from __future__ import unicode_literals from thinc.api import chain, layerize, clone, concatenate, with_flatten, uniqued from thinc.api import noop, with_square_sequences from thinc.v2v import Maxout from thinc.i2v import HashEmbed, StaticVectors from thinc.t2t import ExtractWindow from thinc.misc import Residual, LayerNorm, FeatureExtracter from ..util import make_layer, register_architecture from ._wire import concatenate_lists @register_architecture("spacy.Tok2Vec.v1") def Tok2Vec(config): doc2feats = make_layer(config["@doc2feats"]) embed = make_layer(config["@embed"]) encode = make_layer(config["@encode"]) depth = config["@encode"]["config"]["depth"] tok2vec = chain(doc2feats, with_flatten(chain(embed, encode), pad=depth)) tok2vec.cfg = config tok2vec.nO = encode.nO tok2vec.embed = embed tok2vec.encode = encode return tok2vec @register_architecture("spacy.Doc2Feats.v1") def Doc2Feats(config): columns = config["columns"] return FeatureExtracter(columns) @register_architecture("spacy.MultiHashEmbed.v1") def MultiHashEmbed(config): cols = config["columns"] width = config["width"] rows = config["rows"] tables = [HashEmbed(width, rows, column=cols.index("NORM"), name="embed_norm")] if config["use_subwords"]: for feature in ["PREFIX", "SUFFIX", "SHAPE"]: tables.append( HashEmbed( width, rows // 2, column=cols.index(feature), name="embed_%s" % feature.lower(), ) ) if config.get("@pretrained_vectors"): tables.append(make_layer(config["@pretrained_vectors"])) mix = make_layer(config["@mix"]) # This is a pretty ugly hack. Not sure what the best solution should be. mix._layers[0].nI = sum(table.nO for table in tables) layer = uniqued(chain(concatenate(*tables), mix), column=cols.index("ORTH")) layer.cfg = config return layer @register_architecture("spacy.CharacterEmbed.v1") def CharacterEmbed(config): width = config["width"] chars = config["chars"] chr_embed = CharacterEmbed(nM=width, nC=chars) other_tables = make_layer(config["@embed_features"]) mix = make_layer(config["@mix"]) model = chain(concatenate_lists(chr_embed, other_tables), mix) model.cfg = config return model @register_architecture("spacy.MaxoutWindowEncoder.v1") def MaxoutWindowEncoder(config): nO = config["width"] nW = config["window_size"] nP = config["pieces"] depth = config["depth"] cnn = chain( ExtractWindow(nW=nW), LayerNorm(Maxout(nO, nO * ((nW * 2) + 1), pieces=nP)) ) model = clone(Residual(cnn), depth) model.nO = nO return model @register_architecture("spacy.PretrainedVectors.v1") def PretrainedVectors(config): return StaticVectors(config["vectors_name"], config["width"], config["column"]) @register_architecture("spacy.TorchBiLSTMEncoder.v1") def TorchBiLSTMEncoder(config): import torch.nn from thinc.extra.wrappers import PyTorchWrapperRNN width = config["width"] depth = config["depth"] if depth == 0: return layerize(noop()) return with_square_sequences( PyTorchWrapperRNN(torch.nn.LSTM(width, width // 2, depth, bidirectional=True)) ) _EXAMPLE_CONFIG = { "@doc2feats": { "arch": "Doc2Feats", "config": {"columns": ["ID", "NORM", "PREFIX", "SUFFIX", "SHAPE", "ORTH"]}, }, "@embed": { "arch": "spacy.MultiHashEmbed.v1", "config": { "width": 96, "rows": 2000, "columns": ["ID", "NORM", "PREFIX", "SUFFIX", "SHAPE", "ORTH"], "use_subwords": True, "@pretrained_vectors": { "arch": "TransformedStaticVectors", "config": { "vectors_name": "en_vectors_web_lg.vectors", "width": 96, "column": 0, }, }, "@mix": { "arch": "LayerNormalizedMaxout", "config": {"width": 96, "pieces": 3}, }, }, }, "@encode": { "arch": "MaxoutWindowEncode", "config": {"width": 96, "window_size": 1, "depth": 4, "pieces": 3}, }, }