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-aiLast scanned: 5/24/2026
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}solon-ai is an open-source ai agents skill for AI coding assistants such as Claude Code, Codex CLI, and ChatGPT, built 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. It has 417 GitHub stars.
Yes. solon-ai passed SkillsLLM's automated security scan — a dependency vulnerability audit plus prompt-injection heuristics — with no high-severity issues. You can read the full report in the Security Report section on this page.
Clone the repository with "git clone https://github.com/opensolon/solon-ai" and add it to your Claude Code skills directory (see the Installation section above).
solon-ai is primarily written in Java. It is open-source under opensolon on GitHub, so you can review or fork the full source.
Yes. SkillsLLM lists many other AI Agents skills you can browse and compare side by side. Open the AI Agents category from the badge at the top of this page, or use the Related Skills and comparison links further down to weigh solon-ai against similar tools.
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Solon 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:
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")
.defaultTalentAdd(new McpGatewayTalent())
.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>
Talent talent = new TalentDesc("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.talentAdd(talent))
.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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