Files
ragflow/api/apps/sdk/session.py
Attili-sys 24af0875e5 Feat/configurable metadata display (#13464)
### What problem does this PR solve?

Currently, RAGFlow's Search and Chat interfaces display only raw
vectorized text chunks during retrieval, without contextual information
about their source documents. Users cannot see document titles, page
numbers, upload dates, or custom metadata fields that would help them
understand and trust the retrieved results.

This PR introduces an **optional metadata display feature** that
enriches retrieved chunks with document-level metadata in both the
Search tab and Chatbot interface.

**Key improvements:**
- **Search results**: Display document metadata as styled badges beneath
chunk snippets
- **Chat citations**: Show metadata in citation popovers and reference
lists for better source context
- **LLM context**: Metadata is injected into the LLM prompt to enable
more accurate, citation-aware responses
- **External API support**: Applications using RAGFlow's SDK retrieval
endpoints (`/v1/retrieval`, `/v1/searchbots/retrieval_test`) can opt-in
via request parameters
- **User control**: Multi-select dropdown UI allows users to choose
which metadata fields to display

**Implementation approach:**
-  Reuses existing `DocMetadataService` infrastructure (no new database
tables or indices)
-  Settings stored in existing JSON configuration fields
(`search_config.reference_metadata`, `prompt_config.reference_metadata`)
-  No database migrations required
-  Disabled by default (fully opt-in and backward-compatible)
-  Dynamic metadata field selection populated from actual document
metadata keys
-  Fixed critical bug where Python's builtin `set()` was shadowed by a
route handler function

**Modified endpoints (all backward-compatible):**
- `POST /v1/retrieval` (Public SDK)
- `POST /v1/searchbots/retrieval_test` (Searchbots)
- `POST /v1/chunk/retrieval_test` (UI/Internal)
- Chat completions endpoints (via `extra_body.reference_metadata` or
`prompt_config`)

### Type of change

- [x] New Feature (non-breaking change which adds functionality)


###Images
-
<img width="879" height="1275" alt="image"
src="https://github.com/user-attachments/assets/95b2d731-31ae-45a1-b081-bf5893f52aeb"
/>
<br><br>
<br><br>

<img width="1532" height="362" alt="image"
src="https://github.com/user-attachments/assets/9cebc65b-b7a7-459f-b25e-3b13fa9b638e"
/>
<br><br>
<br><br>

<img width="2586" height="1320" alt="image"
src="https://github.com/user-attachments/assets/2153d493-d899-461f-a7a9-041391e07776"
/>

---------

Co-authored-by: Cursor Agent <cursoragent@cursor.com>
Co-authored-by: Attili-sys <Attili-sys@users.noreply.github.com>
Co-authored-by: Ahmad Intisar <ahmadintisar@Ahmads-MacBook-M4-Pro.local>
2026-04-30 23:13:27 +08:00

548 lines
22 KiB
Python

#
# Copyright 2024 The InfiniFlow Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
#
import json
import re
import logging
from quart import Response, request
from agent.canvas import Canvas
from api.db.db_models import APIToken
from api.db.services.api_service import API4ConversationService
from api.db.services.canvas_service import UserCanvasService
from api.db.services.canvas_service import completion as agent_completion
from api.db.services.user_canvas_version import UserCanvasVersionService
from api.db.services.conversation_service import async_iframe_completion as iframe_completion
from api.db.services.dialog_service import DialogService, async_ask, gen_mindmap
from api.db.services.doc_metadata_service import DocMetadataService
from api.db.services.knowledgebase_service import KnowledgebaseService
from api.db.services.llm_service import LLMBundle
from common.metadata_utils import apply_meta_data_filter
from api.db.services.search_service import SearchService
from api.db.services.user_service import UserTenantService
from api.db.joint_services.tenant_model_service import get_tenant_default_model_by_type, get_model_config_by_id, \
get_model_config_by_type_and_name
from common.misc_utils import get_uuid
from api.utils.api_utils import check_duplicate_ids, get_error_data_result, get_json_result, \
get_result, get_request_json, server_error_response, token_required, validate_request
from rag.app.tag import label_question
from rag.prompts.template import load_prompt
from rag.prompts.generator import cross_languages, keyword_extraction
from common.constants import RetCode, LLMType
from common import settings
from api.utils.reference_metadata_utils import (
enrich_chunks_with_document_metadata,
resolve_reference_metadata_preferences,
)
@token_required
async def create_agent_session(tenant_id, agent_id):
req = await get_request_json()
user_id = req.get("user_id") or request.args.get("user_id", tenant_id)
release_mode = bool(req.get("release", request.args.get("release", False)))
if not UserCanvasService.query(user_id=tenant_id, id=agent_id):
return get_error_data_result("You cannot access the agent.")
try:
cvs, dsl = UserCanvasService.get_agent_dsl_with_release(agent_id, release_mode, tenant_id)
except LookupError:
return get_error_data_result("Agent not found.")
except PermissionError as e:
return get_error_data_result(str(e))
session_id = get_uuid()
canvas = Canvas(dsl, tenant_id, agent_id, canvas_id=cvs.id)
canvas.reset()
cvs.dsl = json.loads(str(canvas))
# Get the version title based on release_mode
version_title = UserCanvasVersionService.get_latest_version_title(cvs.id, release_mode=release_mode)
conv = {
"id": session_id,
"dialog_id": cvs.id,
"user_id": user_id,
"message": [{"role": "assistant", "content": canvas.get_prologue()}],
"source": "agent",
"dsl": cvs.dsl,
"version_title": version_title
}
API4ConversationService.save(**conv)
conv["agent_id"] = conv.pop("dialog_id")
return get_result(data=conv)
@manager.route("/agents/<agent_id>/sessions", methods=["DELETE"]) # noqa: F821
@token_required
async def delete_agent_session(tenant_id, agent_id):
errors = []
success_count = 0
req = await get_request_json()
cvs = UserCanvasService.query(user_id=tenant_id, id=agent_id)
if not cvs:
return get_error_data_result(f"You don't own the agent {agent_id}")
if not req:
return get_result()
ids = req.get("ids")
if not ids:
if req.get("delete_all") is True:
ids = [conv.id for conv in API4ConversationService.query(dialog_id=agent_id)]
if not ids:
return get_result()
else:
return get_result()
conv_list = ids
unique_conv_ids, duplicate_messages = check_duplicate_ids(conv_list, "session")
conv_list = unique_conv_ids
for session_id in conv_list:
conv = API4ConversationService.query(id=session_id, dialog_id=agent_id)
if not conv:
errors.append(f"The agent doesn't own the session {session_id}")
continue
API4ConversationService.delete_by_id(session_id)
success_count += 1
if errors:
if success_count > 0:
return get_result(data={"success_count": success_count, "errors": errors},
message=f"Partially deleted {success_count} sessions with {len(errors)} errors")
else:
return get_error_data_result(message="; ".join(errors))
if duplicate_messages:
if success_count > 0:
return get_result(
message=f"Partially deleted {success_count} sessions with {len(duplicate_messages)} errors",
data={"success_count": success_count, "errors": duplicate_messages})
else:
return get_error_data_result(message=";".join(duplicate_messages))
return get_result()
@manager.route("/chatbots/<dialog_id>/completions", methods=["POST"]) # noqa: F821
async def chatbot_completions(dialog_id):
req = await get_request_json()
token = request.headers.get("Authorization").split()
if len(token) != 2:
return get_error_data_result(message='Authorization is not valid!')
token = token[1]
objs = APIToken.query(beta=token)
if not objs:
return get_error_data_result(message='Authentication error: API key is invalid!"')
if "quote" not in req:
req["quote"] = False
if req.get("stream", True):
resp = Response(iframe_completion(dialog_id, **req), mimetype="text/event-stream")
resp.headers.add_header("Cache-control", "no-cache")
resp.headers.add_header("Connection", "keep-alive")
resp.headers.add_header("X-Accel-Buffering", "no")
resp.headers.add_header("Content-Type", "text/event-stream; charset=utf-8")
return resp
async for answer in iframe_completion(dialog_id, **req):
return get_result(data=answer)
return None
@manager.route("/chatbots/<dialog_id>/info", methods=["GET"]) # noqa: F821
async def chatbots_inputs(dialog_id):
token = request.headers.get("Authorization").split()
if len(token) != 2:
return get_error_data_result(message='Authorization is not valid!')
token = token[1]
objs = APIToken.query(beta=token)
if not objs:
return get_error_data_result(message='Authentication error: API key is invalid!"')
e, dialog = DialogService.get_by_id(dialog_id)
if not e:
return get_error_data_result(f"Can't find dialog by ID: {dialog_id}")
return get_result(
data={
"title": dialog.name,
"avatar": dialog.icon,
"prologue": dialog.prompt_config.get("prologue", ""),
"has_tavily_key": bool(dialog.prompt_config.get("tavily_api_key", "").strip()),
}
)
@manager.route("/agentbots/<agent_id>/completions", methods=["POST"]) # noqa: F821
async def agent_bot_completions(agent_id):
req = await get_request_json()
token = request.headers.get("Authorization").split()
if len(token) != 2:
return get_error_data_result(message='Authorization is not valid!')
token = token[1]
objs = APIToken.query(beta=token)
if not objs:
return get_error_data_result(message='Authentication error: API key is invalid!"')
if req.get("stream", True):
async def stream():
try:
async for answer in agent_completion(objs[0].tenant_id, agent_id, **req):
yield answer
except Exception as e:
logging.exception(e)
error_result = get_error_data_result(message=str(e) or "Unknown error")
yield "data:" + json.dumps(
{
"event": "message",
"data": {"content": f"Error {error_result['code']}: {error_result['message']}\n\n"},
**error_result,
},
ensure_ascii=False,
) + "\n\n"
resp = Response(stream(), mimetype="text/event-stream")
resp.headers.add_header("Cache-control", "no-cache")
resp.headers.add_header("Connection", "keep-alive")
resp.headers.add_header("X-Accel-Buffering", "no")
resp.headers.add_header("Content-Type", "text/event-stream; charset=utf-8")
return resp
try:
async for answer in agent_completion(objs[0].tenant_id, agent_id, **req):
return get_result(data=answer)
except Exception as e:
logging.exception(e)
return get_error_data_result(message=str(e) or "Unknown error")
return None
@manager.route("/agentbots/<agent_id>/inputs", methods=["GET"]) # noqa: F821
async def begin_inputs(agent_id):
token = request.headers.get("Authorization").split()
if len(token) != 2:
return get_error_data_result(message='Authorization is not valid!')
token = token[1]
objs = APIToken.query(beta=token)
if not objs:
return get_error_data_result(message='Authentication error: API key is invalid!"')
e, cvs = UserCanvasService.get_by_id(agent_id)
if not e:
return get_error_data_result(f"Can't find agent by ID: {agent_id}")
canvas = Canvas(json.dumps(cvs.dsl), objs[0].tenant_id, canvas_id=cvs.id)
return get_result(
data={"title": cvs.title, "avatar": cvs.avatar, "inputs": canvas.get_component_input_form("begin"),
"prologue": canvas.get_prologue(), "mode": canvas.get_mode()})
@manager.route("/searchbots/ask", methods=["POST"]) # noqa: F821
@validate_request("question", "kb_ids")
async def ask_about_embedded():
token = request.headers.get("Authorization").split()
if len(token) != 2:
return get_error_data_result(message='Authorization is not valid!')
token = token[1]
objs = APIToken.query(beta=token)
if not objs:
return get_error_data_result(message='Authentication error: API key is invalid!"')
req = await get_request_json()
uid = objs[0].tenant_id
search_id = req.get("search_id", "")
search_config = {}
if search_id:
if search_app := SearchService.get_detail(search_id):
search_config = search_app.get("search_config", {})
async def stream():
nonlocal req, uid
try:
async for ans in async_ask(req["question"], req["kb_ids"], uid, search_config=search_config):
yield "data:" + json.dumps({"code": 0, "message": "", "data": ans}, ensure_ascii=False) + "\n\n"
except Exception as e:
yield "data:" + json.dumps(
{"code": 500, "message": str(e), "data": {"answer": "**ERROR**: " + str(e), "reference": []}},
ensure_ascii=False) + "\n\n"
yield "data:" + json.dumps({"code": 0, "message": "", "data": True}, ensure_ascii=False) + "\n\n"
resp = Response(stream(), mimetype="text/event-stream")
resp.headers.add_header("Cache-control", "no-cache")
resp.headers.add_header("Connection", "keep-alive")
resp.headers.add_header("X-Accel-Buffering", "no")
resp.headers.add_header("Content-Type", "text/event-stream; charset=utf-8")
return resp
@manager.route("/searchbots/retrieval_test", methods=["POST"]) # noqa: F821
@validate_request("kb_id", "question")
async def retrieval_test_embedded():
token = request.headers.get("Authorization").split()
if len(token) != 2:
return get_error_data_result(message='Authorization is not valid!')
token = token[1]
objs = APIToken.query(beta=token)
if not objs:
return get_error_data_result(message='Authentication error: API key is invalid!"')
req = await get_request_json()
page = int(req.get("page", 1))
size = int(req.get("size", 30))
question = req["question"]
kb_ids = req["kb_id"]
if isinstance(kb_ids, str):
kb_ids = [kb_ids]
if not kb_ids:
return get_json_result(data=False, message='Please specify dataset firstly.',
code=RetCode.DATA_ERROR)
doc_ids = req.get("doc_ids", [])
similarity_threshold = float(req.get("similarity_threshold", 0.0))
vector_similarity_weight = float(req.get("vector_similarity_weight", 0.3))
use_kg = req.get("use_kg", False)
top = int(req.get("top_k", 1024))
if top <= 0:
return get_error_data_result("`top_k` must be greater than 0")
langs = req.get("cross_languages", [])
rerank_id = req.get("rerank_id", "")
tenant_rerank_id = req.get("tenant_rerank_id", "")
tenant_id = objs[0].tenant_id
if not tenant_id:
return get_error_data_result(message="permission denined.")
search_config = {}
async def _retrieval():
nonlocal similarity_threshold, vector_similarity_weight, top, rerank_id
local_doc_ids = list(doc_ids) if doc_ids else []
tenant_ids = []
_question = question
meta_data_filter = {}
chat_mdl = None
if req.get("search_id", ""):
nonlocal search_config
detail = SearchService.get_detail(req.get("search_id", ""))
if detail:
search_config = detail.get("search_config", {})
meta_data_filter = search_config.get("meta_data_filter", {})
if meta_data_filter.get("method") in ["auto", "semi_auto"]:
chat_id = search_config.get("chat_id", "")
if chat_id:
chat_model_config = get_model_config_by_type_and_name(tenant_id, LLMType.CHAT, chat_id)
else:
chat_model_config = get_tenant_default_model_by_type(tenant_id, LLMType.CHAT)
chat_mdl = LLMBundle(tenant_id, chat_model_config)
# Apply search_config settings if not explicitly provided in request
if not req.get("similarity_threshold"):
similarity_threshold = float(search_config.get("similarity_threshold", similarity_threshold))
if not req.get("vector_similarity_weight"):
vector_similarity_weight = float(search_config.get("vector_similarity_weight", vector_similarity_weight))
if not req.get("top_k"):
top = int(search_config.get("top_k", top))
if not req.get("rerank_id"):
rerank_id = search_config.get("rerank_id", "")
else:
meta_data_filter = req.get("meta_data_filter") or {}
if meta_data_filter.get("method") in ["auto", "semi_auto"]:
chat_model_config = get_tenant_default_model_by_type(tenant_id, LLMType.CHAT)
chat_mdl = LLMBundle(tenant_id, chat_model_config)
if meta_data_filter:
metas = DocMetadataService.get_flatted_meta_by_kbs(kb_ids)
local_doc_ids = await apply_meta_data_filter(meta_data_filter, metas, _question, chat_mdl, local_doc_ids)
tenants = UserTenantService.query(user_id=tenant_id)
for kb_id in kb_ids:
for tenant in tenants:
if KnowledgebaseService.query(tenant_id=tenant.tenant_id, id=kb_id):
tenant_ids.append(tenant.tenant_id)
break
else:
return get_json_result(data=False, message="Only owner of dataset authorized for this operation.",
code=RetCode.OPERATING_ERROR)
e, kb = KnowledgebaseService.get_by_id(kb_ids[0])
if not e:
return get_error_data_result(message="Knowledgebase not found!")
if langs:
_question = await cross_languages(kb.tenant_id, None, _question, langs)
if kb.tenant_embd_id:
embd_model_config = get_model_config_by_id(kb.tenant_embd_id)
else:
embd_model_config = get_model_config_by_type_and_name(kb.tenant_id, LLMType.EMBEDDING, kb.embd_id)
embd_mdl = LLMBundle(kb.tenant_id, embd_model_config)
rerank_mdl = None
if tenant_rerank_id:
rerank_model_config = get_model_config_by_id(tenant_rerank_id)
rerank_mdl = LLMBundle(kb.tenant_id, rerank_model_config)
elif rerank_id:
rerank_model_config = get_model_config_by_type_and_name(tenant_id, LLMType.RERANK, rerank_id)
rerank_mdl = LLMBundle(kb.tenant_id, rerank_model_config)
if req.get("keyword", False):
default_chat_model = get_tenant_default_model_by_type(kb.tenant_id, LLMType.CHAT)
chat_mdl = LLMBundle(kb.tenant_id, default_chat_model)
_question += await keyword_extraction(chat_mdl, _question)
labels = label_question(_question, [kb])
ranks = await settings.retriever.retrieval(
_question, embd_mdl, tenant_ids, kb_ids, page, size, similarity_threshold, vector_similarity_weight, top,
local_doc_ids, rerank_mdl=rerank_mdl, highlight=req.get("highlight"), rank_feature=labels
)
if use_kg:
default_chat_model = get_tenant_default_model_by_type(kb.tenant_id, LLMType.CHAT)
ck = await settings.kg_retriever.retrieval(_question, tenant_ids, kb_ids, embd_mdl,
LLMBundle(kb.tenant_id, default_chat_model))
if ck["content_with_weight"]:
ranks["chunks"].insert(0, ck)
for c in ranks["chunks"]:
c.pop("vector", None)
include_metadata, metadata_fields = _resolve_reference_metadata(req, search_config)
if include_metadata:
enrich_chunks_with_document_metadata(ranks["chunks"], metadata_fields)
ranks["labels"] = labels
return get_json_result(data=ranks)
try:
return await _retrieval()
except Exception as e:
if str(e).find("not_found") > 0:
return get_json_result(data=False, message="No chunk found! Check the chunk status please!",
code=RetCode.DATA_ERROR)
return server_error_response(e)
@manager.route("/searchbots/related_questions", methods=["POST"]) # noqa: F821
@validate_request("question")
async def related_questions_embedded():
token = request.headers.get("Authorization").split()
if len(token) != 2:
return get_error_data_result(message='Authorization is not valid!')
token = token[1]
objs = APIToken.query(beta=token)
if not objs:
return get_error_data_result(message='Authentication error: API key is invalid!"')
req = await get_request_json()
tenant_id = objs[0].tenant_id
if not tenant_id:
return get_error_data_result(message="permission denined.")
search_id = req.get("search_id", "")
search_config = {}
if search_id:
if search_app := SearchService.get_detail(search_id):
search_config = search_app.get("search_config", {})
question = req["question"]
chat_id = search_config.get("chat_id", "")
if chat_id:
chat_model_config = get_model_config_by_type_and_name(tenant_id, LLMType.CHAT, chat_id)
else:
chat_model_config = get_tenant_default_model_by_type(tenant_id, LLMType.CHAT)
chat_mdl = LLMBundle(tenant_id, chat_model_config)
gen_conf = search_config.get("llm_setting", {"temperature": 0.9})
prompt = load_prompt("related_question")
ans = await chat_mdl.async_chat(
prompt,
[
{
"role": "user",
"content": f"""
Keywords: {question}
Related search terms:
""",
}
],
gen_conf,
)
return get_json_result(data=[re.sub(r"^[0-9]\. ", "", a) for a in ans.split("\n") if re.match(r"^[0-9]\. ", a)])
@manager.route("/searchbots/detail", methods=["GET"]) # noqa: F821
async def detail_share_embedded():
token = request.headers.get("Authorization").split()
if len(token) != 2:
return get_error_data_result(message='Authorization is not valid!')
token = token[1]
objs = APIToken.query(beta=token)
if not objs:
return get_error_data_result(message='Authentication error: API key is invalid!"')
search_id = request.args["search_id"]
tenant_id = objs[0].tenant_id
if not tenant_id:
return get_error_data_result(message="permission denined.")
try:
tenants = UserTenantService.query(user_id=tenant_id)
for tenant in tenants:
if SearchService.query(tenant_id=tenant.tenant_id, id=search_id):
break
else:
return get_json_result(data=False, message="Has no permission for this operation.",
code=RetCode.OPERATING_ERROR)
search = SearchService.get_detail(search_id)
if not search:
return get_error_data_result(message="Can't find this Search App!")
return get_json_result(data=search)
except Exception as e:
return server_error_response(e)
@manager.route("/searchbots/mindmap", methods=["POST"]) # noqa: F821
@validate_request("question", "kb_ids")
async def mindmap():
token = request.headers.get("Authorization").split()
if len(token) != 2:
return get_error_data_result(message='Authorization is not valid!')
token = token[1]
objs = APIToken.query(beta=token)
if not objs:
return get_error_data_result(message='Authentication error: API key is invalid!"')
tenant_id = objs[0].tenant_id
req = await get_request_json()
search_id = req.get("search_id", "")
search_app = SearchService.get_detail(search_id) if search_id else {}
mind_map =await gen_mindmap(req["question"], req["kb_ids"], tenant_id, search_app.get("search_config", {}))
if "error" in mind_map:
return server_error_response(Exception(mind_map["error"]))
return get_json_result(data=mind_map)
def _resolve_reference_metadata(req, search_config=None):
return resolve_reference_metadata_preferences(req, search_config)