Apica, a provider of a synthetic monitoring and observability platform, has just raised an additional $10 million in funding and has agreed to acquire LOGIQ.AI. LOGIQ.AI is a provider of a data fabric infused with machine learning algorithms.
Jason Haworth, chief product officer for Apica, said the data fabric developed by LOGIQ.AI will be incorporated into the Apica Ascent platform in the third quarter. The LOGIQ.AI addition will apply artificial intelligence (AI) in a way that both optimizes and enriches data collected by the company’s observability platform.
At the core of the Apica Ascent platform is an indexing engine built on top of a Kubernetes platform that aggregates data such as logs, traces and network packets from multiple sources. As part of that process, the platform reduces storage costs by trimming excess data that can be stored in a data lake it provides or a third-party data lake a customer prefers.
At the same time, Apica also enables DevOps teams to both normalize data collected from multiple sources and enrich it to add additional context, said Haworth.
The overall goal is to provide a unified view of all IT data to accelerate faster root cause analysis and reduce the total cost of collecting the data required, he added.
Apica is making a case for an observability platform that goes beyond collecting data from DevOps platforms. As IT environments become more complex, IT teams need to be able to correlate data collected from a wide range of data sources to accurately determine the root cause of an issue, said Haworth.
The challenge is managing the massive amount of data that needs to be continuously collected, stored and analyzed to achieve that goal, he added. The acquisition of LOGIQ.AI will enable Apica to embed a data fabric that employs machine learning algorithms and other data science techniques to make it feasible to observe complex IT environments at scale, noted Haworth.
It’s still early days as far as observability is concerned, but it’s clear that IT teams need to move beyond monitoring a pre-determined set of metrics to manage complex and dynamic application environments. The rate of change to application environments as updates are made requires an ability to query data to determine the root cause of issues that could be caused by any number of dependencies.
The issue is that even when IT teams have access to an observability platform, they may not have the knowledge and expertise required to craft the queries needed to determine the root cause of an issue. Machine learning algorithms will play a major role in enabling IT teams to proactively discover issues that they can investigate using the suggested queries.
It’s only a matter of time before most IT organizations unify observability data within a single platform. That will make it simpler for them to collaborate across teams and should result in fewer disruptions as IT issues are discovered more quickly. After all, the best kind of IT incident is the one that never happened or that was too trivial for anyone outside of IT to even notice.