# Basic Demo In this demo, you will experience how to use the GLM-4-9B open source model to perform basic tasks. Please follow the steps in the document strictly to avoid unnecessary errors. ## Device and dependency check ### Related inference test data **The data in this document are tested in the following hardware environment. The actual operating environment requirements and the GPU memory occupied by the operation are slightly different. Please refer to the actual operating environment.** Test hardware information: + OS: Ubuntu 22.04 + Memory: 512GB + Python: 3.10.12 (recommend) / 3.12.3 have been tested + CUDA Version: 12.3 + GPU Driver: 535.104.05 + GPU: NVIDIA A100-SXM4-80GB * 8 The stress test data of relevant inference are as follows: **All tests are performed on a single GPU, and all GPU memory consumption is calculated based on the peak value** # ### GLM-4-9B-Chat | Dtype | GPU Memory | Prefilling | Decode Speed | Remarks | |-------|------------|------------|---------------|------------------------| | BF16 | 19 GB | 0.2s | 27.8 tokens/s | Input length is 1000 | | BF16 | 21 GB | 0.8s | 31.8 tokens/s | Input length is 8000 | | BF16 | 28 GB | 4.3s | 14.4 tokens/s | Input length is 32000 | | BF16 | 58 GB | 38.1s | 3.4 tokens/s | Input length is 128000 | | Dtype | GPU Memory | Prefilling | Decode Speed | Remarks | |-------|------------|------------|---------------|-----------------------| | INT4 | 8 GB | 0.2s | 23.3 tokens/s | Input length is 1000 | | INT4 | 10 GB | 0.8s | 23.4 tokens/s | Input length is 8000 | | INT4 | 17 GB | 4.3s | 14.6 tokens/s | Input length is 32000 | ### GLM-4-9B-Chat-1M | Dtype | GPU Memory | Prefilling | Decode Speed | Remarks | |-------|------------|------------|------------------|------------------------| | BF16 | 74497MiB | 98.4s | 2.3653 tokens/s | Input length is 200000 | If your input exceeds 200K, we recommend that you use the vLLM backend with multi gpus for inference to get better performance. #### GLM-4V-9B | Dtype | GPU Memory | Prefilling | Decode Speed | Remarks | |-------|------------|------------|---------------|----------------------| | BF16 | 28 GB | 0.1s | 33.4 tokens/s | Input length is 1000 | | BF16 | 33 GB | 0.7s | 39.2 tokens/s | Input length is 8000 | | Dtype | GPU Memory | Prefilling | Decode Speed | Remarks | |-------|------------|------------|---------------|----------------------| | INT4 | 10 GB | 0.1s | 28.7 tokens/s | Input length is 1000 | | INT4 | 15 GB | 0.8s | 24.2 tokens/s | Input length is 8000 | ### Minimum hardware requirements If you want to run the most basic code provided by the official (transformers backend) you need: + Python >= 3.10 + Memory of at least 32 GB If you want to run all the codes in this folder provided by the official, you also need: + Linux operating system (Debian series is best) + GPU device with more than 8GB GPU memory, supporting CUDA or ROCM and supporting `BF16` reasoning (`FP16` precision cannot be finetuned, and there is a small probability of problems in infering) Install dependencies ```shell pip install -r requirements.txt ``` ## Basic function calls **Unless otherwise specified, all demos in this folder do not support advanced usage such as Function Call and All Tools ** ### Use transformers backend code + Use the command line to communicate with the GLM-4-9B model. ```shell python trans_cli_demo.py # GLM-4-9B-Chat python trans_cli_vision_demo.py # GLM-4V-9B ``` + Use the Gradio web client to communicate with the GLM-4-9B-Chat model. ```shell python trans_web_demo.py ``` + Use Batch inference. ```shell python cli_batch_request_demo.py ``` ### Use vLLM backend code + Use the command line to communicate with the GLM-4-9B-Chat model. ```shell python vllm_cli_demo.py ``` + Build the server by yourself and use the request format of `OpenAI API` to communicate with the glm-4-9b model. This demo supports Function Call and All Tools functions. Start the server: ```shell python openai_api_server.py ``` Client request: ```shell python openai_api_request.py ``` ## Stress test Users can use this code to test the generation speed of the model on the transformers backend on their own devices: ```shell python trans_stress_test.py ```