# coding: utf8 from __future__ import unicode_literals, print_function import os import pkg_resources import importlib import re from pathlib import Path import random from collections import OrderedDict from thinc.neural._classes.model import Model from thinc.neural.ops import NumpyOps import functools import itertools import numpy.random import srsly from jsonschema import Draft4Validator try: import cupy.random except ImportError: cupy = None from .symbols import ORTH from .compat import cupy, CudaStream, path2str, basestring_, unicode_ from .compat import import_file from .errors import Errors LANGUAGES = {} _data_path = Path(__file__).parent / "data" _PRINT_ENV = False def set_env_log(value): global _PRINT_ENV _PRINT_ENV = value def get_lang_class(lang): """Import and load a Language class. lang (unicode): Two-letter language code, e.g. 'en'. RETURNS (Language): Language class. """ global LANGUAGES # Check if an entry point is exposed for the language code entry_point = get_entry_point("spacy_languages", lang) if entry_point is not None: LANGUAGES[lang] = entry_point return entry_point if lang not in LANGUAGES: try: module = importlib.import_module(".lang.%s" % lang, "spacy") except ImportError: raise ImportError(Errors.E048.format(lang=lang)) LANGUAGES[lang] = getattr(module, module.__all__[0]) return LANGUAGES[lang] def set_lang_class(name, cls): """Set a custom Language class name that can be loaded via get_lang_class. name (unicode): Name of Language class. cls (Language): Language class. """ global LANGUAGES LANGUAGES[name] = cls def get_data_path(require_exists=True): """Get path to spaCy data directory. require_exists (bool): Only return path if it exists, otherwise None. RETURNS (Path or None): Data path or None. """ if not require_exists: return _data_path else: return _data_path if _data_path.exists() else None def set_data_path(path): """Set path to spaCy data directory. path (unicode or Path): Path to new data directory. """ global _data_path _data_path = ensure_path(path) def ensure_path(path): """Ensure string is converted to a Path. path: Anything. If string, it's converted to Path. RETURNS: Path or original argument. """ if isinstance(path, basestring_): return Path(path) else: return path def load_model(name, **overrides): """Load a model from a shortcut link, package or data path. name (unicode): Package name, shortcut link or model path. **overrides: Specific overrides, like pipeline components to disable. RETURNS (Language): `Language` class with the loaded model. """ data_path = get_data_path() if not data_path or not data_path.exists(): raise IOError(Errors.E049.format(path=path2str(data_path))) if isinstance(name, basestring_): # in data dir / shortcut if name in set([d.name for d in data_path.iterdir()]): return load_model_from_link(name, **overrides) if is_package(name): # installed as package return load_model_from_package(name, **overrides) if Path(name).exists(): # path to model data directory return load_model_from_path(Path(name), **overrides) elif hasattr(name, "exists"): # Path or Path-like to model data return load_model_from_path(name, **overrides) raise IOError(Errors.E050.format(name=name)) def load_model_from_link(name, **overrides): """Load a model from a shortcut link, or directory in spaCy data path.""" path = get_data_path() / name / "__init__.py" try: cls = import_file(name, path) except AttributeError: raise IOError(Errors.E051.format(name=name)) return cls.load(**overrides) def load_model_from_package(name, **overrides): """Load a model from an installed package.""" cls = importlib.import_module(name) return cls.load(**overrides) def load_model_from_path(model_path, meta=False, **overrides): """Load a model from a data directory path. Creates Language class with pipeline from meta.json and then calls from_disk() with path.""" if not meta: meta = get_model_meta(model_path) cls = get_lang_class(meta["lang"]) nlp = cls(meta=meta, **overrides) pipeline = meta.get("pipeline", []) disable = overrides.get("disable", []) if pipeline is True: pipeline = nlp.Defaults.pipe_names elif pipeline in (False, None): pipeline = [] for name in pipeline: if name not in disable: config = meta.get("pipeline_args", {}).get(name, {}) component = nlp.create_pipe(name, config=config) nlp.add_pipe(component, name=name) return nlp.from_disk(model_path) def load_model_from_init_py(init_file, **overrides): """Helper function to use in the `load()` method of a model package's __init__.py. init_file (unicode): Path to model's __init__.py, i.e. `__file__`. **overrides: Specific overrides, like pipeline components to disable. RETURNS (Language): `Language` class with loaded model. """ model_path = Path(init_file).parent meta = get_model_meta(model_path) data_dir = "%s_%s-%s" % (meta["lang"], meta["name"], meta["version"]) data_path = model_path / data_dir if not model_path.exists(): raise IOError(Errors.E052.format(path=path2str(data_path))) return load_model_from_path(data_path, meta, **overrides) def get_model_meta(path): """Get model meta.json from a directory path and validate its contents. path (unicode or Path): Path to model directory. RETURNS (dict): The model's meta data. """ model_path = ensure_path(path) if not model_path.exists(): raise IOError(Errors.E052.format(path=path2str(model_path))) meta_path = model_path / "meta.json" if not meta_path.is_file(): raise IOError(Errors.E053.format(path=meta_path)) meta = srsly.read_json(meta_path) for setting in ["lang", "name", "version"]: if setting not in meta or not meta[setting]: raise ValueError(Errors.E054.format(setting=setting)) return meta def is_package(name): """Check if string maps to a package installed via pip. name (unicode): Name of package. RETURNS (bool): True if installed package, False if not. """ name = name.lower() # compare package name against lowercase name packages = pkg_resources.working_set.by_key.keys() for package in packages: if package.lower().replace("-", "_") == name: return True return False def get_package_path(name): """Get the path to an installed package. name (unicode): Package name. RETURNS (Path): Path to installed package. """ name = name.lower() # use lowercase version to be safe # Here we're importing the module just to find it. This is worryingly # indirect, but it's otherwise very difficult to find the package. pkg = importlib.import_module(name) return Path(pkg.__file__).parent def get_entry_points(key): """Get registered entry points from other packages for a given key, e.g. 'spacy_factories' and return them as a dictionary, keyed by name. key (unicode): Entry point name. RETURNS (dict): Entry points, keyed by name. """ result = {} for entry_point in pkg_resources.iter_entry_points(key): result[entry_point.name] = entry_point.load() return result def get_entry_point(key, value): """Check if registered entry point is available for a given name and load it. Otherwise, return None. key (unicode): Entry point name. value (unicode): Name of entry point to load. RETURNS: The loaded entry point or None. """ for entry_point in pkg_resources.iter_entry_points(key): if entry_point.name == value: return entry_point.load() def is_in_jupyter(): """Check if user is running spaCy from a Jupyter notebook by detecting the IPython kernel. Mainly used for the displaCy visualizer. RETURNS (bool): True if in Jupyter, False if not. """ # https://stackoverflow.com/a/39662359/6400719 try: shell = get_ipython().__class__.__name__ if shell == "ZMQInteractiveShell": return True # Jupyter notebook or qtconsole except NameError: return False # Probably standard Python interpreter return False def get_cuda_stream(require=False): if CudaStream is None: return None elif isinstance(Model.ops, NumpyOps): return None else: return CudaStream() def get_async(stream, numpy_array): if cupy is None: return numpy_array else: array = cupy.ndarray(numpy_array.shape, order="C", dtype=numpy_array.dtype) array.set(numpy_array, stream=stream) return array def env_opt(name, default=None): if type(default) is float: type_convert = float else: type_convert = int if "SPACY_" + name.upper() in os.environ: value = type_convert(os.environ["SPACY_" + name.upper()]) if _PRINT_ENV: print(name, "=", repr(value), "via", "$SPACY_" + name.upper()) return value elif name in os.environ: value = type_convert(os.environ[name]) if _PRINT_ENV: print(name, "=", repr(value), "via", "$" + name) return value else: if _PRINT_ENV: print(name, "=", repr(default), "by default") return default def read_regex(path): path = ensure_path(path) with path.open() as file_: entries = file_.read().split("\n") expression = "|".join( ["^" + re.escape(piece) for piece in entries if piece.strip()] ) return re.compile(expression) def compile_prefix_regex(entries): if "(" in entries: # Handle deprecated data expression = "|".join( ["^" + re.escape(piece) for piece in entries if piece.strip()] ) return re.compile(expression) else: expression = "|".join(["^" + piece for piece in entries if piece.strip()]) return re.compile(expression) def compile_suffix_regex(entries): expression = "|".join([piece + "$" for piece in entries if piece.strip()]) return re.compile(expression) def compile_infix_regex(entries): expression = "|".join([piece for piece in entries if piece.strip()]) return re.compile(expression) def add_lookups(default_func, *lookups): """Extend an attribute function with special cases. If a word is in the lookups, the value is returned. Otherwise the previous function is used. default_func (callable): The default function to execute. *lookups (dict): Lookup dictionary mapping string to attribute value. RETURNS (callable): Lexical attribute getter. """ # This is implemented as functools.partial instead of a closure, to allow # pickle to work. return functools.partial(_get_attr_unless_lookup, default_func, lookups) def _get_attr_unless_lookup(default_func, lookups, string): for lookup in lookups: if string in lookup: return lookup[string] return default_func(string) def update_exc(base_exceptions, *addition_dicts): """Update and validate tokenizer exceptions. Will overwrite exceptions. base_exceptions (dict): Base exceptions. *addition_dicts (dict): Exceptions to add to the base dict, in order. RETURNS (dict): Combined tokenizer exceptions. """ exc = dict(base_exceptions) for additions in addition_dicts: for orth, token_attrs in additions.items(): if not all(isinstance(attr[ORTH], unicode_) for attr in token_attrs): raise ValueError(Errors.E055.format(key=orth, orths=token_attrs)) described_orth = "".join(attr[ORTH] for attr in token_attrs) if orth != described_orth: raise ValueError(Errors.E056.format(key=orth, orths=described_orth)) exc.update(additions) exc = expand_exc(exc, "'", "’") return exc def expand_exc(excs, search, replace): """Find string in tokenizer exceptions, duplicate entry and replace string. For example, to add additional versions with typographic apostrophes. excs (dict): Tokenizer exceptions. search (unicode): String to find and replace. replace (unicode): Replacement. RETURNS (dict): Combined tokenizer exceptions. """ def _fix_token(token, search, replace): fixed = dict(token) fixed[ORTH] = fixed[ORTH].replace(search, replace) return fixed new_excs = dict(excs) for token_string, tokens in excs.items(): if search in token_string: new_key = token_string.replace(search, replace) new_value = [_fix_token(t, search, replace) for t in tokens] new_excs[new_key] = new_value return new_excs def normalize_slice(length, start, stop, step=None): if not (step is None or step == 1): raise ValueError(Errors.E057) if start is None: start = 0 elif start < 0: start += length start = min(length, max(0, start)) if stop is None: stop = length elif stop < 0: stop += length stop = min(length, max(start, stop)) return start, stop def minibatch(items, size=8): """Iterate over batches of items. `size` may be an iterator, so that batch-size can vary on each step. """ if isinstance(size, int): size_ = itertools.repeat(size) else: size_ = size items = iter(items) while True: batch_size = next(size_) batch = list(itertools.islice(items, int(batch_size))) if len(batch) == 0: break yield list(batch) def compounding(start, stop, compound): """Yield an infinite series of compounding values. Each time the generator is called, a value is produced by multiplying the previous value by the compound rate. EXAMPLE: >>> sizes = compounding(1., 10., 1.5) >>> assert next(sizes) == 1. >>> assert next(sizes) == 1 * 1.5 >>> assert next(sizes) == 1.5 * 1.5 """ def clip(value): return max(value, stop) if (start > stop) else min(value, stop) curr = float(start) while True: yield clip(curr) curr *= compound def stepping(start, stop, steps): """Yield an infinite series of values that step from a start value to a final value over some number of steps. Each step is (stop-start)/steps. After the final value is reached, the generator continues yielding that value. EXAMPLE: >>> sizes = stepping(1., 200., 100) >>> assert next(sizes) == 1. >>> assert next(sizes) == 1 * (200.-1.) / 100 >>> assert next(sizes) == 1 + (200.-1.) / 100 + (200.-1.) / 100 """ def clip(value): return max(value, stop) if (start > stop) else min(value, stop) curr = float(start) while True: yield clip(curr) curr += (stop - start) / steps def decaying(start, stop, decay): """Yield an infinite series of linearly decaying values.""" def clip(value): return max(value, stop) if (start > stop) else min(value, stop) nr_upd = 1.0 while True: yield clip(start * 1.0 / (1.0 + decay * nr_upd)) nr_upd += 1 def minibatch_by_words(items, size, tuples=True, count_words=len): """Create minibatches of a given number of words.""" if isinstance(size, int): size_ = itertools.repeat(size) else: size_ = size items = iter(items) while True: batch_size = next(size_) batch = [] while batch_size >= 0: try: if tuples: doc, gold = next(items) else: doc = next(items) except StopIteration: if batch: yield batch return batch_size -= count_words(doc) if tuples: batch.append((doc, gold)) else: batch.append(doc) if batch: yield batch def itershuffle(iterable, bufsize=1000): """Shuffle an iterator. This works by holding `bufsize` items back and yielding them sometime later. Obviously, this is not unbiased – but should be good enough for batching. Larger bufsize means less bias. From https://gist.github.com/andres-erbsen/1307752 iterable (iterable): Iterator to shuffle. bufsize (int): Items to hold back. YIELDS (iterable): The shuffled iterator. """ iterable = iter(iterable) buf = [] try: while True: for i in range(random.randint(1, bufsize - len(buf))): buf.append(next(iterable)) random.shuffle(buf) for i in range(random.randint(1, bufsize)): if buf: yield buf.pop() else: break except StopIteration: random.shuffle(buf) while buf: yield buf.pop() raise StopIteration def to_bytes(getters, exclude): serialized = OrderedDict() for key, getter in getters.items(): if key not in exclude: serialized[key] = getter() return srsly.msgpack_dumps(serialized) def from_bytes(bytes_data, setters, exclude): msg = srsly.msgpack_loads(bytes_data) for key, setter in setters.items(): if key not in exclude and key in msg: setter(msg[key]) return msg def to_disk(path, writers, exclude): path = ensure_path(path) if not path.exists(): path.mkdir() for key, writer in writers.items(): if key not in exclude: writer(path / key) return path def from_disk(path, readers, exclude): path = ensure_path(path) for key, reader in readers.items(): if key not in exclude: reader(path / key) return path def minify_html(html): """Perform a template-specific, rudimentary HTML minification for displaCy. Disclaimer: NOT a general-purpose solution, only removes indentation and newlines. html (unicode): Markup to minify. RETURNS (unicode): "Minified" HTML. """ return html.strip().replace(" ", "").replace("\n", "") def escape_html(text): """Replace <, >, &, " with their HTML encoded representation. Intended to prevent HTML errors in rendered displaCy markup. text (unicode): The original text. RETURNS (unicode): Equivalent text to be safely used within HTML. """ text = text.replace("&", "&") text = text.replace("<", "<") text = text.replace(">", ">") text = text.replace('"', """) return text def use_gpu(gpu_id): try: import cupy.cuda.device except ImportError: return None from thinc.neural.ops import CupyOps device = cupy.cuda.device.Device(gpu_id) device.use() Model.ops = CupyOps() Model.Ops = CupyOps return device def fix_random_seed(seed=0): random.seed(seed) numpy.random.seed(seed) if cupy is not None: cupy.random.seed(seed) def validate_schema(schema): # TODO: replace with (stable) Draft6Validator, if available validator = Draft4Validator(schema) validator.check_schema(schema) def validate_json(data, schema): """Validate data against a given JSON schema (see https://json-schema.org). data: JSON-serializable data to validate. schema (dict): The JSON schema. RETURNS (list): A list of error messages, if available. """ # TODO: replace with (stable) Draft6Validator, if available validator = Draft4Validator(schema) errors = [] for err in sorted(validator.iter_errors(data), key=lambda e: e.path): if err.path: err_path = "[{}]".format(" -> ".join([str(p) for p in err.path])) else: err_path = "" errors.append(err.message + " " + err_path) return errors class SimpleFrozenDict(dict): """Simplified implementation of a frozen dict, mainly used as default function or method argument (for arguments that should default to empty dictionary). Will raise an error if user or spaCy attempts to add to dict. """ def __setitem__(self, key, value): raise NotImplementedError(Errors.E095) def pop(self, key, default=None): raise NotImplementedError(Errors.E095) def update(self, other): raise NotImplementedError(Errors.E095) class DummyTokenizer(object): # add dummy methods for to_bytes, from_bytes, to_disk and from_disk to # allow serialization (see #1557) def to_bytes(self, **exclude): return b'' def from_bytes(self, _bytes_data, **exclude): return self def to_disk(self, _path, **exclude): return None def from_disk(self, _path, **exclude): return self