[**Installation**](#installing-torchcodec) | [**Simple Example**](#using-torchcodec) | [**Detailed Example**](https://pytorch.org/torchcodec/stable/generated_examples/) | [**Documentation**](https://pytorch.org/torchcodec) | [**Contributing**](CONTRIBUTING.md) | [**License**](#license) # TorchCodec TorchCodec is a Python library for decoding video and audio data into PyTorch tensors, on CPU and CUDA GPU. It also supports audio encoding, and video encoding will come soon! It aims to be fast, easy to use, and well integrated into the PyTorch ecosystem. If you want to use PyTorch to train ML models on videos and audio, TorchCodec is how you turn these into data. We achieve these capabilities through: * Pythonic APIs that mirror Python and PyTorch conventions. * Relying on [FFmpeg](https://www.ffmpeg.org/) to do the decoding and encoding. TorchCodec uses the version of FFmpeg you already have installed. FFmpeg is a mature library with broad coverage available on most systems. It is, however, not easy to use. TorchCodec abstracts FFmpeg's complexity to ensure it is used correctly and efficiently. * Returning data as PyTorch tensors, ready to be fed into PyTorch transforms or used directly to train models. ## Using TorchCodec Here's a condensed summary of what you can do with TorchCodec. For more detailed examples, [check out our documentation](https://pytorch.org/torchcodec/stable/generated_examples/)! #### Decoding ```python from torchcodec.decoders import VideoDecoder device = "cpu" # or e.g. "cuda" ! decoder = VideoDecoder("path/to/video.mp4", device=device) decoder.metadata # VideoStreamMetadata: # num_frames: 250 # duration_seconds: 10.0 # bit_rate: 31315.0 # codec: h264 # average_fps: 25.0 # ... (truncated output) # Simple Indexing API decoder[0] # uint8 tensor of shape [C, H, W] decoder[0 : -1 : 20] # uint8 stacked tensor of shape [N, C, H, W] # Indexing, with PTS and duration info: decoder.get_frames_at(indices=[2, 100]) # FrameBatch: # data (shape): torch.Size([2, 3, 270, 480]) # pts_seconds: tensor([0.0667, 3.3367], dtype=torch.float64) # duration_seconds: tensor([0.0334, 0.0334], dtype=torch.float64) # Time-based indexing with PTS and duration info decoder.get_frames_played_at(seconds=[0.5, 10.4]) # FrameBatch: # data (shape): torch.Size([2, 3, 270, 480]) # pts_seconds: tensor([ 0.4671, 10.3770], dtype=torch.float64) # duration_seconds: tensor([0.0334, 0.0334], dtype=torch.float64) ``` #### Clip sampling ```python from torchcodec.samplers import clips_at_regular_timestamps clips_at_regular_timestamps( decoder, seconds_between_clip_starts=1.5, num_frames_per_clip=4, seconds_between_frames=0.1 ) # FrameBatch: # data (shape): torch.Size([9, 4, 3, 270, 480]) # pts_seconds: tensor([[ 0.0000, 0.0667, 0.1668, 0.2669], # [ 1.4681, 1.5682, 1.6683, 1.7684], # [ 2.9696, 3.0697, 3.1698, 3.2699], # ... (truncated), dtype=torch.float64) # duration_seconds: tensor([[0.0334, 0.0334, 0.0334, 0.0334], # [0.0334, 0.0334, 0.0334, 0.0334], # [0.0334, 0.0334, 0.0334, 0.0334], # ... (truncated), dtype=torch.float64) ``` You can use the following snippet to generate a video with FFmpeg and tryout TorchCodec: ```bash fontfile=/usr/share/fonts/dejavu-sans-mono-fonts/DejaVuSansMono-Bold.ttf output_video_file=/tmp/output_video.mp4 ffmpeg -f lavfi -i \ color=size=640x400:duration=10:rate=25:color=blue \ -vf "drawtext=fontfile=${fontfile}:fontsize=30:fontcolor=white:x=(w-text_w)/2:y=(h-text_h)/2:text='Frame %{frame_num}'" \ ${output_video_file} ``` ## Installing TorchCodec ### Installing CPU-only TorchCodec 1. Install the latest stable version of PyTorch following the [official instructions](https://pytorch.org/get-started/locally/). For other versions, refer to the table below for compatibility between versions of `torch` and `torchcodec`. 2. Install FFmpeg, if it's not already installed. Linux distributions usually come with FFmpeg pre-installed. TorchCodec supports all major FFmpeg versions in [4, 7]. If FFmpeg is not already installed, or you need a more recent version, an easy way to install it is to use `conda`: ```bash conda install "ffmpeg<8" # or conda install "ffmpeg<8" -c conda-forge ``` 3. Install TorchCodec: ```bash pip install torchcodec ``` The following table indicates the compatibility between versions of `torchcodec`, `torch` and Python. | `torchcodec` | `torch` | Python | | ------------------ | ------------------ | ------------------- | | `main` / `nightly` | `main` / `nightly` | `>=3.10`, `<=3.13` | | `0.6` | `2.8` | `>=3.9`, `<=3.13` | | `0.5` | `2.7` | `>=3.9`, `<=3.13` | | `0.4` | `2.7` | `>=3.9`, `<=3.13` | | `0.3` | `2.7` | `>=3.9`, `<=3.13` | | `0.2` | `2.6` | `>=3.9`, `<=3.13` | | `0.1` | `2.5` | `>=3.9`, `<=3.12` | | `0.0.3` | `2.4` | `>=3.8`, `<=3.12` | ### Installing CUDA-enabled TorchCodec First, make sure you have a GPU that has NVDEC hardware that can decode the format you want. Refer to Nvidia's GPU support matrix for more details [here](https://developer.nvidia.com/video-encode-and-decode-gpu-support-matrix-new). 1. Install Pytorch corresponding to your CUDA Toolkit using the [official instructions](https://pytorch.org/get-started/locally/). You'll need the `libnpp` and `libnvrtc` CUDA libraries, which are usually part of the CUDA Toolkit. 2. Install or compile FFmpeg with NVDEC support. TorchCodec with CUDA should work with FFmpeg versions in [4, 7]. If FFmpeg is not already installed, or you need a more recent version, an easy way to install it is to use `conda`: ```bash conda install "ffmpeg<8" # or conda install "ffmpeg<8" -c conda-forge ``` If you are building FFmpeg from source you can follow Nvidia's guide to configuring and installing FFmpeg with NVDEC support [here](https://docs.nvidia.com/video-technologies/video-codec-sdk/12.0/ffmpeg-with-nvidia-gpu/index.html). After installing FFmpeg make sure it has NVDEC support when you list the supported decoders: ```bash ffmpeg -decoders | grep -i nvidia # This should show a line like this: # V..... h264_cuvid Nvidia CUVID H264 decoder (codec h264) ``` To check that FFmpeg libraries work with NVDEC correctly you can decode a sample video: ```bash ffmpeg -hwaccel cuda -hwaccel_output_format cuda -i test/resources/nasa_13013.mp4 -f null - ``` 3. Install TorchCodec by passing in an `--index-url` parameter that corresponds to your CUDA Toolkit version, example: ```bash # This corresponds to CUDA Toolkit version 12.6. It should be the same one # you used when you installed PyTorch (If you installed PyTorch with pip). pip install torchcodec --index-url=https://download.pytorch.org/whl/cu126 ``` Note that without passing in the `--index-url` parameter, `pip` installs the CPU-only version of TorchCodec. ## Benchmark Results The following was generated by running [our benchmark script](./benchmarks/decoders/generate_readme_data.py) on a lightly loaded 22-core machine with an Nvidia A100 with 5 [NVDEC decoders](https://docs.nvidia.com/video-technologies/video-codec-sdk/12.1/nvdec-application-note/index.html#). ![benchmark_results](./benchmarks/decoders/benchmark_readme_chart.png) The top row is a [Mandelbrot](https://ffmpeg.org/ffmpeg-filters.html#mandelbrot) video generated from FFmpeg that has a resolution of 1280x720 at 60 fps and is 120 seconds long. The bottom row is [promotional video from NASA](https://download.pytorch.org/torchaudio/tutorial-assets/stream-api/NASAs_Most_Scientifically_Complex_Space_Observatory_Requires_Precision-MP4_small.mp4) that has a resolution of 960x540 at 29.7 fps and is 206 seconds long. Both videos were encoded with libx264 and yuv420p pixel format. All decoders, except for TorchVision, used FFmpeg 6.1.2. TorchVision used FFmpeg 4.2.2. For TorchCodec, the "approx" label means that it was using [approximate mode](https://pytorch.org/torchcodec/stable/generated_examples/approximate_mode.html) for seeking. ## Contributing We welcome contributions to TorchCodec! Please see our [contributing guide](CONTRIBUTING.md) for more details. ## License TorchCodec is released under the [BSD 3 license](./LICENSE). However, TorchCodec may be used with code not written by Meta which may be distributed under different licenses. For example, if you build TorchCodec with ENABLE_CUDA=1 or use the CUDA-enabled release of torchcodec, please review CUDA's license here: [Nvidia licenses](https://docs.nvidia.com/cuda/eula/index.html).