Commit graph

88 commits

Author SHA1 Message Date
pakrym-oai
6d95a3f191
Mark handoff span as errored when multiple handoffs are requested (#344)
Also includes the set of requested agents in the error data.
<img width="968" alt="image"
src="https://github.com/user-attachments/assets/0c5c2e81-08f7-445c-bbb0-3e169ef744a5"
/>
2025-03-26 10:44:59 -04:00
Rohan Mehta
b5ba22904a
[5/n] MCP tracing (#342)
## Summary:

Adds tracing and tests for tracing.
- Tools are added to the agents
- Theres a span for the mcp tools lookup
- Functions have MCP data

## Test Plan:

Unit tests
.
2025-03-25 19:54:28 -04:00
Rohan Mehta
010022777b [5/n] MCP tracing
## Summary:

Adds tracing and tests for tracing.
- Tools are added to the agents
- Theres a span for the mcp tools lookup
- Functions have MCP data

## Test Plan:

Unit tests
.
2025-03-25 19:28:48 -04:00
Rohan Mehta
dd881eed9a
feat: Add Graphviz-based agent visualization functionality (#147)
This pull request introduces functionality for visualizing agent
structures using Graphviz. The changes include adding a new dependency,
implementing functions to generate and draw graphs, and adding tests for
these functions.

New functionality for visualizing agent structures:

* Added `graphviz` as a new dependency in `pyproject.toml`.
* Implemented functions in `src/agents/visualizations.py` to generate
and draw graphs for agents using Graphviz. These functions include
`get_main_graph`, `get_all_nodes`, `get_all_edges`, and `draw_graph`.

Testing the new visualization functionality:

* Added tests in `tests/test_visualizations.py` to verify the
correctness of the graph generation and drawing functions. The tests
cover `get_main_graph`, `get_all_nodes`, `get_all_edges`, and
`draw_graph`.

For example, given the following code:

```python
from agents import Agent, function_tool
from agents.visualizations import draw_graph


@function_tool
def get_weather(city: str) -> str:
    return f"The weather in {city} is sunny."


spanish_agent = Agent(
    name="Spanish agent",
    instructions="You only speak Spanish.",
)

english_agent = Agent(
    name="English agent",
    instructions="You only speak English",
)

triage_agent = Agent(
    name="Triage agent",
    instructions="Handoff to the appropriate agent based on the language of the request.",
    handoffs=[spanish_agent, english_agent],
    tools=[get_weather],
)


draw_graph(triage_agent)
```

Generates the following image:

<img width="614" alt="Screenshot 2025-03-13 at 18 36 23"
src="https://github.com/user-attachments/assets/d01fe502-6886-4efb-aaf8-c92e4524b0fe"
/>
2025-03-25 19:22:58 -04:00
Martín Bravo
70aff1d39d linting 2025-03-25 19:18:57 +01:00
Martín Bravo
3068e42029 Fix type ignore comment for agent check in get_all_edges function 2025-03-25 19:17:35 +01:00
Martín Bravo
351b6074e5 Refactor visualization functions to improve formatting and streamline edge generation 2025-03-25 19:12:40 +01:00
Martín Bravo
5ad53d8000 Add start and end nodes to graph visualization and update edge generation 2025-03-25 19:11:43 +01:00
Martín Bravo
b9d32cda0f Refactor get_all_edges function to remove unused parent parameter 2025-03-25 19:02:21 +01:00
Martín Bravo
2f2606e5ea Add graphviz as a dependency and update import statements 2025-03-25 18:46:23 +01:00
Rohan Mehta
6fb5792b77 Make the reset behavior on tool use configurable
## Summary:

#263 added this behavior. The goal was to prevent infinite loops when tool choice was set. The key change I'm making is:
1. Making it configurable on the agent.
2. Doing bookkeeping in the Runner to track this, to prevent mutating agents.
3. Not resetting the global tool choice in RunConfig.

## Test Plan:
Unit tests.
.
2025-03-25 13:29:32 -04:00
Rohan Mehta
b98a6bd4ac [4/n] Add docs for MCP
Just adding docs.
-
2025-03-25 13:25:50 -04:00
Martín Bravo
57ecebfe35 Refactor visualization node label formatting in get_all_nodes function 2025-03-25 18:16:29 +01:00
Martín Bravo
48fad9e2d3 Merge branch 'main' of https://github.com/openai/openai-agents-python into feat/draw_graph 2025-03-25 18:02:51 +01:00
Rohan Mehta
4f8cbfa676
[2/n] Add MCP support to Runner (#321)
### Summary:
This enables users to **use** MCP inside the SDK.
1. You add a list of MCP servers to `Agent`, via `mcp_server=[...]`
2. When an agent runs, we look up its MCP tools and add them to the list
of tools.
3. When a tool call occurs, we call the relevant MCP server.

Notes:
1. There's some refactoring to make sure we send the full list of tools
to the Runner/Model etc.
2. Right now, you could have a locally defined tool that conflicts with
an MCP defined tool. I didn't add errors for that, will do in a
followup.

### Test Plan:
See unit tests. Also has an end to end example next PR.

---
[//]: # (BEGIN SAPLING FOOTER)
* #324
* #322
* __->__ #321
* #320
2025-03-25 12:53:29 -04:00
Rohan Mehta
97e3dc3c76 [1/n] Add MCP types to the SDK
### Summary:
1. Add the MCP dep for python 3.10, since it doesn't support 3.9 and below
2. Create MCPServer, which is the agents SDK representation of an MCP server
3. Create implementations for HTTP-SSE and StdIO servers, directly copying the [MCP SDK example](https://github.com/modelcontextprotocol/python-sdk/blob/main/examples/clients/simple-chatbot/mcp_simple_chatbot/main.py)
4. Add a util to transform MCP tools into Agent SDK tools

Note: I added optional caching support to the servers. That way, if you happen to know a server's tools don't change, you can just cache them.

### Test Plan:

Checks pass. I added tests at the end of the stack.
2025-03-25 12:51:40 -04:00
Martín Bravo
900a97fa55 Merge branch 'main' of https://github.com/openai/openai-agents-python into feat/draw_graph 2025-03-25 16:58:01 +01:00
Rohan Mehta
923a3547eb
Fix parallel_tool_calls when False (#333)
Currently, when we set `parallel_tool_calls=False` in the
`model_settings`, the responses API is called with `parallel_tool_calls
== NotGiven`, which defaults to true on the Response API side
(https://platform.openai.com/docs/api-reference/responses/create#responses-create-parallel_tool_calls).

This PR attempts to fix that.

```
agent = Agent(
    ...,
    model_settings=ModelSettings(
        parallel_tool_calls=False,
    ),
)
```
2025-03-25 11:31:06 -04:00
Rohan Mehta
927a29c56b
Fix potential infinite tool call loop by resetting tool_choice after … (#263)
# Fix potential infinite tool call loop by resetting tool_choice after
tool execution

## Summary

This PR fixes an issue where setting `tool_choice` to "required" or a
specific function name could cause models to get stuck in an infinite
tool call loop.

When `tool_choice` is set to force tool usage, this setting persists
across model invocations. This PR automatically resets `tool_choice` to
"auto" after tool execution, allowing the model to decide whether to
make additional tool calls in subsequent turns.

Unlike using `tool_use_behavior="stop_on_first_tool"`, this approach
lets the model continue processing tool results while preventing forced
repeated tool calls.

## Test plan

- Added tests to verify tool_choice reset behavior for both agent and
run_config settings
- Added integration test to verify the solution prevents infinite loops
- All tests pass

## Checks

- [x] I've added new tests for the fix
- [x] I've updated the relevant documentation (added comment in code)
- [x] I've run `make lint` and `make format`
- [x] I've made sure tests pass
2025-03-25 11:30:53 -04:00
apeccaud
326ff09127 Fix parallel_tool_calls when False 2025-03-25 14:52:48 +00:00
Rohan Mehta
68c800d2a3 [2/n] Add MCP support to Runner
### Summary:
This enables users to **use** MCP inside the SDK.
1. You add a list of MCP servers to `Agent`, via `mcp_server=[...]`
2. When an agent runs, we look up its MCP tools and add them to the list of tools.
3. When a tool call occurs, we call the relevant MCP server.

Notes:
1. There's some refactoring to make sure we send the full list of tools to the Runner/Model etc.
2. Right now, you could have a locally defined tool that conflicts with an MCP defined tool. I didn't add errors for that, will do in a followup.

### Test Plan:
See unit tests. Also has an end to end example next PR.
2025-03-24 15:08:02 -04:00
Rohan Mehta
300e12c198 [1/n] Add MCP types to the SDK
### Summary:
1. Add the MCP dep for python 3.10, since it doesn't support 3.9 and below
2. Create MCPServer, which is the agents SDK representation of an MCP server
3. Create implementations for HTTP-SSE and StdIO servers, directly copying the [MCP SDK example](https://github.com/modelcontextprotocol/python-sdk/blob/main/examples/clients/simple-chatbot/mcp_simple_chatbot/main.py)
4. Add a util to transform MCP tools into Agent SDK tools

Note: I added optional caching support to the servers. That way, if you happen to know a server's tools don't change, you can just cache them.

### Test Plan:

Checks pass. I added tests at the end of the stack.
2025-03-24 15:08:02 -04:00
Martín Bravo
623063b633 refactor: clean up visualization functions by removing unused nodes and improving type hints 2025-03-24 09:47:21 +01:00
Martín Bravo
a5b7abe8b4 feat: enhance visualization functions with optional type hints and improved handling of agents and handoffs 2025-03-24 09:30:13 +01:00
Rohan Mehta
4cb011c4d2
Fix Typos (#258)
Noticed a bunch of typos when reading code, fixing.
2025-03-23 20:28:14 -04:00
Rohan Mehta
668fac0f74 Improve tracing error messages 2025-03-23 18:14:10 -04:00
xianghuijin
07a4af1fe2 refactor: improve comments for clarity in tool_choice reset logic 2025-03-23 20:41:18 +08:00
xianghuijin
0c747af743 refactor: streamline tool_choice reset logic
This update moves the tool_choice reset logic to a more appropriate location within the RunImpl class, ensuring that the original agent's model_settings remains unmodified during the reset process. The logic now checks for problematic scenarios before creating a modified copy of the agent's settings, maintaining expected behavior across sequential runs. This change enhances clarity and efficiency in handling tool choices.

Addresses previous feedback regarding the modification of the agent instance and improves the overall structure of the reset logic.
2025-03-23 20:04:39 +08:00
xianghuijin
6ed0bee672 fix: prevent modifying the original agent's model_settings
This fixes the issue where the original agent's model_settings was being directly modified during the tool choice reset process. The original implementation caused the agent's tool_choice to unintentionally reset to "auto" for subsequent runs, which could be unexpected behavior.

The fix creates new copies of the agent and model settings objects using dataclasses.replace() instead of modifying the original objects. This ensures that the tool choice reset is limited to the current run only, maintaining the expected behavior for sequential runs with the same agent.

Addresses feedback from @baderalfahad about the agent instance being modified when it should maintain its original state between runs.
2025-03-23 17:20:23 +08:00
xianghuijin
bbcda753df fix: optimize tool_choice reset logic and fix lint errors
- Refactor tool_choice reset to target only problematic edge cases
- Replace manual ModelSettings recreation with dataclasses.replace
- Fix line length and error handling lint issues in tests
2025-03-22 14:10:09 +08:00
Raduan77
ab0d940f19 revert src/ change per request 2025-03-22 01:06:01 +01:00
Rohan Mehta
c0794a90ec Read tracing API data lazily 2025-03-21 15:32:37 -04:00
Richie Caputo
b5305810d7
Create py.typed
- Ensure library is properly typehinted
2025-03-21 11:16:24 -04:00
Kazuhiro Sera
98c4b45b6a Make the optional dependency installation compatible with zsh 2025-03-21 10:01:24 +09:00
Rohan Mehta
1771c1e856 update tests 2025-03-20 13:08:38 -04:00
Dominik Kundel
c7ce154637 feat: add voice pipeline support
> Co-authored-by: rm@openai.com
2025-03-20 09:43:13 -07:00
xianghuijin
fb77c74fa1 Fix potential infinite tool call loop by resetting tool_choice after tool execution 2025-03-20 21:22:27 +08:00
Raduan77
e9f6d08260 fix typos in src/ 2025-03-20 11:24:08 +01:00
Rohan Mehta
8c9974bc90 Fix breaking changes from openai 1.66.2 2025-03-19 12:30:45 -04:00
Rohan Mehta
10aa5555af Introduce tool_use_behavior on agents 2025-03-18 21:55:12 -04:00
Rohan Mehta
6f7e801da0
Update tests and docs for strict mode decorator (#205)
As titled. Test plan: unit tests/docs.
2025-03-18 21:35:00 -04:00
Martín Bravo
f4edc1f372 style: improve string formatting in visualization functions 2025-03-18 10:15:41 +01:00
Martín Bravo
b7627cb642 style: improve string formatting 2025-03-18 10:14:52 +01:00
Martín Bravo
0079bca717 style: improve code formatting and readability in visualization functions 2025-03-18 10:09:44 +01:00
Martín Bravo
53367be893 feat: add visualization module for agent graphs using Graphviz 2025-03-18 09:55:30 +01:00
Martín Bravo
f7c594da08 feat: add visualization functions for agent graphs 2025-03-18 09:53:48 +01:00
Martín Bravo
aff1d60ea1 Merge branch 'main' of https://github.com/openai/openai-agents-python into feat/draw_graph 2025-03-17 23:50:52 +01:00
Rohan Mehta
d0a7b00086
Fix typo on Agent documentation (#151)
Argument name is not description but handoff_description
2025-03-17 16:51:47 -04:00
Carlos Souza
64150c8aea Fix lint 2025-03-17 16:14:28 -04:00
Rohan Mehta
0989cd9184
Add TracingProcessor export to __init__.py (#192)
# Summary
This adds the missing TracingProcessor export to  __init__.py.

# Behavior
When trying to add a custom tracing processor, the TracingProcessor
importing fails with not found error when trying the example usage
proposed in issue #164

Specifically this line throws the error:
`add_trace_processor(MyTracingProcessor("output"))`

# Expected Behavior
Inspecting the init file, simply the import/export was missing. Adding
these made the example code work for me

# Test plan
Local dev of example code in #164

# Issue number
#164

# Checks
None
2025-03-17 15:39:04 -04:00