I am currently trying to parse a very large number of text documents using dask + spaCy. SpaCy requires that I load a relatively large
Language object, and I would like to load this once per worker. I have a couple of mapping functions that I would like to apply to each document, and I would hopefully not have to reinitialize this object for each future / function call. What is the best way to handle this?
Example of what I'm talking about:
def text_fields_to_sentences( dataframe:pd.DataFrame, ... )->pd.DataFrame: # THIS IS WHAT I WOULD LIKE TO CHANGE nlp, = setup_spacy(scispacy_version) def field_to_sentences(row): result =  doc = nlp(row[text_field]) for sentence_tokens in doc.sents: sentence_text = "".join([t.string for t in sentence_tokens]) r = text_data.copy() r[sentence_text_field] = sentence_text result.append(r) return result series = dataframe.apply( field_to_sentences, axis=1 ).explode() return pd.DataFrame( [s[new_col_order].values for s in series], columns=new_col_order ) input_data.map_partitions(text_fields_to_sentences)