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Data formats | Details on spaCy's input and output data formats |
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This section documents input and output formats of data used by spaCy, including training data and lexical vocabulary data. For an overview of label schemes used by the models, see the models directory. Each model documents the label schemes used in its components, depending on the data it was trained on.
Training data
Binary training format
Example
from pathlib import Path from spacy.tokens import DocBin from spacy.gold import Corpus output_file = Path(dir) / "output.spacy" data = DocBin(docs=docs).to_bytes() with output_file.open("wb") as file_: file_.write(data) reader = Corpus(output_file)
The main data format used in spaCy v3 is a binary format created by serializing
a DocBin
object, which represents a collection of Doc
objects. Typically, the extension for these binary files is .spacy
, and they
are used as input format for specifying a training corpus and for
spaCy's CLI train
command.
This binary format is extremely efficient in storage, especially when packing multiple documents together.
The built-in convert
command helps you convert spaCy's
previous JSON format to this new DocBin
format. It also
supports conversion of the .conllu
format used by the
Universal Dependencies corpora.
JSON training format
As of v3.0, the JSON input format is deprecated and is replaced by the
binary format. Instead of converting Doc
objects to JSON, you can now serialize them directly using the
DocBin
container and then use them as input data.
spacy convert
lets you convert your JSON data to the new .spacy
format:
$ python -m spacy convert ./data.json ./output
Annotating entities
Named entities are provided in the BILUO notation. Tokens outside an entity are set to
"O"
and tokens that are part of an entity are set to the entity label, prefixed by the BILUO marker. For example"B-ORG"
describes the first token of a multi-tokenORG
entity and"U-PERSON"
a single token representing aPERSON
entity. Thebiluo_tags_from_offsets
function can help you convert entity offsets to the right format.
### Example structure
[{
"id": int, # ID of the document within the corpus
"paragraphs": [{ # list of paragraphs in the corpus
"raw": string, # raw text of the paragraph
"sentences": [{ # list of sentences in the paragraph
"tokens": [{ # list of tokens in the sentence
"id": int, # index of the token in the document
"dep": string, # dependency label
"head": int, # offset of token head relative to token index
"tag": string, # part-of-speech tag
"orth": string, # verbatim text of the token
"ner": string # BILUO label, e.g. "O" or "B-ORG"
}],
"brackets": [{ # phrase structure (NOT USED by current models)
"first": int, # index of first token
"last": int, # index of last token
"label": string # phrase label
}]
}],
"cats": [{ # new in v2.2: categories for text classifier
"label": string, # text category label
"value": float / bool # label applies (1.0/true) or not (0.0/false)
}]
}]
}]
Here's an example of dependencies, part-of-speech tags and names entities, taken from the English Wall Street Journal portion of the Penn Treebank:
https://github.com/explosion/spaCy/blob/v2.3.x/examples/training/training-data.json
Annotation format for creating training examples
An Example
object holds the information for one training
instance. It stores two Doc
objects: one for holding the
gold-standard reference data, and one for holding the predictions of the
pipeline. Examples can be created using the
Example.from_dict
method with a reference Doc
and
a dictionary of gold-standard annotations. There are currently two formats
supported for this dictionary of annotations: one with a simple, flat
structure of keywords, and one with a more hierarchical structure.
Example
example = Example.from_dict(doc, gold_dict)
Example
objects are used as part of the
internal training API and they're expected when you call
nlp.update
. However, for most use cases, you
shouldn't have to write your own training scripts. It's recommended to train
your models via the spacy train
command with a config file
to keep track of your settings and hyperparameters and your own
registered functions to customize the setup.
Flat structure
Example
{ "text": str, "words": List[str], "lemmas": List[str], "spaces": List[bool], "tags": List[str], "pos": List[str], "morphs": List[str], "sent_starts": List[bool], "deps": List[string], "heads": List[int], "entities": List[str], "entities": List[(int, int, str)], "cats": Dict[str, float], "links": Dict[(int, int), dict], }
Name | Type | Description |
---|---|---|
text |
str | Raw text. |
words |
List[str] |
List of gold-standard tokens. |
lemmas |
List[str] |
List of lemmas. |
spaces |
List[bool] |
List of boolean values indicating whether the corresponding tokens is followed by a space or not. |
tags |
List[str] |
List of fine-grained POS tags. |
pos |
List[str] |
List of coarse-grained POS tags. |
morphs |
List[str] |
List of morphological features. |
sent_starts |
List[bool] |
List of boolean values indicating whether each token is the first of a sentence or not. |
deps |
List[str] |
List of string values indicating the dependency relation of a token to its head. |
heads |
List[int] |
List of integer values indicating the dependency head of each token, referring to the absolute index of each token in the text. |
entities |
List[str] |
Option 1: List of BILUO tags per token of the format "{action}-{label}" , or None for unannotated tokens. |
entities |
List[Tuple[int, int, str]] |
Option 2: List of "(start, end, label)" tuples defining all entities in the text. |
cats |
Dict[str, float] |
Dictionary of label /value pairs indicating how relevant a certain text category is for the text. |
links |
Dict[(int, int), Dict] |
Dictionary of offset /dict pairs defining named entity links. The character offsets are linked to a dictionary of relevant knowledge base IDs. |
- Multiple formats are possible for the "entities" entry, but you have to pick one.
- Any values for sentence starts will be ignored if there are annotations for dependency relations.
- If the dictionary contains values for
"text"
and"words"
, but not"spaces"
, the latter are inferred automatically. If "words" is not provided either, the values are inferred from theDoc
argument.
Examples
# Training data for a part-of-speech tagger
doc = Doc(vocab, words=["I", "like", "stuff"])
example = Example.from_dict(doc, {"tags": ["NOUN", "VERB", "NOUN"]})
# Training data for an entity recognizer (option 1)
doc = nlp("Laura flew to Silicon Valley.")
biluo_tags = ["U-PERS", "O", "O", "B-LOC", "L-LOC"]
example = Example.from_dict(doc, {"entities": biluo_tags})
# Training data for an entity recognizer (option 2)
doc = nlp("Laura flew to Silicon Valley.")
entity_tuples = [
(0, 5, "PERSON"),
(14, 28, "LOC"),
]
example = Example.from_dict(doc, {"entities": entity_tuples})
# Training data for text categorization
doc = nlp("I'm pretty happy about that!")
example = Example.from_dict(doc, {"cats": {"POSITIVE": 1.0, "NEGATIVE": 0.0}})
# Training data for an Entity Linking component
doc = nlp("Russ Cochran his reprints include EC Comics.")
example = Example.from_dict(doc, {"links": {(0, 12): {"Q7381115": 1.0, "Q2146908": 0.0}}})
Hierachical structure
Internally, a more hierarchical dictionary structure is used to store
gold-standard annotations. Its format is similar to the structure described in
the previous section, but there are two main sections token_annotation
and
doc_annotation
, and the keys for token annotations should be uppercase
Token
attributes such as "ORTH" and "TAG".
### Hierarchical dictionary
{
"text": string, # Raw text.
"token_annotation": {
"ORTH": List[string], # List of gold tokens.
"LEMMA": List[string], # List of lemmas.
"SPACY": List[bool], # List of boolean values indicating whether the corresponding tokens is followed by a space or not.
"TAG": List[string], # List of fine-grained [POS tags](/usage/linguistic-features#pos-tagging).
"POS": List[string], # List of coarse-grained [POS tags](/usage/linguistic-features#pos-tagging).
"MORPH": List[string], # List of [morphological features](/usage/linguistic-features#rule-based-morphology).
"SENT_START": List[bool], # List of boolean values indicating whether each token is the first of a sentence or not.
"DEP": List[string], # List of string values indicating the [dependency relation](/usage/linguistic-features#dependency-parse) of a token to its head.
"HEAD": List[int], # List of integer values indicating the dependency head of each token, referring to the absolute index of each token in the text.
},
"doc_annotation": {
"entities": List[(int, int, string)], # List of [BILUO tags](#biluo) per token of the format `"{action}-{label}"`, or `None` for unannotated tokens.
"cats": Dict[str, float], # Dictionary of `label:value` pairs indicating how relevant a certain [category](/api/textcategorizer) is for the text.
"links": Dict[(int, int), Dict], # Dictionary of `offset:dict` pairs defining [named entity links](/usage/linguistic-features#entity-linking). The charachter offsets are linked to a dictionary of relevant knowledge base IDs.
}
}
There are a few caveats to take into account:
- Any values for sentence starts will be ignored if there are annotations for dependency relations.
- If the dictionary contains values for "text" and "ORTH", but not "SPACY", the
latter are inferred automatically. If "ORTH" is not provided either, the
values are inferred from the
doc
argument.
Pretraining data
The spacy pretrain
command lets you pretrain the tok2vec
layer of pipeline components from raw text. Raw text can be provided as a
.jsonl
(newline-delimited JSON) file containing one input text per line
(roughly paragraph length is good). Optionally, custom tokenization can be
provided.
Tip: Writing JSONL
Our utility library
srsly
provides a handywrite_jsonl
helper that takes a file path and list of dictionaries and writes out JSONL-formatted data.import srsly data = [{"text": "Some text"}, {"text": "More..."}] srsly.write_jsonl("/path/to/text.jsonl", data)
Key | Type | Description |
---|---|---|
text |
str | The raw input text. Is not required if tokens available. |
tokens |
list | Optional tokenization, one string per token. |
### Example
{"text": "Can I ask where you work now and what you do, and if you enjoy it?"}
{"text": "They may just pull out of the Seattle market completely, at least until they have autonomous vehicles."}
{"text": "My cynical view on this is that it will never be free to the public. Reason: what would be the draw of joining the military? Right now their selling point is free Healthcare and Education. Ironically both are run horribly and most, that I've talked to, come out wishing they never went in."}
{"tokens": ["If", "tokens", "are", "provided", "then", "we", "can", "skip", "the", "raw", "input", "text"]}
Training config
Config files define the training process and model pipeline and can be passed to
spacy train
. They use
Thinc's configuration system under the
hood. For details on how to use training configs, see the
usage documentation.
The @
syntax lets you refer to function names registered in the
function registry. For example,
@architectures = "spacy.HashEmbedCNN.v1"
refers to a registered function of
the name "spacy.HashEmbedCNN.v1"
and all other values defined in its block
will be passed into that function as arguments. Those arguments depend on the
registered function. See the model architectures docs for
API details.
Lexical data for vocabulary
To populate a model's vocabulary, you can use the
spacy init-model
command and load in a
newline-delimited JSON (JSONL) file containing one
lexical entry per line via the --jsonl-loc
option. The first line defines the
language and vocabulary settings. All other lines are expected to be JSON
objects describing an individual lexeme. The lexical attributes will be then set
as attributes on spaCy's Lexeme
object. The vocab
command outputs a ready-to-use spaCy model with a Vocab
containing the lexical
data.
### First line
{"lang": "en", "settings": {"oov_prob": -20.502029418945312}}
### Entry structure
{
"orth": string, # the word text
"id": int, # can correspond to row in vectors table
"lower": string,
"norm": string,
"shape": string
"prefix": string,
"suffix": string,
"length": int,
"cluster": string,
"prob": float,
"is_alpha": bool,
"is_ascii": bool,
"is_digit": bool,
"is_lower": bool,
"is_punct": bool,
"is_space": bool,
"is_title": bool,
"is_upper": bool,
"like_url": bool,
"like_num": bool,
"like_email": bool,
"is_stop": bool,
"is_oov": bool,
"is_quote": bool,
"is_left_punct": bool,
"is_right_punct": bool
}
Here's an example of the 20 most frequent lexemes in the English training data:
https://github.com/explosion/spaCy/tree/master/examples/training/vocab-data.jsonl