Gigamon introduced Gigamon Application Intelligence, which provides comprehensive visibility into the highly complex applications at the heart of digital transformations.
The Gigamon Application Intelligence offering eliminates data silos by sharing application knowledge across the environment, enabling immediate action. With this visibility, performance is optimized, potential issues are thwarted, and a consistent customer experience is delivered to ensure that the enterprise can run fast and stay secure.
The Gigamon Application Intelligence solution includes:
- Application Extraction: Share application data with appropriate tools to improve efficiency and security across the network.
- Application Metadata: Generate over 5,000 application metadata elements to be shared with analytics tools to help teams quickly identify root causes of application performance degradation and potential security breaches.
- Application Visualization: Identify and classify thousands of business, consumer and custom-developed applications automatically.
“A positive customer experience is the true scorecard of a successful digital transformation journey in today’s competitive markets. At the heart of this success is agility, so as a broad set of digital applications are adopted to drive their business, the enterprise is under immense pressure to simultaneously identify performance bottlenecks and secure a broader potential attack surface. Failure on either front is catastrophic,” said Paul Hooper, CEO of Gigamon. “Now through Gigamon Application Intelligence, we are bringing unmatched visibility; no longer are we relying on siloed network traffic visibility in an era where organizations must holistically see and secure their digital domains in order to thrive and survive.”
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