xFasterTransformer is an exceptionally optimized solution for large language models (LLM) on the X86 platform, which is similar to FasterTransformer on the GPU platform. xFasterTransformer is able to operate in distributed mode across multiple sockets and nodes to support inference on larger models. Additionally, it provides both C++ and Python APIs, spanning from high-level to low-level interfaces, making it easy to adopt and integrate.
- xFasterTransformer
Large Language Models (LLMs) develops very fast and are more widely used in many AI scenarios. xFasterTransformer is an optimized solution for LLM inference using the mainstream and popular LLM models on Xeon. xFasterTransformer fully leverages the hardware capabilities of Xeon platforms to achieve the high performance and high scalability of LLM inference both on single socket and multiple sockets/multiple nodes.
xFasterTransformer provides a series of APIs, both of C++ and Python, for end users to integrate xFasterTransformer into their own solutions or services directly. Many kinds of example codes are also provided to demonstrate the usage. Benchmark codes and scripts are provided for users to show the performance. Web demos for popular LLM models are also provided.
Models | Framework | Distribution | |
---|---|---|---|
PyTorch | C++ | ||
ChatGLM | ✔ | ✔ | ✔ |
ChatGLM2 | ✔ | ✔ | ✔ |
ChatGLM3 | ✔ | ✔ | ✔ |
GLM4 | ✔ | ✔ | ✔ |
Llama | ✔ | ✔ | ✔ |
Llama2 | ✔ | ✔ | ✔ |
Llama3 | ✔ | ✔ | ✔ |
Baichuan | ✔ | ✔ | ✔ |
Baichuan2 | ✔ | ✔ | ✔ |
QWen | ✔ | ✔ | ✔ |
QWen2 | ✔ | ✔ | ✔ |
SecLLM(YaRN-Llama) | ✔ | ✔ | ✔ |
Opt | ✔ | ✔ | ✔ |
Deepseek-coder | ✔ | ✔ | ✔ |
gemma | ✔ | ✔ | ✔ |
gemma-1.1 | ✔ | ✔ | ✔ |
codegemma | ✔ | ✔ | ✔ |
- FP16
- BF16
- INT8
- W8A8
- INT4
- NF4
- BF16_FP16
- BF16_INT8
- BF16_W8A8
- BF16_INT4
- BF16_NF4
- W8A8_INT8
- W8A8_int4
- W8A8_NF4
xFasterTransformer Documents and Wiki provides the following resources:
- An introduction to xFasterTransformer.
- Comprehensive API references for both high-level and low-level interfaces in C++ and PyTorch.
- Practical API usage examples for xFasterTransformer in both C++ and PyTorch.
pip install xfastertransformer
docker pull intel/xfastertransformer:latest
Run the docker with the command (Assume model files are in /data/
directory):
docker run -it \
--name xfastertransformer \
--privileged \
--shm-size=16g \
-v /data/:/data/ \
-e "http_proxy=$http_proxy" \
-e "https_proxy=$https_proxy" \
intel/xfastertransformer:latest
Notice!!!: Please enlarge --shm-size
if bus error occurred while running in the multi-ranks mode. The default docker limits the shared memory size to 64MB and our implementation uses many shared memories to achieve a better performance.
-
PyTorch v2.3 (When using the PyTorch API, it's required, but it's not needed when using the C++ API.)
pip install torch --index-url https://download.pytorch.org/whl/cpu
-
For GPU, xFT needs ABI=1 from torch==2.3.0+cpu.cxx11.abi in torch-whl-list due to DPC++ need ABI=1.
Please install libnuma package:
- CentOS: yum install libnuma-devel
- Ubuntu: apt-get install libnuma-dev
- Using 'CMake'
# Build xFasterTransformer git clone https://github.com/intel/xFasterTransformer.git xFasterTransformer cd xFasterTransformer git checkout <latest-tag> # Please make sure torch is installed when run python example mkdir build && cd build cmake .. make -j
- Using
python setup.py
# Build xFasterTransformer library and C++ example. python setup.py build # Install xFasterTransformer into pip environment. # Notice: Run `python setup.py build` before installation! python setup.py install
xFasterTransformer supports a different model format from Huggingface, but it's compatible with FasterTransformer's format.
-
Download the huggingface format model firstly.
-
After that, convert the model into xFasterTransformer format by using model convert module in xfastertransformer. If output directory is not provided, converted model will be placed into
${HF_DATASET_DIR}-xft
.python -c 'import xfastertransformer as xft; xft.LlamaConvert().convert("${HF_DATASET_DIR}","${OUTPUT_DIR}")'
PS: Due to the potential compatibility issues between the model file and the
transformers
version, please select the appropriatetransformers
version.Supported model convert list:
- LlamaConvert
- YiConvert
- GemmaConvert
- ChatGLMConvert
- ChatGLM2Convert
- ChatGLM4Convert
- OPTConvert
- BaichuanConvert
- Baichuan2Convert
- QwenConvert
- Qwen2Convert
- DeepseekConvert
For more details, please see API document and examples.
Firstly, please install the dependencies.
- Python dependencies
PS: Due to the potential compatibility issues between the model file and the
pip install -r requirements.txt
transformers
version, please select the appropriatetransformers
version. - oneCCL (For multi ranks)
Install oneCCL and setup the environment. Please refer to Prepare Environment.
xFasterTransformer's Python API is similar to transformers and also supports transformers's streamer to achieve the streaming output. In the example, we use transformers to encode input prompts to token ids.
import xfastertransformer
from transformers import AutoTokenizer, TextStreamer
# Assume huggingface model dir is `/data/chatglm-6b-hf` and converted model dir is `/data/chatglm-6b-xft`.
MODEL_PATH="/data/chatglm-6b-xft"
TOKEN_PATH="/data/chatglm-6b-hf"
INPUT_PROMPT = "Once upon a time, there existed a little girl who liked to have adventures."
tokenizer = AutoTokenizer.from_pretrained(TOKEN_PATH, use_fast=False, padding_side="left", trust_remote_code=True)
streamer = TextStreamer(tokenizer, skip_special_tokens=True, skip_prompt=False)
input_ids = tokenizer(INPUT_PROMPT, return_tensors="pt", padding=False).input_ids
model = xfastertransformer.AutoModel.from_pretrained(MODEL_PATH, dtype="bf16")
generated_ids = model.generate(input_ids, max_length=200, streamer=streamer)
SentencePiece can be used to tokenizer and detokenizer text.
#include <vector>
#include <iostream>
#include "xfastertransformer.h"
// ChatGLM token ids for prompt "Once upon a time, there existed a little girl who liked to have adventures."
std::vector<int> input(
{3393, 955, 104, 163, 6, 173, 9166, 104, 486, 2511, 172, 7599, 103, 127, 17163, 7, 130001, 130004});
// Assume converted model dir is `/data/chatglm-6b-xft`.
xft::AutoModel model("/data/chatglm-6b-xft", xft::DataType::bf16);
model.config(/*max length*/ 100, /*num beams*/ 1);
model.input(/*input token ids*/ input, /*batch size*/ 1);
while (!model.isDone()) {
std::vector<int> nextIds = model.generate();
}
std::vector<int> result = model.finalize();
for (auto id : result) {
std::cout << id << " ";
}
std::cout << std::endl;
Recommend preloading libiomp5.so
to get a better performance.
- [Recommended] Run
export $(python -c 'import xfastertransformer as xft; print(xft.get_env())')
if xfastertransformer's python wheel package is installed. libiomp5.so
file will be in3rdparty/mkl/lib
directory after building xFasterTransformer successfully if building from source code.
FasterTransformer will automatically check the MPI environment, or you can use the SINGLE_INSTANCE=1
environment variable to forcefully deactivate MPI.
Use MPI to run in the multi-ranks mode, please install oneCCL firstly.
-
- If you have built xfastertransformer from source, oneCCL is installed in 3rdparty when compilation.
source ./3rdparty/oneccl/build/_install/env/setvars.sh
- [Recommended] Use provided scripts to build it from source code.
cd 3rdparty sh prepare_oneccl.sh source ./oneccl/build/_install/env/setvars.sh
- Install oneCCL through installing Intel® oneAPI Base Toolkit.(Notice:It is recommended to use versions 2023.x and below.) And source the enviroment by:
source /opt/intel/oneapi/setvars.sh
- If you have built xfastertransformer from source, oneCCL is installed in 3rdparty when compilation.
-
Here is a example on local.
# or export LD_PRELOAD=libiomp5.so manually export $(python -c 'import xfastertransformer as xft; print(xft.get_env())') OMP_NUM_THREADS=48 mpirun \ -n 1 numactl -N 0 -m 0 ${RUN_WORKLOAD} : \ -n 1 numactl -N 1 -m 1 ${RUN_WORKLOAD}
For more details, please refer to examples.
model.rank
can get the process's rank, model.rank == 0
is the Master.
For Slaves, after loading the model, the only thing needs to do is model.generate()
. The input and generation configuration will be auto synced.
model = xfastertransformer.AutoModel.from_pretrained("/data/chatglm-6b-xft", dtype="bf16")
# Slave
while True:
model.generate()
model.getRank()
can get the process's rank, model.getRank() == 0
is the Master.
For Slaves, any value can be input to model.config()
and model.input
since Master's value will be synced.
xft::AutoModel model("/data/chatglm-6b-xft", xft::DataType::bf16);
// Slave
while (1) {
model.config();
std::vector<int> input_ids;
model.input(/*input token ids*/ input_ids, /*batch size*/ 1);
while (!model.isDone()) {
model.generate();
}
}
A web demo based on Gradio is provided in repo. Now support ChatGLM, ChatGLM2 and Llama2 models.
- Perpare the model.
- Install the dependencies
PS: Due to the potential compatibility issues between the model file and the
pip install -r examples/web_demo/requirements.txt
transformers
version, please select the appropriatetransformers
version. - Run the script corresponding to the model. After the web server started, open the output URL in the browser to use the demo. Please specify the paths of model and tokenizer directory, and data type.
transformer
's tokenizer is used to encode and decode text so${TOKEN_PATH}
means the huggingface model directory. This demo also support multi-rank.
# Recommend preloading `libiomp5.so` to get a better performance.
# or LD_PRELOAD=libiomp5.so manually, `libiomp5.so` file will be in `3rdparty/mkl/lib` directory after build xFasterTransformer.
export $(python -c 'import xfastertransformer as xft; print(xft.get_env())')
python examples/web_demo/ChatGLM.py \
--dtype=bf16 \
--token_path=${TOKEN_PATH} \
--model_path=${MODEL_PATH}
A fork of vLLM has been created to integrate the xFasterTransformer backend, maintaining compatibility with most of the official vLLM's features. Refer this link for more detail.
pip install vllm-xft
Notice: Please do not install both vllm-xft
and vllm
simultaneously in the environment. Although the package names are different, they will actually overwrite each other.
Notice: Preload libiomp5.so is required!
# Preload libiomp5.so by following cmd or LD_PRELOAD=libiomp5.so manually
export $(python -c 'import xfastertransformer as xft; print(xft.get_env())')
python -m vllm.entrypoints.openai.api_server \
--model ${MODEL_PATH} \
--tokenizer ${TOKEN_PATH} \
--dtype bf16 \
--kv-cache-dtype fp16 \
--served-model-name xft \
--port 8000 \
--trust-remote-code
For multi-rank mode, please use python -m vllm.entrypoints.slave
as slave and keep params of slaves align with master.
# Preload libiomp5.so by following cmd or LD_PRELOAD=libiomp5.so manually
export $(python -c 'import xfastertransformer as xft; print(xft.get_env())')
OMP_NUM_THREADS=48 mpirun \
-n 1 numactl --all -C 0-47 -m 0 \
python -m vllm.entrypoints.openai.api_server \
--model ${MODEL_PATH} \
--tokenizer ${TOKEN_PATH} \
--dtype bf16 \
--kv-cache-dtype fp16 \
--served-model-name xft \
--port 8000 \
--trust-remote-code \
: -n 1 numactl --all -C 48-95 -m 1 \
python -m vllm.entrypoints.slave \
--dtype bf16 \
--model ${MODEL_PATH} \
--kv-cache-dtype fp16
xFasterTransformer is an official inference backend of FastChat. Please refer to xFasterTransformer in FastChat and FastChat's serving for more details.
A example serving of MLServer is provided which supports REST and gRPC interface and adaptive batching feature to group inference requests together on the fly.
Benchmark scripts are provided to get the model inference performance quickly.
- Prepare the model.
- Install the dependencies, including oneCCL and python dependencies.
- Enter the
benchmark
folder and runrun_benchmark.sh
. Please refer to Benchmark README for more information.
Notes!!!: The system and CPU configuration may be different. For the best performance, please try to modify OMP_NUM_THREADS, datatype and the memory nodes number (check the memory nodes using numactl -H
) according to your test environment.
- xFasterTransformer email: xft.maintainer@intel.com
- xFasterTransformer wechat
- ICLR'2024 on practical ML for limited/low resource settings: Distributed Inference Performance Optimization for LLMs on CPUs
- ICML'2024 on Foundation Models in the Wild: Inference Performance Optimization for Large Language Models on CPUs
- IEEE ICSESS 2024: All-in-one Approach for Large Language Models Inference
If xFT is useful for your research, please cite:
@article{he2024distributed,
title={Distributed Inference Performance Optimization for LLMs on CPUs},
author={He, Pujiang and Zhou, Shan and Li, Changqing and Huang, Wenhuan and Yu, Weifei and Wang, Duyi and Meng, Chen and Gui, Sheng},
journal={arXiv preprint arXiv:2407.00029},
year={2024}
}
and
@inproceedings{he2024inference,
title={Inference Performance Optimization for Large Language Models on CPUs},
author={He, Pujiang and Zhou, Shan and Huang, Wenhuan and Li, Changqing and Wang, Duyi and Guo, Bin and Meng, Chen and Gui, Sheng and Yu, Weifei and Xie, Yi},
booktitle={ICML 2024 Workshop on Foundation Models in the Wild}
}
-
Q: Can xFasterTransformer run on a Intel® Core™ CPU?
A: No. xFasterTransformer requires support for the AMX and AVX512 instruction sets, which are not available on Intel® Core™ CPUs. -
Q: Can xFasterTransformer run on the Windows system?
A: There is no native support for Windows, and all compatibility tests are only conducted on Linux, so Linux is recommended. -
Q: Why does the program freeze or exit with errors when running in multi-rank mode after installing the latest version of oneCCL through oneAPI?
A: Please try downgrading oneAPI to version 2023.x or below, or use the provided script to install oneCCL from source code. -
Q: Why does running the program using two CPU sockets result in much lower performance compared to running on a single CPU socket?
A: Running in this way causes the program to engage in many unnecessary cross-socket communications, significantly impacting performance. If there is a need for cross-socket deployment, consider running in a multi-rank mode with one rank on each socket. -
Q:The performance is normal when running in a single rank, but why is the performance very slow and the CPU utilization very low when using MPI to run multiple ranks?
A:This is because the program launched through MPI readsOMP_NUM_THREADS=1
, which cannot correctly retrieve the appropriate value from the environment. It is necessary to manually set the value ofOMP_NUM_THREADS
based on the actual situation. -
Q: Why do I still encounter errors when converting already supported models?
A: Try downgradingtransformer
to an appropriate version, such as the version specified in therequirements.txt
. This is because different versions of Transformer may change the names of certain variables.