by opensolon
Java AI application development framework (supports LLM-tool,skill; RAG; MCP; Agent-ReAct,Team-Agent). Compatible with java8 ~ java25. It can also be embedded in SpringBoot, jFinal, Vert.x, Quarkus, and other frameworks.
# Add to your Claude Code skills
git clone https://github.com/opensolon/solon-aiSolon AI is one of the core subprojects of the Solon project. It is a full-scenario Java AI development framework, which aims to deeply integrate LLM large model, RAG knowledge base, MCP protocol and Agent collaboration choreography.
Examples of embeddings (including third-party frameworks) for solon-ai:
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Support for synchronous and Reactive calls, built-in dialect adaptation, Tool, Skill, ChatSession, etc.
ChatModel chatModel = ChatModel.of("http://127.0.0.1:11434/api/chat")
.provider("ollama") //Need to specify vendor, used to identify interface style (also called dialect)
.model("qwen2.5:1.5b")
.defaultSkillAdd(new ToolGatewaySkill())
.build();
// Synchronize the call and print the response message
AssistantMessage result = ChatchatModel.prompt("The weather in Hangzhou today?")
.options(op->op.toolAdd(new WeatherTools())) //Adding tools
.call()
.getMessage();
System.out.println(result);
// Stream call
chatModel.prompt("hello").stream(); //Publisher<ChatResponse>
Skill skill = new SkillDesc("order_expert")
.description("Order Assistant")
// Dynamic admission: Activated only when "order" is mentioned
.isSupported(prompt -> prompt.getUserMessageContent().contains("order"))
// Dynamic instructions: Inject different Sops depending on whether the user is a VIP or not
.instruction(prompt -> {
if ("VIP".equals(prompt.getMeta("user_level"))) {
return "This is a VIP customer, please call fast_track_tool first.";
}
return "Process the order inquiry according to the normal process.";
})
.toolAdd(new OrderTools());
chatModel.prompt("Where is my order from yesterday?")
.options(o->o.skillAdd(skill))
.call();
It provides full-link support from DocumentLoader, DocumentSplitter, EmbeddingModel, and RerankingModel.
//Building a Knowledge Warehouse
EmbeddingModel embeddingModel = EmbeddingModel.of(apiUrl).apiKey(apiKey).provider(provider).model(model).batchSize(10).build();
RerankingModel rerankingModel = RerankingModel.of(apiUrl).apiKey(apiKey).provider(provider).model(model).build();
InMemoryRepository repository = new InMemoryRepository(TestUtils.getEmbeddingModel()); //3.初始化知识库
repository.insert(new PdfLoader(pdfUri).load());
//retrieval
List<Document> docs = repository.search(query);
//You can rearrange it if you want
docs = rerankingModel.rerank(query, docs);
//Cue enhancement is
ChatMessage message = ChatMessage.ofUserAugment(query, docs);
//Calling the llm
chatModel.prompt(message)
.call();
Deep integration with MCP protocol (MCP_2025_06_18), supporting cross-platform tool, resource, and prompt sharing.
//server
@McpServerEndpoint(channel = McpChannel.STREAMABLE, mcpEndpoint = "/mcp")
public class MyMcpServer {
@ToolMapping(description = "Checking the weather")
public String getWeather(@Param(description = "city") String location) {
return "It's sunny, 25 degrees";
}
}
//client
McpClientProvider clientProvider = McpClientProvider.builder()
.channel(McpChannel.STREAMABLE)
.url("http://localhost:8080/mcp")
.build();
The Solon AI Agent transforms reasoning logic into graph-driven collaboration flows, enabling ReAct introspective reasoning and multi-agent Team collaboration.
//Reflective intelligent agent:
ReActAgent agent = ReActAgent.of(chatModel) // 或者用 SimpleAgent.of(chatModel)
.name("weather_expert")
.description("Check the weather and provide advice")
.defaultToolAdd(weatherTool) // Inject MCP or local tools
.build();
agent.prompt("What to wear in Beijing today?").call(); // Autocomplete: Think -> Call tool -> Observe -> Summarize
// Constructing a team agent: Automatically arranging member roles through protocols
TeamAgent team = TeamAgent.of(chatModel)
.name("marketing_team")
.protocol(TeamProtocols.HIERARCHICAL) // Hierarchical collaboration (6 preset protocols)
.agentAdd(copywriterAgent) // Copywriter expert
.agentAdd(illustratorAgent) // Illustrator expert
.build();
team.prompt("Plan a promotion scheme for deep-sea mineral water").call(); // Supervisor automatically decomposes tasks and assigns them to corresponding experts .defaultToolAdd(weatherTool) // Inject MCP or local tools
The low-code flow application of Dify is simulated, and the links such as RAG, hint word enhancement and model call are YAML arranged.
id: demo1
layout:
- type: "start"
- task: "@VarInput"
meta:
message: "Solon 是谁开发的?"
- task: "@EmbeddingModel"
meta:
embeddingConfig: # "@type": "org.noear.solon.ai.embedding.EmbeddingConfig"
provider: "ollama"
model: "bge-m3"
apiUrl: "http://127.0.0.1:11434/api/embed"
- task: "@InMemoryRepository"
meta:
documentSources:
- "https://solon.noear.org/article/about?format=md"
splitPipeline:
- "org.noear.solon.ai.rag.splitter.RegexTextSplitter"
- "org.noear.solon.ai.rag.splitter.TokenSizeTextSplitter"
- task: "@ChatModel"
meta:
systemPrompt: "你是个知识库"
stream: false
chatConfig: # "@type": "org.noear.solon.ai.chat.ChatConfig"
provider: "ollama"
model: "qwen2.5:1.5b"
apiUrl: "http://127.0.0.1:11434/api/chat"
- task: "@ConsoleOutput"
# FlowEngine flowEngine = FlowEngine.newInstance();
# ...
# flowEngine.eval("demo1");
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