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--- |
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license: mit |
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language: en |
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tags: |
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- LLM |
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- ChatGLM6B |
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--- |
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## Breakings! |
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**We know what you want, and here you go!** |
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- Newly released lyraChatGLM model, suitable for Ampere (A100/A10) as well as Volta (V100) |
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- lyraChatGLM has been further optimized, reaching **9000 tokens/s** on A100 and **3900 tokens/s** on V100, about **5.5x** faster than the up-to-date official version (2023/6/1). |
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- The memory usage was optimized too, now we can set batch_size up to **256** on A100! |
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- INT8 weight only PTQ is supported |
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**Note that the code was fully updated too, you need to use the new API, see `Uses` below** |
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If you like our work and consider to join us, feel free to drop a line to [email protected]. |
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P.S. Recently we have received a lot of inquiries on accelerating customized models. Actually, we **do not have plan** to release the convertion tool at this moment, nor do we think it would be possible to apply your customized models based on our current release. |
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**** |
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## Model Card for lyraChatGLM |
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lyraChatGLM is currently the **fastest ChatGLM-6B** available. To the best of our knowledge, it is the **first accelerated version of ChatGLM-6B**. |
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The inference speed of lyraChatGLM has achieved **300x** acceleration upon the early original version. We are still working hard to further improve the performance. |
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Among its main features are (updated on 2023-06-20): |
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- weights: original ChatGLM-6B weights released by THUDM. |
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- device: Nvidia GPU with Amperer architecture or Volta architecture (A100, A10, V100...). |
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- batch_size: compiled with dynamic batch size, maximum depends on device. |
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- We now support cuda version of both 11.X and 12.X |
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- lyraChatGLM has been further optimized, with faster model load speed from few minutes to less than 10s for non-int8 mode, and around 1 min for int8 mode! |
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## Speed |
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- orginal version(fixed batch infer): commit id 1d240ba |
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### test on A100 40G |
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1. The maximum batch size and maximum speed table for each version of the model. |
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|version|max_batch_size|max_speed| |
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|:-:|:-:|:-:| |
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|original|1|30 tokens/s| |
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|original(fxied batch infer)|192|1638.52 tokens/s| |
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|lyraChatGLM(current)|256|9082.60 tokens/s| |
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2. The speed table for the same batch size. |
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|version|1 batch_size|8 batch_size| 64 batch_size | 128 batch_size | |
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|:-:|:-:|:-:|:-:|:-:| |
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|original|30 tokens/s| - | - | - | |
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|original(fxied batch infer)|34.48 tokens/s|356.29 tokens/s|1638.52 tokens/s|1338.45 tokens/s| |
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|lyraChatGLM(current)|110.05 tokens/s|843.60 tokens/s|4926.92 tokens/s|7235.04 tokens/s| |
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### test on V100 |
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1. The maximum batch size and maximum speed table for each version of the model. |
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|version|max_batch_size|max_speed| |
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|:-:|:-:|:-:| |
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|original|1|17.83 tokens/s| |
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|original(fxied batch infer)|128|992.20 tokens/s| |
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|lyraChatGLM(current)|192|3958.39 tokens/s| |
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2. The speed table for the same batch size. |
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|version|1 batch_size|8 batch_size| 64 batch_size | 128 batch_size | |
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|:-:|:-:|:-:|:-:|:-:| |
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|original|17.83 tokens/s| - | - | - | |
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|original(fxied batch infer)|17.83 tokens/s|228.95 tokens/s|889.7 tokens/s|922.20 tokens/s| |
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|lyraChatGLM(current)|59.33 tokens/s|514.15 tokens/s|2849.88 tokens/s|3958.39 tokens/s| |
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## Model Sources |
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- **Repository:** https://huggingface.co./THUDM/chatglm-6b |
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## Docker Environment Recommendation |
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- For Cuda 11.X: we recommend ```nvcr.io/nvidia/pytorch:22.12-py3``` |
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- For Cuda 12.0: we recommend ```nvcr.io/nvidia/pytorch:23.02-py3``` |
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```bash |
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docker pull nvcr.io/nvidia/pytorch:23.02-py3 |
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docker run --rm -it --gpus all -v ./:/lyraChatGLM nvcr.io/nvidia/pytorch:23.02-py3 |
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pip install -r requirements.txt |
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python demo.py |
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``` |
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## Uses |
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```python |
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from lyraChatGLM import LyraChatGLM6B |
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model_path = "./models/1-gpu-fp16.bin" |
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tokenizer_path = "./models" |
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data_type = "fp16" |
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int8_mode = 0 # 1 for INT8 WEIGHT ONLY PTQ |
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max_output_length = 150 |
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arch = "Ampere" # Ampere or Volta |
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cuda_version = 12 |
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model = LyraChatGLM6B(model_path, tokenizer_path, data_type, int8_mode, arch, cuda_version) |
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prompt = "列出3个不同的机器学习算法,并说明它们的适用范围." |
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test_batch_size = 256 |
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prompts = [prompt, ] |
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# If you want to get different output in same batch, you can set do_sample to True |
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output_texts = model.generate(prompts, output_length=max_output_length,top_k=30, top_p=0.85, temperature=0.35, repetition_penalty=1.2, do_sample=False) |
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print(output_texts) |
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``` |
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## Demo output |
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### input |
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列出3个不同的机器学习算法,并说明它们的适用范围. |
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### output |
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以下是三个常见的机器学习算法及其适用范围: |
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1. 决策树(Decision Tree):决策树是一种基于分类和回归问题的朴素贝叶斯模型。它通过构建一系列逐步分裂的分支来预测结果。适用于那些具有简单特征、大量数据且数据集大小在可接受范围内的情况。 |
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2. 随机森林(Random Forest):随机森林是一种集成学习算法,由多个决策树组成。它的优点是能够处理大规模数据和高维度的特征。适用于需要对多个变量进行建模的场景,例如医疗诊断、金融风险评估等。 |
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3. 支持向量机(Support Vector Machine):支持向量机是一种监督学习方法,通常用于分类问题。它可以处理高维数据,并且具有较高的准确性。适用于需要对高维数据进行分类或回归的问题,例如图像识别、自然语言处理等。 |
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## INT8 |
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**Int8 usage**: |
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Our current version supports INT8 weight only PTQ. To enable this mode, simply modify the `int8_mode` to `1` in the demo.py file. |
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**In this mode, gpu memory can be further reduced by about half and the speed can be doubled.** |
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This solves the issue mentioned in https://github.com/THUDM/ChatGLM-6B/issues/1042. |
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However, the speed gain is best achieved with a batch size of no more than 128. If you don't use A100 GPU, you can adjust the |
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batch size to reduce it and get the benefits. We recommend a batch size of 64.This mode is very suitable for GPUs with |
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limited VRAM or scenarios where it is difficult to use larger batch sizes in real-time services. |
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It should be noted that although we have aligned the accuracy in our test cases, there may be slight differences |
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in accuracy in some untested scenarios with int8. Please be aware of this. |
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## Citation |
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``` bibtex |
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@Misc{lyraChatGLM2023, |
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author = {Kangjian Wu, Zhengtao Wang, Yibo Lu, Bin Wu}, |
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title = {lyraChatGLM: Accelerating ChatGLM to 9000+ tokens/s}, |
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howpublished = {\url{https://huggingface.co./TMElyralab/lyraChatGLM}}, |
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year = {2023} |
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} |
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``` |
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## Report bug |
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- start a discussion to report any bugs!--> https://huggingface.co./TMElyralab/lyraChatGLM/discussions |
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- report bug with a `[bug]` mark in the title. |