# User Guide This document details the running examples for different models in `lmms_eval`. We include commandas on how to prepare environments for different model and some commands to run these models ## Environmental Variables Before running experiments and evaluations, we recommend you to export following environment variables to your environment. Some are necessary for certain tasks to run. ```bash export OPENAI_API_KEY="" export HF_HOME="" export HF_TOKEN="" export HF_HUB_ENABLE_HF_TRANSFER="1" export REKA_API_KEY="" # Other possible environment variables include # ANTHROPIC_API_KEY,DASHSCOPE_API_KEY etc. ``` ## Some common environment issue Sometimes you might encounter some common issues for example error related to `httpx` or `protobuf`. To solve these issues, you can first try ```bash python3 -m pip install httpx==0.23.3; python3 -m pip install protobuf==3.20; # If you are using numpy==2.x, sometimes may causing errors python3 -m pip install numpy==1.26; # Someties sentencepiece are required for tokenizer to work python3 -m pip install sentencepiece; ``` # Image Model ### LLaVA First, you will need to clone repo of `lmms_eval` and repo of [`llava`](https://github.com/LLaVA-VL/LLaVA-NeXT/tree/inference) ```bash cd /path/to/lmms-eval python3 -m pip install -e .; cd /path/to/LLaVA-NeXT; python3 -m pip install -e ".[train]"; TASK=$1 CKPT_PATH=$2 CONV_TEMPLATE=$3 MODEL_NAME=$4 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX #mmbench_en_dev,mathvista_testmini,llava_in_the_wild,mmvet accelerate launch --num_processes 8 --main_process_port 12345 -m lmms_eval \ --model llava \ --model_args pretrained=$CKPT_PATH,conv_template=$CONV_TEMPLATE,model_name=$MODEL_NAME \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` If you are trying to use large LLaVA models such as LLaVA-NeXT-Qwen1.5-72B, you can try adding `device_map=auto` in model_args and change `num_processes` to 1. ### IDEFICS2 You won't need to clone any other repos to run idefics. Making sure your transformers version supports idefics2 would be enough ```bash cd /path/to/lmms-eval python3 -m pip install -e .; python3 -m pip install transformers --upgrade; TASK=$1 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX accelerate launch --num_processes 8 --main_process_port 12345 -m lmms_eval \ --model idefics2 \ --model_args pretrained=HuggingFaceM4/idefics2-8b \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` ### InternVL2 ```bash cd /path/to/lmms-eval python3 -m pip install -e .; python3 -m pip install flash-attn --no-build-isolation; python3 -m pip install torchvision einops timm sentencepiece; TASK=$1 CKPT_PATH=$2 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX accelerate launch --num_processes 8 --main_process_port 12380 -m lmms_eval \ --model internvl2 \ --model_args pretrained=$CKPT_PATH \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` ### InternVL-1.5 First you need to fork [`InternVL`](https://github.com/OpenGVLab/InternVL) ```bash cd /path/to/lmms-eval python3 -m pip install -e .; cd /path/to/InternVL/internvl_chat python3 -m pip install -e .; python3 -m pip install flash-attn==2.3.6 --no-build-isolation; TASK=$1 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX accelerate launch --num_processes 8 --main_process_port 12345 -m lmms_eval \ --model internvl \ --model_args pretrained="OpenGVLab/InternVL-Chat-V1-5"\ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` ### Xcomposer-4KHD and Xcomposer-2d5 Both of these two models does not require external repo ```bash cd /path/to/lmms-eval python3 -m pip install -e .; python3 -m pip install flash-attn --no-build-isolation; python3 -m pip install torchvision einops timm sentencepiece; TASK=$1 MODALITY=$2 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX # For Xcomposer2d5 accelerate launch --num_processes 8 --main_process_port 10000 -m lmms_eval \ --model xcomposer2d5 \ --model_args pretrained="internlm/internlm-xcomposer2d5-7b",device="cuda",modality=$MODALITY\ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ # For Xcomposer-4kHD accelerate launch --num_processes 8 --main_process_port 12345 -m lmms_eval \ --model xcomposer2_4khd \ --model_args pretrained="internlm/internlm-xcomposer2-4khd-7b" \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` ### InstructBLIP ```bash cd /path/to/lmms-eval python3 -m pip install -e .; python3 -m pip install transformers --upgrade; CKPT_PATH=$1 TASK=$2 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX accelerate launch --num_processes 8 --main_process_port 12345 -m lmms_eval \ --model instructblip \ --model_args pretrained=$CKPT_PATH \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix instructblip \ --output_path ./logs/ ``` ### SRT API MODEL To enable faster testing speed for larger llava model, you can use this srt api model to enable testing through sglang. You will need to first glone sglang from "https://github.com/sgl-project/sglang". Current version is tested on the commit #1222 of sglang Here are the scripts if you want to test the result in one script. ```bash cd /path/to/lmms-eval python3 -m pip install -e .; cd /path/to/sglang; python3 -m pip install -e "python[all]"; python3 -m pip install flashinfer -i https://flashinfer.ai/whl/cu121/torch2.3/ CKPT_PATH=$1 TASK=$2 MODALITY=$3 TP_SIZE=$4 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX python3 -m lmms_eval \ --model srt_api \ --model_args modality=$MODALITY,model_version=$CKPT_PATH,tp=$TP_SIZE,host=127.0.0.1,port=30000,timeout=600 \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` You can use the script in `sglang` under `test` folder to kill all sglang service # API Model ### GPT ```bash cd /path/to/lmms-eval python3 -m pip install -e .; export OPENAI_API_KEY="" TASK=$1 MODEL_VERSION=$2 MODALITIES=$3 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX accelerate launch --num_processes 8 --main_process_port 30000 -m lmms_eval \ --model gpt4v \ --model_args model_version=$MODEL_VERSION,modality=$MODALITIES\ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` # Audio Models ### Qwen2-Audio ```bash cd /path/to/lmms-eval python3 -m pip install -e . # Install audio dependencies python3 -m pip install librosa soundfile TASK=$1 MODEL_PATH=$2 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX python -m lmms_eval \ --model qwen2_audio \ --model_args pretrained=$MODEL_PATH \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` ### Gemini Audio ```bash cd /path/to/lmms-eval python3 -m pip install -e . export GOOGLE_API_KEY="" TASK=$1 MODEL_VERSION=$2 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX python -m lmms_eval \ --model gemini_audio \ --model_args model_version=$MODEL_VERSION \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` ### Claude ```bash cd /path/to/lmms-eval python3 -m pip install -e .; export ANTHROPIC_API_KEY="" TASK=$1 MODEL_VERSION=$2 MODALITIES=$3 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX accelerate launch --num_processes 8 --main_process_port 12345 -m lmms_eval \ --model claude \ --model_args model_version=$MODEL_VERSION\ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` # Video Model ### LLaVA-VID ```bash cd /path/to/lmms-eval python3 -m pip install -e .; cd /path/to/LLaVA-NeXT; python3 -m pip install -e ".[train]"; python3 -m pip install flash-attn --no-build-isolation; python3 -m pip install av; TASK=$1 CKPT_PATH=$2 CONV_TEMPLATE=$3 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX accelerate launch --num_processes 8 --main_process_port 12345 -m lmms_eval \ --model llavavid \ --model_args pretrained=$CKPT_PATH,conv_template=$CONV_TEMPLATE,video_decode_backend=decord,max_frames_num=32 \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` ### LLaMA-VID ```bash cd /path/to/lmms-eval python3 -m pip install -e .; # Notice that you should not leave the folder of LLaMA-VID when calling lmms-eval # Because they left their processor's config inside the repo cd /path/to/LLaMA-VID; python3 -m pip install -e . python3 -m pip install av sentencepiece; TASK=$1 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX accelerate launch --num_processes 8 --main_process_port 12345 -m lmms_eval \ --model llama_vid \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` ### Video-LLaVA ```bash cd /path/to/lmms-eval python3 -m pip install -e .; python3 -m pip install transformers --upgrade; python3 -m pip install av sentencepiece; TASK=$1 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX accelerate launch --num_processes 8 --main_process_port 12345 -m lmms_eval \ --model video_llava \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` ### MPlug-Owl Notice that this model will takes long time to load, please be patient :) ```bash cd /path/to/lmms-eval python3 -m pip install -e .; # It has to use an old transformers version to run python3 -m pip install av sentencepiece protobuf==3.20 transformers==4.28.1 einops; TASK=$1 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX accelerate launch --num_processes 8 --main_process_port 12345 -m lmms_eval \ --model mplug_owl_video \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` ### Video-ChatGPT ```bash cd /path/to/lmms-eval python3 -m pip install -e .; python3 -m pip install sentencepiece av; TASK=$1 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX accelerate launch --num_processes 8 --main_process_port 12345 -m lmms_eval \ --model video_chatgpt \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` ### MovieChat ```bash cd /path/to/lmms-eval python3 -m pip install -e .; python -m pip install torch==2.0.1 torchvision==0.15.2 --extra-index-url https://download.pytorch.org/whl/cu118 git clone https://github.com/rese1f/MovieChat.git mv /path/to/MovieChat/MovieChat /path/to/lmms-eval/lmms_eval/models TASK=$1 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX accelerate launch --num_processes 8 --main_process_port 12345 -m lmms_eval \ --model moviechat \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` ### LLaVA-OneVision-MovieChat ```bash cd /path/to/lmms-eval python3 -m pip install -e .; git clone https://github.com/rese1f/MovieChat.git mv /path/to/MovieChat/MovieChat_OneVision/llava /path/to/lmms-eval/lmms_eval/models TASK=$1 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX accelerate launch --num_processes 8 --main_process_port 12345 -m lmms_eval \ --model llava_onevision_moviechat \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` ### AuroraCap ```bash cd /path/to/lmms-eval python3 -m pip install -e .; git clone https://github.com/rese1f/aurora.git mv /path/to/aurora/src/xtuner/xtuner /path/to/lmms-eval/lmms_eval/models/xtuner-aurora TASK=$1 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX accelerate launch --num_processes 8 --main_process_port 12345 -m lmms_eval \ --model auroracap \ --tasks $TASK \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ``` ### SliME ```bash cd /path/to/lmms-eval python3 -m pip install -e .; git clone https://github.com/yfzhang114/SliME.git cd SliME pip install --upgrade pip # enable PEP 660 support pip install -e . cd .. TASK=$1 echo $TASK TASK_SUFFIX="${TASK//,/_}" echo $TASK_SUFFIX accelerate launch --num_processes 8 --main_process_port 12345 -m lmms_eval \ --model slime \ --tasks $TASK \ --model_args pretrained="yifanzhang114/SliME-Llama3-8B,conv_template=llama3,model_name=slime" \ --batch_size 1 \ --log_samples \ --log_samples_suffix $TASK_SUFFIX \ --output_path ./logs/ ```