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https://github.com/sbrl/research-rainfallradar
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Implement initial UNTESTED support for split_validation and split_test
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b2b96ab636
commit
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3 changed files with 22 additions and 10 deletions
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@ -43,6 +43,8 @@ show_help() {
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echo -e " PATH_CHECKPOINT The path to a checkpoint to load. If specified, a model will be loaded instead of being trained." >&2;
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echo -e " PATH_CHECKPOINT The path to a checkpoint to load. If specified, a model will be loaded instead of being trained." >&2;
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echo -e " LEARNING_RATE The learning rate to use. Default: 0.001." >&2;
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echo -e " LEARNING_RATE The learning rate to use. Default: 0.001." >&2;
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echo -e " UPSAMPLE How much to upsample by at the beginning of the model. A value of disables upscaling. Default: 2." >&2;
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echo -e " UPSAMPLE How much to upsample by at the beginning of the model. A value of disables upscaling. Default: 2." >&2;
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echo -e " SPLIT_VALIDATE Percentage of the available files in the dataset to be allocated to the validation split. Default: 0.2" >&2;
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echo -e " SPLIT_TEST Percentage of the available files in the dataset to be allocated to the test split. Default: 0.2" >&2;
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echo -e " STEPS_PER_EXECUTION How many steps to perform before surfacing from the GPU to e.g. do callbacks. Default: 16." >&2;
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echo -e " STEPS_PER_EXECUTION How many steps to perform before surfacing from the GPU to e.g. do callbacks. Default: 16." >&2;
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echo -e " RANDSEED The random seed to use when shuffling filepaths. Default: unset, which means use a random value." >&2;
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echo -e " RANDSEED The random seed to use when shuffling filepaths. Default: unset, which means use a random value." >&2;
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echo -e " JIT_COMPILE Set to any value to compile the model with XLA." >&2;
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echo -e " JIT_COMPILE Set to any value to compile the model with XLA." >&2;
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@ -77,7 +79,7 @@ echo -e ">>> DIR_OUTPUT: ${DIR_OUTPUT}";
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echo -e ">>> Additional args: ${ARGS}";
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echo -e ">>> Additional args: ${ARGS}";
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export PATH=$HOME/software/bin:$PATH;
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export PATH=$HOME/software/bin:$PATH;
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export IMAGE_SIZE BATCH_SIZE DIR_RAINFALLWATER PATH_HEIGHTMAP PATH_COLOURMAP STEPS_PER_EPOCH DIR_OUTPUT PATH_CHECKPOINT EPOCHS PREDICT_COUNT NO_REMOVE_ISOLATED_PIXELS LOSS LEARNING_RATE DICE_LOG_COSH WATER_THRESHOLD UPSAMPLE STEPS_PER_EXECUTION JIT_COMPILE RANDSEED PREDICT_AS_ONE;
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export IMAGE_SIZE BATCH_SIZE DIR_RAINFALLWATER PATH_HEIGHTMAP PATH_COLOURMAP STEPS_PER_EPOCH DIR_OUTPUT PATH_CHECKPOINT EPOCHS PREDICT_COUNT NO_REMOVE_ISOLATED_PIXELS LOSS LEARNING_RATE DICE_LOG_COSH WATER_THRESHOLD UPSAMPLE STEPS_PER_EXECUTION JIT_COMPILE RANDSEED PREDICT_AS_ONE SPLIT_VALIDATE SPLIT_TEST;
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echo ">>> Installing requirements";
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echo ">>> Installing requirements";
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conda run -n py38 pip install -q -r requirements.txt;
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conda run -n py38 pip install -q -r requirements.txt;
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@ -56,13 +56,13 @@ UPSAMPLE = env.read("UPSAMPLE", int, 2)
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SPLIT_VALIDATE = env.read("SPLIT_VALIDATE", float, 0.2)
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SPLIT_VALIDATE = env.read("SPLIT_VALIDATE", float, 0.2)
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SPLIT_TEST = env.read("SPLIT_TEST", float, 0)
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SPLIT_TEST = env.read("SPLIT_TEST", float, 0)
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STEPS_PER_EXECUTION = env.read("STEPS_PER_EXECUTION", int, 1)
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STEPS_PER_EXECUTION = env.read("STEPS_PER_EXECUTION", int, 1)
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JIT_COMPILE = env.read("JIT_COMPILE", bool, False)
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JIT_COMPILE = env.read("JIT_COMPILE", bool, False)
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DIR_OUTPUT = env.read("DIR_OUTPUT", str, f"output/{datetime.utcnow().date().isoformat()}_deeplabv3plus_rainfall_TEST")
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DIR_OUTPUT = env.read("DIR_OUTPUT", str, f"output/{datetime.utcnow().date().isoformat()}_deeplabv3plus_rainfall_TEST")
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PATH_CHECKPOINT = env.read("PATH_CHECKPOINT", str, None)
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PATH_CHECKPOINT = env.read("PATH_CHECKPOINT", str, None)
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PREDICT_COUNT = env.read("PREDICT_COUNT", int, 25)
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PREDICT_COUNT = env.read("PREDICT_COUNT", int, 25)
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PREDICT_AS_ONE = env.read("PREDICT_AS_ONE", bool, False)
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PREDICT_AS_ONE = env.read("PREDICT_AS_ONE", bool, False)
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# ~~~
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# ~~~
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env.val_dir_exists(os.path.join(DIR_OUTPUT, "checkpoints"), create=True)
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env.val_dir_exists(os.path.join(DIR_OUTPUT, "checkpoints"), create=True)
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@ -82,7 +82,7 @@ env.print_all(False)
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# ██████ ██ ██ ██ ██ ██ ███████ ███████ ██
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# ██████ ██ ██ ██ ██ ██ ███████ ███████ ██
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if not PREDICT_AS_ONE:
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if not PREDICT_AS_ONE:
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dataset_train, dataset_validate = dataset_mono(
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dataset_train, dataset_validate, dataset_test = dataset_mono(
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dirpath_input=DIR_RAINFALLWATER,
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dirpath_input=DIR_RAINFALLWATER,
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batch_size=BATCH_SIZE,
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batch_size=BATCH_SIZE,
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water_threshold=WATER_THRESHOLD,
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water_threshold=WATER_THRESHOLD,
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@ -91,11 +91,14 @@ if not PREDICT_AS_ONE:
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input_size="same",
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input_size="same",
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filepath_heightmap=PATH_HEIGHTMAP,
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filepath_heightmap=PATH_HEIGHTMAP,
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do_remove_isolated_pixels=REMOVE_ISOLATED_PIXELS,
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do_remove_isolated_pixels=REMOVE_ISOLATED_PIXELS,
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parallel_reads_multiplier=PARALLEL_READS
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parallel_reads_multiplier=PARALLEL_READS,
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percentage_validate=SPLIT_VALIDATE,
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percentage_test=SPLIT_TESTs
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)
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)
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logger.info("Train Dataset:", dataset_train)
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logger.info("Train Dataset:", dataset_train)
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logger.info("Validation Dataset:", dataset_validate)
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logger.info("Validation Dataset:", dataset_validate)
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logger.info("Test Dataset:", dataset_test)
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else:
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else:
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dataset_train = dataset_mono_predict(
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dataset_train = dataset_mono_predict(
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dirpath_input=DIR_RAINFALLWATER,
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dirpath_input=DIR_RAINFALLWATER,
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@ -253,6 +256,7 @@ if PATH_CHECKPOINT is None:
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logger.info(">>> Beginning training")
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logger.info(">>> Beginning training")
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history = model.fit(dataset_train,
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history = model.fit(dataset_train,
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validation_data=dataset_validate,
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validation_data=dataset_validate,
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# test_data=dataset_test, # Nope, it doesn't have a param like this so it's time to do this the *hard* way
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epochs=EPOCHS,
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epochs=EPOCHS,
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callbacks=[
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callbacks=[
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tf.keras.callbacks.CSVLogger(
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tf.keras.callbacks.CSVLogger(
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@ -395,5 +399,12 @@ if not PREDICT_AS_ONE:
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colormap,
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colormap,
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model=model
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model=model
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)
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)
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if dataset_test is not None:
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plot_predictions(
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os.path.join(DIR_OUTPUT, "predict_test_$$.png"),
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get_from_batched(dataset_test, PREDICT_COUNT),
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colormap,
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model=model
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)
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logger.info(f"Complete at {str(datetime.now().isoformat())}, elapsed {str((datetime.now() - time_start).total_seconds())} seconds")
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logger.info(f"Complete at {str(datetime.now().isoformat())}, elapsed {str((datetime.now() - time_start).total_seconds())} seconds")
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@ -160,19 +160,18 @@ def get_filepaths(dirpath_input, do_shuffle=True):
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return result
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return result
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# TODO refactor this to validate_percentage=0.2 and test_percentage=0, but DON'T FORGET TO CHECK ***ALL*** usages of this FIRST and update them afterwards!
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def dataset_mono(dirpath_input, percentage_validate=0.2, percentage_test=0, **kwargs):
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def dataset_mono(dirpath_input, validate_percentage=0.2, test_percentage=0, **kwargs):
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filepaths = get_filepaths(dirpath_input)
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filepaths = get_filepaths(dirpath_input)
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filepaths_count = len(filepaths)
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filepaths_count = len(filepaths)
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split_trainvalidate=math.floor(filepaths_count * (1-(validate_percentage+test_percentage)))
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split_trainvalidate=math.floor(filepaths_count * (1-(percentage_validate+percentage_test)))
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split_validatetest=math.floor(filepaths * (1 - test_percentage))
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split_validatetest=math.floor(filepaths * (1 - percentage_test))
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filepaths_train = filepaths[:split_trainvalidate]
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filepaths_train = filepaths[:split_trainvalidate]
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filepaths_validate = filepaths[split_trainvalidate:split_validatetest]
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filepaths_validate = filepaths[split_trainvalidate:split_validatetest]
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filepaths_test = []
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filepaths_test = []
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if test_percentage > 0:
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if percentage_test > 0:
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filepaths_test = filepaths[split_validatetest:]
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filepaths_test = filepaths[split_validatetest:]
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print("DEBUG:dataset_mono filepaths_train", filepaths_train, "filepaths_validate", filepaths_validate, "filepaths_test", filepaths_test)
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print("DEBUG:dataset_mono filepaths_train", filepaths_train, "filepaths_validate", filepaths_validate, "filepaths_test", filepaths_test)
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@ -182,7 +181,7 @@ def dataset_mono(dirpath_input, validate_percentage=0.2, test_percentage=0, **kw
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dataset_train = make_dataset(filepaths_train, metadata=metadata, **kwargs)
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dataset_train = make_dataset(filepaths_train, metadata=metadata, **kwargs)
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dataset_validate = make_dataset(filepaths_validate, metadata=metadata, **kwargs)
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dataset_validate = make_dataset(filepaths_validate, metadata=metadata, **kwargs)
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dataset_test = None
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dataset_test = None
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if test_percentage > 0:
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if percentage_test > 0:
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dataset_test = make_dataset(filepaths_test, metadata=metadata, **kwargs)
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dataset_test = make_dataset(filepaths_test, metadata=metadata, **kwargs)
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return dataset_train, dataset_validate, dataset_test #, filepaths
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return dataset_train, dataset_validate, dataset_test #, filepaths
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