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博客园 - cn2025

kubeSphere发布ruoyi-web前端 20260711 kubeSphere发布ruoyi-pro后端 k8s集群-kubeShpere 20260710 安装Helm 20260710 k8s-portainer docker 镜像查询 k8集群一键重置 docker run OceanBase spring ai alibaba doc AI2.0 【多模态】 20260615 世界只有一个墨脱 AI2.0 【Mcp-client】 20260611 AI2.0 【Mcp-server】 20260611 GoLand 配Go SDK AI2.0 【redis向量-Rag】 问答顾问器QuestionAnswerAdvisor 20260608 AI2.0 【redis向量】redis-stack 20260608 AI2.0 【Embedding】嵌入模型 20260606 AI 工具 AI2.0 Tool调用20260604 AI2.0 对话chatMemory20260601 AI2.0 模型输出结构化【POJO、Record、List、Map 】20260530 AI2.0 Prompt【模板、流式 API、系统提示词】 20260529 AI2.0 自定义Advisor 20260528 AI2.0 ollama 20260528 AI2.0 dashscope-openai 20260527 ps 配Claude 20260527 spring-ai-alibaba-agent 260526 票务 Tool+Spring Security【动态tooLs:toolCallbacks】 20260525 spring-ai-alibaba-agent 260525 spring-ai-alibaba-agent 260523 票务 Tool接口 / 方法 / 参数【无意义、可读、业务化、参数数量过多】 20260521 票务 Tool参数幻觉 20260521 spring-ai-alibaba-agent 260521 ToolTemperature 温度过低,AI推算缺失自由度20260520 spring-ai-alibaba-agent 260520 票务Tool 20260519 票务助手 -多模型20260518 结构化输出 -原理【structuredconverter】20260518 spring-ai-alibaba-agent 260518 Dify 添加Ollma模型qwen2:0.5b 应用 20260516 docker 部【dify-api】/【dify-web】 20260514 Chatclient 结构化输出20260514 spring-ai-alibaba-agent 260514 Chatmemory 多层(近、中、长期)20260513 ChatmemoryRedis 历史对话存【REDIS】20260512 ChatmemoryJdbc 历史对话存【JDBC】20260511 spring-ai-alibaba-agent 260511 ChatmemoryConversationId 多用户对话记忆 20260508 spring-ai-alibaba-agent 260508 ChatmemoryMax 历史对话长度20260507 2026SE Chatmemory 对话记忆20260506 spring-ai-alibaba-agent 260506 ChatClientPrompt 自定义拦截器【ReReadingAdvisor】重读提示词 20260430 docker-apache/kafka:4.1.2部暑 集群20260423 ChatClientPrompt Template.st20260428 ChatClientPrompt Template20260427 sb-KafkaListener 20260425 docker-apache/kafka:4.1.2部暑 20260425 dashscope-sb ChatClientPrompt20260425 SBAI-MultiPlatformAndModel 20260424 PlatformModel SB-ChatClient-DeepSeekDashScopeOllamaModel 20260424 dashscope-sb ChatClient20260420 ollama-sb 多态 图转文 20260418 【gemma3:4b 解析慢】 dashscope-sb 多模态(图片、语音识别) 文生视频 ollama-sb 20260414 dashscope-sb 阿里百炼-文生图20260413 dashscope-sb20260413 dashscope-sb20260411 docker-zabbix 20260410 MQTT20260403 spring-ai-alibaba-agent 260403 MqttTest 20260401 spring-ai-alibaba-agent 260401 docker安装 EMQX spring-ai-alibaba-agent 260331 MQTT 20260331 spring-ai-alibaba-agent 三大 Java 生态 AI Agent 框架 CentOS7-静态 IP centos-stream10 安装 百炼-工作流-sb sb-flink1.13.1-jdk8-分隔字符串 20260125
deepseek-sb20260408
cn2025 · 2026-04-08 · via 博客园 - cn2025

1、pom

<properties>
<java.version>17</java.version>
<project.build.sourceEncoding>UTF-8</project.build.sourceEncoding>
<project.reporting.outputEncoding>UTF-8</project.reporting.outputEncoding>
<spring-boot.version>3.2.0</spring-boot.version>
</properties>
<dependencies>
<dependency>
<groupId>org.springframework.boot</groupId>
<artifactId>spring-boot-starter</artifactId>
</dependency>
<dependency>
<groupId>org.springframework.boot</groupId>
<artifactId>spring-boot-starter-web</artifactId>
</dependency>
<dependency>
<groupId>org.springframework.ai</groupId>
<artifactId>spring-ai-starter-model-deepseek</artifactId>
<version>1.0.0</version>
</dependency>
<dependency>
<groupId>org.springframework.boot</groupId>
<artifactId>spring-boot-starter-test</artifactId>
<scope>test</scope>
</dependency>
</dependencies>
<dependencyManagement>
<dependencies>
<dependency>
<groupId>org.springframework.boot</groupId>
<artifactId>spring-boot-dependencies</artifactId>
<version>${spring-boot.version}</version>
<type>pom</type>
<scope>import</scope>
</dependency>
</dependencies>
</dependencyManagement>

2、yml

server:
port: 8081

spring:
application:
ai:
deepseek: ## 这一行是你选择的LLM模型,如果是openai,这里就填openai, base-url就是填对应厂商的地址
api-key: "sk-199324596dbb4308afcb77d46GGGGGGG"
base-url: "https://api.deepseek.com"
chat:
options:
model: deepseek-chat
embedding:
enabled: false

注:api-key 请用自己的key

3、controller

import jakarta.servlet.http.HttpServletResponse;
import org.springframework.ai.chat.model.ChatModel;
import org.springframework.ai.chat.model.ChatResponse;
import org.springframework.ai.chat.prompt.Prompt;
import org.springframework.stereotype.Controller;
import org.springframework.web.bind.annotation.GetMapping;
import org.springframework.web.bind.annotation.PathVariable;
import org.springframework.web.bind.annotation.RequestMapping;
import org.springframework.web.bind.annotation.ResponseBody;
import reactor.core.publisher.Flux;

@RequestMapping("/openai")
@ResponseBody
@Controller
public class DeepSeekChatModelController {
private final ChatModel deepSeekChatModel;

// 主要就是这个地方,springboot已经把yml里的配置,生成好一个叫ChatModel的bean,注入进来controller里就可以直接使用了
public DeepSeekChatModelController(ChatModel chatModel) {
this.deepSeekChatModel = chatModel;
}

// 这个是同步等待LLM的结果,再回复给前端。
@GetMapping("/simple/chat/{prompt}")
public String simpleChat (@PathVariable(value = "prompt") String prompt) {

return deepSeekChatModel.call(new Prompt(prompt)).
getResult().getOutput().getText();
}
/**
* Stream 流式调用。可以使大模型的输出信息实现打字机效果。
* 这个就是sse方式回复内容给前端,就不用等所有的内容都收到才给前端
* @return Flux<String> types.
*/
@GetMapping("/stream/chat/{prompt}")
public Flux<String> streamChat (
@PathVariable(value = "prompt") String prompt,
HttpServletResponse response) {
response.setCharacterEncoding("UTF-8");
Flux<ChatResponse> stream = deepSeekChatModel.stream(new Prompt(prompt));
return stream.map(resp -> resp.getResult().getOutput().getText());
}
}

@GetMapping("/simple/chat2")
public String simpleChat2 () {
Prompt prompt=new Prompt("你好你是谁");
ChatResponse response=deepSeekChatModel.call(prompt);
// 获取响应内容
DeepSeekAssistantMessage deepSeekAssistantMessage = (DeepSeekAssistantMessage) response.getResult().getOutput();
return deepSeekAssistantMessage.getText();
}

4、浏览器
http://localhost:8081/openai/stream/chat/%E6%9E%97%E8%8A%9D%E5%A4%A9%E6%B0%94

image

 http://localhost:8081/simple/stream/chat/%E6%9E%97%E8%8A%9D%E5%A4%A9%E6%B0%94

image