Item
stringlengths
3
20
Category
stringclasses
15 values
apple
Produce
banana
Produce
orange
Produce
lettuce
Produce
carrot
Produce
broccoli
Produce
tomato
Produce
spinach
Produce
grapes
Produce
pear
Produce
kiwi
Produce
mango
Produce
strawberry
Produce
blueberry
Produce
zucchini
Produce
cucumber
Produce
avocado
Produce
chicken
Meat & Seafood
beef
Meat & Seafood
pork
Meat & Seafood
salmon
Meat & Seafood
tuna
Meat & Seafood
shrimp
Meat & Seafood
crab
Meat & Seafood
steak
Meat & Seafood
lamb
Meat & Seafood
bacon
Meat & Seafood
sardines
Meat & Seafood
trout
Meat & Seafood
tilapia
Meat & Seafood
cod
Meat & Seafood
turkey breast
Meat & Seafood
duck
Meat & Seafood
lobster
Meat & Seafood
milk
Dairy & Eggs
cheese
Dairy & Eggs
yogurt
Dairy & Eggs
butter
Dairy & Eggs
eggs
Dairy & Eggs
cream
Dairy & Eggs
sour cream
Dairy & Eggs
ice cream
Dairy & Eggs
buttermilk
Dairy & Eggs
cottage cheese
Dairy & Eggs
whipped cream
Dairy & Eggs
ghee
Dairy & Eggs
feta cheese
Dairy & Eggs
goat cheese
Dairy & Eggs
ricotta
Dairy & Eggs
cream cheese
Dairy & Eggs
bread
Bakery
bagel
Bakery
croissant
Bakery
muffin
Bakery
cake
Bakery
cookie
Bakery
donut
Bakery
brownie
Bakery
brioche
Bakery
pita
Bakery
ciabatta
Bakery
sourdough
Bakery
biscuit
Bakery
waffle
Bakery
crackers
Bakery
pastry
Bakery
flour
Pantry
sugar
Pantry
salt
Pantry
pepper
Pantry
oil
Pantry
vinegar
Pantry
pasta sauce
Pantry
peanut butter
Pantry
honey
Pantry
soy sauce
Pantry
tomato paste
Pantry
oats
Pantry
rice
Pantry
cereal
Pantry
spices
Pantry
herbs
Pantry
yeast
Pantry
canned tuna
Pantry
frozen pizza
Frozen Foods
frozen vegetables
Frozen Foods
ice cream
Frozen Foods
frozen fries
Frozen Foods
frozen chicken wings
Frozen Foods
frozen fish
Frozen Foods
frozen berries
Frozen Foods
frozen waffles
Frozen Foods
frozen dinners
Frozen Foods
frozen peas
Frozen Foods
frozen spinach
Frozen Foods
frozen shrimp
Frozen Foods
soda
Beverages
juice
Beverages
water
Beverages
coffee
Beverages

GroceryList Dataset

Dataset Summary

The GroceryList dataset consists of grocery items and their corresponding categories. It is designed to assist in tasks such as grocery item classification, shopping list organization, and natural language understanding related to common grocery-related terms. The dataset contains only a training split and is not pre-divided into test or validation sets.

It includes two main columns:

  1. Item: Contains the names of various grocery items such as "Apple," "Banana," "Milk," etc.
  2. Category: Corresponds to the category of the grocery item, such as "Produce," "Dairy & Eggs," "Meat & Seafood," etc.

This dataset is ideal for machine learning tasks related to text classification, particularly in retail and grocery applications.


Supported Tasks and Use Cases

The GroceryList dataset supports the following tasks:

  • Text Classification: Classifying grocery items into predefined categories.
  • Shopping List Categorization: Automatically organizing items in shopping lists into categories.
  • Retail Data Analysis: Developing models for understanding customer grocery behavior.

Dataset Structure

The dataset consists only of a training split. Users can create their own validation and test sets if required.

Columns:

  • item (string): The name of the grocery item (e.g., "Apple," "Milk").
  • category (string): The category to which the item belongs (e.g., "Produce," "Dairy & Eggs").

Example Entry:

Item Category
Apple Produce
Banana Produce
Milk Dairy & Eggs

Dataset Usage

To use the dataset in your Hugging Face environment, load it as follows:

from datasets import load_dataset

dataset = load_dataset("AmirMohseni/GroceryList")

Once loaded, you can preprocess and use the data for text classification or other related tasks. Note that the dataset contains only the training data, and you may want to split it manually for validation and testing.

License

This dataset is licensed under the Apache-2.0 License.

Downloads last month
36
Edit dataset card