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- #!/usr/bin/env python3 -m pytest
-
- import asyncio
- import os
- import sys
-
- import pytest
- from test_assistant_agent import KEY_LOC, OAI_CONFIG_LIST
-
- import autogen
-
- sys.path.append(os.path.join(os.path.dirname(__file__), ".."))
- from conftest import reason, skip_openai # noqa: E402
-
-
- def get_market_news(ind, ind_upper):
- data = {
- "feed": [
- {
- "title": "Palantir CEO Says Our Generation's Atomic Bomb Could Be AI Weapon - And Arrive Sooner Than You Think - Palantir Technologies ( NYSE:PLTR ) ",
- "summary": "Christopher Nolan's blockbuster movie \"Oppenheimer\" has reignited the public discourse surrounding the United States' use of an atomic bomb on Japan at the end of World War II.",
- "overall_sentiment_score": 0.009687,
- },
- {
- "title": '3 "Hedge Fund Hotels" Pulling into Support',
- "summary": "Institutional quality stocks have several benefits including high-liquidity, low beta, and a long runway. Strategist Andrew Rocco breaks down what investors should look for and pitches 3 ideas.",
- "banner_image": "https://staticx-tuner.zacks.com/images/articles/main/92/87.jpg",
- "overall_sentiment_score": 0.219747,
- },
- {
- "title": "PDFgear, Bringing a Completely-Free PDF Text Editing Feature",
- "summary": "LOS ANGELES, July 26, 2023 /PRNewswire/ -- PDFgear, a leading provider of PDF solutions, announced a piece of exciting news for everyone who works extensively with PDF documents.",
- "overall_sentiment_score": 0.360071,
- },
- {
- "title": "Researchers Pitch 'Immunizing' Images Against Deepfake Manipulation",
- "summary": "A team at MIT says injecting tiny disruptive bits of code can cause distorted deepfake images.",
- "overall_sentiment_score": -0.026894,
- },
- {
- "title": "Nvidia wins again - plus two more takeaways from this week's mega-cap earnings",
- "summary": "We made some key conclusions combing through quarterly results for Microsoft and Alphabet and listening to their conference calls with investors.",
- "overall_sentiment_score": 0.235177,
- },
- ]
- }
- feeds = data["feed"][ind:ind_upper]
- feeds_summary = "\n".join(
- [
- f"News summary: {f['title']}. {f['summary']} overall_sentiment_score: {f['overall_sentiment_score']}"
- for f in feeds
- ]
- )
- return feeds_summary
-
-
- @pytest.mark.skipif(skip_openai, reason=reason)
- @pytest.mark.asyncio
- async def test_async_groupchat():
- config_list = autogen.config_list_from_json(OAI_CONFIG_LIST, KEY_LOC, filter_dict={"tags": ["gpt-3.5-turbo"]})
-
- # create an AssistantAgent instance named "assistant"
- assistant = autogen.AssistantAgent(
- name="assistant",
- llm_config={
- "config_list": config_list,
- "temperature": 0,
- },
- system_message="You are a helpful assistant. Reply 'TERMINATE' to end the conversation.",
- )
- # create a UserProxyAgent instance named "user"
- user_proxy = autogen.UserProxyAgent(
- name="user",
- human_input_mode="NEVER",
- max_consecutive_auto_reply=5,
- code_execution_config=False,
- default_auto_reply=None,
- )
-
- groupchat = autogen.GroupChat(
- agents=[user_proxy, assistant], messages=[], max_round=3, speaker_selection_method="round_robin"
- )
- manager = autogen.GroupChatManager(
- groupchat=groupchat,
- is_termination_msg=lambda x: "TERMINATE" in x.get("content", ""),
- )
- await user_proxy.a_initiate_chat(manager, message="""223434*3422=?.""")
- assert len(user_proxy.chat_messages) > 0
-
-
- @pytest.mark.skipif(skip_openai, reason=reason)
- @pytest.mark.asyncio
- async def test_stream():
- config_list = autogen.config_list_from_json(OAI_CONFIG_LIST, KEY_LOC, filter_dict={"tags": ["gpt-3.5-turbo"]})
- data = asyncio.Future()
-
- async def add_stock_price_data():
- # simulating the data stream
- for i in range(0, 2, 1):
- latest_news = get_market_news(i, i + 1)
- if data.done():
- data.result().append(latest_news)
- else:
- data.set_result([latest_news])
- # print(data.result())
- await asyncio.sleep(5)
-
- data_task = asyncio.create_task(add_stock_price_data())
- # create an AssistantAgent instance named "assistant"
- assistant = autogen.AssistantAgent(
- name="assistant",
- llm_config={
- "timeout": 600,
- "cache_seed": 41,
- "config_list": config_list,
- "temperature": 0,
- },
- system_message="You are a financial expert.",
- )
- # create a UserProxyAgent instance named "user"
- user_proxy = autogen.UserProxyAgent(
- name="user",
- human_input_mode="NEVER",
- max_consecutive_auto_reply=5,
- code_execution_config=False,
- default_auto_reply=None,
- )
-
- async def add_data_reply(recipient, messages, sender, config):
- await asyncio.sleep(0.1)
- data = config["news_stream"]
- if data.done():
- result = data.result()
- if result:
- news_str = "\n".join(result)
- result.clear()
- return (
- True,
- f"Just got some latest market news. Merge your new suggestion with previous ones.\n{news_str}",
- )
- return False, None
-
- user_proxy.register_reply(autogen.AssistantAgent, add_data_reply, position=2, config={"news_stream": data})
-
- chat_res = await user_proxy.a_initiate_chat(
- assistant, message="""Give me investment suggestion in 3 bullet points.""", summary_method="reflection_with_llm"
- )
-
- print("Chat summary:", chat_res.summary)
- print("Chat cost:", chat_res.cost)
-
- while not data_task.done() and not data_task.cancelled():
- reply = await user_proxy.a_generate_reply(sender=assistant)
- if reply is not None:
- await user_proxy.a_send(reply, assistant)
- # print("Chat summary and cost:", res.summary, res.cost)
-
-
- if __name__ == "__main__":
- # asyncio.run(test_stream())
- asyncio.run(test_async_groupchat())
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