309 lines
7.6 KiB
Go
309 lines
7.6 KiB
Go
package service
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import (
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"bytes"
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"context"
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"encoding/json"
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"fmt"
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"io"
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"net/http"
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"os"
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"strings"
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"time"
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"github.com/Nanqipro/YunQue-Tech-Projects/ai_english_learning/serve/internal/model"
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)
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// AIService AI服务接口
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type AIService interface {
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// 写作批改
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CorrectWriting(ctx context.Context, content string, taskType string) (*model.WritingCorrection, error)
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// 口语评估
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EvaluateSpeaking(ctx context.Context, audioText string, prompt string) (*model.SpeakingEvaluation, error)
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// 智能推荐
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GetRecommendations(ctx context.Context, userLevel string, learningHistory []string) (*model.AIRecommendation, error)
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// 生成练习题
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GenerateExercise(ctx context.Context, content string, exerciseType string) (*model.Exercise, error)
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}
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type aiService struct {
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apiKey string
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baseURL string
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client *http.Client
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}
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// NewAIService 创建AI服务实例
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func NewAIService() AIService {
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apiKey := os.Getenv("OPENAI_API_KEY")
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baseURL := os.Getenv("OPENAI_BASE_URL")
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if baseURL == "" {
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baseURL = "https://api.openai.com/v1"
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}
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return &aiService{
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apiKey: apiKey,
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baseURL: baseURL,
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client: &http.Client{
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Timeout: 30 * time.Second,
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},
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}
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}
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// OpenAI API请求结构
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type openAIRequest struct {
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Model string `json:"model"`
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Messages []message `json:"messages"`
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MaxTokens int `json:"max_tokens"`
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Temperature float64 `json:"temperature"`
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}
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type message struct {
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Role string `json:"role"`
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Content string `json:"content"`
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}
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type openAIResponse struct {
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Choices []struct {
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Message message `json:"message"`
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} `json:"choices"`
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Error *struct {
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Message string `json:"message"`
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Type string `json:"type"`
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} `json:"error,omitempty"`
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}
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// callOpenAI 调用OpenAI API
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func (s *aiService) callOpenAI(ctx context.Context, prompt string) (string, error) {
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if s.apiKey == "" {
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return "", fmt.Errorf("OpenAI API key not configured")
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}
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reqBody := openAIRequest{
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Model: "gpt-3.5-turbo",
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Messages: []message{
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{
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Role: "user",
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Content: prompt,
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},
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},
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MaxTokens: 1000,
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Temperature: 0.7,
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}
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jsonData, err := json.Marshal(reqBody)
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if err != nil {
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return "", fmt.Errorf("failed to marshal request: %w", err)
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}
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req, err := http.NewRequestWithContext(ctx, "POST", s.baseURL+"/chat/completions", bytes.NewBuffer(jsonData))
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if err != nil {
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return "", fmt.Errorf("failed to create request: %w", err)
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}
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req.Header.Set("Content-Type", "application/json")
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req.Header.Set("Authorization", "Bearer "+s.apiKey)
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resp, err := s.client.Do(req)
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if err != nil {
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return "", fmt.Errorf("failed to send request: %w", err)
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}
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defer resp.Body.Close()
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body, err := io.ReadAll(resp.Body)
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if err != nil {
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return "", fmt.Errorf("failed to read response: %w", err)
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}
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var openAIResp openAIResponse
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if err := json.Unmarshal(body, &openAIResp); err != nil {
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return "", fmt.Errorf("failed to unmarshal response: %w", err)
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}
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if openAIResp.Error != nil {
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return "", fmt.Errorf("OpenAI API error: %s", openAIResp.Error.Message)
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}
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if len(openAIResp.Choices) == 0 {
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return "", fmt.Errorf("no response from OpenAI")
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}
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return openAIResp.Choices[0].Message.Content, nil
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}
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// CorrectWriting 写作批改
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func (s *aiService) CorrectWriting(ctx context.Context, content string, taskType string) (*model.WritingCorrection, error) {
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prompt := fmt.Sprintf(`请对以下英语写作进行批改,任务类型:%s
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写作内容:
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%s
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请按照以下JSON格式返回批改结果:
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{
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"overall_score": 85,
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"grammar_score": 80,
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"vocabulary_score": 90,
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"structure_score": 85,
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"content_score": 88,
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"corrections": [
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{
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"original": "错误的句子",
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"corrected": "修正后的句子",
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"explanation": "修改说明",
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"error_type": "grammar"
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}
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],
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"suggestions": [
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"建议1",
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"建议2"
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],
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"strengths": [
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"优点1",
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"优点2"
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],
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"weaknesses": [
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"需要改进的地方1",
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"需要改进的地方2"
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]
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}`, taskType, content)
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response, err := s.callOpenAI(ctx, prompt)
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if err != nil {
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return nil, err
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}
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// 解析JSON响应
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var correction model.WritingCorrection
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if err := json.Unmarshal([]byte(response), &correction); err != nil {
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// 如果JSON解析失败,返回基本的批改结果
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return &model.WritingCorrection{
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OverallScore: 75,
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Suggestions: []string{"AI批改服务暂时不可用,请稍后重试"},
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}, nil
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}
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return &correction, nil
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}
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// EvaluateSpeaking 口语评估
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func (s *aiService) EvaluateSpeaking(ctx context.Context, audioText string, prompt string) (*model.SpeakingEvaluation, error) {
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evalPrompt := fmt.Sprintf(`请对以下英语口语进行评估,题目:%s
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口语内容:
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%s
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请按照以下JSON格式返回评估结果:
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{
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"overall_score": 85,
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"pronunciation_score": 80,
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"fluency_score": 90,
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"grammar_score": 85,
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"vocabulary_score": 88,
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"feedback": "整体评价",
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"strengths": [
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"优点1",
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"优点2"
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],
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"improvements": [
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"需要改进的地方1",
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"需要改进的地方2"
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]
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}`, prompt, audioText)
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response, err := s.callOpenAI(ctx, evalPrompt)
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if err != nil {
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return nil, err
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}
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// 解析JSON响应
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var evaluation model.SpeakingEvaluation
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if err := json.Unmarshal([]byte(response), &evaluation); err != nil {
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// 如果JSON解析失败,返回基本的评估结果
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return &model.SpeakingEvaluation{
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OverallScore: 75,
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Feedback: "AI评估服务暂时不可用,请稍后重试",
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}, nil
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}
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return &evaluation, nil
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}
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// GetRecommendations 智能推荐
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func (s *aiService) GetRecommendations(ctx context.Context, userLevel string, learningHistory []string) (*model.AIRecommendation, error) {
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historyStr := strings.Join(learningHistory, ", ")
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prompt := fmt.Sprintf(`基于用户的英语水平(%s)和学习历史(%s),请提供个性化的学习推荐。
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请按照以下JSON格式返回推荐结果:
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{
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"recommended_topics": [
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"推荐主题1",
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"推荐主题2"
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],
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"difficulty_level": "intermediate",
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"study_plan": [
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"学习计划步骤1",
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"学习计划步骤2"
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],
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"focus_areas": [
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"重点关注领域1",
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"重点关注领域2"
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]
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}`, userLevel, historyStr)
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response, err := s.callOpenAI(ctx, prompt)
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if err != nil {
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return nil, err
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}
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// 解析JSON响应
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var recommendation model.AIRecommendation
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if err := json.Unmarshal([]byte(response), &recommendation); err != nil {
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// 如果JSON解析失败,返回基本的推荐结果
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return &model.AIRecommendation{
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RecommendedTopics: []string{"基础语法练习", "日常对话练习"},
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DifficultyLevel: "beginner",
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StudyPlan: []string{"每天练习30分钟", "重点关注基础词汇"},
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}, nil
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}
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return &recommendation, nil
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}
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// GenerateExercise 生成练习题
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func (s *aiService) GenerateExercise(ctx context.Context, content string, exerciseType string) (*model.Exercise, error) {
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prompt := fmt.Sprintf(`基于以下内容生成%s类型的练习题:
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内容:
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%s
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请按照以下JSON格式返回练习题:
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{
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"title": "练习题标题",
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"instructions": "练习说明",
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"questions": [
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{
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"question": "问题1",
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"options": ["选项A", "选项B", "选项C", "选项D"],
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"correct_answer": "正确答案",
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"explanation": "解释"
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}
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]
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}`, exerciseType, content)
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response, err := s.callOpenAI(ctx, prompt)
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if err != nil {
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return nil, err
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}
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// 解析JSON响应
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var exercise model.Exercise
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if err := json.Unmarshal([]byte(response), &exercise); err != nil {
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// 如果JSON解析失败,返回基本的练习题
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return &model.Exercise{
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Title: "基础练习",
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Instructions: "AI练习生成服务暂时不可用,请稍后重试",
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Questions: []model.Question{},
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}, nil
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}
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return &exercise, nil
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} |