mirror of
https://github.com/Steffo99/unimore-bda-6.git
synced 2024-11-25 01:04:19 +00:00
stuff's working
This commit is contained in:
parent
c31743f066
commit
4d6c8f0fee
10 changed files with 230 additions and 87 deletions
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@ -5,9 +5,9 @@
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<option name="PARENT_ENVS" value="true" />
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<envs>
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<env name="CONFIRM_OVERWRITE" value="False" />
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<env name="DATA_SET_SIZE" value="2500" />
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<env name="NLTK_DATA" value="./data/nltk" />
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<env name="PYTHONUNBUFFERED" value="1" />
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<env name="TF_CPP_MIN_LOG_LEVEL" value="2" />
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<env name="WORKING_SET_SIZE" value="1000000" />
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<env name="XLA_FLAGS" value="--xla_gpu_cuda_data_dir=/opt/cuda" />
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</envs>
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@ -2,10 +2,11 @@ import logging
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import tensorflow
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from .config import config, DATA_SET_SIZE
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from .database import mongo_client_from_config, reviews_collection, sample_reviews_polar, sample_reviews_varied, store_cache, load_cache
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from .database import mongo_client_from_config, reviews_collection, sample_reviews_polar, sample_reviews_varied, store_cache, load_cache, delete_cache
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from .analysis.nltk_sentiment import NLTKSentimentAnalyzer
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from .analysis.tf_text import TensorflowSentimentAnalyzer
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from .tokenizer import NLTKWordTokenizer, PottsTokenizer, PottsTokenizerWithNegation, LowercaseTokenizer
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from .analysis.base import TrainingFailedError
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from .tokenizer import LowercaseTokenizer
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from .log import install_log_handler
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log = logging.getLogger(__name__)
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@ -17,6 +18,12 @@ def main():
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else:
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log.debug("Tensorflow successfully found GPU acceleration!")
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try:
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delete_cache("./data/training")
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delete_cache("./data/evaluation")
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except FileNotFoundError:
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pass
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for dataset_func in [sample_reviews_polar, sample_reviews_varied]:
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for SentimentAnalyzer in [TensorflowSentimentAnalyzer, NLTKSentimentAnalyzer]:
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for Tokenizer in [
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@ -25,6 +32,8 @@ def main():
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# PottsTokenizerWithNegation,
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LowercaseTokenizer,
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]:
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while True:
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try:
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tokenizer = Tokenizer()
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model = SentimentAnalyzer(tokenizer=tokenizer)
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@ -58,13 +67,15 @@ def main():
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evaluation_results = model.evaluate(evaluation_cache)
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log.info("%s", evaluation_results)
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# try:
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# print("Manual testing for %s" % model)
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# print("Input an empty string to continue to the next model.")
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# while inp := input():
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# print(model.use(inp))
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# except KeyboardInterrupt:
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# pass
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except TrainingFailedError:
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log.error("Training failed, restarting with a different dataset.")
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continue
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else:
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log.info("Training")
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break
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finally:
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delete_cache("./data/training")
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delete_cache("./data/evaluation")
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if __name__ == "__main__":
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@ -11,12 +11,13 @@ log = logging.getLogger(__name__)
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class EvaluationResults:
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correct: int
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evaluated: int
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score: float
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def __repr__(self):
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return f"<EvaluationResults: {self.correct}/{self.evaluated}, {self.correct / self.evaluated * 100:.2f}>"
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return f"<EvaluationResults: score of {self.score} out of {self.evaluated} evaluated tuples>"
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def __str__(self):
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return f"{self.correct} / {self.evaluated} - {self.correct / self.evaluated * 100:.2f} %"
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return f"{self.evaluated} evaluated, {self.correct} correct, {self.correct / self.evaluated * 100:.2} % accuracy, {self.score:.2} score, {self.score / self.evaluated * 100:.2} scoreaccuracy"
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class BaseSentimentAnalyzer(metaclass=abc.ABCMeta):
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@ -40,15 +41,18 @@ class BaseSentimentAnalyzer(metaclass=abc.ABCMeta):
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evaluated: int = 0
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correct: int = 0
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score: float = 0.0
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for review in dataset_func():
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resulting_category = self.use(review.text)
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evaluated += 1
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correct += 1 if resulting_category == review.category else 0
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score += 1 - (abs(resulting_category - review.category) / 4)
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if not evaluated % 100:
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log.debug("%d evaluated, %d correct, %0.2d %% accuracy", evaluated, correct, correct / evaluated * 100)
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temp_results = EvaluationResults(correct=correct, evaluated=evaluated, score=score)
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log.debug(f"{temp_results!s}")
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return EvaluationResults(correct=correct, evaluated=evaluated)
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return EvaluationResults(correct=correct, evaluated=evaluated, score=score)
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@abc.abstractmethod
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def use(self, text: Text) -> Category:
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@ -70,8 +74,15 @@ class NotTrainedError(Exception):
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"""
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class TrainingFailedError(Exception):
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"""
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The model wasn't able to complete the training and should not be used anymore.
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"""
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__all__ = (
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"BaseSentimentAnalyzer",
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"AlreadyTrainedError",
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"NotTrainedError",
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"TrainingFailedError",
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)
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@ -1,82 +1,119 @@
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import tensorflow
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import logging
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from ..database import Text, Category, DatasetFunc
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from ..config import DATA_SET_SIZE
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from .base import BaseSentimentAnalyzer, AlreadyTrainedError, NotTrainedError
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from ..config import TENSORFLOW_EMBEDDING_SIZE, TENSORFLOW_MAX_FEATURES, TENSORFLOW_EPOCHS
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from ..tokenizer import BaseTokenizer
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from .base import BaseSentimentAnalyzer, AlreadyTrainedError, NotTrainedError, TrainingFailedError
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log = logging.getLogger(__name__)
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class TensorflowSentimentAnalyzer(BaseSentimentAnalyzer):
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def __init__(self, *args, **kwargs):
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def __init__(self, tokenizer: BaseTokenizer):
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super().__init__()
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self.trained: bool = False
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self.text_vectorization_layer: tensorflow.keras.layers.TextVectorization = self._build_vectorizer()
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self.text_vectorization_layer: tensorflow.keras.layers.TextVectorization = self._build_vectorizer(tokenizer)
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self.model: tensorflow.keras.Sequential = self._build_model()
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self.history: tensorflow.keras.callbacks.History | None = None
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def _build_dataset(self, dataset_func: DatasetFunc) -> tensorflow.data.Dataset:
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@staticmethod
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def _build_dataset(dataset_func: DatasetFunc) -> tensorflow.data.Dataset:
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def dataset_func_with_tensor_tuple():
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for review in dataset_func():
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yield review.to_tensor_tuple()
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return tensorflow.data.Dataset.from_generator(
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log.debug("Creating dataset...")
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dataset = tensorflow.data.Dataset.from_generator(
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dataset_func_with_tensor_tuple,
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output_signature=(
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tensorflow.TensorSpec(shape=(), dtype=tensorflow.string, name="text"),
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tensorflow.TensorSpec(shape=(5,), dtype=tensorflow.float32, name="category"),
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tensorflow.TensorSpec(shape=(1, 5,), dtype=tensorflow.float32, name="category"),
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)
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)
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def _build_model(self) -> tensorflow.keras.Sequential:
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return tensorflow.keras.Sequential([
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log.debug("Caching dataset...")
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dataset = dataset.cache()
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log.debug("Configuring dataset prefetch...")
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dataset = dataset.prefetch(buffer_size=tensorflow.data.AUTOTUNE)
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return dataset
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@staticmethod
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def _build_model() -> tensorflow.keras.Sequential:
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log.debug("Creating %s model...", tensorflow.keras.Sequential)
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model = tensorflow.keras.Sequential([
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tensorflow.keras.layers.Embedding(
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input_dim=self.MAX_FEATURES + 1,
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output_dim=self.EMBEDDING_DIM,
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input_dim=TENSORFLOW_MAX_FEATURES.__wrapped__ + 1,
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output_dim=TENSORFLOW_EMBEDDING_SIZE.__wrapped__,
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),
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# tensorflow.keras.layers.Dropout(0.2),
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tensorflow.keras.layers.Dropout(0.2),
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tensorflow.keras.layers.GlobalAveragePooling1D(),
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# tensorflow.keras.layers.Dropout(0.2),
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tensorflow.keras.layers.Dropout(0.2),
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tensorflow.keras.layers.Dense(5, activation="softmax"),
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])
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log.debug("Compiling model: %s", model)
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model.compile(
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optimizer=tensorflow.keras.optimizers.Adam(global_clipnorm=1.0),
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loss=tensorflow.keras.losses.CategoricalCrossentropy(),
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metrics=[
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tensorflow.keras.metrics.CategoricalAccuracy(),
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]
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)
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log.debug("Compiled model: %s", model)
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return model
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def _build_vectorizer(self) -> tensorflow.keras.layers.TextVectorization:
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return tensorflow.keras.layers.TextVectorization(max_tokens=self.MAX_FEATURES)
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def __vectorize_data(self, text, category):
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text = tensorflow.expand_dims(text, -1) # TODO: ??????
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return self.text_vectorization_layer(text), category
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MAX_FEATURES = 2500
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EMBEDDING_DIM = 24
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"""
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Count of possible "semantic meanings" of words, represented as dimensions of a tensor.
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"""
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EPOCHS = 3
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@staticmethod
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def _build_vectorizer(tokenizer: BaseTokenizer) -> tensorflow.keras.layers.TextVectorization:
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return tensorflow.keras.layers.TextVectorization(
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standardize=tokenizer.tokenize_tensorflow,
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max_tokens=TENSORFLOW_MAX_FEATURES.__wrapped__
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)
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def train(self, dataset_func: DatasetFunc) -> None:
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if self.trained:
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log.error("Tried to train an already trained model.")
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raise AlreadyTrainedError()
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log.debug("Building dataset...")
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training_set = self._build_dataset(dataset_func)
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log.debug("Built dataset: %s", training_set)
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log.debug("Preparing training_set for %s...", self.text_vectorization_layer.adapt)
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only_text_set = training_set.map(lambda text, category: text)
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log.debug("Adapting text_vectorization_layer: %s", self.text_vectorization_layer)
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self.text_vectorization_layer.adapt(only_text_set)
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training_set = training_set.map(self.__vectorize_data)
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log.debug("Adapted text_vectorization_layer: %s", self.text_vectorization_layer)
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# self.model.compile(loss=tensorflow.keras.losses.SparseCategoricalCrossentropy(from_logits=True), optimizer="adam", metrics=["accuracy"])
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self.model.compile(loss=tensorflow.keras.losses.MeanAbsoluteError(), optimizer="adam", metrics=["accuracy"])
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log.debug("Preparing training_set for %s...", self.model.fit)
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training_set = training_set.map(lambda text, category: (self.text_vectorization_layer(text), category))
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log.info("Training: %s", self.model)
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self.history: tensorflow.keras.callbacks.History | None = self.model.fit(
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training_set,
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epochs=TENSORFLOW_EPOCHS.__wrapped__,
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callbacks=[
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tensorflow.keras.callbacks.TerminateOnNaN()
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])
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log.info("Trained: %s", self.model)
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self.model.fit(training_set, epochs=self.EPOCHS)
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if len(self.history.epoch) < TENSORFLOW_EPOCHS.__wrapped__:
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log.error("Model %s training failed: only %d epochs computed", self.model, len(self.history.epoch))
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raise TrainingFailedError()
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else:
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log.info("Model %s training succeeded!", self.model)
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self.trained = True
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def use(self, text: Text) -> Category:
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if not self.trained:
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log.error("Tried to use a non-trained model.")
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raise NotTrainedError()
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vector = self.text_vectorization_layer(tensorflow.expand_dims(text, -1))
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vector = self.text_vectorization_layer(text)
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prediction = self.model.predict(vector)
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prediction = self.model.predict(vector, verbose=False)
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max_i = None
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max_p = None
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@ -84,5 +121,6 @@ class TensorflowSentimentAnalyzer(BaseSentimentAnalyzer):
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if max_p is None or p > max_p:
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max_i = i
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max_p = p
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result = float(max_i) + 1.0
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return float(max_i) + 1.0
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return result
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@ -49,10 +49,55 @@ def DATA_SET_SIZE(val: str | None) -> int:
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"""
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The number of reviews from each category to fetch for the datasets.
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Defaults to `1000`.
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Defaults to `1750`.
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"""
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if val is None:
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return 1000
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return 1750
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try:
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return int(val)
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except ValueError:
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raise cfig.InvalidValueError("Not an int.")
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@config.optional()
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def TENSORFLOW_MAX_FEATURES(val: str | None) -> int:
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"""
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The maximum number of features to use in Tensorflow models.
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Defaults to `30000`.
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"""
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if val is None:
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return 30000
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try:
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return int(val)
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except ValueError:
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raise cfig.InvalidValueError("Not an int.")
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@config.optional()
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def TENSORFLOW_EMBEDDING_SIZE(val: str | None) -> int:
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"""
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The size of the embeddings tensor to use in Tensorflow models.
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Defaults to `12`.
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"""
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if val is None:
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return 12
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try:
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return int(val)
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except ValueError:
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raise cfig.InvalidValueError("Not an int.")
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@config.optional()
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def TENSORFLOW_EPOCHS(val: str | None) -> int:
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"""
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The number of epochs to train Tensorflow models for.
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Defaults to `15`.
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"""
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if val is None:
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return 15
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try:
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return int(val)
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except ValueError:
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@ -65,6 +110,9 @@ __all__ = (
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"MONGO_PORT",
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"WORKING_SET_SIZE",
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"DATA_SET_SIZE",
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"TENSORFLOW_MAX_FEATURES",
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"TENSORFLOW_EMBEDDING_SIZE",
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"TENSORFLOW_EPOCHS",
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)
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|
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@ -36,7 +36,7 @@ def store_cache(reviews: t.Iterator[Review], path: str | pathlib.Path) -> None:
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def load_cache(path: str | pathlib.Path) -> DatasetFunc:
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"""
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Load the contents of a directory
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Load the contents of a directory into a `Review` iterator.
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"""
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path = pathlib.Path(path)
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@ -47,8 +47,10 @@ def load_cache(path: str | pathlib.Path) -> DatasetFunc:
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document_paths = path.iterdir()
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for document_path in document_paths:
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document_path = pathlib.Path(document_path)
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if not str(document_path).endswith(".pickle"):
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log.debug("Ignoring non-pickle file: %s", document_path)
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continue
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log.debug("Loading pickle file: %s", document_path)
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with open(document_path, "rb") as file:
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@ -58,8 +60,22 @@ def load_cache(path: str | pathlib.Path) -> DatasetFunc:
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return data_cache_loader
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def delete_cache(path: str | pathlib.Path) -> None:
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"""
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Delete the given cache directory.
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"""
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path = pathlib.Path(path)
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if not path.exists():
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raise FileNotFoundError("The specified path does not exist.")
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log.warning("Deleting cache directory: %s", path)
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shutil.rmtree(path)
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__all__ = (
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"DatasetFunc",
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"store_cache",
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"load_cache",
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"delete_cache",
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)
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|
|
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@ -1,4 +1,3 @@
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import contextlib
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import pymongo.collection
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import typing as t
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import bson
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@ -30,8 +29,8 @@ def reviews_collection(db: pymongo.MongoClient) -> pymongo.collection.Collection
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Create a new MongoDB client, access the ``reviews`` collection in the ``reviews`` database, and yield it.
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"""
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log.debug("Accessing the reviews collection...")
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collection = db.reviews.reviews
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log.debug("Collection accessed successfully: %s", collection)
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collection: pymongo.collection.Collection[MongoReview] = db.reviews.reviews
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log.debug("Collection accessed successfully: %s", collection.name)
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return collection
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|
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@ -1,5 +1,8 @@
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import tensorflow
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from .collections import MongoReview
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import logging
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log = logging.getLogger(__name__)
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Text = str
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@ -33,19 +36,21 @@ class Review:
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return tensorflow.convert_to_tensor(self.text, dtype=tensorflow.string)
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def to_tensor_category(self) -> tensorflow.Tensor:
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return tensorflow.convert_to_tensor([
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return tensorflow.convert_to_tensor([[
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1.0 if self.category == 1.0 else 0.0,
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1.0 if self.category == 2.0 else 0.0,
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1.0 if self.category == 3.0 else 0.0,
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1.0 if self.category == 4.0 else 0.0,
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1.0 if self.category == 5.0 else 0.0,
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], dtype=tensorflow.float32)
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]], dtype=tensorflow.float32)
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def to_tensor_tuple(self) -> tuple[tensorflow.Tensor, tensorflow.Tensor]:
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return (
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t = (
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self.to_tensor_text(),
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self.to_tensor_category(),
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)
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log.debug("Converted %s", t)
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return t
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__all__ = (
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|
|
|
@ -54,6 +54,12 @@ def sample_reviews_polar(collection: pymongo.collection.Collection, amount: int)
|
|||
{"$match": {"overall": 5.0}},
|
||||
{"$sample": {"size": amount}},
|
||||
],
|
||||
}},
|
||||
{"$addFields": {
|
||||
"sortKey": {"$rand": {}},
|
||||
}},
|
||||
{"$sort": {
|
||||
"sortKey": 1,
|
||||
}}
|
||||
])
|
||||
|
||||
|
@ -101,6 +107,12 @@ def sample_reviews_varied(collection: pymongo.collection.Collection, amount: int
|
|||
],
|
||||
}}
|
||||
],
|
||||
}},
|
||||
{"$addFields": {
|
||||
"sortKey": {"$rand": {}},
|
||||
}},
|
||||
{"$sort": {
|
||||
"sortKey": 1,
|
||||
}}
|
||||
])
|
||||
|
||||
|
|
|
@ -15,7 +15,7 @@ def install_log_handler(loggers: list[logging.Logger] = None):
|
|||
for logger in loggers:
|
||||
coloredlogs.install(
|
||||
logger=logger,
|
||||
level="INFO",
|
||||
level="DEBUG",
|
||||
fmt="{asctime} | {name:<32} | {levelname:>8} | {message}",
|
||||
style="{",
|
||||
level_styles=dict(
|
||||
|
@ -34,6 +34,9 @@ def install_log_handler(loggers: list[logging.Logger] = None):
|
|||
)
|
||||
this_log.debug("Installed custom log handler on: %s", logger)
|
||||
|
||||
logging.getLogger("unimore_bda_6.database.cache").setLevel("INFO")
|
||||
logging.getLogger("unimore_bda_6.database.datatypes").setLevel("INFO")
|
||||
|
||||
|
||||
_passage_counts = collections.defaultdict(lambda: 0)
|
||||
|
||||
|
|
Loading…
Reference in a new issue