ray/rllib/models/preprocessors.py

287 lines
9.2 KiB
Python
Raw Normal View History

from collections import OrderedDict
import cv2
import logging
import numpy as np
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
import gym
from ray.rllib.utils.annotations import override, PublicAPI
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
ATARI_OBS_SHAPE = (210, 160, 3)
ATARI_RAM_OBS_SHAPE = (128, )
VALIDATION_INTERVAL = 100
logger = logging.getLogger(__name__)
@PublicAPI
class Preprocessor:
"""Defines an abstract observation preprocessor function.
Attributes:
shape (obj): Shape of the preprocessed output.
"""
@PublicAPI
def __init__(self, obs_space, options=None):
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
legacy_patch_shapes(obs_space)
self._obs_space = obs_space
if not options:
from ray.rllib.models.catalog import MODEL_DEFAULTS
self._options = MODEL_DEFAULTS.copy()
else:
self._options = options
self.shape = self._init_shape(obs_space, self._options)
self._size = int(np.product(self.shape))
self._i = 0
@PublicAPI
def _init_shape(self, obs_space, options):
"""Returns the shape after preprocessing."""
raise NotImplementedError
@PublicAPI
def transform(self, observation):
"""Returns the preprocessed observation."""
raise NotImplementedError
def write(self, observation, array, offset):
"""Alternative to transform for more efficient flattening."""
array[offset:offset + self._size] = self.transform(observation)
def check_shape(self, observation):
"""Checks the shape of the given observation."""
if self._i % VALIDATION_INTERVAL == 0:
if type(observation) is list and isinstance(
self._obs_space, gym.spaces.Box):
observation = np.array(observation)
try:
if not self._obs_space.contains(observation):
raise ValueError(
"Observation outside expected value range",
self._obs_space, observation)
except AttributeError:
raise ValueError(
"Observation for a Box/MultiBinary/MultiDiscrete space "
"should be an np.array, not a Python list.", observation)
self._i += 1
@property
@PublicAPI
def size(self):
return self._size
@property
@PublicAPI
def observation_space(self):
2019-10-04 09:28:06 -07:00
obs_space = gym.spaces.Box(-1., 1., self.shape, dtype=np.float32)
# Stash the unwrapped space so that we can unwrap dict and tuple spaces
# automatically in model.py
if (isinstance(self, TupleFlatteningPreprocessor)
or isinstance(self, DictFlatteningPreprocessor)):
obs_space.original_space = self._obs_space
return obs_space
class GenericPixelPreprocessor(Preprocessor):
"""Generic image preprocessor.
Note: for Atari games, use config {"preprocessor_pref": "deepmind"}
instead for deepmind-style Atari preprocessing.
"""
@override(Preprocessor)
def _init_shape(self, obs_space, options):
self._grayscale = options.get("grayscale")
self._zero_mean = options.get("zero_mean")
self._dim = options.get("dim")
if self._grayscale:
shape = (self._dim, self._dim, 1)
else:
shape = (self._dim, self._dim, 3)
return shape
@override(Preprocessor)
def transform(self, observation):
"""Downsamples images from (210, 160, 3) by the configured factor."""
self.check_shape(observation)
scaled = observation[25:-25, :, :]
if self._dim < 84:
scaled = cv2.resize(scaled, (84, 84))
# OpenAI: Resize by half, then down to 42x42 (essentially mipmapping).
# If we resize directly we lose pixels that, when mapped to 42x42,
# aren't close enough to the pixel boundary.
scaled = cv2.resize(scaled, (self._dim, self._dim))
if self._grayscale:
scaled = scaled.mean(2)
scaled = scaled.astype(np.float32)
# Rescale needed for maintaining 1 channel
scaled = np.reshape(scaled, [self._dim, self._dim, 1])
if self._zero_mean:
scaled = (scaled - 128) / 128
else:
scaled *= 1.0 / 255.0
return scaled
class AtariRamPreprocessor(Preprocessor):
@override(Preprocessor)
def _init_shape(self, obs_space, options):
return (128, )
@override(Preprocessor)
def transform(self, observation):
self.check_shape(observation)
return (observation - 128) / 128
class OneHotPreprocessor(Preprocessor):
@override(Preprocessor)
def _init_shape(self, obs_space, options):
return (self._obs_space.n, )
@override(Preprocessor)
def transform(self, observation):
self.check_shape(observation)
arr = np.zeros(self._obs_space.n)
arr[observation] = 1
return arr
@override(Preprocessor)
def write(self, observation, array, offset):
array[offset + observation] = 1
class NoPreprocessor(Preprocessor):
@override(Preprocessor)
def _init_shape(self, obs_space, options):
return self._obs_space.shape
@override(Preprocessor)
def transform(self, observation):
self.check_shape(observation)
return observation
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
@override(Preprocessor)
def write(self, observation, array, offset):
array[offset:offset + self._size] = np.array(
observation, copy=False).ravel()
2019-10-04 09:28:06 -07:00
@property
@override(Preprocessor)
def observation_space(self):
return self._obs_space
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
class TupleFlatteningPreprocessor(Preprocessor):
"""Preprocesses each tuple element, then flattens it all into a vector.
RLlib models will unpack the flattened output before _build_layers_v2().
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
"""
@override(Preprocessor)
def _init_shape(self, obs_space, options):
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
assert isinstance(self._obs_space, gym.spaces.Tuple)
size = 0
self.preprocessors = []
for i in range(len(self._obs_space.spaces)):
space = self._obs_space.spaces[i]
logger.debug("Creating sub-preprocessor for {}".format(space))
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
preprocessor = get_preprocessor(space)(space, self._options)
self.preprocessors.append(preprocessor)
size += preprocessor.size
return (size, )
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
@override(Preprocessor)
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
def transform(self, observation):
self.check_shape(observation)
array = np.zeros(self.shape)
self.write(observation, array, 0)
return array
@override(Preprocessor)
def write(self, observation, array, offset):
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
assert len(observation) == len(self.preprocessors), observation
for o, p in zip(observation, self.preprocessors):
p.write(o, array, offset)
offset += p.size
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
class DictFlatteningPreprocessor(Preprocessor):
"""Preprocesses each dict value, then flattens it all into a vector.
RLlib models will unpack the flattened output before _build_layers_v2().
"""
@override(Preprocessor)
def _init_shape(self, obs_space, options):
assert isinstance(self._obs_space, gym.spaces.Dict)
size = 0
self.preprocessors = []
for space in self._obs_space.spaces.values():
logger.debug("Creating sub-preprocessor for {}".format(space))
preprocessor = get_preprocessor(space)(space, self._options)
self.preprocessors.append(preprocessor)
size += preprocessor.size
return (size, )
@override(Preprocessor)
def transform(self, observation):
self.check_shape(observation)
array = np.zeros(self.shape)
self.write(observation, array, 0)
return array
@override(Preprocessor)
def write(self, observation, array, offset):
if not isinstance(observation, OrderedDict):
2019-11-16 10:02:58 -08:00
observation = OrderedDict(sorted(observation.items()))
assert len(observation) == len(self.preprocessors), \
(len(observation), len(self.preprocessors))
for o, p in zip(observation.values(), self.preprocessors):
p.write(o, array, offset)
offset += p.size
@PublicAPI
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
def get_preprocessor(space):
"""Returns an appropriate preprocessor class for the given space."""
legacy_patch_shapes(space)
obs_shape = space.shape
if isinstance(space, gym.spaces.Discrete):
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
preprocessor = OneHotPreprocessor
elif obs_shape == ATARI_OBS_SHAPE:
preprocessor = GenericPixelPreprocessor
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
elif obs_shape == ATARI_RAM_OBS_SHAPE:
preprocessor = AtariRamPreprocessor
elif isinstance(space, gym.spaces.Tuple):
preprocessor = TupleFlatteningPreprocessor
elif isinstance(space, gym.spaces.Dict):
preprocessor = DictFlatteningPreprocessor
[carla] [rllib] Add support for carla nav planner and scenarios from paper (#1382) * wip * Sat Dec 30 15:07:28 PST 2017 * log video * video doesn't work well * scenario integration * Sat Dec 30 17:30:22 PST 2017 * Sat Dec 30 17:31:05 PST 2017 * Sat Dec 30 17:31:32 PST 2017 * Sat Dec 30 17:32:16 PST 2017 * Sat Dec 30 17:34:11 PST 2017 * Sat Dec 30 17:34:50 PST 2017 * Sat Dec 30 17:35:34 PST 2017 * Sat Dec 30 17:38:49 PST 2017 * Sat Dec 30 17:40:39 PST 2017 * Sat Dec 30 17:43:00 PST 2017 * Sat Dec 30 17:43:04 PST 2017 * Sat Dec 30 17:45:56 PST 2017 * Sat Dec 30 17:46:26 PST 2017 * Sat Dec 30 17:47:02 PST 2017 * Sat Dec 30 17:51:53 PST 2017 * Sat Dec 30 17:52:54 PST 2017 * Sat Dec 30 17:56:43 PST 2017 * Sat Dec 30 18:27:07 PST 2017 * Sat Dec 30 18:27:52 PST 2017 * fix train * Sat Dec 30 18:41:51 PST 2017 * Sat Dec 30 18:54:11 PST 2017 * Sat Dec 30 18:56:22 PST 2017 * Sat Dec 30 19:05:04 PST 2017 * Sat Dec 30 19:05:23 PST 2017 * Sat Dec 30 19:11:53 PST 2017 * Sat Dec 30 19:14:31 PST 2017 * Sat Dec 30 19:16:20 PST 2017 * Sat Dec 30 19:18:05 PST 2017 * Sat Dec 30 19:18:45 PST 2017 * Sat Dec 30 19:22:44 PST 2017 * Sat Dec 30 19:24:41 PST 2017 * Sat Dec 30 19:26:57 PST 2017 * Sat Dec 30 19:40:37 PST 2017 * wip models * reward bonus * test prep * Sun Dec 31 18:45:25 PST 2017 * Sun Dec 31 18:58:28 PST 2017 * Sun Dec 31 18:59:34 PST 2017 * Sun Dec 31 19:03:33 PST 2017 * Sun Dec 31 19:05:05 PST 2017 * Sun Dec 31 19:09:25 PST 2017 * fix train * kill * add tuple preprocessor * Sun Dec 31 20:38:33 PST 2017 * Sun Dec 31 22:51:24 PST 2017 * Sun Dec 31 23:14:13 PST 2017 * Sun Dec 31 23:16:04 PST 2017 * Mon Jan 1 00:08:35 PST 2018 * Mon Jan 1 00:10:48 PST 2018 * Mon Jan 1 01:08:31 PST 2018 * Mon Jan 1 14:45:44 PST 2018 * Mon Jan 1 14:54:56 PST 2018 * Mon Jan 1 17:29:29 PST 2018 * switch to euclidean dists * Mon Jan 1 17:39:27 PST 2018 * Mon Jan 1 17:41:47 PST 2018 * Mon Jan 1 17:44:18 PST 2018 * Mon Jan 1 17:47:09 PST 2018 * Mon Jan 1 20:31:02 PST 2018 * Mon Jan 1 20:39:33 PST 2018 * Mon Jan 1 20:40:55 PST 2018 * Mon Jan 1 20:55:06 PST 2018 * Mon Jan 1 21:05:52 PST 2018 * fix env path * merge richards fix * fix hash * Mon Jan 1 22:04:00 PST 2018 * Mon Jan 1 22:25:29 PST 2018 * Mon Jan 1 22:30:42 PST 2018 * simplified reward function * add framestack * add env configs * simplify speed reward * Tue Jan 2 17:36:15 PST 2018 * Tue Jan 2 17:49:16 PST 2018 * Tue Jan 2 18:10:38 PST 2018 * add lane keeping simple mode * Tue Jan 2 20:25:26 PST 2018 * Tue Jan 2 20:30:30 PST 2018 * Tue Jan 2 20:33:26 PST 2018 * Tue Jan 2 20:41:42 PST 2018 * ppo lane keep * simplify discrete actions * Tue Jan 2 21:41:05 PST 2018 * Tue Jan 2 21:49:03 PST 2018 * Tue Jan 2 22:12:23 PST 2018 * Tue Jan 2 22:14:42 PST 2018 * Tue Jan 2 22:20:59 PST 2018 * Tue Jan 2 22:23:43 PST 2018 * Tue Jan 2 22:26:27 PST 2018 * Tue Jan 2 22:27:20 PST 2018 * Tue Jan 2 22:44:00 PST 2018 * Tue Jan 2 22:57:58 PST 2018 * Tue Jan 2 23:08:51 PST 2018 * Tue Jan 2 23:11:32 PST 2018 * update dqn reward * Thu Jan 4 12:29:40 PST 2018 * Thu Jan 4 12:30:26 PST 2018 * Update train_dqn.py * fix
2018-01-05 21:32:41 -08:00
else:
preprocessor = NoPreprocessor
return preprocessor
def legacy_patch_shapes(space):
"""Assigns shapes to spaces that don't have shapes.
This is only needed for older gym versions that don't set shapes properly
for Tuple and Discrete spaces.
"""
if not hasattr(space, "shape"):
if isinstance(space, gym.spaces.Discrete):
space.shape = ()
elif isinstance(space, gym.spaces.Tuple):
shapes = []
for s in space.spaces:
shape = legacy_patch_shapes(s)
shapes.append(shape)
space.shape = tuple(shapes)
return space.shape