
'Eat now, pay later' option from DoorDash, Klarna brings mixed reactions
Want DoorDash but a little low on funds?
Coming soon will be some new options when it comes to paying for your DoorDash delivery.
The options will be available "in the coming months" as DoorDash partners with Klarna, an "AI-powered payments and commerce network," according to a news release from DoorDash. The company did not specify how long before the new payment options would be available to customers.
Here's what to know.
DoorDash connects customers to restaurants, grocery stores, convenience stores and retail stores via a "dasher," who picks up and delivers their orders. It started as a food delivery service — named Palo Alto Delivery — in California in 2013.
Got a package to drop off? A dasher also can pick up prepaid packages from your home and drop them off at the post office, UPS or FedEx.
Customers order from local restaurants, convenience stores grocery stores and a variety of retail stores.
DoorDash drivers, who work as independent contractors for the company and are known as dashers, will pick up the order from the store and deliver it to the customer.
The app requires the customer to make an account where their name, address and payment information are locally stored.
All the drivers on DoorDash are independent contractors who apply to work for the company. They use their own cars and have a separate app to accept and make deliveries.
Drivers are paid with a base pay between $2 and $10, plus 100% of the tips they make from each delivery.
The cost to use the DoorDash app is free unless you upgrade to DashPass, which costs $9.99 a month or $96 a year.
Customers pay the price of the food from wherever they order, as well as fees and tips.
Each order is subject to a delivery fee and a service fee. Delivery fees can vary depending on several factors, such as the restaurant, demand and location.
"This partnership empowers customers with maximum choice and control over how they pay — from groceries and the season's big-ticket electronics to home improvement supplies, beauty, and even their DashPass Annual Plan membership," DoorDash announced.
When a customer completes an order, KIarna will be an additional payment option. Options will include:
Pay in full: Allows customers pay immediately using Klarna's payments experience.
Pay in 4: Allows customers to pay in four equal interest-free installments.
Pay later: Allows customers to defer payments to a more convenient time, such as a date that aligns with their paycheck schedules.
Reaction was quick on the partnership allowing people to pay for their DoorDash order later.
DoorDash is available in more than 7,000 cities and 30 countries around the world.
To see what stores are available via DoorDash where you live, go to DoorDash's food delivery website and type in your address.
As of Dec. 31, 2024, DoorDash had around 42 million monthly active users on its platforms, according to Statista.
"As we expand DoorDash's offerings — from groceries and beauty to electronics and gifts — flexible payment options are essential to meeting our customers' needs,' said Anand Subbarayan, DoorDash head of money products.
"Our partnership with DoorDash marks an important milestone in Klarna's expansion into everyday spending categories," said David Sykes, chief commercial officer of Klarna.
"By offering smarter, more flexible payment solutions for groceries, takeout, and retail essentials, we're making convenience even more accessible for millions of Americans."
Grocery and convenience stores on DoorDash familiar to Florida residents include Publix, Aldi, Sprouts Farmers Market, Fresh Market, Winn Dixie, ABC Fine Wine and Spirits and 7-Eleven.
Retail stores range from Best Buy and Tractor Supply to Dick's Sporting Goods and Michaels.
DoorDash announced March 18, 2025, a partnership with Dollar General "to bring SNAP/EBT payment capabilities to more than 16,000 of Dollar General's stores on the DoorDash Marketplace."
This article originally appeared on Naples Daily News: DoorDash, Klarna partner to increase payment options

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