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PyTorch Backend
Note:
This feature is currently experimental, and the related API is subjected to change in future versions.
To enhance the usability of the system and improve developer efficiency, TensorRT-LLM launches a new experimental backend based on PyTorch.
The PyTorch backend of TensorRT-LLM is available in version 0.17 and later. You can try it via importing tensorrt_llm._torch.
Quick Start
Here is a simple example to show how to use tensorrt_llm._torch.LLM API with Llama model.
:language: python
:linenos:
Quantization
The PyTorch backend supports FP8 and NVFP4 quantization. You can pass quantized models in HF model hub, which are generated by TensorRT Model Optimizer.
from tensorrt_llm._torch import LLM
llm = LLM(model='nvidia/Llama-3.1-8B-Instruct-FP8')
llm.generate("Hello, my name is")
Or you can try the following commands to get a quantized model by yourself:
git clone https://github.com/NVIDIA/TensorRT-Model-Optimizer.git
cd TensorRT-Model-Optimizer/examples/llm_ptq
scripts/huggingface_example.sh --model <huggingface_model_card> --quant fp8 --export_fmt hf