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giuseppe-trisciuoglio/developer-kit1.5k installs

langchain4j-testing-strategies

Provides unit test, integration test, and mock AI patterns for LangChain4j applications. Creates mock LLM responses, tests retrieval chains, validates RAG workflows, and implements Testcontainers-based integration tests for Java AI services. Use when unit testing AI services, integration testing LangChain4j components, mocking AI models, or testing LLM-based Java applications.

How do I install this agent skill?

npx skills add https://github.com/giuseppe-trisciuoglio/developer-kit --skill langchain4j-testing-strategies
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Is this agent skill safe to install?

  • Gen Agent Trust Hubpass

    The skill provides comprehensive and secure testing strategies for LangChain4j applications, following industry best practices such as utilizing mocks for unit testing and Testcontainers for isolated integration tests. It proactively addresses security by including specific examples for testing guardrails against prompt injection and demonstrates safe credential management through environment variables.

  • Socketpass

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  • Snykpass

    Risk: LOW · No issues

  • Runlayerpass

    6 files scanned · No issues

  • ZeroLeakspass

    Score: 93/100 · 2 sections analyzed

What does this agent skill do?

LangChain4J Testing Strategies

Overview

Patterns for unit testing with mocks, integration testing with Testcontainers, and end-to-end validation of RAG systems, AI Services, and tool execution.

When to Use

  • Unit testing AI services: When you need fast, isolated tests for services using LangChain4j AiServices
  • Integration testing LangChain4j components: When testing real ChatModel, EmbeddingModel, or RAG pipelines with Testcontainers
  • Mocking AI models: When you need deterministic responses without calling external APIs
  • Testing LLM-based Java applications: When validating RAG workflows, tool execution, or retrieval chains

Instructions

1. Unit Testing with Mocks

Use mock models for fast, isolated testing. See references/unit-testing.md.

ChatModel mockModel = mock(ChatModel.class);
when(mockModel.generate(any(String.class)))
    .thenReturn(Response.from(AiMessage.from("Mocked response")));

var service = AiServices.builder(AiService.class)
        .chatModel(mockModel)
        .build();

2. Configure Testing Dependencies

Setup Maven/Gradle dependencies. See references/testing-dependencies.md.

  • langchain4j-test - Guardrail assertions
  • testcontainers - Containerized testing
  • mockito - Mock external dependencies
  • assertj - Fluent assertions

3. Integration Testing with Testcontainers

Test with real services. See references/integration-testing.md.

@Testcontainers
class OllamaIntegrationTest {
    @Container
    static GenericContainer<?> ollama = new GenericContainer<>(
        DockerImageName.parse("ollama/ollama:0.5.4")
    ).withExposedPorts(11434);

    @Test
    void shouldGenerateResponse() {
        // Verify container is healthy
        assertTrue(ollama.isRunning());
        await().atMost(30, TimeUnit.SECONDS)
            .until(() -> ollama.getLogs().contains("API server listening"));

        ChatModel model = OllamaChatModel.builder()
                .baseUrl(ollama.getEndpoint())
                .build();

        // Verify model responds before running tests
        assertDoesNotThrow(() -> model.generate("ping"));

        String response = model.generate("Test query");
        assertNotNull(response);
    }
}

4. Advanced Features

Streaming, memory, error handling patterns in references/advanced-testing.md.

5. Testing Workflow

Follow the testing pyramid from references/workflow-patterns.md:

  • 70% Unit Tests: Fast, isolated with mocks
  • 20% Integration Tests: Real services with health checks
  • 10% End-to-End Tests: Complete workflows
70% Unit Tests ─ Mock ChatModel, guardrails, edge cases
20% Integration Tests ─ Testcontainers, vector stores, RAG
10% End-to-End Tests ─ Complete user journeys

Troubleshooting

  • Container fails to start: Check Docker daemon is running, verify image exists, increase timeout
  • Model not responding: Verify baseUrl is correct, check container logs, ensure model is loaded
  • Test timeout: Increase @Timeout duration for slow models, check container resource limits
  • Flaky tests: Add retry logic or health checks before assertions

Examples

Unit Test

@Test
void shouldProcessQueryWithMock() {
    ChatModel mockModel = mock(ChatModel.class);
    when(mockModel.generate(any(String.class)))
        .thenReturn(Response.from(AiMessage.from("Test response")));

    var service = AiServices.builder(AiService.class)
            .chatModel(mockModel)
            .build();

    String result = service.chat("What is Java?");
    assertEquals("Test response", result);
}

Integration Test with Testcontainers

@Testcontainers
class RAGIntegrationTest {
    @Container
    static GenericContainer<?> ollama = new GenericContainer<>(
        DockerImageName.parse("ollama/ollama:0.5.4")
    );

    @BeforeAll
    static void waitForContainerReady() {
        await().atMost(60, TimeUnit.SECONDS)
            .until(() -> ollama.getLogs().contains("API server listening"));
    }

    @Test
    void shouldCompleteRAGWorkflow() {
        assertTrue(ollama.isRunning());

        var chatModel = OllamaChatModel.builder()
                .baseUrl(ollama.getEndpoint())
                .build();

        var embeddingModel = OllamaEmbeddingModel.builder()
                .baseUrl(ollama.getEndpoint())
                .build();

        var store = new InMemoryEmbeddingStore<>();
        var retriever = EmbeddingStoreContentRetriever.builder()
                .chatModel(chatModel)
                .embeddingStore(store)
                .embeddingModel(embeddingModel)
                .build();

        var assistant = AiServices.builder(RagAssistant.class)
                .chatLanguageModel(chatModel)
                .contentRetriever(retriever)
                .build();

        String response = assistant.chat("What is Spring Boot?");
        assertNotNull(response);
        assertTrue(response.contains("Spring"));
    }
}

Best Practices

  • Use @BeforeEach/@AfterEach for test isolation
  • Never call real APIs in unit tests; use mocks
  • Include @Timeout for external service calls
  • Test both success and error handling scenarios
  • Validate response coherence and edge cases

Common Patterns

Mock Strategy

ChatModel mockModel = mock(ChatModel.class);
when(mockModel.generate(anyString())).thenReturn(Response.from(AiMessage.from("Mocked")));
when(mockModel.generate(eq("Hello"))).thenReturn(Response.from(AiMessage.from("Hi")));
when(mockModel.generate(contains("Java"))).thenReturn(Response.from(AiMessage.from("Java")));

Assertion Helpers

assertThat(response).isNotNull().isNotEmpty();
assertThat(response).containsAll(expectedKeywords);
assertThat(response).doesNotContain("error");

Reference Documentation

Constraints and Warnings

  • AI responses are non-deterministic; use mocks for reliable unit tests
  • Avoid real API calls in tests to prevent costs and rate limiting
  • Integration tests require Docker; use container health checks
  • RAG tests need properly seeded embedding stores
  • Mock-based tests cannot guarantee actual LLM behavior; supplement with integration tests
  • Use test-specific configuration profiles; never affect production data

Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.

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