text-generation-inference/docs/source/backends/trtllm.md
Nicolas Patry c9d68945cc
Prepare for release 3.1.0 (#2972)
* Prepare for release 3.1.0

* Back on main flake.

* Fixing stuff.

* Upgrade to moe-kernels 0.8.2 for Hip support.

* Deactivating the flaky test.
2025-01-31 14:19:01 +01:00

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# TensorRT-LLM backend
The NVIDIA TensorRT-LLM (TRTLLM) backend is a high-performance backend for LLMs
that uses NVIDIA's TensorRT library for inference acceleration.
It makes use of specific optimizations for NVIDIA GPUs, such as custom kernels.
To use the TRTLLM backend **you need to compile** `engines` for the models you want to use.
Each `engine` must be compiled for a given set of:
- GPU architecture that you will use for inference (e.g. A100, L40, etc.)
- Maximum batch size
- Maximum input length
- Maximum output length
- Maximum beams width
## Supported models
Check the [support matrix](https://nvidia.github.io/TensorRT-LLM/reference/support-matrix.html) to see which models are
supported.
## Compiling engines
You can use [Optimum-NVIDIA](https://github.com/huggingface/optimum-nvidia) to compile engines for the models you
want to use.
```bash
MODEL_NAME="meta-llama/Llama-3.1-8B-Instruct"
DESTINATION="/tmp/engines/$MODEL_NAME"
HF_TOKEN="hf_xxx"
# Compile the engine using Optimum-NVIDIA
# This will create a compiled engine in the /tmp/engines/meta-llama/Llama-3.1-8B-Instruct
# directory for 1 GPU
docker run \
--rm \
-it \
--gpus=1 \
--shm-size=1g \
-v "$DESTINATION":/engine \
-e HF_TOKEN=$HF_TOKEN \
-e HF_HUB_ENABLE_HF_TRANSFER=1 \
huggingface/optimum-nvidia:v0.1.0b9-py310 \
bash -c "optimum-cli export trtllm \
--tp=1 \
--pp=1 \
--max-batch-size=64 \
--max-input-length 4096 \
--max-output-length 8192 \
--max-beams-width=1 \
--destination /tmp/engine \
$MODEL_NAME && cp -rL /tmp/engine/* /engine/"
```
Your compiled engine will be saved in the `/tmp/engines/$MODEL_NAME` directory, in a subfolder named after the GPU used to compile the model.
## Using the TRTLLM backend
Run TGI-TRTLLM Docker image with the compiled engine:
```bash
MODEL_NAME="meta-llama/Llama-3.1-8B-Instruct"
DESTINATION="/tmp/engines/$MODEL_NAME"
HF_TOKEN="hf_xxx"
docker run \
--gpus 1 \
--shm-size=1g \
-it \
--rm \
-p 3000:3000 \
-e MODEL=$MODEL_NAME \
-e PORT=3000 \
-e HF_TOKEN=$HF_TOKEN \
-v "$DESTINATION"/<YOUR_GPU_ARCHITECTURE>/engines:/data \
ghcr.io/huggingface/text-generation-inference:latest-trtllm \
--model-id /data/ \
--tokenizer-name $MODEL_NAME
```
## Development
To develop TRTLLM backend, you can use [dev containers](https://containers.dev/) with the following `.devcontainer.json` file:
```json
{
"name": "CUDA",
"build": {
"dockerfile": "Dockerfile_trtllm",
"context": ".."
},
"remoteEnv": {
"PATH": "${containerEnv:PATH}:/usr/local/cuda/bin",
"LD_LIBRARY_PATH": "$LD_LIBRARY_PATH:/usr/local/cuda/lib64:/usr/local/cuda/extras/CUPTI/lib64",
"XLA_FLAGS": "--xla_gpu_cuda_data_dir=/usr/local/cuda"
},
"customizations" : {
"jetbrains" : {
"backend" : "CLion"
}
}
}
```
and `Dockerfile_trtllm`:
```Dockerfile
ARG cuda_arch_list="75-real;80-real;86-real;89-real;90-real"
ARG build_type=release
ARG ompi_version=4.1.7
# CUDA dependent dependencies resolver stage
FROM nvidia/cuda:12.6.3-cudnn-devel-ubuntu24.04 AS cuda-builder
RUN apt-get update && DEBIAN_FRONTEND=noninteractive apt-get install -y \
build-essential \
cmake \
curl \
gcc-14 \
g++-14 \
git \
git-lfs \
lld \
libssl-dev \
libucx-dev \
libasan8 \
libubsan1 \
ninja-build \
pkg-config \
pipx \
python3 \
python3-dev \
python3-setuptools \
tar \
wget --no-install-recommends && \
pipx ensurepath
ENV TGI_INSTALL_PREFIX=/usr/local/tgi
ENV TENSORRT_INSTALL_PREFIX=/usr/local/tensorrt
# Install OpenMPI
FROM cuda-builder AS mpi-builder
WORKDIR /opt/src/mpi
ARG ompi_version
ENV OMPI_VERSION=${ompi_version}
ENV OMPI_TARBALL_FILENAME=openmpi-${OMPI_VERSION}.tar.bz2
ADD --checksum=sha256:54a33cb7ad81ff0976f15a6cc8003c3922f0f3d8ceed14e1813ef3603f22cd34 \
https://download.open-mpi.org/release/open-mpi/v4.1/${OMPI_TARBALL_FILENAME} .
RUN tar --strip-components=1 -xf ${OMPI_TARBALL_FILENAME} &&\
./configure --prefix=/usr/local/mpi --with-cuda=/usr/local/cuda --with-slurm && \
make -j all && \
make install && \
rm -rf ${OMPI_TARBALL_FILENAME}/..
# Install TensorRT
FROM cuda-builder AS trt-builder
COPY backends/trtllm/scripts/install_tensorrt.sh /opt/install_tensorrt.sh
RUN chmod +x /opt/install_tensorrt.sh && \
/opt/install_tensorrt.sh
# Build Backend
FROM cuda-builder AS tgi-builder
WORKDIR /usr/src/text-generation-inference
# Scoped global args reuse
ARG cuda_arch_list
ARG build_type
ARG sccache_gha_enabled
ARG actions_cache_url
ARG actions_runtime_token
# Install Rust
ENV PATH="/root/.cargo/bin:$PATH"
RUN curl --proto '=https' --tlsv1.2 -sSf https://sh.rustup.rs | bash -s -- -y && \
chmod -R a+w /root/.rustup && \
chmod -R a+w /root/.cargo && \
cargo install sccache --locked
ENV LD_LIBRARY_PATH="/usr/local/mpi/lib:$LD_LIBRARY_PATH"
ENV PKG_CONFIG_PATH="/usr/local/mpi/lib/pkgconfig"
ENV CMAKE_PREFIX_PATH="/usr/local/mpi:/usr/local/tensorrt"
ENV USE_LLD_LINKER=ON
ENV CUDA_ARCH_LIST=${cuda_arch_list}
```