Comprehensive developer toolkit providing reusable skills for Java/Spring Boot, TypeScript/NestJS/React/Next.js, Python, PHP, AWS CloudFormation, AI/RAG, DevOps, and more.
90
90%
Does it follow best practices?
Impact
Pending
No eval scenarios have been run
Risky
Do not use without reviewing
Implements RAG systems with LangChain4j: document ingestion pipelines, embedding stores, and vector search for chat-with-documents and knowledge-enhanced AI applications.
Create a new Spring Boot project with required dependencies:
pom.xml:
<dependency>
<groupId>dev.langchain4j</groupId>
<artifactId>langchain4j-spring-boot-starter</artifactId>
<version>1.8.0</version>
</dependency>
<dependency>
<groupId>dev.langchain4j</groupId>
<artifactId>langchain4j-open-ai</artifactId>
<version>1.8.0</version>
</dependency>Configure document loading and processing with validation:
Validation Checkpoint: After ingestion, verify embedding count matches segment count and test retrieval with a sample query.
@Configuration
public class RAGConfiguration {
@Bean
public EmbeddingModel embeddingModel() {
return OpenAiEmbeddingModel.builder()
.apiKey(System.getenv("OPENAI_API_KEY"))
.modelName("text-embedding-3-small")
.build();
}
@Bean
public EmbeddingStore<TextSegment> embeddingStore() {
return new InMemoryEmbeddingStore<>();
}
}Create document ingestion service:
@Service
@RequiredArgsConstructor
public class DocumentIngestionService {
private final EmbeddingModel embeddingModel;
private final EmbeddingStore<TextSegment> embeddingStore;
public void ingestDocument(String filePath, Map<String, Object> metadata) {
Document document = FileSystemDocumentLoader.loadDocument(filePath);
document.metadata().putAll(metadata);
DocumentSplitter splitter = DocumentSplitters.recursive(
500, 50, new OpenAiTokenCountEstimator("text-embedding-3-small")
);
List<TextSegment> segments = splitter.split(document);
List<Embedding> embeddings = embeddingModel.embedAll(segments).content();
embeddingStore.addAll(embeddings, segments);
// Validation: verify embedding count matches segments
if (embeddings.size() != segments.size()) {
throw new IllegalStateException("Embedding count mismatch: expected " + segments.size() + ", got " + embeddings.size());
}
}
public boolean validateIngestion(String testQuery) {
// Validation: test retrieval with sample query
Embedding queryEmbedding = embeddingModel.embed(testQuery).content();
List<EmbeddingMatch<TextSegment>> results = embeddingStore.search(
EmbeddingSearchRequest.builder()
.queryEmbedding(queryEmbedding)
.maxResults(1)
.build()
).matches();
return !results.isEmpty();
}
}Setup content retrieval with filtering:
Validation Checkpoint: After configuration, test retrieval with a known query to verify embeddings are searchable.
@Configuration
public class ContentRetrieverConfiguration {
@Bean
public ContentRetriever contentRetriever(
EmbeddingStore<TextSegment> embeddingStore,
EmbeddingModel embeddingModel) {
return EmbeddingStoreContentRetriever.builder()
.embeddingStore(embeddingStore)
.embeddingModel(embeddingModel)
.maxResults(5)
.minScore(0.7)
.build();
}
}Define AI service with context retrieval:
interface KnowledgeAssistant {
@SystemMessage("""
You are a knowledgeable assistant with access to a comprehensive knowledge base.
When answering questions:
1. Use the provided context from the knowledge base
2. If information is not in the context, clearly state this
3. Provide accurate, helpful responses
4. When possible, reference specific sources
5. If the context is insufficient, ask for clarification
""")
String answerQuestion(String question);
}
@Service
@RequiredArgsConstructor
public class KnowledgeService {
private final KnowledgeAssistant assistant;
public KnowledgeService(ChatModel chatModel, ContentRetriever contentRetriever) {
this.assistant = AiServices.builder(KnowledgeAssistant.class)
.chatModel(chatModel)
.contentRetriever(contentRetriever)
.build();
}
public String answerQuestion(String question) {
return assistant.answerQuestion(question);
}
}public class BasicRAGExample {
public static void main(String[] args) {
var embeddingStore = new InMemoryEmbeddingStore<TextSegment>();
var embeddingModel = OpenAiEmbeddingModel.builder()
.apiKey(System.getenv("OPENAI_API_KEY"))
.modelName("text-embedding-3-small")
.build();
var ingestor = EmbeddingStoreIngestor.builder()
.embeddingModel(embeddingModel)
.embeddingStore(embeddingStore)
.build();
ingestor.ingest(Document.from("Spring Boot is a framework for building Java applications with minimal configuration."));
var retriever = EmbeddingStoreContentRetriever.builder()
.embeddingStore(embeddingStore)
.embeddingModel(embeddingModel)
.build();
}
}interface MultiDomainAssistant {
@SystemMessage("""
You are an expert assistant with access to multiple knowledge domains:
- Technical documentation
- Company policies
- Product information
- Customer support guides
Tailor your response based on the type of question and available context.
Always indicate which domain the information comes from.
""")
String answerQuestion(@MemoryId String userId, String question);
}@Service
@RequiredArgsConstructor
public class HierarchicalRAGService {
private final EmbeddingStore<TextSegment> chunkStore;
private final EmbeddingStore<TextSegment> summaryStore;
private final EmbeddingModel embeddingModel;
public String performHierarchicalRetrieval(String query) {
List<EmbeddingMatch<TextSegment>> summaryMatches = searchSummaries(query);
List<TextSegment> relevantChunks = new ArrayList<>();
for (EmbeddingMatch<TextSegment> summaryMatch : summaryMatches) {
String documentId = summaryMatch.embedded().metadata().getString("documentId");
List<EmbeddingMatch<TextSegment>> chunkMatches = searchChunksInDocument(query, documentId);
chunkMatches.stream()
.map(EmbeddingMatch::embedded)
.forEach(relevantChunks::add);
}
return generateResponseWithChunks(query, relevantChunks);
}
}@RequiredArgsConstructor
@Service
public class SimpleRAGPipeline {
private final EmbeddingModel embeddingModel;
private final EmbeddingStore<TextSegment> embeddingStore;
private final ChatModel chatModel;
public String answerQuestion(String question) {
Embedding queryEmbedding = embeddingModel.embed(question).content();
EmbeddingSearchRequest request = EmbeddingSearchRequest.builder()
.queryEmbedding(queryEmbedding)
.maxResults(3)
.build();
List<TextSegment> segments = embeddingStore.search(request).matches().stream()
.map(EmbeddingMatch::embedded)
.collect(Collectors.toList());
String context = segments.stream()
.map(TextSegment::text)
.collect(Collectors.joining("\n\n"));
return chatModel.generate(context + "\n\nQuestion: " + question + "\nAnswer:");
}
}@Service
@RequiredArgsConstructor
public class HybridSearchService {
private final EmbeddingStore<TextSegment> vectorStore;
private final FullTextSearchEngine keywordEngine;
private final EmbeddingModel embeddingModel;
public List<Content> hybridSearch(String query, int maxResults) {
// Vector search
List<Content> vectorResults = performVectorSearch(query, maxResults);
// Keyword search
List<Content> keywordResults = performKeywordSearch(query, maxResults);
// Combine and re-rank using RRF algorithm
return combineResults(vectorResults, keywordResults, maxResults);
}
}Embedding Count Mismatch: Thrown when segments != embeddings. Check splitter configuration and model availability.
Empty Retrieval Results: Call validateIngestion(testQuery) to verify embeddings are searchable. Check if document was ingested successfully.
Low Retrieval Scores: Verify minScore threshold (default 0.7) is not too high for your use case. Test with known queries.
Poor Retrieval Results
Slow Performance
High Memory Usage
docs
plugins
developer-kit-ai
developer-kit-aws
agents
docs
skills
aws
aws-cli-beast
aws-cost-optimization
aws-drawio-architecture-diagrams
aws-sam-bootstrap
aws-cloudformation
aws-cloudformation-auto-scaling
aws-cloudformation-bedrock
aws-cloudformation-cloudfront
aws-cloudformation-cloudwatch
aws-cloudformation-dynamodb
aws-cloudformation-ec2
aws-cloudformation-ecs
aws-cloudformation-elasticache
references
aws-cloudformation-iam
references
aws-cloudformation-lambda
aws-cloudformation-rds
aws-cloudformation-s3
aws-cloudformation-security
aws-cloudformation-task-ecs-deploy-gh
aws-cloudformation-vpc
references
developer-kit-core
agents
commands
skills
developer-kit-devops
developer-kit-java
agents
commands
docs
skills
aws-lambda-java-integration
aws-rds-spring-boot-integration
aws-sdk-java-v2-bedrock
aws-sdk-java-v2-core
aws-sdk-java-v2-dynamodb
aws-sdk-java-v2-kms
aws-sdk-java-v2-lambda
aws-sdk-java-v2-messaging
aws-sdk-java-v2-rds
aws-sdk-java-v2-s3
aws-sdk-java-v2-secrets-manager
clean-architecture
graalvm-native-image
langchain4j-ai-services-patterns
references
langchain4j-mcp-server-patterns
references
langchain4j-rag-implementation-patterns
references
langchain4j-spring-boot-integration
langchain4j-testing-strategies
langchain4j-tool-function-calling-patterns
langchain4j-vector-stores-configuration
references
qdrant
references
spring-ai-mcp-server-patterns
spring-boot-actuator
spring-boot-cache
spring-boot-crud-patterns
spring-boot-dependency-injection
spring-boot-event-driven-patterns
spring-boot-openapi-documentation
spring-boot-project-creator
spring-boot-resilience4j
spring-boot-rest-api-standards
spring-boot-saga-pattern
spring-boot-security-jwt
assets
references
scripts
spring-boot-test-patterns
spring-data-jpa
references
spring-data-neo4j
references
unit-test-application-events
unit-test-bean-validation
unit-test-boundary-conditions
unit-test-caching
unit-test-config-properties
references
unit-test-controller-layer
unit-test-exception-handler
references
unit-test-json-serialization
unit-test-mapper-converter
references
unit-test-parameterized
unit-test-scheduled-async
references
unit-test-service-layer
references
unit-test-utility-methods
unit-test-wiremock-rest-api
references
developer-kit-php
developer-kit-project-management
developer-kit-python
developer-kit-specs
commands
docs
hooks
test-templates
tests
skills
developer-kit-tools
developer-kit-typescript
agents
docs
hooks
rules
skills
aws-cdk
aws-lambda-typescript-integration
better-auth
clean-architecture
drizzle-orm-patterns
dynamodb-toolbox-patterns
references
nestjs
nestjs-best-practices
nestjs-code-review
nestjs-drizzle-crud-generator
nextjs-app-router
nextjs-authentication
nextjs-code-review
nextjs-data-fetching
nextjs-deployment
nextjs-performance
nx-monorepo
react-code-review
react-patterns
shadcn-ui
tailwind-css-patterns
tailwind-design-system
references
turborepo-monorepo
typescript-docs
typescript-security-review
zod-validation-utilities
references
github-spec-kit