import typing as t import pymongo import pymongo.collection import contextlib import bson from .config import MONGO_HOST, MONGO_PORT class Review(t.TypedDict): _id: bson.ObjectId reviewerID: str asin: str reviewerName: str helpful: tuple[int, int] reviewText: str overall: float summary: str unixReviewTime: int reviewTime: str @contextlib.contextmanager def mongo_client_from_config() -> t.ContextManager[pymongo.MongoClient]: """ Create a new MongoDB client and yield it. """ client = pymongo.MongoClient( host=MONGO_HOST.__resolved__, port=MONGO_PORT.__resolved__, ) yield client client.close() @contextlib.contextmanager def mongo_reviews_collection_from_config() -> pymongo.collection.Collection[Review]: """ Create a new MongoDB client, access the ``reviews`` collection in the ``reviews`` database, and yield it. """ with mongo_client_from_config() as db: yield db.reviews.reviews def sample_reviews(reviews: pymongo.collection.Collection, amount: int) -> t.Iterable[Review]: """ Get ``amount`` random reviews from the ``reviews`` collection. """ return reviews.aggregate([ {"$sample": {"size": amount}} ]) def sample_reviews_by_rating(reviews: pymongo.collection.Collection, rating: float, amount: int) -> t.Iterable[Review]: """ Get ``amount`` random reviews with ``rating`` stars from the ``reviews`` collection. """ return reviews.aggregate([ {"$match": {"overall": rating}}, {"$sample": {"size": amount}}, ]) def sample_reviews_by_rating_polar(reviews: pymongo.collection.Collection, amount: int) -> t.Iterable[Review]: """ Get ``amount`` random reviews with either a 5-star or 1-star rating from the ``reviews`` collection. """ return reviews.aggregate([ {"$match": {"$or": [ {"overall": 1.0}, {"overall": 5.0}, ] }, }, {"$sample": {"size": amount}}, ]) def get_reviews_training_set(reviews: pymongo.collection.Collection, amount: int) -> t.Iterable[Review]: """ Get the subset of reviews that should act as training set. """ # Handle odd numbers positive_amount: int = amount // 2 negative_amount: int = amount - positive_amount # Sample the required reviews positive = sample_reviews_by_rating(reviews, 5.0, positive_amount) negative = sample_reviews_by_rating(reviews, 1.0, negative_amount) # Randomness here does not matter, so just merge the lists both = [*positive, *negative] return both def get_reviews_test_set(reviews: pymongo.collection.Collection, amount: int) -> t.Iterable[Review]: """ Get the subset of reviews that should act as test set. """ return sample_reviews_by_rating_polar(reviews, amount)