from thinc.api import add, layerize, chain, clone, concatenate, with_flatten from thinc.neural import Model, Maxout, Softmax, Affine from thinc.neural._classes.hash_embed import HashEmbed from thinc.neural.ops import NumpyOps, CupyOps from thinc.neural._classes.convolution import ExtractWindow from thinc.neural._classes.static_vectors import StaticVectors from thinc.neural._classes.batchnorm import BatchNorm from thinc.neural._classes.resnet import Residual from thinc import describe from thinc.describe import Dimension, Synapses, Biases, Gradient from thinc.neural._classes.affine import _set_dimensions_if_needed from .attrs import ID, LOWER, PREFIX, SUFFIX, SHAPE, TAG, DEP import numpy @describe.on_data(_set_dimensions_if_needed) @describe.attributes( nI=Dimension("Input size"), nF=Dimension("Number of features"), nO=Dimension("Output size"), W=Synapses("Weights matrix", lambda obj: (obj.nO, obj.nF, obj.nI), lambda W, ops: ops.xavier_uniform_init(W)), b=Biases("Bias vector", lambda obj: (obj.nO,)), d_W=Gradient("W"), d_b=Gradient("b") ) class PrecomputableAffine(Model): def __init__(self, nO=None, nI=None, nF=None, **kwargs): Model.__init__(self, **kwargs) self.nO = nO self.nI = nI self.nF = nF def begin_update(self, X, drop=0.): # X: (b, i) # Xf: (b, f, i) # dY: (b, o) # dYf: (b, f, o) #Yf = numpy.einsum('bi,ofi->bfo', X, self.W) Yf = self.ops.xp.tensordot( X, self.W, axes=[[1], [2]]).transpose((0, 2, 1)) Yf += self.b def backward(dY_ids, sgd=None): dY, ids = dY_ids Xf = X[ids] #dW = numpy.einsum('bo,bfi->ofi', dY, Xf) dW = self.ops.xp.tensordot(dY, Xf, axes=[[0], [0]]) db = dY.sum(axis=0) #dXf = numpy.einsum('bo,ofi->bfi', dY, self.W) dXf = self.ops.xp.tensordot(dY, self.W, axes=[[1], [0]]) self.d_W += dW self.d_b += db if sgd is not None: sgd(self._mem.weights, self._mem.gradient, key=self.id) return dXf return Yf, backward @describe.on_data(_set_dimensions_if_needed) @describe.attributes( nI=Dimension("Input size"), nF=Dimension("Number of features"), nP=Dimension("Number of pieces"), nO=Dimension("Output size"), W=Synapses("Weights matrix", lambda obj: (obj.nF, obj.nO, obj.nP, obj.nI), lambda W, ops: ops.xavier_uniform_init(W)), b=Biases("Bias vector", lambda obj: (obj.nO, obj.nP)), d_W=Gradient("W"), d_b=Gradient("b") ) class PrecomputableMaxouts(Model): def __init__(self, nO=None, nI=None, nF=None, pieces=3, **kwargs): Model.__init__(self, **kwargs) self.nO = nO self.nP = pieces self.nI = nI self.nF = nF def begin_update(self, X, drop=0.): # X: (b, i) # Yfp: (b, f, o, p) # Xf: (f, b, i) # dYp: (b, o, p) # W: (f, o, p, i) # b: (o, p) # bi,opfi->bfop # bop,fopi->bfi # bop,fbi->opfi : fopi tensordot = self.ops.xp.tensordot ascontiguous = self.ops.xp.ascontiguousarray Yfp = tensordot(X, self.W, axes=[[1], [3]]) Yfp += self.b def backward(dYp_ids, sgd=None): dYp, ids = dYp_ids Xf = X[ids] dXf = tensordot(dYp, self.W, axes=[[1, 2], [1,2]]) dW = tensordot(dYp, Xf, axes=[[0], [0]]) self.d_W += dW.transpose((2, 0, 1, 3)) self.d_b += dYp.sum(axis=0) if sgd is not None: sgd(self._mem.weights, self._mem.gradient, key=self.id) return dXf return Yfp, backward def get_col(idx): def forward(X, drop=0.): if isinstance(X, numpy.ndarray): ops = NumpyOps() else: ops = CupyOps() assert len(X.shape) <= 3 output = ops.xp.ascontiguousarray(X[:, idx]) def backward(y, sgd=None): dX = ops.allocate(X.shape) dX[:, idx] += y return dX return output, backward return layerize(forward) def zero_init(model): def _hook(self, X, y=None): self.W.fill(0) model.on_data_hooks.append(_hook) return model def doc2feats(cols=None): cols = [ID, LOWER, PREFIX, SUFFIX, SHAPE] def forward(docs, drop=0.): feats = [doc.to_array(cols) for doc in docs] feats = [model.ops.asarray(f, dtype='uint64') for f in feats] return feats, None model = layerize(forward) model.cols = cols return model def print_shape(prefix): def forward(X, drop=0.): return X, lambda dX, **kwargs: dX return layerize(forward) @layerize def get_token_vectors(tokens_attrs_vectors, drop=0.): ops = Model.ops tokens, attrs, vectors = tokens_attrs_vectors def backward(d_output, sgd=None): return (tokens, d_output) return vectors, backward @layerize def flatten(seqs, drop=0.): if isinstance(seqs[0], numpy.ndarray): ops = NumpyOps() else: ops = CupyOps() lengths = [len(seq) for seq in seqs] def finish_update(d_X, sgd=None): return ops.unflatten(d_X, lengths) X = ops.xp.vstack(seqs) return X, finish_update