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Welcome to PyTorch Tutorials

What's new in PyTorch tutorials?

.. customcalloutitem::
   :description: Familiarize yourself with PyTorch concepts and modules. Learn how to load data, build deep neural networks, train and save your models in this quickstart guide.
   :header: Learn the Basics
   :button_link:  beginner/basics/intro.html
   :button_text: Get started with PyTorch

.. customcalloutitem::
   :description: Bite-size, ready-to-deploy PyTorch code examples.
   :header: PyTorch Recipes
   :button_link: recipes/recipes_index.html
   :button_text: Explore Recipes

All

.. customcarditem::
   :header: Learn the Basics
   :card_description: A step-by-step guide to building a complete ML workflow with PyTorch.
   :image: _static/img/thumbnails/cropped/60-min-blitz.png
   :link: beginner/basics/intro.html
   :tags: Getting-Started

.. customcarditem::
   :header: Introduction to PyTorch on YouTube
   :card_description: An introduction to building a complete ML workflow with PyTorch. Follows the PyTorch Beginner Series on YouTube.
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: beginner/introyt/introyt_index.html
   :tags: Getting-Started

.. customcarditem::
   :header: Learning PyTorch with Examples
   :card_description: This tutorial introduces the fundamental concepts of PyTorch through self-contained examples.
   :image: _static/img/thumbnails/cropped/learning-pytorch-with-examples.png
   :link: beginner/pytorch_with_examples.html
   :tags: Getting-Started

.. customcarditem::
   :header: What is torch.nn really?
   :card_description: Use torch.nn to create and train a neural network.
   :image: _static/img/thumbnails/cropped/torch-nn.png
   :link: beginner/nn_tutorial.html
   :tags: Getting-Started

.. customcarditem::
   :header: Visualizing Models, Data, and Training with TensorBoard
   :card_description: Learn to use TensorBoard to visualize data and model training.
   :image: _static/img/thumbnails/cropped/visualizing-with-tensorboard.png
   :link: intermediate/tensorboard_tutorial.html
   :tags: Interpretability,Getting-Started,TensorBoard

.. customcarditem::
   :header: Good usage of `non_blocking` and `pin_memory()` in PyTorch
   :card_description: A guide on best practices to copy data from CPU to GPU.
   :image: _static/img/pinmem.png
   :link: intermediate/pinmem_nonblock.html
   :tags: Getting-Started

.. customcarditem::
   :header: TorchVision Object Detection Finetuning Tutorial
   :card_description: Finetune a pre-trained Mask R-CNN model.
   :image: _static/img/thumbnails/cropped/TorchVision-Object-Detection-Finetuning-Tutorial.png
   :link: intermediate/torchvision_tutorial.html
   :tags: Image/Video

.. customcarditem::
   :header: Transfer Learning for Computer Vision Tutorial
   :card_description: Train a convolutional neural network for image classification using transfer learning.
   :image: _static/img/thumbnails/cropped/Transfer-Learning-for-Computer-Vision-Tutorial.png
   :link: beginner/transfer_learning_tutorial.html
   :tags: Image/Video

.. customcarditem::
   :header: Optimizing Vision Transformer Model
   :card_description: Apply cutting-edge, attention-based transformer models to computer vision tasks.
   :image: _static/img/thumbnails/cropped/60-min-blitz.png
   :link: beginner/vt_tutorial.html
   :tags: Image/Video

.. customcarditem::
   :header: Adversarial Example Generation
   :card_description: Train a convolutional neural network for image classification using transfer learning.
   :image: _static/img/thumbnails/cropped/Adversarial-Example-Generation.png
   :link: beginner/fgsm_tutorial.html
   :tags: Image/Video

.. customcarditem::
   :header: DCGAN Tutorial
   :card_description: Train a generative adversarial network (GAN) to generate new celebrities.
   :image: _static/img/thumbnails/cropped/DCGAN-Tutorial.png
   :link: beginner/dcgan_faces_tutorial.html
   :tags: Image/Video

.. customcarditem::
   :header: Spatial Transformer Networks Tutorial
   :card_description: Learn how to augment your network using a visual attention mechanism.
   :image: _static/img/stn/Five.gif
   :link: intermediate/spatial_transformer_tutorial.html
   :tags: Image/Video

.. customcarditem::
   :header: Inference on Whole Slide Images with TIAToolbox
   :card_description: Learn how to use the TIAToolbox to perform inference on whole slide images.
   :image: _static/img/thumbnails/cropped/TIAToolbox-Tutorial.png
   :link: intermediate/tiatoolbox_tutorial.html
   :tags: Image/Video

.. customcarditem::
   :header: Semi-Supervised Learning Tutorial Based on USB
   :card_description: Learn how to train semi-supervised learning algorithms (on custom data) using USB and PyTorch.
   :image: _static/img/usb_semisup_learn/code.png
   :link: advanced/usb_semisup_learn.html
   :tags: Image/Video

.. customcarditem::
   :header: Audio IO
   :card_description: Learn to load data with torchaudio.
   :image: _static/img/thumbnails/cropped/torchaudio-Tutorial.png
   :link: beginner/audio_io_tutorial.html
   :tags: Audio

.. customcarditem::
   :header: Audio Resampling
   :card_description: Learn to resample audio waveforms using torchaudio.
   :image: _static/img/thumbnails/cropped/torchaudio-Tutorial.png
   :link: beginner/audio_resampling_tutorial.html
   :tags: Audio

.. customcarditem::
   :header: Audio Data Augmentation
   :card_description: Learn to apply data augmentations using torchaudio.
   :image: _static/img/thumbnails/cropped/torchaudio-Tutorial.png
   :link: beginner/audio_data_augmentation_tutorial.html
   :tags: Audio

.. customcarditem::
   :header: Audio Feature Extractions
   :card_description: Learn to extract features using torchaudio.
   :image: _static/img/thumbnails/cropped/torchaudio-Tutorial.png
   :link: beginner/audio_feature_extractions_tutorial.html
   :tags: Audio

.. customcarditem::
   :header: Audio Feature Augmentation
   :card_description: Learn to augment features using torchaudio.
   :image: _static/img/thumbnails/cropped/torchaudio-Tutorial.png
   :link: beginner/audio_feature_augmentation_tutorial.html
   :tags: Audio

.. customcarditem::
   :header: Audio Datasets
   :card_description: Learn to use torchaudio datasets.
   :image: _static/img/thumbnails/cropped/torchaudio-Tutorial.png
   :link: beginner/audio_datasets_tutorial.html
   :tags: Audio

.. customcarditem::
   :header: Automatic Speech Recognition with Wav2Vec2 in torchaudio
   :card_description: Learn how to use torchaudio's pretrained models for building a speech recognition application.
   :image: _static/img/thumbnails/cropped/torchaudio-asr.png
   :link: intermediate/speech_recognition_pipeline_tutorial.html
   :tags: Audio

.. customcarditem::
   :header: Speech Command Classification
   :card_description: Learn how to correctly format an audio dataset and then train/test an audio classifier network on the dataset.
   :image: _static/img/thumbnails/cropped/torchaudio-speech.png
   :link: intermediate/speech_command_classification_with_torchaudio_tutorial.html
   :tags: Audio

.. customcarditem::
   :header: Text-to-Speech with torchaudio
   :card_description: Learn how to use torchaudio's pretrained models for building a text-to-speech application.
   :image: _static/img/thumbnails/cropped/torchaudio-speech.png
   :link: intermediate/text_to_speech_with_torchaudio.html
   :tags: Audio

.. customcarditem::
   :header: Forced Alignment with Wav2Vec2 in torchaudio
   :card_description: Learn how to use torchaudio's Wav2Vec2 pretrained models for aligning text to speech
   :image: _static/img/thumbnails/cropped/torchaudio-alignment.png
   :link: intermediate/forced_alignment_with_torchaudio_tutorial.html
   :tags: Audio

.. customcarditem::
   :header: NLP from Scratch: Classifying Names with a Character-level RNN
   :card_description: Build and train a basic character-level RNN to classify word from scratch without the use of torchtext. First in a series of three tutorials.
   :image: _static/img/thumbnails/cropped/NLP-From-Scratch-Classifying-Names-with-a-Character-Level-RNN.png
   :link: intermediate/char_rnn_classification_tutorial
   :tags: NLP

.. customcarditem::
   :header: NLP from Scratch: Generating Names with a Character-level RNN
   :card_description: After using character-level RNN to classify names, learn how to generate names from languages. Second in a series of three tutorials.
   :image: _static/img/thumbnails/cropped/NLP-From-Scratch-Generating-Names-with-a-Character-Level-RNN.png
   :link: intermediate/char_rnn_generation_tutorial.html
   :tags: NLP

.. customcarditem::
   :header: NLP from Scratch: Translation with a Sequence-to-sequence Network and Attention
   :card_description: This is the third and final tutorial on doing “NLP From Scratch”, where we write our own classes and functions to preprocess the data to do our NLP modeling tasks.
   :image: _static/img/thumbnails/cropped/NLP-From-Scratch-Translation-with-a-Sequence-to-Sequence-Network-and-Attention.png
   :link: intermediate/seq2seq_translation_tutorial.html
   :tags: NLP

.. customcarditem::
   :header: (optional) Exporting a PyTorch model to ONNX using TorchDynamo backend and Running it using ONNX Runtime
   :card_description: Build a image classifier model in PyTorch and convert it to ONNX before deploying it with ONNX Runtime.
   :image: _static/img/thumbnails/cropped/Exporting-PyTorch-Models-to-ONNX-Graphs.png
   :link: beginner/onnx/export_simple_model_to_onnx_tutorial.html
   :tags: Production,ONNX,Backends

.. customcarditem::
   :header: Introduction to ONNX Registry
   :card_description: Demonstrate end-to-end how to address unsupported operators by using ONNX Registry.
   :image: _static/img/thumbnails/cropped/Exporting-PyTorch-Models-to-ONNX-Graphs.png
   :link: advanced/onnx_registry_tutorial.html
   :tags: Production,ONNX,Backends

.. customcarditem::
   :header: Reinforcement Learning (DQN)
   :card_description: Learn how to use PyTorch to train a Deep Q Learning (DQN) agent on the CartPole-v0 task from the OpenAI Gym.
   :image: _static/img/cartpole.gif
   :link: intermediate/reinforcement_q_learning.html
   :tags: Reinforcement-Learning

.. customcarditem::
   :header: Reinforcement Learning (PPO) with TorchRL
   :card_description: Learn how to use PyTorch and TorchRL to train a Proximal Policy Optimization agent on the Inverted Pendulum task from Gym.
   :image: _static/img/invpendulum.gif
   :link: intermediate/reinforcement_ppo.html
   :tags: Reinforcement-Learning

.. customcarditem::
   :header: Train a Mario-playing RL Agent
   :card_description: Use PyTorch to train a Double Q-learning agent to play Mario.
   :image: _static/img/mario.gif
   :link: intermediate/mario_rl_tutorial.html
   :tags: Reinforcement-Learning

.. customcarditem::
   :header: Recurrent DQN
   :card_description: Use TorchRL to train recurrent policies
   :image: _static/img/rollout_recurrent.png
   :link: intermediate/dqn_with_rnn_tutorial.html
   :tags: Reinforcement-Learning

.. customcarditem::
   :header: Code a DDPG Loss
   :card_description: Use TorchRL to code a DDPG Loss
   :image: _static/img/half_cheetah.gif
   :link: advanced/coding_ddpg.html
   :tags: Reinforcement-Learning

.. customcarditem::
   :header: Writing your environment and transforms
   :card_description: Use TorchRL to code a Pendulum
   :image: _static/img/pendulum.gif
   :link: advanced/pendulum.html
   :tags: Reinforcement-Learning

.. customcarditem::
   :header: Deploying PyTorch in Python via a REST API with Flask
   :card_description: Deploy a PyTorch model using Flask and expose a REST API for model inference using the example of a pretrained DenseNet 121 model which detects the image.
   :image: _static/img/thumbnails/cropped/Deploying-PyTorch-in-Python-via-a-REST-API-with-Flask.png
   :link: intermediate/flask_rest_api_tutorial.html
   :tags: Production

.. customcarditem::
   :header: Introduction to TorchScript
   :card_description: Introduction to TorchScript, an intermediate representation of a PyTorch model (subclass of nn.Module) that can then be run in a high-performance environment such as C++.
   :image: _static/img/thumbnails/cropped/Introduction-to-TorchScript.png
   :link: beginner/Intro_to_TorchScript_tutorial.html
   :tags: Production,TorchScript

.. customcarditem::
   :header: Loading a TorchScript Model in C++
   :card_description:  Learn how PyTorch provides to go from an existing Python model to a serialized representation that can be loaded and executed purely from C++, with no dependency on Python.
   :image: _static/img/thumbnails/cropped/Loading-a-TorchScript-Model-in-Cpp.png
   :link: advanced/cpp_export.html
   :tags: Production,TorchScript

.. customcarditem::
   :header: (optional) Exporting a PyTorch Model to ONNX using TorchScript backend and Running it using ONNX Runtime
   :card_description:  Convert a model defined in PyTorch into the ONNX format and then run it with ONNX Runtime.
   :image: _static/img/thumbnails/cropped/optional-Exporting-a-Model-from-PyTorch-to-ONNX-and-Running-it-using-ONNX-Runtime.png
   :link: advanced/super_resolution_with_onnxruntime.html
   :tags: Production,ONNX

.. customcarditem::
   :header: Profiling PyTorch
   :card_description: Learn how to profile a PyTorch application
   :link: beginner/profiler.html
   :tags: Profiling

.. customcarditem::
   :header: Profiling PyTorch
   :card_description: Introduction to Holistic Trace Analysis
   :link: beginner/hta_intro_tutorial.html
   :tags: Profiling

.. customcarditem::
   :header: Profiling PyTorch
   :card_description: Trace Diff using Holistic Trace Analysis
   :link: beginner/hta_trace_diff_tutorial.html
   :tags: Profiling

.. customcarditem::
   :header: Building a Convolution/Batch Norm fuser in FX
   :card_description: Build a simple FX pass that fuses batch norm into convolution to improve performance during inference.
   :image: _static/img/thumbnails/cropped/Deploying-PyTorch-in-Python-via-a-REST-API-with-Flask.png
   :link: intermediate/fx_conv_bn_fuser.html
   :tags: FX

.. customcarditem::
   :header: Building a Simple Performance Profiler with FX
   :card_description: Build a simple FX interpreter to record the runtime of op, module, and function calls and report statistics
   :image: _static/img/thumbnails/cropped/Deploying-PyTorch-in-Python-via-a-REST-API-with-Flask.png
   :link: intermediate/fx_profiling_tutorial.html
   :tags: FX

.. customcarditem::
   :header: (beta) Channels Last Memory Format in PyTorch
   :card_description: Get an overview of Channels Last memory format and understand how it is used to order NCHW tensors in memory preserving dimensions.
   :image: _static/img/thumbnails/cropped/experimental-Channels-Last-Memory-Format-in-PyTorch.png
   :link: intermediate/memory_format_tutorial.html
   :tags: Memory-Format,Best-Practice,Frontend-APIs

.. customcarditem::
   :header: Using the PyTorch C++ Frontend
   :card_description: Walk through an end-to-end example of training a model with the C++ frontend by training a DCGAN – a kind of generative model – to generate images of MNIST digits.
   :image: _static/img/thumbnails/cropped/Using-the-PyTorch-Cpp-Frontend.png
   :link: advanced/cpp_frontend.html
   :tags: Frontend-APIs,C++

.. customcarditem::
   :header: Python Custom Operators Landing Page
   :card_description: This is the landing page for all things related to custom operators in PyTorch.
   :image: _static/img/thumbnails/cropped/Custom-Cpp-and-CUDA-Extensions.png
   :link: advanced/custom_ops_landing_page.html
   :tags: Extending-PyTorch,Frontend-APIs,C++,CUDA

.. customcarditem::
   :header: Python Custom Operators
   :card_description: Create Custom Operators in Python. Useful for black-boxing a Python function for use with torch.compile.
   :image: _static/img/thumbnails/cropped/Custom-Cpp-and-CUDA-Extensions.png
   :link: advanced/python_custom_ops.html
   :tags: Extending-PyTorch,Frontend-APIs,C++,CUDA

.. customcarditem::
   :header: Compiled Autograd: Capturing a larger backward graph for ``torch.compile``
   :card_description: Learn how to use compiled autograd to capture a larger backward graph.
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: intermediate/compiled_autograd_tutorial
   :tags: Model-Optimization,CUDA

.. customcarditem::
   :header: Custom C++ and CUDA Operators
   :card_description: How to extend PyTorch with custom C++ and CUDA operators.
   :image: _static/img/thumbnails/cropped/Custom-Cpp-and-CUDA-Extensions.png
   :link: advanced/cpp_custom_ops.html
   :tags: Extending-PyTorch,Frontend-APIs,C++,CUDA

.. customcarditem::
   :header: Custom C++ and CUDA Extensions
   :card_description:  Create a neural network layer with no parameters using numpy. Then use scipy to create a neural network layer that has learnable weights.
   :image: _static/img/thumbnails/cropped/Custom-Cpp-and-CUDA-Extensions.png
   :link: advanced/cpp_extension.html
   :tags: Extending-PyTorch,Frontend-APIs,C++,CUDA

.. customcarditem::
   :header: Extending TorchScript with Custom C++ Operators
   :card_description:  Implement a custom TorchScript operator in C++, how to build it into a shared library, how to use it in Python to define TorchScript models and lastly how to load it into a C++ application for inference workloads.
   :image: _static/img/thumbnails/cropped/Extending-TorchScript-with-Custom-Cpp-Operators.png
   :link: advanced/torch_script_custom_ops.html
   :tags: Extending-PyTorch,Frontend-APIs,TorchScript,C++

.. customcarditem::
   :header: Extending TorchScript with Custom C++ Classes
   :card_description: This is a continuation of the custom operator tutorial, and introduces the API we’ve built for binding C++ classes into TorchScript and Python simultaneously.
   :image: _static/img/thumbnails/cropped/Extending-TorchScript-with-Custom-Cpp-Classes.png
   :link: advanced/torch_script_custom_classes.html
   :tags: Extending-PyTorch,Frontend-APIs,TorchScript,C++

.. customcarditem::
   :header: Dynamic Parallelism in TorchScript
   :card_description: This tutorial introduces the syntax for doing *dynamic inter-op parallelism* in TorchScript.
   :image: _static/img/thumbnails/cropped/TorchScript-Parallelism.jpg
   :link: advanced/torch-script-parallelism.html
   :tags: Frontend-APIs,TorchScript,C++

.. customcarditem::
   :header: Real Time Inference on Raspberry Pi 4
   :card_description: This tutorial covers how to run quantized and fused models on a Raspberry Pi 4 at 30 fps.
   :image: _static/img/thumbnails/cropped/realtime_rpi.png
   :link: intermediate/realtime_rpi.html
   :tags: TorchScript,Model-Optimization,Image/Video,Quantization

.. customcarditem::
   :header: Autograd in C++ Frontend
   :card_description: The autograd package helps build flexible and dynamic nerural netorks. In this tutorial, exploreseveral examples of doing autograd in PyTorch C++ frontend
   :image: _static/img/thumbnails/cropped/Autograd-in-Cpp-Frontend.png
   :link: advanced/cpp_autograd.html
   :tags: Frontend-APIs,C++

.. customcarditem::
   :header: Registering a Dispatched Operator in C++
   :card_description: The dispatcher is an internal component of PyTorch which is responsible for figuring out what code should actually get run when you call a function like torch::add.
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: advanced/dispatcher.html
   :tags: Extending-PyTorch,Frontend-APIs,C++

.. customcarditem::
   :header: Extending Dispatcher For a New Backend in C++
   :card_description: Learn how to extend the dispatcher to add a new device living outside of the pytorch/pytorch repo and maintain it to keep in sync with native PyTorch devices.
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: advanced/extend_dispatcher.html
   :tags: Extending-PyTorch,Frontend-APIs,C++

.. customcarditem::
   :header: Facilitating New Backend Integration by PrivateUse1
   :card_description: Learn how to integrate a new backend living outside of the pytorch/pytorch repo and maintain it to keep in sync with the native PyTorch backend.
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: advanced/privateuseone.html
   :tags: Extending-PyTorch,Frontend-APIs,C++

.. customcarditem::
   :header: Custom Function Tutorial: Double Backward
   :card_description: Learn how to write a custom autograd Function that supports double backward.
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: intermediate/custom_function_double_backward_tutorial.html
   :tags: Extending-PyTorch,Frontend-APIs

.. customcarditem::
   :header: Custom Function Tutorial: Fusing Convolution and Batch Norm
   :card_description: Learn how to create a custom autograd Function that fuses batch norm into a convolution to improve memory usage.
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: intermediate/custom_function_conv_bn_tutorial.html
   :tags: Extending-PyTorch,Frontend-APIs

.. customcarditem::
   :header: Forward-mode Automatic Differentiation
   :card_description: Learn how to use forward-mode automatic differentiation.
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: intermediate/forward_ad_usage.html
   :tags: Frontend-APIs

.. customcarditem::
   :header: Jacobians, Hessians, hvp, vhp, and more
   :card_description: Learn how to compute advanced autodiff quantities using torch.func
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: intermediate/jacobians_hessians.html
   :tags: Frontend-APIs

.. customcarditem::
   :header: Model Ensembling
   :card_description: Learn how to ensemble models using torch.vmap
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: intermediate/ensembling.html
   :tags: Frontend-APIs

.. customcarditem::
   :header: Per-Sample-Gradients
   :card_description: Learn how to compute per-sample-gradients using torch.func
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: intermediate/per_sample_grads.html
   :tags: Frontend-APIs

.. customcarditem::
   :header: Neural Tangent Kernels
   :card_description: Learn how to compute neural tangent kernels using torch.func
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: intermediate/neural_tangent_kernels.html
   :tags: Frontend-APIs

.. customcarditem::
   :header: Performance Profiling in PyTorch
   :card_description: Learn how to use the PyTorch Profiler to benchmark your module's performance.
   :image: _static/img/thumbnails/cropped/profiler.png
   :link: beginner/profiler.html
   :tags: Model-Optimization,Best-Practice,Profiling

.. customcarditem::
   :header: Performance Profiling in TensorBoard
   :card_description: Learn how to use the TensorBoard plugin to profile and analyze your model's performance.
   :image: _static/img/thumbnails/cropped/profiler.png
   :link: intermediate/tensorboard_profiler_tutorial.html
   :tags: Model-Optimization,Best-Practice,Profiling,TensorBoard

.. customcarditem::
   :header: Hyperparameter Tuning Tutorial
   :card_description: Learn how to use Ray Tune to find the best performing set of hyperparameters for your model.
   :image: _static/img/ray-tune.png
   :link: beginner/hyperparameter_tuning_tutorial.html
   :tags: Model-Optimization,Best-Practice

.. customcarditem::
   :header: Parametrizations Tutorial
   :card_description: Learn how to use torch.nn.utils.parametrize to put constraints on your parameters (e.g. make them orthogonal, symmetric positive definite, low-rank...)
   :image: _static/img/thumbnails/cropped/parametrizations.png
   :link: intermediate/parametrizations.html
   :tags: Model-Optimization,Best-Practice

.. customcarditem::
   :header: Pruning Tutorial
   :card_description: Learn how to use torch.nn.utils.prune to sparsify your neural networks, and how to extend it to implement your own custom pruning technique.
   :image: _static/img/thumbnails/cropped/Pruning-Tutorial.png
   :link: intermediate/pruning_tutorial.html
   :tags: Model-Optimization,Best-Practice

.. customcarditem::
   :header: How to save memory by fusing the optimizer step into the backward pass
   :card_description: Learn a memory-saving technique through fusing the optimizer step into the backward pass using memory snapshots.
   :image: _static/img/thumbnails/cropped/pytorch-logo.png
   :link: intermediate/optimizer_step_in_backward_tutorial.html
   :tags: Model-Optimization,Best-Practice,CUDA,Frontend-APIs

.. customcarditem::
   :header: (beta) Accelerating BERT with semi-structured sparsity
   :card_description: Train BERT, prune it to be 2:4 sparse, and then accelerate it to achieve 2x inference speedups with semi-structured sparsity and torch.compile.
   :image: _static/img/thumbnails/cropped/Pruning-Tutorial.png
   :link: advanced/semi_structured_sparse.html
   :tags: Text,Model-Optimization

.. customcarditem::
   :header: (beta) Dynamic Quantization on an LSTM Word Language Model
   :card_description: Apply dynamic quantization, the easiest form of quantization, to a LSTM-based next word prediction model.
   :image: _static/img/thumbnails/cropped/experimental-Dynamic-Quantization-on-an-LSTM-Word-Language-Model.png
   :link: advanced/dynamic_quantization_tutorial.html
   :tags: Text,Quantization,Model-Optimization

.. customcarditem::
   :header: (beta) Dynamic Quantization on BERT
   :card_description: Apply the dynamic quantization on a BERT (Bidirectional Embedding Representations from Transformers) model.
   :image: _static/img/thumbnails/cropped/experimental-Dynamic-Quantization-on-BERT.png
   :link: intermediate/dynamic_quantization_bert_tutorial.html
   :tags: Text,Quantization,Model-Optimization

.. customcarditem::
   :header: (beta) Quantized Transfer Learning for Computer Vision Tutorial
   :card_description: Extends the Transfer Learning for Computer Vision Tutorial using a quantized model.
   :image: _static/img/thumbnails/cropped/60-min-blitz.png
   :link: intermediate/quantized_transfer_learning_tutorial.html
   :tags: Image/Video,Quantization,Model-Optimization

.. customcarditem::
   :header: (beta) Static Quantization with Eager Mode in PyTorch
   :card_description: This tutorial shows how to do post-training static quantization.
   :image: _static/img/thumbnails/cropped/60-min-blitz.png
   :link: advanced/static_quantization_tutorial.html
   :tags: Quantization

.. customcarditem::
   :header: Grokking PyTorch Intel CPU Performance from First Principles
   :card_description: A case study on the TorchServe inference framework optimized with Intel® Extension for PyTorch.
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: intermediate/torchserve_with_ipex
   :tags: Model-Optimization,Production

.. customcarditem::
   :header: Grokking PyTorch Intel CPU Performance from First Principles (Part 2)
   :card_description: A case study on the TorchServe inference framework optimized with Intel® Extension for PyTorch (Part 2).
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: intermediate/torchserve_with_ipex_2
   :tags: Model-Optimization,Production

.. customcarditem::
   :header: Multi-Objective Neural Architecture Search with Ax
   :card_description: Learn how to use Ax to search over architectures find optimal tradeoffs between accuracy and latency.
   :image: _static/img/ax_logo.png
   :link: intermediate/ax_multiobjective_nas_tutorial.html
   :tags: Model-Optimization,Best-Practice,Ax,TorchX

.. customcarditem::
   :header: torch.compile Tutorial
   :card_description: Speed up your models with minimal code changes using torch.compile, the latest PyTorch compiler solution.
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: intermediate/torch_compile_tutorial.html
   :tags: Model-Optimization

.. customcarditem::
   :header: Inductor CPU Backend Debugging and Profiling
   :card_description: Learn the usage, debugging and performance profiling for ``torch.compile`` with Inductor CPU backend.
   :image: _static/img/thumbnails/cropped/generic-pytorch-logo.png
   :link: intermediate/inductor_debug_cpu.html
   :tags: Model-Optimization

.. customcarditem::
   :header: (beta) Implementing High-Performance Transformers with SCALED DOT PRODUCT ATTENTION
   :card_description: This tutorial explores the new torch.nn.functional.scaled_dot_product_attention and how it can be used to construct Transformer components.
   :image: _static/img/thumbnails/cropped/pytorch-logo.png
   :link: intermediate/scaled_dot_product_attention_tutorial.html
   :tags: Model-Optimization,Attention,Transformer

.. customcarditem::
   :header: Knowledge Distillation in Convolutional Neural Networks
   :card_description:  Learn how to improve the accuracy of lightweight models using more powerful models as teachers.
   :image: _static/img/thumbnails/cropped/knowledge_distillation_pytorch_logo.png
   :link: beginner/knowledge_distillation_tutorial.html
   :tags: Model-Optimization,Image/Video

.. customcarditem::
   :header: PyTorch Distributed Overview
   :card_description: Briefly go over all concepts and features in the distributed package. Use this document to find the distributed training technology that can best serve your application.
   :image: _static/img/thumbnails/cropped/PyTorch-Distributed-Overview.png
   :link: beginner/dist_overview.html
   :tags: Parallel-and-Distributed-Training

.. customcarditem::
   :header: Distributed Data Parallel in PyTorch - Video Tutorials
   :card_description: This series of video tutorials walks you through distributed training in PyTorch via DDP.
   :image: _static/img/thumbnails/cropped/PyTorch-Distributed-Overview.png
   :link: beginner/ddp_series_intro.html
   :tags: Parallel-and-Distributed-Training

.. customcarditem::
   :header: Single-Machine Model Parallel Best Practices
   :card_description:  Learn how to implement model parallel, a distributed training technique which splits a single model onto different GPUs, rather than replicating the entire model on each GPU
   :image: _static/img/thumbnails/cropped/Model-Parallel-Best-Practices.png
   :link: intermediate/model_parallel_tutorial.html
   :tags: Parallel-and-Distributed-Training

.. customcarditem::
   :header: Getting Started with Distributed Data Parallel
   :card_description: Learn the basics of when to use distributed data paralle versus data parallel and work through an example to set it up.
   :image: _static/img/thumbnails/cropped/Getting-Started-with-Distributed-Data-Parallel.png
   :link: intermediate/ddp_tutorial.html
   :tags: Parallel-and-Distributed-Training

.. customcarditem::
   :header: Writing Distributed Applications with PyTorch
   :card_description: Set up the distributed package of PyTorch, use the different communication strategies, and go over some the internals of the package.
   :image: _static/img/thumbnails/cropped/Writing-Distributed-Applications-with-PyTorch.png
   :link: intermediate/dist_tuto.html
   :tags: Parallel-and-Distributed-Training

.. customcarditem::
   :header: Large Scale Transformer model training with Tensor Parallel
   :card_description: Learn how to train large models with Tensor Parallel package.
   :image: _static/img/thumbnails/cropped/Large-Scale-Transformer-model-training-with-Tensor-Parallel.png
   :link: intermediate/TP_tutorial.html
   :tags: Parallel-and-Distributed-Training

.. customcarditem::
   :header: Customize Process Group Backends Using Cpp Extensions
   :card_description: Extend ProcessGroup with custom collective communication implementations.
   :image: _static/img/thumbnails/cropped/Customize-Process-Group-Backends-Using-Cpp-Extensions.png
   :link: intermediate/process_group_cpp_extension_tutorial.html
   :tags: Parallel-and-Distributed-Training

.. customcarditem::
   :header: Getting Started with Distributed RPC Framework
   :card_description: Learn how to build distributed training using the torch.distributed.rpc package.
   :image: _static/img/thumbnails/cropped/Getting Started with Distributed-RPC-Framework.png
   :link: intermediate/rpc_tutorial.html
   :tags: Parallel-and-Distributed-Training

.. customcarditem::
   :header: Implementing a Parameter Server Using Distributed RPC Framework
   :card_description: Walk through a through a simple example of implementing a parameter server using PyTorch’s Distributed RPC framework.
   :image: _static/img/thumbnails/cropped/Implementing-a-Parameter-Server-Using-Distributed-RPC-Framework.png
   :link: intermediate/rpc_param_server_tutorial.html
   :tags: Parallel-and-Distributed-Training

.. customcarditem::
   :header: Introduction to Distributed Pipeline Parallelism
   :card_description: Demonstrate how to implement pipeline parallelism using torch.distributed.pipelining
   :image: _static/img/thumbnails/cropped/Introduction-to-Distributed-Pipeline-Parallelism.png
   :link: intermediate/pipelining_tutorial.html
   :tags: Parallel-and-Distributed-Training

.. customcarditem::
   :header: Implementing Batch RPC Processing Using Asynchronous Executions
   :card_description: Learn how to use rpc.functions.async_execution to implement batch RPC
   :image: _static/img/thumbnails/cropped/Implementing-Batch-RPC-Processing-Using-Asynchronous-Executions.png
   :link: intermediate/rpc_async_execution.html
   :tags: Parallel-and-Distributed-Training

.. customcarditem::
   :header: Combining Distributed DataParallel with Distributed RPC Framework
   :card_description: Walk through a through a simple example of how to combine distributed data parallelism with distributed model parallelism.
   :image: _static/img/thumbnails/cropped/Combining-Distributed-DataParallel-with-Distributed-RPC-Framework.png
   :link: advanced/rpc_ddp_tutorial.html
   :tags: Parallel-and-Distributed-Training

.. customcarditem::
   :header: Getting Started with Fully Sharded Data Parallel(FSDP)
   :card_description: Learn how to train models with Fully Sharded Data Parallel package.
   :image: _static/img/thumbnails/cropped/Getting-Started-with-FSDP.png
   :link: intermediate/FSDP_tutorial.html
   :tags: Parallel-and-Distributed-Training

.. customcarditem::
   :header: Advanced Model Training with Fully Sharded Data Parallel (FSDP)
   :card_description: Explore advanced model training with Fully Sharded Data Parallel package.
   :image: _static/img/thumbnails/cropped/Getting-Started-with-FSDP.png
   :link: intermediate/FSDP_advanced_tutorial.html
   :tags: Parallel-and-Distributed-Training

.. customcarditem::
   :header: Introduction to Libuv TCPStore Backend
   :card_description: TCPStore now uses a new server backend for faster connection and better scalability.
   :image: _static/img/thumbnails/cropped/Introduction-to-Libuv-Backend-TCPStore.png
   :link: intermediate/TCPStore_libuv_backend.html
   :tags: Parallel-and-Distributed-Training

.. customcarditem::
   :header: Exporting to ExecuTorch Tutorial
   :card_description: Learn about how to use ExecuTorch, a unified ML stack for lowering PyTorch models to edge devices.
   :image: _static/img/ExecuTorch-Logo-cropped.svg
   :link: https://pytorch.org/executorch/stable/tutorials/export-to-executorch-tutorial.html
   :tags: Edge

.. customcarditem::
   :header: Running an ExecuTorch Model in C++ Tutorial
   :card_description: Learn how to load and execute an ExecuTorch model in C++
   :image: _static/img/ExecuTorch-Logo-cropped.svg
   :link: https://pytorch.org/executorch/stable/running-a-model-cpp-tutorial.html
   :tags: Edge

.. customcarditem::
   :header: Using the ExecuTorch SDK to Profile a Model
   :card_description: Explore how to use the ExecuTorch SDK to profile, debug, and visualize ExecuTorch models
   :image: _static/img/ExecuTorch-Logo-cropped.svg
   :link: https://pytorch.org/executorch/stable/tutorials/sdk-integration-tutorial.html
   :tags: Edge

.. customcarditem::
   :header: Building an ExecuTorch iOS Demo App
   :card_description: Explore how to set up the ExecuTorch iOS Demo App, which uses the MobileNet v3 model to process live camera images leveraging three different backends: XNNPACK, Core ML, and Metal Performance Shaders (MPS).
   :image: _static/img/ExecuTorch-Logo-cropped.svg
   :link: https://pytorch.org/executorch/stable/demo-apps-ios.html
   :tags: Edge

.. customcarditem::
   :header: Building an ExecuTorch Android Demo App
   :card_description: Learn how to set up the ExecuTorch Android Demo App for image segmentation tasks using the DeepLab v3 model and XNNPACK FP32 backend.
   :image: _static/img/ExecuTorch-Logo-cropped.svg
   :link: https://pytorch.org/executorch/stable/demo-apps-android.html
   :tags: Edge

.. customcarditem::
   :header: Lowering a Model as a Delegate
   :card_description: Learn to accelerate your program using ExecuTorch by applying delegates through three methods: lowering the whole module, composing it with another module, and partitioning parts of a module.
   :image: _static/img/ExecuTorch-Logo-cropped.svg
   :link: https://pytorch.org/executorch/stable/examples-end-to-end-to-lower-model-to-delegate.html
   :tags: Edge


.. customcarditem::
   :header: Introduction to TorchRec
   :card_description: TorchRec is a PyTorch domain library built to provide common sparsity & parallelism primitives needed for large-scale recommender systems.
   :image: _static/img/thumbnails/torchrec.png
   :link: intermediate/torchrec_intro_tutorial.html
   :tags: TorchRec,Recommender

.. customcarditem::
   :header: Exploring TorchRec sharding
   :card_description: This tutorial covers the sharding schemes of embedding tables by using <code>EmbeddingPlanner</code> and <code>DistributedModelParallel</code> API.
   :image: _static/img/thumbnails/torchrec.png
   :link: advanced/sharding.html
   :tags: TorchRec,Recommender

.. customcarditem::
   :header: Introduction to TorchMultimodal
   :card_description: TorchMultimodal is a library that provides models, primitives and examples for training multimodal tasks
   :image: _static/img/thumbnails/torchrec.png
   :link: beginner/flava_finetuning_tutorial.html
   :tags: TorchMultimodal




Additional Resources

.. customcalloutitem::
   :header: Examples of PyTorch
   :description: A set of examples around PyTorch in Vision, Text, Reinforcement Learning that you can incorporate in your existing work.
   :button_link: https://pytorch.org/examples?utm_source=examples&utm_medium=examples-landing
   :button_text: Check Out Examples

.. customcalloutitem::
   :header: PyTorch Cheat Sheet
   :description: Quick overview to essential PyTorch elements.
   :button_link: beginner/ptcheat.html
   :button_text: Open

.. customcalloutitem::
   :header: Tutorials on GitHub
   :description: Access PyTorch Tutorials from GitHub.
   :button_link: https://github.com/pytorch/tutorials
   :button_text: Go To GitHub

.. customcalloutitem::
   :header: Run Tutorials on Google Colab
   :description: Learn how to copy tutorial data into Google Drive so that you can run tutorials on Google Colab.
   :button_link: beginner/colab.html
   :button_text: Open

.. toctree::
   :maxdepth: 1
   :hidden:
   :includehidden:
   :caption: PyTorch Recipes

   See All Recipes <recipes/recipes_index>
   See All Prototype Recipes <prototype/prototype_index>

.. toctree::
   :hidden:
   :includehidden:
   :caption: Introduction to PyTorch

   beginner/basics/intro
   beginner/introyt/introyt_index

.. toctree::
   :maxdepth: 1
   :hidden:
   :includehidden:
   :caption: Learning PyTorch

   beginner/deep_learning_60min_blitz
   beginner/pytorch_with_examples
   beginner/nn_tutorial
   intermediate/nlp_from_scratch_index
   intermediate/tensorboard_tutorial
   intermediate/pinmem_nonblock

.. toctree::
   :maxdepth: 1
   :includehidden:
   :hidden:
   :caption: Image and Video

   intermediate/torchvision_tutorial
   beginner/transfer_learning_tutorial
   beginner/fgsm_tutorial
   beginner/dcgan_faces_tutorial
   intermediate/spatial_transformer_tutorial
   beginner/vt_tutorial
   intermediate/tiatoolbox_tutorial

.. toctree::
   :maxdepth: 2
   :includehidden:
   :hidden:
   :caption: Audio

   beginner/audio_io_tutorial
   beginner/audio_resampling_tutorial
   beginner/audio_data_augmentation_tutorial
   beginner/audio_feature_extractions_tutorial
   beginner/audio_feature_augmentation_tutorial
   beginner/audio_datasets_tutorial
   intermediate/speech_recognition_pipeline_tutorial
   intermediate/speech_command_classification_with_torchaudio_tutorial
   intermediate/text_to_speech_with_torchaudio
   intermediate/forced_alignment_with_torchaudio_tutorial

.. toctree::
   :maxdepth: 1
   :includehidden:
   :hidden:
   :caption: Backends

   beginner/onnx/intro_onnx

.. toctree::
   :maxdepth: 2
   :includehidden:
   :hidden:
   :caption: Reinforcement Learning

   intermediate/reinforcement_q_learning
   intermediate/reinforcement_ppo
   intermediate/mario_rl_tutorial
   advanced/pendulum

.. toctree::
   :maxdepth: 1
   :includehidden:
   :hidden:
   :caption: Deploying PyTorch Models in Production

   beginner/onnx/intro_onnx
   intermediate/flask_rest_api_tutorial
   beginner/Intro_to_TorchScript_tutorial
   advanced/cpp_export
   advanced/super_resolution_with_onnxruntime
   intermediate/realtime_rpi

.. toctree::
   :maxdepth: 2
   :includehidden:
   :hidden:
   :caption: Profiling PyTorch

   beginner/profiler
   beginner/hta_intro_tutorial
   beginner/hta_trace_diff_tutorial

.. toctree::
   :maxdepth: 2
   :includehidden:
   :hidden:
   :caption: Code Transforms with FX

   intermediate/fx_conv_bn_fuser
   intermediate/fx_profiling_tutorial

.. toctree::
   :maxdepth: 2
   :includehidden:
   :hidden:
   :caption: Frontend APIs

   intermediate/memory_format_tutorial
   intermediate/forward_ad_usage
   intermediate/jacobians_hessians
   intermediate/ensembling
   intermediate/per_sample_grads
   intermediate/neural_tangent_kernels.py
   advanced/cpp_frontend
   advanced/torch-script-parallelism
   advanced/cpp_autograd

.. toctree::
   :maxdepth: 2
   :includehidden:
   :hidden:
   :caption: Extending PyTorch

   advanced/custom_ops_landing_page
   advanced/python_custom_ops
   advanced/cpp_custom_ops
   intermediate/custom_function_double_backward_tutorial
   intermediate/custom_function_conv_bn_tutorial
   advanced/cpp_extension
   advanced/torch_script_custom_ops
   advanced/torch_script_custom_classes
   advanced/dispatcher
   advanced/extend_dispatcher
   advanced/privateuseone

.. toctree::
   :maxdepth: 2
   :includehidden:
   :hidden:
   :caption: Model Optimization

   beginner/profiler
   intermediate/tensorboard_profiler_tutorial
   beginner/hyperparameter_tuning_tutorial
   beginner/vt_tutorial
   intermediate/parametrizations
   intermediate/pruning_tutorial
   advanced/dynamic_quantization_tutorial
   intermediate/dynamic_quantization_bert_tutorial
   intermediate/quantized_transfer_learning_tutorial
   advanced/static_quantization_tutorial
   intermediate/torchserve_with_ipex
   intermediate/torchserve_with_ipex_2
   intermediate/nvfuser_intro_tutorial
   intermediate/ax_multiobjective_nas_tutorial
   intermediate/torch_compile_tutorial
   intermediate/compiled_autograd_tutorial
   intermediate/inductor_debug_cpu
   intermediate/scaled_dot_product_attention_tutorial
   beginner/knowledge_distillation_tutorial


.. toctree::
   :maxdepth: 2
   :includehidden:
   :hidden:
   :caption: Parallel and Distributed Training

   distributed/home
   beginner/dist_overview
   beginner/ddp_series_intro
   intermediate/model_parallel_tutorial
   intermediate/ddp_tutorial
   intermediate/dist_tuto
   intermediate/FSDP_tutorial
   intermediate/FSDP_advanced_tutorial
   intermediate/TCPStore_libuv_backend
   intermediate/TP_tutorial
   intermediate/pipelining_tutorial
   intermediate/process_group_cpp_extension_tutorial
   intermediate/rpc_tutorial
   intermediate/rpc_param_server_tutorial
   intermediate/rpc_async_execution
   advanced/rpc_ddp_tutorial
   advanced/generic_join

.. toctree::
   :maxdepth: 2
   :includehidden:
   :hidden:
   :caption: Edge with ExecuTorch

   Exporting to ExecuTorch Tutorial <https://pytorch.org/executorch/stable/tutorials/export-to-executorch-tutorial.html>
   Running an ExecuTorch Model in C++ Tutorial < https://pytorch.org/executorch/stable/running-a-model-cpp-tutorial.html>
   Using the ExecuTorch SDK to Profile a Model <https://pytorch.org/executorch/stable/tutorials/sdk-integration-tutorial.html>
   Building an ExecuTorch iOS Demo App <https://pytorch.org/executorch/stable/demo-apps-ios.html>
   Building an ExecuTorch Android Demo App <https://pytorch.org/executorch/stable/demo-apps-android.html>
   Lowering a Model as a Delegate <https://pytorch.org/executorch/stable/examples-end-to-end-to-lower-model-to-delegate.html>

.. toctree::
   :maxdepth: 2
   :includehidden:
   :hidden:
   :caption: Recommendation Systems

   intermediate/torchrec_intro_tutorial
   advanced/sharding

.. toctree::
   :maxdepth: 2
   :includehidden:
   :hidden:
   :caption: Multimodality

   beginner/flava_finetuning_tutorial