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- package service
- import (
- "encoding/json"
- "errors"
- "fmt"
- "github.com/pkoukk/tiktoken-go"
- "image"
- "log"
- "math"
- "one-api/common"
- "one-api/dto"
- "strings"
- "unicode/utf8"
- )
- // tokenEncoderMap won't grow after initialization
- var tokenEncoderMap = map[string]*tiktoken.Tiktoken{}
- var defaultTokenEncoder *tiktoken.Tiktoken
- func InitTokenEncoders() {
- common.SysLog("initializing token encoders")
- gpt35TokenEncoder, err := tiktoken.EncodingForModel("gpt-3.5-turbo")
- if err != nil {
- common.FatalLog(fmt.Sprintf("failed to get gpt-3.5-turbo token encoder: %s", err.Error()))
- }
- defaultTokenEncoder = gpt35TokenEncoder
- gpt4TokenEncoder, err := tiktoken.EncodingForModel("gpt-4")
- if err != nil {
- common.FatalLog(fmt.Sprintf("failed to get gpt-4 token encoder: %s", err.Error()))
- }
- for model, _ := range common.ModelRatio {
- if strings.HasPrefix(model, "gpt-3.5") {
- tokenEncoderMap[model] = gpt35TokenEncoder
- } else if strings.HasPrefix(model, "gpt-4") {
- tokenEncoderMap[model] = gpt4TokenEncoder
- } else {
- tokenEncoderMap[model] = nil
- }
- }
- common.SysLog("token encoders initialized")
- }
- func getTokenEncoder(model string) *tiktoken.Tiktoken {
- tokenEncoder, ok := tokenEncoderMap[model]
- if ok && tokenEncoder != nil {
- return tokenEncoder
- }
- if ok {
- tokenEncoder, err := tiktoken.EncodingForModel(model)
- if err != nil {
- common.SysError(fmt.Sprintf("failed to get token encoder for model %s: %s, using encoder for gpt-3.5-turbo", model, err.Error()))
- tokenEncoder = defaultTokenEncoder
- }
- tokenEncoderMap[model] = tokenEncoder
- return tokenEncoder
- }
- return defaultTokenEncoder
- }
- func getTokenNum(tokenEncoder *tiktoken.Tiktoken, text string) int {
- return len(tokenEncoder.Encode(text, nil, nil))
- }
- func getImageToken(imageUrl *dto.MessageImageUrl) (int, error) {
- if imageUrl.Detail == "low" {
- return 85, nil
- }
- var config image.Config
- var err error
- var format string
- if strings.HasPrefix(imageUrl.Url, "http") {
- common.SysLog(fmt.Sprintf("downloading image: %s", imageUrl.Url))
- config, format, err = common.DecodeUrlImageData(imageUrl.Url)
- } else {
- common.SysLog(fmt.Sprintf("decoding image"))
- config, format, _, err = common.DecodeBase64ImageData(imageUrl.Url)
- }
- if err != nil {
- return 0, err
- }
- if config.Width == 0 || config.Height == 0 {
- return 0, errors.New(fmt.Sprintf("fail to decode image config: %s", imageUrl.Url))
- }
- // TODO: 适配官方auto计费
- if config.Width < 512 && config.Height < 512 {
- if imageUrl.Detail == "auto" || imageUrl.Detail == "" {
- // 如果图片尺寸小于512,强制使用low
- imageUrl.Detail = "low"
- return 85, nil
- }
- }
- shortSide := config.Width
- otherSide := config.Height
- log.Printf("format: %s, width: %d, height: %d", format, config.Width, config.Height)
- // 缩放倍数
- scale := 1.0
- if config.Height < shortSide {
- shortSide = config.Height
- otherSide = config.Width
- }
- // 将最小变的尺寸缩小到768以下,如果大于768,则缩放到768
- if shortSide > 768 {
- scale = float64(shortSide) / 768
- shortSide = 768
- }
- // 将另一边按照相同的比例缩小,向上取整
- otherSide = int(math.Ceil(float64(otherSide) / scale))
- log.Printf("shortSide: %d, otherSide: %d, scale: %f", shortSide, otherSide, scale)
- // 计算图片的token数量(边的长度除以512,向上取整)
- tiles := (shortSide + 511) / 512 * ((otherSide + 511) / 512)
- log.Printf("tiles: %d", tiles)
- return tiles*170 + 85, nil
- }
- func CountTokenMessages(messages []dto.Message, model string, checkSensitive bool) (int, error, bool) {
- //recover when panic
- tokenEncoder := getTokenEncoder(model)
- // Reference:
- // https://github.com/openai/openai-cookbook/blob/main/examples/How_to_count_tokens_with_tiktoken.ipynb
- // https://github.com/pkoukk/tiktoken-go/issues/6
- //
- // Every message follows <|start|>{role/name}\n{content}<|end|>\n
- var tokensPerMessage int
- var tokensPerName int
- if model == "gpt-3.5-turbo-0301" {
- tokensPerMessage = 4
- tokensPerName = -1 // If there's a name, the role is omitted
- } else {
- tokensPerMessage = 3
- tokensPerName = 1
- }
- tokenNum := 0
- for _, message := range messages {
- tokenNum += tokensPerMessage
- tokenNum += getTokenNum(tokenEncoder, message.Role)
- if len(message.Content) > 0 {
- var arrayContent []dto.MediaMessage
- if err := json.Unmarshal(message.Content, &arrayContent); err != nil {
- var stringContent string
- if err := json.Unmarshal(message.Content, &stringContent); err != nil {
- return 0, err, false
- } else {
- if checkSensitive {
- contains, words := SensitiveWordContains(stringContent)
- if contains {
- err := fmt.Errorf("message contains sensitive words: [%s]", strings.Join(words, ", "))
- return 0, err, true
- }
- }
- tokenNum += getTokenNum(tokenEncoder, stringContent)
- if message.Name != nil {
- tokenNum += tokensPerName
- tokenNum += getTokenNum(tokenEncoder, *message.Name)
- }
- }
- } else {
- for _, m := range arrayContent {
- if m.Type == "image_url" {
- var imageTokenNum int
- if model == "glm-4v" {
- imageTokenNum = 1047
- } else {
- if str, ok := m.ImageUrl.(string); ok {
- imageTokenNum, err = getImageToken(&dto.MessageImageUrl{Url: str, Detail: "auto"})
- } else {
- imageUrlMap := m.ImageUrl.(map[string]interface{})
- detail, ok := imageUrlMap["detail"]
- if ok {
- imageUrlMap["detail"] = detail.(string)
- } else {
- imageUrlMap["detail"] = "auto"
- }
- imageUrl := dto.MessageImageUrl{
- Url: imageUrlMap["url"].(string),
- Detail: imageUrlMap["detail"].(string),
- }
- imageTokenNum, err = getImageToken(&imageUrl)
- }
- if err != nil {
- return 0, err, false
- }
- }
- tokenNum += imageTokenNum
- log.Printf("image token num: %d", imageTokenNum)
- } else {
- tokenNum += getTokenNum(tokenEncoder, m.Text)
- }
- }
- }
- }
- }
- tokenNum += 3 // Every reply is primed with <|start|>assistant<|message|>
- return tokenNum, nil, false
- }
- func CountTokenInput(input any, model string, check bool) (int, error, bool) {
- switch v := input.(type) {
- case string:
- return CountTokenText(v, model, check)
- case []string:
- text := ""
- for _, s := range v {
- text += s
- }
- return CountTokenText(text, model, check)
- }
- return 0, errors.New("unsupported input type"), false
- }
- func CountAudioToken(text string, model string, check bool) (int, error, bool) {
- if strings.HasPrefix(model, "tts") {
- contains, words := SensitiveWordContains(text)
- if contains {
- return utf8.RuneCountInString(text), fmt.Errorf("input contains sensitive words: [%s]", strings.Join(words, ",")), true
- }
- return utf8.RuneCountInString(text), nil, false
- } else {
- return CountTokenText(text, model, check)
- }
- }
- // CountTokenText 统计文本的token数量,仅当文本包含敏感词,返回错误,同时返回token数量
- func CountTokenText(text string, model string, check bool) (int, error, bool) {
- var err error
- var trigger bool
- if check {
- contains, words := SensitiveWordContains(text)
- if contains {
- err = fmt.Errorf("input contains sensitive words: [%s]", strings.Join(words, ","))
- trigger = true
- }
- }
- tokenEncoder := getTokenEncoder(model)
- return getTokenNum(tokenEncoder, text), err, trigger
- }
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