//! Response Parser - 从 API 响应中提取 token 使用量 //! //! 支持多种 API 格式: //! - Claude API (非流式和流式) //! - OpenRouter (OpenAI 格式) //! - Codex API (非流式和流式) //! - Gemini API (非流式和流式) use serde::{Deserialize, Serialize}; use serde_json::Value; /// Token 使用量统计 #[derive(Debug, Clone, Default, Serialize, Deserialize)] pub struct TokenUsage { pub input_tokens: u32, pub output_tokens: u32, pub cache_read_tokens: u32, pub cache_creation_tokens: u32, /// 从响应中提取的实际模型名称(如果可用) pub model: Option, } /// API 类型 #[derive(Debug, Clone, Copy, PartialEq, Eq)] #[allow(dead_code)] pub enum ApiType { Claude, OpenRouter, Codex, Gemini, } impl TokenUsage { /// 从 Claude API 非流式响应解析 pub fn from_claude_response(body: &Value) -> Option { let usage = body.get("usage")?; // 提取响应中的模型名称 let model = body .get("model") .and_then(|v| v.as_str()) .map(|s| s.to_string()); Some(Self { input_tokens: usage.get("input_tokens")?.as_u64()? as u32, output_tokens: usage.get("output_tokens")?.as_u64()? as u32, cache_read_tokens: usage .get("cache_read_input_tokens") .and_then(|v| v.as_u64()) .unwrap_or(0) as u32, cache_creation_tokens: usage .get("cache_creation_input_tokens") .and_then(|v| v.as_u64()) .unwrap_or(0) as u32, model, }) } /// 从 Claude API 流式响应解析 #[allow(dead_code)] pub fn from_claude_stream_events(events: &[Value]) -> Option { let mut usage = Self::default(); let mut model: Option = None; for event in events { if let Some(event_type) = event.get("type").and_then(|v| v.as_str()) { match event_type { "message_start" => { // 从 message_start 提取模型名称 if model.is_none() { if let Some(message) = event.get("message") { if let Some(m) = message.get("model").and_then(|v| v.as_str()) { model = Some(m.to_string()); } } } if let Some(msg_usage) = event.get("message").and_then(|m| m.get("usage")) { // 从 message_start 获取 input_tokens(原生 Claude API) if let Some(input) = msg_usage.get("input_tokens").and_then(|v| v.as_u64()) { usage.input_tokens = input as u32; } usage.cache_read_tokens = msg_usage .get("cache_read_input_tokens") .and_then(|v| v.as_u64()) .unwrap_or(0) as u32; usage.cache_creation_tokens = msg_usage .get("cache_creation_input_tokens") .and_then(|v| v.as_u64()) .unwrap_or(0) as u32; } } "message_delta" => { if let Some(delta_usage) = event.get("usage") { // 从 message_delta 获取 output_tokens if let Some(output) = delta_usage.get("output_tokens").and_then(|v| v.as_u64()) { usage.output_tokens = output as u32; } // OpenRouter 转换后的流式响应:input_tokens 也在 message_delta 中 // 如果 message_start 中没有 input_tokens,则从 message_delta 获取 if usage.input_tokens == 0 { if let Some(input) = delta_usage.get("input_tokens").and_then(|v| v.as_u64()) { usage.input_tokens = input as u32; } } // 从 message_delta 中处理缓存命中(cache_read_input_tokens) if usage.cache_read_tokens == 0 { if let Some(cache_read) = delta_usage.get("cache_read_input_tokens").and_then(|v| v.as_u64()) { usage.cache_read_tokens = cache_read as u32; } } // 从 message_delta 中处理缓存创建(cache_creation_input_tokens) // 注: 现在 zhipu 没有返回 cache_creation_input_tokens 字段 if usage.cache_creation_tokens == 0 { if let Some(cache_creation) = delta_usage.get("cache_creation_input_tokens").and_then(|v| v.as_u64()) { usage.cache_creation_tokens = cache_creation as u32; } } } } _ => {} } } } if usage.input_tokens > 0 || usage.output_tokens > 0 { usage.model = model; Some(usage) } else { None } } /// 从 OpenRouter 响应解析 (OpenAI 格式) #[allow(dead_code)] pub fn from_openrouter_response(body: &Value) -> Option { let usage = body.get("usage")?; Some(Self { input_tokens: usage.get("prompt_tokens")?.as_u64()? as u32, output_tokens: usage.get("completion_tokens")?.as_u64()? as u32, cache_read_tokens: 0, cache_creation_tokens: 0, model: None, }) } /// 从 Codex API 非流式响应解析 pub fn from_codex_response(body: &Value) -> Option { let usage = body.get("usage"); if usage.is_none() { log::debug!( "[Codex] 响应中没有 usage 字段,body keys: {:?}", body.as_object().map(|o| o.keys().collect::>()) ); return None; } let usage = usage?; let input_tokens = usage.get("input_tokens").and_then(|v| v.as_u64()); let output_tokens = usage.get("output_tokens").and_then(|v| v.as_u64()); if input_tokens.is_none() || output_tokens.is_none() { log::debug!("[Codex] usage 字段缺少 input_tokens 或 output_tokens,usage: {usage:?}"); return None; } // 提取响应中的模型名称 let model = body .get("model") .and_then(|v| v.as_str()) .map(|s| s.to_string()); let cached_tokens = usage .get("cache_read_input_tokens") .and_then(|v| v.as_u64()) .or_else(|| { usage .get("input_tokens_details") .and_then(|d| d.get("cached_tokens")) .and_then(|v| v.as_u64()) }) .unwrap_or(0) as u32; Some(Self { input_tokens: input_tokens? as u32, output_tokens: output_tokens? as u32, cache_read_tokens: cached_tokens, cache_creation_tokens: usage .get("cache_creation_input_tokens") .and_then(|v| v.as_u64()) .unwrap_or(0) as u32, model, }) } /// 从 Codex API 响应解析并调整 input_tokens /// /// Codex 的 input_tokens 需要减去 cached_tokens 以获得实际计费的 token 数 /// 公式: adjusted_input = max(input_tokens - cached_tokens, 0) #[allow(dead_code)] pub fn from_codex_response_adjusted(body: &Value) -> Option { let usage = body.get("usage")?; let input_tokens = usage.get("input_tokens")?.as_u64()? as u32; let output_tokens = usage.get("output_tokens")?.as_u64()? as u32; // 获取 cached_tokens (可能在 cache_read_input_tokens 或 input_tokens_details 中) let cached_tokens = usage .get("cache_read_input_tokens") .and_then(|v| v.as_u64()) .or_else(|| { usage .get("input_tokens_details") .and_then(|d| d.get("cached_tokens")) .and_then(|v| v.as_u64()) }) .unwrap_or(0) as u32; // 调整 input_tokens: 减去 cached_tokens let adjusted_input = input_tokens.saturating_sub(cached_tokens); // 提取响应中的模型名称 let model = body .get("model") .and_then(|v| v.as_str()) .map(|s| s.to_string()); Some(Self { input_tokens: adjusted_input, output_tokens, cache_read_tokens: cached_tokens, cache_creation_tokens: usage .get("cache_creation_input_tokens") .and_then(|v| v.as_u64()) .unwrap_or(0) as u32, model, }) } /// 从 Codex API 流式响应解析 #[allow(dead_code)] pub fn from_codex_stream_events(events: &[Value]) -> Option { log::debug!("[Codex] 解析流式事件,共 {} 个事件", events.len()); for event in events { if let Some(event_type) = event.get("type").and_then(|v| v.as_str()) { log::debug!("[Codex] 事件类型: {event_type}"); if event_type == "response.completed" { if let Some(response) = event.get("response") { log::debug!("[Codex] 找到 response.completed 事件,解析 usage"); return Self::from_codex_response_adjusted(response); } } } } log::debug!("[Codex] 未找到 response.completed 事件"); None } /// 智能 Codex 响应解析 - 自动检测 OpenAI 或 Codex 格式 /// /// Codex 支持两种 API 格式: /// - `/v1/responses`: 使用 input_tokens/output_tokens /// - `/v1/chat/completions`: 使用 prompt_tokens/completion_tokens (OpenAI 格式) /// /// 注意:记录原始 input_tokens,费用计算时再减去 cached_tokens pub fn from_codex_response_auto(body: &Value) -> Option { let usage = body.get("usage")?; // 检测格式:OpenAI 使用 prompt_tokens,Codex 使用 input_tokens if usage.get("prompt_tokens").is_some() { log::debug!("[Codex] 检测到 OpenAI 格式 (prompt_tokens)"); Self::from_openai_response(body) } else if usage.get("input_tokens").is_some() { log::debug!("[Codex] 检测到 Codex 格式 (input_tokens)"); // 使用非调整版本,记录原始 input_tokens Self::from_codex_response(body) } else { log::debug!("[Codex] 无法识别响应格式,usage: {usage:?}"); None } } /// 智能 Codex 流式响应解析 - 自动检测 OpenAI 或 Codex 格式 pub fn from_codex_stream_events_auto(events: &[Value]) -> Option { log::debug!("[Codex] 智能解析流式事件,共 {} 个事件", events.len()); // 先尝试 Codex Responses API 格式 (response.completed 事件) for event in events { if let Some(event_type) = event.get("type").and_then(|v| v.as_str()) { if event_type == "response.completed" { if let Some(response) = event.get("response") { log::debug!("[Codex] 找到 response.completed 事件"); return Self::from_codex_response_auto(response); } } } } // 回退到 OpenAI Chat Completions 格式 (最后一个 chunk 包含 usage) log::debug!("[Codex] 尝试 OpenAI 流式格式"); Self::from_openai_stream_events(events) } /// 从 OpenAI Chat Completions API 响应解析 (prompt_tokens, completion_tokens) pub fn from_openai_response(body: &Value) -> Option { let usage = body.get("usage")?; // OpenAI 使用 prompt_tokens 和 completion_tokens let prompt_tokens = usage.get("prompt_tokens").and_then(|v| v.as_u64())?; let completion_tokens = usage.get("completion_tokens").and_then(|v| v.as_u64())?; // 获取 cached_tokens (可能在 prompt_tokens_details 中) let cached_tokens = usage .get("prompt_tokens_details") .and_then(|d| d.get("cached_tokens")) .and_then(|v| v.as_u64()) .unwrap_or(0) as u32; // 提取响应中的模型名称 let model = body .get("model") .and_then(|v| v.as_str()) .map(|s| s.to_string()); Some(Self { input_tokens: prompt_tokens as u32, output_tokens: completion_tokens as u32, cache_read_tokens: cached_tokens, cache_creation_tokens: 0, model, }) } /// 从 OpenAI Chat Completions API 流式响应解析 pub fn from_openai_stream_events(events: &[Value]) -> Option { log::debug!("[Codex] 解析 OpenAI 流式事件,共 {} 个事件", events.len()); // OpenAI 流式响应在最后一个 chunk 中包含 usage for event in events.iter().rev() { if let Some(usage) = event.get("usage") { if !usage.is_null() { log::debug!("[Codex] 找到 usage: {usage:?}"); return Self::from_openai_response(event); } } } log::debug!("[Codex] 未找到 usage 信息"); None } /// 从 Gemini API 非流式响应解析 pub fn from_gemini_response(body: &Value) -> Option { let usage = body.get("usageMetadata")?; // 提取实际使用的模型名称(modelVersion 字段) let model = body .get("modelVersion") .and_then(|v| v.as_str()) .map(|s| s.to_string()); let prompt_tokens = usage.get("promptTokenCount")?.as_u64()? as u32; let total_tokens = usage.get("totalTokenCount")?.as_u64()? as u32; // 输出 tokens = 总 tokens - 输入 tokens // 这包含了 candidatesTokenCount + thoughtsTokenCount let output_tokens = total_tokens.saturating_sub(prompt_tokens); Some(Self { input_tokens: prompt_tokens, output_tokens, cache_read_tokens: usage .get("cachedContentTokenCount") .and_then(|v| v.as_u64()) .unwrap_or(0) as u32, cache_creation_tokens: 0, model, }) } /// 从 Gemini API 流式响应解析 #[allow(dead_code)] pub fn from_gemini_stream_chunks(chunks: &[Value]) -> Option { let mut total_input = 0u32; let mut total_tokens = 0u32; let mut total_cache_read = 0u32; let mut model: Option = None; for chunk in chunks { if let Some(usage) = chunk.get("usageMetadata") { // 输入 tokens (通常在所有 chunk 中保持不变) total_input = usage .get("promptTokenCount") .and_then(|v| v.as_u64()) .unwrap_or(0) as u32; // 总 tokens (包含输入 + 输出 + 思考) total_tokens = usage .get("totalTokenCount") .and_then(|v| v.as_u64()) .unwrap_or(0) as u32; // 缓存读取 tokens total_cache_read = usage .get("cachedContentTokenCount") .and_then(|v| v.as_u64()) .unwrap_or(0) as u32; } // 提取实际使用的模型名称(modelVersion 字段) if model.is_none() { if let Some(model_version) = chunk.get("modelVersion").and_then(|v| v.as_str()) { model = Some(model_version.to_string()); } } } // 输出 tokens = 总 tokens - 输入 tokens let total_output = total_tokens.saturating_sub(total_input); if total_input > 0 || total_output > 0 { Some(Self { input_tokens: total_input, output_tokens: total_output, cache_read_tokens: total_cache_read, cache_creation_tokens: 0, model, }) } else { None } } } #[cfg(test)] mod tests { use super::*; use serde_json::json; #[test] fn test_claude_response_parsing() { let response = json!({ "model": "claude-sonnet-4-20250514", "usage": { "input_tokens": 100, "output_tokens": 50, "cache_read_input_tokens": 20, "cache_creation_input_tokens": 10 } }); let usage = TokenUsage::from_claude_response(&response).unwrap(); assert_eq!(usage.input_tokens, 100); assert_eq!(usage.output_tokens, 50); assert_eq!(usage.cache_read_tokens, 20); assert_eq!(usage.cache_creation_tokens, 10); assert_eq!(usage.model, Some("claude-sonnet-4-20250514".to_string())); } #[test] fn test_claude_response_parsing_no_model() { let response = json!({ "usage": { "input_tokens": 100, "output_tokens": 50, "cache_read_input_tokens": 20, "cache_creation_input_tokens": 10 } }); let usage = TokenUsage::from_claude_response(&response).unwrap(); assert_eq!(usage.input_tokens, 100); assert_eq!(usage.output_tokens, 50); assert_eq!(usage.cache_read_tokens, 20); assert_eq!(usage.cache_creation_tokens, 10); assert_eq!(usage.model, None); } #[test] fn test_claude_stream_parsing() { let events = vec![ json!({ "type": "message_start", "message": { "model": "claude-sonnet-4-20250514", "usage": { "input_tokens": 100, "cache_read_input_tokens": 20, "cache_creation_input_tokens": 10 } } }), json!({ "type": "message_delta", "usage": { "output_tokens": 50 } }), ]; let usage = TokenUsage::from_claude_stream_events(&events).unwrap(); assert_eq!(usage.input_tokens, 100); assert_eq!(usage.output_tokens, 50); assert_eq!(usage.cache_read_tokens, 20); assert_eq!(usage.cache_creation_tokens, 10); assert_eq!(usage.model, Some("claude-sonnet-4-20250514".to_string())); } #[test] fn test_claude_stream_parsing_no_model() { let events = vec![ json!({ "type": "message_start", "message": { "usage": { "input_tokens": 100, "cache_read_input_tokens": 20, "cache_creation_input_tokens": 10 } } }), json!({ "type": "message_delta", "usage": { "output_tokens": 50 } }), ]; let usage = TokenUsage::from_claude_stream_events(&events).unwrap(); assert_eq!(usage.input_tokens, 100); assert_eq!(usage.output_tokens, 50); assert_eq!(usage.cache_read_tokens, 20); assert_eq!(usage.cache_creation_tokens, 10); assert_eq!(usage.model, None); } #[test] fn test_openrouter_response_parsing() { let response = json!({ "usage": { "prompt_tokens": 100, "completion_tokens": 50 } }); let usage = TokenUsage::from_openrouter_response(&response).unwrap(); assert_eq!(usage.input_tokens, 100); assert_eq!(usage.output_tokens, 50); assert_eq!(usage.cache_read_tokens, 0); assert_eq!(usage.cache_creation_tokens, 0); } #[test] fn test_gemini_response_parsing() { let response = json!({ "modelVersion": "gemini-3-pro-high", "usageMetadata": { "promptTokenCount": 8383, "candidatesTokenCount": 50, "thoughtsTokenCount": 114, "totalTokenCount": 8547, "cachedContentTokenCount": 20 } }); let usage = TokenUsage::from_gemini_response(&response).unwrap(); assert_eq!(usage.input_tokens, 8383); // output_tokens = totalTokenCount - promptTokenCount = 8547 - 8383 = 164 assert_eq!(usage.output_tokens, 164); assert_eq!(usage.cache_read_tokens, 20); assert_eq!(usage.cache_creation_tokens, 0); assert_eq!(usage.model, Some("gemini-3-pro-high".to_string())); } #[test] fn test_gemini_response_parsing_no_model() { // 测试没有 modelVersion 字段的情况 let response = json!({ "usageMetadata": { "promptTokenCount": 100, "totalTokenCount": 150, "cachedContentTokenCount": 20 } }); let usage = TokenUsage::from_gemini_response(&response).unwrap(); assert_eq!(usage.input_tokens, 100); // output_tokens = totalTokenCount - promptTokenCount = 150 - 100 = 50 assert_eq!(usage.output_tokens, 50); assert_eq!(usage.cache_read_tokens, 20); assert_eq!(usage.cache_creation_tokens, 0); assert_eq!(usage.model, None); } #[test] fn test_gemini_response_with_thoughts() { // 测试包含 thoughtsTokenCount 的实际响应 // 这是用户报告的真实场景 let response = json!({ "candidates": [ { "content": { "parts": [ { "text": "", "thoughtSignature": "EvcECvQE..." } ], "role": "model" }, "finishReason": "STOP" } ], "modelVersion": "gemini-3-pro-high", "responseId": "yupTafqLDu-PjMcPhrOx4QQ", "usageMetadata": { "candidatesTokenCount": 50, "promptTokenCount": 8383, "thoughtsTokenCount": 114, "totalTokenCount": 8547 } }); let usage = TokenUsage::from_gemini_response(&response).unwrap(); assert_eq!(usage.input_tokens, 8383); // output_tokens = totalTokenCount - promptTokenCount // = 8547 - 8383 = 164 (包含 candidatesTokenCount 50 + thoughtsTokenCount 114) assert_eq!(usage.output_tokens, 164); assert_eq!(usage.cache_read_tokens, 0); assert_eq!(usage.cache_creation_tokens, 0); assert_eq!(usage.model, Some("gemini-3-pro-high".to_string())); } #[test] fn test_codex_response_parsing_cached_tokens_in_details() { let response = json!({ "usage": { "input_tokens": 1000, "output_tokens": 500, "input_tokens_details": { "cached_tokens": 300 } } }); let usage = TokenUsage::from_codex_response(&response).unwrap(); // 非调整模式:input_tokens 保持原值,但应记录缓存命中 assert_eq!(usage.input_tokens, 1000); assert_eq!(usage.output_tokens, 500); assert_eq!(usage.cache_read_tokens, 300); } #[test] fn test_codex_response_adjusted() { let response = json!({ "usage": { "input_tokens": 1000, "output_tokens": 500, "input_tokens_details": { "cached_tokens": 300 } } }); let usage = TokenUsage::from_codex_response_adjusted(&response).unwrap(); // input_tokens 应该被调整: 1000 - 300 = 700 assert_eq!(usage.input_tokens, 700); assert_eq!(usage.output_tokens, 500); assert_eq!(usage.cache_read_tokens, 300); } #[test] fn test_codex_response_adjusted_no_cache() { let response = json!({ "usage": { "input_tokens": 1000, "output_tokens": 500 } }); let usage = TokenUsage::from_codex_response_adjusted(&response).unwrap(); // 没有 cached_tokens,input_tokens 保持不变 assert_eq!(usage.input_tokens, 1000); assert_eq!(usage.output_tokens, 500); assert_eq!(usage.cache_read_tokens, 0); } #[test] fn test_codex_response_adjusted_cache_read_input_tokens() { let response = json!({ "usage": { "input_tokens": 1000, "output_tokens": 500, "cache_read_input_tokens": 200 } }); let usage = TokenUsage::from_codex_response_adjusted(&response).unwrap(); assert_eq!(usage.input_tokens, 800); assert_eq!(usage.output_tokens, 500); assert_eq!(usage.cache_read_tokens, 200); } #[test] fn test_codex_response_adjusted_saturating_sub() { // 测试 cached_tokens > input_tokens 的边界情况 let response = json!({ "usage": { "input_tokens": 100, "output_tokens": 50, "input_tokens_details": { "cached_tokens": 200 } } }); let usage = TokenUsage::from_codex_response_adjusted(&response).unwrap(); // saturating_sub 确保不会下溢 assert_eq!(usage.input_tokens, 0); assert_eq!(usage.cache_read_tokens, 200); } #[test] fn test_openrouter_stream_parsing() { // 测试 OpenRouter 转换后的流式响应解析 // OpenRouter 流式响应经过转换后,input_tokens 在 message_delta 中 let events = vec![ json!({ "type": "message_start", "message": { "model": "claude-sonnet-4-20250514", "usage": { "input_tokens": 0, "output_tokens": 0 } } }), json!({ "type": "message_delta", "delta": { "stop_reason": "end_turn" }, "usage": { "input_tokens": 150, "output_tokens": 75 } }), ]; let usage = TokenUsage::from_claude_stream_events(&events).unwrap(); assert_eq!(usage.input_tokens, 150); assert_eq!(usage.output_tokens, 75); assert_eq!(usage.model, Some("claude-sonnet-4-20250514".to_string())); } #[test] fn test_native_claude_stream_parsing() { // 测试原生 Claude API 流式响应解析 // 原生 Claude API 的 input_tokens 在 message_start 中 let events = vec![ json!({ "type": "message_start", "message": { "model": "claude-sonnet-4-20250514", "usage": { "input_tokens": 200, "cache_read_input_tokens": 50 } } }), json!({ "type": "message_delta", "usage": { "output_tokens": 100 } }), ]; let usage = TokenUsage::from_claude_stream_events(&events).unwrap(); assert_eq!(usage.input_tokens, 200); assert_eq!(usage.output_tokens, 100); assert_eq!(usage.cache_read_tokens, 50); assert_eq!(usage.model, Some("claude-sonnet-4-20250514".to_string())); } // ============================================================================ // 智能 Codex 解析测试 // ============================================================================ #[test] fn test_codex_response_auto_openai_format() { // OpenAI 格式 (prompt_tokens/completion_tokens) let response = json!({ "model": "gpt-4o", "usage": { "prompt_tokens": 1000, "completion_tokens": 500, "prompt_tokens_details": { "cached_tokens": 200 } } }); let usage = TokenUsage::from_codex_response_auto(&response).unwrap(); assert_eq!(usage.input_tokens, 1000); assert_eq!(usage.output_tokens, 500); assert_eq!(usage.cache_read_tokens, 200); assert_eq!(usage.model, Some("gpt-4o".to_string())); } #[test] fn test_codex_response_auto_codex_format() { // Codex 格式 (input_tokens/output_tokens) let response = json!({ "model": "o3", "usage": { "input_tokens": 1000, "output_tokens": 500, "input_tokens_details": { "cached_tokens": 300 } } }); let usage = TokenUsage::from_codex_response_auto(&response).unwrap(); // 记录原始 input_tokens,不调整 assert_eq!(usage.input_tokens, 1000); assert_eq!(usage.output_tokens, 500); assert_eq!(usage.cache_read_tokens, 300); assert_eq!(usage.model, Some("o3".to_string())); } #[test] fn test_codex_stream_events_auto_codex_format() { // Codex Responses API 流式格式 (response.completed 事件) let events = vec![ json!({ "type": "response.created", "response": { "id": "resp_123" } }), json!({ "type": "response.completed", "response": { "model": "o3", "usage": { "input_tokens": 1000, "output_tokens": 500, "input_tokens_details": { "cached_tokens": 200 } } } }), ]; let usage = TokenUsage::from_codex_stream_events_auto(&events).unwrap(); // 记录原始 input_tokens,不调整 assert_eq!(usage.input_tokens, 1000); assert_eq!(usage.output_tokens, 500); assert_eq!(usage.cache_read_tokens, 200); assert_eq!(usage.model, Some("o3".to_string())); } #[test] fn test_codex_stream_events_auto_openai_format() { // OpenAI Chat Completions 流式格式 (最后一个 chunk 包含 usage) let events = vec![ json!({ "id": "chatcmpl-123", "model": "gpt-4o", "choices": [{"delta": {"content": "Hello"}}] }), json!({ "id": "chatcmpl-123", "model": "gpt-4o", "choices": [{"delta": {}}], "usage": { "prompt_tokens": 100, "completion_tokens": 50 } }), ]; let usage = TokenUsage::from_codex_stream_events_auto(&events).unwrap(); assert_eq!(usage.input_tokens, 100); assert_eq!(usage.output_tokens, 50); assert_eq!(usage.model, Some("gpt-4o".to_string())); } }