选择和第一个 InternLM
一样的 AutoDL
镜像环境,运行以下命令安装依赖,如果上一个 InternLM-Chat-7B
已经配置好环境不需要重复安装.
# 升级pip
python -m pip install --upgrade pip
# 更换 pypi 源加速库的安装
pip config set global.index-url https://pypi.tuna.tsinghua.edu.cn/simple
pip install modelscope==1.9.5
pip install transformers==4.35.2
pip install streamlit==1.24.0
pip install sentencepiece==0.1.99
pip install accelerate==0.24.1
在 /root/autodl-tmp
路径下新建 download.py
文件并在其中输入以下内容,并运行 python /root/autodl-tmp/download.py
执行下载,模型大小为 14 GB,下载模型大概需要 10~20 分钟
import torch
from modelscope import snapshot_download, AutoModel, AutoTokenizer
import os
model_dir = snapshot_download('Shanghai_AI_Laboratory/internlm-chat-7b-v1_1', cache_dir='/root/autodl-tmp', revision='master')
首先我们运行以下命令打开学术加速 clone
lagent
仓库,并通过 pip install -e .
源码安装 Lagent
source /etc/network_turbo
cd /root/autodl-tmp
git clone https://github.com/InternLM/lagent.git
git checkout 511b03889010c4811b1701abb153e02b8e94fb5e # 尽量保证和教程commit版本一致
cd lagent
pip install -e . # 源码安装
unset http_proxy && unset https_proxy
由于代码修改的地方比较多,大家直接将/root/autodl-tmp/lagent/examples/react_web_demo.py
内容替换为以下代码
import copy
import os
import streamlit as st
from streamlit.logger import get_logger
from lagent.actions import ActionExecutor, GoogleSearch, PythonInterpreter
from lagent.agents.react import ReAct
from lagent.llms import GPTAPI
from lagent.llms.huggingface import HFTransformerCasualLM
class SessionState:
def init_state(self):
"""Initialize session state variables."""
st.session_state['assistant'] = []
st.session_state['user'] = []
#action_list = [PythonInterpreter(), GoogleSearch()]
action_list = [PythonInterpreter()]
st.session_state['plugin_map'] = {
action.name: action
for action in action_list
}
st.session_state['model_map'] = {}
st.session_state['model_selected'] = None
st.session_state['plugin_actions'] = set()
def clear_state(self):
"""Clear the existing session state."""
st.session_state['assistant'] = []
st.session_state['user'] = []
st.session_state['model_selected'] = None
if 'chatbot' in st.session_state:
st.session_state['chatbot']._session_history = []
class StreamlitUI:
def __init__(self, session_state: SessionState):
self.init_streamlit()
self.session_state = session_state
def init_streamlit(self):
"""Initialize Streamlit's UI settings."""
st.set_page_config(
layout='wide',
page_title='lagent-web',
page_icon='./docs/imgs/lagent_icon.png')
# st.header(':robot_face: :blue[Lagent] Web Demo ', divider='rainbow')
st.sidebar.title('模型控制')
def setup_sidebar(self):
"""Setup the sidebar for model and plugin selection."""
model_name = st.sidebar.selectbox(
'模型选择:', options=['gpt-3.5-turbo','internlm'])
if model_name != st.session_state['model_selected']:
model = self.init_model(model_name)
self.session_state.clear_state()
st.session_state['model_selected'] = model_name
if 'chatbot' in st.session_state:
del st.session_state['chatbot']
else:
model = st.session_state['model_map'][model_name]
plugin_name = st.sidebar.multiselect(
'插件选择',
options=list(st.session_state['plugin_map'].keys()),
default=[list(st.session_state['plugin_map'].keys())[0]],
)
plugin_action = [
st.session_state['plugin_map'][name] for name in plugin_name
]
if 'chatbot' in st.session_state:
st.session_state['chatbot']._action_executor = ActionExecutor(
actions=plugin_action)
if st.sidebar.button('清空对话', key='clear'):
self.session_state.clear_state()
uploaded_file = st.sidebar.file_uploader(
'上传文件', type=['png', 'jpg', 'jpeg', 'mp4', 'mp3', 'wav'])
return model_name, model, plugin_action, uploaded_file
def init_model(self, option):
"""Initialize the model based on the selected option."""
if option not in st.session_state['model_map']:
if option.startswith('gpt'):
st.session_state['model_map'][option] = GPTAPI(
model_type=option)
else:
st.session_state['model_map'][option] = HFTransformerCasualLM(
'/root/autodl-tmp/Shanghai_AI_Laboratory/internlm-chat-7b-v1_1')
return st.session_state['model_map'][option]
def initialize_chatbot(self, model, plugin_action):
"""Initialize the chatbot with the given model and plugin actions."""
return ReAct(
llm=model, action_executor=ActionExecutor(actions=plugin_action))
def render_user(self, prompt: str):
with st.chat_message('user'):
st.markdown(prompt)
def render_assistant(self, agent_return):
with st.chat_message('assistant'):
for action in agent_return.actions:
if (action):
self.render_action(action)
st.markdown(agent_return.response)
def render_action(self, action):
with st.expander(action.type, expanded=True):
st.markdown(
"<p style='text-align: left;display:flex;'> <span style='font-size:14px;font-weight:600;width:70px;text-align-last: justify;'>插 件</span><span style='width:14px;text-align:left;display:block;'>:</span><span style='flex:1;'>" # noqa E501
+ action.type + '</span></p>',
unsafe_allow_html=True)
st.markdown(
"<p style='text-align: left;display:flex;'> <span style='font-size:14px;font-weight:600;width:70px;text-align-last: justify;'>思考步骤</span><span style='width:14px;text-align:left;display:block;'>:</span><span style='flex:1;'>" # noqa E501
+ action.thought + '</span></p>',
unsafe_allow_html=True)
if (isinstance(action.args, dict) and 'text' in action.args):
st.markdown(
"<p style='text-align: left;display:flex;'><span style='font-size:14px;font-weight:600;width:70px;text-align-last: justify;'> 执行内容</span><span style='width:14px;text-align:left;display:block;'>:</span></p>", # noqa E501
unsafe_allow_html=True)
st.markdown(action.args['text'])
self.render_action_results(action)
def render_action_results(self, action):
"""Render the results of action, including text, images, videos, and
audios."""
if (isinstance(action.result, dict)):
st.markdown(
"<p style='text-align: left;display:flex;'><span style='font-size:14px;font-weight:600;width:70px;text-align-last: justify;'> 执行结果</span><span style='width:14px;text-align:left;display:block;'>:</span></p>", # noqa E501
unsafe_allow_html=True)
if 'text' in action.result:
st.markdown(
"<p style='text-align: left;'>" + action.result['text'] +
'</p>',
unsafe_allow_html=True)
if 'image' in action.result:
image_path = action.result['image']
image_data = open(image_path, 'rb').read()
st.image(image_data, caption='Generated Image')
if 'video' in action.result:
video_data = action.result['video']
video_data = open(video_data, 'rb').read()
st.video(video_data)
if 'audio' in action.result:
audio_data = action.result['audio']
audio_data = open(audio_data, 'rb').read()
st.audio(audio_data)
def main():
logger = get_logger(__name__)
# Initialize Streamlit UI and setup sidebar
if 'ui' not in st.session_state:
session_state = SessionState()
session_state.init_state()
st.session_state['ui'] = StreamlitUI(session_state)
else:
st.set_page_config(
layout='wide',
page_title='lagent-web',
page_icon='./docs/imgs/lagent_icon.png')
# st.header(':robot_face: :blue[Lagent] Web Demo ', divider='rainbow')
model_name, model, plugin_action, uploaded_file = st.session_state[
'ui'].setup_sidebar()
# Initialize chatbot if it is not already initialized
# or if the model has changed
if 'chatbot' not in st.session_state or model != st.session_state[
'chatbot']._llm:
st.session_state['chatbot'] = st.session_state[
'ui'].initialize_chatbot(model, plugin_action)
for prompt, agent_return in zip(st.session_state['user'],
st.session_state['assistant']):
st.session_state['ui'].render_user(prompt)
st.session_state['ui'].render_assistant(agent_return)
# User input form at the bottom (this part will be at the bottom)
# with st.form(key='my_form', clear_on_submit=True):
if user_input := st.chat_input(''):
st.session_state['ui'].render_user(user_input)
st.session_state['user'].append(user_input)
# Add file uploader to sidebar
if uploaded_file:
file_bytes = uploaded_file.read()
file_type = uploaded_file.type
if 'image' in file_type:
st.image(file_bytes, caption='Uploaded Image')
elif 'video' in file_type:
st.video(file_bytes, caption='Uploaded Video')
elif 'audio' in file_type:
st.audio(file_bytes, caption='Uploaded Audio')
# Save the file to a temporary location and get the path
file_path = os.path.join(root_dir, uploaded_file.name)
with open(file_path, 'wb') as tmpfile:
tmpfile.write(file_bytes)
st.write(f'File saved at: {file_path}')
user_input = '我上传了一个图像,路径为: {file_path}. {user_input}'.format(
file_path=file_path, user_input=user_input)
agent_return = st.session_state['chatbot'].chat(user_input)
st.session_state['assistant'].append(copy.deepcopy(agent_return))
logger.info(agent_return.inner_steps)
st.session_state['ui'].render_assistant(agent_return)
if __name__ == '__main__':
root_dir = os.path.dirname(os.path.dirname(os.path.abspath(__file__)))
root_dir = os.path.join(root_dir, 'tmp_dir')
os.makedirs(root_dir, exist_ok=True)
main()
streamlit run /root/autodl-tmp/lagent/examples/react_web_demo.py --server.address 127.0.0.1 --server.port 6006
用同样的方法将端口映射到本地,运行成功后,我们在 Web
页面选择 InternLM
模型,等待模型加载完毕后,输入数学问题 已知 2x+3=10
,求x
,此时 InternLM-Chat-7B-V1.1
模型理解题意生成解此题的 Python
代码,Lagent
调度送入 Python
代码解释器求出该问题的解。