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## Summary - Add language-aware Snowball stemmer to `RagTokenizer` supporting 16 languages (Dutch, German, French, Spanish, etc.) - Thread the KB `language` parameter through the full tokenization pipeline (14 parser modules + task executor) - Add Dutch to the frontend language lists and cross-language form ## Problem RAGFlow uses the English Porter stemmer + WordNet lemmatizer for **all** BM25 tokenization, regardless of the knowledge base language setting. This produces incorrect stems for non-English text. For example: | Dutch word | Dutch stemmer | English Porter | |---|---|---| | documenten | document | documenten (unchanged!) | | gebruikers | gebruiker | gebruik (over-stemmed) | | instellingen | instell | instellingen (unchanged!) | This degrades BM25 recall for any non-English knowledge base. ## Solution NLTK already ships Snowball stemmers for 16 languages. This PR: 1. **`rag/nlp/rag_tokenizer.py`**: Overrides `tokenize()` with `set_language()` and `_normalize_token()` that selects the correct NLTK Snowball stemmer. Falls back to Porter for unmapped languages (Chinese, Japanese, Korean, etc. — these use character-based tokenization anyway). 2. **`rag/nlp/__init__.py`** + **14 `rag/app/*.py` parsers** + **`rag/svr/task_executor.py`**: Threads the `language` parameter through `tokenize()`, `tokenize_chunks()`, `tokenize_table()`, and all callers. 3. **Frontend**: Adds Dutch (`Nederlands`) to `LanguageList`, `LanguageMap`, `LanguageAbbreviationMap`, `LanguageTranslationMap`, cross-language form field, and `en.ts` locale. ## Backward Compatibility - Default language is `"English"`, preserving existing behavior for all current users - Languages without a Snowball stemmer mapping fall back to Porter (no change) - No new dependencies — NLTK Snowball is already bundled
148 lines
5.5 KiB
Python
148 lines
5.5 KiB
Python
#
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# Copyright 2025 The InfiniFlow Authors. All Rights Reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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#
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import json
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import re
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import csv
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from copy import deepcopy
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from deepdoc.parser.utils import get_text
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from rag.app.qa import Excel
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from rag.nlp import rag_tokenizer
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from common import settings
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def beAdoc(d, q, a, eng, row_num=-1):
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d["content_with_weight"] = q
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d["content_ltks"] = rag_tokenizer.tokenize(q)
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d["content_sm_ltks"] = rag_tokenizer.fine_grained_tokenize(d["content_ltks"])
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d["tag_kwd"] = [t.strip().replace(".", "_") for t in a.split(",") if t.strip()]
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if row_num >= 0:
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d["top_int"] = [row_num]
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return d
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def chunk(filename, binary=None, lang="Chinese", callback=None, **kwargs):
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"""
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Excel and csv(txt) format files are supported.
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If the file is in Excel format, there should be 2 column content and tags without header.
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And content column is ahead of tags column.
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And it's O.K if it has multiple sheets as long as the columns are rightly composed.
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If it's in csv format, it should be UTF-8 encoded. Use TAB as delimiter to separate content and tags.
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All the deformed lines will be ignored.
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Every pair will be treated as a chunk.
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"""
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eng = lang.lower() == "english"
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rag_tokenizer.tokenizer.set_language(lang)
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res = []
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doc = {"docnm_kwd": filename, "title_tks": rag_tokenizer.tokenize(re.sub(r"\.[a-zA-Z]+$", "", filename))}
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if re.search(r"\.xlsx?$", filename, re.IGNORECASE):
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callback(0.1, "Start to parse.")
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excel_parser = Excel()
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for ii, (q, a) in enumerate(excel_parser(filename, binary, callback)):
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res.append(beAdoc(deepcopy(doc), q, a, eng, ii))
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return res
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elif re.search(r"\.(txt)$", filename, re.IGNORECASE):
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callback(0.1, "Start to parse.")
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txt = get_text(filename, binary)
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lines = txt.split("\n")
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comma, tab = 0, 0
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for line in lines:
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if len(line.split(",")) == 2:
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comma += 1
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if len(line.split("\t")) == 2:
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tab += 1
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delimiter = "\t" if tab >= comma else ","
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fails = []
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content = ""
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i = 0
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while i < len(lines):
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arr = lines[i].split(delimiter)
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if len(arr) != 2:
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content += "\n" + lines[i]
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elif len(arr) == 2:
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content += "\n" + arr[0]
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res.append(beAdoc(deepcopy(doc), content, arr[1], eng, i))
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content = ""
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i += 1
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if len(res) % 999 == 0:
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callback(len(res) * 0.6 / len(lines), ("Extract TAG: {}".format(len(res)) + (f"{len(fails)} failure, line: %s..." % (",".join(fails[:3])) if fails else "")))
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callback(0.6, ("Extract TAG: {}".format(len(res)) + (f"{len(fails)} failure, line: %s..." % (",".join(fails[:3])) if fails else "")))
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return res
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elif re.search(r"\.(csv)$", filename, re.IGNORECASE):
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callback(0.1, "Start to parse.")
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txt = get_text(filename, binary)
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lines = txt.split("\n")
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fails = []
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content = ""
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res = []
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reader = csv.reader(lines)
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for i, row in enumerate(reader):
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row = [r.strip() for r in row if r.strip()]
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if len(row) != 2:
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content += "\n" + lines[i]
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elif len(row) == 2:
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content += "\n" + row[0]
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res.append(beAdoc(deepcopy(doc), content, row[1], eng, i))
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content = ""
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if len(res) % 999 == 0:
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callback(len(res) * 0.6 / len(lines), ("Extract Tags: {}".format(len(res)) + (f"{len(fails)} failure, line: %s..." % (",".join(fails[:3])) if fails else "")))
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callback(0.6, ("Extract TAG : {}".format(len(res)) + (f"{len(fails)} failure, line: %s..." % (",".join(fails[:3])) if fails else "")))
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return res
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raise NotImplementedError("Excel, csv(txt) format files are supported.")
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def label_question(question, kbs):
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from api.db.services.knowledgebase_service import KnowledgebaseService
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from rag.graphrag.utils import get_tags_from_cache, set_tags_to_cache
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tags = None
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tag_kb_ids = []
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for kb in kbs:
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if kb.parser_config.get("tag_kb_ids"):
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tag_kb_ids.extend(kb.parser_config["tag_kb_ids"])
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if tag_kb_ids:
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all_tags = get_tags_from_cache(tag_kb_ids)
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if not all_tags:
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all_tags = settings.retriever.all_tags_in_portion(kb.tenant_id, tag_kb_ids)
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set_tags_to_cache(tags=all_tags, kb_ids=tag_kb_ids)
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else:
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all_tags = json.loads(all_tags)
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tag_kbs = KnowledgebaseService.get_by_ids(tag_kb_ids)
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if not tag_kbs:
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return tags
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tags = settings.retriever.tag_query(question, list(set([kb.tenant_id for kb in tag_kbs])), tag_kb_ids, all_tags, kb.parser_config.get("topn_tags", 3))
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return tags
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if __name__ == "__main__":
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import sys
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def dummy(prog=None, msg=""):
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pass
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chunk(sys.argv[1], from_page=0, to_page=10, callback=dummy)
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