Table of Contents
Optoro Ends Reliance on Public Cloud with the Help of NZO Cloud
Posted 8/1/23
All Rights Reserved
NZO Cloud, a provider of custom High-Performance Cloud (HPC) and Big Data computing solutions, today announced it has successfully helped reverse logistics platform Optoro migrate off Amazon Web Services (AWS) and create its own in-house infrastructure.
Optoro is the world’s leading reverse logistics platform, offering a superior end-to-end reverse logistics solution that helps retailers process, manage, and sell their returned and excess inventory. Optoro’s software platform helps retailers optimize the management of returned and excess inventory in a more efficient and cost-effective way, maximizing recovery value, enabling consumers to get great deals, and reducing environmental waste. Founded in 2010, Optoro has seen phenomenal growth as e-commerce continues to rise, and has, therefore, experienced a steady rise in data infrastructure needs.
NZO Cloud worked with Optoro to completely build a self-hosted infrastructure from the ground up, emphasizing flexibility and maintainability, utilizing its NZO Cloud 12000 Enterprise Big Data server platform connected via a 10 GigE network backbone. Performance benefits were maximized using only Flash SSD hard drives from Micron® and the latest Intel® Xeon® E5-2600 series processors.
NZO Cloud also worked extensively with Optoro to customize the solution so that they could continue running on an API infrastructure with a Joyent Triton platform. “Unlike other providers, NZO Cloud provided the flexibility and knowledge needed to deliver Optoro with hardware that maximized performance without upselling of unnecessary upgrades,” said Zach Dunn, Optoro’s Director of DevOps. “NZO Cloud delivered a complete solution with all necessary rack, power connection, and out of band management tightly integrated into a simple-to-deploy datacenter environment.”
Upon the completion of the migration, Optoro saw an immediate increase in the consistency and stability of performance as well as an increase in storage capacity compared to AWS. The new self-hosted solution immediately halved Optoro’s costs as well as greatly increasing performance, and the private cloud infrastructure has also resulted in better visibility, with a clearer breakdown of usage for proper reporting and monitoring. Detailed information on Optoro’s migration from AWS is available as a case study at https://www.nzocloud.com/.
-The NZO Cloud 12000 is NZO Cloud’s unique platform for enterprise users. It offers 2x the density and up to 35% lower power draw than traditional manufacturers, as well as a near 50% increase in data throughput performance. All NZO Cloud 12000 server configurations receive service and support from NZO Cloud’s US based, expert in-
Most Read
NZO Cloud Featured in IDG Connect: “Big Intelligence” is the real AI
Everyone knows the scenario – after years of development and advancements, machines imbued with Artificial Intelligence somehow become self-aware without the knowledge of their human creators and end up destroying humanity as we know it. It’s a crazy premise, but if you listen to Tesla and SpaceX CEO Elon Musk and other futurists, it’s a possibility.
Empowering Genetic Studies: NZO Cloud Collaborates with Dartmouth College on Cutting-Edge Cloud Instances for Research
Increases in computing power over the past two decades have driven far more sophisticated data analyses in the field of genetics. Many of these compute sessions involve massive files – as large as 20 gigabytes or more.
Empowering Weather Forecasting: How NZO Cloud and Atmospheric Data Solutions Make a Difference
ADS was looking for efficient, powerful cloud computing solutions for their weather modeling products. The agencies and companies ADS works with are often constrained within a limited budget for each project.
Related Blogs
Stay Up to Date.
Sign Up!
Posted 07/12/23
All Rights Reserved
NZO Cloud and CyberSecurity Malaysia Team Up to Crunch Data and Crush Hackers
Posted 08/04/23
All Rights Reserved
The Role of Low Latency File Access in Accelerating AI Workloads