
IPinfo announced a partnership with Graylog.
Through an integration with Graylog Cloud, IPinfo's fast, accurate IP address and geolocation data automatically enriches log data for a seamless user experience.
Graylog Cloud, launched in March, features the full functionality of Graylog Enterprise and offers choices to customers who want seamless data collection, rapid search, flexible analysis, and greater affordability, without the hassle of maintaining and updating the systems it runs on.
In developing Graylog Cloud, Graylog founder and CTO Lennart Koopmann identified an opportunity to partner with a data provider to offer users an automatic way to enrich IP addresses reported in their log. He selected IPinfo to be that provider for their best-in-class data downloads and the flexibility and speed of implementation.
"The first thing that we noticed was that it was really easy to do business with IPinfo," said Koopmann. "They immediately understood our problem, understood what we needed, and understood how technical we are. It was an incredibly easy process, and IPinfo was a very important part of accomplishing our goal."
With the integration of IPinfo's data downloads, Graylog has reduced the manual work of accessing individual databases and eliminated data latency issues with daily updates. Graylog Cloud users can turn an IP address in their log data into a physical location, whether it be as specific as exact coordinates or simply a city name, for enhanced web customization.
"Graylog Cloud is a brilliant log management solution for IT professionals who want to avoid on-prem maintenance and system management," said Ben Dowling, Founder and CEO of IPinfo. "From our first conversation with Lennart and his team, we were excited to work together to integrate our IP address data with Graylog Cloud to enhance the end user experience as they are able to more quickly find meaning in their log data."
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