use anyhow::anyhow;
use qdrant_client::{
Qdrant,
qdrant::{CreateCollectionBuilder, Distance, QueryPointsBuilder, VectorParamsBuilder},
};
use rig_core::{
Embed,
client::ProviderClient,
embeddings::EmbeddingsBuilder,
providers::openai::{self, Client},
vector_store::{InsertDocuments, VectorStoreIndex, request::SearchFilter},
};
use rig_core::{client::EmbeddingsClient, vector_store::request::VectorSearchRequest};
use rig_qdrant::{QdrantFilter, QdrantVectorStore};
#[derive(Embed, serde::Deserialize, serde::Serialize, Debug)]
struct Word {
id: String,
#[embed]
definition: String,
}
#[tokio::main]
async fn main() -> Result<(), anyhow::Error> {
const COLLECTION_NAME: &str = "rig-collection";
let client = Qdrant::from_url("http://localhost:6334").build()?;
if !client.collection_exists(COLLECTION_NAME).await? {
client
.create_collection(
CreateCollectionBuilder::new(COLLECTION_NAME)
.vectors_config(VectorParamsBuilder::new(1536, Distance::Cosine)),
)
.await?;
}
let openai_client = Client::from_env()?;
let model = openai_client.embedding_model(openai::TEXT_EMBEDDING_ADA_002);
let documents = EmbeddingsBuilder::new(model.clone())
.document(Word {
id: "0981d983-a5f8-49eb-89ea-f7d3b2196d2e".to_string(),
definition: "Definition of a *flurbo*: A flurbo is a green alien that lives on cold planets".to_string(),
})?
.document(Word {
id: "62a36d43-80b6-4fd6-990c-f75bb02287d1".to_string(),
definition: "Definition of a *glarb-glarb*: A glarb-glarb is an ancient tool used by the ancestors of the inhabitants of planet Jiro to farm the land.".to_string(),
})?
.document(Word {
id: "f9e17d59-32e5-440c-be02-b2759a654824".to_string(),
definition: "Definition of a *linglingdong*: A term used by inhabitants of the far side of the moon to describe humans.".to_string(),
})?
.build()
.await?;
let query_params = QueryPointsBuilder::new(COLLECTION_NAME).with_payload(true);
let vector_store = QdrantVectorStore::new(client, model, query_params.build());
vector_store
.insert_documents(documents)
.await
.map_err(|err| anyhow!("Couldn't insert documents: {err}"))?;
let query = "What is a linglingdong?";
let req = VectorSearchRequest::builder()
.query(query)
.samples(1)
.build();
let results = vector_store.top_n::<Word>(req).await?;
println!("Results: {results:?}");
let filtered_req = VectorSearchRequest::<QdrantFilter>::builder()
.query(query)
.samples(1)
.filter(QdrantFilter::eq(
"id",
serde_json::json!("f9e17d59-32e5-440c-be02-b2759a654824"),
))
.build();
let filtered_results = vector_store.top_n::<Word>(filtered_req).await?;
println!("Filtered results: {filtered_results:?}");
Ok(())
}