//- 💫 DOCS > USAGE > PROCESSING PIPELINES > PIPELINES p | spaCy makes it very easy to create your own pipelines consisting of | reusable components – this includes spaCy's default tagger, | parser and entity regcognizer, but also your own custom processing | functions. A pipeline component can be added to an already existing | #[code nlp] object, specified when initialising a #[code Language] class, | or defined within a | #[+a("/usage/training#saving-loading") model package]. p | When you load a model, spaCy first consults the model's | #[+a("/usage/training#saving-loading") #[code meta.json]]. The | meta typically includes the model details, the ID of a language class, | and an optional list of pipeline components. spaCy then does the | following: +aside-code("meta.json (excerpt)", "json"). { "name": "example_model", "lang": "en" "description": "Example model for spaCy", "pipeline": ["tagger", "parser"] } +list("numbers") +item | Load the #[strong language class and data] for the given ID via | #[+api("top-level#util.get_lang_class") #[code get_lang_class]] and initialise | it. The #[code Language] class contains the shared vocabulary, | tokenization rules and the language-specific annotation scheme. +item | Iterate over the #[strong pipeline names] and create each component | using #[+api("language#create_pipe") #[code create_pipe]], which | looks them up in #[code Language.factories]. +item | Add each pipeline component to the pipeline in order, using | #[+api("language#add_pipe") #[code add_pipe]]. +item | Make the #[strong model data] available to the #[code Language] class | by calling #[+api("language#from_disk") #[code from_disk]] with the | path to the model data directory. p | So when you call this... +code. nlp = spacy.load('en') p | ... the model tells spaCy to use the language #[code "en"] and the | pipeline #[code.u-break ["tagger", "parser", "ner"]]. spaCy will then | initialise #[code spacy.lang.en.English], and create each pipeline | component and add it to the processing pipeline. It'll then load in the | model's data from its data directory and return the modified | #[code Language] class for you to use as the #[code nlp] object. p | Fundamentally, a #[+a("/models") spaCy model] consists of three | components: #[strong the weights], i.e. binary data loaded in from a | directory, a #[strong pipeline] of functions called in order, | and #[strong language data] like the tokenization rules and annotation | scheme. All of this is specific to each model, and defined in the | model's #[code meta.json] – for example, a Spanish NER model requires | different weights, language data and pipeline components than an English | parsing and tagging model. This is also why the pipeline state is always | held by the #[code Language] class. | #[+api("spacy#load") #[code spacy.load]] puts this all together and | returns an instance of #[code Language] with a pipeline set and access | to the binary data: +code("spacy.load under the hood"). lang = 'en' pipeline = ['tagger', 'parser', 'ner'] data_path = 'path/to/en_core_web_sm/en_core_web_sm-2.0.0' cls = spacy.util.get_lang_class(lang) # 1. get Language instance, e.g. English() nlp = cls() # 2. initialise it for name in pipeline: component = nlp.create_pipe(name) # 3. create the pipeline components nlp.add_pipe(component) # 4. add the component to the pipeline nlp.from_disk(model_data_path) # 5. load in the binary data p | When you call #[code nlp] on a text, spaCy will #[strong tokenize] it and | then #[strong call each component] on the #[code Doc], in order. | Since the model data is loaded, the components can access it to assign | annotations to the #[code Doc] object, and subsequently to the | #[code Token] and #[code Span] which are only views of the #[code Doc], | and don't own any data themselves. All components return the modified | document, which is then processed by the component next in the pipeline. +code("The pipeline under the hood"). doc = nlp.make_doc(u'This is a sentence') # create a Doc from raw text for name, proc in nlp.pipeline: # iterate over components in order doc = proc(doc) # apply each component p | The current processing pipeline is available as #[code nlp.pipeline], | which returns a list of #[code (name, component)] tuples, or | #[code nlp.pipe_names], which only returns a list of human-readable | component names. +code. nlp.pipeline # [('tagger', <spacy.pipeline.Tagger>), ('parser', <spacy.pipeline.DependencyParser>), ('ner', <spacy.pipeline.EntityRecognizer>)] nlp.pipe_names # ['tagger', 'parser', 'ner'] +h(3, "disabling") Disabling and modifying pipeline components p | If you don't need a particular component of the pipeline – for | example, the tagger or the parser, you can disable loading it. This can | sometimes make a big difference and improve loading speed. Disabled | component names can be provided to #[+api("spacy#load") #[code spacy.load()]], | #[+api("language#from_disk") #[code Language.from_disk()]] or the | #[code nlp] object itself as a list: +code. nlp = spacy.load('en', disable=['parser', 'tagger']) nlp = English().from_disk('/model', disable=['ner']) p | You can also use the #[+api("language#remove_pipe") #[code remove_pipe]] | method to remove pipeline components from an existing pipeline, the | #[+api("language#rename_pipe") #[code rename_pipe]] method to rename them, | or the #[+api("language#replace_pipe") #[code replace_pipe]] method | to replace them with a custom component entirely (more details on this | in the section on #[+a("#custom-components") custom components]. +code. nlp.remove_pipe('parser') nlp.rename_pipe('ner', 'entityrecognizer') nlp.replace_pipe('tagger', my_custom_tagger) +infobox("Important note: disabling pipeline components") .o-block | Since spaCy v2.0 comes with better support for customising the | processing pipeline components, the #[code parser], #[code tagger] | and #[code entity] keyword arguments have been replaced with | #[code disable], which takes a list of pipeline component names. | This lets you disable pre-defined components when loading | a model, or initialising a Language class via | #[+api("language#from_disk") #[code from_disk]]. +code-new. nlp = spacy.load('en', disable=['ner']) nlp.remove_pipe('parser') doc = nlp(u"I don't want parsed") +code-old. nlp = spacy.load('en', tagger=False, entity=False) doc = nlp(u"I don't want parsed", parse=False)