A Rust, Python and gRPC server for text generation inference. Used in production at HuggingFace to power LLMs api-inference widgets.
- Serve the most popular Large Language Models with a simple launcher
- Tensor Parallelism for faster inference on multiple GPUs
- Token streaming using Server-Sent Events (SSE)
- Dynamic batching of incoming requests for increased total throughput
- Quantization with bitsandbytes
- Safetensors weight loading
- Watermarking with A Watermark for Large Language Models
- Logits warpers (temperature scaling, topk, repetition penalty ...)
- Stop sequences
- Log probabilities
- Production ready (distributed tracing with Open Telemetry, Prometheus metrics)
Other architectures are supported on a best effort basis using:
AutoModelForCausalLM.from_pretrained(<model>, device_map="auto")
or
AutoModelForSeq2SeqLM.from_pretrained(<model>, device_map="auto")
The easiest way of getting started is using the official Docker container:
model=bigscience/bloom-560m
num_shard=2
volume=$PWD/data # share a volume with the Docker container to avoid downloading weights every run
docker run --gpus all --shm-size 1g -p 8080:80 -v $volume:/data ghcr.io/huggingface/text-generation-inference:latest --model-id $model --num-shard $num_shard
You can then query the model using either the /generate
or /generate_stream
routes:
curl 127.0.0.1:8080/generate \
-X POST \
-d '{"inputs":"What is Deep Learning?","parameters":{"max_new_tokens":17}}' \
-H 'Content-Type: application/json'
curl 127.0.0.1:8080/generate_stream \
-X POST \
-d '{"inputs":"What is Deep Learning?","parameters":{"max_new_tokens":17}}' \
-H 'Content-Type: application/json'
or from Python:
pip install text-generation
from text_generation import Client
client = Client("http://127.0.0.1:8080")
print(client.generate("What is Deep Learning?", max_new_tokens=17).generated_text)
text = ""
for response in client.generate_stream("What is Deep Learning?", max_new_tokens=17):
if not response.token.special:
text += response.token.text
print(text)
Note: To use GPUs, you need to install the NVIDIA Container Toolkit.
You can consult the OpenAPI documentation of the text-generation-inference
REST API using the /docs
route.
The Swagger UI is also available at: https://huggingface.github.io/text-generation-inference.
text-generation-inference
is instrumented with distributed tracing using OpenTelemetry. You can use this feature
by setting the address to an OTLP collector with the --otlp-endpoint
argument.
NCCL
is a communication framework used by
PyTorch
to do distributed training/inference. text-generation-inference
make
use of NCCL
to enable Tensor Parallelism to dramatically speed up inference for large language models.
In order to share data between the different devices of a NCCL
group, NCCL
might fall back to using the host memory if
peer-to-peer using NVLink or PCI is not possible.
To allow the container to use 1G of Shared Memory and support SHM sharing, we add --shm-size 1g
on the above command.
If you are running text-generation-inference
inside Kubernetes
. You can also add Shared Memory to the container by
creating a volume with:
- name: shm
emptyDir:
medium: Memory
sizeLimit: 1Gi
and mounting it to /dev/shm
.
Finally, you can also disable SHM sharing by using the NCCL_SHM_DISABLE=1
environment variable. However, note that
this will impact performance.
You can also opt to install text-generation-inference
locally.
First install Rust and create a Python virtual environment with at least
Python 3.9, e.g. using conda
:
curl --proto '=https' --tlsv1.2 -sSf https://sh.rustup.rs | sh
conda create -n text-generation-inference python=3.9
conda activate text-generation-inference
You may also need to install Protoc.
On Linux:
PROTOC_ZIP=protoc-21.12-linux-x86_64.zip
curl -OL https://github.com/protocolbuffers/protobuf/releases/download/v21.12/$PROTOC_ZIP
sudo unzip -o $PROTOC_ZIP -d /usr/local bin/protoc
sudo unzip -o $PROTOC_ZIP -d /usr/local 'include/*'
rm -f $PROTOC_ZIP
On MacOS, using Homebrew:
brew install protobuf
Then run:
BUILD_EXTENSIONS=True make install # Install repository and HF/transformer fork with CUDA kernels
make run-bloom-560m
Note: on some machines, you may also need the OpenSSL libraries and gcc. On Linux machines, run:
sudo apt-get install libssl-dev gcc -y
The custom CUDA kernels are only tested on NVIDIA A100s. If you have any installation or runtime issues, you can remove
the kernels by using the BUILD_EXTENSIONS=False
environment variable.
Be aware that the official Docker image has them enabled by default.
It is advised to download the weights ahead of time with the following command:
make download-bloom
make run-bloom # Requires 8xA100 80GB
You can also quantize the weights with bitsandbytes to reduce the VRAM requirement:
make run-bloom-quantize # Requires 8xA100 40GB
make server-dev
make router-dev
make python-tests
make integration-tests