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import os
from qdrant_client import QdrantClient
from qdrant_client.models import Distance, VectorParams
from langchain_qdrant import QdrantVectorStore
from langchain_groq import ChatGroq
from langchain_community.embeddings import HuggingFaceEmbeddings
from dotenv import load_dotenv
load_dotenv()
VECTORSTORE_CACHE = {}
MEMORY_CACHE = {}
def _repo_collection_name(repo_name):
return f"repo_docs_{repo_name}"
def _memory_collection_name(repo_name):
return f"memory_{repo_name}"
def get_embeddings_model():
return HuggingFaceEmbeddings(
model_name="sentence-transformers/all-MiniLM-L6-v2"
)
def get_llm():
groq_api_key = os.getenv("GROQ_API_KEY")
if not groq_api_key:
raise ValueError("GROQ_API_KEY is not set")
return ChatGroq(
model="llama-3.1-8b-instant",
temperature=0,
api_key=groq_api_key,
)
def _invoke_text(llm, prompt):
result = llm.invoke(prompt)
if isinstance(result, str):
return result
content = getattr(result, "content", "")
if isinstance(content, list):
parts = []
for item in content:
if isinstance(item, str):
parts.append(item)
elif isinstance(item, dict):
text = item.get("text")
if text:
parts.append(text)
return "".join(parts)
return str(content)
def _get_client():
return QdrantClient(url=os.getenv("QDRANT_URL"), api_key=os.getenv("QDRANT_API_KEY"))
def _ensure_collection(client, collection_name):
if not client.collection_exists(collection_name):
client.create_collection(
collection_name=collection_name,
vectors_config=VectorParams(size=384, distance=Distance.COSINE),
)
def get_vectorstore(repo_name):
if repo_name in VECTORSTORE_CACHE:
return VECTORSTORE_CACHE[repo_name]
client = _get_client()
embeddings = get_embeddings_model()
collection_name = _repo_collection_name(repo_name)
_ensure_collection(client, collection_name)
vectorstore = QdrantVectorStore(
client=client,
collection_name=collection_name,
embedding=embeddings,
)
VECTORSTORE_CACHE[repo_name] = vectorstore
return vectorstore
def get_memory_vectorstore(repo_name):
if repo_name in MEMORY_CACHE:
return MEMORY_CACHE[repo_name]
client = _get_client()
embeddings = get_embeddings_model()
collection_name = _memory_collection_name(repo_name)
_ensure_collection(client, collection_name)
memory_store = QdrantVectorStore(
client=client,
collection_name=collection_name,
embedding=embeddings,
)
MEMORY_CACHE[repo_name] = memory_store
return memory_store
def initialize_repo_caches(repo_name):
get_vectorstore(repo_name)
get_memory_vectorstore(repo_name)
def store_memory(query, response, repo_name):
if len(query.strip()) <= 10:
return
memory_text = f"User: {query}\nAssistant: {response}"
memory_store = get_memory_vectorstore(repo_name)
memory_store.add_texts(
[memory_text],
metadatas=[
{
"type": "memory",
"timestamp": time.time(),
}
],
)
def get_retriever(vectorstore):
return vectorstore.as_retriever(
search_type="mmr",
search_kwargs={"k": 6, "fetch_k": 24},
)
def _get_overview_retriever(vectorstore):
return vectorstore.as_retriever(
search_type="mmr",
search_kwargs={"k": 10, "fetch_k": 40},
)
def _looks_code_intent(query):
q = query.lower()
code_signals = [
"function", "method", "class", "module", "file", "implementation", "logic",
"algorithm", "predict", "prediction", "how does", "how is", "where is", "call",
"returns", "parameter", "bug", "error", "traceback", "stack", "refactor"
]
return any(signal in q for signal in code_signals)
def _looks_overview_intent(query):
q = query.lower().strip()
overview_signals = [
"what does this repository do",
"what does this repo do",
"what is this repository",
"what is this repo",
"repository summary",
"repo summary",
"overview",
"high level",
"purpose of",
]
return any(signal in q for signal in overview_signals)
def _select_diverse_docs(docs, max_docs=8, max_per_path=2):
selected = []
per_path = {}
for doc in docs:
path = doc.metadata.get("path", "")
count = per_path.get(path, 0)
if count >= max_per_path:
continue
selected.append(doc)
per_path[path] = count + 1
if len(selected) >= max_docs:
break
return selected or docs[:max_docs]
def _rewrite_query(question, conversation_chunks, llm):
if not conversation_chunks:
return question
memory_context = "\n\n".join(conversation_chunks)
rewrite_prompt = f"""
Rewrite the user question into a standalone retrieval query.
Use relevant details from prior conversation only when needed to resolve references.
Keep technical names, filenames, class names, and function names unchanged.
Return only the rewritten query.
Relevant Past Conversation:
{memory_context}
Original Question:
{question}
"""
rewritten = _invoke_text(llm, rewrite_prompt).strip()
if not rewritten:
return question
rewritten = rewritten.replace("\n", " ").strip('"\' ')
return rewritten or question
def ask_question(query, repo_name):
vectorstore = get_vectorstore(repo_name)
llm = get_llm()
memory_store = get_memory_vectorstore(repo_name)
memory_retriever = memory_store.as_retriever(search_kwargs={"k": 3})
memory_docs = memory_retriever.invoke(query)
conversation_chunks = [d.page_content for d in memory_docs]
rewritten_query = _rewrite_query(query, conversation_chunks, llm)
is_overview_query = _looks_overview_intent(query) or _looks_overview_intent(rewritten_query)
retriever = _get_overview_retriever(vectorstore) if is_overview_query else get_retriever(vectorstore)
repo_docs = retriever.invoke(rewritten_query)
repo_docs = _select_diverse_docs(repo_docs, max_docs=10 if is_overview_query else 8)
if (not is_overview_query) and (_looks_code_intent(query) or _looks_code_intent(rewritten_query)):
code_docs = [d for d in repo_docs if d.metadata.get("type") == "code"]
if code_docs:
repo_docs = _select_diverse_docs(code_docs, max_docs=8)
conversation_context = "\n\n".join([d.page_content for d in memory_docs]) or "None"
code_context = "\n\n".join([doc.page_content for doc in repo_docs])
context = (
f"Relevant Past Conversation:\n{conversation_context}\n\n"
f"Relevant Code Context:\n{code_context}\n\n"
f"Question:\n{query}"
)
prompt = f"""
You are a senior software engineer.
Use:
* Relevant Past Conversation to resolve references like "that function"
* Relevant Code Context for factual answers
If exact answer is missing, infer logically from code and mention it is an inference.
Be concise and technical.
Context:
{context}
"""
response = _invoke_text(llm, prompt)
store_memory(query, response, repo_name)
return response, repo_docs
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