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import torch | |
import pytest | |
from itertools import product | |
from ding.model.template import EDAC | |
from ding.torch_utils import is_differentiable | |
B = 4 | |
obs_shape = [4, (8, )] | |
act_shape = [3, (6, )] | |
args = list(product(*[obs_shape, act_shape])) | |
class TestEDAC: | |
def output_check(self, model, outputs): | |
if isinstance(outputs, torch.Tensor): | |
loss = outputs.sum() | |
elif isinstance(outputs, list): | |
loss = sum([t.sum() for t in outputs]) | |
elif isinstance(outputs, dict): | |
loss = sum([v.sum() for v in outputs.values()]) | |
is_differentiable(loss, model) | |
def test_EDAC(self, obs_shape, act_shape): | |
if isinstance(obs_shape, int): | |
inputs_obs = torch.randn(B, obs_shape) | |
else: | |
inputs_obs = torch.randn(B, *obs_shape) | |
if isinstance(act_shape, int): | |
inputs_act = torch.randn(B, act_shape) | |
else: | |
inputs_act = torch.randn(B, *act_shape) | |
inputs = {'obs': inputs_obs, 'action': inputs_act} | |
model = EDAC(obs_shape, act_shape, ensemble_num=2) | |
outputs_c = model(inputs, mode='compute_critic') | |
assert isinstance(outputs_c, dict) | |
assert outputs_c['q_value'].shape == (2, B) | |
self.output_check(model.critic, outputs_c) | |
if isinstance(obs_shape, int): | |
inputs = torch.randn(B, obs_shape) | |
else: | |
inputs = torch.randn(B, *obs_shape) | |
outputs_a = model(inputs, mode='compute_actor') | |
assert isinstance(outputs_a, dict) | |
if isinstance(act_shape, int): | |
assert outputs_a['logit'][0].shape == (B, act_shape) | |
assert outputs_a['logit'][1].shape == (B, act_shape) | |
elif len(act_shape) == 1: | |
assert outputs_a['logit'][0].shape == (B, *act_shape) | |
assert outputs_a['logit'][1].shape == (B, *act_shape) | |
outputs = {'mu': outputs_a['logit'][0], 'sigma': outputs_a['logit'][1]} | |
self.output_check(model.actor, outputs) | |