Transformer-based Neural Network Architecture
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A Transformer-based Neural Network Architecture is a feedforward deep sequential data neural network architecture based on Transformer blocks.
- AKA: X-Former Architecture.
- Context:
- It can (typically) consist of Transformer Encoder Layers (which perform self-attention and position-wise feed-forward operations) and Transformer Decoder Layers (which perform self-attention, encoder-decoder attention, and position-wise feed-forward operations).
- It can (typically) be referenced by a Transformer-Based Neural Network Instance.
- It can be a Sequential Data Model Architecture capable of capturing long-range dependencies within the data.
- It can have a specific arrangement of Neural Network Input Layers, Neural Network Hidden Layers, and Neural Network Output Layers tailored for transformer operations.
- It can (typically) include Self-Attention Mechanisms.
- It can be referenced by a Transformer-based Model Framework.
- ...
- Example(s):
- The original Transformer architecture, as proposed in Vaswani et al. (2017).
- The GPT (Generative Pre-trained Transformer) Architecture, as proposed in Radford et al., 2018.
- The Bidirectional Encoder Representations from Transformers (BERT) Architecture, introduced by Devlin et al., 2018.
- TransformerXL Architecture.
- T5 (Text-To-Text Transfer Transformer) Architecture.
- A Switch Network Architecture.
- ...
- Counter-Example(s):
- A Convolutional Neural Network (CNN) Architecture.
- A Traditional Feedforward Neural Network Architecture without transformer mechanisms.
- A Recurrent Neural Network Architecture.
- See: Self-Attention, Encoder-Decoder Architecture, Language Model, Transformer-Based Neural Network, Neural Transformer, Attention Mechanism, Deep Learning.
References
2023
- Chat
- A Transformer Model Architecture, on the other hand, is a blueprint or template for building Transformer-based neural networks. It defines the overall structure and components of the network, including the arrangement of transformer blocks, self-attention mechanisms, feed-forward layers, and other architectural details. The architecture serves as a foundation for creating specific neural network models with different configurations, hyperparameters, and training data.
Example: The GPT (Generative Pre-trained Transformer) architecture is a Transformer Model Architecture. It consists of a decoder-only structure composed of a stack of transformer blocks. The architecture can be used to create various Transformer-based neural networks for different tasks, such as language modeling and text generation. GPT-3 is one of the models based on the GPT architecture, and the "Davinci" model is a specific instance within the GPT-3 family.
- A Transformer Model Architecture, on the other hand, is a blueprint or template for building Transformer-based neural networks. It defines the overall structure and components of the network, including the arrangement of transformer blocks, self-attention mechanisms, feed-forward layers, and other architectural details. The architecture serves as a foundation for creating specific neural network models with different configurations, hyperparameters, and training data.