Every time an independent research firm identifies Gathr (earlier known as StreamAnalytix) as a leading platform in the increasingly competitive space of streaming analytics, it is an exciting moment for us. Inclusion in a recently published report by Aragon Research, a technology focused research and advisory firm, as one of the ‘Hot Vendors in Streaming analytics 2017’ is one such proud moment.
The fact that we are one of only four players covered in the report, makes it even more exciting. With this report, Aragon Research provides insight on new and noteworthy data management and streaming analytics providers. Each year, Aragon Research recognizes Hot Vendors across multiple markets that are doing something new or differently. They may have new technology that expands capabilities, a new strategy that opens up markets, or just a new way of doing business that makes them worth assessing.
The report validates our focus on the use of open source big data technologies such as Spark Streaming and Apache Storm for real- time data insight, and recommends evaluating Gathr to enterprises that need a single visual platform that leverages popular open source, big data platforms for streaming ETL and advanced analytics, and that is easy-to-use for business and technical users.
Streaming data represents new avenues for creating value, and enterprises are beginning to pay attention to this new source of competitive advantage. The value is driven by new business insights from sensor data, web clickstreams, geolocation data, weather reports, market data, social media and other event streams. Often it is the combination of multiple streaming and static sources of data that reveals new powerful insights. However, the successful use of stream processing engines such as Apache Spark ™ to build such advanced analytical applications can be a challenge as it typically requires deep technical and data science skills.
Solution? Gathr ! A platform that makes creating real-time stream processing and machine learning applications on Apache Spark extremely easy. It now offers a Visual Spark Studio for development and life-cycle management of Apache Spark applications in both streaming and batch mode. Earlier this year, within a short span of six weeks, engineers who were even new to Apache Spark were able to build complex machine learning applications for anomaly detection leveraging the Gathr platform – as part of a contest that we had organised.
Back to the topic, and in closing…we feel very thankful and immensely encouraged by the Aragon Research recognition as a ‘Hot Vendor’ and the validation of the benefit we strive to bring to enterprises i.e. “powerful tooling and ease of use – over open source big data and fast data technologies”. For more information, read the full press release.
Aragon Research Disclaimer
Aragon Research does not endorse vendors, or their products or services that are referenced in its research publications, and does not advise users to select those vendors that are rated the highest. Aragon Research publications consist of the opinions of Aragon Research and Advisory Services organization and should not be construed as statements of fact. Aragon Research provides its research publications and the information contained in them “AS IS,” without warranty of any kind.
Gathr is an end-to-end, unified data platform that handles ingestion, integration/ETL (extract, transform, load), streaming analytics, and machine learning. It offers strengths in usability, data connectors, tools, and extensibilty.
Gathr helped us build “in-the-moment” actionable insights from massive volumes of complex operational data to effectively solve multiple use cases and improve the customer experience.
IN THE SPOTLIGHT
"In-the moment" actionable analytics
Identify up sell/ cross-sell opportunities
Gathr is in the Top 14 club, says Forrester
- Development Tools
- Advanced Analytics
Data integration just got free - forever
SaaS + BYOC = Best of both worlds
Learning and Insights
Stay ahead of the curve
Q&A with Forrester
Building a modern data stack: What playbooks don’t tell you
4 common data integration pitfalls to avoid
Why modernizing ETL is imperative for massive scale, real-time data processing
Don’t just migrate. Modernize your legacy ETL.