nyu_rot_dataset_converted_externally_to_rlds
Stay organized with collections
Save and categorize content based on your preferences.
xArm short-horizon table-top tasks
Split |
Examples |
'train' |
14 |
FeaturesDict({
'episode_metadata': FeaturesDict({
'file_path': Text(shape=(), dtype=string),
}),
'steps': Dataset({
'action': Tensor(shape=(7,), dtype=float32, description=Robot action, consists of [3x robot end effector delta positions, 3x robot end effector rotations (roll, pitch, yaw),1x gripper open/close (0-open, 1-closed)].),
'discount': Scalar(shape=(), dtype=float32, description=Discount if provided, default to 1.),
'is_first': bool,
'is_last': bool,
'is_terminal': bool,
'language_embedding': Tensor(shape=(512,), dtype=float32, description=Kona language embedding. See https://tfhub.dev/google/universal-sentence-encoder-large/5),
'language_instruction': Text(shape=(), dtype=string),
'observation': FeaturesDict({
'image': Image(shape=(84, 84, 3), dtype=uint8, description=Main camera RGB observation.),
'state': Tensor(shape=(7,), dtype=float32, description=Robot state, consists of [3x robot end effector positions, 3x robot end effector rotations (roll, pitch, yaw),1x gripper open/close (0-open, 1-closed)].),
}),
'reward': Scalar(shape=(), dtype=float32, description=Reward if provided, 1 on final step for demos.),
}),
})
Feature |
Class |
Shape |
Dtype |
Description |
|
FeaturesDict |
|
|
|
episode_metadata |
FeaturesDict |
|
|
|
episode_metadata/file_path |
Text |
|
string |
Path to the original data file. |
steps |
Dataset |
|
|
|
steps/action |
Tensor |
(7,) |
float32 |
Robot action, consists of [3x robot end effector delta positions, 3x robot end effector rotations (roll, pitch, yaw),1x gripper open/close (0-open, 1-closed)]. |
steps/discount |
Scalar |
|
float32 |
Discount if provided, default to 1. |
steps/is_first |
Tensor |
|
bool |
|
steps/is_last |
Tensor |
|
bool |
|
steps/is_terminal |
Tensor |
|
bool |
|
steps/language_embedding |
Tensor |
(512,) |
float32 |
Kona language embedding. See https://tfhub.dev/google/universal-sentence-encoder-large/5 |
steps/language_instruction |
Text |
|
string |
Language Instruction. |
steps/observation |
FeaturesDict |
|
|
|
steps/observation/image |
Image |
(84, 84, 3) |
uint8 |
Main camera RGB observation. |
steps/observation/state |
Tensor |
(7,) |
float32 |
Robot state, consists of [3x robot end effector positions, 3x robot end effector rotations (roll, pitch, yaw),1x gripper open/close (0-open, 1-closed)]. |
steps/reward |
Scalar |
|
float32 |
Reward if provided, 1 on final step for demos. |
@inproceedings{haldar2023watch,
title={Watch and match: Supercharging imitation with regularized optimal transport},
author={Haldar, Siddhant and Mathur, Vaibhav and Yarats, Denis and Pinto, Lerrel},
booktitle={Conference on Robot Learning},
pages={32--43},
year={2023},
organization={PMLR}
}
Except as otherwise noted, the content of this page is licensed under the Creative Commons Attribution 4.0 License, and code samples are licensed under the Apache 2.0 License. For details, see the Google Developers Site Policies. Java is a registered trademark of Oracle and/or its affiliates.
Last updated 2024-09-03 UTC.
[null,null,["Last updated 2024-09-03 UTC."],[],[],null,["# nyu_rot_dataset_converted_externally_to_rlds\n\n\u003cbr /\u003e\n\n- **Description**:\n\nxArm short-horizon table-top tasks\n\n- **Homepage** : \u003chttps://rot-robot.github.io/\u003e\n\n- **Source code** :\n [`tfds.robotics.rtx.NyuRotDatasetConvertedExternallyToRlds`](https://github.com/tensorflow/datasets/tree/master/tensorflow_datasets/robotics/rtx/rtx.py)\n\n- **Versions**:\n\n - **`0.1.0`** (default): Initial release.\n- **Download size** : `Unknown size`\n\n- **Dataset size** : `5.33 MiB`\n\n- **Auto-cached**\n ([documentation](https://www.tensorflow.org/datasets/performances#auto-caching)):\n Yes\n\n- **Splits**:\n\n| Split | Examples |\n|-----------|----------|\n| `'train'` | 14 |\n\n- **Feature structure**:\n\n FeaturesDict({\n 'episode_metadata': FeaturesDict({\n 'file_path': Text(shape=(), dtype=string),\n }),\n 'steps': Dataset({\n 'action': Tensor(shape=(7,), dtype=float32, description=Robot action, consists of [3x robot end effector delta positions, 3x robot end effector rotations (roll, pitch, yaw),1x gripper open/close (0-open, 1-closed)].),\n 'discount': Scalar(shape=(), dtype=float32, description=Discount if provided, default to 1.),\n 'is_first': bool,\n 'is_last': bool,\n 'is_terminal': bool,\n 'language_embedding': Tensor(shape=(512,), dtype=float32, description=Kona language embedding. See https://tfhub.dev/google/universal-sentence-encoder-large/5),\n 'language_instruction': Text(shape=(), dtype=string),\n 'observation': FeaturesDict({\n 'image': Image(shape=(84, 84, 3), dtype=uint8, description=Main camera RGB observation.),\n 'state': Tensor(shape=(7,), dtype=float32, description=Robot state, consists of [3x robot end effector positions, 3x robot end effector rotations (roll, pitch, yaw),1x gripper open/close (0-open, 1-closed)].),\n }),\n 'reward': Scalar(shape=(), dtype=float32, description=Reward if provided, 1 on final step for demos.),\n }),\n })\n\n- **Feature documentation**:\n\n| Feature | Class | Shape | Dtype | Description |\n|----------------------------|--------------|-------------|---------|-------------------------------------------------------------------------------------------------------------------------------------------------------------------|\n| | FeaturesDict | | | |\n| episode_metadata | FeaturesDict | | | |\n| episode_metadata/file_path | Text | | string | Path to the original data file. |\n| steps | Dataset | | | |\n| steps/action | Tensor | (7,) | float32 | Robot action, consists of \\[3x robot end effector delta positions, 3x robot end effector rotations (roll, pitch, yaw),1x gripper open/close (0-open, 1-closed)\\]. |\n| steps/discount | Scalar | | float32 | Discount if provided, default to 1. |\n| steps/is_first | Tensor | | bool | |\n| steps/is_last | Tensor | | bool | |\n| steps/is_terminal | Tensor | | bool | |\n| steps/language_embedding | Tensor | (512,) | float32 | Kona language embedding. See \u003chttps://tfhub.dev/google/universal-sentence-encoder-large/5\u003e |\n| steps/language_instruction | Text | | string | Language Instruction. |\n| steps/observation | FeaturesDict | | | |\n| steps/observation/image | Image | (84, 84, 3) | uint8 | Main camera RGB observation. |\n| steps/observation/state | Tensor | (7,) | float32 | Robot state, consists of \\[3x robot end effector positions, 3x robot end effector rotations (roll, pitch, yaw),1x gripper open/close (0-open, 1-closed)\\]. |\n| steps/reward | Scalar | | float32 | Reward if provided, 1 on final step for demos. |\n\n- **Supervised keys** (See\n [`as_supervised` doc](https://www.tensorflow.org/datasets/api_docs/python/tfds/load#args)):\n `None`\n\n- **Figure**\n ([tfds.show_examples](https://www.tensorflow.org/datasets/api_docs/python/tfds/visualization/show_examples)):\n Not supported.\n\n- **Examples**\n ([tfds.as_dataframe](https://www.tensorflow.org/datasets/api_docs/python/tfds/as_dataframe)):\n\nDisplay examples... \n\n- **Citation**:\n\n @inproceedings{haldar2023watch,\n title={Watch and match: Supercharging imitation with regularized optimal transport},\n author={Haldar, Siddhant and Mathur, Vaibhav and Yarats, Denis and Pinto, Lerrel},\n booktitle={Conference on Robot Learning},\n pages={32--43},\n year={2023},\n organization={PMLR}\n }"]]