mirror of
https://github.com/explosion/spaCy.git
synced 2024-11-11 12:18:04 +03:00
857 lines
39 KiB
Markdown
857 lines
39 KiB
Markdown
---
|
||
title: Training Models
|
||
next: /usage/projects
|
||
menu:
|
||
- ['Introduction', 'basics']
|
||
- ['Quickstart', 'quickstart']
|
||
- ['Config System', 'config']
|
||
- ['Custom Models', 'custom-models']
|
||
- ['Transfer Learning', 'transfer-learning']
|
||
- ['Parallel Training', 'parallel-training']
|
||
- ['Internal API', 'api']
|
||
---
|
||
|
||
## Introduction to training models {#basics hidden="true"}
|
||
|
||
import Training101 from 'usage/101/\_training.md'
|
||
|
||
<Training101 />
|
||
|
||
<Infobox title="Tip: Try the Prodigy annotation tool">
|
||
|
||
[![Prodigy: Radically efficient machine teaching](../images/prodigy.jpg)](https://prodi.gy)
|
||
|
||
If you need to label a lot of data, check out [Prodigy](https://prodi.gy), a
|
||
new, active learning-powered annotation tool we've developed. Prodigy is fast
|
||
and extensible, and comes with a modern **web application** that helps you
|
||
collect training data faster. It integrates seamlessly with spaCy, pre-selects
|
||
the **most relevant examples** for annotation, and lets you train and evaluate
|
||
ready-to-use spaCy models.
|
||
|
||
</Infobox>
|
||
|
||
## Quickstart {#quickstart tag="new"}
|
||
|
||
The recommended way to train your spaCy models is via the
|
||
[`spacy train`](/api/cli#train) command on the command line. It only needs a
|
||
single [`config.cfg`](#config) **configuration file** that includes all settings
|
||
and hyperparameters. You can optionally [overwritten](#config-overrides)
|
||
settings on the command line, and load in a Python file to register
|
||
[custom functions](#custom-code) and architectures. This quickstart widget helps
|
||
you generate a starter config with the **recommended settings** for your
|
||
specific use case. It's also available in spaCy as the
|
||
[`init config`](/api/cli#init-config) command.
|
||
|
||
> #### Instructions: widget
|
||
>
|
||
> 1. Select your requirements and settings.
|
||
> 2. Use the buttons at the bottom to save the result to your clipboard or a
|
||
> file `base_config.cfg`.
|
||
> 3. Run [`init fill-config`](/api/cli#init-fill-config) to create a full
|
||
> config.
|
||
> 4. Run [`train`](/api/cli#train) with your config and data.
|
||
>
|
||
> #### Instructions: CLI
|
||
>
|
||
> 1. Run the [`init config`](/api/cli#init-config) command and specify your
|
||
> requirements and settings as CLI arguments.
|
||
> 2. Run [`train`](/api/cli#train) with the exported config and data.
|
||
|
||
import QuickstartTraining from 'widgets/quickstart-training.js'
|
||
|
||
<QuickstartTraining download="base_config.cfg" />
|
||
|
||
After you've saved the starter config to a file `base_config.cfg`, you can use
|
||
the [`init fill-config`](/api/cli#init-fill-config) command to fill in the
|
||
remaining defaults. Training configs should always be **complete and without
|
||
hidden defaults**, to keep your experiments reproducible.
|
||
|
||
```cli
|
||
$ python -m spacy init fill-config base_config.cfg config.cfg
|
||
```
|
||
|
||
> #### Tip: Debug your data
|
||
>
|
||
> The [`debug data` command](/api/cli#debug-data) lets you analyze and validate
|
||
> your training and development data, get useful stats, and find problems like
|
||
> invalid entity annotations, cyclic dependencies, low data labels and more.
|
||
>
|
||
> ```cli
|
||
> $ python -m spacy debug data config.cfg
|
||
> ```
|
||
|
||
Instead of exporting your starter config from the quickstart widget and
|
||
auto-filling it, you can also use the [`init config`](/api/cli#init-config)
|
||
command and specify your requirement and settings and CLI arguments. You can now
|
||
add your data and run [`train`](/api/cli#train) with your config. See the
|
||
[`convert`](/api/cli#convert) command for details on how to convert your data to
|
||
spaCy's binary `.spacy` format. You can either include the data paths in the
|
||
`[paths]` section of your config, or pass them in via the command line.
|
||
|
||
```cli
|
||
$ python -m spacy train config.cfg --output ./output --paths.train ./train.spacy --paths.dev ./dev.spacy
|
||
```
|
||
|
||
<Project id="some_example_project">
|
||
|
||
The easiest way to get started with an end-to-end training process is to clone a
|
||
[project](/usage/projects) template. Projects let you manage multi-step
|
||
workflows, from data preprocessing to training and packaging your model.
|
||
|
||
</Project>
|
||
|
||
## Training config {#config}
|
||
|
||
> #### Migration from spaCy v2.x
|
||
>
|
||
> TODO: once we have an answer for how to update the training command
|
||
> (`spacy migrate`?), add details here
|
||
|
||
Training config files include all **settings and hyperparameters** for training
|
||
your model. Instead of providing lots of arguments on the command line, you only
|
||
need to pass your `config.cfg` file to [`spacy train`](/api/cli#train). Under
|
||
the hood, the training config uses the
|
||
[configuration system](https://thinc.ai/docs/usage-config) provided by our
|
||
machine learning library [Thinc](https://thinc.ai). This also makes it easy to
|
||
integrate custom models and architectures, written in your framework of choice.
|
||
Some of the main advantages and features of spaCy's training config are:
|
||
|
||
- **Structured sections.** The config is grouped into sections, and nested
|
||
sections are defined using the `.` notation. For example, `[components.ner]`
|
||
defines the settings for the pipeline's named entity recognizer. The config
|
||
can be loaded as a Python dict.
|
||
- **References to registered functions.** Sections can refer to registered
|
||
functions like [model architectures](/api/architectures),
|
||
[optimizers](https://thinc.ai/docs/api-optimizers) or
|
||
[schedules](https://thinc.ai/docs/api-schedules) and define arguments that are
|
||
passed into them. You can also register your own functions to define
|
||
[custom architectures](#custom-models), reference them in your config and
|
||
tweak their parameters.
|
||
- **Interpolation.** If you have hyperparameters or other settings used by
|
||
multiple components, define them once and reference them as
|
||
[variables](#config-interpolation).
|
||
- **Reproducibility with no hidden defaults.** The config file is the "single
|
||
source of truth" and includes all settings.
|
||
- **Automated checks and validation.** When you load a config, spaCy checks if
|
||
the settings are complete and if all values have the correct types. This lets
|
||
you catch potential mistakes early. In your custom architectures, you can use
|
||
Python [type hints](https://docs.python.org/3/library/typing.html) to tell the
|
||
config which types of data to expect.
|
||
|
||
```ini
|
||
https://github.com/explosion/spaCy/blob/develop/spacy/default_config.cfg
|
||
```
|
||
|
||
Under the hood, the config is parsed into a dictionary. It's divided into
|
||
sections and subsections, indicated by the square brackets and dot notation. For
|
||
example, `[training]` is a section and `[training.batch_size]` a subsections.
|
||
Subsections can define values, just like a dictionary, or use the `@` syntax to
|
||
refer to [registered functions](#config-functions). This allows the config to
|
||
not just define static settings, but also construct objects like architectures,
|
||
schedules, optimizers or any other custom components. The main top-level
|
||
sections of a config file are:
|
||
|
||
| Section | Description |
|
||
| ------------- | --------------------------------------------------------------------------------------------------------------------------------------------------------------- |
|
||
| `nlp` | Definition of the `nlp` object, its tokenizer and [processing pipeline](/usage/processing-pipelines) component names. |
|
||
| `components` | Definitions of the [pipeline components](/usage/processing-pipelines) and their models. |
|
||
| `paths` | Paths to data and other assets. Re-used across the config as variables, e.g. `${paths:train}`, and can be [overwritten](#config-overrides) on the CLI. |
|
||
| `system` | Settings related to system and hardware. Re-used across the config as variables, e.g. `${system.seed}`, and can be [overwritten](#config-overrides) on the CLI. |
|
||
| `training` | Settings and controls for the training and evaluation process. |
|
||
| `pretraining` | Optional settings and controls for the [language model pretraining](#pretraining). |
|
||
|
||
<Infobox title="Config format and settings" emoji="📖">
|
||
|
||
For a full overview of spaCy's config format and settings, see the
|
||
[data format documentation](/api/data-formats#config) and
|
||
[Thinc's config system docs](https://thinc.ai/usage/config). The settings
|
||
available for the different architectures are documented with the
|
||
[model architectures API](/api/architectures). See the Thinc documentation for
|
||
[optimizers](https://thinc.ai/docs/api-optimizers) and
|
||
[schedules](https://thinc.ai/docs/api-schedules).
|
||
|
||
</Infobox>
|
||
|
||
### Overwriting config settings on the command line {#config-overrides}
|
||
|
||
The config system means that you can define all settings **in one place** and in
|
||
a consistent format. There are no command-line arguments that need to be set,
|
||
and no hidden defaults. However, there can still be scenarios where you may want
|
||
to override config settings when you run [`spacy train`](/api/cli#train). This
|
||
includes **file paths** to vectors or other resources that shouldn't be
|
||
hard-code in a config file, or **system-dependent settings**.
|
||
|
||
For cases like this, you can set additional command-line options starting with
|
||
`--` that correspond to the config section and value to override. For example,
|
||
`--paths.train ./corpus/train.spacy` sets the `train` value in the `[paths]`
|
||
block.
|
||
|
||
```cli
|
||
$ python -m spacy train config.cfg --paths.train ./corpus/train.spacy --paths.dev ./corpus/dev.spacy --training.batch_size 128
|
||
```
|
||
|
||
Only existing sections and values in the config can be overwritten. At the end
|
||
of the training, the final filled `config.cfg` is exported with your model, so
|
||
you'll always have a record of the settings that were used, including your
|
||
overrides. Overrides are added before [variables](#config-interpolation) are
|
||
resolved, by the way – so if you need to use a value in multiple places,
|
||
reference it across your config and override it on the CLI once.
|
||
|
||
### Defining pipeline components {#config-components}
|
||
|
||
When you train a model, you typically train a
|
||
[pipeline](/usage/processing-pipelines) of **one or more components**. The
|
||
`[components]` block in the config defines the available pipeline components and
|
||
how they should be created – either by a built-in or custom
|
||
[factory](/usage/processing-pipelines#built-in), or
|
||
[sourced](/usage/processing-pipelines#sourced-components) from an existing
|
||
pretrained model. For example, `[components.parser]` defines the component named
|
||
`"parser"` in the pipeline. There are different ways you might want to treat
|
||
your components during training, and the most common scenarios are:
|
||
|
||
1. Train a **new component** from scratch on your data.
|
||
2. Update an existing **pretrained component** with more examples.
|
||
3. Include an existing pretrained component without updating it.
|
||
4. Include a non-trainable component, like a rule-based
|
||
[`EntityRuler`](/api/entityruler) or [`Sentencizer`](/api/sentencizer), or a
|
||
fully [custom component](/usage/processing-pipelines#custom-components).
|
||
|
||
If a component block defines a `factory`, spaCy will look it up in the
|
||
[built-in](/usage/processing-pipelines#built-in) or
|
||
[custom](/usage/processing-pipelines#custom-components) components and create a
|
||
new component from scratch. All settings defined in the config block will be
|
||
passed to the component factory as arguments. This lets you configure the model
|
||
settings and hyperparameters. If a component block defines a `source`, the
|
||
component will be copied over from an existing pretrained model, with its
|
||
existing weights. This lets you include an already trained component in your
|
||
model pipeline, or update a pretrained components with more data specific to
|
||
your use case.
|
||
|
||
```ini
|
||
### config.cfg (excerpt)
|
||
[components]
|
||
|
||
# "parser" and "ner" are sourced from pretrained model
|
||
[components.parser]
|
||
source = "en_core_web_sm"
|
||
|
||
[components.ner]
|
||
source = "en_core_web_sm"
|
||
|
||
# "textcat" and "custom" are created blank from built-in / custom factory
|
||
[components.textcat]
|
||
factory = "textcat"
|
||
|
||
[components.custom]
|
||
factory = "your_custom_factory"
|
||
your_custom_setting = true
|
||
```
|
||
|
||
The `pipeline` setting in the `[nlp]` block defines the pipeline components
|
||
added to the pipeline, in order. For example, `"parser"` here references
|
||
`[components.parser]`. By default, spaCy will **update all components that can
|
||
be updated**. Trainable components that are created from scratch are initialized
|
||
with random weights. For sourced components, spaCy will keep the existing
|
||
weights and [resume training](/api/language#resume_training).
|
||
|
||
If you don't want a component to be updated, you can **freeze** it by adding it
|
||
to the `frozen_components` list in the `[training]` block. Frozen components are
|
||
**not updated** during training and are included in the final trained model
|
||
as-is.
|
||
|
||
> #### Note on frozen components
|
||
>
|
||
> Even though frozen components are not **updated** during training, they will
|
||
> still **run** during training and evaluation. This is very important, because
|
||
> they may still impact your model's performance – for instance, a sentence
|
||
> boundary detector can impact what the parser or entity recognizer considers a
|
||
> valid parse. So the evaluation results should always reflect what your model
|
||
> will produce at runtime.
|
||
|
||
```ini
|
||
[nlp]
|
||
lang = "en"
|
||
pipeline = ["parser", "ner", "textcat", "custom"]
|
||
|
||
[training]
|
||
frozen_components = ["parser", "custom"]
|
||
```
|
||
|
||
### Using registered functions {#config-functions}
|
||
|
||
The training configuration defined in the config file doesn't have to only
|
||
consist of static values. Some settings can also be **functions**. For instance,
|
||
the `batch_size` can be a number that doesn't change, or a schedule, like a
|
||
sequence of compounding values, which has shown to be an effective trick (see
|
||
[Smith et al., 2017](https://arxiv.org/abs/1711.00489)).
|
||
|
||
```ini
|
||
### With static value
|
||
[training]
|
||
batch_size = 128
|
||
```
|
||
|
||
To refer to a function instead, you can make `[training.batch_size]` its own
|
||
section and use the `@` syntax specify the function and its arguments – in this
|
||
case [`compounding.v1`](https://thinc.ai/docs/api-schedules#compounding) defined
|
||
in the [function registry](/api/top-level#registry). All other values defined in
|
||
the block are passed to the function as keyword arguments when it's initialized.
|
||
You can also use this mechanism to register
|
||
[custom implementations and architectures](#custom-models) and reference them
|
||
from your configs.
|
||
|
||
> #### How the config is resolved
|
||
>
|
||
> The config file is parsed into a regular dictionary and is resolved and
|
||
> validated **bottom-up**. Arguments provided for registered functions are
|
||
> checked against the function's signature and type annotations. The return
|
||
> value of a registered function can also be passed into another function – for
|
||
> instance, a learning rate schedule can be provided as the an argument of an
|
||
> optimizer.
|
||
|
||
```ini
|
||
### With registered function
|
||
[training.batch_size]
|
||
@schedules = "compounding.v1"
|
||
start = 100
|
||
stop = 1000
|
||
compound = 1.001
|
||
```
|
||
|
||
### Using variable interpolation {#config-interpolation}
|
||
|
||
Another very useful feature of the config system is that it supports variable
|
||
interpolation for both **values and sections**. This means that you only need to
|
||
define a setting once and can reference it across your config using the
|
||
`${section:value}` or `${section.block}` syntax. In this example, the value of
|
||
`seed` is reused within the `[training]` block, and the whole block of
|
||
`[training.optimizer]` is reused in `[pretraining]` and will become
|
||
`pretraining.optimizer`.
|
||
|
||
> #### Note on syntax
|
||
>
|
||
> There are two different ways to format your variables, depending on whether
|
||
> you want to reference a single value or a block. Values are specified after a
|
||
> `:`, while blocks are specified with a `.`:
|
||
>
|
||
> 1. `${section:value}`, `${section.subsection:value}`
|
||
> 2. `${section.block}`, `${section.subsection.block}`
|
||
|
||
```ini
|
||
### config.cfg (excerpt) {highlight="5,18"}
|
||
[system]
|
||
seed = 0
|
||
|
||
[training]
|
||
seed = ${system:seed}
|
||
|
||
[training.optimizer]
|
||
@optimizers = "Adam.v1"
|
||
beta1 = 0.9
|
||
beta2 = 0.999
|
||
L2_is_weight_decay = true
|
||
L2 = 0.01
|
||
grad_clip = 1.0
|
||
use_averages = false
|
||
eps = 1e-8
|
||
|
||
[pretraining]
|
||
optimizer = ${training.optimizer}
|
||
```
|
||
|
||
You can also use variables inside strings. In that case, it works just like
|
||
f-strings in Python. If the value of a variable is not a string, it's converted
|
||
to a string.
|
||
|
||
```ini
|
||
[paths]
|
||
version = 5
|
||
root = "/Users/you/data"
|
||
train = "${paths:root}/train_${paths:version}.spacy"
|
||
# Result: /Users/you/data/train_5.spacy
|
||
```
|
||
|
||
<Infobox title="Tip: Override variables on the CLI" emoji="💡">
|
||
|
||
If you need to change certain values between training runs, you can define them
|
||
once, reference them as variables and then [override](#config-overrides) them on
|
||
the CLI. For example, `--paths.root /other/root` will change the value of `root`
|
||
in the block `[paths]` and the change will be reflected across all other values
|
||
that reference this variable.
|
||
|
||
</Infobox>
|
||
|
||
### Model architectures {#model-architectures}
|
||
|
||
> #### 💡 Model type annotations
|
||
>
|
||
> In the documentation and code base, you may come across type annotations and
|
||
> descriptions of [Thinc](https://thinc.ai) model types, like ~~Model[List[Doc],
|
||
> List[Floats2d]]~~. This so-called generic type describes the layer and its
|
||
> input and output type – in this case, it takes a list of `Doc` objects as the
|
||
> input and list of 2-dimensional arrays of floats as the output. You can read
|
||
> more about defining Thinc models [here](https://thinc.ai/docs/usage-models).
|
||
> Also see the [type checking](https://thinc.ai/docs/usage-type-checking) for
|
||
> how to enable linting in your editor to see live feedback if your inputs and
|
||
> outputs don't match.
|
||
|
||
A **model architecture** is a function that wires up a Thinc
|
||
[`Model`](https://thinc.ai/docs/api-model) instance, which you can then use in a
|
||
component or as a layer of a larger network. You can use Thinc as a thin
|
||
[wrapper around frameworks](https://thinc.ai/docs/usage-frameworks) such as
|
||
PyTorch, TensorFlow or MXNet, or you can implement your logic in Thinc
|
||
[directly](https://thinc.ai/docs/usage-models).
|
||
|
||
spaCy's built-in components will never construct their `Model` instances
|
||
themselves, so you won't have to subclass the component to change its model
|
||
architecture. You can just **update the config** so that it refers to a
|
||
different registered function. Once the component has been created, its `Model`
|
||
instance has already been assigned, so you cannot change its model architecture.
|
||
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.
|
||
spaCy includes a variety of built-in [architectures](/api/architectures) for
|
||
different tasks. For example:
|
||
|
||
<!-- TODO: -->
|
||
|
||
| Architecture | Description |
|
||
| ----------------------------------------------- | ---------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
|
||
| [HashEmbedCNN](/api/architectures#HashEmbedCNN) | Build spaCy’s “standard” embedding layer, which uses hash embedding with subword features and a CNN with layer-normalized maxout. ~~Model[List[Doc], List[Floats2d]]~~ |
|
||
|
||
### Metrics, training output and weighted scores {#metrics}
|
||
|
||
When you train a model using the [`spacy train`](/api/cli#train) command, you'll
|
||
see a table showing the metrics after each pass over the data. The available
|
||
metrics **depend on the pipeline components**. Pipeline components also define
|
||
which scores are shown and how they should be **weighted in the final score**
|
||
that decides about the best model.
|
||
|
||
The `training.score_weights` setting in your `config.cfg` lets you customize the
|
||
scores shown in the table and how they should be weighted. In this example, the
|
||
labeled dependency accuracy and NER F-score count towards the final score with
|
||
40% each and the tagging accuracy makes up the remaining 20%. The tokenization
|
||
accuracy and speed are both shown in the table, but not counted towards the
|
||
score.
|
||
|
||
> #### Why do I need score weights?
|
||
>
|
||
> At the end of your training process, you typically want to select the **best
|
||
> model** – but what "best" means depends on the available components and your
|
||
> specific use case. For instance, you may prefer a model with higher NER and
|
||
> lower POS tagging accuracy over a model with lower NER and higher POS
|
||
> accuracy. You can express this preference in the score weights, e.g. by
|
||
> assigning `ents_f` (NER F-score) a higher weight.
|
||
|
||
```ini
|
||
[training.score_weights]
|
||
dep_las = 0.4
|
||
ents_f = 0.4
|
||
tag_acc = 0.2
|
||
token_acc = 0.0
|
||
speed = 0.0
|
||
```
|
||
|
||
The `score_weights` don't _have to_ sum to `1.0` – but it's recommended. When
|
||
you generate a config for a given pipeline, the score weights are generated by
|
||
combining and normalizing the default score weights of the pipeline components.
|
||
The default score weights are defined by each pipeline component via the
|
||
`default_score_weights` setting on the
|
||
[`@Language.component`](/api/language#component) or
|
||
[`@Language.factory`](/api/language#factory). By default, all pipeline
|
||
components are weighted equally.
|
||
|
||
<Accordion title="Understanding the training output and score types" spaced>
|
||
|
||
| Name | Description |
|
||
| -------------------------- | ----------------------------------------------------------------------------------------------------------------------- |
|
||
| **Loss** | The training loss representing the amount of work left for the optimizer. Should decrease, but usually not to `0`. |
|
||
| **Precision** (P) | Percentage of predicted annotations that were correct. Should increase. |
|
||
| **Recall** (R) | Percentage of reference annotations recovered. Should increase. |
|
||
| **F-Score** (F) | Harmonic mean of precision and recall. Should increase. |
|
||
| **UAS** / **LAS** | Unlabeled and labeled attachment score for the dependency parser, i.e. the percentage of correct arcs. Should increase. |
|
||
| **Words per second** (WPS) | Prediction speed in words per second. Should stay stable. |
|
||
|
||
Note that if the development data has raw text, some of the gold-standard
|
||
entities might not align to the predicted tokenization. These tokenization
|
||
errors are **excluded from the NER evaluation**. If your tokenization makes it
|
||
impossible for the model to predict 50% of your entities, your NER F-score might
|
||
still look good.
|
||
|
||
</Accordion>
|
||
|
||
## Custom model implementations and architectures {#custom-models}
|
||
|
||
<!-- TODO: intro, should summarise what spaCy v3 can do and that you can now use fully custom implementations, models defined in PyTorch and TF, etc. etc. -->
|
||
|
||
### Training with custom code {#custom-code}
|
||
|
||
> #### Example
|
||
>
|
||
> ```cli
|
||
> $ python -m spacy train config.cfg --code functions.py
|
||
> ```
|
||
|
||
The [`spacy train`](/api/cli#train) recipe lets you specify an optional argument
|
||
`--code` that points to a Python file. The file is imported before training and
|
||
allows you to add custom functions and architectures to the function registry
|
||
that can then be referenced from your `config.cfg`. This lets you train spaCy
|
||
models with custom components, without having to re-implement the whole training
|
||
workflow.
|
||
|
||
#### Example: Modifying the nlp object {#custom-code-nlp-callbacks}
|
||
|
||
For many use cases, you don't necessarily want to implement the whole `Language`
|
||
subclass and language data from scratch – it's often enough to make a few small
|
||
modifications, like adjusting the
|
||
[tokenization rules](/usage/linguistic-features#native-tokenizer-additions) or
|
||
[language defaults](/api/language#defaults) like stop words. The config lets you
|
||
provide three optional **callback functions** that give you access to the
|
||
language class and `nlp` object at different points of the lifecycle:
|
||
|
||
| Callback | Description |
|
||
| ------------------------- | ---------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
|
||
| `before_creation` | Called before the `nlp` object is created and receives the language subclass like `English` (not the instance). Useful for writing to the [`Language.Defaults`](/api/language#defaults). |
|
||
| `after_creation` | Called right after the `nlp` object is created, but before the pipeline components are added to the pipeline and receives the `nlp` object. Useful for modifying the tokenizer. |
|
||
| `after_pipeline_creation` | Called right after the pipeline components are created and added and receives the `nlp` object. Useful for modifying pipeline components. |
|
||
|
||
The `@spacy.registry.callbacks` decorator lets you register that function in the
|
||
`callbacks` [registry](/api/top-level#registry) under a given name. You can then
|
||
reference the function in a config block using the `@callbacks` key. If a block
|
||
contains a key starting with an `@`, it's interpreted as a reference to a
|
||
function. Because you've registered the function, spaCy knows how to create it
|
||
when you reference `"customize_language_data"` in your config. Here's an example
|
||
of a callback that runs before the `nlp` object is created and adds a few custom
|
||
tokenization rules to the defaults:
|
||
|
||
> #### config.cfg
|
||
>
|
||
> ```ini
|
||
> [nlp.before_creation]
|
||
> @callbacks = "customize_language_data"
|
||
> ```
|
||
|
||
```python
|
||
### functions.py {highlight="3,6"}
|
||
import spacy
|
||
|
||
@spacy.registry.callbacks("customize_language_data")
|
||
def create_callback():
|
||
def customize_language_data(lang_cls):
|
||
lang_cls.Defaults.suffixes = lang_cls.Defaults.suffixes + (r"-+$",)
|
||
return lang_cls
|
||
|
||
return customize_language_data
|
||
```
|
||
|
||
<Infobox variant="warning">
|
||
|
||
Remember that a registered function should always be a function that spaCy
|
||
**calls to create something**. In this case, it **creates a callback** – it's
|
||
not the callback itself.
|
||
|
||
</Infobox>
|
||
|
||
Any registered function – in this case `create_callback` – can also take
|
||
**arguments** that can be **set by the config**. This lets you implement and
|
||
keep track of different configurations, without having to hack at your code. You
|
||
can choose any arguments that make sense for your use case. In this example,
|
||
we're adding the arguments `extra_stop_words` (a list of strings) and `debug`
|
||
(boolean) for printing additional info when the function runs.
|
||
|
||
> #### config.cfg
|
||
>
|
||
> ```ini
|
||
> [nlp.before_creation]
|
||
> @callbacks = "customize_language_data"
|
||
> extra_stop_words = ["ooh", "aah"]
|
||
> debug = true
|
||
> ```
|
||
|
||
```python
|
||
### functions.py {highlight="5,8-10"}
|
||
from typing import List
|
||
import spacy
|
||
|
||
@spacy.registry.callbacks("customize_language_data")
|
||
def create_callback(extra_stop_words: List[str] = [], debug: bool = False):
|
||
def customize_language_data(lang_cls):
|
||
lang_cls.Defaults.suffixes = lang_cls.Defaults.suffixes + (r"-+$",)
|
||
lang_cls.Defaults.stop_words.add(extra_stop_words)
|
||
if debug:
|
||
print("Updated stop words and tokenizer suffixes")
|
||
return lang_cls
|
||
|
||
return customize_language_data
|
||
```
|
||
|
||
<Infobox title="Tip: Use Python type hints" emoji="💡">
|
||
|
||
spaCy's configs are powered by our machine learning library Thinc's
|
||
[configuration system](https://thinc.ai/docs/usage-config), which supports
|
||
[type hints](https://docs.python.org/3/library/typing.html) and even
|
||
[advanced type annotations](https://thinc.ai/docs/usage-config#advanced-types)
|
||
using [`pydantic`](https://github.com/samuelcolvin/pydantic). If your registered
|
||
function provides type hints, the values that are passed in will be checked
|
||
against the expected types. For example, `debug: bool` in the example above will
|
||
ensure that the value received as the argument `debug` is an boolean. If the
|
||
value can't be coerced into a boolean, spaCy will raise an error.
|
||
`start: pydantic.StrictBool` will force the value to be an boolean and raise an
|
||
error if it's not – for instance, if your config defines `1` instead of `true`.
|
||
|
||
</Infobox>
|
||
|
||
With your `functions.py` defining additional code and the updated `config.cfg`,
|
||
you can now run [`spacy train`](/api/cli#train) and point the argument `--code`
|
||
to your Python file. Before loading the config, spaCy will import the
|
||
`functions.py` module and your custom functions will be registered.
|
||
|
||
```cli
|
||
$ python -m spacy train config.cfg --output ./output --code ./functions.py
|
||
```
|
||
|
||
#### Example: Custom batch size schedule {#custom-code-schedule}
|
||
|
||
For example, let's say you've implemented your own batch size schedule to use
|
||
during training. The `@spacy.registry.schedules` decorator lets you register
|
||
that function in the `schedules` [registry](/api/top-level#registry) and assign
|
||
it a string name:
|
||
|
||
> #### Why the version in the name?
|
||
>
|
||
> A big benefit of the config system is that it makes your experiments
|
||
> reproducible. We recommend versioning the functions you register, especially
|
||
> if you expect them to change (like a new model architecture). This way, you
|
||
> know that a config referencing `v1` means a different function than a config
|
||
> referencing `v2`.
|
||
|
||
```python
|
||
### functions.py
|
||
import spacy
|
||
|
||
@spacy.registry.schedules("my_custom_schedule.v1")
|
||
def my_custom_schedule(start: int = 1, factor: int = 1.001):
|
||
while True:
|
||
yield start
|
||
start = start * factor
|
||
```
|
||
|
||
In your config, you can now reference the schedule in the
|
||
`[training.batch_size]` block via `@schedules`. If a block contains a key
|
||
starting with an `@`, it's interpreted as a reference to a function. All other
|
||
settings in the block will be passed to the function as keyword arguments. Keep
|
||
in mind that the config shouldn't have any hidden defaults and all arguments on
|
||
the functions need to be represented in the config. If your function defines
|
||
**default argument values**, spaCy is able to auto-fill your config when you run
|
||
[`init fill-config`](/api/cli#init-fill-config).
|
||
|
||
```ini
|
||
### config.cfg (excerpt)
|
||
[training.batch_size]
|
||
@schedules = "my_custom_schedule.v1"
|
||
start = 2
|
||
factor = 1.005
|
||
```
|
||
|
||
#### Example: Custom data reading and batching {#custom-code-readers-batchers}
|
||
|
||
<!-- TODO: -->
|
||
|
||
### Wrapping PyTorch and TensorFlow {#custom-frameworks}
|
||
|
||
<!-- TODO: -->
|
||
|
||
<Project id="example_pytorch_model">
|
||
|
||
Lorem ipsum dolor sit amet, consectetur adipiscing elit. Phasellus interdum
|
||
sodales lectus, ut sodales orci ullamcorper id. Sed condimentum neque ut erat
|
||
mattis pretium.
|
||
|
||
</Project>
|
||
|
||
### Defining custom architectures {#custom-architectures}
|
||
|
||
<!-- TODO: this could maybe be a more general example of using Thinc to compose some layers? We don't want to go too deep here and probably want to focus on a simple architecture example to show how it works -->
|
||
|
||
## Transfer learning {#transfer-learning}
|
||
|
||
### Using transformer models like BERT {#transformers}
|
||
|
||
spaCy v3.0 lets you use almost any statistical model to power your pipeline. You
|
||
can use models implemented in a variety of frameworks. A transformer model is
|
||
just a statistical model, so the
|
||
[`spacy-transformers`](https://github.com/explosion/spacy-transformers) package
|
||
actually has very little work to do: it just has to provide a few functions that
|
||
do the required plumbing. It also provides a pipeline component,
|
||
[`Transformer`](/api/transformer), that lets you do multi-task learning and lets
|
||
you save the transformer outputs for later use.
|
||
|
||
<Project id="en_core_bert">
|
||
|
||
Try out a BERT-based model pipeline using this project template: swap in your
|
||
data, edit the settings and hyperparameters and train, evaluate, package and
|
||
visualize your model.
|
||
|
||
</Project>
|
||
|
||
For more details on how to integrate transformer models into your training
|
||
config and customize the implementations, see the usage guide on
|
||
[training transformers](/usage/embeddings-transformers#transformers-training).
|
||
|
||
### Pretraining with spaCy {#pretraining}
|
||
|
||
<!-- TODO: document spacy pretrain, objectives etc. -->
|
||
|
||
## Parallel Training with Ray {#parallel-training}
|
||
|
||
<!-- TODO: document Ray integration -->
|
||
|
||
<Project id="some_example_project">
|
||
|
||
Lorem ipsum dolor sit amet, consectetur adipiscing elit. Phasellus interdum
|
||
sodales lectus, ut sodales orci ullamcorper id. Sed condimentum neque ut erat
|
||
mattis pretium.
|
||
|
||
</Project>
|
||
|
||
## Internal training API {#api}
|
||
|
||
<Infobox variant="warning">
|
||
|
||
spaCy gives you full control over the training loop. However, for most use
|
||
cases, it's recommended to train your models via the
|
||
[`spacy train`](/api/cli#train) command with a [`config.cfg`](#config) to keep
|
||
track of your settings and hyperparameters, instead of writing your own training
|
||
scripts from scratch.
|
||
[Custom registered functions](/usage/training/#custom-code) should typically
|
||
give you everything you need to train fully custom models with
|
||
[`spacy train`](/api/cli#train).
|
||
|
||
</Infobox>
|
||
|
||
The [`Example`](/api/example) object contains annotated training data, also
|
||
called the **gold standard**. It's initialized with a [`Doc`](/api/doc) object
|
||
that will hold the predictions, and another `Doc` object that holds the
|
||
gold-standard annotations. It also includes the **alignment** between those two
|
||
documents if they differ in tokenization. The `Example` class ensures that spaCy
|
||
can rely on one **standardized format** that's passed through the pipeline.
|
||
Here's an example of a simple `Example` for part-of-speech tags:
|
||
|
||
```python
|
||
words = ["I", "like", "stuff"]
|
||
predicted = Doc(vocab, words=words)
|
||
# create the reference Doc with gold-standard TAG annotations
|
||
tags = ["NOUN", "VERB", "NOUN"]
|
||
tag_ids = [vocab.strings.add(tag) for tag in tags]
|
||
reference = Doc(vocab, words=words).from_array("TAG", numpy.array(tag_ids, dtype="uint64"))
|
||
example = Example(predicted, reference)
|
||
```
|
||
|
||
Alternatively, the `reference` `Doc` with the gold-standard annotations can be
|
||
created from a dictionary with keyword arguments specifying the annotations,
|
||
like `tags` or `entities`. Using the `Example` object and its gold-standard
|
||
annotations, the model can be updated to learn a sentence of three words with
|
||
their assigned part-of-speech tags.
|
||
|
||
> #### About the tag map
|
||
>
|
||
> The tag map is part of the vocabulary and defines the annotation scheme. If
|
||
> you're training a new language model, this will let you map the tags present
|
||
> in the treebank you train on to spaCy's tag scheme:
|
||
>
|
||
> ```python
|
||
> tag_map = {"N": {"pos": "NOUN"}, "V": {"pos": "VERB"}}
|
||
> vocab = Vocab(tag_map=tag_map)
|
||
> ```
|
||
|
||
```python
|
||
words = ["I", "like", "stuff"]
|
||
tags = ["NOUN", "VERB", "NOUN"]
|
||
predicted = Doc(nlp.vocab, words=words)
|
||
example = Example.from_dict(predicted, {"tags": tags})
|
||
```
|
||
|
||
Here's another example that shows how to define gold-standard named entities.
|
||
The letters added before the labels refer to the tags of the
|
||
[BILUO scheme](/usage/linguistic-features#updating-biluo) – `O` is a token
|
||
outside an entity, `U` an single entity unit, `B` the beginning of an entity,
|
||
`I` a token inside an entity and `L` the last token of an entity.
|
||
|
||
```python
|
||
doc = Doc(nlp.vocab, words=["Facebook", "released", "React", "in", "2014"])
|
||
example = Example.from_dict(doc, {"entities": ["U-ORG", "O", "U-TECHNOLOGY", "O", "U-DATE"]})
|
||
```
|
||
|
||
<Infobox title="Migrating from v2.x" variant="warning">
|
||
|
||
As of v3.0, the [`Example`](/api/example) object replaces the `GoldParse` class.
|
||
It can be constructed in a very similar way, from a `Doc` and a dictionary of
|
||
annotations. For more details, see the
|
||
[migration guide](/usage/v3#migrating-training).
|
||
|
||
```diff
|
||
- gold = GoldParse(doc, entities=entities)
|
||
+ example = Example.from_dict(doc, {"entities": entities})
|
||
```
|
||
|
||
</Infobox>
|
||
|
||
Of course, it's not enough to only show a model a single example once.
|
||
Especially if you only have few examples, you'll want to train for a **number of
|
||
iterations**. At each iteration, the training data is **shuffled** to ensure the
|
||
model doesn't make any generalizations based on the order of examples. Another
|
||
technique to improve the learning results is to set a **dropout rate**, a rate
|
||
at which to randomly "drop" individual features and representations. This makes
|
||
it harder for the model to memorize the training data. For example, a `0.25`
|
||
dropout means that each feature or internal representation has a 1/4 likelihood
|
||
of being dropped.
|
||
|
||
> - [`nlp`](/api/language): The `nlp` object with the model.
|
||
> - [`nlp.begin_training`](/api/language#begin_training): Start the training and
|
||
> return an optimizer to update the model's weights.
|
||
> - [`Optimizer`](https://thinc.ai/docs/api-optimizers): Function that holds
|
||
> state between updates.
|
||
> - [`nlp.update`](/api/language#update): Update model with examples.
|
||
> - [`Example`](/api/example): object holding predictions and gold-standard
|
||
> annotations.
|
||
> - [`nlp.to_disk`](/api/language#to_disk): Save the updated model to a
|
||
> directory.
|
||
|
||
```python
|
||
### Example training loop
|
||
optimizer = nlp.begin_training()
|
||
for itn in range(100):
|
||
random.shuffle(train_data)
|
||
for raw_text, entity_offsets in train_data:
|
||
doc = nlp.make_doc(raw_text)
|
||
example = Example.from_dict(doc, {"entities": entity_offsets})
|
||
nlp.update([example], sgd=optimizer)
|
||
nlp.to_disk("/model")
|
||
```
|
||
|
||
The [`nlp.update`](/api/language#update) method takes the following arguments:
|
||
|
||
| Name | Description |
|
||
| ---------- | ---------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
|
||
| `examples` | [`Example`](/api/example) objects. The `update` method takes a sequence of them, so you can batch up your training examples. |
|
||
| `drop` | Dropout rate. Makes it harder for the model to just memorize the data. |
|
||
| `sgd` | An [`Optimizer`](https://thinc.ai/docs/api-optimizers) object, which updated the model's weights. If not set, spaCy will create a new one and save it for further use. |
|
||
|
||
<Infobox title="Migrating from v2.x" variant="warning">
|
||
|
||
As of v3.0, the [`Example`](/api/example) object replaces the `GoldParse` class
|
||
and the "simple training style" of calling `nlp.update` with a text and a
|
||
dictionary of annotations. Updating your code to use the `Example` object should
|
||
be very straightforward: you can call
|
||
[`Example.from_dict`](/api/example#from_dict) with a [`Doc`](/api/doc) and the
|
||
dictionary of annotations:
|
||
|
||
```diff
|
||
text = "Facebook released React in 2014"
|
||
annotations = {"entities": ["U-ORG", "O", "U-TECHNOLOGY", "O", "U-DATE"]}
|
||
+ example = Example.from_dict(nlp.make_doc(text), {"entities": entities})
|
||
- nlp.update([text], [annotations])
|
||
+ nlp.update([example])
|
||
```
|
||
|
||
</Infobox>
|