From developer-kit-java
Integrates Qdrant vector database with LangChain4j in Java/Spring Boot apps for embedding storage, similarity search, and vector management in RAG, semantic search, or recommendations.
How this skill is triggered — by the user, by Claude, or both
Slash command
/developer-kit-java:qdrantThis skill is limited to the following tools:
The summary Claude sees in its skill listing — used to decide when to auto-load this skill
Qdrant is an AI-native vector database for semantic search and similarity retrieval. This skill provides patterns for integrating Qdrant with Java applications, focusing on Spring Boot and LangChain4j integration.
Qdrant is an AI-native vector database for semantic search and similarity retrieval. This skill provides patterns for integrating Qdrant with Java applications, focusing on Spring Boot and LangChain4j integration.
docker run -p 6333:6333 -p 6334:6334 \
-v "$(pwd)/qdrant_storage:/qdrant/storage:z" \
qdrant/qdrant
Access: REST API at http://localhost:6333, gRPC at http://localhost:6334.
Maven:
<dependency>
<groupId>io.qdrant</groupId>
<artifactId>client</artifactId>
<version>1.15.0</version>
</dependency>
Gradle:
implementation 'io.qdrant:client:1.15.0'
QdrantClient client = new QdrantClient(
QdrantGrpcClient.newBuilder("localhost").build());
For production with API key:
QdrantClient client = new QdrantClient(
QdrantGrpcClient.newBuilder("localhost", 6334, false)
.withApiKey("YOUR_API_KEY")
.build());
client.createCollectionAsync("search-collection",
VectorParams.newBuilder()
.setDistance(Distance.Cosine)
.setSize(384)
.build()
).get();
Validation: Verify the collection was created by checking client.getCollectionAsync("search-collection").get().
List<PointStruct> points = List.of(
PointStruct.newBuilder()
.setId(id(1))
.setVectors(vectors(0.05f, 0.61f, 0.76f, 0.74f))
.putAllPayload(Map.of("title", value("Spring Boot Documentation")))
.build()
);
client.upsertAsync("search-collection", points).get();
Validation: Check that client.upsertAsync(...).get() completes without throwing.
List<ScoredPoint> results = client.queryAsync(
QueryPoints.newBuilder()
.setCollectionName("search-collection")
.setLimit(5)
.setQuery(nearest(0.2f, 0.1f, 0.9f, 0.7f))
.build()
).get();
Filtered search:
List<ScoredPoint> results = client.searchAsync(
SearchPoints.newBuilder()
.setCollectionName("search-collection")
.addAllVector(List.of(0.62f, 0.12f, 0.53f, 0.12f))
.setFilter(Filter.newBuilder()
.addMust(range("category", Range.newBuilder().setEq("docs").build()))
.build())
.setLimit(5)
.build()).get();
For RAG pipelines, use LangChain4j's high-level abstractions:
EmbeddingStore<TextSegment> embeddingStore = QdrantEmbeddingStore.builder()
.collectionName("rag-collection")
.host("localhost")
.port(6334)
.apiKey("YOUR_API_KEY")
.build();
Spring Boot configuration with LangChain4j:
@Bean
public EmbeddingStore<TextSegment> embeddingStore() {
return QdrantEmbeddingStore.builder()
.collectionName("rag-collection")
.host(host)
.port(port)
.build();
}
@Bean
public EmbeddingModel embeddingModel() {
return new AllMiniLmL6V2EmbeddingModel();
}
Inject the client via configuration:
@Configuration
public class QdrantConfig {
@Value("${qdrant.host:localhost}")
private String host;
@Value("${qdrant.port:6334}")
private int port;
@Bean
public QdrantClient qdrantClient() {
return new QdrantClient(
QdrantGrpcClient.newBuilder(host, port, false).build());
}
}
@RestController
@RequestMapping("/api/search")
public class SearchController {
private final VectorSearchService searchService;
public SearchController(VectorSearchService searchService) {
this.searchService = searchService;
}
@GetMapping
public List<ScoredPoint> search(@RequestParam String query) {
List<Float> queryVector = embeddingModel.embed(query).content().vectorAsList();
return searchService.search("documents", queryVector);
}
}
public void upsertForTenant(String tenantId, List<PointStruct> points) {
String collectionName = "tenant_" + tenantId + "_documents";
client.upsertAsync(collectionName, points).get();
}
services:
qdrant:
image: qdrant/qdrant:v1.7.0
ports:
- "6333:6333"
- "6334:6334"
volumes:
- qdrant_storage:/qdrant/storage
npx claudepluginhub giuseppe-trisciuoglio/developer-kit --plugin developer-kit-javaImplements vector databases with Pinecone, Weaviate, Qdrant, Milvus, pgvector for semantic search, RAG, recommendations, and similarity systems. Optimizes embeddings, indexing, and hybrid search.
Designs and optimizes vector database architectures for semantic search, RAG, and recommendation systems using Pinecone, Weaviate, Qdrant, Milvus, and pgvector.
Provides patterns and Python templates for similarity search with vector databases, including metrics, indexes, and Pinecone implementation. Use for semantic search, RAG, recommendations, and scaling.