Noibu, a platform for error detection and resolution, announced a partnership with BigCommerce, an open SaaS, composable ecommerce platform for fast-growing and established B2C and B2B brands and retailers.
With the addition of Noibu, BigCommerce is positioned to ensure smoother website performance and enhanced customer experiences. BigCommerce customers can now integrate Noibu through the BigCommerce App Marketplace.
“Noibu is committed to setting new industry benchmarks in operational efficiency and proactive error management,” Kailin Noivo, Co-Founder and President, Noibu said. “This strategic alliance seeks to deliver continuous innovation and technology integration, aiming to transform the e-commerce experience for retailers globally by potentially eliminating front-end errors. Together, Noibu and BigCommerce seek to solve current issues and aim to pave the way for a future where e-commerce operations are seamless, efficient, and error-free.”
With this partnership comes a one-click integration, enabling BigCommerce customers to easily connect their online store with Noibu's error monitoring platform. This helps simplify the setup process, saves time, and ensures that customers can quickly start monitoring and resolving website issues.
Noibu’s solution surfaces and prioritizes errors based on their impact on revenue. Its software provides actionable insights directly to development teams for speedy resolution. The Noibu and BigCommerce engineering teams worked together to identify all errors and issues causing performance degradation on all BigCommerce customers and concluded that 99.6 percent of errors were isolated to one storefront. The remaining 0.4 percent of errors were similar across multiple stores.
"Ecommerce has never been more competitive, which means brands and retailers need to move fast and make smart technology choices,” Brian Dhatt, Chief Technology Officer, BigCommerce, said. “Noibu and BigCommerce are a powerful combination to make the ecommerce experience error-free. With Noibu, we have a deeper level of observability, which will surface and solve problems more quickly, improving the experience of every customer."
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