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About the jax category
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0
|
600
|
August 11, 2023
|
|
The Base Classification Model
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|
1
|
1650
|
August 6, 2024
|
|
Installation
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|
1
|
1606
|
March 21, 2024
|
|
Transformers for Vision
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|
0
|
1644
|
August 14, 2023
|
|
The Transformer Architecture
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|
0
|
1554
|
August 14, 2023
|
|
Self-Attention and Positional Encoding
|
|
0
|
1575
|
August 14, 2023
|
|
Multi-Head Attention
|
|
0
|
1675
|
August 14, 2023
|
|
The Bahdanau Attention Mechanism
|
|
0
|
1469
|
August 14, 2023
|
|
Attention Scoring Functions
|
|
0
|
1058
|
August 14, 2023
|
|
Attention Pooling by Similarity
|
|
0
|
1260
|
August 14, 2023
|
|
Queries, Keys, and Values
|
|
0
|
1695
|
August 14, 2023
|
|
Encoder-Decoder Seq2Seq for Machine Translation
|
|
0
|
1114
|
August 14, 2023
|
|
The Encoder-Decoder Architecture
|
|
0
|
1576
|
August 14, 2023
|
|
Machine Translation and the Dataset
|
|
0
|
1052
|
August 14, 2023
|
|
Bidirectional Recurrent Neural Networks
|
|
0
|
1146
|
August 14, 2023
|
|
Deep Recurrent Neural Networks
|
|
0
|
1486
|
August 14, 2023
|
|
Gated Recurrent Units (GRU)
|
|
0
|
1245
|
August 14, 2023
|
|
Long Short-Term Memory (LSTM)
|
|
0
|
1585
|
August 14, 2023
|
|
Concise Implementation of Recurrent Neural Networks
|
|
0
|
1036
|
August 14, 2023
|
|
Recurrent Neural Network Implementation from Scratch
|
|
0
|
1671
|
August 14, 2023
|
|
Recurrent Neural Networks
|
|
0
|
663
|
August 14, 2023
|
|
Language Models
|
|
0
|
1160
|
August 14, 2023
|
|
Converting Raw Text into Sequence Data
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|
0
|
1146
|
August 14, 2023
|
|
Working with Sequences
|
|
0
|
1656
|
August 14, 2023
|
|
Designing Convolution Network Architectures
|
|
0
|
1044
|
August 14, 2023
|
|
Densely Connected Networks (DenseNet)
|
|
0
|
1043
|
August 14, 2023
|
|
Residual Networks (ResNet) and ResNeXt
|
|
0
|
1588
|
August 14, 2023
|
|
Batch Normalization
|
|
0
|
1269
|
August 14, 2023
|
|
Multi-Branch Networks (GoogLeNet)
|
|
0
|
1478
|
August 14, 2023
|
|
Network in Network (NiN)
|
|
0
|
1163
|
August 14, 2023
|