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ui_app.py
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ui_app.py
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import streamlit as st
from streamlit_chat import message
from PIL import Image
from service.query_understanding import Multi_Turn_Query_Understanding
from service.query_decomposition import query_decomposition
from init import hybrid_retriever
from service.nodes_arrangement import nodes_arrangement
from service.sub_query_response import sub_query_response
from service.extractor import extractor_paper, extractor_internet
from service.summerize import summerize
from service.self_critic import self_critic, self_refine
from service.query_internet import query_internet
import concurrent.futures
from service.query_router import query_router
from tool.bm25_tool import bm25_tool
from tool.qdrant_tool import qdrant_tool
from tool.chat_pdf_tool import chat_pdf_tool
from tool.math_tool import math_tool
from tool.code_tool import code_tool
from tool.internet_tool import internet_tool
from llama_index.core.agent import ReActAgent
from llama_index.llms.openllm import OpenLLM
from llm.chat_llm import chat
from service.add_citation import add_citation_with_retrieved_node
from streamlit.runtime.scriptrunner.script_run_context import (
add_script_run_ctx,
get_script_run_ctx,
)
from llama_index.core.schema import NodeWithScore
from threading import current_thread
from example_history.load_example import multimodal, wizard_lm, what_is_ppo
import copy
from config import agent_model, openai_api_base_url, openai_api_key, llm_chat_model, agent_model_base_url
st.set_page_config(page_title="OpenResearcher", page_icon=Image.open("images/page_icon.jpg"), layout="wide")
# Setting page title and header
st.markdown(
"<h1 style='text-align: center;'>OpenResearcher</h1>",
unsafe_allow_html=True,
)
st.divider()
st.markdown(
"<center><i>Welcome to OpenResearcher, an advanced Scientific Research Assistant designed to provide a helpful answer to a research query. <br> With access to the arXiv corpus, OpenResearcher can provide you with the latest scientific insights. <br> Explore the frontiers of science with OpenResearcher—where answers await.</i></center>",
unsafe_allow_html=True,
)
st.divider()
# Initialise session state variables
if "cnt" not in st.session_state:
st.session_state.cnt = 0
st.session_state.query = ""
st.session_state.done = False
st.session_state.llm = Multi_Turn_Query_Understanding()
st.session_state.mode = -1
st.session_state.skip_rerun = False
# Sidebar
counter_placeholder = st.sidebar.empty()
with st.sidebar:
st.markdown(
"<h3 style='text-align: center;'>Ask anything you want to know!</h3>",
unsafe_allow_html=True,
)
st.sidebar.image("images/logo.jpg", use_column_width=True)
st.write('')
st.write('')
st.write('')
st.markdown(
"<p><b>Example: </b></p>",
unsafe_allow_html=True,
)
history_ppo_button = st.sidebar.button("What is PPO?",
key="hostory::what is ppo",
use_container_width=True)
if history_ppo_button:
st.session_state.mode = -1
st.session_state.cnt = 0
st.session_state.query = ""
st.session_state.done = False
st.session_state.messages = copy.deepcopy(what_is_ppo)
st.session_state.llm = Multi_Turn_Query_Understanding()
st.session_state.skip_rerun = False
history_multimodal_button = st.sidebar.button("In multimodal pretraining, the...",
key="hostory::multimodal",
use_container_width=True)
if history_multimodal_button:
st.session_state.mode = -1
st.session_state.cnt = 0
st.session_state.query = ""
st.session_state.done = False
st.session_state.messages = copy.deepcopy(multimodal)
st.session_state.llm = Multi_Turn_Query_Understanding()
st.session_state.skip_rerun = False
history_wizardlm_button = st.sidebar.button("Search the paper and tell about...",
key="hostory::wizardlm",
use_container_width=True)
if history_wizardlm_button:
st.session_state.mode = -1
st.session_state.cnt = 0
st.session_state.query = ""
st.session_state.done = False
st.session_state.messages = copy.deepcopy(wizard_lm)
st.session_state.llm = Multi_Turn_Query_Understanding()
st.session_state.skip_rerun = False
st.write('')
st.write('')
clear_button = st.sidebar.button("Clear Chat History",
key="clear",
type="primary",
use_container_width=True)
if clear_button:
st.session_state.mode = -1
st.session_state.cnt = 0
st.session_state.query = ""
st.session_state.done = False
st.session_state.messages = []
st.session_state.llm = Multi_Turn_Query_Understanding()
st.session_state.skip_rerun = False
# Initialize chat history
if "messages" not in st.session_state:
st.session_state.messages = []
# Display chat messages from history on app rerun
for message in st.session_state.messages:
with st.chat_message(message["role"]):
if "expanders" in message:
for i in range(0, 2):
expander_name, expander_content = message['expanders'][i]
# for expander_name, expander_content in message['expanders']:
with st.expander(expander_name, expanded=True):
st.write(expander_content)
with st.expander("Sub Answers:", expanded=True):
columns_info = message['expanders'][2]
columns_size = len(columns_info)
columns = st.columns(columns_size)
for i in range(columns_size):
column_info = columns_info[i]
with columns[i]:
tabs_info = column_info[0]
tabs = st.tabs([tabs_name for tabs_name, tabs_content in tabs_info])
for j in range(len(tabs_info)):
with tabs[j]:
st.write(tabs_info[j][1])
st.write(column_info[1])
elif "critic_expander" in message:
name, critic = message['critic_expander']
with st.expander(name, expanded=True):
st.write(critic)
st.markdown(message["content"])
llm = OpenLLM(model=agent_model,
api_base=agent_model_base_url,
api_key=openai_api_key)
agent = ReActAgent.from_tools(
[qdrant_tool,
bm25_tool,
chat_pdf_tool,
math_tool,
code_tool,
internet_tool
],
llm=llm,
verbose=True,
max_iterations=15,
)
import nltk
def split_sentences(text):
return nltk.sent_tokenize(text)
def process_content(query_str, content, row, row_ctx):
add_script_run_ctx(current_thread(), row_ctx)
with row:
st.write("RETRIEVED INFO:\n\n")
cleaned_content = st.write_stream(extractor_paper(query_str=query_str, content=content))
return cleaned_content
def dummy_write_stream(generator):
response = ""
for gen in generator:
response += gen
return response
def process_internet_content(query_str):
internet_content = query_internet(query_str)
cleaned_content = dummy_write_stream(extractor_internet(query_str=query_str, content=internet_content))
return cleaned_content
def process_sub_query(sub_query, column, ctx, result):
add_script_run_ctx(current_thread(), ctx)
query_str = sub_query
arr = nodes_arrangement(result)
context_list = []
tabs_info = []
with column:
tabs_name = [content.split("\n")[0].split(":")[-1].strip() for content in arr]
tabs = st.tabs(tabs_name)
with concurrent.futures.ThreadPoolExecutor() as executor:
row_ctx = get_script_run_ctx()
future_to_content = [executor.submit(process_content, query_str, arr[i], tabs[i], row_ctx) for i in range(len(arr))]
web_search = executor.submit(process_internet_content, query_str)
for i, future in enumerate(future_to_content):
cleaned_content = future.result(timeout=120)
context_list.append(cleaned_content)
tabs_info.append((tabs_name[i], "RETRIEVED INFO:\n\n" + cleaned_content))
web_search_result = web_search.result()
context_list.append(web_search_result)
st.write("SUB ANSWER:\n\n")
sub_response = st.write_stream(sub_query_response(query_str, context_list))
column_info = (tabs_info, "SUB ANSWER:\n\n" + sub_response)
return sub_query, sub_response, result, column_info, web_search_result
def dedup_node(retrieved_nodes):
if len(retrieved_nodes) > 0 and isinstance(retrieved_nodes[0], NodeWithScore):
dedup_nodes = []
node_id_dict = {}
for node in retrieved_nodes:
node_id = node.node.node_id
if node_id not in node_id_dict:
node_id_dict[node_id] = 1
dedup_nodes.append(node.node)
return dedup_nodes
return retrieved_nodes
def retrieve_for_sub_query(query):
return hybrid_retriever.retrieve(query)
def get_final_response():
with st.chat_message("assistant"):
expanders = []
with st.expander("Rewrited Question:", expanded=True):
rewrite = st.write_stream(st.session_state.llm.query_rewrite_according_messages(st.session_state.messages))
expanders.append(("Rewrited Question:", rewrite))
with st.spinner('Thinking...'):
with st.expander("Sub Queries:", expanded=True):
sub_queries = query_decomposition(rewrite)
st.write(sub_queries)
expanders.append(("Sub Queries:", sub_queries))
sub_res_list = []
retrieved_nodes = []
with st.expander("Sub Answers:", expanded=True):
columns = st.columns(len(sub_queries))
columns_info = []
with st.spinner('Thinking...'):
retrieve_results = []
with concurrent.futures.ThreadPoolExecutor() as executor:
future_to_retrieve = [executor.submit(retrieve_for_sub_query, sub_queries[i]) for i in range(len(sub_queries))]
for i, future in enumerate(future_to_retrieve):
retrieve_results.append(future.result())
web_search_results = []
with concurrent.futures.ThreadPoolExecutor() as executor:
ctx = get_script_run_ctx()
future_to_query = [executor.submit(process_sub_query, sub_queries[i], columns[i], ctx, retrieve_results[i]) for i in range(len(sub_queries))]
for i, future in enumerate(future_to_query):
sub_query, sub_response, sub_retrieved_nodes, column_info, web_search_result = future.result(timeout=120)
retrieved_nodes += sub_retrieved_nodes
sub_res_list.append((sub_query, sub_response))
columns_info.append(column_info)
web_search_results.append(web_search_result)
expanders.append(columns_info)
final_response = st.write_stream(summerize(rewrite, sub_res_list))
deduped_nodes = dedup_node(retrieved_nodes)
final_response_cite = add_citation_with_retrieved_node(deduped_nodes, final_response)
st.session_state.messages.append({"role": "assistant",
"content": final_response_cite,
"expanders": expanders})
return rewrite, retrieved_nodes, final_response, web_search_results
st.session_state.query = st.chat_input("What do you want to know? I will give your an answer.")
if st.session_state.mode == -1 and st.session_state.query:
st.session_state.mode = query_router(st.session_state.query, st.session_state.messages)
if st.session_state.mode == 0:
st.session_state.messages.append({"role": "user", "content": st.session_state.query})
with st.chat_message("user"):
st.markdown(st.session_state.query)
with st.chat_message("assistant"):
response = st.write_stream(chat(messages=st.session_state.messages,
model=llm_chat_model))
st.session_state.messages.append({"role": "assistant", "content": response})
st.session_state.mode = -1
if st.session_state.mode == 1 and st.session_state.cnt < 2 and not st.session_state.done:
st.session_state.messages.append({"role": "user", "content": st.session_state.query})
with st.chat_message("user"):
st.markdown(st.session_state.query)
if st.session_state.cnt == 0:
with st.chat_message("assistant"):
response = st.write_stream(st.session_state.llm.query_understanding_chat(st.session_state.messages))
st.session_state.cnt += 1
if not response:
st.session_state.done = True
st.rerun()
if len(response) > 0:
st.session_state.messages.append({"role": "assistant", "content": response})
elif st.session_state.cnt == 1:
st.session_state.done = True
if st.session_state.mode == 1 and st.session_state.done or st.session_state.cnt >= 2:
if not st.session_state.skip_rerun:
rewrite, retrieved_nodes, final_response, web_search_results = get_final_response()
st.session_state.skip_rerun = True
st.session_state.rerun_info = [rewrite, retrieved_nodes, final_response, web_search_results]
st.rerun()
else:
rewrite = st.session_state.rerun_info[0]
retrieved_nodes = st.session_state.rerun_info[1]
final_response = st.session_state.rerun_info[2]
web_search_results = st.session_state.rerun_info[3]
with st.spinner('Self Reflecting...'):
critic = self_critic(rewrite, final_response).strip()
if len(critic) > 0:
with st.chat_message("assistant"):
with st.expander("Self Critic:", expanded=True):
st.write(critic)
context_critic = "\n\n".join(nodes_arrangement(retrieved_nodes))
context_critic += "\n\n" + "\n\n".join(web_search_results)
refined_response = st.write_stream(self_refine(rewrite, context_critic, final_response, critic))
deduped_nodes = dedup_node(retrieved_nodes)
refined_response_cite = add_citation_with_retrieved_node(deduped_nodes, refined_response)
st.session_state.messages.append({"role": "assistant",
"content": refined_response_cite,
"critic_expander": ("Self Critic:", critic)})
st.session_state.cnt = 0
st.session_state.done = False
st.session_state.mode = -1
st.session_state.skip_rerun = False
st.session_state.rerun_info = None
st.rerun()
if st.session_state.mode == 2:
st.session_state.messages.append({"role": "user", "content": st.session_state.query})
with st.chat_message("user"):
st.markdown(st.session_state.query)
with st.chat_message("assistant"):
with st.spinner('Thinking...'):
agent_response = agent.chat(st.session_state.query).response
def streaming(content):
chunks = content.split(" ")
for chunk in chunks:
yield chunk + " "
response = st.write_stream(streaming(agent_response))
st.session_state.messages.append({"role": "assistant", "content": response})
st.session_state.mode = -1