ChatGLM3
🤗 HF Repo • 🤖 ModelScope • 🐦 Twitter • 📃 [GLM@ACL 22] [GitHub] • 📃 [GLM-130B@ICLR 23] [GitHub]
📍Experience the larger-scale ChatGLM model at chatglm.cn
Introduction
ChatGLM3 is a new generation of pre-trained dialogue models jointly released by Zhipu AI and Tsinghua KEG. ChatGLM3-6B is the open-source model in the ChatGLM3 series, maintaining many excellent features of the first two generations such as smooth dialogue and low deployment threshold, while introducing the following features:
Stronger Base Model: The base model of ChatGLM3-6B, ChatGLM3-6B-Base, adopts a more diverse training dataset, more sufficient training steps, and a more reasonable training strategy. Evaluations on datasets from various perspectives such as semantics, mathematics, reasoning, code, and knowledge show that ChatGLM3-6B-Base has the strongest performance among base models below 10B.
More Complete Function Support: ChatGLM3-6B adopts a newly designed Prompt format, supporting multi-turn dialogues as usual. It also natively supports tool invocation (Function Call), code execution (Code Interpreter), and Agent tasks in complex scenarios.
More Comprehensive Open-source Series: In addition to the dialogue model ChatGLM3-6B, the basic model ChatGLM3-6B-Base, and the long-text dialogue model ChatGLM3-6B-32K have also been open-sourced. All these weights are fully open for academic research, and free commercial use is also allowed after registration via a questionnaire.
The ChatGLM3 open-source model aims to promote the development of large-model technology together with the open-source community. Developers and everyone are earnestly requested to comply with the open-source protocol, and not to use the open-source models, codes, and derivatives for any purposes that might harm the nation and society, and for any services that have not been evaluated and filed for safety. Currently, no applications, including web, Android, Apple iOS, and Windows App, have been developed based on the ChatGLM3 open-source model by our project team.
Although every effort has been made to ensure the compliance and accuracy of the data at various stages of model training, due to the smaller scale of the ChatGLM3-6B model and the influence of probabilistic randomness factors, the accuracy of output content cannot be guaranteed. The model output is also easily misled by user input. This project does not assume risks and liabilities caused by data security, public opinion risks, or any misleading, abuse, dissemination, and improper use of open-source models and codes.
Model List
Model | Seq Length | Download |
---|---|---|
ChatGLM3-6B | 8k | HuggingFace | ModelScope |
ChatGLM3-6B-Base | 8k | HuggingFace | ModelScope |
ChatGLM3-6B-32K | 32k | HuggingFace | ModelScope |
Projects
Open source projects that accelerate ChatGLM3:
- chatglm.cpp: Real-time inference on your laptop accelerated by quantization, similar to llama.cpp.
Evaluation Results
Typical Tasks
We selected 8 typical Chinese-English datasets and conducted performance tests on the ChatGLM3-6B (base) version.
Model | GSM8K | MATH | BBH | MMLU | C-Eval | CMMLU | MBPP | AGIEval |
---|---|---|---|---|---|---|---|---|
ChatGLM2-6B-Base | 32.4 | 6.5 | 33.7 | 47.9 | 51.7 | 50.0 | - | - |
Best Baseline | 52.1 | 13.1 | 45.0 | 60.1 | 63.5 | 62.2 | 47.5 | 45.8 |
ChatGLM3-6B-Base | 72.3 | 25.7 | 66.1 | 61.4 | 69.0 | 67.5 | 52.4 | 53.7 |
"Best Baseline" refers to the pre-trained models that perform best on the corresponding datasets with model parameters below 10B, excluding models that are trained specifically for a single task and do not maintain general capabilities.
In the tests of ChatGLM3-6B-Base, BBH used a 3-shot test, GSM8K and MATH that require inference used a 0-shot CoT test, MBPP used a 0-shot generation followed by running test cases to calculate Pass@1, and other multiple-choice type datasets all used a 0-shot test.
We have conducted manual evaluation tests on ChatGLM3-6B-32K in multiple long-text application scenarios. Compared with the second-generation model, its effect has improved by more than 50% on average. In applications such as paper reading, document summarization, and financial report analysis, this improvement is particularly significant. In addition, we also tested the model on the LongBench evaluation set, and the specific results are shown in the table below.
Model | Average | Summary | Single-Doc QA | Multi-Doc QA | Code | Few-shot | Synthetic |
---|---|---|---|---|---|---|---|
ChatGLM2-6B-32K | 41.5 | 24.8 | 37.6 | 34.7 | 52.8 | 51.3 | 47.7 |
ChatGLM3-6B-32K | 50.2 | 26.6 | 45.8 | 46.1 | 56.2 | 61.2 | 65 |
How to Use
Environment Installation
First, you need to download this repository:
git clone https://github.com/THUDM/ChatGLM3
cd ChatGLM3
Then use pip to install the dependencies:
pip install -r requirements.txt
It is recommended to use version 4.30.2
for the transformers
library, and version 2.0 or above for torch
, to achieve the best inference performance.
Integrated Demo
We provide an integrated demo that incorporates the following three functionalities. Please refer to Integrated Demo for how to run it.
- Chat: Dialogue mode, where you can interact with the model.
- Tool: Tool mode, where in addition to dialogue, the model can also perform other operations using tools.
- Code Interpreter: Code interpreter mode, where the model can execute code in a Jupyter environment and obtain results to complete complex tasks.
Usage
The ChatGLM model can be called to start a conversation using the following code:
>>> from transformers import AutoTokenizer, AutoModel
>>> tokenizer = AutoTokenizer.from_pretrained("THUDM/chatglm3-6b", trust_remote_code=True)
>>> model = AutoModel.from_pretrained("THUDM/chatglm3-6b", trust_remote_code=True, device='cuda')
>>> model = model.eval()
>>> response, history = model.chat(tokenizer, "Hello", history=[])
>>> print(response)
Hello 👋! I'm ChatGLM3-6B, the artificial intelligence assistant, nice to meet you. Feel free to ask me any questions.
>>> response, history = model.chat(tokenizer, "What should I do if I can't sleep at night", history=history)
>>> print(response)
If you're having trouble sleeping at night, here are a few suggestions that might help:
1. Create a relaxing sleep environment: Make sure your bedroom is cool, quiet, and dark. Consider using earplugs, a white noise machine, or a fan to help create an optimal environment.
2. Establish a bedtime routine: Try to go to bed and wake up at the same time every day, even on weekends. A consistent routine can help regulate your body's internal clock.
3. Avoid stimulating activities before bedtime: Avoid using electronic devices, watching TV, or engaging in stimulating activities like exercise or puzzle-solving, as these can interfere with your ability to fall asleep.
4. Limit caffeine and alcohol: Avoid consuming caffeine and alcohol close to bedtime, as these can disrupt your sleep patterns.
5. Practice relaxation techniques: Try meditation, deep breathing, or progressive muscle relaxation to help calm your mind and body before sleep.
6. Consider taking a warm bath or shower: A warm bath or shower can help relax your muscles and promote sleep.
7. Get some fresh air: Make sure to get some fresh air during the day, as lack of vitamin D can interfere with sleep quality.
If you continue to have difficulty sleeping, consult with a healthcare professional for further guidance and support.
Load Model Locally
The above code will automatically download the model implementation and parameters by transformers
. The complete model implementation is available on Hugging Face Hub. If your network environment is poor, downloading model parameters might take a long time or even fail. In this case, you can first download the model to your local machine, and then load it from there.
To download the model from Hugging Face Hub, you need to install Git LFS first, then run
git clone https://huggingface.co/THUDM/chatglm3-6b
If the download from HuggingFace is slow, you can also download it from ModelScope.
Web-based Dialogue Demo
You can launch a web-based demo using Gradio with the following command:
python web_demo.py
You can launch a web-based demo using Streamlit with the following command:
streamlit run web_demo2.py
The web-based demo will run a Web Server and output an address. You can use it by opening the output address in a browser. Based on tests, the web-based demo using Streamlit runs more smoothly.
Command Line Dialogue Demo
Run cli_demo.py in the repository:
python cli_demo.py
The program will interact in the command line, enter instructions in the command line and hit enter to generate a response. Enter clear
to clear the dialogue history, enter stop
to terminate the program.
API Deployment
Thanks to @xusenlinzy for implementing the OpenAI format streaming API deployment, which can serve as the backend for any ChatGPT-based application, such as ChatGPT-Next-Web. You can deploy it by running openai_api.py in the repository:
python openai_api.py
The example code for API calls is as follows:
import openai
if __name__ == "__main__":
openai.api_base = "http://localhost:8000/v1"
openai.api_key = "none"
for chunk in openai.ChatCompletion.create(
model="chatglm3-6b",
messages=[
{"role": "user", "content": "你好"}
],
stream=True
):
if hasattr(chunk.choices[0].delta, "content"):
print(chunk.choices[0].delta.content, end="", flush=True)
Tool Invocation
For methods of tool invocation, please refer to Tool Invocation.
Low-Cost Deployment
Model Quantization
By default, the model is loaded with FP16 precision, running the above code requires about 13GB of VRAM. If your GPU's VRAM is limited, you can try loading the model quantitatively, as follows:
model = AutoModel.from_pretrained("THUDM/chatglm3-6b",trust_remote_code=True).quantize(4).cuda()
Model quantization will bring some performance loss. Through testing, ChatGLM3-6B can still perform natural and smooth generation under 4-bit quantization.
CPU Deployment
If you don't have GPU hardware, you can also run inference on the CPU, but the inference speed will be slower. The usage is as follows (requires about 32GB of memory):
model = AutoModel.from_pretrained("THUDM/chatglm3-6b", trust_remote_code=True).float()
Mac Deployment
For Macs equipped with Apple Silicon or AMD GPUs, the MPS backend can be used to run ChatGLM3-6B on the GPU. Refer to Apple's official instructions to install PyTorch-Nightly (the correct version number should be 2.x.x.dev2023xxxx, not 2.x.x).
Currently, only loading the model locally is supported on MacOS. Change the model loading in the code to load locally and use the MPS backend:
model = AutoModel.from_pretrained("your local path", trust_remote_code=True).to('mps')
Loading the half-precision ChatGLM3-6B model requires about 13GB of memory. Machines with smaller memory (such as a 16GB memory MacBook Pro) will use virtual memory on the hard disk when there is insufficient free memory, resulting in a significant slowdown in inference speed.
Multi-GPU Deployment
If you have multiple GPUs, but each GPU's VRAM size is not enough to accommodate the complete model, then the model can be split across multiple GPUs. First, install accelerate: pip install accelerate
, and then load the model through the following methods:
from utils import load_model_on_gpus
model = load_model_on_gpus("THUDM/chatglm3-6b", num_gpus=2)
This allows the model to be deployed on two GPUs for inference. You can change num_gpus
to the number of GPUs you want to use. It is evenly split by default, but you can also pass the device_map
parameter to specify it yourself.
Citation
If you find our work helpful, please consider citing the following papers.
@article{zeng2022glm,
title={Glm-130b: An open bilingual pre-trained model},
author={Zeng, Aohan and Liu, Xiao and Du, Zhengxiao and Wang, Zihan and Lai, Hanyu and Ding, Ming and Yang, Zhuoyi and Xu, Yifan and Zheng, Wendi and Xia, Xiao and others},
journal={arXiv preprint arXiv:2210.02414},
year={2022}
}
@inproceedings{du2022glm,
title={GLM: General Language Model Pretraining with Autoregressive Blank Infilling},
author={Du, Zhengxiao and Qian, Yujie and Liu, Xiao and Ding, Ming and Qiu, Jiezhong and Yang, Zhilin and Tang, Jie},
booktitle={Proceedings of the 60th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)},
pages={320--335},
year={2022}
}