# Setup Guide ## Initial Configuration This application uses `.env` files for configuration. Copy the [.env.example](.env.example) file to `.env` and update the values: ```bash cp .env.example .env ``` Then add API keys, configuration, as desired. If you want to show confirmations/enable the debugging UI that shows tool args, set ```bash SHOW_CONFIRM=True ``` ### Quick Start with Makefile We've provided a Makefile to simplify the setup and running of the application. Here are the main commands: ```bash # Initial setup make setup # Creates virtual environment and installs dependencies make setup-venv # Creates virtual environment only make install # Installs all dependencies # Running the application make run-worker # Starts the Temporal worker make run-api # Starts the API server make run-frontend # Starts the frontend development server # Additional services make run-train-api # Starts the train API server make run-legacy-worker # Starts the legacy worker make run-enterprise # Builds and runs the enterprise .NET worker # Development environment setup make setup-temporal-mac # Installs and starts Temporal server on Mac # View all available commands make help ``` ### Manual Setup (Alternative to Makefile) If you prefer to run commands manually, follow these steps: ### Agent Goal Configuration The agent can be configured to pursue different goals using the `AGENT_GOAL` environment variable in your `.env` file. If unset, default is `goal_choose_agent_type`. If the first goal is `goal_choose_agent_type` the agent will support multiple goals using goal categories defined by `GOAL_CATEGORIES` in your .env file. If unset, default is all. We recommend starting with `fin`. ```bash GOAL_CATEGORIES=hr,travel-flights,travel-trains,fin ``` See the section Goal-Specific Tool Configuration below for tool configuration for specific goals. ### LLM Configuration Note: We recommend using OpenAI's GPT-4o or Claude 3.5 Sonnet for the best results. There can be significant differences in performance and capabilities between models, especially for complex tasks. The agent uses LiteLLM to interact with various LLM providers. Configure theqfollowing environment variables in your `.env` file: - `LLM_MODEL`: The model to use (e.g., "openai/gpt-4o", "anthropic/claude-3-sonnet", "google/gemini-pro", etc.) - `LLM_KEY`: Your API key for the selected provider - `LLM_BASE_URL`: (Optional) Custom base URL for the LLM provider. Useful for: - Using Ollama with a custom endpoint - Using a proxy or custom API gateway - Testing with different API versions LiteLLM will automatically detect the provider based on the model name. For example: - For OpenAI models: `openai/gpt-4o` or `openai/gpt-3.5-turbo` - For Anthropic models: `anthropic/claude-3-sonnet` - For Google models: `google/gemini-pro` - For Ollama models: `ollama/mistral` (requires `LLM_BASE_URL` set to your Ollama server) Example configurations: ```bash # For OpenAI LLM_MODEL=openai/gpt-4o LLM_KEY=your-api-key-here # For Anthropic LLM_MODEL=anthropic/claude-3-sonnet LLM_KEY=your-api-key-here # For Ollama with custom URL LLM_MODEL=ollama/mistral LLM_BASE_URL=http://localhost:11434 ``` For a complete list of supported models and providers, visit the [LiteLLM documentation](https://docs.litellm.ai/docs/providers). ## Configuring Temporal Connection By default, this application will connect to a local Temporal server (`localhost:7233`) in the default namespace, using the `agent-task-queue` task queue. You can override these settings in your `.env` file. ### Use Temporal Cloud See [.env.example](.env.example) for details on connecting to Temporal Cloud using mTLS or API key authentication. [Sign up for Temporal Cloud](https://temporal.io/get-cloud) ### Use a local Temporal Dev Server On a Mac ```bash brew install temporal temporal server start-dev ``` See the [Temporal documentation](https://learn.temporal.io/getting_started/python/dev_environment/) for other platforms. You can also run a local Temporal server using Docker Compose. See the `Development with Docker` section below. ## Running the Application ### Docker - All services are defined in `docker-compose.yml` (includes a Temporal server). - **Dev overrides** (mounted code, live‑reload commands) live in `docker-compose.override.yml` and are **auto‑merged** on `docker compose up`. - To start **development** mode (with hot‑reload): ```bash docker compose up -d # quick rebuild without infra: docker compose up -d --no-deps --build api train-api worker frontend ``` - To run **production** mode (ignore dev overrides): ```bash docker compose -f docker-compose.yml up -d ``` Default urls: * Temporal UI: [http://localhost:8080](http://localhost:8080) * API: [http://localhost:8000](http://localhost:8000) * Frontend: [http://localhost:5173](http://localhost:5173) ### Local Machine (no docker) **Python Backend** Requires [Poetry](https://python-poetry.org/) to manage dependencies. 1. `python -m venv venv` 2. `source venv/bin/activate` 3. `poetry install` Run the following commands in separate terminal windows: 1. Start the Temporal worker: ```bash poetry run python scripts/run_worker.py ``` 2. Start the API server: ```bash poetry run uvicorn api.main:app --reload ``` Access the API at `/docs` to see the available endpoints. **React UI** Start the frontend: ```bash cd frontend npm install npx vite ``` Access the UI at `http://localhost:5173` ## Goal-Specific Tool Configuration Here is configuration guidance for specific goals. Travel and financial goals have configuration & setup as below. ### Goal: Find an event in Australia / New Zealand, book flights to it and invoice the user for the cost - `AGENT_GOAL=goal_event_flight_invoice` - Helps users find events, book flights, and arrange train travel with invoice generation - This is the scenario in the [original video](https://www.youtube.com/watch?v=GEXllEH2XiQ) #### Configuring Agent Goal: goal_event_flight_invoice * The agent uses a mock function to search for events. This has zero configuration. * By default the agent uses a mock function to search for flights. * If you want to use the real flights API, go to `tools/search_flights.py` and replace the `search_flights` function with `search_flights_real_api` that exists in the same file. * It's free to sign up at [RapidAPI](https://rapidapi.com/apiheya/api/sky-scrapper) * This api might be slow to respond, so you may want to increase the start to close timeout, `TOOL_ACTIVITY_START_TO_CLOSE_TIMEOUT` in `workflows/workflow_helpers.py` * 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](https://stripe.com/) * Set permissions for read-write on: `Credit Notes, Invoices, Customers and Customer Sessions` * If you don't have a Stripe key, comment out the STRIPE_API_KEY in the .env file, and a dummy invoice will be created rather than a Stripe invoice. The function can be found in `tools/create_invoice.py` ### Goal: Find a Premier League match, book train tickets to it and invoice the user for the cost (Replay 2025 Keynote) - `AGENT_GOAL=goal_match_train_invoice` - Focuses on Premier League match attendance with train booking and invoice generation - This goal was part of [Temporal's Replay 2025 conference keynote demo](https://www.youtube.com/watch?v=YDxAWrIBQNE) - Note, there is failure built in to this demo (the train booking step) to show how the agent can handle failures and retry. See Tool Configuration below for details. #### Configuring Agent Goal: goal_match_train_invoice NOTE: This goal was developed for an on-stage demo and has failure (and its resolution) built in to show how the agent can handle failures and retry. * Finding a match requires a key from [Football Data](https://www.football-data.org). Sign up for a free account, then see the 'My Account' page to get your API token. Set `FOOTBALL_DATA_API_KEY` to this value. If the key is omitted, the `SearchFixtures` tool automatically returns mock Premier League fixtures (3 months into the future only). * We use a mock function to search for trains. Start the train API server to use the real API: `python thirdparty/train_api.py` * * The train activity is 'enterprise' so it's written in C# and requires a .NET runtime. See the [.NET backend](#net-(enterprise)-backend) section for details on running it. * 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](https://stripe.com/) * 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. ##### Python Search Trains API > Agent Goal: goal_match_train_invoice only Required to search and book trains! ```bash poetry run python thirdparty/train_api.py # example url # http://localhost:8080/api/search?from=london&to=liverpool&outbound_time=2025-04-18T09:00:00&inbound_time=2025-04-20T09:00:00 ``` ##### Python Train Legacy Worker > Agent Goal: goal_match_train_invoice only These are Python activities that fail (raise NotImplemented) to show how Temporal handles a failure. You can run these activities with. ```bash poetry run python scripts/run_legacy_worker.py ``` The activity will fail and be retried infinitely. To rescue the activity (and its corresponding workflows), kill the worker and run the .NET one in the section below. ##### .NET (enterprise) Worker ;) We have activities written in C# to call the train APIs. ```bash cd enterprise dotnet build # ensure you brew install dotnet@8 first! dotnet run ``` If you're running your train API above on a different host/port then change the API URL in `Program.cs`. Otherwise, be sure to run it using `python thirdparty/train_api.py`. #### Goals: FIN - Money Movement and Loan Application Make sure you have the mock users you want (such as yourself) in [the account mock data file](./tools/data/customer_account_data.json). - `AGENT_GOAL=goal_fin_move_money` - This scenario _can_ initiate a secondary workflow to move money. Check out [this repo](https://github.com/temporal-sa/temporal-money-transfer-java) - you'll need to get the worker running and connected to the same account as the agentic worker. By default it will _not_ make a real workflow, it'll just fake it. If you get the worker running and want to start a workflow, in your [.env](./.env): ```bash FIN_START_REAL_WORKFLOW=FALSE #set this to true to start a real workflow ``` - `AGENT_GOAL=goal_fin_loan_application` - This scenario _can_ initiate a secondary workflow to apply for a loan. Check out [this repo](https://github.com/temporal-sa/temporal-latency-optimization-scenarios) - you'll need to get the worker running and connected to the same account as the agentic worker. By default it will _not_ make a real workflow, it'll just fake it. If you get the worker running and want to start a workflow, in your [.env](./.env): ```bash FIN_START_REAL_WORKFLOW=FALSE #set this to true to start a real workflow ``` #### Goals: HR/PTO Make sure you have the mock users you want in (such as yourself) in [the PTO mock data file](./tools/data/employee_pto_data.json). #### Goals: Ecommerce Make sure you have the mock orders you want in (such as those with real tracking numbers) in [the mock orders file](./tools/data/customer_order_data.json). ## Customizing the Agent Further - `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 For more details, check out [adding goals and tools guide](./adding-goals-and-tools.md). ## Setup Checklist [ ] copy `.env.example` to `.env`
[ ] Select an LLM and add your API key to `.env`
[ ] (Optional) set your starting goal and goal category in `.env`
[ ] (Optional) configure your Temporal Cloud settings in `.env`
[ ] `poetry run python scripts/run_worker.py`
[ ] `poetry run uvicorn api.main:app --reload`
[ ] `cd frontend`, `npm install`, `npx vite`
[ ] Access the UI at `http://localhost:5173`
And that's it! Happy AI Agent Exploring!