# Packaging & Deploying **Part 4 of 5** in the OpenEnv Getting Started Series This guide walks you through creating a custom environment using the `OpenEnv` framework and the `openenv` CLI. The CLI handles scaffolding, builds, validation, and deployment so you can stay focused on environment logic. ```{note} **New to OpenEnv?** If you're just getting started, we recommend completing the [Getting Started tutorials](index) first. They provide a conceptual introduction to OpenEnv and reinforcement learning fundamentals. This guide is for developers ready to build production-quality environments. ``` ## Quick Reference Card Already familiar with OpenEnv? Here's the 8-step process at a glance: | Step | Command / Action | Description | |------|------------------|-------------| | 1 | `openenv init my_env` | Scaffold new environment | | 2 | Edit `models.py` | Define Action & Observation dataclasses | | 3 | Edit `server/my_environment.py` | Implement `reset()` and `step()` methods | | 4 | Edit `client.py` | Implement `_step_payload()`, `_parse_result()`, `_parse_state()` | | 5 | `openenv serve` | Start local dev server for testing | | 6 | `openenv validate` | Validate environment structure | | 7 | `openenv push` | Deploy to Hugging Face Hub | | 8 | Share the URL! | Others use via `MyEnv.from_hub("you/my-env")` | ### CLI Quick Reference | Command | Description | |---------|-------------| | `openenv init NAME` | Scaffold new environment | | `openenv serve` | Start local dev server | | `openenv build` | Build Docker image | | `openenv validate --verbose` | Validate environment structure | | `openenv push` | Deploy to Hugging Face Hub | | `openenv push --repo-id NAME` | Deploy to specific repo | | `openenv push --private` | Deploy as private environment | | `openenv push --registry ghcr.io/ORG` | Push to GitHub Container Registry | ```{tip} For a hands-on tutorial that builds a complete environment step-by-step, see [Building & Sharing Environments](plot_03_building_environments) in the Getting Started series. ``` --- ## Overview A typical workflow looks like: 1. Scaffold a new environment with `openenv init`. 2. Customize your models, environment logic, and FastAPI server. 3. Implement a typed `EnvClient` (WebSocket-based for persistent sessions). 4. Configure dependencies and the Dockerfile once. 5. Use the CLI (`openenv build`, `openenv validate`, `openenv push`) to package and share your work. ```{note} These integrations are handled automatically by the `openenv` CLI when you run `openenv init`. ``` ### Prerequisites - Python 3.11+ and [`uv`](https://github.com/astral-sh/uv) for dependency locking - Docker Desktop / Docker Engine - The OpenEnv library installed: `pip install https://github.com/meta-pytorch/OpenEnv.git` ## Step-by-Step Guide Let's walk through the process of building a custom environment with OpenEnv. ### 1. Scaffold with `openenv init` ```bash # Run from anywhere – defaults to current directory openenv init my_env # Optionally choose an output directory openenv init my_env --output-dir /Users/you/envs ``` The command creates a fully-typed template with `openenv.yaml`, `pyproject.toml`, `uv.lock`, Docker assets, and stub implementations. If you're working inside this repo, move the generated folder under `envs/`. Typical layout: ``` my_env/ ├── __init__.py ├── README.md ├── client.py ├── models.py ├── openenv.yaml ├── pyproject.toml ├── uv.lock └── server/ ├── __init__.py ├── app.py ├── my_environment.py ├── requirements.txt └── Dockerfile ``` Python classes are generated for the action, observation, environment, and client. For example, you will find `MyEnvironment`, `MyAction`, `MyObservation`, and `MyEnv` (client) in the `my_env` directory based on the name you provided. The environment uses the core `State` class from `openenv.core.env_server.types`. ### 2. Define Models Edit `models.py` to describe your action and observation using Pydantic: ```python # models.py from pydantic import Field from openenv.core.env_server.types import Action, Observation class MyAction(Action): """Your custom action.""" command: str = Field(..., description="Command to execute") parameters: dict = Field(default_factory=dict, description="Command parameters") class MyObservation(Observation): """Your custom observation.""" result: str = Field(..., description="Result of the action") success: bool = Field(..., description="Whether the action succeeded") ``` ### 3. Implement Environment Logic Customize `server/my_environment.py` by extending `Environment`: ```python # server/my_environment.py from uuid import uuid4 from openenv.core.env_server.interfaces import Environment from openenv.core.env_server.types import State from models import MyAction, MyObservation class MyEnvironment(Environment): def __init__(self): self._state = State(episode_id=str(uuid4()), step_count=0) def reset(self) -> MyObservation: self._state = State(episode_id=str(uuid4()), step_count=0) return MyObservation(result="Ready", success=True, done=False, reward=0.0) def step(self, action: MyAction) -> MyObservation: # Implement your logic here self._state.step_count += 1 result = self._execute_command(action.command) return MyObservation(result=result, success=True, done=False, reward=1.0) @property def state(self) -> State: return self._state ``` ### 4. Create the FastAPI Server `server/app.py` should expose the environment through `create_app`. **Important:** You must pass a class or factory function (not an instance) to enable WebSocket-based concurrent sessions: ```python # server/app.py from openenv.core.env_server import create_app from ..models import MyAction, MyObservation from .my_environment import MyEnvironment # Pass the class (factory) - each WebSocket session gets its own instance app = create_app(MyEnvironment, MyAction, MyObservation, env_name="my_env") ``` For environments with constructor arguments, create a factory function: ```python # server/app.py import os from openenv.core.env_server import create_app from ..models import MyAction, MyObservation from .my_environment import MyEnvironment # Read config from environment variables api_key = os.getenv("MY_API_KEY") timeout = int(os.getenv("MY_TIMEOUT", "30")) def create_my_environment(): """Factory function that creates MyEnvironment with config.""" return MyEnvironment(api_key=api_key, timeout=timeout) # Pass the factory function app = create_app(create_my_environment, MyAction, MyObservation, env_name="my_env") ``` ### 5. Implement the Client `client.py` extends `EnvClient` so users can interact with your server via WebSocket for persistent sessions: ```python # client.py from openenv.core.env_client import EnvClient from openenv.core.client_types import StepResult from .models import MyAction, MyObservation, MyState class MyEnv(EnvClient[MyAction, MyObservation, MyState]): def _step_payload(self, action: MyAction) -> dict: return {"command": action.command, "parameters": action.parameters} def _parse_result(self, payload: dict) -> StepResult[MyObservation]: obs_data = payload.get("observation", {}) obs = MyObservation( result=obs_data.get("result", ""), success=obs_data.get("success", False), done=payload.get("done", False), reward=payload.get("reward"), ) return StepResult( observation=obs, reward=payload.get("reward"), done=payload.get("done", False), ) def _parse_state(self, payload: dict) -> State: return State( episode_id=payload.get("episode_id"), step_count=payload.get("step_count", 0), ) ``` The `EnvClient` maintains a persistent WebSocket connection to the server, enabling efficient multi-step interactions with lower latency compared to HTTP. Each client instance gets its own dedicated environment session on the server. ### 6. Configure Dependencies & Dockerfile The CLI template ships with `pyproject.toml` and `server/Dockerfile`. You should manage your python dependencies with `uv` or `pip` in the `pyproject.toml` file. Other dependencies should be installed in the Dockerfile. Keep building from the `openenv-base` image so shared tooling stays available:
Dockerfile ```dockerfile # Copyright (c) Meta Platforms, Inc. and affiliates. # All rights reserved. # # This source code is licensed under the BSD-style license found in the # LICENSE file in the root directory of this source tree. # Multi-stage build using openenv-base # This Dockerfile is flexible and works for both: # - In-repo environments (with local src/core) # - Standalone environments (with openenv from pip) # The build script (openenv build) handles context detection and sets appropriate build args. ARG BASE_IMAGE=openenv-base:latest FROM ${BASE_IMAGE} AS builder WORKDIR /app # Build argument to control whether we're building standalone or in-repo ARG BUILD_MODE=in-repo ARG ENV_NAME=__ENV_NAME__ # Copy environment code (always at root of build context) COPY . /app/env # For in-repo builds, openenv is already in the pyproject.toml dependencies # For standalone builds, openenv will be installed from pip via pyproject.toml WORKDIR /app/env # Install dependencies using uv sync # If uv.lock exists, use it; otherwise resolve on the fly RUN --mount=type=cache,target=/root/.cache/uv \ if [ -f uv.lock ]; then \ uv sync --frozen --no-install-project --no-editable; \ else \ uv sync --no-install-project --no-editable; \ fi RUN --mount=type=cache,target=/root/.cache/uv \ if [ -f uv.lock ]; then \ uv sync --frozen --no-editable; \ else \ uv sync --no-editable; \ fi # Final runtime stage FROM ${BASE_IMAGE} WORKDIR /app # Copy the virtual environment from builder COPY --from=builder /app/env/.venv /app/.venv # Copy the environment code COPY --from=builder /app/env /app/env # Set PATH to use the virtual environment ENV PATH="/app/.venv/bin:$PATH" # Set PYTHONPATH so imports work correctly ENV PYTHONPATH="/app/env:$PYTHONPATH" # Health check HEALTHCHECK --interval=30s --timeout=3s --start-period=5s --retries=3 \ CMD curl -f http://localhost:8000/health || exit 1 # Run the FastAPI server # The module path is constructed to work with the /app/env structure CMD ["sh", "-c", "cd /app/env && uvicorn server.app:app --host 0.0.0.0 --port 8000"] ```
If you introduced extra dependencies in the Dockerfile, you should install them in the Dockerfile before removing temp files. ### 7. Build & Validate with the CLI From the environment directory: ```bash cd envs/my_env openenv build # Builds Docker image (auto-detects context) openenv validate --verbose ``` `openenv build` understands both standalone environments and in-repo ones. Useful flags: - `--tag/-t`: override the default `openenv-` tag - `--build-arg KEY=VALUE`: pass multiple Docker build arguments - `--dockerfile` / `--context`: custom locations when experimenting - `--no-cache`: force fresh dependency installs `openenv validate` checks for required files, ensures the Dockerfile/server entrypoints function, and lists supported deployment modes. The command exits non-zero if issues are found so you can wire it into CI. ### 8. Push & Share with `openenv push` Once validation passes, the CLI can deploy directly to Hugging Face Spaces or any registry: ```bash # Push to HF Spaces (auto enables web UI and prompts for login if needed) openenv push # Push to a specific repo or namespace openenv push --repo-id my-org/my-env # Push to Docker/ghcr (interface disabled by default) openenv push --registry ghcr.io/my-org --tag my-env:latest # Customize image base or visibility openenv push --base-image ghcr.io/meta-pytorch/openenv-base:latest --private ``` Key options: - `--directory`: path to the environment (defaults to `cwd`) - `--repo-id`: explicit Hugging Face space name - `--registry`: push to Docker Hub, GHCR, etc. - `--interface/--no-interface`: toggle the optional web UI - `--base-image`: override the Dockerfile `FROM` - `--private`: mark the space as private The command validates your `openenv.yaml`, injects Hugging Face frontmatter when needed, and uploads the prepared bundle. ### 9. Automate Builds (optional) To trigger Docker builds on every push to `main`, add your environment to the matrix in `.github/workflows/docker-build.yml`: ```yaml strategy: matrix: image: - name: echo-env dockerfile: envs/echo_env/server/Dockerfile - name: chat-env dockerfile: envs/chat_env/server/Dockerfile - name: coding-env dockerfile: envs/coding_env/server/Dockerfile - name: my-env # Add your environment here dockerfile: envs/my_env/server/Dockerfile ``` ### Use Your Environment Here is a simple example of using your environment: ```python from envs.my_env import MyAction, MyEnv # Create environment from Docker image client = MyEnv.from_docker_image("my-env:latest") # Or, connect to the remote space on Hugging Face client = MyEnv.from_hub("my-org/my-env") # Or, connect to the local server client = MyEnv(base_url="http://localhost:8000") # Use context manager for automatic cleanup (recommended) with client: # Reset result = client.reset() print(result.observation.result) # "Ready" # Execute actions result = client.step(MyAction(command="test", parameters={})) print(result.observation.result) print(result.observation.success) # Get state state = client.state() print(state.episode_id) print(state.step_count) # Or manually manage the connection try: client = MyEnv(base_url="http://localhost:8000") result = client.reset() result = client.step(MyAction(command="test", parameters={})) finally: client.close() ``` ## Nice work! You've now built and used your own OpenEnv environment. Your next steps are to: - [Try out the end-to-end tutorial](https://colab.research.google.com/github/meta-pytorch/OpenEnv/blob/main/examples/OpenEnv_Tutorial.ipynb)