ofermend's picture
removed print of logs inline
ead5d28
raw
history blame
No virus
9.52 kB
from omegaconf import OmegaConf
import streamlit as st
import os
from PIL import Image
import re
import sys
import datetime
import pandas as pd
import requests
from dotenv import load_dotenv
from pydantic import Field, BaseModel
from vectara_agent.agent import Agent, AgentType, AgentStatusType
from vectara_agent.tools import ToolsFactory
tickers = {
"AAPL": "Apple Computer",
"GOOG": "Google",
"AMZN": "Amazon",
"SNOW": "Snowflake",
"TEAM": "Atlassian",
"TSLA": "Tesla",
"NVDA": "Nvidia",
"MSFT": "Microsoft",
"AMD": "Advanced Micro Devices",
"INTC": "Intel",
"NFLX": "Netflix",
}
years = [2020, 2021, 2022, 2023, 2024]
initial_prompt = "How can I help you today?"
load_dotenv()
def create_tools(cfg):
def get_company_info() -> list[str]:
"""
Returns a dictionary of companies you can query about their financial reports.
The output is a dictionary of valid ticker symbols mapped to company names.
You can use this to identify the companies you can query about, and their ticker information.
"""
return tickers
def get_valid_years() -> list[str]:
"""
Returns a list of the years for which financial reports are available.
"""
return years
# Tool to get the income statement for a given company and year using the FMP API
def get_income_statement(
ticker=Field(description="the ticker symbol of the company."),
year=Field(description="the year for which to get the income statement."),
) -> str:
"""
Get the income statement for a given company and year using the FMP (https://financialmodelingprep.com) API.
Returns a dictionary with the income statement data.
"""
fmp_api_key = os.environ.get("FMP_API_KEY", None)
if fmp_api_key is None:
return "FMP_API_KEY environment variable not set. This tool does not work."
url = f"https://financialmodelingprep.com/api/v3/income-statement/{ticker}?apikey={fmp_api_key}"
response = requests.get(url)
if response.status_code == 200:
data = response.json()
income_statement = pd.DataFrame(data)
income_statement["date"] = pd.to_datetime(income_statement["date"])
income_statement_specific_year = income_statement[
income_statement["date"].dt.year == year
]
values_dict = income_statement_specific_year.to_dict(orient="records")[0]
return f"Financial results: {', '.join([f'{key}: {value}' for key, value in values_dict.items() if key not in ['date', 'cik', 'link', 'finalLink']])}"
else:
return "FMP API returned error. This tool does not work."
class QueryTranscriptsArgs(BaseModel):
query: str = Field(..., description="The user query.")
year: int = Field(..., description=f"The year. an integer between {min(years)} and {max(years)}.")
ticker: str = Field(..., description=f"The company ticker. Must be a valid ticket symbol from the list {tickers.keys()}.")
tools_factory = ToolsFactory(vectara_api_key=cfg.api_key,
vectara_customer_id=cfg.customer_id,
vectara_corpus_id=cfg.corpus_id)
ask_transcripts = tools_factory.create_rag_tool(
tool_name = "ask_transcripts",
tool_description = """
Given a company name and year,
returns a response (str) to a user question about a company, based on analyst call transcripts about the company's financial reports for that year.
You can ask this tool any question about the compaany including risks, opportunities, financial performance, competitors and more.
make sure to provide the a valid company ticker and year.
""",
tool_args_schema = QueryTranscriptsArgs,
tool_filter_template = "doc.year = {year} and doc.ticker = '{ticker}'",
reranker = "multilingual_reranker_v1", rerank_k = 100,
n_sentences_before = 2, n_sentences_after = 2, lambda_val = 0.01,
summary_num_results = 10,
vectara_summarizer = 'vectara-summary-ext-24-05-med-omni',
)
return (tools_factory.get_tools(
[
get_company_info,
get_valid_years,
get_income_statement,
]
) +
tools_factory.standard_tools() +
tools_factory.financial_tools() +
tools_factory.guardrail_tools() +
[ask_transcripts]
)
def initialize_agent(agent_type: AgentType, _cfg):
date = datetime.datetime.now().strftime("%Y-%m-%d")
financial_bot_instructions = f"""
- You are a helpful financial assistant, with expertise in finanal reporting, in conversation with a user.
- Today's date is {date}.
- Report in a concise and clear manner, and provide the most relevant information to the user.
- Respond in a concise format by using appropriate units of measure (e.g., K for thousands, M for millions, B for billions).
- Use tools when available instead of depending on your own knowledge.
- If a tool cannot respond properly, retry with a rephrased question or ask the user for more information.
- When querying a tool for a numeric value or KPI, use a concise and non-ambiguous description of what you are looking for.
- If you calculate a metric, make sure you have all the necessary information to complete the calculation. Don't guess.
- Be very careful not to report results you are not confident about.
- Always use any guardrails tools to ensure your responses are polite and do not discuss politices.
"""
def update_func(status_type: AgentStatusType, msg: str):
output = f"{status_type.value} - {msg}"
st.session_state.log_messages.append(output)
agent = Agent(
agent_type=agent_type,
tools=create_tools(_cfg),
topic="10-K annual financial reports",
custom_instructions=financial_bot_instructions,
update_func=update_func
)
return agent
def launch_bot(agent_type: AgentType):
def reset():
cfg = st.session_state.cfg
st.session_state.messages = [{"role": "assistant", "content": initial_prompt, "avatar": "πŸ¦–"}]
st.session_state.thinking_message = "Agent at work..."
st.session_state.agent = initialize_agent(agent_type, cfg)
st.session_state.log_messages = []
st.session_state.show_logs = False
st.set_page_config(page_title="Financial Assistant", layout="wide")
if 'cfg' not in st.session_state:
cfg = OmegaConf.create({
'customer_id': str(os.environ['VECTARA_CUSTOMER_ID']),
'corpus_id': str(os.environ['VECTARA_CORPUS_ID']),
'api_key': str(os.environ['VECTARA_API_KEY']),
})
st.session_state.cfg = cfg
reset()
cfg = st.session_state.cfg
# left side content
with st.sidebar:
image = Image.open('Vectara-logo.png')
st.image(image, width=250)
st.markdown("## Welcome to the financial assistant demo.\n\n\n")
companies = ", ".join(tickers.values())
st.markdown(
f"This assistant can help you with any questions about the financials of several companies:\n\n **{companies}**.\n"
)
st.markdown("\n\n")
bc1, bc2 = st.columns([1, 1])
with bc1:
if st.button('Start Over'):
reset()
with bc2:
if st.button('Show Logs'):
st.session_state.show_logs = not st.session_state.show_logs
st.markdown("---")
st.markdown(
"## How this works?\n"
"This app was built with [Vectara](https://vectara.com).\n\n"
"It demonstrates the use of Agentic RAG functionality with Vectara"
)
st.markdown("---")
if "messages" not in st.session_state.keys():
reset()
# Display chat messages
for message in st.session_state.messages:
with st.chat_message(message["role"], avatar=message["avatar"]):
st.write(message["content"])
# User-provided prompt
if prompt := st.chat_input():
st.session_state.messages.append({"role": "user", "content": prompt, "avatar": 'πŸ§‘β€πŸ’»'})
with st.chat_message("user", avatar='πŸ§‘β€πŸ’»'):
print(f"Starting new question: {prompt}\n")
st.write(prompt)
# Generate a new response if last message is not from assistant
if st.session_state.messages[-1]["role"] != "assistant":
with st.chat_message("assistant", avatar='πŸ€–'):
with st.spinner(st.session_state.thinking_message):
res = st.session_state.agent.chat(prompt)
cleaned = re.sub(r'\[\d+\]', '', res).replace('$', '\\$')
message = {"role": "assistant", "content": cleaned, "avatar": 'πŸ€–'}
st.session_state.messages.append(message)
st.rerun()
# Display log messages in an expander
if st.session_state.show_logs:
with st.expander("Agent Log Messages", expanded=True):
for msg in st.session_state.log_messages:
st.write(msg)
if st.button('Close Logs'):
st.session_state.show_logs = False
st.rerun()
sys.stdout.flush()
if __name__ == "__main__":
launch_bot(agent_type=AgentType.OPENAI)