feat(query): refactor pipeline for per-sub-question flow with progressive SSE

Restructure _query_stream() to use per-sub-question retrieval, filtering, and generation. Add generative_subquestion SSE events for progressive frontend rendering. Add format_chunks_retrieved_per_subq() and format_chunks_filtered_per_subq() with <sub_q> XML wrappers. Add empty decomposition fallback using original question as single sub-q. Update history recording for grouped sources JSON (list-of-lists format).

Ultraworked with [Sisyphus](https://github.com/code-yeongyu/oh-my-openagent)

Co-authored-by: Sisyphus <clio-agent@sisyphuslabs.ai>
This commit is contained in:
Woody 2026-04-26 23:28:06 +08:00
parent 57a130dc96
commit 666b603639
1 changed files with 157 additions and 39 deletions

View File

@ -7,7 +7,7 @@ from fastapi import APIRouter, HTTPException
from fastapi.responses import StreamingResponse
from app.core.config import get_settings
from app.models.query import QueryRequest
from app.models.query import QueryRequest, SubQuestionSources
from app.models.common import SourceMetadata
from app.services.history_service import HistoryService
from app.services.llm_client import LLMClient
@ -43,6 +43,27 @@ def format_chunks_retrieved_xml(chunks: list) -> str:
return "\n".join(parts)
def format_chunks_retrieved_per_subq(results: list) -> str:
"""Format per-sub-question retrieved chunks as XML with sub_q wrappers."""
if not results:
return ""
parts = []
for q_idx, (sub_question, chunks) in enumerate(results):
parts.append(f'<sub_q idx="{q_idx}" question="{sub_question}">')
for i, (text, meta, _dist) in enumerate(chunks, start=1):
lines = [f" <chunk_{i}>"]
lines.append(f" Filename: {meta.get('filename', 'unknown')}")
page = meta.get("page_number")
if page is not None:
lines.append(f" Page: {page}")
lines.append(f" Content: {text}")
lines.append(f" </chunk_{i}>")
parts.append("\n".join(lines))
parts.append("</sub_q>")
return "\n".join(parts)
def format_chunks_filtered_xml(filtered: list) -> str:
"""Format filtered chunks as XML-tagged string with relevance scores.
filtered = [(text, meta), ...] score embedded in meta["relevance_score"]
@ -63,6 +84,37 @@ def format_chunks_filtered_xml(filtered: list) -> str:
return "\n".join(parts)
def format_chunks_filtered_per_subq(results: list) -> str:
"""Format per-sub-question filtered chunks as XML with sub_q wrappers.
Args:
results: List of (sub_question, filtered_chunks) from filter_per_subquestion().
Each filtered_chunks is [(text, meta), ...] with relevance_score in meta.
Returns:
XML string with <sub_q> wrappers containing <chunk_N> elements with Relevance scores.
"""
if not results:
return ""
parts = []
for q_idx, (sub_question, filtered_chunks) in enumerate(results):
parts.append(f'<sub_q idx="{q_idx}" question="{sub_question}">')
for i, (text, meta) in enumerate(filtered_chunks, start=1):
score = meta.get("relevance_score", "N/A")
lines = [f" <chunk_{i}>"]
lines.append(f" Filename: {meta.get('filename', 'unknown')}")
page = meta.get("page_number")
if page is not None:
lines.append(f" Page: {page}")
lines.append(f" Relevance: {score}")
lines.append(f" Content: {text}")
lines.append(f" </chunk_{i}>")
parts.append("\n".join(lines))
parts.append("</sub_q>")
return "\n".join(parts)
async def _record_history(history_service, input_text, extracted_questions,
decompose_prompt, decomposer_time_ms, retriever_time_ms,
chunks_retrieved_count, chunks_retrieved, filter_prompt,
@ -142,21 +194,32 @@ async def _query_stream(request: QueryRequest):
decomposer_time_ms = int((time.perf_counter() - stage_start) * 1000)
logger.info("Extracted questions: %s", extracted_questions)
if not extracted_questions:
extracted_questions = [request.question]
yield _format_sse({
"phase": "decomposed",
"extracted_questions": extracted_questions,
})
# Stage 2: Retrieve
# Stage 2: Retrieve (per sub-question)
stage_start = time.perf_counter()
chunks = rag.retrieve(extracted_questions, n_results=settings.retrieval_n_results)
retrieval_results = rag.retrieve_per_subquestion(
extracted_questions, n_results=settings.retrieval_n_results
) if extracted_questions else []
retriever_time_ms = int((time.perf_counter() - stage_start) * 1000)
chunks_retrieved_count = len(chunks)
chunks_retrieved = format_chunks_retrieved_xml(chunks)
all_chunks_flat = []
for _sub_q, chunks in retrieval_results:
for text, meta, _dist in chunks:
all_chunks_flat.append((text, meta, _dist))
chunks_retrieved_count = len(all_chunks_flat)
chunks_retrieved = format_chunks_retrieved_per_subq(retrieval_results)
yield _format_sse({"phase": "retrieving"})
if not chunks:
if not all_chunks_flat:
_schedule_history(history_service, request, extracted_questions,
decompose_prompt, decomposer_time_ms, 0, 0, "", "",
0, 0, "", "", 0, active_profile, NO_RESULTS_ANSWER,
@ -168,25 +231,37 @@ async def _query_stream(request: QueryRequest):
})
return
# Stage 3: Filter
chunks_for_filter = [(text, meta) for text, meta, _dist in chunks]
# Stage 3: Filter (per sub-question — single LLM call)
stage_start = time.perf_counter()
chunks_by_subq = []
for _sub_q, chunks in retrieval_results:
chunks_by_subq.append([(text, meta) for text, meta, _dist in chunks])
relevance_filter = RelevanceFilter(llm_client, prompt_service=prompt_service)
yield _format_sse({"phase": "filtering"})
filter_result = await relevance_filter.filter(
request.question, chunks_for_filter, threshold=settings.relevance_threshold
)
if isinstance(filter_result, tuple):
filtered, filter_prompt = filter_result
if extracted_questions and chunks_by_subq:
filter_result = await relevance_filter.filter_per_subquestion(
extracted_questions, chunks_by_subq, threshold=settings.relevance_threshold
)
else:
filtered, filter_prompt = filter_result, ""
filter_result = ([], "")
if isinstance(filter_result, tuple):
filtered_by_subq, filter_prompt = filter_result
else:
filtered_by_subq, filter_prompt = filter_result, ""
all_filtered_flat = []
for _sub_q, filtered_chunks in filtered_by_subq:
all_filtered_flat.extend(filtered_chunks)
filter_time_ms = int((time.perf_counter() - stage_start) * 1000)
chunks_filtered_count = len(filtered)
chunks_filtered = format_chunks_filtered_xml(filtered)
chunks_filtered_count = len(all_filtered_flat)
chunks_filtered = format_chunks_filtered_per_subq(filtered_by_subq) if filtered_by_subq else ""
if not filtered:
if not all_filtered_flat:
_schedule_history(history_service, request, extracted_questions,
decompose_prompt, decomposer_time_ms, retriever_time_ms,
chunks_retrieved_count, chunks_retrieved, filter_prompt,
@ -200,48 +275,91 @@ async def _query_stream(request: QueryRequest):
})
return
# Stage 4: Generate
# Stage 4: Generate (per sub-question with progressive streaming)
stage_start = time.perf_counter()
chunk_texts = [chunk for chunk, _meta in filtered]
chunk_metadata = [meta for _chunk, meta in filtered]
sub_chunk_texts = []
sub_chunk_metadata = []
for _sub_q, filtered_chunks in filtered_by_subq:
texts = [chunk for chunk, _meta in filtered_chunks]
metas = [meta for _chunk, meta in filtered_chunks]
sub_chunk_texts.append(texts)
sub_chunk_metadata.append(metas)
yield _format_sse({"phase": "generating"})
gen_result = await rag.generate_response(request.question, chunk_texts, chunk_metadata)
if isinstance(gen_result, tuple):
answer, generate_prompt = gen_result
if extracted_questions and filtered_by_subq:
gen_result = await rag.generate_response_per_subquestion(
extracted_questions,
sub_chunk_texts,
sub_chunk_metadata,
)
else:
answer, generate_prompt = gen_result, ""
gen_result = ("", "", [])
if isinstance(gen_result, tuple) and len(gen_result) == 3:
answer, generate_prompt, grouped_sources_meta = gen_result
else:
answer, generate_prompt = gen_result if isinstance(gen_result, tuple) else (gen_result, "")
grouped_sources_meta = []
sub_question_sources = []
for idx, (sub_q_text, sources_meta) in enumerate(
zip(extracted_questions, grouped_sources_meta)
):
sources = [
SourceMetadata(
filename=meta.get("filename", "unknown"),
upload_date=meta.get("upload_date", ""),
content_summary=meta.get("content_summary", ""),
chunk_index=meta.get("chunk_index", 0),
page_number=meta.get("page_number"),
chunk_file_path=meta.get("chunk_file_path"),
)
for meta in sources_meta
]
sub_question_sources.append(
SubQuestionSources(
sub_question_index=idx,
sub_question_text=sub_q_text,
sources=sources,
)
)
yield _format_sse({
"phase": "generating_subquestion",
"sub_question_index": idx,
"sub_question_text": sub_q_text,
})
generator_time_ms = int((time.perf_counter() - stage_start) * 1000)
logger.info("Answer generated: %d chars, %d sources", len(answer), len(filtered))
logger.info(
"Answer generated: %d chars, %d sub-questions",
len(answer), len(extracted_questions),
)
total_time_ms = int((time.perf_counter() - overall_start) * 1000)
sources = [
SourceMetadata(
filename=meta.get("filename", "unknown"),
upload_date=meta.get("upload_date", ""),
content_summary=meta.get("content_summary", ""),
chunk_index=meta.get("chunk_index", 0),
page_number=meta.get("page_number"),
chunk_file_path=meta.get("chunk_file_path"),
)
for meta in chunk_metadata
]
all_sources_flat = []
for sq in sub_question_sources:
all_sources_flat.extend(sq.sources)
sources_json = json.dumps([
[s.model_dump() for s in sq.sources]
for sq in sub_question_sources
])
_schedule_history(history_service, request, extracted_questions,
decompose_prompt, decomposer_time_ms, retriever_time_ms,
chunks_retrieved_count, chunks_retrieved, filter_prompt,
filter_time_ms, chunks_filtered_count, chunks_filtered,
generate_prompt, generator_time_ms, active_profile,
answer, json.dumps([s.model_dump() for s in sources]),
total_time_ms)
answer, sources_json, total_time_ms)
yield _format_sse({
"phase": "completed",
"answer": answer,
"sources": [s.model_dump() for s in sources],
"sub_question_sources": [sq.model_dump() for sq in sub_question_sources],
"sources": [s.model_dump() for s in all_sources_flat],
})
except HTTPException: