mirror of
https://github.com/explosion/spaCy.git
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b40f44419b
- remove unused code - don't print by default - integrate attrs info into analysis output
136 lines
6.1 KiB
Python
136 lines
6.1 KiB
Python
from typing import List, Dict, Iterable, Optional, Union, TYPE_CHECKING
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from wasabi import msg
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from .tokens import Doc, Token, Span
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from .errors import Errors
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from .util import dot_to_dict
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if TYPE_CHECKING:
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# This lets us add type hints for mypy etc. without causing circular imports
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from .language import Language # noqa: F401
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DEFAULT_KEYS = ["requires", "assigns", "scores", "retokenizes"]
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def validate_attrs(values: Iterable[str]) -> Iterable[str]:
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"""Validate component attributes provided to "assigns", "requires" etc.
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Raises error for invalid attributes and formatting. Doesn't check if
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custom extension attributes are registered, since this is something the
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user might want to do themselves later in the component.
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values (Iterable[str]): The string attributes to check, e.g. `["token.pos"]`.
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RETURNS (Iterable[str]): The checked attributes.
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"""
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data = dot_to_dict({value: True for value in values})
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objs = {"doc": Doc, "token": Token, "span": Span}
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for obj_key, attrs in data.items():
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if obj_key == "span":
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# Support Span only for custom extension attributes
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span_attrs = [attr for attr in values if attr.startswith("span.")]
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span_attrs = [attr for attr in span_attrs if not attr.startswith("span._.")]
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if span_attrs:
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raise ValueError(Errors.E180.format(attrs=", ".join(span_attrs)))
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if obj_key not in objs: # first element is not doc/token/span
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invalid_attrs = ", ".join(a for a in values if a.startswith(obj_key))
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raise ValueError(Errors.E181.format(obj=obj_key, attrs=invalid_attrs))
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if not isinstance(attrs, dict): # attr is something like "doc"
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raise ValueError(Errors.E182.format(attr=obj_key))
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for attr, value in attrs.items():
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if attr == "_":
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if value is True: # attr is something like "doc._"
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raise ValueError(Errors.E182.format(attr="{}._".format(obj_key)))
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for ext_attr, ext_value in value.items():
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# We don't check whether the attribute actually exists
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if ext_value is not True: # attr is something like doc._.x.y
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good = f"{obj_key}._.{ext_attr}"
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bad = f"{good}.{'.'.join(ext_value)}"
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raise ValueError(Errors.E183.format(attr=bad, solution=good))
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continue # we can't validate those further
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if attr.endswith("_"): # attr is something like "token.pos_"
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raise ValueError(Errors.E184.format(attr=attr, solution=attr[:-1]))
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if value is not True: # attr is something like doc.x.y
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good = f"{obj_key}.{attr}"
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bad = f"{good}.{'.'.join(value)}"
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raise ValueError(Errors.E183.format(attr=bad, solution=good))
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obj = objs[obj_key]
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if not hasattr(obj, attr):
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raise ValueError(Errors.E185.format(obj=obj_key, attr=attr))
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return values
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def get_attr_info(nlp: "Language", attr: str) -> Dict[str, List[str]]:
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"""Check which components in the pipeline assign or require an attribute.
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nlp (Language): The current nlp object.
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attr (str): The attribute, e.g. "doc.tensor".
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RETURNS (Dict[str, List[str]]): A dict keyed by "assigns" and "requires",
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mapped to a list of component names.
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"""
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result = {"assigns": [], "requires": []}
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for pipe_name in nlp.pipe_names:
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meta = nlp.get_pipe_meta(pipe_name)
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if attr in meta.assigns:
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result["assigns"].append(pipe_name)
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if attr in meta.requires:
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result["requires"].append(pipe_name)
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return result
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def analyze_pipes(
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nlp: "Language", *, keys: List[str] = DEFAULT_KEYS,
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) -> Dict[str, Union[List[str], Dict[str, List[str]]]]:
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"""Print a formatted summary for the current nlp object's pipeline. Shows
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a table with the pipeline components and why they assign and require, as
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well as any problems if available.
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nlp (Language): The nlp object.
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keys (List[str]): The meta keys to show in the table.
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RETURNS (dict): A dict with "summary" and "problems".
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"""
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result = {"summary": {}, "problems": {}}
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all_attrs = set()
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for i, name in enumerate(nlp.pipe_names):
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meta = nlp.get_pipe_meta(name)
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all_attrs.update(meta.assigns)
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all_attrs.update(meta.requires)
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result["summary"][name] = {key: getattr(meta, key, None) for key in keys}
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prev_pipes = nlp.pipeline[:i]
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requires = {annot: False for annot in meta.requires}
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if requires:
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for prev_name, prev_pipe in prev_pipes:
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prev_meta = nlp.get_pipe_meta(prev_name)
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for annot in prev_meta.assigns:
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requires[annot] = True
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result["problems"][name] = []
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for annot, fulfilled in requires.items():
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if not fulfilled:
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result["problems"][name].append(annot)
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result["attrs"] = {attr: get_attr_info(nlp, attr) for attr in all_attrs}
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return result
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def print_pipe_analysis(
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analysis: Dict[str, Union[List[str], Dict[str, List[str]]]],
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*,
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keys: List[str] = DEFAULT_KEYS,
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) -> Optional[Dict[str, Union[List[str], Dict[str, List[str]]]]]:
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"""Print a formatted version of the pipe analysis produced by analyze_pipes.
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analysis (Dict[str, Union[List[str], Dict[str, List[str]]]]): The analysis.
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keys (List[str]): The meta keys to show in the table.
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"""
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msg.divider("Pipeline Overview")
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header = ["#", "Component", *[key.capitalize() for key in keys]]
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summary = analysis["summary"].items()
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body = [[i, n, *[v for v in m.values()]] for i, (n, m) in enumerate(summary)]
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msg.table(body, header=header, divider=True, multiline=True)
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n_problems = sum(len(p) for p in analysis["problems"].values())
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if any(p for p in analysis["problems"].values()):
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msg.divider(f"Problems ({n_problems})")
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for name, problem in analysis["problems"].items():
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if problem:
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msg.warn(f"'{name}' requirements not met: {', '.join(problem)}")
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else:
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msg.good("No problems found.")
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