Steve Androulakis 8bbc5da8a8 readme update
2025-01-09 15:42:36 -08:00
2025-01-03 15:05:27 -08:00
2025-01-04 11:27:59 -08:00
2025-01-07 13:19:34 -08:00
2025-01-04 11:27:59 -08:00
2025-01-04 11:27:59 -08:00
2025-01-09 15:30:37 -08:00
2025-01-09 15:30:37 -08:00
2024-12-31 11:46:57 -08:00
2025-01-04 12:48:34 -08:00
2025-01-03 15:05:27 -08:00
2025-01-09 15:39:48 -08:00
2025-01-04 12:48:34 -08:00
2025-01-04 12:48:34 -08:00
2025-01-09 15:42:36 -08:00

AI Agent execution using Temporal

This demo shows a multi-turn conversation with an AI agent running inside a Temporal workflow. The goal is to collect information towards a goal. There's a simple DSL input for collecting information (currently set up to use mock functions to search for events, book flights around those events then create an invoice for those flights). The AI will respond with clarifications and ask for any missing information to that goal. It uses ChatGPT 4o but can be made to use a local LLM via Ollama (see the deprecated section below).

Watch the demo (5 minute YouTube video)

Watch the demo

Setup

  • See .env_example for the required environment variables and copy to .env in the root directory.
  • Requires an OpenAI key for the gpt-4o model. Set this in the OPENAI_API_KEY environment variable in .env
  • Requires a Rapidapi key for sky-scrapper (how we find flights). Set this in the RAPIDAPI_KEY environment variable in .env
    • It's free to sign up and get a key at RapidAPI
    • If you're lazy go to tools/search_flights.py and replace the get_flights function with the mock search_flights_example that exists in the same file.
  • Requires a Stripe key for the create_invoice tool. Set this in the STRIPE_API_KEY environment variable in .env
    • It's free to sign up and get a key at Stripe
    • If you're lazy go to tools/create_invoice.py and replace the create_invoice function with the mock create_invoice_example that exists in the same file.
  • Install and run Temporal. Follow the instructions in the Temporal documentation to install and run the Temporal server.

Python Environment

Requires Poetry to manage dependencies.

  1. python -m venv venv

  2. source venv/bin/activate

  3. poetry install

React UI

  • cd frontend
  • npm install to install the dependencies.

Deprecated:

  • Install Ollama and the Qwen2.5 14B model (ollama run qwen2.5:14b). (note this model is about 9GB to download).
    • Local LLM is disabled as ChatGPT 4o was better for this use case. To use Ollama, examine ./activities/tool_activities.py and rename the functions.

Running the demo

Run a Temporal Dev Server

On a Mac

brew install temporal
temporal server start-dev

See the Temporal documentation for other platforms.

Run a Temporal Worker

From the /scripts directory:

  • Run the worker: poetry run python run_worker.py

Then run the API and UI using the instructions below.

API

  • poetry run uvicorn api.main:app --reload to start the API server.
  • Access the API at /docs to see the available endpoints.

UI

  • npm run dev to start the dev server.
  • Access the UI at http://localhost:5173

Customizing the agent

  • tool_registry.py contains the mapping of tool names to tool definitions (so the AI understands how to use them)
  • goal_registry.py contains descriptions of goals and the tools used to achieve them
  • The tools themselves are defined in their own files in /tools
  • Note the mapping in tools/__init__.py to each tool
  • See main.py where some tool-specific logic is defined (todo, move this to the tool definition)

TODO

  • I should prove this out with other tool definitions outside of the event/flight search case (take advantage of my nice DSL).
  • Currently hardcoded to the Temporal dev server at localhost:7233. Need to support options incl Temporal Cloud.
  • UI: Make prettier
Description
This demo shows a multi-turn conversation with an AI agent running inside a Temporal workflow.
Readme MIT 3.4 MiB
Languages
Python 86.7%
JavaScript 9.6%
C# 2.6%
Makefile 0.4%
CSS 0.3%
Other 0.4%