Michael Panchenko 2cc34fb72b
Poetry install, remove gym, bump python (#925)
Closes #914 

Additional changes:

- Deprecate python below 11
- Remove 3rd party and throughput tests. This simplifies install and
test pipeline
- Remove gym compatibility and shimmy
- Format with 3.11 conventions. In particular, add `zip(...,
strict=True/False)` where possible

Since the additional tests and gym were complicating the CI pipeline
(flaky and dist-dependent), it didn't make sense to work on fixing the
current tests in this PR to then just delete them in the next one. So
this PR changes the build and removes these tests at the same time.
2023-09-05 14:34:23 -07:00

47 lines
1.6 KiB
Python

from typing import Any, cast
import numpy as np
from tianshou.data import Batch
from tianshou.data.batch import BatchProtocol
from tianshou.data.types import ActBatchProtocol, RolloutBatchProtocol
from tianshou.policy import BasePolicy
class RandomPolicy(BasePolicy):
"""A random agent used in multi-agent learning.
It randomly chooses an action from the legal action.
"""
def forward(
self,
batch: RolloutBatchProtocol,
state: dict | BatchProtocol | np.ndarray | None = None,
**kwargs: Any,
) -> ActBatchProtocol:
"""Compute the random action over the given batch data.
The input should contain a mask in batch.obs, with "True" to be
available and "False" to be unavailable. For example,
``batch.obs.mask == np.array([[False, True, False]])`` means with batch
size 1, action "1" is available but action "0" and "2" are unavailable.
:return: A :class:`~tianshou.data.Batch` with "act" key, containing
the random action.
.. seealso::
Please refer to :meth:`~tianshou.policy.BasePolicy.forward` for
more detailed explanation.
"""
mask = batch.obs.mask # type: ignore
logits = np.random.rand(*mask.shape)
logits[~mask] = -np.inf
result = Batch(act=logits.argmax(axis=-1))
return cast(ActBatchProtocol, result)
def learn(self, batch: RolloutBatchProtocol, *args: Any, **kwargs: Any) -> dict[str, float]:
"""Since a random agent learns nothing, it returns an empty dict."""
return {}