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			76 lines
		
	
	
		
			2.9 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
			
		
		
	
	
			76 lines
		
	
	
		
			2.9 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
| """
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| # [LabML Neural Networks](https://lab-ml.com/labml_nn/index.html)
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| 
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| This is a collection of simple PyTorch implementations of
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| neural networks and related algorithms.
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| [These implementations](https://github.com/lab-ml/nn) are documented with explanations,
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| and the [website](https://lab-ml.com/labml_nn/index.html)
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| renders these as side-by-side formatted notes.
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| We believe these would help you understand these algorithms better.
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| 
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| We are actively maintaining this repo and adding new
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| implementations.
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| 
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| ## Modules
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| 
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| #### ✨ [Transformers](https://lab-ml.com/labml_nn/transformers)
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| 
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| [Transformers module](https://lab-ml.com/labml_nn/transformers)
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| contains implementations for
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| [multi-headed attention](https://lab-ml.com/labml_nn/transformers/mha.html)
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| and
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| [relative multi-headed attention](https://lab-ml.com/labml_nn/transformers/relative_mha.html).
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| 
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| * [kNN-LM: Generalization through Memorization](https://lab-ml.com/labml_nn/transformers/knn)
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| 
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| #### ✨ [Recurrent Highway Networks](https://lab-ml.com/labml_nn/recurrent_highway_networks)
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| 
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| #### ✨ [LSTM](https://lab-ml.com/labml_nn/lstm)
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| 
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| #### ✨ [HyperNetworks - HyperLSTM](https://lab-ml.com/labml_nn/hypernetworks/hyper_lstm.html)
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| 
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| #### ✨ [Capsule Networks](https://lab-ml.com/labml_nn/capsule_networks/)
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| 
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| #### ✨ [Generative Adversarial Networks](https://lab-ml.com/labml_nn/gan/)
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| * [GAN with a multi-layer perceptron](https://lab-ml.com/labml_nn/gan/simple_mnist_experiment.html)
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| * [GAN with deep convolutional network](https://lab-ml.com/labml_nn/gan/dcgan.html)
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| * [Cycle GAN](https://lab-ml.com/labml_nn/gan/cycle_gan.html)
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| 
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| #### ✨ [Sketch RNN](https://lab-ml.com/labml_nn/sketch_rnn/)
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| 
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| #### ✨ [Reinforcement Learning](https://lab-ml.com/labml_nn/rl/)
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| * [Proximal Policy Optimization](https://lab-ml.com/labml_nn/rl/ppo/) with
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|  [Generalized Advantage Estimation](https://lab-ml.com/labml_nn/rl/ppo/gae.html)
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| * [Deep Q Networks](https://lab-ml.com/labml_nn/rl/dqn/) with
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|  with [Dueling Network](https://lab-ml.com/labml_nn/rl/dqn/model.html),
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|  [Prioritized Replay](https://lab-ml.com/labml_nn/rl/dqn/replay_buffer.html)
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|  and Double Q Network.
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| 
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| #### ✨ [Optimizers](https://lab-ml.com/labml_nn/optimizers/)
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| * [Adam](https://lab-ml.com/labml_nn/optimizers/adam.html)
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| * [AMSGrad](https://lab-ml.com/labml_nn/optimizers/amsgrad.html)
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| * [Adam Optimizer with warmup](https://lab-ml.com/labml_nn/optimizers/adam_warmup.html)
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| * [Noam Optimizer](https://lab-ml.com/labml_nn/optimizers/noam.html)
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| * [Rectified Adam Optimizer](https://lab-ml.com/labml_nn/optimizers/radam.html)
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| * [AdaBelief Optimizer](https://lab-ml.com/labml_nn/optimizers/ada_belief.html)
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| 
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| ### Installation
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| 
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| ```bash
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| pip install labml_nn
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| ```
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| 
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| ### Citing LabML
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| 
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| If you use LabML for academic research, please cite the library using the following BibTeX entry.
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| 
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| ```bibtex
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| @misc{labml,
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|  author = {Varuna Jayasiri, Nipun Wijerathne},
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|  title = {LabML: A library to organize machine learning experiments},
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|  year = {2020},
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|  url = {https://lab-ml.com/},
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| }
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| ```
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| """
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