The source code and dockerfile for the GSW2024 AI Lab.
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from __future__ import annotations
import itertools as itt
import numpy as np
from minigrid.core.grid import Grid
from minigrid.core.mission import MissionSpace
from minigrid.core.world_object import Goal, Lava
from minigrid.minigrid_env import MiniGridEnv
class CrossingEnv(MiniGridEnv):
"""
## Description
Depending on the `obstacle_type` parameter:
- `Lava` - The agent has to reach the green goal square on the other corner
of the room while avoiding rivers of deadly lava which terminate the
episode in failure. Each lava stream runs across the room either
horizontally or vertically, and has a single crossing point which can be
safely used; Luckily, a path to the goal is guaranteed to exist. This
environment is useful for studying safety and safe exploration.
- otherwise - Similar to the `LavaCrossing` environment, the agent has to
reach the green goal square on the other corner of the room, however
lava is replaced by walls. This MDP is therefore much easier and maybe
useful for quickly testing your algorithms.
## Mission Space
Depending on the `obstacle_type` parameter:
- `Lava` - "avoid the lava and get to the green goal square"
- otherwise - "find the opening and get to the green goal square"
## Action Space
| Num | Name | Action |
|-----|--------------|--------------|
| 0 | left | Turn left |
| 1 | right | Turn right |
| 2 | forward | Move forward |
| 3 | pickup | Unused |
| 4 | drop | Unused |
| 5 | toggle | Unused |
| 6 | done | Unused |
## Observation Encoding
- Each tile is encoded as a 3 dimensional tuple:
`(OBJECT_IDX, COLOR_IDX, STATE)`
- `OBJECT_TO_IDX` and `COLOR_TO_IDX` mapping can be found in
[minigrid/minigrid.py](minigrid/minigrid.py)
- `STATE` refers to the door state with 0=open, 1=closed and 2=locked
## Rewards
A reward of '1 - 0.9 * (step_count / max_steps)' is given for success, and '0' for failure.
## Termination
The episode ends if any one of the following conditions is met:
1. The agent reaches the goal.
2. The agent falls into lava.
3. Timeout (see `max_steps`).
## Registered Configurations
S: size of the map SxS.
N: number of valid crossings across lava or walls from the starting position
to the goal
- `Lava` :
- `MiniGrid-LavaCrossingS9N1-v0`
- `MiniGrid-LavaCrossingS9N2-v0`
- `MiniGrid-LavaCrossingS9N3-v0`
- `MiniGrid-LavaCrossingS11N5-v0`
- otherwise :
- `MiniGrid-SimpleCrossingS9N1-v0`
- `MiniGrid-SimpleCrossingS9N2-v0`
- `MiniGrid-SimpleCrossingS9N3-v0`
- `MiniGrid-SimpleCrossingS11N5-v0`
"""
def __init__(
self,
size=9,
num_crossings=1,
obstacle_type=Lava,
max_steps: int | None = None,
**kwargs,
):
self.num_crossings = num_crossings
self.obstacle_type = obstacle_type
if obstacle_type == Lava:
mission_space = MissionSpace(mission_func=self._gen_mission_lava)
else:
mission_space = MissionSpace(mission_func=self._gen_mission)
if max_steps is None:
max_steps = 4 * size**2
super().__init__(
mission_space=mission_space,
grid_size=size,
see_through_walls=False, # Set this to True for maximum speed
max_steps=max_steps,
**kwargs,
)
@staticmethod
def _gen_mission_lava():
return "avoid the lava and get to the green goal square"
@staticmethod
def _gen_mission():
return "find the opening and get to the green goal square"
def _gen_grid(self, width, height):
assert width % 2 == 1 and height % 2 == 1 # odd size
# Create an empty grid
self.grid = Grid(width, height)
# Generate the surrounding walls
self.grid.wall_rect(0, 0, width, height)
# Place the agent in the top-left corner
self.agent_pos = np.array((1, 1))
self.agent_dir = 0
# Place a goal square in the bottom-right corner
self.put_obj(Goal(), width - 2, height - 2)
# Place obstacles (lava or walls)
v, h = object(), object() # singleton `vertical` and `horizontal` objects
# Lava rivers or walls specified by direction and position in grid
rivers = [(v, i) for i in range(2, height - 2, 2)]
rivers += [(h, j) for j in range(2, width - 2, 2)]
self.np_random.shuffle(rivers)
rivers = rivers[: self.num_crossings] # sample random rivers
rivers_v = sorted(pos for direction, pos in rivers if direction is v)
rivers_h = sorted(pos for direction, pos in rivers if direction is h)
obstacle_pos = itt.chain(
itt.product(range(1, width - 1), rivers_h),
itt.product(rivers_v, range(1, height - 1)),
)
for i, j in obstacle_pos:
self.put_obj(self.obstacle_type(), i, j)
# Sample path to goal
path = [h] * len(rivers_v) + [v] * len(rivers_h)
self.np_random.shuffle(path)
# Create openings
limits_v = [0] + rivers_v + [height - 1]
limits_h = [0] + rivers_h + [width - 1]
room_i, room_j = 0, 0
for direction in path:
if direction is h:
i = limits_v[room_i + 1]
j = self.np_random.choice(
range(limits_h[room_j] + 1, limits_h[room_j + 1])
)
room_i += 1
elif direction is v:
i = self.np_random.choice(
range(limits_v[room_i] + 1, limits_v[room_i + 1])
)
j = limits_h[room_j + 1]
room_j += 1
else:
assert False
self.grid.set(i, j, None)
self.mission = (
"avoid the lava and get to the green goal square"
if self.obstacle_type == Lava
else "find the opening and get to the green goal square"
)