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README
License: apache-2.0Key Features:
- Agentic coding: Devstral is designed to excel at agentic coding tasks, making it a great choice for software engineering agents.
- lightweight: with its compact size of just 24 billion parameters, Devstral is light enough to run on a single RTX 4090 or a Mac with 32GB RAM, making it an appropriate model for local deployment and on-device use.
- Apache 2.0 License: Open license allowing usage and modification for both commercial and non-commercial purposes.
- Context Window: A 128k context window.
- Tokenizer: Utilizes a Tekken tokenizer with a 131k vocabulary size.
Benchmark Results
SWE-Bench
Devstral achieves a score of 46.8% on SWE-Bench Verified, outperforming prior open-source SoTA by 6%.
| Model | Scaffold | SWE-Bench Verified (%) |
|---|---|---|
| Devstral | OpenHands Scaffold | 46.8 |
| GPT-4.1-mini | OpenAI Scaffold | 23.6 |
| Claude 3.5 Haiku | Anthropic Scaffold | 40.6 |
| SWE-smith-LM 32B | SWE-agent Scaffold | 40.2 |
When evaluated under the same test scaffold (OpenHands, provided by All Hands AI 🙌), Devstral exceeds far larger models such as Deepseek-V3-0324 and Qwen3 232B-A22B.

Usage
We recommend to use Devstral with the OpenHands scaffold. You can use it either through our API or by running locally.
API
Follow these instructions to create a Mistral account and get an API key.
Then run these commands to start the OpenHands docker container.
bash
export MISTRAL_API_KEY=<MY_KEY>docker pull docker.all-hands.dev/all-hands-ai/runtime:0.39-nikolaikmkdir -p ~/.openhands-state && echo '{"language":"en","agent":"CodeActAgent","max_iterations":null,"security_analyzer":null,"confirmation_mode":false,"llm_model":"mistral/devstral-small-2505","llm_api_key":"'$MISTRAL_API_KEY'","remote_runtime_resource_factor":null,"github_token":null,"enable_default_condenser":true}' > ~/.openhands-state/settings.jsondocker run -it --rm --pull=always \-e SANDBOX_RUNTIME_CONTAINER_IMAGE=docker.all-hands.dev/all-hands-ai/runtime:0.39-nikolaik \-e LOG_ALL_EVENTS=true \-v /var/run/docker.sock:/var/run/docker.sock \-v ~/.openhands-state:/.openhands-state \-p 3000:3000 \--add-host host.docker.internal:host-gateway \--name openhands-app \docker.all-hands.dev/all-hands-ai/openhands:0.39
Local inference
The model can also be deployed with the following libraries:
vllm (recommended): See heremistral-inference: See heretransformers: See hereLMStudio: See herellama.cpp: See hereollama: See here
OpenHands (recommended)
Launch a server to deploy Devstral Small 1.0
Make sure you launched an OpenAI-compatible server such as vLLM or Ollama as described above. Then, you can use OpenHands to interact with Devstral Small 1.0.
In the case of the tutorial we spineed up a vLLM server running the command:
bash
vllm serve mistralai/Devstral-Small-2505 --tokenizer_mode mistral --config_format mistral --load_format mistral --tool-call-parser mistral --enable-auto-tool-choice --tensor-parallel-size 2
The server address should be in the following format: http://<your-server-url>:8000/v1
Launch OpenHands
You can follow installation of OpenHands here.
The easiest way to launch OpenHands is to use the Docker image:
bash
docker pull docker.all-hands.dev/all-hands-ai/runtime:0.38-nikolaikdocker run -it --rm --pull=always \-e SANDBOX_RUNTIME_CONTAINER_IMAGE=docker.all-hands.dev/all-hands-ai/runtime:0.38-nikolaik \-e LOG_ALL_EVENTS=true \-v /var/run/docker.sock:/var/run/docker.sock \-v ~/.openhands-state:/.openhands-state \-p 3000:3000 \--add-host host.docker.internal:host-gateway \--name openhands-app \docker.all-hands.dev/all-hands-ai/openhands:0.38
Then, you can access the OpenHands UI at http://localhost:3000.
Connect to the server
When accessing the OpenHands UI, you will be prompted to connect to a server. You can use the advanced mode to connect to the server you launched earlier.
Fill the following fields:
- Custom Model:
openai/mistralai/Devstral-Small-2505 - Base URL:
http://<your-server-url>:8000/v1 - API Key:
token(or any other token you used to launch the server if any)
Use OpenHands powered by Devstral
Now you're good to use Devstral Small inside OpenHands by starting a new conversation. Let's build a To-Do list app.
- Let's ask Devstral to generate the app with the following prompt:
txt
Build a To-Do list app with the following requirements:- Built using FastAPI and React.- Make it a one page app that:- Allows to add a task.- Allows to delete a task.- Allows to mark a task as done.- Displays the list of tasks.- Store the tasks in a SQLite database.

- Let's see the result
You should see the agent construct the app and be able to explore the code it generated.
If it doesn't do it automatically, ask Devstral to deploy the app or do it manually, and then go the front URL deployment to see the app.

- Iterate
Now that you have a first result you can iterate on it by asking your agent to improve it. For example, in the app generated we could click on a task to mark it checked but having a checkbox would improve UX. You could also ask it to add a feature to edit a task, or to add a feature to filter the tasks by status.
Enjoy building with Devstral Small and OpenHands!
vLLM (recommended)
We recommend using this model with the vLLM library to implement production-ready inference pipelines.
Installation
Make sure you install vLLM >= 0.8.5:
markdown
pip install vllm --upgrade
Doing so should automatically install mistral_common >= 1.5.5.
To check:
markdown
python -c "import mistral_common; print(mistral_common.__version__)"
You can also make use of a ready-to-go docker image or on the docker hub.
Server
We recommand that you use Devstral in a server/client setting.
- Spin up a server:
markdown
vllm serve mistralai/Devstral-Small-2505 --tokenizer_mode mistral --config_format mistral --load_format mistral --tool-call-parser mistral --enable-auto-tool-choice --tensor-parallel-size 2
- To ping the client you can use a simple Python snippet.
py
import requestsimport jsonfrom huggingface_hub import hf_hub_downloadurl = "http://<your-server-url>:8000/v1/chat/completions"headers = {"Content-Type": "application/json", "Authorization": "Bearer token"}model = "mistralai/Devstral-Small-2505"def load_system_prompt(repo_id: str, filename: str) -> str:file_path = hf_hub_download(repo_id=repo_id, filename=filename)with open(file_path, "r") as file:system_prompt = file.read()return system_promptSYSTEM_PROMPT = load_system_prompt(model, "SYSTEM_PROMPT.txt")messages = [{"role": "system", "content": SYSTEM_PROMPT},{"role": "user","content": [{"type": "text","text": "<your-command>",},],},]data = {"model": model, "messages": messages, "temperature": 0.15}response = requests.post(url, headers=headers, data=json.dumps(data))print(response.json()["choices"][0]["message"]["content"])
Mistral-inference
We recommend using mistral-inference to quickly try out / "vibe-check" Devstral.
Install
Make sure to have mistral_inference >= 1.6.0 installed.
bash
pip install mistral_inference --upgrade
Download
python
from huggingface_hub import snapshot_downloadfrom pathlib import Pathmistral_models_path = Path.home().joinpath('mistral_models', 'Devstral')mistral_models_path.mkdir(parents=True, exist_ok=True)snapshot_download(repo_id="mistralai/Devstral-Small-2505", allow_patterns=["params.json", "consolidated.safetensors", "tekken.json"], local_dir=mistral_models_path)
Python
You can run the model using the following command:
bash
mistral-chat $HOME/mistral_models/Devstral --instruct --max_tokens 300
You can then prompt it with anything you'd like.
Transformers
To make the best use of our model with transformers make sure to have installed mistral-common >= 1.5.5 to use our tokenizer.
bash
pip install mistral-common --upgrade
Then load our tokenizer along with the model and generate:
python
import torchfrom mistral_common.protocol.instruct.messages import (SystemMessage, UserMessage)from mistral_common.protocol.instruct.request import ChatCompletionRequestfrom mistral_common.tokens.tokenizers.mistral import MistralTokenizerfrom huggingface_hub import hf_hub_downloadfrom transformers import AutoModelForCausalLMdef load_system_prompt(repo_id: str, filename: str) -> str:file_path = hf_hub_download(repo_id=repo_id, filename=filename)with open(file_path, "r") as file:system_prompt = file.read()return system_promptmodel_id = "mistralai/Devstral-Small-2505"tekken_file = hf_hub_download(repo_id=model_id, filename="tekken.json")SYSTEM_PROMPT = load_system_prompt(model_id, "SYSTEM_PROMPT.txt")tokenizer = MistralTokenizer.from_file(tekken_file)model = AutoModelForCausalLM.from_pretrained(model_id)tokenized = tokenizer.encode_chat_completion(ChatCompletionRequest(messages=[SystemMessage(content=SYSTEM_PROMPT),UserMessage(content="<your-command>"),],))output = model.generate(input_ids=torch.tensor([tokenized.tokens]),max_new_tokens=1000,)[0]decoded_output = tokenizer.decode(output[len(tokenized.tokens):])print(decoded_output)
LMStudio
Download the weights from huggingface:
markdown
pip install -U "huggingface_hub[cli]"huggingface-cli download \"mistralai/Devstral-Small-2505_gguf" \--include "devstralQ4_K_M.gguf" \--local-dir "mistralai/Devstral-Small-2505_gguf/"
You can serve the model locally with LMStudio.
- Download LM Studio and install it
- Install
lms cli ~/.lmstudio/bin/lms bootstrap - In a bash terminal, run
lms import devstralQ4_K_M.ggufin the directory where you've downloaded the model checkpoint (e.g.mistralai/Devstral-Small-2505_gguf) - Open the LMStudio application, click the terminal icon to get into the developer tab. Click select a model to load and select Devstral Q4 K M. Toggle the status button to start the model, in setting toggle Serve on Local Network to be on.
- On the right tab, you will see an API identifier which should be devstralq4_k_m and an api address under API Usage. Keep note of this address, we will use it in the next step.
Launch Openhands You can now interact with the model served from LM Studio with openhands. Start the openhands server with the docker
bash
docker pull docker.all-hands.dev/all-hands-ai/runtime:0.38-nikolaikdocker run -it --rm --pull=always \-e SANDBOX_RUNTIME_CONTAINER_IMAGE=docker.all-hands.dev/all-hands-ai/runtime:0.38-nikolaik \-e LOG_ALL_EVENTS=true \-v /var/run/docker.sock:/var/run/docker.sock \-v ~/.openhands-state:/.openhands-state \-p 3000:3000 \--add-host host.docker.internal:host-gateway \--name openhands-app \docker.all-hands.dev/all-hands-ai/openhands:0.38
Click “see advanced setting” on the second line. In the new tab, toggle advanced to on. Set the custom model to be mistral/devstralq4_k_m and Base URL the api address we get from the last step in LM Studio. Set API Key to dummy. Click save changes.
llama.cpp
Download the weights from huggingface:
markdown
pip install -U "huggingface_hub[cli]"huggingface-cli download \"mistralai/Devstral-Small-2505_gguf" \--include "devstralQ4_K_M.gguf" \--local-dir "mistralai/Devstral-Small-2505_gguf/"
Then run Devstral using the llama.cpp CLI.
bash
./llama-cli -m Devstral-Small-2505_gguf/devstralQ4_K_M.gguf -cnv
Ollama
You can run Devstral using the Ollama CLI.
bash
ollama run devstral
Example: Understanding Test Coverage of Mistral Common
We can start the OpenHands scaffold and link it to a repo to analyze test coverage and identify badly covered files.
Here we start with our public mistral-common repo.
After the repo is mounted in the workspace, we give the following instruction
markdown
Check the test coverage of the repo and then create a visualization of test coverage. Try plotting a few different types of graphs and save them to a png.
The agent will first browse the code base to check test configuration and structure.

Then it sets up the testing dependencies and launches the coverage test:

Finally, the agent writes necessary code to visualize the coverage.

At the end of the run, the following plots are produced:

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