Files
prompts-core/service/compose_service.go

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2026-05-12 13:59:15 +08:00
package service
import (
"context"
"encoding/json"
"errors"
"fmt"
"strings"
"time"
"prompts-core/consts/public"
"prompts-core/dao"
"prompts-core/model/dto"
"prompts-core/model/entity"
"github.com/gogf/gf/v2/container/gvar"
"github.com/gogf/gf/v2/frame/g"
)
// ============================================
// 核心业务流程
// ============================================
// ComposeMessages 拼接提示词主流程
func (s *promptService) ComposeMessages(ctx context.Context, req *dto.ComposeMessagesReq) (*dto.ComposeMessagesRes, error) {
var (
epicycleId int64
err error
historyMessages []Message // 用来存放历史会话
)
// 1. 如果不需要构建返回记录id
if req.IsBuilder == false {
epicycleId, err = dao.ComposeSession.Insert(ctx, &entity.ComposeSession{
SessionId: req.SessionId,
Remark: req.Cause,
})
return &dto.ComposeMessagesRes{
EpicycleId: epicycleId,
}, nil
}
// 2. 获取当前用户模型信息
sessionModel, err := dao.Model.GetByIsChatModel(ctx) //获取会话模型
if err != nil {
return nil, err
}
if sessionModel == nil {
return nil, errors.New("当前没有对话模型,请添加")
}
model, err := dao.Model.GetByModelName(ctx, req.ModelName) //获取模型信息
if err != nil {
return nil, err
}
if model == nil {
return nil, fmt.Errorf("模型 %s 不存在", sessionModel.ModelName)
}
// 3 获取历史会话
historyMessages, err = Session.GetSessionHistoryForInference(ctx, req.SessionId)
if err != nil {
g.Log().Errorf(ctx, "获取历史会话失败: %v将不使用历史会话", err)
historyMessages = nil // 出错就用空的,不影响主流程
}
// 4. 调用推理模型
taskID, err := s.callInferenceModel(ctx, req, sessionModel, model, historyMessages)
if err != nil {
return nil, err
}
// 5. 保存相关记录
_, err = dao.ComposeTask.Insert(ctx, &entity.ComposeTask{
TaskId: taskID,
ModelName: req.ModelName,
SkillName: req.SkillName,
RequestPayload: mustMarshal(req),
Status: public.ComposeStatusPending,
})
if err != nil {
return nil, err
}
// 6. 等待结果
taskRecord, err := s.waitForResult(ctx, taskID)
if err != nil {
return nil, err
}
// 7. 处理返回结果
messages := s.processResult(taskRecord)
//8.1 数据库查询当前会话是否存在
session, err := dao.ComposeSession.GetBySessionId(ctx, req.SessionId)
if err != nil {
return nil, err
}
if session == nil {
//8.2 不存在则创建新会话记录
epicycleId, err = dao.ComposeSession.Insert(ctx, &entity.ComposeSession{
SessionId: req.SessionId,
RequestContent: messages,
})
if err != nil {
return nil, err
}
}
// 9. 更新历史会话
_, err = dao.ComposeSession.UpdateById(ctx, epicycleId, map[string]any{
entity.ComposeSessionCol.RequestContent: messages,
})
return &dto.ComposeMessagesRes{
Messages: messages,
EpicycleId: epicycleId,
}, nil
}
func (s *promptService) Callback(ctx context.Context, req *dto.CallbackReq) error {
g.Log().Infof(ctx, "[Callback][RECV] taskId=%s state=%d ossFile=%s fileType=%s textLen=%d",
req.TaskId, req.State, req.OssFile, req.FileType, len(req.Text))
// ============ 先查任务是否存在 ============
task, err := dao.ComposeTask.GetByTaskId(ctx, req.TaskId)
if err != nil {
return err
}
if task == nil {
return fmt.Errorf("任务不存在: %s", req.TaskId)
}
// ============ 根据状态区分处理 ============
if req.State == 3 {
// 失败:直接更新状态
_, err = dao.ComposeTask.UpdateByTaskId(ctx, req.TaskId, map[string]any{
entity.ComposeTaskCol.Status: public.ComposeStatusFailed,
entity.ComposeTaskCol.ErrorMessage: req.ErrorMsg,
})
return err
}
// ======================================
// 成功:解析模型输出
result, err := parseModelOutput(req.Text)
if err != nil {
_, updateErr := dao.ComposeTask.UpdateByTaskId(ctx, req.TaskId, map[string]any{
entity.ComposeTaskCol.Status: public.ComposeStatusFailed,
entity.ComposeTaskCol.ErrorMessage: err.Error(),
})
if updateErr != nil {
g.Log().Warningf(ctx, "[Callback] 更新失败状态出错 taskId=%s err=%v", req.TaskId, updateErr)
}
return err
}
// ============ result 可能为 nil ============
var messages any
if result != nil {
messages = result
}
// =======================================
_, err = dao.ComposeTask.UpdateByTaskId(ctx, req.TaskId, map[string]any{
entity.ComposeTaskCol.Status: public.ComposeStatusSuccess,
entity.ComposeTaskCol.Messages: messages,
})
if err != nil {
g.Log().Errorf(ctx, "[Callback] 更新任务失败 taskId=%s err=%v", req.TaskId, err)
}
return err
}
// GetComposeTask 查询任务结果
func (s *promptService) GetComposeTask(ctx context.Context, taskID string) (*dto.GetComposeTaskRes, error) {
record, err := dao.ComposeTask.GetByTaskId(ctx, taskID)
if err != nil {
return nil, err
}
if record == nil {
return nil, fmt.Errorf("未找到任务(taskId=%s)", taskID)
}
// 如果 Messages 是字符串,反序列化为 JSON 数组
messages := record.Messages
if str, ok := messages.(string); ok && str != "" {
var parsed any
if err := json.Unmarshal([]byte(str), &parsed); err == nil {
messages = parsed
}
}
return &dto.GetComposeTaskRes{
TaskId: record.TaskId,
Status: record.Status,
ErrorMessage: record.ErrorMessage,
Messages: messages,
}, nil
}
// ============================================
// 步骤4调用推理模型
// ============================================
func (s *promptService) callInferenceModel(ctx context.Context, req *dto.ComposeMessagesReq, sessionModel *entity.AsynchModel, model *entity.AsynchModel, historyMessages []Message) (string, error) {
// 构建推理模型请求
taskReq, err := buildInferenceRequest(ctx, req, sessionModel, model, historyMessages)
if err != nil {
return "", fmt.Errorf("构建推理请求失败: %w", err)
}
// 创建网关任务
taskID, err := createGatewayTask(ctx, taskReq)
if err != nil {
return "", fmt.Errorf("创建网关任务失败: %w", err)
}
if taskID == "" {
return "", errors.New("网关未返回taskId")
}
return taskID, nil
}
// ============================================
// 步骤6等待结果
// ============================================
func (s *promptService) waitForResult(ctx context.Context, taskID string) (*entity.ComposeTask, error) {
timeout := time.Duration(getIntConfig(ctx, "task.waitTimeoutSeconds", 30)) * time.Second
pollInterval := time.Duration(getIntConfig(ctx, "task.pollIntervalMillis", 500)) * time.Millisecond
deadline := time.Now().Add(timeout)
for {
// 1. 查数据库
record, err := dao.ComposeTask.GetByTaskId(ctx, taskID)
if err != nil {
return nil, err
}
if record != nil {
switch record.Status {
case public.ComposeStatusSuccess:
return record, nil
case public.ComposeStatusFailed:
return nil, formatTaskError(taskID, record.ErrorMessage)
}
}
// 2. 查网关状态
state, err := queryGatewayTaskState(ctx, taskID)
if err != nil {
// ============ 网关不可达不终止,继续轮询 ============
g.Log().Warningf(ctx, "[waitForResult] 查询网关失败 taskId=%s err=%v", taskID, err)
} else {
switch state {
case 2: // 网关成功
// ============ 网关已成功,主动更新数据库 ============
if record != nil {
dao.ComposeTask.UpdateByTaskId(ctx, taskID, map[string]any{
entity.ComposeTaskCol.Status: public.ComposeStatusSuccess,
})
}
case 3: // 网关失败
if record != nil {
dao.ComposeTask.UpdateByTaskId(ctx, taskID, map[string]any{
entity.ComposeTaskCol.Status: public.ComposeStatusFailed,
entity.ComposeTaskCol.ErrorMessage: "model-gateway 任务执行失败",
})
}
return nil, fmt.Errorf("model-gateway 任务执行失败(taskId=%s)", taskID)
}
}
// 3. 超时检查
if time.Now().After(deadline) {
return nil, fmt.Errorf("等待任务回调超时(taskId=%s)", taskID)
}
time.Sleep(pollInterval)
}
}
// ============================================
// 步骤6处理结果
// ============================================
func (s *promptService) processResult(taskRecord *entity.ComposeTask) map[string]any {
if taskRecord == nil {
return nil
}
// 1. 解析 Messages 获取 content
var contentStr string
switch v := taskRecord.Messages.(type) {
case *gvar.Var:
if v != nil {
var mapped map[string]any
json.Unmarshal([]byte(v.String()), &mapped)
if c, ok := mapped["content"].(string); ok {
contentStr = c
}
}
case string:
var mapped map[string]any
json.Unmarshal([]byte(v), &mapped)
if c, ok := mapped["content"].(string); ok {
contentStr = c
}
case map[string]any:
if c, ok := v["content"].(string); ok {
contentStr = c
}
}
// 2. 清理并解析
contentStr = cleanJSONString(contentStr)
var innerData map[string]any
json.Unmarshal([]byte(contentStr), &innerData)
return innerData
}
// ============================================
// 消息处理管道
// ============================================
// parseStoredMessages 从数据库存储的数据中解析消息列表
// 处理多层 JSON 嵌套的情况
func parseStoredMessages(data any) []dto.Message {
if data == nil {
return nil
}
// 统一序列化为 JSON
jsonBytes, err := json.Marshal(data)
if err != nil {
return nil
}
// 第一层解析:尝试直接解析为消息数组
var messages []dto.Message
if err := json.Unmarshal(jsonBytes, &messages); err == nil {
// 成功解析,但需要处理 content 可能是 JSON 字符串的情况
return deepNormalizeMessages(messages)
}
// 第二层解析:可能是 JSON 字符串包裹的数组
var rawStr string
if err := json.Unmarshal(jsonBytes, &rawStr); err != nil {
return nil
}
// 尝试解析字符串为消息数组
if err := json.Unmarshal([]byte(rawStr), &messages); err == nil {
return deepNormalizeMessages(messages)
}
return nil
}
// deepNormalizeMessages 深度规范化消息,处理 content 为 JSON 字符串的情况
func deepNormalizeMessages(messages []dto.Message) []dto.Message {
for i, msg := range messages {
messages[i].Content = deepNormalizeContent(msg.Content)
}
return messages
}
// deepNormalizeContent 递归处理 content支持多层 JSON 嵌套
func deepNormalizeContent(content any) any {
switch v := content.(type) {
case string:
// 尝试解析 JSON 字符串
v = strings.TrimSpace(v)
if v == "" {
return v
}
// 如果看起来像 JSON尝试解析
if looksLikeJSON(v) {
var parsed any
if err := json.Unmarshal([]byte(v), &parsed); err == nil {
// 递归处理解析后的内容
return deepNormalizeContent(parsed)
}
}
return v
case []any:
// 递归处理数组中的每个元素
result := make([]any, len(v))
for i, item := range v {
result[i] = deepNormalizeContent(item)
}
return result
case map[string]any:
// 递归处理 map 中的每个值
result := make(map[string]any, len(v))
for k, val := range v {
result[k] = deepNormalizeContent(val)
}
return result
default:
return content
}
}
func NormalizeToTwoPart(messages []dto.Message, req *dto.ComposeMessagesReq) []dto.Message {
var result []dto.Message
// 1. 提取 system
sysContent := extractByRole(messages, "system")
if sysContent == nil {
sysContent = renderFormText(req.Form, false)
}
result = append(result, dto.Message{Role: "system", Content: sysContent})
// 2. 提取 form
formContent := extractByRole(messages, "form")
if formContent != nil {
result = append(result, dto.Message{Role: "form", Content: formContent})
} else if req != nil {
result = append(result, dto.Message{Role: "form", Content: renderFormJSON(req.Form)})
}
// 3. 提取 skill
skillContent := extractByRole(messages, "skill")
if skillContent != nil {
result = append(result, dto.Message{Role: "skill", Content: skillContent})
} else if req != nil && req.SkillName != "" {
result = append(result, dto.Message{Role: "skill", Content: req.SkillName})
}
// 4. 提取 history如果模型返回了压缩后的历史
historyContent := extractByRole(messages, "history")
if historyContent != nil {
result = append(result, dto.Message{Role: "history", Content: historyContent})
}
// 5. 提取 user
usrContent := extractByRole(messages, "user")
if usrContent == nil {
usrContent = renderUserText(req.UserForm, req.Form)
}
result = append(result, dto.Message{Role: "user", Content: usrContent})
return result
}
// ============================================
// 辅助函数:按 role 提取第一个非空 content
// ============================================
func extractByRole(messages []dto.Message, role string) any {
for _, msg := range messages {
if msg.Role == role && !isEmptyValue(msg.Content) {
return msg.Content
}
}
return nil
}
// ============================================
// 辅助函数:将 form 渲染为 JSON 对象
// ============================================
func renderFormJSON(form map[string]any) map[string]any {
if form == nil {
return nil
}
result := make(map[string]any)
for k, v := range form {
result[k] = v
}
return result
}
func enrichSystemMessages(messages []dto.Message, req *dto.ComposeMessagesReq) []dto.Message {
if len(messages) == 0 {
return messages
}
// 获取系统字段的值映射
systemValues := extractSystemValues(req)
for i, msg := range messages {
if msg.Role != "system" {
continue
}
// 为 schema 数组补充 value
switch content := msg.Content.(type) {
case []any:
messages[i].Content = enrichSchemaWithValues(content, systemValues)
case []map[string]any:
arr := make([]any, len(content))
for j, item := range content {
arr[j] = item
}
messages[i].Content = enrichSchemaWithValues(arr, systemValues)
case map[string]any:
// 合并但不覆盖已有值
for k, v := range systemValues {
if _, exists := content[k]; !exists {
content[k] = v
}
}
messages[i].Content = content
}
}
return messages
}