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Learn about how these Payment Solutions vendors stack up against each other by checking out our blurbs, claims, and case studies.

Butter
"Recovers lost revenue from failed payments."
Focused on Payment Optimization & Revenue Recovery .
Butter Payments optimizes failed payment recovery using machine learning to increase revenue. It acts immediately after a payment failure, tailoring retry strategies through data models. It integrates with existing payment platforms to streamline operations without requiring personal data. This boosts both transaction success and customer lifetime value.
Superior payment recovery success
Butter Payments claims that they recover 166% more lost revenue than traditional payment recovery methods.
Advanced machine learning techniques
Butter Payments claims that their machine learning tech optimizes failed payment recovery, leading to 10%+ ARR growth.
Revenue-oriented customer partnerships
Butter Payments claims they don't make money unless they recover your revenue, focusing on shared success.
Progressive Leasing
"Provides lease-to-own purchase options, no credit needed."
Focused on Buy Now Pay Later, Lease-to-Own, & Try Before You Buy .
Progressive Leasing helps consumers acquire items without hefty upfront costs or perfect credit. Shoppers can lease products like furniture, electronics, and appliances from numerous retailers, then pay over time. Flexible, automatic payments align with paydays. Less-than-perfect credit isn't a barrier. Customers can also purchase items early if desired.
No credit needed
Progressive Leasing claims that their lease-to-own options do not require a traditional credit check, making them accessible to those with poor or no credit history.
Convenient payment schedules
Progressive Leasing claims that they offer flexible payment options aligned with customers' payday schedules, providing ease and convenience.
High approval rate
Progressive Leasing claims that their approval process considers various data points, regularly approving individuals with less-than-perfect credit scores.