[SAMPLE] DoorDash Consumer Transaction Data | Restaurant & Food Delivery Transaction Data | ...
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资源简介:
The Measurable AI DoorDash Restaurant & Food Delivery Dataset is a leading source of email receipts and transaction data, data collected directly from users via Proprietary Consumer Apps, with millions of opt-in users.
We source our email receipt consumer data panel via two consumer apps which garner the express consent of our end-users (GDPR compliant). We then aggregate and anonymize all the transactional data to produce raw and aggregate datasets for our clients.
*Use Cases*
Our clients leverage our datasets to produce actionable consumer insights such as:
- Market share analysis
- User behavioral traits (e.g. retention rates)
- Average order values
- Promotional strategies used by the key players.
Several of our clients also use our datasets for forecasting and understanding industry trends better.
*Coverage*
- Asia (Japan)
- Americas (United States)
*Granular Data*
Itemized, high-definition data per transaction level with metrics such as
- Order value
- Items ordered
- No. of orders per user
- Delivery fee
- Service fee
- Promotions used
- Geolocation data and more
*Aggregate Data*
- Weekly/ monthly order volume
- Revenue delivered in aggregate form, with historical data dating back to 2018.
All the transactional e-receipts are sent from DoorDash food delivery app to users’ registered accounts.
Most of our clients are fast-growing Tech Companies, Financial Institutions, Buyside Firms, Market Research Agencies, Consultancies and Academia.
Our dataset is GDPR compliant, contains no PII information and is aggregated & anonymized with user consent. Contact business@measurable.ai for a data dictionary and to find out our volume in each country.
提供机构:
Measurable AI
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