Arundo Analytics announced the Fall 2017 general availability software release for its Arundo Enterprise suite.
The latest release includes significant feature and functionality upgrades in Arundo’s Edge Agent, Composer and Fabric software products for advanced analytics and Industrial IoT enablement.
“Our Fall 2017 release further enables industrial customers in industries such as oil & gas, maritime and utilities to rapidly connect machine learning models, live data sources and business decision-makers through flexible, easy-to-use software,” said Tor Jakob Ramsøy, Founder and CEO of Arundo Analytics.
“Industrial customers operate capital-intensive legacy assets that are often decades-old,” said Jeff Jensen, CTO of Arundo Analytics. “Allowing our customers to connect to these assets through Edge Agent and inform better business decisions in remote or disconnected operating environments is core to Arundo's vision to transform heavy industry through data-driven insights.”
Arundo Edge Agent enables industrial analytics in rugged, remote or disconnected environments. New features and functionality in Arundo Edge allow users to:
- Quickly and easily install Edge Agent on Windows, Linux or Mac OS devices
- Support highly distributed architectures with offline buffering
- Use on-Edge compute chains for pre-stream processing of “virtual” or calculated sensors
- Directly access a local, web-based interface including streaming visualization
Arundo Composer allows companies to quickly and easily deploy desktop-based machine learning models into the Arundo Fabric cloud environment through a single command line. Composer also enables companies to create and manage live data pipelines and integrate such pipelines with deployed data models. New features and functionality in Arundo Composer allow users to:
- Scale deployed models and view logs
- Create and manage live data pipelines
- Rapidly prototype models locally before live deployment
- Auto-render data model user interface upon deployment
Arundo Fabric is the cloud-based hub for data models, enabling connections between data models published from Composer, streaming data from Edge Agent and static data ingested from other sources. New features and functionality in Arundo Fabric allow users to:
- View master lists of tags and sensors streaming data in real-time
- Access real-time status for deployed models
- Tie into existing interfaces and applications through APIs
- Use federated or out-of-the-box user authentication
Ellie Dobson, VP Data Science at Arundo Analytics, noted, “Arundo Composer, together with Arundo Fabric, automates the significant work and technical infrastructure required to turn desktop data science models into enterprise-scale machine learning applications. This software enables data scientists to focus on data science, rather than spending weeks on software engineering, model front-end development, or other issues, or coordinating with IT administrators, software developers, or DevOps/reliability engineers in order to publish machine learning models to the cloud.”
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