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321 lines
14 KiB
Markdown
321 lines
14 KiB
Markdown
---
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title: What's New in v3.1
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teaser: New features and how to upgrade
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menu:
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- ['New Features', 'features']
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- ['Upgrading Notes', 'upgrading']
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---
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## New Features {#features hidden="true"}
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It's been great to see the adoption of the new spaCy v3, which introduced
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[transformer-based](/usage/embeddings-transformers) pipelines, a new
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[config and training system](/usage/training) for reproducible experiments,
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[projects](/usage/projects) for end-to-end workflows, and many
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[other features](/usage/v3). Version 3.1 adds more on top of it, including the
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ability to use predicted annotations during training, a new `SpanCategorizer`
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component for predicting arbitrary and potentially overlapping spans, support
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for partial incorrect annotations in the entity recognizer, new trained
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pipelines for Catalan and Danish, as well as many bug fixes and improvements.
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### Using predicted annotations during training {#predicted-annotations-training}
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By default, components are updated in isolation during training, which means
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that they don't see the predictions of any earlier components in the pipeline.
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The new
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[`[training.annotating_components]`](/usage/training#annotating-components)
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config setting lets you specify pipeline components that should set annotations
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on the predicted docs during training. This makes it easy to use the predictions
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of a previous component in the pipeline as features for a subsequent component,
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e.g. the dependency labels in the tagger:
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```ini
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### config.cfg (excerpt) {highlight="7,12"}
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[nlp]
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pipeline = ["parser", "tagger"]
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[components.tagger.model.tok2vec.embed]
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@architectures = "spacy.MultiHashEmbed.v1"
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width = ${components.tagger.model.tok2vec.encode.width}
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attrs = ["NORM","DEP"]
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rows = [5000,2500]
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include_static_vectors = false
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[training]
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annotating_components = ["parser"]
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```
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<Project id="pipelines/tagger_parser_predicted_annotations">
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This project shows how to use the `token.dep` attribute predicted by the parser
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as a feature for a subsequent tagger component in the pipeline.
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</Project>
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### SpanCategorizer for predicting arbitrary and overlapping spans {#spancategorizer tag="experimental"}
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A common task in applied NLP is extracting spans of texts from documents,
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including longer phrases or nested expressions. Named entity recognition isn't
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the right tool for this problem, since an entity recognizer typically predicts
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single token-based tags that are very sensitive to boundaries. This is effective
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for proper nouns and self-contained expressions, but less useful for other types
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of phrases or overlapping spans. The new
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[`SpanCategorizer`](/api/spancategorizer) component and
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[SpanCategorizer](/api/architectures#spancategorizer) architecture let you label
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arbitrary and potentially overlapping spans of texts. A span categorizer
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consists of two parts: a [suggester function](/api/spancategorizer#suggesters)
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that proposes candidate spans, which may or may not overlap, and a labeler model
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that predicts zero or more labels for each candidate. The predicted spans are
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available via the [`Doc.spans`](/api/doc#spans) container.
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<Project id="experimental/ner_spancat">
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This project trains a span categorizer for Indonesian NER.
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</Project>
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<Infobox title="Tip: Create data with Prodigy's new span annotation UI">
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[![Prodigy: example of the new manual spans UI](../images/prodigy_spans-manual.jpg)](https://support.prodi.gy/t/3861)
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The upcoming version of our annotation tool [Prodigy](https://prodi.gy)
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(currently available as a [pre-release](https://support.prodi.gy/t/3861) for all
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users) features a [new workflow and UI](https://support.prodi.gy/t/3861) for
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annotating overlapping and nested spans. You can use it to create training data
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for spaCy's `SpanCategorizer` component.
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</Infobox>
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### Update the entity recognizer with partial incorrect annotations {#negative-samples}
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> #### config.cfg (excerpt)
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>
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> ```ini
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> [components.ner]
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> factory = "ner"
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> incorrect_spans_key = "incorrect_spans"
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> moves = null
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> update_with_oracle_cut_size = 100
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> ```
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The [`EntityRecognizer`](/api/entityrecognizer) can now be updated with known
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incorrect annotations, which lets you take advantage of partial and sparse data.
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For example, you'll be able to use the information that certain spans of text
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are definitely **not** `PERSON` entities, without having to provide the complete
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gold-standard annotations for the given example. The incorrect span annotations
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can be added via the [`Doc.spans`](/api/doc#spans) in the training data under
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the key defined as [`incorrect_spans_key`](/api/entityrecognizer#init) in the
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component config.
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```python
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train_doc = nlp.make_doc("Barack Obama was born in Hawaii.")
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# The doc.spans key can be defined in the config
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train_doc.spans["incorrect_spans"] = [
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Span(doc, 0, 2, label="ORG"),
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Span(doc, 5, 6, label="PRODUCT")
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]
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```
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<!-- TODO: more details and/or example project? -->
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### New pipeline packages for Catalan and Danish {#pipeline-packages}
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spaCy v3.1 adds 5 new pipeline packages, including a new core family for Catalan
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and a new transformer-based pipeline for Danish using the
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[`danish-bert-botxo`](http://huggingface.co/Maltehb/danish-bert-botxo) weights.
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See the [models directory](/models) for an overview of all available trained
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pipelines and the [training guide](/usage/training) for details on how to train
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your own.
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> Thanks to Carlos Rodríguez Penagos and the
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> [Barcelona Supercomputing Center](https://temu.bsc.es/) for their
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> contributions for Catalan and to Kenneth Enevoldsen for Danish. For additional
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> Danish pipelines, check out [DaCy](https://github.com/KennethEnevoldsen/DaCy).
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| Package | Language | UPOS | Parser LAS | NER F |
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| ------------------------------------------------- | -------- | ---: | ---------: | -----: |
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| [`ca_core_news_sm`](/models/ca#ca_core_news_sm) | Catalan | 98.2 | 87.4 | 79.8 |
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| [`ca_core_news_md`](/models/ca#ca_core_news_md) | Catalan | 98.3 | 88.2 | 84.0 |
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| [`ca_core_news_lg`](/models/ca#ca_core_news_lg) | Catalan | 98.5 | 88.4 | 84.2 |
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| [`ca_core_news_trf`](/models/ca#ca_core_news_trf) | Catalan | 98.9 | 93.0 | 91.2 |
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| [`da_core_news_trf`](/models/da#da_core_news_trf) | Danish | 98.0 | 85.0 | 82.9 |
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### Resizable text classification architectures {#resizable-textcat}
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Previously, the [`TextCategorizer`](/api/textcategorizer) architectures could
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not be resized, meaning that you couldn't add new labels to an already trained
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model. In spaCy v3.1, the [TextCatCNN](/api/architectures#TextCatCNN) and
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[TextCatBOW](/api/architectures#TextCatBOW) architectures are now resizable,
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while ensuring that the predictions for the old labels remain the same.
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### CLI command to assemble pipeline from config {#assemble}
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The [`spacy assemble`](/api/cli#assemble) command lets you assemble a pipeline
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from a config file without additional training. It can be especially useful for
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creating a blank pipeline with a custom tokenizer, rule-based components or word
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vectors.
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```cli
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$ python -m spacy assemble config.cfg ./output
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```
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### Pretty pipeline package READMEs {#package-readme}
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The [`spacy package`](/api/cli#package) command now auto-generates a pretty
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`README.md` based on the pipeline information defined in the `meta.json`. This
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includes a table with a general overview, as well as the label scheme and
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accuracy figures, if available. For an example, see the
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[model releases](https://github.com/explosion/spacy-models/releases).
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### Support for streaming large or infinite corpora {#streaming-corpora}
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> #### config.cfg (excerpt)
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>
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> ```ini
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> [training]
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> max_epochs = -1
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> ```
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The training process now supports streaming large or infinite corpora
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out-of-the-box, which can be controlled via the
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[`[training.max_epochs]`](/api/data-formats#training) config setting. Setting it
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to `-1` means that the train corpus should be streamed rather than loaded into
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memory with no shuffling within the training loop. For details on how to
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implement a custom corpus loader, e.g. to stream in data from a remote storage,
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see the usage guide on
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[custom data reading](/usage/training#custom-code-readers-batchers).
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When streaming a corpus, only the first 100 examples will be used for
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[initialization](/usage/training#config-lifecycle). This is no problem if you're
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training a component like the text classifier with data that specifies all
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available labels in every example. If necessary, you can use the
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[`init labels`](/api/cli#init-labels) command to pre-generate the labels for
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your components using a representative sample so the model can be initialized
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correctly before training.
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### New lemmatizers for Catalan and Italian {#pos-lemmatizers}
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The trained pipelines for [Catalan](/models/ca) and [Italian](/models/it) now
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include lemmatizers that use the predicted part-of-speech tags as part of the
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lookup lemmatization for higher lemmatization accuracy. If you're training your
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own pipelines for these languages and you want to include a lemmatizer, make
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sure you have the
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[`spacy-lookups-data`](https://github.com/explosion/spacy-lookups-data) package
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installed, which provides the relevant tables.
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### Upload your pipelines to the Hugging Face Hub {#huggingface-hub}
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The [Hugging Face Hub](https://huggingface.co/) lets you upload models and share
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them with others, and it now supports spaCy pipelines out-of-the-box. The new
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[`spacy-huggingface-hub`](https://github.com/explosion/spacy-huggingface-hub)
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package automatically adds the `huggingface-hub` command to your `spacy` CLI. It
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lets you upload any pipelines packaged with [`spacy package`](/api/cli#package)
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and `--build wheel` and takes care of auto-generating all required meta
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information.
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After uploading, you'll get a live URL for your model page that includes all
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details, files and interactive visualizers, as well as a direct URL to the wheel
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file that you can install via `pip install`. For examples, check out the
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[spaCy pipelines](https://huggingface.co/spacy) we've uploaded.
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```cli
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$ pip install spacy-huggingface-hub
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$ huggingface-cli login
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$ python -m spacy package ./en_ner_fashion ./output --build wheel
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$ cd ./output/en_ner_fashion-0.0.0/dist
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$ python -m spacy huggingface-hub push en_ner_fashion-0.0.0-py3-none-any.whl
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```
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You can also integrate the upload command into your
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[project template](/usage/projects#huggingface_hub) to automatically upload your
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packaged pipelines after training.
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<Project id="integrations/huggingface_hub">
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Get started with uploading your models to the Hugging Face hub using our project
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template. It trains a simple pipeline, packages it and uploads it if the
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packaged model has changed. This makes it easy to deploy your models end-to-end.
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</Project>
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## Notes about upgrading from v3.0 {#upgrading}
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### Pipeline package version compatibility {#version-compat}
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> #### Using legacy implementations
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>
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> In spaCy v3, you'll still be able to load and reference legacy implementations
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> via [`spacy-legacy`](https://github.com/explosion/spacy-legacy), even if the
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> components or architectures change and newer versions are available in the
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> core library.
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When you're loading a pipeline package trained with spaCy v3.0, you will see a
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warning telling you that the pipeline may be incompatible. This doesn't
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necessarily have to be true, but we recommend running your pipelines against
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your test suite or evaluation data to make sure there are no unexpected results.
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If you're using one of the [trained pipelines](/models) we provide, you should
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run [`spacy download`](/api/cli#download) to update to the latest version. To
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see an overview of all installed packages and their compatibility, you can run
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[`spacy validate`](/api/cli#validate).
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If you've trained your own custom pipeline and you've confirmed that it's still
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working as expected, you can update the spaCy version requirements in the
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[`meta.json`](/api/data-formats#meta):
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```diff
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- "spacy_version": ">=3.0.0,<3.1.0",
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+ "spacy_version": ">=3.0.0,<3.2.0",
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```
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### Updating v3.0 configs
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To update a config from spaCy v3.0 with the new v3.1 settings, run
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[`init fill-config`](/api/cli#init-fill-config):
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```bash
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python -m spacy init fill-config config-v3.0.cfg config-v3.1.cfg
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```
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In many cases (`spacy train`, `spacy.load()`), the new defaults will be filled
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in automatically, but you'll need to fill in the new settings to run
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[`debug config`](/api/cli#debug) and [`debug data`](/api/cli#debug-data).
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### Sourcing pipeline components with vectors {#source-vectors}
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If you're sourcing a pipeline component that requires static vectors (for
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example, a tagger or parser from an `md` or `lg` pretrained pipeline), be sure
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to include the source model's vectors in the setting `[initialize.vectors]`. In
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spaCy v3.0, a bug allowed vectors to be loaded implicitly through `source`,
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however in v3.1 this setting must be provided explicitly as
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`[initialize.vectors]`:
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```ini
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### config.cfg (excerpt)
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[components.ner]
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source = "en_core_web_md"
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[initialize]
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vectors = "en_core_web_md"
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```
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<Infobox title="Important note" variant="warning">
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Each pipeline can only store one set of static vectors, so it's not possible to
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assemble a pipeline with components that were trained on different static
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vectors.
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</Infobox>
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[`spacy train`](/api/cli#train) and [`spacy assemble`](/api/cli#assemble) will
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provide warnings if the source and target pipelines don't contain the same
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vectors. If you are sourcing a rule-based component like an entity ruler or
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lemmatizer that does not use the vectors as a model feature, then this warning
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can be safely ignored.
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### Warnings {#warnings}
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Logger warnings have been converted to Python warnings. Use
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[`warnings.filterwarnings`](https://docs.python.org/3/library/warnings.html#warnings.filterwarnings)
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or the new helper method `spacy.errors.filter_warning(action, error_msg='')` to
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manage warnings.
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