Falkonry Launches Industry’s First Machine Learning Product for Non-Data Scientists
Delivers Best Cost, Speed and Security for Distributed and Low Latency Applications
Falkonry, Inc. announced the launch of its Falkonry Edge Analyzer. The Edge Analyzer is a portable self-contained engine that enables customers to deploy predictive analysis on edge devices for low latency applications in disconnected environments or close to data sources. The new Edge Analyzer is available as part of Falkonry’s leading “pre-packaged” machine learning system, Falkonry LRS. Falkonry LRS is now the industry’s first predictive operations product that enables operations teams to create and deploy predictive analytics in the cloud or on-premises or on the edge – without requiring data scientists.
“Many organizations can benefit from a packaged analytics application that includes embedded machine learning capabilities, especially when pursuing a common and well-defined advanced analytics problem, such as price optimization or fraud detection”
“Many organizations can benefit from a packaged analytics application that includes embedded machine learning capabilities, especially when pursuing a common and well-defined advanced analytics problem, such as price optimization or fraud detection,” write Peter Krensky, Sr. Principal, Analyst and Carlie Idoine, Sr. Director Analyst at Gartner in the March 2018 research, How Data Science Teams Leverage Machine Learning and Other Advanced Analytics.
“Before using Falkonry, companies often found themselves stuck in proof of concepts without a clear path for scaling to production,” said Dr. Nikunj Mehta, Founder and CEO of Falkonry. “The ability for operations teams to create and deploy predictive models at the edge and on premises has addressed the integration and skills gap challenges, while realizing five to ten times annual ROI.”
Read More: The Drone Racing League Launches 2019 Season with Twitter and NBC
Prediction & Explanation
Falkonry LRS enables operations teams to discover, explain and predict behaviors that matter without requiring data scientists. The automated feature learning solves the most complex problem of applying machine learning on time series data saving time and building accurate predictive models. The explanation feature gives insight into model results, quantifying signal contribution and enabling SMEs to perform root cause analysis.
Read More: Newest Veritone aiWARE Enhancements Enable Customers to Expand and Accelerate Their Adoption of AI
Edge Analyzer
Edge Analyzers can be created in Falkonry LRS and transported for installation in remote or mobile environments. Minimal resource requirements allows for operation in constrained environments. They are configurable for high availability and can tolerate sensor and network outages. Use of containers enables runtime to be insulated from other processing activities. Each Edge Analyzer can be used to monitor multiple edge endpoints, and several Edge Analyzers can be deployed on a single computer to support multiple assessments. Each Edge Analyzer includes a perpetual use license.
“Real-time asset monitoring and predictive analytics is important to Fluke,” said Oliver Sturrock, CTO of Fluke Digital Systems. “Falkonry’s solution scores high in terms of architecture, scalability and flexibility to deploy in the cloud or at the edge for real-time insights.”
Read More: Smart Managers Know There’s More to Leading a Team Than Simply Being a Boss
Copper scrap industry knowledge Copper reclamation services Scrap metal audit
Scrap Copper cable prices, Scrap metal recovery plant, Copper scrap auctions
Copper scrap compacting Copper scrap testing Metal recycling salvage
Copper cable, Scrap metal sorting, Copper scrap inventory control
Metal scrap reclamation Ferrous waste remolding Iron material recovery
Ferrous metal industry publications, Iron waste reclamation and reprocessing, Metal recyclable waste processing