Mountain View, Calif. and Amsterdam, The Netherlands - 04 May 2017
Elastic, the company behind Elasticsearch, and the Elastic Stack, the most widely used collection of open source products for solving mission-critical use cases like search, logging, and analytics, announces the introduction of their first machine learning capabilities in Elastic's 5.4 release. Based on the recent acquisition of Prelert, the new capabilities address the growing desire for customers to utilize machine learning technology, without the need for specialist in-house knowledge and custom development. Elastic’s new machine learning features provide a ready-built solution for any time series dataset, which automatically identifies anomalies, streamlines root cause analysis, and reduces false positives within real-time applications. The technology delivers rapid business benefits for companies trying to spot infrastructure problems, cyber attacks, or business issues in real-time.
"Our vision is to take the complexity out and make it simple for our users to deploy machine learning within the Elastic Stack for use cases like logging, security, and metrics," said Shay Banon, Elastic Founder and CEO. "I’m excited that our new unsupervised machine learning capabilities will give our users an out-of-the-box experience, at scale to find anomalies in their time series data, and in a way that is a natural extension of search and analytics."
As organizations seek to derive and operationalize real-time insights, the Elastic Stack has become one of the most widely used tools for developers and IT operations teams to use for collecting, enriching, and analyzing log files, security data, metrics, text documents, and more. However, as the data generated by such organizations increase in size and complexity, traditional approaches to data analysis become impractical. While third-party and off-the-shelf machine learning toolkits may offer capabilities to create statistical models, the biggest challenge lies in developing real-time operational systems for existing workstreams and use cases. Scarce and expensive data science skills are needed to figure-out the correct statistical models for different, diverse data sets, and hand-crafted rules are brittle and often generate many false-positives.
Now available in the 5.4 release as a feature in X-Pack, the first set of Elastic’s unsupervised machine learning features automates anomaly detection in time series data, such as log files, application and performance metrics, network flows, or financial/transaction data. By utilizing existing and continuous data stored in Elasticsearch, Elastic’s new machine learning capabilities provide users with an out-of-box experience to operationalize their workstreams and use cases like logging, security analytics, and metrics analytics, in real-time, create sophisticated machine learning jobs using a familiar, user-friendly Kibana UI, and minimize complexity and painful integration. Additional benefits include:
Elastic builds software to make data usable in real time and at scale for search, logging, security, and analytics use cases. Founded in 2012, the company develops the open source Elastic Stack (Elasticsearch, Kibana, Beats, and Logstash), X-Pack (commercial features), and Elastic Cloud (a hosted offering). To date, there have been more than 100 million cumulative downloads. Backed by Benchmark Capital, Index Ventures, and NEA with more than $100 million in funding, Elastic has a distributed workforce with more than 500 employees in 30 countries. Learn more at elastic.co.