weights_init, shape=(self.input_size[-1], self.output_size[-1]), name="W", rng=mrg, # if gaussian mean=weights_mean, std=weights_std, # if uniform interval=weights_interval) b = self.params.get("b") or get_bias( shape=self.output_size[-1], name="b", init_values=bias_init) # Finally have the two parameters - weights matrix W and bias vector b. That is all! self.params = OrderedDict([("W", W), ("b", b)]) ############### # computation # ############### # Here is the meat of the computation transforming input -> output # It simply involves a matrix multiplication of inputs*weights, adding the bias vector, and then passing # the result through our activation function (normally something nonlinear such as: max(0, output)) self.output = activation_func(dot(self.input, W) + b) log.debug( "Initialized a basic fully-connected layer with shape %s and activation: %s", str((self.input_size[-1], self.output_size[-1])), str(activation))
def __init__(self, prefix, options, create_param=True, repeat_actions=False, plan_steps=10, ntimesteps=10, inter_size=64, dec_dim=500, batch_size=None, context_dim=-1, use_gate=True, always_recommit=False, bounded_sigm_temp_act=False, do_commit=True, do_layerNorm=False): self.repeat_actions = repeat_actions self.ntimesteps = ntimesteps self.prefix = prefix self.inter_size = inter_size self.bounded_sigm_temp_act = bounded_sigm_temp_act self.dec_dim = dec_dim self.context_dim = context_dim self.use_gate = use_gate self.always_recommit = always_recommit self.do_commit = do_commit if not "st_estimator" in options: options['st_estimator'] = "GumbelSoftmax" self.st_estimator = "GumbelSoftmax" self.st_estimator = options['st_estimator'] if self.st_estimator is None: self.st_estimator = "GumbelSoftmax" options['st_estimator'] = self.st_estimator self.rng = rng_mrg.MRG_RandomStreams(seed=1993) if 'plan_step' in options: self.plan_steps = options['plan_step'] else: self.plan_steps = plan_steps self.only_use_w = False if 'only_use_w' in options: self.only_use_w = options['only_use_w'] if self.only_use_w: print "We will only use the h2 state for the attention." else: print "We will use all the hidden state for the attention." if 'use_gate' in options: # Shitty way to do it, but it's a pain to add everything everywhere self.use_gate = options['use_gate'] if self.use_gate: print "We are using a gate in the planner" else: print "We won't be using the gate for the planner" self.learn_t = False if 'learn_t' in options: self.learn_t = options['learn_t'] if self.learn_t: print "We are learning the temperature" else: print "We won't be learning the temperature" if self.st_estimator == "REINFORCE": print "Using REINFORCE" elif self.st_estimator == "GumbelSoftmax": print "Using GumbelSoftmax" else: raise ValueError("Wrong st estimator: {}".format( self.st_estimator)) self.action_plan_steps = plan_steps if 'repeat_actions' in options: self.repeat_actions = options['repeat_actions'] if self.repeat_actions: print "We will repeat the action until recommitment (and won't be using gates." self.action_plan_steps = 1 self.use_gate = False else: print "We We will plan ahead all futur alignment." self.do_layerNorm = do_layerNorm if 'planning_do_layerNorm' in options: self.do_layerNorm = options['planning_do_layerNorm'] if self.do_layerNorm: print "We are doing layernorm in the PAG network" else: print "We are not doing layernorm in the PAG network" self.actionPlanner = ActionPlan(inter_size=inter_size, context_size=context_dim, dec_size=dec_dim, create_param=create_param, batch_size=batch_size, repeat_actions=self.repeat_actions, plan_steps=self.plan_steps, ntimesteps=ntimesteps, options=options) if do_commit: self.commitplan = CommitmentPlan( create_param=create_param, bellow_size=dec_dim, plan_steps=self.plan_steps, bounded_sigm_temp_act=self.bounded_sigm_temp_act, options=options, rng=self.rng) else: print "WARNING, we are not doing any commitment." self.commitplan = CommitmentPlan( create_param=create_param, bellow_size=dec_dim, plan_steps=self.plan_steps, bounded_sigm_temp_act=self.bounded_sigm_temp_act, options=options, rng=self.rng) if create_param: self.init_params()
def __init__(self, inputs_hook=None, params_hook=None, outdir='outputs/basic', input_size=None, output_size=None, activation='rectifier', cost='mse', cost_args=None, weights_init='uniform', weights_mean=0, weights_std=5e-3, weights_interval='montreal', bias_init=0.0, noise=None, noise_level=None, mrg=RNG_MRG.MRG_RandomStreams(1), **kwargs): """ Initialize a basic layer. Parameters ---------- inputs_hook : Tuple of (shape, variable) Routing information for the model to accept inputs from elsewhere. This is used for linking different models together. For now, it needs to include the shape information (normally the dimensionality of the input i.e. input_size). params_hook : List(theano shared variable) A list of model parameters (shared theano variables) that you should use when constructing this model (instead of initializing your own shared variables). This parameter is useful when you want to have two versions of the model that use the same parameters - such as a training model with dropout applied to layers and one without for testing, where the parameters are shared between the two. outdir : str The directory you want outputs (parameters, images, etc.) to save to. If None, nothing will be saved. input_size : int The size (dimensionality) of the input to the layer. If shape is provided in `inputs_hook`, this is optional. output_size : int The size (dimensionality) of the output from the layer. activation : str or callable The activation function to use after the dot product going from input -> output. This can be a string representing an option from opendeep.utils.activation, or your own function as long as it is callable. cost : str or callable The cost function to use when training the layer. This should be appropriate for the output type, i.e. mse for real-valued outputs, binary cross-entropy for binary outputs, etc. cost_args : dict Any additional named keyword arguments to pass to the specified `cost_function`. weights_init : str Determines the method for initializing input -> output weights. See opendeep.utils.nnet for options. weights_interval : str or float If Uniform `weights_init`, the +- interval to use. See opendeep.utils.nnet for options. weights_mean : float If Gaussian `weights_init`, the mean value to use. weights_std : float If Gaussian `weights_init`, the standard deviation to use. bias_init : float The initial value to use for the bias parameter. Most often, the default of 0.0 is preferred. noise : str What type of noise to use for corrupting the output (if not None). See opendeep.utils.noise for options. This should be appropriate for the output activation, i.e. Gaussian for tanh or other real-valued activations, etc. Often, you will use 'dropout' here as a regularization in BasicLayers. noise_level : float The amount of noise to use for the noise function specified by `noise`. This could be the standard deviation for gaussian noise, the interval for uniform noise, the dropout amount, etc. mrg : random A random number generator that is used when adding noise. I recommend using Theano's sandbox.rng_mrg.MRG_RandomStreams. """ # init Model to combine the defaults and config dictionaries with the initial parameters. initial_parameters = locals().copy() initial_parameters.pop('self') super(Dense, self).__init__(**initial_parameters) ################## # specifications # ################## # grab info from the inputs_hook, or from parameters if inputs_hook is not None: # inputs_hook is a tuple of (Shape, Input) assert len( inputs_hook ) == 2, 'Expected inputs_hook to be tuple!' # make sure inputs_hook is a tuple self.input = inputs_hook[1] else: # make the input a symbolic matrix self.input = T.matrix('X') # now that we have the input specs, define the output 'target' variable to be used in supervised training! if kwargs.get('out_as_probs') == False: self.target = T.vector('Y', dtype='int64') else: self.target = T.matrix('Y') # either grab the output's desired size from the parameter directly, or copy input_size self.output_size = self.output_size or self.input_size # other specifications # activation function! activation_func = get_activation_function(activation) # cost function! cost_func = get_cost_function(cost) cost_args = cost_args or dict() #################################################### # parameters - make sure to deal with params_hook! # #################################################### if params_hook is not None: # make sure the params_hook has W (weights matrix) and b (bias vector) assert len(params_hook) == 2, \ "Expected 2 params (W and b) for Dense, found {0!s}!".format(len(params_hook)) W, b = params_hook else: W = get_weights( weights_init=weights_init, shape=(self.input_size, self.output_size), name="W", rng=mrg, # if gaussian mean=weights_mean, std=weights_std, # if uniform interval=weights_interval) # grab the bias vector b = get_bias(shape=output_size, name="b", init_values=bias_init) # Finally have the two parameters - weights matrix W and bias vector b. That is all! self.params = [W, b] ############### # computation # ############### # Here is the meat of the computation transforming input -> output # It simply involves a matrix multiplication of inputs*weights, adding the bias vector, and then passing # the result through our activation function (normally something nonlinear such as: max(0, output)) self.output = activation_func(T.dot(self.input, W) + b) # Now deal with noise if we added it: if noise: log.debug('Adding noise switch.') if noise_level is not None: noise_func = get_noise(noise, noise_level=noise_level, mrg=mrg) else: noise_func = get_noise(noise, mrg=mrg) # apply the noise as a switch! # default to apply noise. this is for the cost and gradient functions to be computed later # (not sure if the above statement is accurate such that gradient depends on initial value of switch) self.switch = sharedX(value=1, name="basiclayer_noise_switch") self.output = T.switch(self.switch, noise_func(input=self.output), self.output) # now to define the cost of the model - use the cost function to compare our output with the target value. self.cost = cost_func(output=self.output, target=self.target, **cost_args) log.debug( "Initialized a basic fully-connected layer with shape %s and activation: %s", str((self.input_size, self.output_size)), str(activation))
def run(rng_seed,ltype, mtype,load_path, load_epoch, sample=False, nclass=10, whichclass=None, verbose=False, class_list=None, ckernr=None, cri_ckern=None): assert ckernr!=None # ltype -> GAN LSGAN WGAN # JS 0.4+-asdf # LS # WA # MMD # IS ### MODEL PARAMS ### MODEL PARAMS # ltype = sys.argv[3] # mtype = 'js' # print 'ltype: ' + ltype # print 'mtype: ' + mtype mmdF = False nndF = False # CONV (DISC) conv_num_hid= 100 num_channel = 3 #Fixed num_class = 1 #Fixed D=64*64*3 kern=int(ckernr.split('_')[0]) ### OPT PARAMS batch_sz = 100 momentum = 0.0 #Not Used lam = 0.0 epsilon_dis = 0.0002 epsilon_gen = 0.0001 # if mtype =='js' : # epsilon_dis = 0.0002 # epsilon_gen = 0.0001 # K=5 #FIXED # J=1 # elif mtype == 'ls': # epsilon_dis = 0.0002 # epsilon_gen = 0.0001 # K=5 #FIXED # J=1 # else: # epsilon_dis = 0.0002 # epsilon_gen = 0.0001 # K=2 #FIXED # J=1 # ganI (GEN) filter_sz = 4 #FIXED nkerns = [1,8,4,2,1] ckern = int(ckernr.split('_')[-1]) #20 num_hid1 = nkerns[0]*ckern*filter_sz*filter_sz #Fixed num_z = 100 ### TRAIN PARAMS num_epoch = 10 epoch_start = 0 #Fixed contF = True #Fixed num_hids = [num_hid1] input_width = 64 input_height = 64 input_depth = 3 ### SAVE PARAM model_param_save = 'num_hid%d.batch%d.eps_dis%g.eps_gen%g.num_z%d.num_epoch%g.lam%g.ts%d.data.100_CONV_lsun'%(conv_num_hid,batch_sz, epsilon_dis, epsilon_gen, num_z, num_epoch, lam1, num_steps) # device=sys.argv[1] import os os.environ['RNG_SEED'] = str(rng_seed) os.environ['LOAD_PATH'] = load_path os.environ['LOAD_EPOCH'] = str(load_epoch) os.environ['LTYPE'] = ltype # os.environ['MTYPE'] = mtype try: a=os.environ['CRI_KERN'] except: if cri_ckern!=None: os.environ['CRI_KERN']=cri_ckern else: raise RuntimeError('cri_kern not provided') import theano import theano.sandbox.rng_mrg as RNG_MRG rng = np.random.RandomState(int(os.environ['RNG_SEED'])) MRG = RNG_MRG.MRG_RandomStreams(rng.randint(2 ** 30)) from util_cifar10 import load_cifar10 from utils import shared_dataset, unpickle import pwd; username = pwd.getpwuid(os.geteuid()).pw_name global nnd_path if username in ['hma02', 'mahe6562']: if username=='hma02': datapath = '/mnt/data/hma02/data/cifar10/cifar-10-batches-py/' save_path = '/mnt/data/hma02/gap/dcgan-cifar10/' nnd_path = '/mnt/data/hma02/gap/' else: datapath = '/scratch/g/gwtaylor/mahe6562/data/cifar10/cifar-10-batches-py/' save_path = '/scratch/g/gwtaylor/mahe6562/gap/dcgan-cifar10/' nnd_path = '//scratch/g/gwtaylor/mahe6562/gap/' import time; date = '%d-%d' % (time.gmtime()[1], time.gmtime()[2]) import os; worker_id = os.getpid() save_path+= date+'-%d-%s/' % (worker_id,ltype) # if not os.path.exists(save_path): # os.makedirs(save_path); print 'create dir',save_path # # save_the_env(dir_to_save='../mnist', path=save_path) global train_set_np,valid_set_np,test_set_np train_set_np, valid_set_np, test_set_np = load_cifar10(path=datapath, verbose=False) # 127.5 - 1. in order to rescale to -1 to 1. train_set_np[0] = train_set_np[0] / 255.0 #127.5 - 1. valid_set_np[0] = valid_set_np[0] / 255.0 #127.5 - 1. test_set_np[0] = test_set_np[0] / 255.0 #127.5 - 1. N ,D = train_set_np[0].shape; Nv,D = valid_set_np[0].shape; Nt,D = test_set_np[0].shape train_set = shared_dataset(train_set_np) valid_set = shared_dataset(valid_set_np) test_set = shared_dataset(test_set_np ) # print 'batch sz %d, epsilon gen %g, epsilon dis %g, hnum_z %d, num_conv_hid %g, num_epoch %di, lam %g' % \ # (batch_sz, epsilon_gen, epsilon_dis, num_z, conv_num_hid, num_epoch, lam) book_keeping = [] num_hids = [num_hid1] train_params = [num_epoch, epoch_start, contF] opt_params = [batch_sz, epsilon_gen, epsilon_dis, momentum, num_epoch, N, Nv, Nt, lam] ganI_params = [batch_sz, D, num_hids, rng, num_z, nkerns, ckern, num_channel] conv_params = [conv_num_hid, D, num_class, batch_sz, num_channel, kern] if sample==True: samples = main(train_set, valid_set, test_set, opt_params, ganI_params, train_params, conv_params, sample) return 0,0,0,0 else: te_score_ls, te_score_iw , mmd_te , is_sam = main(train_set, valid_set, test_set, opt_params, ganI_params, train_params, conv_params, sample) return te_score_ls, te_score_iw , mmd_te , is_sam
def __init__(self, inputs_hook=None, params_hook=None, outdir='outputs/conv1d', input_size=None, filter_shape=None, stride=None, border_mode='valid', weights_init='uniform', weights_interval='montreal', weights_mean=0, weights_std=5e-3, bias_init=0, activation='rectifier', convolution='mc0', mrg=RNG_MRG.MRG_RandomStreams(1)): """ Initialize a 1-D convolutional layer. Parameters ---------- inputs_hook : Tuple of (shape, variable) Routing information for the model to accept inputs from elsewhere. This is used for linking different models together. For now, it needs to include the shape information. params_hook : List(theano shared variable) A list of model parameters (shared theano variables) that you should use when constructing this model (instead of initializing your own shared variables). outdir : str The directory you want outputs (parameters, images, etc.) to save to. If None, nothing will be saved. input_size : tuple Shape of the incoming data: (batch_size, num_channels, data_dimensionality). Most likely, your channels will be 1. For example, batches of text will be of the form (N, 1, D) where N=examples in minibatch and D=dimensionality (chars, words, etc.) filter_shape : tuple (num_filters, num_channels, filter_length). This is also the shape of the weights matrix. stride : int The distance between the receptive field centers of neighboring units. This is the 'stride' of the convolution operation. border_mode : str, one of 'valid', 'full', 'same' A string indicating the convolution border mode. If 'valid', the convolution is only computed where the input and the filter fully overlap. If 'full', the convolution is computed wherever the input and the filter overlap by at least one position. If 'same', the convolution is computed wherever the input and the filter overlap by at least half the filter size, when the filter size is odd. In practice, the input is zero-padded with half the filter size at the beginning and half at the end (or one less than half in the case of an even filter size). This results in an output length that is the same as the input length (for both odd and even filter sizes). weights_init : str Determines the method for initializing model weights. See opendeep.utils.nnet for options. weights_interval : str or float If Uniform `weights_init`, the +- interval to use. See opendeep.utils.nnet for options. weights_mean : float If Gaussian `weights_init`, the mean value to use. weights_std : float If Gaussian `weights_init`, the standard deviation to use. bias_init : float The initial value to use for the bias parameter. Most often, the default of 0.0 is preferred. activation : str or Callable The activation function to apply to the layer. See opendeep.utils.activation for options. convolution : str or Callable The 1-dimensional convolution implementation to use. The default of 'mc0' is normally fine. See opendeep.utils.conv1d_implementations for alternatives. (This is necessary because Theano only supports 2D convolutions at the moment). mrg : random A random number generator that is used when adding noise. I recommend using Theano's sandbox.rng_mrg.MRG_RandomStreams. Notes ----- Theano's default convolution function (`theano.tensor.nnet.conv.conv2d`) does not support the 'same' border mode by default. This layer emulates it by performing a 'full' convolution and then cropping the result, which may negatively affect performance. """ super(Conv1D, self).__init__( ** {arg: val for (arg, val) in locals().items() if arg is not 'self'}) ################## # specifications # ################## # grab info from the inputs_hook, or from parameters # expect input to be in the form (B, C, I) (batch, channel, input data) # inputs_hook is a tuple of (Shape, Input) if self.inputs_hook is not None: # make sure inputs_hook is a tuple assert len( self.inputs_hook ) == 2, "expecting inputs_hook to be tuple of (shape, input)" self.input = inputs_hook[1] else: # make the input a symbolic matrix self.input = T.ftensor3('X') # activation function! activation_func = get_activation_function(activation) # convolution function! convolution_func = get_conv1d_function(convolution) # filter shape should be in the form (num_filters, num_channels, filter_length) num_filters = filter_shape[0] filter_length = filter_shape[2] ################################################ # Params - make sure to deal with params_hook! # ################################################ if self.params_hook: # make sure the params_hook has W and b assert len(self.params_hook) == 2, \ "Expected 2 params (W and b) for Conv1D, found {0!s}!".format(len(self.params_hook)) W, b = self.params_hook else: W = get_weights( weights_init=weights_init, shape=filter_shape, name="W", rng=mrg, # if gaussian mean=weights_mean, std=weights_std, # if uniform interval=weights_interval) b = get_bias(shape=(num_filters, ), name="b", init_values=bias_init) # Finally have the two parameters! self.params = [W, b] ######################## # Computational Graph! # ######################## if border_mode in ['valid', 'full']: conved = convolution_func(self.input, W, subsample=(stride, ), image_shape=self.input_size, filter_shape=filter_shape, border_mode=border_mode) elif border_mode == 'same': conved = convolution_func(self.input, W, subsample=(stride, ), image_shape=self.input_size, filter_shape=filter_shape, border_mode='full') shift = (filter_length - 1) // 2 conved = conved[:, :, shift:self.input_size[2] + shift] else: log.error("Invalid border mode: '%s'" % border_mode) raise RuntimeError("Invalid border mode: '%s'" % border_mode) self.output = activation_func(conved + b.dimshuffle('x', 0, 'x'))
This module provides the important noise functions - mostly used for regularization purposes to prevent the deep nets from overfitting. Based on code from Li Yao (University of Montreal) https://github.com/yaoli/GSN """ # standard libraries import logging from functools import partial # third party libraries import theano import theano.tensor as T import theano.sandbox.rng_mrg as RNG_MRG import theano.compat.six as six theano_random = RNG_MRG.MRG_RandomStreams(seed=23455) # set a fixed number initializing RandomSate for 2 purpose: # 1. repeatable experiments; 2. for multiple-GPU, the same initial weights log = logging.getLogger(__name__) def get_noise(name, *args, **kwargs): """ Helper function to return a partially applied noise functions - all you need to do is apply them to an input. Parameters ---------- name : str Name of noise function to use (key in a function dictionary). Returns
def experiment(state, channel): print 'LOADING MODEL CONFIG' config_path = '/'+os.path.join(*state.model_path.split('/')) print state.model_path if 'config' in os.listdir(config_path): config_file = open(os.path.join(config_path, 'config'), 'r') config = config_file.readlines() try: config_vals = config[0].split('(')[1:][0].split(')')[:-1][0].split(', ') except: config_vals = config[0][3:-1].replace(': ','=').replace("'","").split(', ') config_vals = filter(lambda x:not 'jobman' in x and not '/' in x and not ':' in x and not 'experiment' in x, config_vals) for CV in config_vals: print CV try: exec('state.'+CV) in globals(), locals() except: exec('state.'+CV.split('=')[0]+"='"+CV.split('=')[1]+"'") in globals(), locals() else: import pdb; pdb.set_trace() # LOAD DATA if 'mnist' in state.data_path: (train_X, train_Y), (valid_X, valid_Y), (test_X, test_Y) = load_mnist(state.data_path) train_X = numpy.concatenate((train_X, valid_X)) elif 'TFD' in state.data_path: (train_X, train_Y), (valid_X, valid_Y), (test_X, test_Y) = load_tfd(state.data_path) N_input = train_X.shape[1] root_N_input = numpy.sqrt(N_input) #train_X = binarize(train_X) #valid_X = binarize(valid_X) #test_X = binarize(test_X) numpy.random.seed(1) numpy.random.shuffle(train_X) train_X = theano.shared(train_X) valid_X = theano.shared(valid_X) test_X = theano.shared(test_X) # shuffle Y also if necessary # THEANO VARIABLES X = T.fmatrix() index = T.lscalar() MRG = RNG_MRG.MRG_RandomStreams(1) # SPECS K = state.K N = state.N layer_sizes = [N_input] + [state.hidden_size] * K learning_rate = theano.shared(cast32(state.learning_rate)) annealing = cast32(state.annealing) momentum = theano.shared(cast32(state.momentum)) # PARAMETERS # weights weights_list = [get_shared_weights(layer_sizes[i], layer_sizes[i+1], numpy.sqrt(6. / (layer_sizes[i] + layer_sizes[i+1] )), 'W') for i in range(K)] bias_list = [get_shared_bias(layer_sizes[i], 'b') for i in range(K + 1)] # LOAD PARAMS print 'Loading model params...', print 'Loading last epoch...', param_files = filter(lambda x: x.endswith('ft'), os.listdir(config_path)) max_epoch = numpy.argmax([int(x.split('_')[-1].split('.')[0]) for x in param_files]) params_to_load = os.path.join(config_path, param_files[max_epoch]) F = open(params_to_load, 'r') n_params = len(weights_list) + len(bias_list) print param_files[max_epoch] for i in range(0, len(weights_list)): weights_list[i].set_value(ft.read(F)) for i in range(len(bias_list)): bias_list[i].set_value(ft.read(F)) print 'Model parameters loaded!!' # functions def dropout(IN, p = 0.5): noise = MRG.binomial(p = p, n = 1, size = IN.shape, dtype='float32') OUT = (IN * noise) / cast32(p) return OUT def add_gaussian_noise(IN, std = 1): print 'GAUSSIAN NOISE : ', std noise = MRG.normal(avg = 0, std = std, size = IN.shape, dtype='float32') OUT = IN + noise return OUT def corrupt_input(IN, p = 0.5): # salt and pepper? masking? noise = MRG.binomial(p = p, n = 1, size = IN.shape, dtype='float32') IN = IN * noise return IN def salt_and_pepper(IN, p = 0.2): # salt and pepper noise print 'DAE uses salt and pepper noise' a = MRG.binomial(size=IN.shape, n=1, p = 1 - p, dtype='float32') b = MRG.binomial(size=IN.shape, n=1, p = 0.5, dtype='float32') c = T.eq(a,0) * b return IN * a + c def update_odd_layers(hiddens, noisy): for i in range(1, K+1, 2): print i if noisy: simple_update_layer(hiddens, None, i) else: simple_update_layer(hiddens, None, i, mul_noise = False, add_noise = False) # we can append the reconstruction at each step def update_even_layers(hiddens, p_X_chain, autoregression, noisy): for i in range(0, K+1, 2): print i if noisy: simple_update_layer(hiddens, p_X_chain, i, autoregression) else: simple_update_layer(hiddens, p_X_chain, i, autoregression, mul_noise = False, add_noise = False) def simple_update_layer(hiddens, p_X_chain, i, autoregression=False, mul_noise=True, add_noise=True): # Compute the dot product, whatever layer post_act_noise = 0 if i == 0: hiddens[i] = T.dot(hiddens[i+1], weights_list[i].T) + bias_list[i] elif i == K: hiddens[i] = T.dot(hiddens[i-1], weights_list[i-1]) + bias_list[i] # TODO compute d h_i / d h_(i-1) # derivee de h[i] par rapport a h[i-1] # W is what transpose... if state.scaled_noise: # to remove this, remove the post_act_noise variable initialisation and the following block # and put back post activation noise like it was (just normal calling of the function) W = weights_list[i-1] hn = T.tanh(hiddens[i]) ww = T.dot(W.T, W) s = (cast32(1) - hn**2) jj = ww * s.dimshuffle(0, 'x', 1) * s.dimshuffle(0, 1, 'x') scale_noise = lambda alpha : (alpha.dimshuffle(0, 1, 'x') * jj).sum(1) print 'SCALED_NOISE!!!, Last layer : set add_noise to False, add its own scaled noise' add_noise = False #pre_act_noise = MRG.normal(avg = 0, std = std, size = hn.shape, dtype='float32') post_act_noise = MRG.normal(avg = 0, std = state.hidden_add_noise_sigma, size = hn.shape, dtype='float32') #pre_act_noise = scale_noise(pre_act_noise) post_act_noise = scale_noise(post_act_noise) #hiddens[i] += pre_act_noise else: # next layer : layers[i+1], assigned weights : W_i # previous layer : layers[i-1], assigned weights : W_(i-1) hiddens[i] = T.dot(hiddens[i+1], weights_list[i].T) + T.dot(hiddens[i-1], weights_list[i-1]) + bias_list[i] # Add pre-activation noise if NOT input layer if i==1 and state.noiseless_h1: print '>>NO noise in first layer' add_noise = False # pre activation noise if i != 0 and add_noise and not state.scaled_noise: print 'Adding pre-activation gaussian noise' hiddens[i] = add_gaussian_noise(hiddens[i], state.hidden_add_noise_sigma) # ACTIVATION! if i == 0: print 'Sigmoid units' hiddens[i] = T.nnet.sigmoid(hiddens[i]) else: print 'Hidden units' hiddens[i] = hidden_activation(hiddens[i]) # post activation noise if i != 0 and add_noise: print 'Adding post-activation gaussian noise' if state.scaled_noise: hiddens[i] += post_act_noise else: hiddens[i] = add_gaussian_noise(hiddens[i], state.hidden_add_noise_sigma) # POST ACTIVATION NOISE if i != 0 and mul_noise and state.hidden_dropout: # dropout if hidden print 'Dropping out', state.hidden_dropout hiddens[i] = dropout(hiddens[i], state.hidden_dropout) elif i == 0: # if input layer -> append p(X|...) p_X_chain.append(hiddens[i]) # sample from p(X|...) if state.input_sampling: print 'Sampling from input' sampled = MRG.binomial(p = hiddens[i], size=hiddens[i].shape, dtype='float32') else: print '>>NO input sampling' sampled = hiddens[i] # add noise sampled = salt_and_pepper(sampled, state.input_salt_and_pepper) # set input layer hiddens[i] = sampled def update_layers(hiddens, p_X_chain, autoregression, noisy = True): print 'odd layer update' update_odd_layers(hiddens, noisy) print print 'even layer update' update_even_layers(hiddens, p_X_chain, autoregression, noisy) ''' F PROP ''' #X = T.fmatrix() if state.act == 'sigmoid': print 'Using sigmoid activation' hidden_activation = T.nnet.sigmoid elif state.act == 'rectifier': print 'Using rectifier activation' hidden_activation = lambda x : T.maximum(cast32(0), x) elif state.act == 'tanh': hidden_activation = lambda x : T.tanh(x) ''' Corrupt X ''' X_corrupt = salt_and_pepper(X, state.input_salt_and_pepper) f_noise = theano.function(inputs = [X], outputs = salt_and_pepper(X, state.input_salt_and_pepper)) ''' Commented for now (unless we need more denoising stuff) ############# # Denoise some numbers : show number, noisy number, reconstructed number ############# import random as R R.seed(1) random_idx = numpy.array(R.sample(range(len(test_X.get_value())), 100)) numbers = test_X.get_value()[random_idx] noisy_numbers = f_noise(test_X.get_value()[random_idx]) # Recompile the graph without noise for reconstruction function hiddens_R = [X] p_X_chain_R = [] for w,b in zip(weights_list, bias_list[1:]): # init with zeros hiddens_R.append(T.zeros_like(T.dot(hiddens_R[-1], w))) # The layer update scheme for i in range(2 * N * K): update_layers(hiddens_R, p_X_chain_R, noisy=False, autoregression=state.autoregression) f_recon = theano.function(inputs = [X], outputs = p_X_chain_R[-1]) ''' ################################## # Sampling, round 2 motherf***** # ################################## # the input to the sampling function network_state_input = [X] + [T.fmatrix() for i in range(K)] 'first input will be a noisy number and zeros at the hidden layer, is this correc?' # "Output" state of the network (noisy) # initialized with input, then we apply updates #network_state_output = network_state_input # WTFFFF why is it not the same? f*****g python list = list not the same as list = list(list) ??? network_state_output = [X] + network_state_input[1:] visible_pX_chain = [] #for i in range(2 * N * K): # update_layers(network_state_output, visible_pX_chain, noisy=True, autoregression=False) # ONE update update_layers(network_state_output, visible_pX_chain, noisy=True, autoregression=False) # WHY IS THERE A WARNING???? # because the first odd layers are not used -> directly computed FROM THE EVEN layers f_sample2 = theano.function(inputs = network_state_input, outputs = network_state_output + visible_pX_chain, on_unused_input='warn') def sampling_wrapper(NSI): out = f_sample2(*NSI) NSO = out[:len(network_state_output)] vis_pX_chain = out[len(network_state_output):] return NSO, vis_pX_chain def sample_some_numbers(n_digits = 400): to_sample = time.time() # The network's initial state #init_vis = test_X.get_value()[:1] init_vis = test_X[:1] noisy_init_vis = f_noise(init_vis) network_state = [[noisy_init_vis] + [numpy.zeros((1,len(b.get_value())), dtype='float32') for b in bias_list[1:]]] visible_chain = [init_vis] noisy_h0_chain = [noisy_init_vis] for i in range(n_digits - 1): # feed the last state into the network, compute new state, and obtain visible units expectation chain net_state_out, vis_pX_chain = sampling_wrapper(network_state[-1]) # append to the visible chain visible_chain += vis_pX_chain # append state output to the network state chain network_state.append(net_state_out) noisy_h0_chain.append(net_state_out[0]) print 'Took ' + str(time.time() - to_sample) + ' to sample ' + str(n_digits) + ' digits' return numpy.vstack(visible_chain), numpy.vstack(noisy_h0_chain) def plot_samples(epoch_number): V, H0 = sample_some_numbers() img_samples = PIL.Image.fromarray(tile_raster_images(V, (root_N_input,root_N_input), (20,20))) fname = 'samples_epoch_'+str(epoch_number)+'.png' img_samples.save(fname) def save_params(n, params): fname = 'params_epoch_'+str(n)+'.ft' f = open(fname, 'w') for p in params: ft.write(f, p.get_value(borrow=True)) f.close() def plot_one_digit(digit): plot_one = PIL.Image.fromarray(tile_raster_images(digit, (root_N_input,root_N_input), (1,1))) fname = 'one_digit.png' plot_one.save(fname) os.system('eog one_digit.png') def inpainting(digit): # The network's initial state # NOISE INIT init_vis = cast32(numpy.random.uniform(size=digit.shape)) #noisy_init_vis = f_noise(init_vis) #noisy_init_vis = cast32(numpy.random.uniform(size=init_vis.shape)) # INDEXES FOR VISIBLE AND NOISY PART noise_idx = (numpy.arange(N_input) % root_N_input < (root_N_input/2)) fixed_idx = (numpy.arange(N_input) % root_N_input > (root_N_input/2)) # function to re-init the visible to the same noise # FUNCTION TO RESET HALF VISIBLE TO DIGIT def reset_vis(V): V[0][fixed_idx] = digit[0][fixed_idx] return V # INIT DIGIT : NOISE and RESET HALF TO DIGIT init_vis = reset_vis(init_vis) network_state = [[init_vis] + [numpy.zeros((1,len(b.get_value())), dtype='float32') for b in bias_list[1:]]] visible_chain = [init_vis] noisy_h0_chain = [init_vis] for i in range(49): # feed the last state into the network, compute new state, and obtain visible units expectation chain net_state_out, vis_pX_chain = sampling_wrapper(network_state[-1]) # reset half the digit net_state_out[0] = reset_vis(net_state_out[0]) vis_pX_chain[0] = reset_vis(vis_pX_chain[0]) # append to the visible chain visible_chain += vis_pX_chain # append state output to the network state chain network_state.append(net_state_out) noisy_h0_chain.append(net_state_out[0]) return numpy.vstack(visible_chain), numpy.vstack(noisy_h0_chain) #V_inpaint, H_inpaint = inpainting(test_X.get_value()[:1]) #plot_one = PIL.Image.fromarray(tile_raster_images(V_inpaint, (root_N_input,root_N_input), (1,50))) #fname = 'test.png' #plot_one.save(fname) #os.system('eog test.png') #get all digits, and do it a couple of times test_X = test_X.get_value() #test_Y = test_Y.get_value() numpy.random.seed(1) test_idx = numpy.arange(len(test_Y)) for Iter in range(10): numpy.random.shuffle(test_idx) test_X = test_X[test_idx] test_Y = test_Y[test_idx] digit_idx = [(test_Y==i).argmax() for i in range(10)] inpaint_list = [] for idx in digit_idx: DIGIT = test_X[idx:idx+1] V_inpaint, H_inpaint = inpainting(DIGIT) inpaint_list.append(V_inpaint) INPAINTING = numpy.vstack(inpaint_list) plot_inpainting = PIL.Image.fromarray(tile_raster_images(INPAINTING, (root_N_input,root_N_input), (10,50))) fname = 'inpainting_'+str(Iter)+'.png' plot_inpainting.save(fname) if False and __name__ == "__main__": os.system('eog inpainting.png') # PARZEN # Generating 10000 samples samples, _ = sample_some_numbers(n_digits=10000) Mean, Std = main(state.sigma_parzen, samples, test_X) #plot_samples(999) #sample_numbers(counter, []) if __name__ == '__main__': return Mean, Std #import ipdb; ipdb.set_trace() return channel.COMPLETE
def __init__(self, inputs_hook=None, params_hook=None, outdir='outputs/conv2d', input_size=None, filter_shape=None, strides=(1, 1), border_mode='valid', weights_init='uniform', weights_interval='montreal', weights_mean=0, weights_std=5e-3, bias_init=0, activation='rectifier', convolution='conv2d', mrg=RNG_MRG.MRG_RandomStreams(1)): """ Initialize a 2-dimensional convolutional layer. Parameters ---------- inputs_hook : Tuple of (shape, variable) Routing information for the model to accept inputs from elsewhere. This is used for linking different models together. For now, it needs to include the shape information. params_hook : List(theano shared variable) A list of model parameters (shared theano variables) that you should use when constructing this model (instead of initializing your own shared variables). outdir : str The directory you want outputs (parameters, images, etc.) to save to. If None, nothing will be saved. input_size : tuple Shape of the incoming data: (batch_size, num_channels, input_height, input_width). If input_size is None, it can be inferred. However, border_mode can't be 'same'. filter_shape : tuple (num_filters, num_channels, filter_height, filter_width). This is also the shape of the weights matrix. stride : int The distance between the receptive field centers of neighboring units. This is the 'stride' of the convolution operation. border_mode : str, one of 'valid', 'full', 'same' A string indicating the convolution border mode. If 'valid', the convolution is only computed where the input and the filter fully overlap. If 'full', the convolution is computed wherever the input and the filter overlap by at least one position. If 'same', the convolution is computed wherever the input and the filter overlap by at least half the filter size, when the filter size is odd. In practice, the input is zero-padded with half the filter size at the beginning and half at the end (or one less than half in the case of an even filter size). This results in an output length that is the same as the input length (for both odd and even filter sizes). weights_init : str Determines the method for initializing model weights. See opendeep.utils.nnet for options. weights_interval : str or float If Uniform `weights_init`, the +- interval to use. See opendeep.utils.nnet for options. weights_mean : float If Gaussian `weights_init`, the mean value to use. weights_std : float If Gaussian `weights_init`, the standard deviation to use. bias_init : float The initial value to use for the bias parameter. Most often, the default of 0.0 is preferred. activation : str or Callable The activation function to apply to the layer. See opendeep.utils.activation for options. convolution : str or Callable The 2-dimensional convolution implementation to use. The default of 'conv2d' is normally fine because it uses theano's tensor.nnet.conv.conv2d, which cherry-picks the best implementation with a meta-optimizer if you set the theano configuration flag 'optimizer_including=conv_meta'. Otherwise, you could pass a callable function, such as cudnn or cuda-convnet if you don't want to use the meta-optimizer. mrg : random A random number generator that is used when adding noise. I recommend using Theano's sandbox.rng_mrg.MRG_RandomStreams. Notes ----- Theano's default convolution function (`theano.tensor.nnet.conv.conv2d`) does not support the 'same' border mode by default. This layer emulates it by performing a 'full' convolution and then cropping the result, which may negatively affect performance. """ super(Conv2D, self).__init__( ** {arg: val for (arg, val) in locals().items() if arg is not 'self'}) ################## # specifications # ################## # grab info from the inputs_hook, or from parameters # expect input to be in the form (B, C, 0, 1) (batch, channel, rows, cols) # inputs_hook is a tuple of (Shape, Input) if self.inputs_hook: # make sure inputs_hook is a tuple assert len( self.inputs_hook ) == 2, "expecting inputs_hook to be tuple of (shape, input)" self.input = inputs_hook[1] else: # make the input a symbolic matrix self.input = T.ftensor4('X') # activation function! activation_func = get_activation_function(activation) # convolution function! if convolution == 'conv2d': # using the theano flag optimizer_including=conv_meta will let this conv function optimize itself. convolution_func = T.nnet.conv2d else: assert callable( convolution ), "Input convolution was not 'conv2d' and was not Callable." convolution_func = convolution # filter shape should be in the form (num_filters, num_channels, filter_size[0], filter_size[1]) num_filters = filter_shape[0] filter_size = filter_shape[2:3] ################################################ # Params - make sure to deal with params_hook! # ################################################ if self.params_hook: # make sure the params_hook has W and b assert len(self.params_hook) == 2, \ "Expected 2 params (W and b) for Conv2D, found {0!s}!".format(len(self.params_hook)) W, b = self.params_hook else: W = get_weights( weights_init=weights_init, shape=filter_shape, name="W", rng=mrg, # if gaussian mean=weights_mean, std=weights_std, # if uniform interval=weights_interval) b = get_bias(shape=(num_filters, ), name="b", init_values=bias_init) # Finally have the two parameters! self.params = [W, b] ######################## # Computational Graph! # ######################## if border_mode in ['valid', 'full']: conved = convolution_func(self.input, W, subsample=strides, image_shape=self.input_size, filter_shape=filter_shape, border_mode=border_mode) elif border_mode == 'same': assert self.input_size is not None, "input_size has to be specified for border_mode 'same'!" conved = convolution_func(self.input, W, subsample=strides, image_shape=self.input_size, filter_shape=filter_shape, border_mode='full') shift_x = (filter_size[0] - 1) // 2 shift_y = (filter_size[1] - 1) // 2 conved = conved[:, :, shift_x:self.input_size[2] + shift_x, shift_y:self.input_size[3] + shift_y] else: raise RuntimeError("Invalid border mode: '%s'" % border_mode) self.output = activation_func(conved + b.dimshuffle('x', 0, 'x', 'x'))
def __init__(self, inputs=None, outputs=None, params=None, outdir='outputs/softmax', weights_init='uniform', weights_mean=0, weights_std=5e-3, weights_interval='glorot', bias_init=0.0, out_as_probs=True, mrg=RNG_MRG.MRG_RandomStreams(1), **kwargs): """ Initialize a Softmax layer. Parameters ---------- inputs : List of [tuple(shape, `Theano.TensorType`)] The dimensionality of the inputs for this model, and the routing information for the model to accept inputs from elsewhere. `shape` will be a monad tuple representing known sizes for each dimension in the `Theano.TensorType`. The length of `shape` should be equal to number of dimensions in `Theano.TensorType`, where the shape element is an integer representing the size for its dimension, or None if the shape isn't known. For example, if you have a matrix with unknown batch size but fixed feature size of 784, `shape` would be: (None, 784). The full form of `inputs` would be: [((None, 784), <TensorType(float32, matrix)>)]. outputs : int The dimensionality of the output for this model. params : Dict(string_name: theano SharedVariable), optional A dictionary of model parameters (shared theano variables) that you should use when constructing this model (instead of initializing your own shared variables). This parameter is useful when you want to have two versions of the model that use the same parameters - such as siamese networks or pretraining some weights. outdir : str The directory you want outputs (parameters, images, etc.) to save to. If None, nothing will be saved. weights_init : str Determines the method for initializing input -> output weights. See opendeep.utils.nnet for options. weights_interval : str or float If Uniform `weights_init`, the +- interval to use. See opendeep.utils.nnet for options. weights_mean : float If Gaussian `weights_init`, the mean value to use. weights_std : float If Gaussian `weights_init`, the standard deviation to use. bias_init : float The initial value to use for the bias parameter. Most often, the default of 0.0 is preferred. out_as_probs : bool Whether to output the argmax prediction (the predicted class of the model), or the probability distribution over all classes. True means output the distribution of size `output_size` and False means output a single number index for the class that had the highest probability. mrg : random A random number generator that is used when adding noise. I recommend using Theano's sandbox.rng_mrg.MRG_RandomStreams. """ # init the fully connected generic layer with a softmax activation function super(Softmax, self).__init__(inputs=inputs, outputs=outputs, params=params, outdir=outdir, activation='softmax', weights_init=weights_init, weights_mean=weights_mean, weights_std=weights_std, weights_interval=weights_interval, bias_init=bias_init, out_as_probs=out_as_probs, mrg=mrg, **kwargs) if self.inputs is None: return # the outputs of the layer are the probabilities of being in a given class self.p_y_given_x = super(Softmax, self).get_outputs() self.y_pred = argmax(self.p_y_given_x, axis=1) if out_as_probs: self.output = self.p_y_given_x else: self.output = self.y_pred self.out_as_probs = out_as_probs
def __init__(self, inputs_hook=None, hiddens_hook=None, params_hook=None, outdir='outputs/gsn/', input_size=None, hidden_size=1000, layers=2, walkbacks=4, visible_activation='sigmoid', hidden_activation='tanh', input_sampling=True, mrg=RNG_MRG.MRG_RandomStreams(1), tied_weights=True, weights_init='uniform', weights_interval='montreal', weights_mean=0, weights_std=5e-3, bias_init=0.0, cost_function='binary_crossentropy', cost_args=None, add_noise=True, noiseless_h1=True, hidden_noise='gaussian', hidden_noise_level=2, input_noise='salt_and_pepper', input_noise_level=0.4, noise_decay='exponential', noise_annealing=1, image_width=None, image_height=None, **kwargs): """ Initialize a GSN. Parameters ---------- inputs_hook : Tuple of (shape, variable) Routing information for the model to accept inputs from elsewhere. This is used for linking different models together (e.g. setting the Softmax model's input layer to the DAE's hidden layer gives a newly supervised classification model). For now, it needs to include the shape information (normally the dimensionality of the input i.e. n_in). hiddens_hook : Tuple of (shape, variable) Routing information for the model to accept its hidden representation from elsewhere. This is used for linking different models together (e.g. setting the DAE model's hidden layers to the RNN's output layer gives a generative recurrent model.) For now, it needs to include the shape information (normally the dimensionality of the hiddens i.e. n_hidden). params_hook : List(theano shared variable) A list of model parameters (shared theano variables) that you should use when constructing this model (instead of initializing your own shared variables). This parameter is useful when you want to have two versions of the model that use the same parameters - such as a training model with dropout applied to layers and one without for testing, where the parameters are shared between the two. outdir : str The directory you want outputs (parameters, images, etc.) to save to. If None, nothing will be saved. input_size : int The size (dimensionality) of the input to the DAE. If shape is provided in `inputs_hook`, this is optional. The :class:`Model` requires an `output_size`, which gets set to this value because the DAE is an unsupervised model. The output is a reconstruction of the input. hidden_size : int The size (dimensionality) of the hidden layer for the DAE. Generally, you want it to be larger than `input_size`, which is known as *overcomplete*. visible_activation : str or callable The nonlinear (or linear) visible activation to perform after the dot product from hiddens -> visible layer. This activation function should be appropriate for the input unit types, i.e. 'sigmoid' for binary inputs. See opendeep.utils.activation for a list of available activation functions. Alternatively, you can pass your own function to be used as long as it is callable. hidden_activation : str or callable The nonlinear (or linear) hidden activation to perform after the dot product from visible -> hiddens layer. See opendeep.utils.activation for a list of available activation functions. Alternatively, you can pass your own function to be used as long as it is callable. layers : int The number of hidden layers to use. walkbacks : int The number of walkbacks to perform (the variable K in Bengio's paper above). A walkback is a Gibbs sample from the DAE, which means the model generates inputs in sequence, where each generated input is compared to the original input to create the reconstruction cost for training. For running the model, the very last generated input in the Gibbs chain is used as the output. input_sampling : bool During walkbacks, whether to sample from the generated input to create a new starting point for the next walkback (next step in the Gibbs chain). This generally makes walkbacks more effective by making the process more stochastic - more likely to find spurious modes in the model's representation. mrg : random A random number generator that is used when adding noise into the network and for sampling from the input. I recommend using Theano's sandbox.rng_mrg.MRG_RandomStreams. tied_weights : bool DAE has two weight matrices - W from input -> hiddens and V from hiddens -> input. This boolean determines if V = W.T, which 'ties' V to W and reduces the number of parameters necessary during training. weights_init : str Determines the method for initializing model weights. See opendeep.utils.nnet for options. weights_interval : str or float If Uniform `weights_init`, the +- interval to use. See opendeep.utils.nnet for options. weights_mean : float If Gaussian `weights_init`, the mean value to use. weights_std : float If Gaussian `weights_init`, the standard deviation to use. bias_init : float The initial value to use for the bias parameter. Most often, the default of 0.0 is preferred. cost_function : str or callable The function to use when calculating the reconstruction cost of the model. This should be appropriate for the type of input, i.e. use 'binary_crossentropy' for binary inputs, or 'mse' for real-valued inputs. See opendeep.utils.cost for options. You can also specify your own function, which needs to be callable. cost_args : dict Any additional named keyword arguments to pass to the specified `cost_function`. add_noise : bool Whether to add noise (corrupt) the input before passing it through the computation graph during training. This should most likely be set to the default of True, because this is a *denoising* autoencoder after all. noiseless_h1 : bool Whether to not add noise (corrupt) the hidden layer during computation. hidden_noise : str What type of noise to use for corrupting the hidden layer (if not `noiseless_h1`). See opendeep.utils.noise for options. This should be appropriate for the hidden unit activation, i.e. Gaussian for tanh or other real-valued activations, etc. hidden_noise_level : float The amount of noise to use for the noise function specified by `hidden_noise`. This could be the standard deviation for gaussian noise, the interval for uniform noise, the dropout amount, etc. input_noise : str What type of noise to use for corrupting the input before computation (if `add_noise`). See opendeep.utils.noise for options. This should be appropriate for the input units, i.e. salt-and-pepper for binary units, etc. input_noise_level : float The amount of noise used to corrupt the input. This could be the masking probability for salt-and-pepper, standard deviation for Gaussian, interval for Uniform, etc. noise_decay : str or False Whether to use `input_noise` scheduling (decay `input_noise_level` during the course of training), and if so, the string input specifies what type of decay to use. See opendeep.utils.decay for options. Noise decay (known as noise scheduling) effectively helps the DAE learn larger variance features first, and then smaller ones later (almost as a kind of curriculum learning). May help it converge faster. noise_annealing : float The amount to reduce the `input_noise_level` after each training epoch based on the decay function specified in `noise_decay`. image_width : int If the input should be represented as an image, the width of the input image. If not specified, it will be close to the square factor of the `input_size`. image_height : int If the input should be represented as an image, the height of the input image. If not specified, it will be close to the square factor of the `input_size`. """ # init Model to combine the defaults and config dictionaries with the initial parameters. initial_parameters = locals().copy() initial_parameters.pop('self') super(GSN, self).__init__(**initial_parameters) # when the input should be thought of as an image, either use the specified width and height, # or try to make as square as possible. if image_height is None and image_width is None: (_h, _w) = closest_to_square_factors(self.input_size) self.image_width = _w self.image_height = _h else: self.image_height = image_height self.image_width = image_width ############################ # Theano variables and RNG # ############################ if self.inputs_hook is None: self.X = T.matrix('X') else: # inputs_hook is a (shape, input) tuple self.X = self.inputs_hook[1] ########################## # Network specifications # ########################## # generally, walkbacks should be at least 2*layers if layers % 2 == 0: if walkbacks < 2 * layers: log.warning( 'Not enough walkbacks for the layers! Layers is %s and walkbacks is %s. ' 'Generaly want 2X walkbacks to layers', str(layers), str(walkbacks)) else: if walkbacks < 2 * layers - 1: log.warning( 'Not enough walkbacks for the layers! Layers is %s and walkbacks is %s. ' 'Generaly want 2X walkbacks to layers', str(layers), str(walkbacks)) self.add_noise = add_noise self.noise_annealing = as_floatX( noise_annealing) # noise schedule parameter self.hidden_noise_level = sharedX(hidden_noise_level, dtype=theano.config.floatX) self.hidden_noise = get_noise(name=hidden_noise, noise_level=self.hidden_noise_level, mrg=mrg) self.input_noise_level = sharedX(input_noise_level, dtype=theano.config.floatX) self.input_noise = get_noise(name=input_noise, noise_level=self.input_noise_level, mrg=mrg) self.walkbacks = walkbacks self.tied_weights = tied_weights self.layers = layers self.noiseless_h1 = noiseless_h1 self.input_sampling = input_sampling self.noise_decay = noise_decay # if there was a hiddens_hook, unpack the hidden layers in the tensor if self.hiddens_hook is not None: hidden_size = self.hiddens_hook[0] self.hiddens_flag = True else: self.hiddens_flag = False # determine the sizes of each layer in a list. # layer sizes, from h0 to hK (h0 is the visible layer) hidden_size = list(raise_to_list(hidden_size)) if len(hidden_size) == 1: self.layer_sizes = [self.input_size] + hidden_size * self.layers else: assert len(hidden_size) == self.layers, "Hiddens sizes and number of hidden layers mismatch." + \ "Hiddens %d and layers %d" % (len(hidden_size), self.layers) self.layer_sizes = [self.input_size] + hidden_size if self.hiddens_hook is not None: self.hiddens = self.unpack_hiddens(self.hiddens_hook[1]) ######################### # Activation functions! # ######################### # hidden unit activation self.hidden_activation = get_activation_function(hidden_activation) # Visible layer activation self.visible_activation = get_activation_function(visible_activation) # make sure the sampling functions are appropriate for the activation functions. if is_binary(self.visible_activation): self.visible_sampling = mrg.binomial else: # TODO: implement non-binary activation log.error("Non-binary visible activation not supported yet!") raise NotImplementedError( "Non-binary visible activation not supported yet!") # Cost function self.cost_function = get_cost_function(cost_function) self.cost_args = cost_args or dict() ############### # Parameters! # ############### # make sure to deal with params_hook! if self.params_hook is not None: # if tied weights, expect layers*2 + 1 params if self.tied_weights: assert len(self.params_hook) == 2*layers + 1, \ "Tied weights: expected {0!s} params, found {1!s}!".format(2*layers+1, len(self.params_hook)) self.weights_list = self.params_hook[:layers] self.bias_list = self.params_hook[layers:] # if untied weights, expect layers*3 + 1 params else: assert len(self.params_hook) == 3*layers + 1, \ "Untied weights: expected {0!s} params, found {1!s}!".format(3*layers+1, len(self.params_hook)) self.weights_list = self.params_hook[:2 * layers] self.bias_list = self.params_hook[2 * layers:] # otherwise, construct our params else: # initialize a list of weights and biases based on layer_sizes for the GSN self.weights_list = [ get_weights( weights_init=weights_init, shape=(self.layer_sizes[i], self.layer_sizes[i + 1]), name="W_{0!s}_{1!s}".format(i, i + 1), rng=mrg, # if gaussian mean=weights_mean, std=weights_std, # if uniform interval=weights_interval) for i in range(layers) ] # add more weights if we aren't tying weights between layers (need to add for higher-lower layers now) if not tied_weights: self.weights_list.extend([ get_weights( weights_init=weights_init, shape=(self.layer_sizes[i + 1], self.layer_sizes[i]), name="W_{0!s}_{1!s}".format(i + 1, i), rng=mrg, # if gaussian mean=weights_mean, std=weights_std, # if uniform interval=weights_interval) for i in reversed(range(layers)) ]) # initialize each layer bias to 0's. self.bias_list = [ get_bias(shape=(self.layer_sizes[i], ), name='b_' + str(i), init_values=bias_init) for i in range(layers + 1) ] # build the params of the model into a list self.params = self.weights_list + self.bias_list log.debug("gsn params: %s", str(self.params)) # using the properties, build the computational graph self.cost, self.monitors, self.output, self.hiddens = self.build_computation_graph( )
The programs and documents are distributed without any warranty, express or implied. As the programs were written for research purposes only, they have not been tested to the degree that would be advisable in any important application. All use of these programs is entirely at the user's own risk.''' '''Demo of Generating images with recurrent adversarial networks. For more information, see: http://arxiv.org/abs/1602.05110 ''' import os, sys, gzip, time, timeit import theano import numpy as np import scipy as sp import theano.sandbox.rng_mrg as RNG_MRG rng = np.random.RandomState() MRG = RNG_MRG.MRG_RandomStreams(rng.randint(2**30)) import matplotlib matplotlib.use('Agg') import matplotlib.pyplot as plt from optimize_gan import * from gran import * from utils import * from util_cifar10 import * #datapath='/data/lisa/data/cifar10/cifar-10-batches-py/' #datapath='/eecs/research/asr/chris/DG_project/dataset/cifar-10-batches-py/' datapath = '/home/daniel/Documents/data/cifar10/cifar-10-batches-py/' ''' Battle between two models M1 and M2'''
def run(rng_seed, ltype, mtype, load_path, load_epoch, verbose=False, ckernr=None, cri_ckern=None): assert ckernr != None np_rng = np.random.RandomState(rng_seed) # only for shuflling files import base.subnets.layers.utils as utils import base.subnets.layers.someconfigs as someconfigs someconfigs.backend = 'gpuarray' utils.rng = np.random.RandomState( rng_seed) # for init network and corrupt images rng = utils.rng # ltype -> GAN LSGAN WGAN # JS 0.4+-asdf # LS # WA # MMD # IS ### MODEL PARAMS ### MODEL PARAMS # ltype = sys.argv[3] # mtype = 'js' # print 'ltype: ' + ltype # print 'mtype: ' + mtype mmdF = False nndF = False # CONV (DISC) conv_num_hid = 100 num_channel = 3 #Fixed num_class = 1 #Fixed D = 64 * 64 * 3 kern = int(ckernr.split('_')[0]) ### OPT PARAMS batch_sz = 100 momentum = 0.0 #Not Used lam = 0.0 epsilon_dis = 0.0002 epsilon_gen = 0.0001 # if mtype =='js' : # epsilon_dis = 0.0002 # epsilon_gen = 0.0001 # K=5 #FIXED # J=1 # elif mtype == 'ls': # epsilon_dis = 0.0002 # epsilon_gen = 0.0001 # K=5 #FIXED # J=1 # else: # epsilon_dis = 0.0002 # epsilon_gen = 0.0001 # K=2 #FIXED # J=1 # ganI (GEN) filter_sz = 4 #FIXED nkerns = [8, 4, 2, 1, 3] ckern = int(ckernr.split('_')[-1]) #20 num_hid1 = nkerns[0] * ckern * filter_sz * filter_sz #Fixed num_steps = 3 # time steps num_z = 100 lam1 = 0.000001 ### TRAIN PARAMS num_epoch = 2 epoch_start = 0 #Fixed contF = True #Fixed num_hids = [num_hid1] input_width = 64 input_height = 64 input_depth = 3 N = 1000 Nv = N Nt = N #Dummy variable ### SAVE PARAM model_param_save = 'num_hid%d.batch%d.eps_dis%g.eps_gen%g.num_z%d.num_epoch%g.lam%g.ts%d.data.100_CONV_lsun' % ( conv_num_hid, batch_sz, epsilon_dis, epsilon_gen, num_z, num_epoch, lam1, num_steps) # device=sys.argv[1] import os os.environ['RNG_SEED'] = str(rng_seed) os.environ['LOAD_PATH'] = load_path os.environ['LOAD_EPOCH'] = str(load_epoch) os.environ['LTYPE'] = ltype # os.environ['MTYPE'] = mtype try: a = os.environ['CRI_KERN'] except: if cri_ckern != None: os.environ['CRI_KERN'] = cri_ckern else: raise RuntimeError('cri_kern not provided') import theano import theano.sandbox.rng_mrg as RNG_MRG rng = np.random.RandomState(int(os.environ['RNG_SEED'])) MRG = RNG_MRG.MRG_RandomStreams(rng.randint(2**30)) import pwd username = pwd.getpwuid(os.geteuid()).pw_name # if username=='djkim117': # save_path = '/work/djkim117/params/gap/lsun/' # datapath = '/work/djkim117/lsun/church/preprocessed_toy_100/' # elif username=='imj': # datapath = '/work/djkim117/lsun/church/preprocessed_toy_100/' # save_path = '/work/imj/gap/dcgans/lsun/dcgan4_100swap_30epoch_noise' if username == 'mahe6562': datapath = '/scratch/g/gwtaylor/mahe6562/data/lsun/bedroom/preprocessed_toy_100/' #--- # store the filenames into a list. train_filenames = sorted( glob.glob(datapath + 'train_hkl_b100_b_100/*' + '.hkl')) #4.shuffle train data order for each worker indices = np_rng.permutation(len(train_filenames)) train_filenames = np.array(train_filenames)[indices].tolist() #--- valid_filenames = sorted( glob.glob(datapath + 'val_hkl_b100_b_100/*' + '.hkl')) test_filenames = sorted( glob.glob(datapath + 'test_hkl_b100_b_100/*' + '.hkl')) num_hids = [num_hid1] train_params = [ num_epoch, epoch_start, contF, train_filenames, valid_filenames, test_filenames ] opt_params = [ batch_sz, epsilon_gen, epsilon_dis, momentum, num_epoch, N, Nv, Nt, lam1 ] ganI_params = [ batch_sz, D, num_hids, rng, num_z, nkerns, ckern, num_channel, num_steps ] conv_params = [conv_num_hid, D, num_class, batch_sz, num_channel, kern] book_keeping = main(opt_params, ganI_params, train_params, conv_params) te_score_ls, te_score_iw, mmd_te = main(opt_params, ganI_params, train_params, conv_params) return te_score_ls, te_score_iw, mmd_te #, is_sam