Loading...
Loading...
Provides comprehensive guidance for Spring AI Alibaba including Alibaba Cloud AI services integration, model APIs, and AI application development. Use when the user asks about Spring AI Alibaba, needs to use Alibaba Cloud AI services, or integrate AI capabilities in Spring applications.
npx skill4agent add teachingai/full-stack-skills spring-ai-alibaba<dependency>
<groupId>com.alibaba.cloud.ai</groupId>
<artifactId>spring-ai-starter-model-aliyun-dashscope</artifactId>
</dependency>dependencies {
implementation 'com.alibaba.cloud.ai:spring-ai-starter-model-aliyun-dashscope'
}spring:
ai:
alibaba:
dashscope:
api-key: ${DASHSCOPE_API_KEY}
chat:
options:
model: qwen-turbo
temperature: 0.7
max-tokens: 2000spring.ai.alibaba.dashscope.api-key=${DASHSCOPE_API_KEY}
spring.ai.alibaba.dashscope.chat.options.model=qwen-turbo
spring.ai.alibaba.dashscope.chat.options.temperature=0.7
spring.ai.alibaba.dashscope.chat.options.max-tokens=2000@Service
public class ChatService {
private final ChatClient chatClient;
public ChatService(ChatClient chatClient) {
this.chatClient = chatClient;
}
public String chat(String message) {
return chatClient.call(message);
}
public String chatWithPrompt(String userMessage) {
Prompt prompt = new Prompt(new UserMessage(userMessage));
ChatResponse response = chatClient.call(prompt);
return response.getResult().getOutput().getContent();
}
}@Service
public class ChatService {
private final StreamingChatClient streamingChatClient;
public ChatService(StreamingChatClient streamingChatClient) {
this.streamingChatClient = streamingChatClient;
}
public Flux<String> streamChat(String message) {
return streamingChatClient.stream(message)
.map(response -> response.getResult().getOutput().getContent());
}
}qwen-turboqwen-plusqwen-maxspring:
ai:
alibaba:
dashscope:
chat:
options:
model: qwen-max # 使用最强模型
temperature: 0.7
max-tokens: 2000@Service
public class PromptService {
private final PromptTemplate promptTemplate;
public PromptService() {
this.promptTemplate = new PromptTemplate(
"请用{style}风格回答以下问题:{question}"
);
}
public String generatePrompt(String style, String question) {
Map<String, Object> variables = Map.of(
"style", style,
"question", question
);
return promptTemplate.render(variables);
}
}@Service
public class ChatService {
private final ChatClient chatClient;
private final PromptTemplate promptTemplate;
public ChatService(ChatClient chatClient) {
this.chatClient = chatClient;
this.promptTemplate = new PromptTemplate(
"请用{style}风格回答以下问题:{question}"
);
}
public String chatWithStyle(String style, String question) {
Prompt prompt = promptTemplate.create(Map.of(
"style", style,
"question", question
));
ChatResponse response = chatClient.call(prompt);
return response.getResult().getOutput().getContent();
}
}spring:
ai:
alibaba:
dashscope:
embedding:
options:
model: text-embedding-v1@Service
public class EmbeddingService {
private final EmbeddingClient embeddingClient;
public EmbeddingService(EmbeddingClient embeddingClient) {
this.embeddingClient = embeddingClient;
}
public List<Double> embed(String text) {
EmbeddingResponse response = embeddingClient.embedForResponse(
List.of(text)
);
return response.getResult().getOutput();
}
public List<List<Double>> embedBatch(List<String> texts) {
EmbeddingResponse response = embeddingClient.embedForResponse(texts);
return response.getResult().getOutput();
}
}@Service
public class ConversationService {
private final ChatClient chatClient;
private final List<Message> conversationHistory = new ArrayList<>();
public ConversationService(ChatClient chatClient) {
this.chatClient = chatClient;
}
public String chat(String userMessage) {
conversationHistory.add(new UserMessage(userMessage));
Prompt prompt = new Prompt(conversationHistory);
ChatResponse response = chatClient.call(prompt);
String assistantMessage = response.getResult().getOutput().getContent();
conversationHistory.add(new AssistantMessage(assistantMessage));
return assistantMessage;
}
public void clearHistory() {
conversationHistory.clear();
}
}@Service
public class ChatService {
private final ChatClient chatClient;
public String chat(String message) {
try {
return chatClient.call(message);
} catch (Exception e) {
// 处理错误
log.error("Chat error", e);
return "抱歉,处理请求时出现错误";
}
}
}<!-- Spring AI Alibaba DashScope -->
<dependency>
<groupId>com.alibaba.cloud.ai</groupId>
<artifactId>spring-ai-starter-model-aliyun-dashscope</artifactId>
</dependency>
<!-- Spring Boot Web (可选,用于 REST API) -->
<dependency>
<groupId>org.springframework.boot</groupId>
<artifactId>spring-boot-starter-web</artifactId>
</dependency>spring:
ai:
alibaba:
dashscope:
api-key: ${DASHSCOPE_API_KEY}
chat:
options:
model: qwen-turbo
temperature: 0.7
max-tokens: 2000
top-p: 0.9
embedding:
options:
model: text-embedding-v1