feat(services): add per-sub-question retrieval, filtering, and response generation

Add retrieve_per_subquestion() that queries ChromaDB independently per sub-question instead of joining all sub-qs into one query string. Add filter_per_subquestion() that evaluates each chunk against its own originating sub-question in a single LLM call with a redesigned grouped prompt. Add generate_response_per_subquestion() that produces markdown sections per sub-question with grouped sources and {context_sections} template support. All existing methods preserved for backward compatibility.

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 23:27:50 +08:00
parent d509c14b80
commit 57a130dc96
2 changed files with 239 additions and 0 deletions

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@ -63,6 +63,35 @@ class RAGService:
return document_id
def retrieve_per_subquestion(
self,
sub_questions: List[str],
n_results: int = 10,
) -> List[Tuple[str, List[Tuple[str, Dict[str, Any], float]]]]:
"""Retrieve chunks for each sub-question independently.
Calls retrieve() once per sub-question to get chunks specifically
relevant to each decomposed question, rather than joining all
sub-questions into a single query string.
Args:
sub_questions: List of decomposed sub-questions from QueryDecomposer.
n_results: Number of chunks to retrieve per sub-question.
Returns:
List of (sub_question, chunks) tuples. Each chunks list contains
(text, metadata, distance) tuples in the standard retrieve() format.
Returns empty list if sub_questions is empty.
"""
if not sub_questions:
return []
results: List[Tuple[str, List[Tuple[str, Dict[str, Any], float]]]] = []
for sub_q in sub_questions:
chunks = self.retrieve([sub_q], n_results=n_results)
results.append((sub_q, chunks))
return results
def retrieve(
self,
query_keywords: List[str],
@ -142,6 +171,105 @@ class RAGService:
result = await self.llm_client.complete(prompt=prompt, temperature=0.3, step_name="ResponseGeneration")
return result, prompt
async def generate_response_per_subquestion(
self,
sub_questions: List[str],
sub_chunks: List[List[str]],
sub_metadata: List[List[Dict[str, Any]]],
) -> Tuple[str, str, List[List[Dict[str, Any]]]]:
"""Generate sub-question-organized RAG response.
Builds context sections for each sub-question and asks the LLM to
answer each one using only its own document chunks. Returns the
full markdown answer plus sources organized by sub-question.
Args:
sub_questions: List of decomposed sub-questions.
sub_chunks: List of chunk text lists (one per sub-question).
sub_metadata: List of metadata dict lists (one per sub-question).
Must be same length as sub_chunks, with inner lists matching.
Returns:
Tuple of (answer, prompt, grouped_sources).
answer: Markdown string with ## Sub-question N: sections.
prompt: The rendered LLM prompt string.
grouped_sources: List of metadata dict lists (one per sub-question),
each metadata dict is a SourceMetadata-compatible dict.
"""
if not sub_questions:
return (
"I could not find any relevant information to answer your question.",
"",
[],
)
has_chunks = any(len(c) > 0 for c in sub_chunks)
if not has_chunks:
return (
"I could not find any relevant information to answer your question.",
"",
[],
)
if self.llm_client is None:
return ("LLM client not configured.", "", [])
context_parts = []
for idx, (sq, chunks, metas) in enumerate(
zip(sub_questions, sub_chunks, sub_metadata)
):
context_parts.append(
f'### Context for Sub-question {idx}: "{sq}"'
)
for chunk, meta in zip(chunks, metas):
source = meta.get("filename", "unknown")
summary = meta.get("content_summary", "")
page_num = meta.get("page_number")
citation_label = (
f"{source}, page {page_num}" if page_num else source
)
context_parts.append(
f"[{citation_label}] Source: {source}\n"
f"Summary: {summary}\n"
f"Content: {chunk}\n"
)
context_sections = "\n".join(context_parts)
if self._prompt_service is not None:
template = self._prompt_service.get_prompt_template(
"generate_per_subq"
)
else:
template = (
"You must answer each sub-question using ONLY the document "
"chunks provided for it.\n"
"Do not use any external knowledge.\n"
"Format your answer as markdown sections — one section per "
"sub-question.\n"
'Each section should start with "## Sub-question N: '
'<the question>"\n'
"Each section should contain 1-5 bullet points.\n"
"Cite your sources inline using bracket labels, "
"e.g. [filename, page N].\n"
"Place the citation at the end of each relevant bullet point."
"\n\n"
"{context_sections}\n\n"
"Answer:"
)
prompt = template.replace("{context_sections}", context_sections)
answer = await self.llm_client.complete(
prompt=prompt, temperature=0.3, step_name="ResponseGeneration"
)
grouped_sources: List[List[Dict[str, Any]]] = []
for metas in sub_metadata:
grouped_sources.append(list(metas))
return answer, prompt, grouped_sources
def list_documents(self) -> Tuple[List[Dict[str, Any]], int, int]:
from collections import defaultdict

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@ -103,3 +103,114 @@ class RelevanceFilter:
result.append((chunk, meta))
return result, prompt
def _build_per_subq_prompt(
self,
sub_questions: List[str],
sub_chunks: List[List[Tuple[str, Dict]]],
) -> str:
sections: List[str] = [
"Evaluate each chunk for relevance to its associated sub-question only."
]
for idx, (sq, chunks) in enumerate(zip(sub_questions, sub_chunks)):
sections.append(f'\nSub-question {idx}: "{sq}"')
for c_idx, (text, _meta) in enumerate(chunks):
sections.append(f"Chunk {c_idx}: {text}")
sections.append(
"\nFor each chunk, rate its relevance 0-10 considering ONLY its associated sub-question."
)
sections.append(
'Return a JSON object mapping sub-question indices to arrays of scores.\n'
'Example: {"0": [8.5, 3.2, 9.0], "1": [7.0, 9.1]}'
)
return "\n".join(sections)
async def filter_per_subquestion(
self,
sub_questions: List[str],
sub_chunks: List[List[Tuple[str, Dict]]],
threshold: float = 7.0,
) -> Tuple[List[Tuple[str, List[Tuple[str, Dict]]]], str]:
"""Filter chunks per sub-question in a single LLM call.
Builds a prompt that groups chunks by their originating sub-question
and asks the LLM to score each chunk 0-10 against only its own
sub-question. Returns results organized by sub-question with
relevance scores embedded in metadata.
Args:
sub_questions: List of decomposed sub-questions.
sub_chunks: List of chunk lists (one per sub-question). Each inner
list contains (chunk_text, metadata) tuples.
threshold: Minimum relevance score (exclusive) to keep a chunk.
Returns:
Tuple of (filtered_results, prompt).
filtered_results: List of (sub_question, filtered_chunks) tuples.
Each filtered_chunks is a list of (chunk_text, metadata) tuples
where metadata includes 'relevance_score'.
Returns ([], "") on error or empty input.
"""
if not sub_questions:
return [], ""
has_any_chunks = any(len(c) > 0 for c in sub_chunks)
if not has_any_chunks:
return [
(sq, []) for sq in sub_questions
], ""
prompt = self._build_per_subq_prompt(sub_questions, sub_chunks)
try:
response = await self.llm_client.complete(
prompt, temperature=0.0, step_name="RelevanceFilter"
)
except Exception as exc:
logger.error("RelevanceFilter per-subq LLM call failed: %s", exc)
return [], prompt
try:
response = _extract_json_from_markdown(response)
parsed = json.loads(response)
if not isinstance(parsed, dict):
logger.error("RelevanceFilter per-subq: expected JSON object, got %s", type(parsed).__name__)
return [], prompt
score_map: Dict[str, List[float]] = {}
for key, scores in parsed.items():
if not isinstance(scores, list):
return [], prompt
score_map[key] = []
for v in scores:
if not isinstance(v, (int, float)):
return [], prompt
score_map[key].append(float(v))
except Exception as exc:
logger.error("RelevanceFilter per-subq JSON parse failed: %s", exc)
return [], prompt
for idx in range(len(sub_questions)):
key = str(idx)
if len(sub_chunks[idx]) == 0:
continue
if key not in score_map or len(score_map[key]) != len(sub_chunks[idx]):
logger.error(
"RelevanceFilter per-subq score count mismatch for sub-q %d: "
"expected %d scores, got %d",
idx, len(sub_chunks[idx]),
len(score_map.get(key, [])),
)
return [], prompt
filtered_results: List[Tuple[str, List[Tuple[str, Dict]]]] = []
for idx, (sq, chunks) in enumerate(zip(sub_questions, sub_chunks)):
scores = score_map.get(str(idx), [])
kept: List[Tuple[str, Dict]] = []
for (chunk, meta), score in zip(chunks, scores):
if score > threshold:
meta = {**meta, "relevance_score": score}
kept.append((chunk, meta))
filtered_results.append((sq, kept))
return filtered_results, prompt