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# coding=utf-8
"""Snacks Data Set"""

import os
import json

import datasets
from datasets.tasks import ImageClassification
from sklearn.model_selection import train_test_split

_CITATION = """
@misc{helff2023vlol,
      title={V-LoL: A Diagnostic Dataset for Visual Logical Learning}, 
      author={Lukas Helff and Wolfgang Stammer and Hikaru Shindo and Devendra Singh Dhami and Kristian Kersting},
      journal={Dataset available from https://sites.google.com/view/v-lol},
      year={2023},
      eprint={2306.07743},
      archivePrefix={arXiv},
      primaryClass={cs.AI}
}

"""

_DESCRIPTION = "This is a diagnostic dataset for visual logical learning. " \
               "It consists of 2D images of trains, where each train is either going eastbound or westbound. " \
               "The trains are composed of multiple wagons, which are composed of multiple properties. " \
               "The task is to predict the direction of the train. " \
               "The dataset is designed to test the ability of machine learning models to learn logical rules from visual input."

_HOMEPAGE = "https://huggingface.co/datasets/LukasHug/v-lol-trains/"

_LICENSE = "cc-by-4.0"
_IMAGES_URL = "https://huggingface.co/datasets/LukasHug/v-lol-trains/resolve/main/data"
_DIR = _IMAGES_URL
# _URL_DATA = {
#     "V-LoL-Trains-TheoryX": f"{_DIR}/V-LoL-Trains-TheoryX.zip",
#     "V-LoL-Trains-Numerical": f"{_DIR}/V-LoL-Trains-Numerical.zip",
#     "V-LoL-Trains-Complex": f"{_DIR}/V-LoL-Trains-Complex.zip",
#     "V-LoL-Blocks-TheoryX": f"{_DIR}/V-LoL-Blocks-TheoryX.zip",
#     "V-LoL-Blocks-Numerical": f"{_DIR}/V-LoL-Blocks-Numerical.zip",
#     "V-LoL-Blocks-Complex": f"{_DIR}/V-LoL-Blocks-Complex.zip",
#     "V-LoL-Trains-TheoryX-len7": f"{_DIR}/V-LoL-Trains-TheoryX-len7.zip",
#     "V-LoL-Trains-Numerical-len7": f"{_DIR}/V-LoL-Trains-Numerical-len7.zip",
#     "V-LoL-Trains-Complex-len7": f"{_DIR}/V-LoL-Trains-Complex-len7.zip",
#     "V-LoL-Random-Blocks-TheoryX": f"{_DIR}/V-LoL-Random-Blocks-TheoryX.zip",
#     "V-LoL-Random-Trains-TheoryX": f"{_DIR}/V-LoL-Random-Trains-TheoryX.zip",
# }
_URL_DATA = {
    "V-LoL-Trains-TheoryX": f"{_DIR}/Trains_theoryx_MichalskiTrains_base_scene_len_2-4.zip",
    "V-LoL-Trains-Numerical": f"{_DIR}/Trains_numerical_MichalskiTrains_base_scene_len_2-4.zip",
    "V-LoL-Trains-Complex": f"{_DIR}/Trains_complex_MichalskiTrains_base_scene_len_2-4.zip",
    "V-LoL-Blocks-TheoryX": f"{_DIR}/SimpleObjects_theoryx_MichalskiTrains_base_scene_len_2-4.zip",
    "V-LoL-Blocks-Numerical": f"{_DIR}/SimpleObjects_numerical_MichalskiTrains_base_scene_len_2-4.zip",
    "V-LoL-Blocks-Complex": f"{_DIR}/SimpleObjects_complex_MichalskiTrains_base_scene_len_2-4.zip",
    "V-LoL-Trains-TheoryX-len7":
        {'train': f"{_DIR}/Trains_theoryx_MichalskiTrains_base_scene_len_2-4.zip",
         'test': f"{_DIR}/Trains_theoryx_MichalskiTrains_base_scene_len_7-7.zip"},
    "V-LoL-Trains-Numerical-len7":
        {'train': f"{_DIR}/Trains_numerical_MichalskiTrains_base_scene_len_2-4.zip",
         'test': f"{_DIR}/Trains_numerical_MichalskiTrains_base_scene_len_7-7.zip"},
    "V-LoL-Trains-Complex-len7":
        {'train': f"{_DIR}/Trains_complex_MichalskiTrains_base_scene_len_2-4.zip",
         'test': f"{_DIR}/Trains_complex_MichalskiTrains_base_scene_len_7-7.zip"},
    "V-LoL-Random-Blocks-TheoryX":
        {'train': f"{_DIR}/SimpleObjects_theoryx_MichalskiTrains_base_scene_len_2-4.zip",
         'test': f"{_DIR}/SimpleObjects_theoryx_RandomTrains_base_scene_len_2-4.zip"},
    "V-LoL-Random-Trains-TheoryX":
        {'train': f"{_DIR}/Trains_theoryx_MichalskiTrains_base_scene_len_2-4.zip",
         'test': f"{_DIR}/Trains_theoryx_RandomTrains_base_scene_len_2-4.zip"},
    #     "V-LoL-Trains-TheoryX-len7": f"{_DIR}/Trains_theoryx_MichalskiTrains_base_scene_len_7.zip",
    #     "V-LoL-Trains-Numerical-len7": f"{_DIR}/Trains_numerical_MichalskiTrains_base_scene_len_7.zip",
    #     "V-LoL-Trains-Complex-len7": f"{_DIR}/Trains_complex_MichalskiTrains_base_scene_len_7.zip",
    #     "V-LoL-Random-Blocks-TheoryX": f"{_DIR}/SimpleObjects_theoryx_RandomTrains_base_scene_len_2-4.zip",
    #     "V-LoL-Random-Trains-TheoryX": f"{_DIR}/Trains_theoryx_RandomTrains_base_scene_len_2-4.zip",
}

_NAMES = ["westbound", "eastbound"]
class VLoLConfig(datasets.BuilderConfig):
    """Builder Config for Food-101"""

    def __init__(self, data_url, **kwargs):
        """BuilderConfig for Food-101.
        Args:
          metadata_urls: dictionary with keys 'train' and 'validation' containing the archive metadata URLs
          **kwargs: keyword arguments forwarded to super.
        """
        super(VLoLConfig, self).__init__(version=datasets.Version("1.0.0"), **kwargs)
        if isinstance(data_url, dict):
            self.metadata_urls = data_url
        else:
            self.metadata_urls = {'train': data_url, 'test': None}


class vloltrains(datasets.GeneratorBasedBuilder):
    '''v-lol-trains Data Set'''

    BUILDER_CONFIGS = [
        VLoLConfig(
            name=name,
            description=name,
            data_url=data_url,
        ) for name, data_url in _URL_DATA.items()
    ]

    def _info(self):
        return datasets.DatasetInfo(
            description=_DESCRIPTION,
            features=datasets.Features(
                {
                    "image": datasets.Image(),
                    "label": datasets.features.ClassLabel(names=_NAMES),
                }
            ),
            supervised_keys=("image", "label"),
            homepage=_HOMEPAGE,
            citation=_CITATION,
            license=_LICENSE,
            task_templates=ImageClassification(image_column="image", label_column="label"),
        )

    def get_data(self, dl_manager, url):
        archive_path = os.path.join(dl_manager.download_and_extract(url), url.split('/')[-1].split('.')[0])
        # print containg folders
        print(os.listdir(archive_path))
        image_dir = os.path.join(archive_path, "images")
        metadata_pth = os.path.join(archive_path, "all_scenes", "all_scenes.json")
        images, y, trains, masks = [], [], [], []
        # ds settings
        # load data
        with open(metadata_pth, 'r') as f:
            all_scenes = json.load(f)
            for scene in all_scenes['scenes']:
                images.append(scene['image_filename'])
                train = scene['train']
                y.append(int(train.split(' ')[0] == 'east'))
                # depths.append(scene['depth_map_filename'])
                # if 'train' in scene:
                #     # new json data format
                #     train = scene['train']
                #     l = train.split(' ')
                #     y = l[0]
                #     y = int(l[0] == 'east')
                #     train = MichalskiTrain.from_text(train, train_vis)
                # else:
                #     # old json data format
                #     train = scene['m_train']
                #     train = jsonpickle.decode(train)
                #     # trains.append(train.replace('michalski_trains.m_train.', 'm_train.'))
                #     # text = train.to_txt()
                #     # t1 = MichalskiTrain.from_text(text, train_vis)
                # lab = int(train.get_label() == 'east')
                # y.append(lab)
                # trains.append(train)
                # masks.append(scene['car_masks'])
        return image_dir, y, images

    def _split_generators(self, dl_manager):
        """Returns SplitGenerators."""
        if self.config.metadata_urls['test'] is None:
            image_dir, y, images = self.get_data(dl_manager, self.config.metadata_urls['train'])
            image_dir_train, image_dir_test = image_dir, image_dir
            y_train, y_test, images_train, images_test = train_test_split(y, images, test_size=0.2, random_state=0)
        else:
            image_dir_train, y_train, images_train = self.get_data(dl_manager, self.config.metadata_urls['train'])
            image_dir_test, y_test, images_test = self.get_data(dl_manager, self.config.metadata_urls['test'])
        return [
            datasets.SplitGenerator(
                name=datasets.Split.TRAIN,
                gen_kwargs={"image_dir": image_dir_train, "labels": y_train, "images": images_train}
            ),
            datasets.SplitGenerator(
                name=datasets.Split.TEST,
                gen_kwargs={"image_dir": image_dir_test, "labels": y_test, "images": images_test}
            ),
        ]

    def _generate_examples(self, image_dir, labels, images):
        for i, (image, label) in enumerate(zip(images, labels)):
            yield i, {"image": os.path.join(image_dir, image), "label": label}