| package executor |
|
|
| import ( |
| "fmt" |
| "regexp" |
| "strconv" |
| "strings" |
| "sync" |
|
|
| "github.com/tidwall/gjson" |
| "github.com/tiktoken-go/tokenizer" |
| ) |
|
|
| |
| var tokenizerCache sync.Map |
|
|
| |
| |
| type TokenizerWrapper struct { |
| Codec tokenizer.Codec |
| AdjustmentFactor float64 |
| } |
|
|
| |
| func (tw *TokenizerWrapper) Count(text string) (int, error) { |
| count, err := tw.Codec.Count(text) |
| if err != nil { |
| return 0, err |
| } |
| if tw.AdjustmentFactor != 1.0 && tw.AdjustmentFactor > 0 { |
| return int(float64(count) * tw.AdjustmentFactor), nil |
| } |
| return count, nil |
| } |
|
|
| |
| |
| func getTokenizer(model string) (*TokenizerWrapper, error) { |
| |
| if cached, ok := tokenizerCache.Load(model); ok { |
| return cached.(*TokenizerWrapper), nil |
| } |
|
|
| |
| wrapper, err := tokenizerForModel(model) |
| if err != nil { |
| return nil, err |
| } |
|
|
| |
| actual, _ := tokenizerCache.LoadOrStore(model, wrapper) |
| return actual.(*TokenizerWrapper), nil |
| } |
|
|
| |
| |
| func tokenizerForModel(model string) (*TokenizerWrapper, error) { |
| sanitized := strings.ToLower(strings.TrimSpace(model)) |
|
|
| |
| |
| if strings.Contains(sanitized, "claude") || strings.HasPrefix(sanitized, "kiro-") || strings.HasPrefix(sanitized, "amazonq-") { |
| enc, err := tokenizer.Get(tokenizer.Cl100kBase) |
| if err != nil { |
| return nil, err |
| } |
| return &TokenizerWrapper{Codec: enc, AdjustmentFactor: 1.1}, nil |
| } |
|
|
| var enc tokenizer.Codec |
| var err error |
|
|
| switch { |
| case sanitized == "": |
| enc, err = tokenizer.Get(tokenizer.Cl100kBase) |
| case strings.HasPrefix(sanitized, "gpt-5.2"): |
| enc, err = tokenizer.ForModel(tokenizer.GPT5) |
| case strings.HasPrefix(sanitized, "gpt-5.1"): |
| enc, err = tokenizer.ForModel(tokenizer.GPT5) |
| case strings.HasPrefix(sanitized, "gpt-5"): |
| enc, err = tokenizer.ForModel(tokenizer.GPT5) |
| case strings.HasPrefix(sanitized, "gpt-4.1"): |
| enc, err = tokenizer.ForModel(tokenizer.GPT41) |
| case strings.HasPrefix(sanitized, "gpt-4o"): |
| enc, err = tokenizer.ForModel(tokenizer.GPT4o) |
| case strings.HasPrefix(sanitized, "gpt-4"): |
| enc, err = tokenizer.ForModel(tokenizer.GPT4) |
| case strings.HasPrefix(sanitized, "gpt-3.5"), strings.HasPrefix(sanitized, "gpt-3"): |
| enc, err = tokenizer.ForModel(tokenizer.GPT35Turbo) |
| case strings.HasPrefix(sanitized, "o1"): |
| enc, err = tokenizer.ForModel(tokenizer.O1) |
| case strings.HasPrefix(sanitized, "o3"): |
| enc, err = tokenizer.ForModel(tokenizer.O3) |
| case strings.HasPrefix(sanitized, "o4"): |
| enc, err = tokenizer.ForModel(tokenizer.O4Mini) |
| default: |
| enc, err = tokenizer.Get(tokenizer.O200kBase) |
| } |
|
|
| if err != nil { |
| return nil, err |
| } |
| return &TokenizerWrapper{Codec: enc, AdjustmentFactor: 1.0}, nil |
| } |
|
|
| |
| func countOpenAIChatTokens(enc *TokenizerWrapper, payload []byte) (int64, error) { |
| if enc == nil { |
| return 0, fmt.Errorf("encoder is nil") |
| } |
| if len(payload) == 0 { |
| return 0, nil |
| } |
|
|
| root := gjson.ParseBytes(payload) |
| segments := make([]string, 0, 32) |
|
|
| collectOpenAIMessages(root.Get("messages"), &segments) |
| collectOpenAITools(root.Get("tools"), &segments) |
| collectOpenAIFunctions(root.Get("functions"), &segments) |
| collectOpenAIToolChoice(root.Get("tool_choice"), &segments) |
| collectOpenAIResponseFormat(root.Get("response_format"), &segments) |
| addIfNotEmpty(&segments, root.Get("input").String()) |
| addIfNotEmpty(&segments, root.Get("prompt").String()) |
|
|
| joined := strings.TrimSpace(strings.Join(segments, "\n")) |
| if joined == "" { |
| return 0, nil |
| } |
|
|
| |
| count, err := enc.Count(joined) |
| if err != nil { |
| return 0, err |
| } |
|
|
| |
| imageTokens := extractImageTokens(joined) |
|
|
| return int64(count) + int64(imageTokens), nil |
| } |
|
|
| |
| |
| |
| func countClaudeChatTokens(enc *TokenizerWrapper, payload []byte) (int64, error) { |
| if enc == nil { |
| return 0, fmt.Errorf("encoder is nil") |
| } |
| if len(payload) == 0 { |
| return 0, nil |
| } |
|
|
| root := gjson.ParseBytes(payload) |
| segments := make([]string, 0, 32) |
|
|
| |
| collectClaudeSystem(root.Get("system"), &segments) |
|
|
| |
| collectClaudeMessages(root.Get("messages"), &segments) |
|
|
| |
| collectClaudeTools(root.Get("tools"), &segments) |
|
|
| joined := strings.TrimSpace(strings.Join(segments, "\n")) |
| if joined == "" { |
| return 0, nil |
| } |
|
|
| |
| count, err := enc.Count(joined) |
| if err != nil { |
| return 0, err |
| } |
|
|
| |
| imageTokens := extractImageTokens(joined) |
|
|
| return int64(count) + int64(imageTokens), nil |
| } |
|
|
| |
| var imageTokenPattern = regexp.MustCompile(`\[IMAGE:(\d+) tokens\]`) |
|
|
| |
| |
| func extractImageTokens(text string) int { |
| matches := imageTokenPattern.FindAllStringSubmatch(text, -1) |
| total := 0 |
| for _, match := range matches { |
| if len(match) > 1 { |
| if tokens, err := strconv.Atoi(match[1]); err == nil { |
| total += tokens |
| } |
| } |
| } |
| return total |
| } |
|
|
| |
| |
| |
| func estimateImageTokens(width, height float64) int { |
| if width <= 0 || height <= 0 { |
| |
| return 1000 |
| } |
|
|
| tokens := int(width * height / 750) |
|
|
| |
| if tokens < 85 { |
| tokens = 85 |
| } |
| if tokens > 1590 { |
| tokens = 1590 |
| } |
|
|
| return tokens |
| } |
|
|
| |
| |
| func collectClaudeSystem(system gjson.Result, segments *[]string) { |
| if !system.Exists() { |
| return |
| } |
| if system.Type == gjson.String { |
| addIfNotEmpty(segments, system.String()) |
| return |
| } |
| if system.IsArray() { |
| system.ForEach(func(_, block gjson.Result) bool { |
| blockType := block.Get("type").String() |
| if blockType == "text" || blockType == "" { |
| addIfNotEmpty(segments, block.Get("text").String()) |
| } |
| |
| if block.Type == gjson.String { |
| addIfNotEmpty(segments, block.String()) |
| } |
| return true |
| }) |
| } |
| } |
|
|
| |
| func collectClaudeMessages(messages gjson.Result, segments *[]string) { |
| if !messages.Exists() || !messages.IsArray() { |
| return |
| } |
| messages.ForEach(func(_, message gjson.Result) bool { |
| addIfNotEmpty(segments, message.Get("role").String()) |
| collectClaudeContent(message.Get("content"), segments) |
| return true |
| }) |
| } |
|
|
| |
| |
| |
| func collectClaudeContent(content gjson.Result, segments *[]string) { |
| if !content.Exists() { |
| return |
| } |
| if content.Type == gjson.String { |
| addIfNotEmpty(segments, content.String()) |
| return |
| } |
| if content.IsArray() { |
| content.ForEach(func(_, part gjson.Result) bool { |
| partType := part.Get("type").String() |
| switch partType { |
| case "text": |
| addIfNotEmpty(segments, part.Get("text").String()) |
| case "image": |
| |
| source := part.Get("source") |
| if source.Exists() { |
| width := source.Get("width").Float() |
| height := source.Get("height").Float() |
| if width > 0 && height > 0 { |
| tokens := estimateImageTokens(width, height) |
| addIfNotEmpty(segments, fmt.Sprintf("[IMAGE:%d tokens]", tokens)) |
| } else { |
| |
| addIfNotEmpty(segments, "[IMAGE:1000 tokens]") |
| } |
| } else { |
| |
| addIfNotEmpty(segments, "[IMAGE:1000 tokens]") |
| } |
| case "tool_use": |
| addIfNotEmpty(segments, part.Get("id").String()) |
| addIfNotEmpty(segments, part.Get("name").String()) |
| if input := part.Get("input"); input.Exists() { |
| addIfNotEmpty(segments, input.Raw) |
| } |
| case "tool_result": |
| addIfNotEmpty(segments, part.Get("tool_use_id").String()) |
| collectClaudeContent(part.Get("content"), segments) |
| case "thinking": |
| addIfNotEmpty(segments, part.Get("thinking").String()) |
| default: |
| |
| if part.Type == gjson.String { |
| addIfNotEmpty(segments, part.String()) |
| } else if part.Type == gjson.JSON { |
| addIfNotEmpty(segments, part.Raw) |
| } |
| } |
| return true |
| }) |
| } |
| } |
|
|
| |
| func collectClaudeTools(tools gjson.Result, segments *[]string) { |
| if !tools.Exists() || !tools.IsArray() { |
| return |
| } |
| tools.ForEach(func(_, tool gjson.Result) bool { |
| addIfNotEmpty(segments, tool.Get("name").String()) |
| addIfNotEmpty(segments, tool.Get("description").String()) |
| if inputSchema := tool.Get("input_schema"); inputSchema.Exists() { |
| addIfNotEmpty(segments, inputSchema.Raw) |
| } |
| return true |
| }) |
| } |
|
|
| |
| func buildOpenAIUsageJSON(count int64) []byte { |
| return []byte(fmt.Sprintf(`{"usage":{"prompt_tokens":%d,"completion_tokens":0,"total_tokens":%d}}`, count, count)) |
| } |
|
|
| func collectOpenAIMessages(messages gjson.Result, segments *[]string) { |
| if !messages.Exists() || !messages.IsArray() { |
| return |
| } |
| messages.ForEach(func(_, message gjson.Result) bool { |
| addIfNotEmpty(segments, message.Get("role").String()) |
| addIfNotEmpty(segments, message.Get("name").String()) |
| collectOpenAIContent(message.Get("content"), segments) |
| collectOpenAIToolCalls(message.Get("tool_calls"), segments) |
| collectOpenAIFunctionCall(message.Get("function_call"), segments) |
| return true |
| }) |
| } |
|
|
| func collectOpenAIContent(content gjson.Result, segments *[]string) { |
| if !content.Exists() { |
| return |
| } |
| if content.Type == gjson.String { |
| addIfNotEmpty(segments, content.String()) |
| return |
| } |
| if content.IsArray() { |
| content.ForEach(func(_, part gjson.Result) bool { |
| partType := part.Get("type").String() |
| switch partType { |
| case "text", "input_text", "output_text": |
| addIfNotEmpty(segments, part.Get("text").String()) |
| case "image_url": |
| addIfNotEmpty(segments, part.Get("image_url.url").String()) |
| case "input_audio", "output_audio", "audio": |
| addIfNotEmpty(segments, part.Get("id").String()) |
| case "tool_result": |
| addIfNotEmpty(segments, part.Get("name").String()) |
| collectOpenAIContent(part.Get("content"), segments) |
| default: |
| if part.IsArray() { |
| collectOpenAIContent(part, segments) |
| return true |
| } |
| if part.Type == gjson.JSON { |
| addIfNotEmpty(segments, part.Raw) |
| return true |
| } |
| addIfNotEmpty(segments, part.String()) |
| } |
| return true |
| }) |
| return |
| } |
| if content.Type == gjson.JSON { |
| addIfNotEmpty(segments, content.Raw) |
| } |
| } |
|
|
| func collectOpenAIToolCalls(calls gjson.Result, segments *[]string) { |
| if !calls.Exists() || !calls.IsArray() { |
| return |
| } |
| calls.ForEach(func(_, call gjson.Result) bool { |
| addIfNotEmpty(segments, call.Get("id").String()) |
| addIfNotEmpty(segments, call.Get("type").String()) |
| function := call.Get("function") |
| if function.Exists() { |
| addIfNotEmpty(segments, function.Get("name").String()) |
| addIfNotEmpty(segments, function.Get("description").String()) |
| addIfNotEmpty(segments, function.Get("arguments").String()) |
| if params := function.Get("parameters"); params.Exists() { |
| addIfNotEmpty(segments, params.Raw) |
| } |
| } |
| return true |
| }) |
| } |
|
|
| func collectOpenAIFunctionCall(call gjson.Result, segments *[]string) { |
| if !call.Exists() { |
| return |
| } |
| addIfNotEmpty(segments, call.Get("name").String()) |
| addIfNotEmpty(segments, call.Get("arguments").String()) |
| } |
|
|
| func collectOpenAITools(tools gjson.Result, segments *[]string) { |
| if !tools.Exists() { |
| return |
| } |
| if tools.IsArray() { |
| tools.ForEach(func(_, tool gjson.Result) bool { |
| appendToolPayload(tool, segments) |
| return true |
| }) |
| return |
| } |
| appendToolPayload(tools, segments) |
| } |
|
|
| func collectOpenAIFunctions(functions gjson.Result, segments *[]string) { |
| if !functions.Exists() || !functions.IsArray() { |
| return |
| } |
| functions.ForEach(func(_, function gjson.Result) bool { |
| addIfNotEmpty(segments, function.Get("name").String()) |
| addIfNotEmpty(segments, function.Get("description").String()) |
| if params := function.Get("parameters"); params.Exists() { |
| addIfNotEmpty(segments, params.Raw) |
| } |
| return true |
| }) |
| } |
|
|
| func collectOpenAIToolChoice(choice gjson.Result, segments *[]string) { |
| if !choice.Exists() { |
| return |
| } |
| if choice.Type == gjson.String { |
| addIfNotEmpty(segments, choice.String()) |
| return |
| } |
| addIfNotEmpty(segments, choice.Raw) |
| } |
|
|
| func collectOpenAIResponseFormat(format gjson.Result, segments *[]string) { |
| if !format.Exists() { |
| return |
| } |
| addIfNotEmpty(segments, format.Get("type").String()) |
| addIfNotEmpty(segments, format.Get("name").String()) |
| if schema := format.Get("json_schema"); schema.Exists() { |
| addIfNotEmpty(segments, schema.Raw) |
| } |
| if schema := format.Get("schema"); schema.Exists() { |
| addIfNotEmpty(segments, schema.Raw) |
| } |
| } |
|
|
| func appendToolPayload(tool gjson.Result, segments *[]string) { |
| if !tool.Exists() { |
| return |
| } |
| addIfNotEmpty(segments, tool.Get("type").String()) |
| addIfNotEmpty(segments, tool.Get("name").String()) |
| addIfNotEmpty(segments, tool.Get("description").String()) |
| if function := tool.Get("function"); function.Exists() { |
| addIfNotEmpty(segments, function.Get("name").String()) |
| addIfNotEmpty(segments, function.Get("description").String()) |
| if params := function.Get("parameters"); params.Exists() { |
| addIfNotEmpty(segments, params.Raw) |
| } |
| } |
| } |
|
|
| func addIfNotEmpty(segments *[]string, value string) { |
| if segments == nil { |
| return |
| } |
| if trimmed := strings.TrimSpace(value); trimmed != "" { |
| *segments = append(*segments, trimmed) |
| } |
| } |
|
|