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			Plaintext
		
	
	
	
	
	
| ---
 | ||
| title: Embeddings, Transformers and Transfer Learning
 | ||
| teaser: Using transformer embeddings like BERT in spaCy
 | ||
| menu:
 | ||
|   - ['Embedding Layers', 'embedding-layers']
 | ||
|   - ['Transformers', 'transformers']
 | ||
|   - ['Static Vectors', 'static-vectors']
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|   - ['Pretraining', 'pretraining']
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| next: /usage/training
 | ||
| ---
 | ||
| 
 | ||
| spaCy supports a number of **transfer and multi-task learning** workflows that
 | ||
| can often help improve your pipeline's efficiency or accuracy. Transfer learning
 | ||
| refers to techniques such as word vector tables and language model pretraining.
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| These techniques can be used to import knowledge from raw text into your
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| pipeline, so that your models are able to generalize better from your annotated
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| examples.
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| 
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| You can convert **word vectors** from popular tools like
 | ||
| [FastText](https://fasttext.cc) and [Gensim](https://radimrehurek.com/gensim),
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| or you can load in any pretrained **transformer model** if you install
 | ||
| [`spacy-transformers`](https://github.com/explosion/spacy-transformers). You can
 | ||
| also do your own language model pretraining via the
 | ||
| [`spacy pretrain`](/api/cli#pretrain) command. You can even **share** your
 | ||
| transformer or other contextual embedding model across multiple components,
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| which can make long pipelines several times more efficient. To use transfer
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| learning, you'll need at least a few annotated examples for what you're trying
 | ||
| to predict. Otherwise, you could try using a "one-shot learning" approach using
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| [vectors and similarity](/usage/linguistic-features#vectors-similarity).
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| 
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| <Accordion title="What’s the difference between word vectors and language models?" id="vectors-vs-language-models">
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| 
 | ||
| [Transformers](#transformers) are large and powerful neural networks that give
 | ||
| you better accuracy, but are harder to deploy in production, as they require a
 | ||
| GPU to run effectively. [Word vectors](#word-vectors) are a slightly older
 | ||
| technique that can give your models a smaller improvement in accuracy, and can
 | ||
| also provide some additional capabilities.
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| 
 | ||
| The key difference between word-vectors and contextual language models such as
 | ||
| transformers is that word vectors model **lexical types**, rather than _tokens_.
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| If you have a list of terms with no context around them, a transformer model
 | ||
| like BERT can't really help you. BERT is designed to understand language **in
 | ||
| context**, which isn't what you have. A word vectors table will be a much better
 | ||
| fit for your task. However, if you do have words in context – whole sentences or
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| paragraphs of running text – word vectors will only provide a very rough
 | ||
| approximation of what the text is about.
 | ||
| 
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| Word vectors are also very computationally efficient, as they map a word to a
 | ||
| vector with a single indexing operation. Word vectors are therefore useful as a
 | ||
| way to **improve the accuracy** of neural network models, especially models that
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| are small or have received little or no pretraining. In spaCy, word vector
 | ||
| tables are only used as **static features**. spaCy does not backpropagate
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| gradients to the pretrained word vectors table. The static vectors table is
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| usually used in combination with a smaller table of learned task-specific
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| embeddings.
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| 
 | ||
| </Accordion>
 | ||
| 
 | ||
| <Accordion title="When should I add word vectors to my model?">
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| 
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| Word vectors are not compatible with most [transformer models](#transformers),
 | ||
| but if you're training another type of NLP network, it's almost always worth
 | ||
| adding word vectors to your model. As well as improving your final accuracy,
 | ||
| word vectors often make experiments more consistent, as the accuracy you reach
 | ||
| will be less sensitive to how the network is randomly initialized. High variance
 | ||
| due to random chance can slow down your progress significantly, as you need to
 | ||
| run many experiments to filter the signal from the noise.
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| 
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| Word vector features need to be enabled prior to training, and the same word
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| vectors table will need to be available at runtime as well. You cannot add word
 | ||
| vector features once the model has already been trained, and you usually cannot
 | ||
| replace one word vectors table with another without causing a significant loss
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| of performance.
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| 
 | ||
| </Accordion>
 | ||
| 
 | ||
| ## Shared embedding layers {id="embedding-layers"}
 | ||
| 
 | ||
| spaCy lets you share a single transformer or other token-to-vector ("tok2vec")
 | ||
| embedding layer between multiple components. You can even update the shared
 | ||
| layer, performing **multi-task learning**. Reusing the tok2vec layer between
 | ||
| components can make your pipeline run a lot faster and result in much smaller
 | ||
| models. However, it can make the pipeline less modular and make it more
 | ||
| difficult to swap components or retrain parts of the pipeline. Multi-task
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| learning can affect your accuracy (either positively or negatively), and may
 | ||
| require some retuning of your hyper-parameters.
 | ||
| 
 | ||
| 
 | ||
| 
 | ||
| | Shared                                                                                      | Independent                                                             |
 | ||
| | ------------------------------------------------------------------------------------------- | ----------------------------------------------------------------------- |
 | ||
| | ✅ **smaller:** models only need to include a single copy of the embeddings                 | ❌ **larger:** models need to include the embeddings for each component |
 | ||
| | ✅ **faster:** embed the documents once for your whole pipeline                             | ❌ **slower:** rerun the embedding for each component                   |
 | ||
| | ❌ **less composable:** all components require the same embedding component in the pipeline | ✅ **modular:** components can be moved and swapped freely              |
 | ||
| 
 | ||
| You can share a single transformer or other tok2vec model between multiple
 | ||
| components by adding a [`Transformer`](/api/transformer) or
 | ||
| [`Tok2Vec`](/api/tok2vec) component near the start of your pipeline. Components
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| later in the pipeline can "connect" to it by including a **listener layer** like
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| [Tok2VecListener](/api/architectures#Tok2VecListener) within their model.
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| 
 | ||
| 
 | ||
| 
 | ||
| At the beginning of training, the [`Tok2Vec`](/api/tok2vec) component will grab
 | ||
| a reference to the relevant listener layers in the rest of your pipeline. When
 | ||
| it processes a batch of documents, it will pass forward its predictions to the
 | ||
| listeners, allowing the listeners to **reuse the predictions** when they are
 | ||
| eventually called. A similar mechanism is used to pass gradients from the
 | ||
| listeners back to the model. The [`Transformer`](/api/transformer) component and
 | ||
| [TransformerListener](/api/architectures#TransformerListener) layer do the same
 | ||
| thing for transformer models, but the `Transformer` component will also save the
 | ||
| transformer outputs to the
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| [`Doc._.trf_data`](/api/transformer#custom_attributes) extension attribute,
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| giving you access to them after the pipeline has finished running.
 | ||
| 
 | ||
| ### Example: Shared vs. independent config {id="embedding-layers-config"}
 | ||
| 
 | ||
| The [config system](/usage/training#config) lets you express model configuration
 | ||
| for both shared and independent embedding layers. The shared setup uses a single
 | ||
| [`Tok2Vec`](/api/tok2vec) component with the
 | ||
| [Tok2Vec](/api/architectures#Tok2Vec) architecture. All other components, like
 | ||
| the entity recognizer, use a
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| [Tok2VecListener](/api/architectures#Tok2VecListener) layer as their model's
 | ||
| `tok2vec` argument, which connects to the `tok2vec` component model.
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| 
 | ||
| ```ini {title="Shared",highlight="1-2,4-5,19-20"}
 | ||
| [components.tok2vec]
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| factory = "tok2vec"
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| 
 | ||
| [components.tok2vec.model]
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| @architectures = "spacy.Tok2Vec.v2"
 | ||
| 
 | ||
| [components.tok2vec.model.embed]
 | ||
| @architectures = "spacy.MultiHashEmbed.v2"
 | ||
| 
 | ||
| [components.tok2vec.model.encode]
 | ||
| @architectures = "spacy.MaxoutWindowEncoder.v2"
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| 
 | ||
| [components.ner]
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| factory = "ner"
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| 
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| [components.ner.model]
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| @architectures = "spacy.TransitionBasedParser.v3"
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| 
 | ||
| [components.ner.model.tok2vec]
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| @architectures = "spacy.Tok2VecListener.v1"
 | ||
| ```
 | ||
| 
 | ||
| In the independent setup, the entity recognizer component defines its own
 | ||
| [Tok2Vec](/api/architectures#Tok2Vec) instance. Other components will do the
 | ||
| same. This makes them fully independent and doesn't require an upstream
 | ||
| [`Tok2Vec`](/api/tok2vec) component to be present in the pipeline.
 | ||
| 
 | ||
| ```ini {title="Independent", highlight="7-8"}
 | ||
| [components.ner]
 | ||
| factory = "ner"
 | ||
| 
 | ||
| [components.ner.model]
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| @architectures = "spacy.TransitionBasedParser.v3"
 | ||
| 
 | ||
| [components.ner.model.tok2vec]
 | ||
| @architectures = "spacy.Tok2Vec.v2"
 | ||
| 
 | ||
| [components.ner.model.tok2vec.embed]
 | ||
| @architectures = "spacy.MultiHashEmbed.v2"
 | ||
| 
 | ||
| [components.ner.model.tok2vec.encode]
 | ||
| @architectures = "spacy.MaxoutWindowEncoder.v2"
 | ||
| ```
 | ||
| 
 | ||
| {/* TODO: Once rehearsal is tested, mention it here. */}
 | ||
| 
 | ||
| ## Using transformer models {id="transformers"}
 | ||
| 
 | ||
| Transformers are a family of neural network architectures that compute **dense,
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| context-sensitive representations** for the tokens in your documents. Downstream
 | ||
| models in your pipeline can then use these representations as input features to
 | ||
| **improve their predictions**. You can connect multiple components to a single
 | ||
| transformer model, with any or all of those components giving feedback to the
 | ||
| transformer to fine-tune it to your tasks. spaCy's transformer support
 | ||
| interoperates with [PyTorch](https://pytorch.org) and the
 | ||
| [HuggingFace `transformers`](https://huggingface.co/transformers/) library,
 | ||
| giving you access to thousands of pretrained models for your pipelines. There
 | ||
| are many [great guides](http://jalammar.github.io/illustrated-transformer/) to
 | ||
| transformer models, but for practical purposes, you can simply think of them as
 | ||
| drop-in replacements that let you achieve **higher accuracy** in exchange for
 | ||
| **higher training and runtime costs**.
 | ||
| 
 | ||
| ### Setup and installation {id="transformers-installation"}
 | ||
| 
 | ||
| > #### System requirements
 | ||
| >
 | ||
| > We recommend an NVIDIA **GPU** with at least **10GB of memory** in order to
 | ||
| > work with transformer models. Make sure your GPU drivers are up to date and
 | ||
| > you have **CUDA v9+** installed.
 | ||
| 
 | ||
| > The exact requirements will depend on the transformer model. Training a
 | ||
| > transformer-based model without a GPU will be too slow for most practical
 | ||
| > purposes.
 | ||
| >
 | ||
| > Provisioning a new machine will require about **5GB** of data to be
 | ||
| > downloaded: 3GB CUDA runtime, 800MB PyTorch, 400MB CuPy, 500MB weights, 200MB
 | ||
| > spaCy and dependencies.
 | ||
| 
 | ||
| Once you have CUDA installed, we recommend installing PyTorch following the
 | ||
| [PyTorch installation guidelines](https://pytorch.org/get-started/locally/) for
 | ||
| your package manager and CUDA version. If you skip this step, pip will install
 | ||
| PyTorch as a dependency below, but it may not find the best version for your
 | ||
| setup.
 | ||
| 
 | ||
| ```bash {title="Example: Install PyTorch 1.11.0 for CUDA 11.3 with pip"}
 | ||
| # See: https://pytorch.org/get-started/locally/
 | ||
| $ pip install torch==1.11.0+cu113 torchvision==0.12.0+cu113 torchaudio==0.11.0+cu113 -f https://download.pytorch.org/whl/cu113/torch_stable.html
 | ||
| ```
 | ||
| 
 | ||
| Next, install spaCy with the extras for your CUDA version and transformers. The
 | ||
| CUDA extra (e.g., `cuda102`, `cuda113`) installs the correct version of
 | ||
| [`cupy`](https://docs.cupy.dev/en/stable/install.html#installing-cupy), which is
 | ||
| just like `numpy`, but for GPU. You may also need to set the `CUDA_PATH`
 | ||
| environment variable if your CUDA runtime is installed in a non-standard
 | ||
| location. Putting it all together, if you had installed CUDA 11.3 in
 | ||
| `/opt/nvidia/cuda`, you would run:
 | ||
| 
 | ||
| ```bash {title="Installation with CUDA"}
 | ||
| $ export CUDA_PATH="/opt/nvidia/cuda"
 | ||
| $ pip install -U %%SPACY_PKG_NAME[cuda113,transformers]%%SPACY_PKG_FLAGS
 | ||
| ```
 | ||
| 
 | ||
| For [`transformers`](https://huggingface.co/transformers/) v4.0.0+ and models
 | ||
| that require [`SentencePiece`](https://github.com/google/sentencepiece) (e.g.,
 | ||
| ALBERT, CamemBERT, XLNet, Marian, and T5), install the additional dependencies
 | ||
| with:
 | ||
| 
 | ||
| ```bash {title="Install sentencepiece"}
 | ||
| $ pip install transformers[sentencepiece]
 | ||
| ```
 | ||
| 
 | ||
| ### Runtime usage {id="transformers-runtime"}
 | ||
| 
 | ||
| Transformer models can be used as **drop-in replacements** for other types of
 | ||
| neural networks, so your spaCy pipeline can include them in a way that's
 | ||
| completely invisible to the user. Users will download, load and use the model in
 | ||
| the standard way, like any other spaCy pipeline. Instead of using the
 | ||
| transformers as subnetworks directly, you can also use them via the
 | ||
| [`Transformer`](/api/transformer) pipeline component.
 | ||
| 
 | ||
| 
 | ||
| 
 | ||
| The `Transformer` component sets the
 | ||
| [`Doc._.trf_data`](/api/transformer#custom_attributes) extension attribute,
 | ||
| which lets you access the transformers outputs at runtime. The trained
 | ||
| transformer-based [pipelines](/models) provided by spaCy end on `_trf`, e.g.
 | ||
| [`en_core_web_trf`](/models/en#en_core_web_trf).
 | ||
| 
 | ||
| ```bash
 | ||
| $ python -m spacy download en_core_web_trf
 | ||
| ```
 | ||
| 
 | ||
| ```python {title="Example"}
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| import spacy
 | ||
| from thinc.api import set_gpu_allocator, require_gpu
 | ||
| 
 | ||
| # Use the GPU, with memory allocations directed via PyTorch.
 | ||
| # This prevents out-of-memory errors that would otherwise occur from competing
 | ||
| # memory pools.
 | ||
| set_gpu_allocator("pytorch")
 | ||
| require_gpu(0)
 | ||
| 
 | ||
| nlp = spacy.load("en_core_web_trf")
 | ||
| for doc in nlp.pipe(["some text", "some other text"]):
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|     tokvecs = doc._.trf_data.tensors[-1]
 | ||
| ```
 | ||
| 
 | ||
| You can also customize how the [`Transformer`](/api/transformer) component sets
 | ||
| annotations onto the [`Doc`](/api/doc) by specifying a custom
 | ||
| `set_extra_annotations` function. This callback will be called with the raw
 | ||
| input and output data for the whole batch, along with the batch of `Doc`
 | ||
| objects, allowing you to implement whatever you need. The annotation setter is
 | ||
| called with a batch of [`Doc`](/api/doc) objects and a
 | ||
| [`FullTransformerBatch`](/api/transformer#fulltransformerbatch) containing the
 | ||
| transformers data for the batch.
 | ||
| 
 | ||
| ```python
 | ||
| def custom_annotation_setter(docs, trf_data):
 | ||
|     doc_data = list(trf_data.doc_data)
 | ||
|     for doc, data in zip(docs, doc_data):
 | ||
|         doc._.custom_attr = data
 | ||
| 
 | ||
| nlp = spacy.load("en_core_web_trf")
 | ||
| nlp.get_pipe("transformer").set_extra_annotations = custom_annotation_setter
 | ||
| doc = nlp("This is a text")
 | ||
| assert isinstance(doc._.custom_attr, TransformerData)
 | ||
| print(doc._.custom_attr.tensors)
 | ||
| ```
 | ||
| 
 | ||
| ### Training usage {id="transformers-training"}
 | ||
| 
 | ||
| The recommended workflow for training is to use spaCy's
 | ||
| [config system](/usage/training#config), usually via the
 | ||
| [`spacy train`](/api/cli#train) command. The training config defines all
 | ||
| component settings and hyperparameters in one place and lets you describe a tree
 | ||
| of objects by referring to creation functions, including functions you register
 | ||
| yourself. For details on how to get started with training your own model, check
 | ||
| out the [training quickstart](/usage/training#quickstart).
 | ||
| 
 | ||
| {/* TODO: <Project id="pipelines/transformers"> */}
 | ||
| 
 | ||
| {/* The easiest way to get started is to clone a transformers-based project */}
 | ||
| {/* template. Swap in your data, edit the settings and hyperparameters and train, */}
 | ||
| {/* evaluate, package and visualize your model. */}
 | ||
| 
 | ||
| {/* </Project> */}
 | ||
| 
 | ||
| The `[components]` section in the [`config.cfg`](/api/data-formats#config)
 | ||
| describes the pipeline components and the settings used to construct them,
 | ||
| including their model implementation. Here's a config snippet for the
 | ||
| [`Transformer`](/api/transformer) component, along with matching Python code. In
 | ||
| this case, the `[components.transformer]` block describes the `transformer`
 | ||
| component:
 | ||
| 
 | ||
| > #### Python equivalent
 | ||
| >
 | ||
| > ```python
 | ||
| > from spacy_transformers import Transformer, TransformerModel
 | ||
| > from spacy_transformers.annotation_setters import null_annotation_setter
 | ||
| > from spacy_transformers.span_getters import get_doc_spans
 | ||
| >
 | ||
| > trf = Transformer(
 | ||
| >     nlp.vocab,
 | ||
| >     TransformerModel(
 | ||
| >         "bert-base-cased",
 | ||
| >         get_spans=get_doc_spans,
 | ||
| >         tokenizer_config={"use_fast": True},
 | ||
| >     ),
 | ||
| >     set_extra_annotations=null_annotation_setter,
 | ||
| >     max_batch_items=4096,
 | ||
| > )
 | ||
| > ```
 | ||
| 
 | ||
| ```ini {title="config.cfg",excerpt="true"}
 | ||
| [components.transformer]
 | ||
| factory = "transformer"
 | ||
| max_batch_items = 4096
 | ||
| 
 | ||
| [components.transformer.model]
 | ||
| @architectures = "spacy-transformers.TransformerModel.v3"
 | ||
| name = "bert-base-cased"
 | ||
| tokenizer_config = {"use_fast": true}
 | ||
| 
 | ||
| [components.transformer.model.get_spans]
 | ||
| @span_getters = "spacy-transformers.doc_spans.v1"
 | ||
| 
 | ||
| [components.transformer.set_extra_annotations]
 | ||
| @annotation_setters = "spacy-transformers.null_annotation_setter.v1"
 | ||
| 
 | ||
| ```
 | ||
| 
 | ||
| The `[components.transformer.model]` block describes the `model` argument passed
 | ||
| to the transformer component. It's a Thinc
 | ||
| [`Model`](https://thinc.ai/docs/api-model) object that will be passed into the
 | ||
| component. Here, it references the function
 | ||
| [spacy-transformers.TransformerModel.v3](/api/architectures#TransformerModel)
 | ||
| registered in the [`architectures` registry](/api/top-level#registry). If a key
 | ||
| in a block starts with `@`, it's **resolved to a function** and all other
 | ||
| settings are passed to the function as arguments. In this case, `name`,
 | ||
| `tokenizer_config` and `get_spans`.
 | ||
| 
 | ||
| `get_spans` is a function that takes a batch of `Doc` objects and returns lists
 | ||
| of potentially overlapping `Span` objects to process by the transformer. Several
 | ||
| [built-in functions](/api/transformer#span_getters) are available – for example,
 | ||
| to process the whole document or individual sentences. When the config is
 | ||
| resolved, the function is created and passed into the model as an argument.
 | ||
| 
 | ||
| The `name` value is the name of any [HuggingFace model](huggingface-models),
 | ||
| which will be downloaded automatically the first time it's used. You can also
 | ||
| use a local file path. For full details, see the
 | ||
| [`TransformerModel` docs](/api/architectures#TransformerModel).
 | ||
| 
 | ||
| [huggingface-models]:
 | ||
|   https://huggingface.co/models?library=pytorch&sort=downloads
 | ||
| 
 | ||
| A wide variety of PyTorch models are supported, but some might not work. If a
 | ||
| model doesn't seem to work feel free to open an
 | ||
| [issue](https://github.com/explosion/spacy/issues). Additionally note that
 | ||
| Transformers loaded in spaCy can only be used for tensors, and pretrained
 | ||
| task-specific heads or text generation features cannot be used as part of the
 | ||
| `transformer` pipeline component.
 | ||
| 
 | ||
| <Infobox variant="warning">
 | ||
| 
 | ||
| Remember that the `config.cfg` used for training should contain **no missing
 | ||
| values** and requires all settings to be defined. You don't want any hidden
 | ||
| defaults creeping in and changing your results! spaCy will tell you if settings
 | ||
| are missing, and you can run
 | ||
| [`spacy init fill-config`](/api/cli#init-fill-config) to automatically fill in
 | ||
| all defaults.
 | ||
| 
 | ||
| </Infobox>
 | ||
| 
 | ||
| ### Customizing the settings {id="transformers-training-custom-settings"}
 | ||
| 
 | ||
| To change any of the settings, you can edit the `config.cfg` and re-run the
 | ||
| training. To change any of the functions, like the span getter, you can replace
 | ||
| the name of the referenced function – e.g.
 | ||
| `@span_getters = "spacy-transformers.sent_spans.v1"` to process sentences. You
 | ||
| can also register your own functions using the
 | ||
| [`span_getters` registry](/api/top-level#registry). For instance, the following
 | ||
| custom function returns [`Span`](/api/span) objects following sentence
 | ||
| boundaries, unless a sentence succeeds a certain amount of tokens, in which case
 | ||
| subsentences of at most `max_length` tokens are returned.
 | ||
| 
 | ||
| > #### config.cfg
 | ||
| >
 | ||
| > ```ini
 | ||
| > [components.transformer.model.get_spans]
 | ||
| > @span_getters = "custom_sent_spans"
 | ||
| > max_length = 25
 | ||
| > ```
 | ||
| 
 | ||
| ```python {title="code.py"}
 | ||
| import spacy_transformers
 | ||
| 
 | ||
| @spacy_transformers.registry.span_getters("custom_sent_spans")
 | ||
| def configure_custom_sent_spans(max_length: int):
 | ||
|     def get_custom_sent_spans(docs):
 | ||
|         spans = []
 | ||
|         for doc in docs:
 | ||
|             spans.append([])
 | ||
|             for sent in doc.sents:
 | ||
|                 start = 0
 | ||
|                 end = max_length
 | ||
|                 while end <= len(sent):
 | ||
|                     spans[-1].append(sent[start:end])
 | ||
|                     start += max_length
 | ||
|                     end += max_length
 | ||
|                 if start < len(sent):
 | ||
|                     spans[-1].append(sent[start:len(sent)])
 | ||
|         return spans
 | ||
| 
 | ||
|     return get_custom_sent_spans
 | ||
| ```
 | ||
| 
 | ||
| To resolve the config during training, spaCy needs to know about your custom
 | ||
| function. You can make it available via the `--code` argument that can point to
 | ||
| a Python file. For more details on training with custom code, see the
 | ||
| [training documentation](/usage/training#custom-functions).
 | ||
| 
 | ||
| ```bash
 | ||
| python -m spacy train ./config.cfg --code ./code.py
 | ||
| ```
 | ||
| 
 | ||
| ### Customizing the model implementations {id="training-custom-model"}
 | ||
| 
 | ||
| The [`Transformer`](/api/transformer) component expects a Thinc
 | ||
| [`Model`](https://thinc.ai/docs/api-model) object to be passed in as its `model`
 | ||
| argument. You're not limited to the implementation provided by
 | ||
| `spacy-transformers` – the only requirement is that your registered function
 | ||
| must return an object of type ~~Model[List[Doc], FullTransformerBatch]~~: that
 | ||
| is, a Thinc model that takes a list of [`Doc`](/api/doc) objects, and returns a
 | ||
| [`FullTransformerBatch`](/api/transformer#fulltransformerbatch) object with the
 | ||
| transformer data.
 | ||
| 
 | ||
| The same idea applies to task models that power the **downstream components**.
 | ||
| Most of spaCy's built-in model creation functions support a `tok2vec` argument,
 | ||
| which should be a Thinc layer of type ~~Model[List[Doc], List[Floats2d]]~~. This
 | ||
| is where we'll plug in our transformer model, using the
 | ||
| [TransformerListener](/api/architectures#TransformerListener) layer, which
 | ||
| sneakily delegates to the `Transformer` pipeline component.
 | ||
| 
 | ||
| ```ini {title="config.cfg (excerpt)",highlight="12"}
 | ||
| [components.ner]
 | ||
| factory = "ner"
 | ||
| 
 | ||
| [nlp.pipeline.ner.model]
 | ||
| @architectures = "spacy.TransitionBasedParser.v3"
 | ||
| state_type = "ner"
 | ||
| extra_state_tokens = false
 | ||
| hidden_width = 128
 | ||
| maxout_pieces = 3
 | ||
| use_upper = false
 | ||
| 
 | ||
| [nlp.pipeline.ner.model.tok2vec]
 | ||
| @architectures = "spacy-transformers.TransformerListener.v1"
 | ||
| grad_factor = 1.0
 | ||
| 
 | ||
| [nlp.pipeline.ner.model.tok2vec.pooling]
 | ||
| @layers = "reduce_mean.v1"
 | ||
| ```
 | ||
| 
 | ||
| The [TransformerListener](/api/architectures#TransformerListener) layer expects
 | ||
| a [pooling layer](https://thinc.ai/docs/api-layers#reduction-ops) as the
 | ||
| argument `pooling`, which needs to be of type ~~Model[Ragged, Floats2d]~~. This
 | ||
| layer determines how the vector for each spaCy token will be computed from the
 | ||
| zero or more source rows the token is aligned against. Here we use the
 | ||
| [`reduce_mean`](https://thinc.ai/docs/api-layers#reduce_mean) layer, which
 | ||
| averages the wordpiece rows. We could instead use
 | ||
| [`reduce_max`](https://thinc.ai/docs/api-layers#reduce_max), or a custom
 | ||
| function you write yourself.
 | ||
| 
 | ||
| You can have multiple components all listening to the same transformer model,
 | ||
| and all passing gradients back to it. By default, all of the gradients will be
 | ||
| **equally weighted**. You can control this with the `grad_factor` setting, which
 | ||
| lets you reweight the gradients from the different listeners. For instance,
 | ||
| setting `grad_factor = 0` would disable gradients from one of the listeners,
 | ||
| while `grad_factor = 2.0` would multiply them by 2. This is similar to having a
 | ||
| custom learning rate for each component. Instead of a constant, you can also
 | ||
| provide a schedule, allowing you to freeze the shared parameters at the start of
 | ||
| training.
 | ||
| 
 | ||
| ## Static vectors {id="static-vectors"}
 | ||
| 
 | ||
| If your pipeline includes a **word vectors table**, you'll be able to use the
 | ||
| `.similarity()` method on the [`Doc`](/api/doc), [`Span`](/api/span),
 | ||
| [`Token`](/api/token) and [`Lexeme`](/api/lexeme) objects. You'll also be able
 | ||
| to access the vectors using the `.vector` attribute, or you can look up one or
 | ||
| more vectors directly using the [`Vocab`](/api/vocab) object. Pipelines with
 | ||
| word vectors can also **use the vectors as features** for the statistical
 | ||
| models, which can **improve the accuracy** of your components.
 | ||
| 
 | ||
| Word vectors in spaCy are "static" in the sense that they are not learned
 | ||
| parameters of the statistical models, and spaCy itself does not feature any
 | ||
| algorithms for learning word vector tables. You can train a word vectors table
 | ||
| using tools such as [floret](https://github.com/explosion/floret),
 | ||
| [Gensim](https://radimrehurek.com/gensim/), [FastText](https://fasttext.cc/) or
 | ||
| [GloVe](https://nlp.stanford.edu/projects/glove/), or download existing
 | ||
| pretrained vectors. The [`init vectors`](/api/cli#init-vectors) command lets you
 | ||
| convert vectors for use with spaCy and will give you a directory you can load or
 | ||
| refer to in your [training configs](/usage/training#config).
 | ||
| 
 | ||
| <Infobox title="Word vectors and similarity" emoji="📖">
 | ||
| 
 | ||
| For more details on loading word vectors into spaCy, using them for similarity
 | ||
| and improving word vector coverage by truncating and pruning the vectors, see
 | ||
| the usage guide on
 | ||
| [word vectors and similarity](/usage/linguistic-features#vectors-similarity).
 | ||
| 
 | ||
| </Infobox>
 | ||
| 
 | ||
| ### Using word vectors in your models {id="word-vectors-models"}
 | ||
| 
 | ||
| Many neural network models are able to use word vector tables as additional
 | ||
| features, which sometimes results in significant improvements in accuracy.
 | ||
| spaCy's built-in embedding layer,
 | ||
| [MultiHashEmbed](/api/architectures#MultiHashEmbed), can be configured to use
 | ||
| word vector tables using the `include_static_vectors` flag.
 | ||
| 
 | ||
| ```ini
 | ||
| [tagger.model.tok2vec.embed]
 | ||
| @architectures = "spacy.MultiHashEmbed.v2"
 | ||
| width = 128
 | ||
| attrs = ["LOWER","PREFIX","SUFFIX","SHAPE"]
 | ||
| rows = [5000,2500,2500,2500]
 | ||
| include_static_vectors = true
 | ||
| ```
 | ||
| 
 | ||
| <Infobox title="How it works" emoji="💡">
 | ||
| 
 | ||
| The configuration system will look up the string `"spacy.MultiHashEmbed.v2"` in
 | ||
| the `architectures` [registry](/api/top-level#registry), and call the returned
 | ||
| object with the rest of the arguments from the block. This will result in a call
 | ||
| to the
 | ||
| [`MultiHashEmbed`](https://github.com/explosion/spacy/tree/develop/spacy/ml/models/tok2vec.py)
 | ||
| function, which will return a [Thinc](https://thinc.ai) model object with the
 | ||
| type signature ~~Model[List[Doc], List[Floats2d]]~~. Because the embedding layer
 | ||
| takes a list of `Doc` objects as input, it does not need to store a copy of the
 | ||
| vectors table. The vectors will be retrieved from the `Doc` objects that are
 | ||
| passed in, via the `doc.vocab.vectors` attribute. This part of the process is
 | ||
| handled by the [StaticVectors](/api/architectures#StaticVectors) layer.
 | ||
| 
 | ||
| </Infobox>
 | ||
| 
 | ||
| #### Creating a custom embedding layer {id="custom-embedding-layer"}
 | ||
| 
 | ||
| The [MultiHashEmbed](/api/architectures#StaticVectors) layer is spaCy's
 | ||
| recommended strategy for constructing initial word representations for your
 | ||
| neural network models, but you can also implement your own. You can register any
 | ||
| function to a string name, and then reference that function within your config
 | ||
| (see the [training docs](/usage/training) for more details). To try this out,
 | ||
| you can save the following little example to a new Python file:
 | ||
| 
 | ||
| ```python
 | ||
| from spacy.ml.staticvectors import StaticVectors
 | ||
| from spacy.util import registry
 | ||
| 
 | ||
| print("I was imported!")
 | ||
| 
 | ||
| @registry.architectures("my_example.MyEmbedding.v1")
 | ||
| def MyEmbedding(output_width: int) -> Model[List[Doc], List[Floats2d]]:
 | ||
|     print("I was called!")
 | ||
|     return StaticVectors(nO=output_width)
 | ||
| ```
 | ||
| 
 | ||
| If you pass the path to your file to the [`spacy train`](/api/cli#train) command
 | ||
| using the `--code` argument, your file will be imported, which means the
 | ||
| decorator registering the function will be run. Your function is now on equal
 | ||
| footing with any of spaCy's built-ins, so you can drop it in instead of any
 | ||
| other model with the same input and output signature. For instance, you could
 | ||
| use it in the tagger model as follows:
 | ||
| 
 | ||
| ```ini
 | ||
| [tagger.model.tok2vec.embed]
 | ||
| @architectures = "my_example.MyEmbedding.v1"
 | ||
| output_width = 128
 | ||
| ```
 | ||
| 
 | ||
| Now that you have a custom function wired into the network, you can start
 | ||
| implementing the logic you're interested in. For example, let's say you want to
 | ||
| try a relatively simple embedding strategy that makes use of static word
 | ||
| vectors, but combines them via summation with a smaller table of learned
 | ||
| embeddings.
 | ||
| 
 | ||
| ```python
 | ||
| from thinc.api import add, chain, remap_ids, Embed
 | ||
| from spacy.ml.staticvectors import StaticVectors
 | ||
| from spacy.ml.featureextractor import FeatureExtractor
 | ||
| from spacy.util import registry
 | ||
| 
 | ||
| @registry.architectures("my_example.MyEmbedding.v1")
 | ||
| def MyCustomVectors(
 | ||
|     output_width: int,
 | ||
|     vector_width: int,
 | ||
|     embed_rows: int,
 | ||
|     key2row: Dict[int, int]
 | ||
| ) -> Model[List[Doc], List[Floats2d]]:
 | ||
|     return add(
 | ||
|         StaticVectors(nO=output_width),
 | ||
|         chain(
 | ||
|            FeatureExtractor(["ORTH"]),
 | ||
|            remap_ids(key2row),
 | ||
|            Embed(nO=output_width, nV=embed_rows)
 | ||
|         )
 | ||
|     )
 | ||
| ```
 | ||
| 
 | ||
| ## Pretraining {id="pretraining"}
 | ||
| 
 | ||
| The [`spacy pretrain`](/api/cli#pretrain) command lets you initialize your
 | ||
| models with **information from raw text**. Without pretraining, the models for
 | ||
| your components will usually be initialized randomly. The idea behind
 | ||
| pretraining is simple: random probably isn't optimal, so if we have some text to
 | ||
| learn from, we can probably find a way to get the model off to a better start.
 | ||
| 
 | ||
| Pretraining uses the same [`config.cfg`](/usage/training#config) file as the
 | ||
| regular training, which helps keep the settings and hyperparameters consistent.
 | ||
| The additional `[pretraining]` section has several configuration subsections
 | ||
| that are familiar from the training block: the `[pretraining.batcher]`,
 | ||
| `[pretraining.optimizer]` and `[pretraining.corpus]` all work the same way and
 | ||
| expect the same types of objects, although for pretraining your corpus does not
 | ||
| need to have any annotations, so you will often use a different reader, such as
 | ||
| the [`JsonlCorpus`](/api/top-level#jsonlcorpus).
 | ||
| 
 | ||
| > #### Raw text format
 | ||
| >
 | ||
| > The raw text can be provided in spaCy's
 | ||
| > [binary `.spacy` format](/api/data-formats#training) consisting of serialized
 | ||
| > `Doc` objects or as a JSONL (newline-delimited JSON) with a key `"text"` per
 | ||
| > entry. This allows the data to be read in line by line, while also allowing
 | ||
| > you to include newlines in the texts.
 | ||
| >
 | ||
| > ```json
 | ||
| > {"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."}
 | ||
| > ```
 | ||
| >
 | ||
| > You can also use your own custom corpus loader instead.
 | ||
| 
 | ||
| You can add a `[pretraining]` block to your config by setting the
 | ||
| `--pretraining` flag on [`init config`](/api/cli#init-config) or
 | ||
| [`init fill-config`](/api/cli#init-fill-config):
 | ||
| 
 | ||
| ```bash
 | ||
| $ python -m spacy init fill-config config.cfg config_pretrain.cfg --pretraining
 | ||
| ```
 | ||
| 
 | ||
| You can then run [`spacy pretrain`](/api/cli#pretrain) with the updated config
 | ||
| and pass in optional config overrides, like the path to the raw text file:
 | ||
| 
 | ||
| ```bash
 | ||
| $ python -m spacy pretrain config_pretrain.cfg ./output --paths.raw_text text.jsonl
 | ||
| ```
 | ||
| 
 | ||
| The following defaults are used for the `[pretraining]` block and merged into
 | ||
| your existing config when you run [`init config`](/api/cli#init-config) or
 | ||
| [`init fill-config`](/api/cli#init-fill-config) with `--pretraining`. If needed,
 | ||
| you can [configure](#pretraining-configure) the settings and hyperparameters or
 | ||
| change the [objective](#pretraining-objectives).
 | ||
| 
 | ||
| ```ini
 | ||
| %%GITHUB_SPACY/spacy/default_config_pretraining.cfg
 | ||
| ```
 | ||
| 
 | ||
| ### How pretraining works {id="pretraining-details"}
 | ||
| 
 | ||
| The impact of [`spacy pretrain`](/api/cli#pretrain) varies, but it will usually
 | ||
| be worth trying if you're **not using a transformer** model and you have
 | ||
| **relatively little training data** (for instance, fewer than 5,000 sentences).
 | ||
| A good rule of thumb is that pretraining will generally give you a similar
 | ||
| accuracy improvement to using word vectors in your model. If word vectors have
 | ||
| given you a 10% error reduction, pretraining with spaCy might give you another
 | ||
| 10%, for a 20% error reduction in total.
 | ||
| 
 | ||
| The [`spacy pretrain`](/api/cli#pretrain) command will take a **specific
 | ||
| subnetwork** within one of your components, and add additional layers to build a
 | ||
| network for a temporary task that forces the model to learn something about
 | ||
| sentence structure and word cooccurrence statistics.
 | ||
| 
 | ||
| Pretraining produces a **binary weights file** that can be loaded back in at the
 | ||
| start of training, using the configuration option `initialize.init_tok2vec`. The
 | ||
| weights file specifies an initial set of weights. Training then proceeds as
 | ||
| normal.
 | ||
| 
 | ||
| You can only pretrain one subnetwork from your pipeline at a time, and the
 | ||
| subnetwork must be typed ~~Model[List[Doc], List[Floats2d]]~~ (i.e. it has to be
 | ||
| a "tok2vec" layer). The most common workflow is to use the
 | ||
| [`Tok2Vec`](/api/tok2vec) component to create a shared token-to-vector layer for
 | ||
| several components of your pipeline, and apply pretraining to its whole model.
 | ||
| 
 | ||
| #### Configuring the pretraining {id="pretraining-configure"}
 | ||
| 
 | ||
| The [`spacy pretrain`](/api/cli#pretrain) command is configured using the
 | ||
| `[pretraining]` section of your [config file](/usage/training#config). The
 | ||
| `component` and `layer` settings tell spaCy how to **find the subnetwork** to
 | ||
| pretrain. The `layer` setting should be either the empty string (to use the
 | ||
| whole model), or a
 | ||
| [node reference](https://thinc.ai/docs/usage-models#model-state). Most of
 | ||
| spaCy's built-in model architectures have a reference named `"tok2vec"` that
 | ||
| will refer to the right layer.
 | ||
| 
 | ||
| ```ini {title="config.cfg"}
 | ||
| # 1. Use the whole model of the "tok2vec" component
 | ||
| [pretraining]
 | ||
| component = "tok2vec"
 | ||
| layer = ""
 | ||
| 
 | ||
| # 2. Pretrain the "tok2vec" node of the "textcat" component
 | ||
| [pretraining]
 | ||
| component = "textcat"
 | ||
| layer = "tok2vec"
 | ||
| ```
 | ||
| 
 | ||
| #### Connecting pretraining to training {id="pretraining-training"}
 | ||
| 
 | ||
| To benefit from pretraining, your training step needs to know to initialize its
 | ||
| `tok2vec` component with the weights learned from the pretraining step. You do
 | ||
| this by setting `initialize.init_tok2vec` to the filename of the `.bin` file
 | ||
| that you want to use from pretraining.
 | ||
| 
 | ||
| A pretraining step that runs for 5 epochs with an output path of `pretrain/`, as
 | ||
| an example, produces `pretrain/model0.bin` through `pretrain/model4.bin` plus a
 | ||
| copy of the last iteration as `pretrain/model-last.bin`. Additionally, you can
 | ||
| configure `n_save_epoch` to tell pretraining in which epoch interval it should
 | ||
| save the current training progress. To use the final output to initialize your
 | ||
| `tok2vec` layer, you could fill in this value in your config file:
 | ||
| 
 | ||
| ```ini {title="config.cfg"}
 | ||
| 
 | ||
| [paths]
 | ||
| init_tok2vec = "pretrain/model-last.bin"
 | ||
| 
 | ||
| [initialize]
 | ||
| init_tok2vec = ${paths.init_tok2vec}
 | ||
| ```
 | ||
| 
 | ||
| <Infobox variant="warning">
 | ||
| 
 | ||
| The outputs of `spacy pretrain` are not the same data format as the pre-packaged
 | ||
| static word vectors that would go into
 | ||
| [`initialize.vectors`](/api/data-formats#config-initialize). The pretraining
 | ||
| output consists of the weights that the `tok2vec` component should start with in
 | ||
| an existing pipeline, so it goes in `initialize.init_tok2vec`.
 | ||
| 
 | ||
| </Infobox>
 | ||
| 
 | ||
| #### Pretraining objectives {id="pretraining-objectives"}
 | ||
| 
 | ||
| > ```ini
 | ||
| > ### Characters objective
 | ||
| > [pretraining.objective]
 | ||
| > @architectures = "spacy.PretrainCharacters.v1"
 | ||
| > maxout_pieces = 3
 | ||
| > hidden_size = 300
 | ||
| > n_characters = 4
 | ||
| > ```
 | ||
| >
 | ||
| > ```ini
 | ||
| > ### Vectors objective
 | ||
| > [pretraining.objective]
 | ||
| > @architectures = "spacy.PretrainVectors.v1"
 | ||
| > maxout_pieces = 3
 | ||
| > hidden_size = 300
 | ||
| > loss = "cosine"
 | ||
| > ```
 | ||
| 
 | ||
| Two pretraining objectives are available, both of which are variants of the
 | ||
| cloze task [Devlin et al. (2018)](https://arxiv.org/abs/1810.04805) introduced
 | ||
| for BERT. The objective can be defined and configured via the
 | ||
| `[pretraining.objective]` config block.
 | ||
| 
 | ||
| - [`PretrainCharacters`](/api/architectures#pretrain_chars): The `"characters"`
 | ||
|   objective asks the model to predict some number of leading and trailing UTF-8
 | ||
|   bytes for the words. For instance, setting `n_characters = 2`, the model will
 | ||
|   try to predict the first two and last two characters of the word.
 | ||
| 
 | ||
| - [`PretrainVectors`](/api/architectures#pretrain_vectors): The `"vectors"`
 | ||
|   objective asks the model to predict the word's vector, from a static
 | ||
|   embeddings table. This requires a word vectors model to be trained and loaded.
 | ||
|   The vectors objective can optimize either a cosine or an L2 loss. We've
 | ||
|   generally found cosine loss to perform better.
 | ||
| 
 | ||
| These pretraining objectives use a trick that we term **language modelling with
 | ||
| approximate outputs (LMAO)**. The motivation for the trick is that predicting an
 | ||
| exact word ID introduces a lot of incidental complexity. You need a large output
 | ||
| layer, and even then, the vocabulary is too large, which motivates tokenization
 | ||
| schemes that do not align to actual word boundaries. At the end of training, the
 | ||
| output layer will be thrown away regardless: we just want a task that forces the
 | ||
| network to model something about word cooccurrence statistics. Predicting
 | ||
| leading and trailing characters does that more than adequately, as the exact
 | ||
| word sequence could be recovered with high accuracy if the initial and trailing
 | ||
| characters are predicted accurately. With the vectors objective, the pretraining
 | ||
| uses the embedding space learned by an algorithm such as
 | ||
| [GloVe](https://nlp.stanford.edu/projects/glove/) or
 | ||
| [Word2vec](https://code.google.com/archive/p/word2vec/), allowing the model to
 | ||
| focus on the contextual modelling we actual care about.
 |