---
title: What's New in v3.0
teaser: New features, backwards incompatibilities and migration guide
menu:
- ['Summary', 'summary']
- ['New Features', 'features']
- ['Backwards Incompatibilities', 'incompat']
- ['Migrating from v2.x', 'migrating']
- ['Migrating plugins', 'plugins']
---
## Summary {#summary}
## New Features {#features}
## Backwards Incompatibilities {#incompat}
### Removed or renamed objects, methods, attributes and arguments {#incompat-removed}
| Removed | Replacement |
| -------------------------------------------------------- | ----------------------------------------- |
| `GoldParse` | [`Example`](/api/example) |
| `GoldCorpus` | [`Corpus`](/api/corpus) |
| `spacy debug-data` | [`spacy debug data`](/api/cli#debug-data) |
| `spacy link`, `util.set_data_path`, `util.get_data_path` | not needed, model symlinks are deprecated |
### Removed deprecated methods, attributes and arguments {#incompat-removed-deprecated}
The following deprecated methods, attributes and arguments were removed in v3.0.
Most of them have been **deprecated for a while** and many would previously
raise errors. Many of them were also mostly internals. If you've been working
with more recent versions of spaCy v2.x, it's **unlikely** that your code relied
on them.
| Removed | Replacement |
| ----------------------------------------------------------------------------------------------------------------------- | ---------------------------------------------------------------------------------------------------------------------------------------------------------- |
| `Doc.tokens_from_list` | [`Doc.__init__`](/api/doc#init) |
| `Doc.merge`, `Span.merge` | [`Doc.retokenize`](/api/doc#retokenize) |
| `Token.string`, `Span.string`, `Span.upper`, `Span.lower` | [`Span.text`](/api/span#attributes), [`Token.text`](/api/token#attributes) |
| `Language.tagger`, `Language.parser`, `Language.entity` | [`Language.get_pipe`](/api/language#get_pipe) |
| keyword-arguments like `vocab=False` on `to_disk`, `from_disk`, `to_bytes`, `from_bytes` | `exclude=["vocab"]` |
| `n_threads` argument on [`Tokenizer`](/api/tokenizer), [`Matcher`](/api/matcher), [`PhraseMatcher`](/api/phrasematcher) | `n_process` |
| `SentenceSegmenter` hook, `SimilarityHook` | [user hooks](/usage/processing-pipelines#custom-components-user-hooks), [`Sentencizer`](/api/sentencizer), [`SentenceRecognizer`](/api/sentenceregognizer) |
## Migrating from v2.x {#migrating}
### Downloading and loading models {#migrating-downloading-models}
Model symlinks and shortcuts like `en` are now officially deprecated. There are
[many different models](/models) with different capabilities and not just one
"English model". In order to download and load a model, you should always use
its full name – for instance, `en_core_web_sm`.
```diff
- python -m spacy download en
+ python -m spacy download en_core_web_sm
```
```diff
- nlp = spacy.load("en")
+ nlp = spacy.load("en_core_web_sm")
```
### Custom pipeline components and factories {#migrating-pipeline-components}
Custom pipeline components now have to be registered explicitly using the
[`@Language.component`](/api/language#component) or
[`@Language.factory`](/api/language#factory) decorator. For simple functions
that take a `Doc` and return it, all you have to do is add the
`@Language.component` decorator to it and assign it a name:
```diff
### Stateless function components
+ from spacy.language import Language
+ @Language.component("my_component")
def my_component(doc):
return doc
```
For class components that are initialized with settings and/or the shared `nlp`
object, you can use the `@Language.factory` decorator. Also make sure that that
the method used to initialize the factory has **two named arguments**: `nlp`
(the current `nlp` object) and `name` (the string name of the component
instance).
```diff
### Stateful class components
+ from spacy.language import Language
+ @Language.factory("my_component")
class MyComponent:
- def __init__(self, nlp):
+ def __init__(self, nlp, name):
self.nlp = nlp
def __call__(self, doc):
return doc
```
Instead of decorating your class, you could also add a factory function that
takes the arguments `nlp` and `name` and returns an instance of your component:
```diff
### Stateful class components with factory function
+ from spacy.language import Language
+ @Language.factory("my_component")
+ def create_my_component(nlp, name):
+ return MyComponent(nlp)
class MyComponent:
def __init__(self, nlp):
self.nlp = nlp
def __call__(self, doc):
return doc
```
The `@Language.component` and `@Language.factory` decorators now take care of
adding an entry to the component factories, so spaCy knows how to load a
component back in from its string name. You won't have to write to
`Language.factories` manually anymore.
```diff
- Language.factories["my_component"] = lambda nlp, **cfg: MyComponent(nlp)
```
#### Adding components to the pipeline {#migrating-add-pipe}
The [`nlp.add_pipe`](/api/language#add_pipe) method now takes the **string
name** of the component factory instead of a callable component. This allows
spaCy to track and serialize components that have been added and their settings.
```diff
+ @Language.component("my_component")
def my_component(doc):
return doc
- nlp.add_pipe(my_component)
+ nlp.add_pipe("my_component")
```
[`nlp.add_pipe`](/api/language#add_pipe) now also returns the pipeline component
itself, so you can access its attributes. The
[`nlp.create_pipe`](/api/language#create_pipe) method is now mostly internals
and you typically shouldn't have to use it in your code.
```diff
- parser = nlp.create_pipe("parser")
- nlp.add_pipe(parser)
+ parser = nlp.add_pipe("parser")
```
### Training models {#migrating-training}
To train your models, you should now pretty much always use the
[`spacy train`](/api/cli#train) CLI. You shouldn't have to put together your own
training scripts anymore, unless you _really_ want to. The training commands now
use a [flexible config file](/usage/training#config) that describes all training
settings and hyperparameters, as well as your pipeline, model components and
architectures to use. The `--code` argument lets you pass in code containing
[custom registered functions](/usage/training#custom-code) that you can
reference in your config.
#### Binary .spacy training data format {#migrating-training-format}
spaCy now uses a new
[binary training data format](/api/data-formats#binary-training), which is much
smaller and consists of `Doc` objects, serialized via the
[`DocBin`](/api/docbin). You can convert your existing JSON-formatted data using
the [`spacy convert`](/api/cli#convert) command, which outputs `.spacy` files:
```bash
$ python -m spacy convert ./training.json ./output
```
#### Training config {#migrating-training-config}
```diff
### {wrap="true"}
- python -m spacy train en ./output ./train.json ./dev.json --pipeline tagger,parser --cnn-window 1 --bilstm-depth 0
+ python -m spacy train ./config.cfg --output ./output
```
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.
#### Migrating training scripts to CLI command and config {#migrating-training-scripts}
#### Training via the Python API {#migrating-training-python}
#### Packaging models {#migrating-training-packaging}
The [`spacy package`](/api/cli#package) command now automatically builds the
installable `.tar.gz` sdist of the Python package, so you don't have to run this
step manually anymore. You can disable the behavior by setting the `--no-sdist`
flag.
```diff
python -m spacy package ./model ./packages
- cd /output/en_model-0.0.0
- python setup.py sdist
```
## Migration notes for plugin maintainers {#plugins}
Thanks to everyone who's been contributing to the spaCy ecosystem by developing
and maintaining one of the many awesome [plugins and extensions](/universe).
We've tried to keep breaking changes to a minimum and make it as easy as
possible for you to upgrade your packages for spaCy v3.
### Custom pipeline components
The most common use case for plugins is providing pipeline components and
extension attributes.
- Use the [`@Language.factory`](/api/language#factory) decorator to register
your component and assign it a name. This allows users to refer to your
components by name and serialize pipelines referencing them. Remove all manual
entries to the `Language.factories`.
- Make sure your component factories take at least two **named arguments**:
`nlp` (the current `nlp` object) and `name` (the instance name of the added
component so you can identify multiple instances of the same component).
- Update all references to [`nlp.add_pipe`](/api/language#add_pipe) in your docs
to use **string names** instead of the component functions.
```python
### {highlight="1-5"}
from spacy.language import Language
@Language.factory("my_component", default_config={"some_setting": False})
def create_component(nlp: Language, name: str, some_setting: bool):
return MyCoolComponent(some_setting=some_setting)
class MyCoolComponent:
def __init__(self, some_setting):
self.some_setting = some_setting
def __call__(self, doc):
# Do something to the doc
return doc
```
> #### Result in config.cfg
>
> ```ini
> [components.my_component]
> factory = "my_component"
> some_setting = true
> ```
```diff
import spacy
from your_plugin import MyCoolComponent
nlp = spacy.load("en_core_web_sm")
- component = MyCoolComponent(some_setting=True)
- nlp.add_pipe(component)
+ nlp.add_pipe("my_component", config={"some_setting": True})
```
The [`@Language.factory`](/api/language#factory) decorator takes care of letting
spaCy know that a component of that name is available. This means that your
users can add it to the pipeline using its **string name**. However, this
requires the decorator to be executed – so users will still have to **import
your plugin**. Alternatively, your plugin could expose an
[entry point](/usage/saving-loading#entry-points), which spaCy can read from.
This means that spaCy knows how to initialize `my_component`, even if your
package isn't imported.