阿里千問發佈新一代大模型Qwen3.7-Max

2026年5月25日 06:0211400 次瀏覽

重點摘要

5月22日,阿里千問發佈全新智能模型Qwen3.7-Max,已接入千問App、PC端和網頁端。用戶更新App至6.9.7及以上版本即可體驗。該模型作為全能智能體基座,能處理代碼編寫、調試等複雜任務。

站內 AI 整理稿

### 重點整理

阿里千問於5月22日正式推出新一代大模型 Qwen3.7-Max,目前已全面整合至千問 App、PC 端與網頁端,用戶只要將 App 更新至 6.9.7 以上版本即可開始使用。該模型定位為全能智能體基座,能勝任程式碼編寫與除錯等複雜任務。

### 背景脈絡

Qwen 系列是阿里旗下的開源與閉源雙軌大模型體系,過往版本已展現出多模態與推理能力。這次推出的 3.7-Max 版本,可能代表參數規模與任務泛化能力的進一步提升,特別強調「智能體」導向,意味著模型不再只是被動回應,而是能自主規劃與執行多步驟操作。

### 可能影響

對開發者而言,Qwen3.7-Max 的程式碼生成與除錯能力,有機會降低專案開發的入門門檻,並加速原型驗證。對企業來說,更穩定的智能體基座能應用於客服、流程自動化或資料分析等場景,可能促使更多台灣團隊評估整合此模型到自有服務中。

### 讀者可關注的後續

建議有興趣的用戶立刻更新 App 或前往網頁端實際測試程式碼編寫與除錯效果,尤其可對比目前主流模型(如 GPT 系列)的表現。另外,阿里是否會同步開源 Qwen3.7-Max 的輕量版本,或公布詳細評測報告,也值得留意。

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