import os import sys import numpy as np """ Common constant variable """ TARGET_COLUMN = "Result" PIPELINE_NAME: str= "NetworkSecurity" ARTIFACT_DIR: str = "Artifacts" FILE_NAME: str = "phisingData.csv" TRAIN_FILE_NAME: str = "train.csv" TEST_FILE_NAME: str = "test.csv" SCHEMA_FILE_PATH = os.path.join("data_schema", "schema.yaml") SAVED_MODEL_DIR = os.path.join("saved_models") MODEL_FILE_NAME = "model.pkl" """ Data ingestion variable """ DATA_INGESTION_COLLECTION_NAME: str= "phising_data" DATA_INGESTION_DATBASE_NANE: str= "Network_data" DATA_INGESTION_DIR_NAME:str = "data_ingestion" DATA_INGESTION_FEATURE_STORE_DIR: str = "feature_store" DATA_INGESTION_INGESTED_DIR: str = "ingested" DATA_INGESTION_TRAIN_TEST_SPLIT_RATION: float = 0.2 """ Data validation realated constant start with DATA_VALIDATION VAR NAME """ DATA_VALIDATION_DIR_NAMR:str = "data_validation" DATA_VALIDATION_VALID_DIR: str = "validated" DATA_VALIDATION_INVALID_DIR: str = "invalid" DATA_VALIDATION_DRIFT_REPORT_DIR: str = "drift_report" DATA_VALIDATION_DRIFT_REPORT_FILE_NAME: str = "report.yaml" """ Data transformation realated constant start with DATA_TRANSFORMATION VAR NAME """ DATA_TRANSFORMATION_DIR_NAME: str = "data_transformation" DATA_TRANSFORMATION_TRANSFORMED_DIR_NAME: str = "transformed" DATA_TRANSFORMATION_TRANSFORMED_OBJECT_DIR:str = "transformed_object" PREPROCESSING_OBJECT_FILE_NAME:str = "preprocessing.pkl" # using knn imputer DATA_TRANSFORMATION_IMPUTER_PARAMS: dict = { "missing_values": np.nan, "n_neighbors" : 3, "weights" : "uniform" } """ Model trainer realated constant start with DATA_TRANSFORMATION VAR NAME """ MODEL_TRAINER_DIR_NAME: str = "model_trainer" MODEL_TRAINER_MODEL_DIR:str = "trained_model" MODEL_TRAINER_MODEL_NAME:str = "model.pkl" MODEL_TRAINER_EXPECTED_SCORE: float = 0.6 MODEL_TRAINER_OVERFITTING_UNDERFITTING_THRESHOLD: float = 0.05 TRAINING_BUCKET_NAME = "networksecuritymodelbucket"