transformer seq2seq
时间: 2023-09-10 11:07:27 浏览: 81
Transformer seq2seq是一种基于Transformer模型的seq2seq模型。它使用编码器-解码器架构,输入一个序列,输出另一个序列。与传统的seq2seq模型相比,Transformer seq2seq使用Transformer blocks来代替循环网络。这种模型广泛应用于语音识别、机器翻译、语音翻译、语音合成和聊天机器人训练等NLP问题。它的泛用性很高,但有些特定任务可能需要使用经过定制的模型来获得更好的结果。<span class="em">1</span><span class="em">2</span><span class="em">3</span>
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- *1* [Transformer与seq2seq](https://download.csdn.net/download/weixin_38705558/14034735)[target="_blank" data-report-click={"spm":"1018.2226.3001.9630","extra":{"utm_source":"vip_chatgpt_common_search_pc_result","utm_medium":"distribute.pc_search_result.none-task-cask-2~all~insert_cask~default-1-null.142^v93^chatsearchT3_1"}}] [.reference_item style="max-width: 33.333333333333336%"]
- *2* [Transformer神经网络学习笔记——Seq2Seq模型和Transformer](https://blog.csdn.net/qq_50199113/article/details/131562854)[target="_blank" data-report-click={"spm":"1018.2226.3001.9630","extra":{"utm_source":"vip_chatgpt_common_search_pc_result","utm_medium":"distribute.pc_search_result.none-task-cask-2~all~insert_cask~default-1-null.142^v93^chatsearchT3_1"}}] [.reference_item style="max-width: 33.333333333333336%"]
- *3* [Transformer、Attention与seq2seq model](https://blog.csdn.net/weixin_41712499/article/details/103199986)[target="_blank" data-report-click={"spm":"1018.2226.3001.9630","extra":{"utm_source":"vip_chatgpt_common_search_pc_result","utm_medium":"distribute.pc_search_result.none-task-cask-2~all~insert_cask~default-1-null.142^v93^chatsearchT3_1"}}] [.reference_item style="max-width: 33.333333333333336%"]
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