quesbook_search / vectors.py
Stefan
feat(setup): initial commit
bb3407a
raw
history blame
1.13 kB
from embedding import strings_to_vectors
import pinecone
import os
PINECONE_API = os.getenv("PINECONE_API")
pinecone.init(api_key=PINECONE_API, environment="us-west4-gcp-free")
vector_index = pinecone.Index("quesmed")
def scored_vector_todict(scored_vector):
x = {
"id": scored_vector["id"],
"metadata": {
"topicId": int(scored_vector["metadata"]["topicId"]),
"chapterId": int(scored_vector["metadata"]["chapterId"]),
"conceptId": int(scored_vector["metadata"]["conceptId"]),
},
"score": scored_vector["score"] * 100,
"values": scored_vector["values"],
}
for k, v in x["metadata"].items():
x[k] = int(v)
x["passage_idx"] = int(x["id"][-1])
return x
def match_query(query: str, n_res=3):
queries = [f"query: {query.replace('?','').lower()}"]
query_embeddings = strings_to_vectors(queries)
result = vector_index.query(
query_embeddings[0].tolist(),
top_k=n_res,
include_metadata=True,
namespace="quesbook",
)
return list(map(scored_vector_todict, result["matches"]))