--- title: Layers and Model Architectures teaser: Power spaCy components with custom neural networks menu: - ['Type Signatures', 'type-sigs'] - ['Swapping Architectures', 'swap-architectures'] - ['PyTorch & TensorFlow', 'frameworks'] - ['Thinc Models', 'thinc'] - ['Trainable Components', 'components'] next: /usage/projects --- > #### Example > > ```python > from thinc.api import Model, chain > > @spacy.registry.architectures.register("model.v1") > def build_model(width: int, classes: int) -> Model: > tok2vec = build_tok2vec(width) > output_layer = build_output_layer(width, classes) > model = chain(tok2vec, output_layer) > return model > ``` A **model architecture** is a function that wires up a [Thinc `Model`](https://thinc.ai/docs/api-model) instance. It describes the neural network that is run internally as part of a component in a spaCy pipeline. To define the actual architecture, you can implement your logic in Thinc directly, or you can use Thinc as a thin wrapper around frameworks such as PyTorch, TensorFlow and MXNet. Each Model can also be used as a sublayer of a larger network, allowing you to freely combine implementations from different frameworks into one `Thinc` Model. spaCy's built-in components require a `Model` instance to be passed to them via the config system. To change the model architecture of an existing component, you just need to [**update the config**](#swap-architectures) so that it refers to a different registered function. Once the component has been created from this config, you won't be able to change it anymore. The architecture is like a recipe for the network, and you can't change the recipe once the dish has already been prepared. You have to make a new one. ```ini ### config.cfg (excerpt) [components.tagger] factory = "tagger" [components.tagger.model] @architectures = "model.v1" width = 512 classes = 16 ``` ## Type signatures {#type-sigs} > #### Example > > ```python > from typing import List > from thinc.api import Model, chain > from thinc.types import Floats2d > def chain_model( > tok2vec: Model[List[Doc], List[Floats2d]], > layer1: Model[List[Floats2d], Floats2d], > layer2: Model[Floats2d, Floats2d] > ) -> Model[List[Doc], Floats2d]: > model = chain(tok2vec, layer1, layer2) > return model > ``` The Thinc `Model` class is a **generic type** that can specify its input and output types. Python uses a square-bracket notation for this, so the type ~~Model[List, Dict]~~ says that each batch of inputs to the model will be a list, and the outputs will be a dictionary. You can be even more specific and write for instance~~Model[List[Doc], Dict[str, float]]~~ to specify that the model expects a list of [`Doc`](/api/doc) objects as input, and returns a dictionary mapping of strings to floats. Some of the most common types you'll see are: ​ | Type | Description | | ------------------ | ---------------------------------------------------------------------------------------------------- | | ~~List[Doc]~~ | A batch of [`Doc`](/api/doc) objects. Most components expect their models to take this as input. | | ~~Floats2d~~ | A two-dimensional `numpy` or `cupy` array of floats. Usually 32-bit. | | ~~Ints2d~~ | A two-dimensional `numpy` or `cupy` array of integers. Common dtypes include uint64, int32 and int8. | | ~~List[Floats2d]~~ | A list of two-dimensional arrays, generally with one array per `Doc` and one row per token. | | ~~Ragged~~ | A container to handle variable-length sequence data in an unpadded contiguous array. | | ~~Padded~~ | A container to handle variable-length sequence data in a padded contiguous array. | The model type signatures help you figure out which model architectures and components can **fit together**. For instance, the [`TextCategorizer`](/api/textcategorizer) class expects a model typed ~~Model[List[Doc], Floats2d]~~, because the model will predict one row of category probabilities per [`Doc`](/api/doc). In contrast, the [`Tagger`](/api/tagger) class expects a model typed ~~Model[List[Doc], List[Floats2d]]~~, because it needs to predict one row of probabilities per token. There's no guarantee that two models with the same type signature can be used interchangeably. There are many other ways they could be incompatible. However, if the types don't match, they almost surely _won't_ be compatible. This little bit of validation goes a long way, especially if you [configure your editor](https://thinc.ai/docs/usage-type-checking) or other tools to highlight these errors early. The config file is also validated at the beginning of training, to verify that all the types match correctly. If you're using a modern editor like Visual Studio Code, you can [set up `mypy`](https://thinc.ai/docs/usage-type-checking#install) with the custom Thinc plugin and get live feedback about mismatched types as you write code. [![](../images/thinc_mypy.jpg)](https://thinc.ai/docs/usage-type-checking#linting) ## Swapping model architectures {#swap-architectures} If no model is specified for the [`TextCategorizer`](/api/textcategorizer), the [TextCatEnsemble](/api/architectures#TextCatEnsemble) architecture is used by default. This architecture combines a simple bag-of-words model with a neural network, usually resulting in the most accurate results, but at the cost of speed. The config file for this model would look something like this: ```ini ### config.cfg (excerpt) [components.textcat] factory = "textcat" labels = [] [components.textcat.model] @architectures = "spacy.TextCatEnsemble.v1" exclusive_classes = false pretrained_vectors = null width = 64 conv_depth = 2 embed_size = 2000 window_size = 1 ngram_size = 1 dropout = 0 nO = null ``` spaCy has two additional built-in `textcat` architectures, and you can easily use those by swapping out the definition of the textcat's model. For instance, to use the simple and fast bag-of-words model [TextCatBOW](/api/architectures#TextCatBOW), you can change the config to: ```ini ### config.cfg (excerpt) {highlight="6-10"} [components.textcat] factory = "textcat" labels = [] [components.textcat.model] @architectures = "spacy.TextCatBOW.v1" exclusive_classes = false ngram_size = 1 no_output_layer = false nO = null ``` For details on all pre-defined architectures shipped with spaCy and how to configure them, check out the [model architectures](/api/architectures) documentation. ### Defining sublayers {#sublayers} Model architecture functions often accept **sublayers as arguments**, so that you can try **substituting a different layer** into the network. Depending on how the architecture function is structured, you might be able to define your network structure entirely through the [config system](/usage/training#config), using layers that have already been defined. ​ In most neural network models for NLP, the most important parts of the network are what we refer to as the [embed and encode](https://explosion.ai/blog/deep-learning-formula-nlp) steps. These steps together compute dense, context-sensitive representations of the tokens, and their combination forms a typical [`Tok2Vec`](/api/architectures#Tok2Vec) layer: ```ini ### config.cfg (excerpt) [components.tok2vec] factory = "tok2vec" [components.tok2vec.model] @architectures = "spacy.Tok2Vec.v1" [components.tok2vec.model.embed] @architectures = "spacy.MultiHashEmbed.v1" # ... [components.tok2vec.model.encode] @architectures = "spacy.MaxoutWindowEncoder.v1" # ... ``` By defining these sublayers specifically, it becomes straightforward to swap out a sublayer for another one, for instance changing the first sublayer to a character embedding with the [CharacterEmbed](/api/architectures#CharacterEmbed) architecture: ```ini ### config.cfg (excerpt) [components.tok2vec.model.embed] @architectures = "spacy.CharacterEmbed.v1" # ... [components.tok2vec.model.encode] @architectures = "spacy.MaxoutWindowEncoder.v1" # ... ``` Most of spaCy's default architectures accept a `tok2vec` layer as a sublayer within the larger task-specific neural network. This makes it easy to **switch between** transformer, CNN, BiLSTM or other feature extraction approaches. The [transformers documentation](/usage/embeddings-transformers#training-custom-model) section shows an example of swapping out a model's standard `tok2vec` layer with a transformer. And if you want to define your own solution, all you need to do is register a ~~Model[List[Doc], List[Floats2d]]~~ architecture function, and you'll be able to try it out in any of the spaCy components. ​ ## Wrapping PyTorch, TensorFlow and other frameworks {#frameworks} Thinc allows you to [wrap models](https://thinc.ai/docs/usage-frameworks) written in other machine learning frameworks like PyTorch, TensorFlow and MXNet using a unified [`Model`](https://thinc.ai/docs/api-model) API. For example, let's use Pytorch to define a very simple Neural network consisting of two hidden `Linear` layers with `ReLU` activation and dropout, and a softmax-activated output layer. ```python from torch import nn torch_model = nn.Sequential( nn.Linear(width, hidden_width), nn.ReLU(), nn.Dropout2d(dropout), nn.Linear(hidden_width, nO), nn.ReLU(), nn.Dropout2d(dropout), nn.Softmax(dim=1) ) ``` This PyTorch model can be wrapped as a Thinc `Model` by using Thinc's `PyTorchWrapper`: ```python from thinc.api import PyTorchWrapper wrapped_pt_model = PyTorchWrapper(torch_model) ``` The resulting wrapped `Model` can be used as a **custom architecture** as such, or can be a **subcomponent of a larger model**. For instance, we can use Thinc's [`chain`](https://thinc.ai/docs/api-layers#chain) combinator, which works like `Sequential` in PyTorch, to combine the wrapped model with other components in a larger network. This effectively means that you can easily wrap different components from different frameworks, and "glue" them together with Thinc: ```python from thinc.api import chain, with_array from spacy.ml import CharacterEmbed embed = CharacterEmbed(width, embed_size, nM, nC) model = chain(embed, with_array(wrapped_pt_model)) ``` In the above example, we have combined our custom PyTorch model with a character embedding layer defined by spaCy. [CharacterEmbed](/api/architectures#CharacterEmbed) returns a `Model` that takes a `List[Doc]` as input, and outputs a `List[Floats2d]`. To make sure that the wrapped Pytorch model receives valid inputs, we use Thinc's [`with_array`](https://thinc.ai/docs/api-layers#with_array) helper. As another example, you could have a model where you use PyTorch just for the transformer layers, and use "native" Thinc layers to do fiddly input and output transformations and add on task-specific "heads", as efficiency is less of a consideration for those parts of the network. ## Implementing models in Thinc {#thinc} ## Models for trainable components {#components} ![Diagram of a pipeline component with its model](../images/layers-architectures.svg) ```python def update(self, examples): docs = [ex.predicted for ex in examples] refs = [ex.reference for ex in examples] predictions, backprop = self.model.begin_update(docs) gradient = self.get_loss(predictions, refs) backprop(gradient) def __call__(self, doc): predictions = self.model([doc]) self.set_annotations(predictions) ```