from typing import Dict from openenv.core import EnvClient from openenv.core.client_types import StepResult from openenv.core.env_server.types import State try: from .models import TICEAction, TICEObservation except (ImportError, ModuleNotFoundError): from models import TICEAction, TICEObservation class TICEEnv(EnvClient[TICEAction, TICEObservation, State]): def _step_payload(self, action: TICEAction) -> Dict: return action.model_dump(exclude_none=True) def _parse_result(self, payload: Dict) -> StepResult[TICEObservation]: obs_data = payload.get("observation", {}) observation = TICEObservation( tumor_trend=obs_data.get("tumor_trend", "stable"), detection_signal=obs_data.get("detection_signal", 0.0), t_cell_effectiveness=obs_data.get("t_cell_effectiveness", "low"), resource_level=obs_data.get("resource_level", "moderate"), b_cell_fatigue=obs_data.get("b_cell_fatigue", 0.0), t_cell_fatigue=obs_data.get("t_cell_fatigue", 0.0), recent_outcome=obs_data.get("recent_outcome", "no_effect"), timestep=obs_data.get("timestep", 0), episode_phase=obs_data.get("episode_phase", "early"), archetype=obs_data.get("archetype", ""), difficulty=obs_data.get("difficulty", ""), feedback=obs_data.get("feedback", ""), done=payload.get("done", obs_data.get("done", False)), reward=payload.get("reward", obs_data.get("reward", 0.0)), metadata=obs_data.get("metadata", {}), ) return StepResult( observation=observation, 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), ) TiceEnv = TICEEnv