from typing import Dict, List, Union, Optional, Sequence, Any, Callable, Type from typing import Iterable, TypeVar, TYPE_CHECKING from enum import Enum from pydantic import BaseModel, Field, ValidationError, validator from pydantic import StrictStr, StrictInt, StrictFloat, StrictBool from pydantic import root_validator from collections import defaultdict from thinc.api import Optimizer from .attrs import NAMES if TYPE_CHECKING: # This lets us add type hints for mypy etc. without causing circular imports from .language import Language # noqa: F401 from .gold import Example # noqa: F401 ItemT = TypeVar("ItemT") Batcher = Callable[[Iterable[ItemT]], Iterable[List[ItemT]]] Reader = Callable[["Language", str], Iterable["Example"]] def validate(schema: Type[BaseModel], obj: Dict[str, Any]) -> List[str]: """Validate data against a given pydantic schema. obj (Dict[str, Any]): JSON-serializable data to validate. schema (pydantic.BaseModel): The schema to validate against. RETURNS (List[str]): A list of error messages, if available. """ try: schema(**obj) return [] except ValidationError as e: errors = e.errors() data = defaultdict(list) for error in errors: err_loc = " -> ".join([str(p) for p in error.get("loc", [])]) data[err_loc].append(error.get("msg")) return [f"[{loc}] {', '.join(msg)}" for loc, msg in data.items()] # Matcher token patterns def validate_token_pattern(obj: list) -> List[str]: # Try to convert non-string keys (e.g. {ORTH: "foo"} -> {"ORTH": "foo"}) get_key = lambda k: NAMES[k] if isinstance(k, int) and k < len(NAMES) else k if isinstance(obj, list): converted = [] for pattern in obj: if isinstance(pattern, dict): pattern = {get_key(k): v for k, v in pattern.items()} converted.append(pattern) obj = converted return validate(TokenPatternSchema, {"pattern": obj}) class TokenPatternString(BaseModel): REGEX: Optional[StrictStr] IN: Optional[List[StrictStr]] NOT_IN: Optional[List[StrictStr]] class Config: extra = "forbid" @validator("*", pre=True, each_item=True) def raise_for_none(cls, v): if v is None: raise ValueError("None / null is not allowed") return v class TokenPatternNumber(BaseModel): REGEX: Optional[StrictStr] = None IN: Optional[List[StrictInt]] = None NOT_IN: Optional[List[StrictInt]] = None EQ: Union[StrictInt, StrictFloat] = Field(None, alias="==") NEQ: Union[StrictInt, StrictFloat] = Field(None, alias="!=") GEQ: Union[StrictInt, StrictFloat] = Field(None, alias=">=") LEQ: Union[StrictInt, StrictFloat] = Field(None, alias="<=") GT: Union[StrictInt, StrictFloat] = Field(None, alias=">") LT: Union[StrictInt, StrictFloat] = Field(None, alias="<") class Config: extra = "forbid" @validator("*", pre=True, each_item=True) def raise_for_none(cls, v): if v is None: raise ValueError("None / null is not allowed") return v class TokenPatternOperator(str, Enum): plus: StrictStr = "+" start: StrictStr = "*" question: StrictStr = "?" exclamation: StrictStr = "!" StringValue = Union[TokenPatternString, StrictStr] NumberValue = Union[TokenPatternNumber, StrictInt, StrictFloat] UnderscoreValue = Union[ TokenPatternString, TokenPatternNumber, str, int, float, list, bool, ] class TokenPattern(BaseModel): orth: Optional[StringValue] = None text: Optional[StringValue] = None lower: Optional[StringValue] = None pos: Optional[StringValue] = None tag: Optional[StringValue] = None dep: Optional[StringValue] = None lemma: Optional[StringValue] = None shape: Optional[StringValue] = None ent_type: Optional[StringValue] = None norm: Optional[StringValue] = None length: Optional[NumberValue] = None spacy: Optional[StrictBool] = None is_alpha: Optional[StrictBool] = None is_ascii: Optional[StrictBool] = None is_digit: Optional[StrictBool] = None is_lower: Optional[StrictBool] = None is_upper: Optional[StrictBool] = None is_title: Optional[StrictBool] = None is_punct: Optional[StrictBool] = None is_space: Optional[StrictBool] = None is_bracket: Optional[StrictBool] = None is_quote: Optional[StrictBool] = None is_left_punct: Optional[StrictBool] = None is_right_punct: Optional[StrictBool] = None is_currency: Optional[StrictBool] = None is_stop: Optional[StrictBool] = None is_sent_start: Optional[StrictBool] = None sent_start: Optional[StrictBool] = None like_num: Optional[StrictBool] = None like_url: Optional[StrictBool] = None like_email: Optional[StrictBool] = None op: Optional[TokenPatternOperator] = None underscore: Optional[Dict[StrictStr, UnderscoreValue]] = Field(None, alias="_") class Config: extra = "forbid" allow_population_by_field_name = True alias_generator = lambda value: value.upper() @validator("*", pre=True) def raise_for_none(cls, v): if v is None: raise ValueError("None / null is not allowed") return v class TokenPatternSchema(BaseModel): pattern: List[TokenPattern] = Field(..., minItems=1) class Config: extra = "forbid" # Model meta class ModelMetaSchema(BaseModel): # fmt: off lang: StrictStr = Field(..., title="Two-letter language code, e.g. 'en'") name: StrictStr = Field(..., title="Model name") version: StrictStr = Field(..., title="Model version") spacy_version: StrictStr = Field("", title="Compatible spaCy version identifier") parent_package: StrictStr = Field("spacy", title="Name of parent spaCy package, e.g. spacy or spacy-nightly") pipeline: List[StrictStr] = Field([], title="Names of pipeline components") description: StrictStr = Field("", title="Model description") license: StrictStr = Field("", title="Model license") author: StrictStr = Field("", title="Model author name") email: StrictStr = Field("", title="Model author email") url: StrictStr = Field("", title="Model author URL") sources: Optional[Union[List[StrictStr], List[Dict[str, str]]]] = Field(None, title="Training data sources") vectors: Dict[str, Any] = Field({}, title="Included word vectors") labels: Dict[str, Dict[str, List[str]]] = Field({}, title="Component labels, keyed by component name") accuracy: Dict[str, Union[float, Dict[str, float]]] = Field({}, title="Accuracy numbers") speed: Dict[str, Union[float, int]] = Field({}, title="Speed evaluation numbers") spacy_git_version: StrictStr = Field("", title="Commit of spaCy version used") # fmt: on # Config schema # We're not setting any defaults here (which is too messy) and are making all # fields required, so we can raise validation errors for missing values. To # provide a default, we include a separate .cfg file with all values and # check that against this schema in the test suite to make sure it's always # up to date. class ConfigSchemaTraining(BaseModel): # fmt: off vectors: Optional[StrictStr] = Field(..., title="Path to vectors") train_corpus: Reader = Field(..., title="Reader for the training data") dev_corpus: Reader = Field(..., title="Reader for the dev data") batcher: Batcher = Field(..., title="Batcher for the training data") dropout: StrictFloat = Field(..., title="Dropout rate") patience: StrictInt = Field(..., title="How many steps to continue without improvement in evaluation score") max_epochs: StrictInt = Field(..., title="Maximum number of epochs to train for") max_steps: StrictInt = Field(..., title="Maximum number of update steps to train for") eval_frequency: StrictInt = Field(..., title="How often to evaluate during training (steps)") seed: Optional[StrictInt] = Field(..., title="Random seed") accumulate_gradient: StrictInt = Field(..., title="Whether to divide the batch up into substeps") score_weights: Dict[StrictStr, Union[StrictFloat, StrictInt]] = Field(..., title="Scores to report and their weights for selecting final model") init_tok2vec: Optional[StrictStr] = Field(..., title="Path to pretrained tok2vec weights") raw_text: Optional[StrictStr] = Field(default=None, title="Raw text") optimizer: Optimizer = Field(..., title="The optimizer to use") frozen_components: List[str] = Field(..., title="Pipeline components that shouldn't be updated during training") # fmt: on class Config: extra = "forbid" arbitrary_types_allowed = True class ConfigSchemaNlp(BaseModel): # fmt: off lang: StrictStr = Field(..., title="The base language to use") pipeline: List[StrictStr] = Field(..., title="The pipeline component names in order") tokenizer: Callable = Field(..., title="The tokenizer to use") load_vocab_data: StrictBool = Field(..., title="Whether to load additional vocab data from spacy-lookups-data") before_creation: Optional[Callable[[Type["Language"]], Type["Language"]]] = Field(..., title="Optional callback to modify Language class before initialization") after_creation: Optional[Callable[["Language"], "Language"]] = Field(..., title="Optional callback to modify nlp object after creation and before the pipeline is constructed") after_pipeline_creation: Optional[Callable[["Language"], "Language"]] = Field(..., title="Optional callback to modify nlp object after the pipeline is constructed") # fmt: on class Config: extra = "forbid" arbitrary_types_allowed = True class ConfigSchemaPretrainEmpty(BaseModel): class Config: extra = "forbid" class ConfigSchemaPretrain(BaseModel): # fmt: off max_epochs: StrictInt = Field(..., title="Maximum number of epochs to train for") min_length: StrictInt = Field(..., title="Minimum length of examples") max_length: StrictInt = Field(..., title="Maximum length of examples") dropout: StrictFloat = Field(..., title="Dropout rate") n_save_every: Optional[StrictInt] = Field(..., title="Saving frequency") batch_size: Union[Sequence[int], int] = Field(..., title="The batch size or batch size schedule") seed: Optional[StrictInt] = Field(..., title="Random seed") use_pytorch_for_gpu_memory: StrictBool = Field(..., title="Allocate memory via PyTorch") tok2vec_model: StrictStr = Field(..., title="tok2vec model in config, e.g. components.tok2vec.model") optimizer: Optimizer = Field(..., title="The optimizer to use") # TODO: use a more detailed schema for this? objective: Dict[str, Any] = Field(..., title="Pretraining objective") # fmt: on class Config: extra = "forbid" arbitrary_types_allowed = True class ConfigSchema(BaseModel): training: ConfigSchemaTraining nlp: ConfigSchemaNlp pretraining: Union[ConfigSchemaPretrain, ConfigSchemaPretrainEmpty] = {} components: Dict[str, Dict[str, Any]] @root_validator def validate_config(cls, values): """Perform additional validation for settings with dependencies.""" pt = values.get("pretraining") if pt and not isinstance(pt, ConfigSchemaPretrainEmpty): if pt.objective.get("type") == "vectors" and not values["nlp"].vectors: err = "Need nlp.vectors if pretraining.objective.type is vectors" raise ValueError(err) return values class Config: extra = "allow" arbitrary_types_allowed = True # Project config Schema class ProjectConfigAsset(BaseModel): # fmt: off dest: StrictStr = Field(..., title="Destination of downloaded asset") url: Optional[StrictStr] = Field(None, title="URL of asset") checksum: str = Field(None, title="MD5 hash of file", regex=r"([a-fA-F\d]{32})") # fmt: on class ProjectConfigCommand(BaseModel): # fmt: off name: StrictStr = Field(..., title="Name of command") help: Optional[StrictStr] = Field(None, title="Command description") script: List[StrictStr] = Field([], title="List of CLI commands to run, in order") deps: List[StrictStr] = Field([], title="File dependencies required by this command") outputs: List[StrictStr] = Field([], title="Outputs produced by this command") outputs_no_cache: List[StrictStr] = Field([], title="Outputs not tracked by DVC (DVC only)") no_skip: bool = Field(False, title="Never skip this command, even if nothing changed") # fmt: on class Config: title = "A single named command specified in a project config" extra = "forbid" class ProjectConfigSchema(BaseModel): # fmt: off vars: Dict[StrictStr, Any] = Field({}, title="Optional variables to substitute in commands") assets: List[ProjectConfigAsset] = Field([], title="Data assets") workflows: Dict[StrictStr, List[StrictStr]] = Field({}, title="Named workflows, mapped to list of project commands to run in order") commands: List[ProjectConfigCommand] = Field([], title="Project command shortucts") # fmt: on class Config: title = "Schema for project configuration file" # Recommendations for init config workflows class RecommendationTrfItem(BaseModel): name: str size_factor: int class RecommendationTrf(BaseModel): efficiency: RecommendationTrfItem accuracy: RecommendationTrfItem class RecommendationSchema(BaseModel): word_vectors: Optional[str] = None transformer: Optional[RecommendationTrf] = None has_letters: bool = True