Translator
The Translator does what it says on the tin: it translates text from one language into another. Some translation models are language-specific while others are multilingual. See the Hugging Face Model Hub for a list of available models.
Position in a Pipeline | After preprocessing in an indexing Pipeline or after the Retriever in a querying Pipeline |
Input | Documents |
Output | Documents |
Classes | TransformersTranslator |
Usage
You can use the Translator component directly to translate your query or documents:
Copied!
from haystack import Documentfrom haystack.nodes import TransformersTranslator
DOCS = [ Document( content="""Heinz von Foerster was an Austrian American scientist combining physics and philosophy, and widely attributed as the originator of Second-order cybernetics.""" ) ]translator = TransformersTranslator(model_name_or_path="Helsinki-NLP/opus-mt-en-fr")res = translator.translate(documents=DOCS, query=None)
Using the TranslationWrapperPipeline
Let's imagine you have an English corpus of technical docs, but the mother tongue of many of your users is French.
You can use a Translator
node in your pipeline to:
- Translate the incoming query from French to English
- Search in your English corpus for the right document or answer
- Translate the results back from English to French
Copied!
from haystack.pipelines import TranslationWrapperPipeline, DocumentSearchPipelinefrom haystack.nodes import TransformersTranslator
pipeline = DocumentSearchPipeline(retriever=my_dpr_retriever)
in_translator = TransformersTranslator(model_name_or_path="Helsinki-NLP/opus-mt-fr-en")out_translator = TransformersTranslator(model_name_or_path="Helsinki-NLP/opus-mt-en-fr")
pipeline_with_translation = TranslationWrapperPipeline(input_translator=in_translator, output_translator=out_translator, pipeline=pipeline)