""" Convert the Amazon reviews dataset to parquet format. Usage: $ make download $ python convert.py """ import os import gzip from slugify import slugify import pandas as pd OUTPUT_DIR = "amazon_reviews_2013" CHUNK_SIZE = 2000000 CATEGORIES = { "Amazon_Instant_Video.txt.gz": "Amazon Instant Video", # 717,651 reviews "Arts.txt.gz": "Arts", # 27,980 reviews "Automotive.txt.gz": "Automotive", # 188,728 reviews "Baby.txt.gz": "Baby", # 184,887 reviews "Beauty.txt.gz": "Beauty", # 252,056 reviews "Books.txt.gz": "Book", # 12,886,488 reviews "Cell_Phones_&_Accessories.txt.gz": "Cell Phone", # 78,930 reviews "Clothing_&_Accessories.txt.gz": "Clothing", # 581,933 reviews "Electronics.txt.gz": "Electronics", # 1,241,778 reviews "Gourmet_Foods.txt.gz": "Gourmet Food", # 154,635 reviews "Health.txt.gz": "Health", # 428,781 reviews "Home_&_Kitchen.txt.gz": "Home & Kitchen", # 991,794 reviews "Industrial_&_Scientific.txt.gz": "Industrial & Scientific", # 137,042 reviews "Jewelry.txt.gz": "Jewelry", # 58,621 reviews "Kindle_Store.txt.gz": "Kindle Store", # 160,793 reviews "Movies_&_TV.txt.gz": "Movie & TV", # 7,850,072 reviews "Musical_Instruments.txt.gz": "Musical Instrument", # 85,405 reviews "Music.txt.gz": "Music", # 6,396,350 reviews "Office_Products.txt.gz": "Office", # 138,084 reviews "Patio.txt.gz": "Patio", # 206,250 reviews "Pet_Supplies.txt.gz": "Pet Supply", # 217,170 reviews "Shoes.txt.gz": "Shoe", # 389,877 reviews "Software.txt.gz": "Software", # 95,084 reviews "Sports_&_Outdoors.txt.gz": "Sports & Outdoor", # 510,991 reviews "Tools_&_Home_Improvement.txt.gz": "Tools & Home Improvement", # 409,499 reviews "Toys_&_Games.txt.gz": "Toy & Game", # 435,996 reviews "Video_Games.txt.gz": "Video Game", # 463,669 reviews "Watches.txt.gz": "Watch", # 68,356 reviews } REVIEW_SCORE = { "1.0": 0, "2.0": 0, "4.0": 1, "5.0": 1, } CATEGORIES_LIST = list(CATEGORIES.values()) def to_parquet(categories, output_dir): """ Convert a single file to parquet """ n_chunks = 0 data = [] for filename in categories: for entry in parse_file(filename): if entry: data.append(entry) if len(data) == CHUNK_SIZE: save_parquet(data, n_chunks, output_dir) data = [] n_chunks += 1 if data: save_parquet(data, n_chunks, output_dir) n_chunks += 1 return n_chunks def save_parquet(data, chunk, output_dir): """ Save data to parquet """ fname = os.path.join(output_dir, f"complete-{chunk+1:04d}.parquet") df = pd.DataFrame(data) # ensure postive and negative reviews are balanced negative_rows = df[df["review/score"] == 0] positive_rows = df[df["review/score"] == 1] min_size = min(len(negative_rows), len(positive_rows)) rows_df = pd.concat([negative_rows.head(min_size), positive_rows.head(min_size)]) rows_df.to_parquet(fname, index=False) def parse_file(filename): """ Parse a single file. """ f = gzip.open(filename, "r") entry = {} for line in f: line = line.decode().strip() colon_pos = line.find(":") if colon_pos == -1: entry["product/category"] = CATEGORIES[filename] if entry["review/score"] == "3.0": entry = {} continue yield clean(entry) entry = {} continue e_name = line[:colon_pos] rest = line[colon_pos + 2 :] entry[e_name] = rest if entry and entry["review/score"] == "3.0": return yield clean(entry) def clean(entry): """ Clean the entry """ if not entry: return entry if entry["product/price"] == "unknown": entry["product/price"] = None entry["review/score"] = REVIEW_SCORE[entry["review/score"]] entry["review/time"] = int(entry["review/time"]) entry["product/category"] = int(CATEGORIES_LIST.index(entry["product/category"])) numerator, demoninator = entry["review/helpfulness"].split("/") numerator = int(numerator) demoninator = int(demoninator) if demoninator == 0: entry["review/helpfulness_ratio"] = 0 else: entry["review/helpfulness_ratio"] = numerator / demoninator entry["review/helpfulness_total_votes"] = demoninator # Remove entries del entry["review/userId"] del entry["review/profileName"] del entry["product/productId"] return entry def create_directories(): """ Create all output directories """ if not os.path.exists(OUTPUT_DIR): os.makedirs(OUTPUT_DIR, exist_ok=True) for category in CATEGORIES.values(): os.makedirs(os.path.join(OUTPUT_DIR, slugify(category)), exist_ok=True) os.makedirs(os.path.join(OUTPUT_DIR, "all"), exist_ok=True) def run(): """ Convert all files to parquet """ create_directories() to_parquet(CATEGORIES, os.path.join(OUTPUT_DIR, "all")) for path, category in CATEGORIES.items(): to_parquet( {path: category}, os.path.join(OUTPUT_DIR, slugify(category)), ) if __name__ == "__main__": run()