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README

mini-swe-agent banner

The minimal AI software engineering agent

📣 mini-swe-agent now powers Ramp SWE-Bench

📣 mini-swe-agent beats Claude Code and Codex on DeepSWE

📣 Run mini-swe-agent on our new & extremely challenging benchmark, ProgramBench

📣 New tutorial on building minimal AI agents

Docs Slack PyPI - Version

[!WARNING] This is mini-swe-agent v2. Read the migration guide. For the previous version, check out the v1 branch.

In 2024, we built SWE-bench & SWE-agent and helped kickstart the coding agent revolution.

We now ask: What if our agent was 100x simpler, and still worked nearly as well?

mini is

  • Widely adopted: Used by Meta, NVIDIA, Essential AI, IBM, Nebius, Anyscale, Princeton University, Stanford University, and many more.
  • Minimal: Just some 100 lines of python for the agent class (and a bit more for the environment, model, and run script) — no fancy dependencies!
  • Performant: Scores >74% on the SWE-bench verified benchmark; starts much faster than Claude Code
  • Deployable: Supports local environments, docker/podman, singularity/apptainer, bublewrap, contree, and more
  • Compatible: Supports all models via litellm, openrouter, portkey, and more. Support for /completion and /response endpoints, interleaved thinking etc.
  • Built by the Princeton & Stanford team behind SWE-bench, SWE-agent, and more
  • Tested: Codecov

More motivation (for research)

SWE-agent jump-started the development of AI agents in 2024. Back then, we placed a lot of emphasis on tools and special interfaces for the agent. However, one year later, as LMs have become more capable, a lot of this is not needed at all to build a useful agent! In fact, the mini agent

  • Does not have any tools other than bash — it doesn't even need to use the tool-calling interface of the LMs. This means that you can run it with literally any model. When running in sandboxed environments you also don't need to take care of installing a single package — all it needs is bash.
  • Has a completely linear history — every step of the agent just appends to the messages and that's it. So there's no difference between the trajectory and the messages that you pass on to the LM. Great for debugging & fine-tuning.
  • Executes actions with subprocess.run — every action is completely independent (as opposed to keeping a stateful shell session running). This makes it trivial to execute the actions in sandboxes (literally just switch out subprocess.run with docker exec) and to scale up effortlessly. Seriously, this is a big deal, trust me.

This makes it perfect as a baseline system and for a system that puts the language model (rather than the agent scaffold) in the middle of our attention. You can see the result on the SWE-bench (bash only) leaderboard, that evaluates the performance of different LMs with mini.

More motivation (as a tool)

Some agents are overfitted research artifacts. Others are UI-heavy frontend monsters.

The mini agent wants to be a hackable tool, not a black box.

  • Simple enough to understand at a glance
  • Convenient enough to use in daily workflows
  • Flexible to extend

Unlike other agents (including our own swe-agent), it is radically simpler, because it:

  • Does not have any tools other than bash — it doesn't even need to use the tool-calling interface of the LMs. Instead of implementing custom tools for every specific thing the agent might want to do, the focus is fully on the LM utilizing the shell to its full potential. Want it to do something specific like opening a PR? Just tell the LM to figure it out rather than spending time to implement it in the agent.
  • Executes actions with subprocess.run — every action is completely independent (as opposed to keeping a stateful shell session running). This is a big deal for the stability of the agent, trust me.
  • Has a completely linear history — every step of the agent just appends to the messages that are passed to the LM in the next step and that's it. This is great for debugging and understanding what the LM is prompted with.

Should I use SWE-agent or mini-SWE-agent?

You should consider mini-swe-agent your default choice. In particular, you should use mini-swe-agent if

  • You want a quick command line tool that works locally
  • You want an agent with a very simple control flow
  • You want even faster, simpler & more stable sandboxing & benchmark evaluations
  • You are doing FT or RL and don't want to overfit to a specific agent scaffold

You should use swe-agent if

  • You want to experiment with different sets of tools, each with their own interface
  • You want to experiment with different history processors

What you get with both

  • Excellent performance on SWE-Bench
  • A trajectory browser
CLI (mini) Batch inference
![mini](https://github.com/SWE-agent/swe-agent-media/blob/main/media/mini/gif/mini.gif?raw=true) ![swebench](https://github.com/SWE-agent/swe-agent-media/blob/main/media/mini/gif/swebench.gif?raw=true)
Trajectory browser Python bindings
![inspector](https://github.com/SWE-agent/swe-agent-media/blob/main/media/mini/gif/inspector.gif?raw=true)
agent = DefaultAgent(
    LitellmModel(model_name=...),
    LocalEnvironment(),
)
agent.run("Write a sudoku game")

Let's get started!

Option 1: If you just want to try out the CLI (package installed in anonymous virtual environment)

pip install uv && uvx mini-swe-agent
# or
pip install pipx && pipx ensurepath && pipx run mini-swe-agent

Option 2: Install CLI & python bindings in current environment

pip install mini-swe-agent
mini  # run the CLI

Option 3: Install from source (developer setup)

git clone https://github.com/SWE-agent/mini-swe-agent.git
cd mini-swe-agent && pip install -e .
mini  # run the CLI

Read more in our documentation:

Attribution

If you found this work helpful, please consider citing the SWE-agent paper in your work:

@inproceedings{yang2024sweagent,
  title={{SWE}-agent: Agent-Computer Interfaces Enable Automated Software Engineering},
  author={John Yang and Carlos E Jimenez and Alexander Wettig and Kilian Lieret and Shunyu Yao and Karthik R Narasimhan and Ofir Press},
  booktitle={The Thirty-eighth Annual Conference on Neural Information Processing Systems},
  year={2024},
  url={https://arxiv.org/abs/2405.15793}
}

Our other projects:

SWE-agent    SWE-ReX    SWE-bench    SWE-smith    CodeClash    sb-cli

Core symbols most depended-on inside this repo

run
called by 49
src/minisweagent/__init__.py
recursive_merge
called by 38
src/minisweagent/utils/serialize.py
run
called by 34
src/minisweagent/agents/default.py
_key_value_spec_to_nested_dict
called by 25
src/minisweagent/config/__init__.py
execute
called by 24
src/minisweagent/environments/local.py
cleanup
called by 17
src/minisweagent/environments/extra/bubblewrap.py
add_messages
called by 15
src/minisweagent/agents/default.py
execute
called by 14
src/minisweagent/environments/singularity.py

Shape

Function 480
Method 362
Class 101
Route 14

Languages

Python100%
TypeScript1%

Modules by API surface

tests/agents/test_interactive.py49 symbols
tests/run/test_inspector.py38 symbols
tests/run/test_swebench.py37 symbols
tests/run/test_extra_config.py37 symbols
tests/config/test_init.py30 symbols
tests/agents/test_default.py29 symbols
src/minisweagent/run/utilities/inspector.py29 symbols
src/minisweagent/models/test_models.py28 symbols
tests/models/test_init.py25 symbols
tests/run/test_cli_integration.py22 symbols
tests/environments/test_local.py21 symbols
tests/models/test_format_error_response_persistence.py19 symbols

Used by 1 indexed graphs manifest dependencies, hub-wide

Dependencies from manifests, versioned

jinja2
platformdirs
prompt_toolkit
pydantic2.0 · 1×
python-dotenv
pyyaml
rich
tenacity

For agents

$ claude mcp add mini-swe-agent \
  -- python -m otcore.mcp_server <graph>

⬇ download graph artifact