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import json
import random
from abc import ABC, abstractmethod
from datetime import datetime
from pathlib import Path
import joblib
import numpy as np
import tensorflow as tf
from sklearn.feature_extraction.text import TfidfVectorizer
from sklearn.linear_model import LogisticRegression
from transformers import AutoTokenizer, DataCollatorWithPadding, create_optimizer, TFAutoModelForSequenceClassification, \
KerasMetricCallback
import evaluate
from tasks.data.data_loaders import TextDataLoader
class PredictionModel(ABC):
def __init__(self, data_loader: TextDataLoader = TextDataLoader()):
self.description = ""
self.model = None
@abstractmethod
def predict(self, quote: str) -> int:
"""
Predict the label for a given quote.
Parameters:
-----------
quote: str
The quote to classify.
Returns:
--------
int
The predicted label (0-7).
"""
pass
@abstractmethod
def train(self, dataset) -> None:
"""
Train the model on a given dataset.
Parameters:
-----------
dataset:
The dataset to train on.
Returns:
--------
None
"""
pass
@abstractmethod
def save_to_directory(self, directory: Path) -> None:
pass
def save(self) -> None:
save_directory = Path(__file__).parent / "pretrained_models"
timestamp = datetime.now().strftime("%Y-%m-%d_%H-%M-%S")
sanitized_description = (((self.description.
replace(" ", "_")).
replace("(", "")).
replace(")", ""))
save_filename = f"{timestamp}_{sanitized_description}"
self.save_to_directory(save_directory / save_filename)
class BaselineModel(PredictionModel):
def __init__(self, data_loader: TextDataLoader = TextDataLoader()):
super().__init__()
self.description = "Random Baseline (with Strategy Pattern, from another module)"
def predict(self, quote: str) -> int:
return random.randint(0, 7)
def train(self, dataset):
pass
def save_to_directory(self, directory: Path) -> None:
pass
class DistilBERTModel(PredictionModel):
def __init__(self,
data_loader: TextDataLoader = TextDataLoader(),
batch_size: int = 4,
num_epochs: int = 5,
initial_learning_rate: float = 2e-5,
start_model_name: str = "distilbert-base-uncased"):
super().__init__()
self.start_model_name = start_model_name
self.description = f"DistilBERT Model (fined-tuned from {self.start_model_name})"
self.label_to_id_mapping = data_loader.get_label_to_id_mapping()
self.id_to_label_mapping = data_loader.get_id_to_label_mapping()
# tokenizer
self.tokenizer = AutoTokenizer.from_pretrained(self.start_model_name)
# data collator with dynamic padding
self.data_collator = DataCollatorWithPadding(tokenizer=self.tokenizer, return_tensors="tf")
# load accuracy metric
self.accuracy = evaluate.load("accuracy")
# training parameters
self.batch_size = batch_size
self.num_epochs = num_epochs
self.initial_learning_rate = initial_learning_rate
def predict(self, quote: str) -> int:
if self.model is None:
raise ValueError("Model has not been trained yet. Please train the model before making predictions.")
inputs = self.tokenizer(quote, return_tensors="tf", truncation=True, max_length=128)
outputs = self.model(**inputs)
logits = outputs.logits
probabilities = tf.nn.softmax(logits)
predicted_label = self.model.config.id2label[tf.argmax(probabilities, axis=1).numpy()[0]]
return self.label_to_id_mapping[predicted_label]
def train(self, dataset):
# Pre-process data
tokenized_data = self.pre_process_data(dataset)
# Training setup
batch_size = self.batch_size
num_epochs = self.num_epochs
batches_per_epoch = len(tokenized_data["train"]) // batch_size
total_train_steps = int(batches_per_epoch * num_epochs)
# Learning rate scheduler
initial_learning_rate = self.initial_learning_rate
lr_schedule = tf.keras.optimizers.schedules.PolynomialDecay(
initial_learning_rate=initial_learning_rate,
decay_steps=total_train_steps,
end_learning_rate=0.0,
power=1.0
)
# Optimizer with learning rate scheduler
optimizer, schedule = create_optimizer(init_lr=initial_learning_rate, num_warmup_steps=0,
num_train_steps=total_train_steps)
# Load model
self.model = TFAutoModelForSequenceClassification.from_pretrained(
self.start_model_name,
num_labels=8,
id2label=self.id_to_label_mapping,
label2id=self.label_to_id_mapping
)
# Convert datasets to tf.data.Dataset format
tf_train_set = self.model.prepare_tf_dataset(
tokenized_data["train"],
shuffle=True,
batch_size=batch_size,
collate_fn=self.data_collator,
)
tf_validation_set = self.model.prepare_tf_dataset(
tokenized_data["test"],
shuffle=False,
batch_size=batch_size,
collate_fn=self.data_collator,
)
# Compile model
self.model.compile(optimizer=optimizer)
# Keras metric callback
metric_callback = KerasMetricCallback(metric_fn=self.compute_metrics, eval_dataset=tf_validation_set)
# Train model
self.model.fit(tf_train_set, validation_data=tf_validation_set, epochs=num_epochs, callbacks=[metric_callback])
def pre_process_data(self, dataset):
return ((dataset.
train_test_split(test_size=0.2, seed=42).
remove_columns([col for col in dataset.column_names if col not in ["quote", "label"]])).
map(self.tokenize))
def tokenize(self, example):
return self.tokenizer(example["quote"], truncation=True, max_length=128)
def compute_metrics(self, eval_pred):
predictions, labels = eval_pred
predictions = np.argmax(predictions, axis=1)
return self.accuracy.compute(predictions=predictions, references=labels)
def save_to_directory(self, directory: Path) -> None:
self.model.save_pretrained(str(directory))
class TextEmbedder(ABC):
@abstractmethod
def encode(self, text: list[str]) -> np.ndarray[float]:
"""
Encode a list of text inputs into a numpy array.
Parameters:
-----------
text: list[str]
The text inputs to encode.
Returns:
--------
np.ndarray
The encoded text inputs.
"""
pass
def fit(self, param):
pass
@abstractmethod
def save_to_directory(self, directory: Path) -> None:
pass
class TfIdfEmbedder(TextEmbedder):
"""
A simple TF-IDF text embedder.
TF-IDF stands for Term Frequency-Inverse Document Frequency.
It can be defined as the calculation of how relevant a word
in a series or corpus is to a text. The meaning increases
proportionally to the number of times in the text a word
appears but is compensated by the word frequency in the corpus
(data-set).
Source: https://www.geeksforgeeks.org/understanding-tf-idf-term-frequency-inverse-document-frequency/
The TfidfVectorizer class from scikit-learn is used to encode
"""
def __init__(self):
self.vectorizer = TfidfVectorizer()
self._is_fitted = False # Nouveau flag
def fit(self, text: list[str]):
"""Fit the embedder to the given text."""
self.vectorizer.fit(text)
self._is_fitted = True
def encode(self, text: list[str]) -> np.ndarray[float]:
if not self._is_fitted:
raise RuntimeError("TfIdfEmbedder should be fitted before encoding text.")
return self.vectorizer.transform(text).toarray()
def save_to_directory(self, directory: Path) -> None:
directory.mkdir(parents=True, exist_ok=True)
joblib.dump(self.vectorizer, directory / "tfidf_vectorizer.joblib")
class MLModel(ABC):
@abstractmethod
def fit(self, embedded_quotes: np.ndarray[float], y: list[int]) -> None:
"""
Fit the model to the data.
Parameters:
-----------
embedded_quotes: np.ndarray
The embedded quotes, given by TextEmbedder.encode().
y: list[int]
The labels (ranging from 0 to 7).
"""
pass
@abstractmethod
def predict(self, embedded_quotes: np.ndarray[float]) -> int:
"""
Predict the labels for the given embedded quotes.
Parameters:
-----------
embedded_quotes: np.ndarray
The embedded quotes, given by TextEmbedder.encode().
Returns:
--------
int
The predicted labels (ranging from 0 to 7).
"""
pass
@abstractmethod
def save_to_directory(self, directory: Path) -> None:
pass
class MultivariateLogisticRegression(MLModel):
def __init__(self):
self.model = LogisticRegression()
def fit(self, embedded_quotes: np.ndarray[float], y: list[int]) -> None:
self.model.fit(embedded_quotes, y)
def predict(self, embedded_quotes: np.ndarray[float]) -> int:
return self.model.predict(embedded_quotes)
def save_to_directory(self, directory: Path) -> None:
directory.mkdir(parents=True, exist_ok=True)
joblib.dump(self.model, directory / "logistic_regression.joblib")
class EmbeddingMLModel(PredictionModel):
def __init__(self,
data_loader: TextDataLoader = TextDataLoader(),
embedder: TextEmbedder = TfIdfEmbedder(),
ml_model: MLModel = MultivariateLogisticRegression()):
super().__init__()
self.embedder = embedder
self.ml_model = ml_model
self.description = f"EmbeddingMLModel ({embedder.__class__.__name__} + {ml_model.__class__.__name__})"
def predict(self, quote: str) -> int:
embedded_quote = self.embedder.encode([quote])
return self.ml_model.predict(embedded_quote)
def train(self, dataset):
self.embedder.fit(dataset["quote"])
embedded_quotes = self.embedder.encode(dataset["quote"])
labels = dataset["label"]
self.ml_model.fit(embedded_quotes, labels)
def save_to_directory(self, directory: Path) -> None:
directory.mkdir(parents=True, exist_ok=True)
# save embedder and ml_model
self.embedder.save_to_directory(directory)
self.ml_model.save_to_directory(directory)
# Metadata pour le reload
metadata = {
"embedder_type": self.embedder.__class__.__name__,
"ml_model_type": self.ml_model.__class__.__name__
}
with open(directory / "metadata.json", "w") as f:
json.dump(metadata, f)
class ModelFactory:
@staticmethod
def create_model(config) -> PredictionModel:
"""
Factory method to create a model based on the model type.
Parameters:
-----------
model_type: str
The type of model to create. Options: "baseline", "distilbert"
Returns:
--------
PredictionModel
The model instance.
Raises:
-------
ValueError
If the model type is not recognized.
"""
model_type = config["model_type"]
if model_type == "baseline":
return BaselineModel()
elif model_type == "distilbert":
try:
batch_size = config["batch_size"]
num_epochs = config["num_epochs"]
initial_learning_rate = config["initial_learning_rate"]
except KeyError as e:
raise ValueError(f"Missing configuration parameter: {e}")
return DistilBERTModel(batch_size=batch_size,
num_epochs=num_epochs,
initial_learning_rate=initial_learning_rate)
elif model_type == "distilbert-pretrained":
model = DistilBERTModel()
model_name = config["model_name"]
model_path = Path(__file__).parent / "pretrained_models" / model_name
if model_path.exists():
model.model = TFAutoModelForSequenceClassification.from_pretrained(model_path)
return model
else:
raise FileNotFoundError(f"Pretrained model not found at {model_path}")
elif model_type == "embeddingML":
embedding_ml_model = EmbeddingMLModel()
embedding_ml_model.train(TextDataLoader().get_train_dataset())
return embedding_ml_model
else:
raise ValueError(f"Unknown model type: {model_type}")
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