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transformers

CONTAINERS IMAGES RUN BUILD

The HuggingFace Transformers library supports a wide variety of NLP and vision models with a convenient API, and is used by many of the other LLM packages. There are a large number of models that it's compatible with on HuggingFace Hub.

Note

If you wish to use Transformer's integrated bitsandbytes quantization (load_in_8bit/load_in_4bit) or AutoGPTQ quantization, run these containers instead which include those respective libraries installed on top of Transformers:

Text Generation Benchmark

Substitute the text-generation model that you want to run (it should be a CausalLM model like GPT, Llama, ect)

./run.sh $(./autotag transformers) \
   huggingface-benchmark.py --model=gpt2

If the model repository is private or requires authentication, add --env HUGGINGFACE_TOKEN=<YOUR-ACCESS-TOKEN>

By default, the performance is measured for generating 128 new output tokens (this can be set with --tokens=N)

The prompt can be changed with --prompt='your prompt here'

Precision / Quantization

Use the --precision argument to enable quantization (options are: fp32 fp16 fp4 int8, default is: fp16)

If you're using fp4 or int8, run the bitsandbytes container as noted above, so that bitsandbytes package is installed to do the quantization. It's expected that 4-bit/8-bit quantization is slower through Transformers than FP16 (while consuming less memory) - see here for more info.

Other libraries like exllama, awq, and AutoGPTQ have custom CUDA kernels and more efficient quantized performance.

Llama2

./run.sh --env HUGGINGFACE_TOKEN=<YOUR-ACCESS-TOKEN> $(./autotag transformers) \
   huggingface-benchmark.py --model=meta-llama/Llama-2-7b-hf
CONTAINERS
transformers
   Builds transformers_jp60 transformers_jp51 transformers_jp46
   Requires L4T ['>=32.6']
   Dependencies build-essential cuda cudnn python numpy cmake onnx pytorch:2.2 torchvision huggingface_hub rust
   Dependants audiocraft auto_awq:0.2.4 auto_gptq:0.7.1 awq:0.1.0 bitsandbytes bitsandbytes:builder efficientvit gptq-for-llama l4t-diffusion l4t-text-generation llava local_llm mlc:51fb0f4 mlc:607dc5a nano_llm:24.4 nano_llm:main nanodb nanoowl nanosam nemo optimum stable-diffusion stable-diffusion-webui tensorrt_llm:0.10.dev0 tensorrt_llm:0.10.dev0-builder tensorrt_llm:0.5 tensorrt_llm:0.5-builder text-generation-inference text-generation-webui:1.7 text-generation-webui:6a7cd01 text-generation-webui:main whisperx xtts
   Dockerfile Dockerfile
   Images dustynv/transformers:git-r35.2.1 (2023-12-15, 5.9GB)
dustynv/transformers:git-r35.3.1 (2023-12-12, 5.9GB)
dustynv/transformers:git-r35.4.1 (2023-12-11, 5.9GB)
dustynv/transformers:nvgpt-r35.2.1 (2023-12-05, 5.9GB)
dustynv/transformers:nvgpt-r35.3.1 (2023-12-15, 5.9GB)
dustynv/transformers:nvgpt-r35.4.1 (2023-12-14, 5.9GB)
dustynv/transformers:r32.7.1 (2023-12-15, 1.5GB)
dustynv/transformers:r35.2.1 (2023-12-11, 5.9GB)
dustynv/transformers:r35.3.1 (2023-12-12, 5.9GB)
dustynv/transformers:r35.4.1 (2023-12-15, 5.9GB)
dustynv/transformers:r36.2.0 (2023-12-15, 7.6GB)
   Notes bitsandbytes and auto_gptq dependencies added on JetPack5 for 4-bit/8-bit quantization
transformers:git
   Builds transformers-git_jp51
   Requires L4T ['>=32.6']
   Dependencies build-essential cuda cudnn python numpy cmake onnx pytorch:2.2 torchvision huggingface_hub rust
   Dockerfile Dockerfile
   Images dustynv/transformers:git-r35.2.1 (2023-12-15, 5.9GB)
dustynv/transformers:git-r35.3.1 (2023-12-12, 5.9GB)
dustynv/transformers:git-r35.4.1 (2023-12-11, 5.9GB)
   Notes bitsandbytes and auto_gptq dependencies added on JetPack5 for 4-bit/8-bit quantization
transformers:nvgpt
   Builds transformers-nvgpt_jp51
   Requires L4T ['>=32.6']
   Dependencies build-essential cuda cudnn python numpy cmake onnx pytorch:2.2 torchvision huggingface_hub rust
   Dockerfile Dockerfile
   Images dustynv/transformers:nvgpt-r35.2.1 (2023-12-05, 5.9GB)
dustynv/transformers:nvgpt-r35.3.1 (2023-12-15, 5.9GB)
dustynv/transformers:nvgpt-r35.4.1 (2023-12-14, 5.9GB)
   Notes bitsandbytes and auto_gptq dependencies added on JetPack5 for 4-bit/8-bit quantization
CONTAINER IMAGES
Repository/Tag Date Arch Size
  dustynv/transformers:git-r35.2.1 2023-12-15 arm64 5.9GB
  dustynv/transformers:git-r35.3.1 2023-12-12 arm64 5.9GB
  dustynv/transformers:git-r35.4.1 2023-12-11 arm64 5.9GB
  dustynv/transformers:nvgpt-r35.2.1 2023-12-05 arm64 5.9GB
  dustynv/transformers:nvgpt-r35.3.1 2023-12-15 arm64 5.9GB
  dustynv/transformers:nvgpt-r35.4.1 2023-12-14 arm64 5.9GB
  dustynv/transformers:r32.7.1 2023-12-15 arm64 1.5GB
  dustynv/transformers:r35.2.1 2023-12-11 arm64 5.9GB
  dustynv/transformers:r35.3.1 2023-12-12 arm64 5.9GB
  dustynv/transformers:r35.4.1 2023-12-15 arm64 5.9GB
  dustynv/transformers:r36.2.0 2023-12-15 arm64 7.6GB

Container images are compatible with other minor versions of JetPack/L4T:
    • L4T R32.7 containers can run on other versions of L4T R32.7 (JetPack 4.6+)
    • L4T R35.x containers can run on other versions of L4T R35.x (JetPack 5.1+)

RUN CONTAINER

To start the container, you can use jetson-containers run and autotag, or manually put together a docker run command:

# automatically pull or build a compatible container image
jetson-containers run $(autotag transformers)

# or explicitly specify one of the container images above
jetson-containers run dustynv/transformers:nvgpt-r35.3.1

# or if using 'docker run' (specify image and mounts/ect)
sudo docker run --runtime nvidia -it --rm --network=host dustynv/transformers:nvgpt-r35.3.1

jetson-containers run forwards arguments to docker run with some defaults added (like --runtime nvidia, mounts a /data cache, and detects devices)
autotag finds a container image that's compatible with your version of JetPack/L4T - either locally, pulled from a registry, or by building it.

To mount your own directories into the container, use the -v or --volume flags:

jetson-containers run -v /path/on/host:/path/in/container $(autotag transformers)

To launch the container running a command, as opposed to an interactive shell:

jetson-containers run $(autotag transformers) my_app --abc xyz

You can pass any options to it that you would to docker run, and it'll print out the full command that it constructs before executing it.

BUILD CONTAINER

If you use autotag as shown above, it'll ask to build the container for you if needed. To manually build it, first do the system setup, then run:

jetson-containers build transformers

The dependencies from above will be built into the container, and it'll be tested during. Run it with --help for build options.