Whisk understands food, recipes, and products.
Our algorithms process more than 15 gigabytes of recipe data daily. What do we do with this detailed metadata about recipes?
The creation of a seamless digital shopping list is just the start. Whisk maps ingredients to more than 140,000 store items, giving shoppers a streamlined path from recipe inspiration to food purchase.
Our food semantic processing allows Whisk to present market-leading relevant advertising based upon recipe type, ingredient, taste, nutrition, and price
Hyper-Relevant Advertising
Whisk’s ontology and semantic analysis of recipes allow us to deliver advertising based on ingredient, diet, allergy, nutrition, price, cuisine, time, taste, course, preparation methods, and more.
Ingredient Properties
Whisk complements recipe data with proprietary data sets on ingredient properties like cooking impact, flavor, perishability, and nutritional information.
Machine Learning
When a user selects a recipe or a matched store product, our system learns from that user’s preferences and continually improves future recommendations.
Content parsing
Using Natural Language Processing (NLP), our technology automatically parses recipe content to deliver an intuitive and smart shopping list. Lists can be easily uploaded to online retailers, viewed on mobile devices, emailed or printed to take in-store.
Personalization
Whisk suggests store items -- and other recommendations like complimentary dishes, wine or beer-based upon individual preferences. Our system analyses users’ taste profiles, capturing individual preferences like product brand, price, and dietary needs. Instead of sifting through 15 different brands of butter at the store, Whisk knows the shopper's preferred choice.