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                # 介紹 到目前為止,我們已經介紹了如何在 TensorFlow 中訓練和評估各種模型。因此,在本章中,我們將向您展示如何編寫可供生產使用的代碼。生產就緒代碼有各種定義,但對我們來說,生產代碼將被定義為具有單元測試的代碼,分離訓練和評估代碼,并有效地保存,并加載數據管道和圖會話的各種所需部分。 > 本章提供的 Python 腳本應該從命令行運行。這允許運行測試,并將設備位置記錄到屏幕上。
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