Welcome!

Big Data Journal Authors: Pat Romanski, Liz McMillan, Elizabeth White, Roger Strukhoff, Adrian Bridgwater

News Feed Item

Application Delivery Network (ADN) Market - Global Advancements, Worldwide Forecasts & Analysis to 2018

DUBLIN, April 14, 2014 /PRNewswire/ --

Dublin - Research and Markets (http://www.researchandmarkets.com/research/s9ccqq/application) has announced the addition of the "Application Delivery Network (ADN) Market - Global Advancements, Worldwide Forecasts & Analysis to 2018" report to their offering.

     (Logo: http://photos.prnewswire.com/prnh/20130307/600769 )


The network traffic patterns have dramatically changed in the past decade from transaction oriented applications to bandwidth-intensive applications, supporting ERPs, video, voice and unstructured data. The new advent of virtualization, cloud-computing, and big-data has augmented the demand for highly efficient and secure corporate networks.

The biggest challenge for enterprises today is to combat the tough competitive environments, while enhancing their productivity. Enterprises are now emphasizing on ensuring security and quickly responding to the changing business needs; thereby optimizing and securing the flow of data, to all users, on all networks, while also helping in sustainable competitive advantage.

The application delivery network technology deals with the demand for greater application mobility and security in a distributed enterprise. ADN helps in classifying and prioritizing applications, content, and user access in real-time. It helps in acceleration of internal, external, and real-time applications across distributed enterprises.

The technology also helps in securing information from malicious applications and content, while delivering fast, secure, and available applications across the enterprise, while controlling the rising network management costs. Application Performance Monitoring (APM), WAN optimization, and secure web gateway technologies are combined together by ADN to give a complete visibility and control over user and application performance. Due to this, critical applications and information can be delivered for business needs.


Key Topics Covered:

Table Of Contents

1 Introduction

2 Executive Summary

3 Adn Market: Market Overview And Dynamics

4 Adn: Market Size And Forecast By Products

5 Adn Market: Market Size And Forecast By End-User Environment

6 Adn: Market Size And Forecast By End-Users

7 Adn Market: Market Size And Forecast By Verticals

8 Adn Market: Market Size And Forecast By Regions

9 Market Analysis,Trends And Insights

10 Competitive Landscape

11 Company Profiles


Companies Mentioned:

  • A Networks
  • Aryaka Networks
  • Barracuda Networks
  • Blue Coat Systems
  • Brocade
  • Cisco Systems, Inc.
  • Citrix Systems, Inc.
  • Coyote Point
  • Dell, Inc.
  • Edgecast Networks
  • F Networks
  • Fortinet
  • Hewlett-Packard (HP)
  • Juniper Networks
  • Network Instruments
  • Networx Australia
  • Oracle Corporation
  • Procera Networks
  • Quosmos
  • Radware
  • Riverbed Technology
  • Sangfor
  • Synercomm
  • Verizon

For more information visit http://www.researchandmarkets.com/research/s9ccqq/application


Media Contact: Laura Wood , +353-1-481-1716, [email protected]

SOURCE Research and Markets

More Stories By PR Newswire

Copyright © 2007 PR Newswire. All rights reserved. Republication or redistribution of PRNewswire content is expressly prohibited without the prior written consent of PRNewswire. PRNewswire shall not be liable for any errors or delays in the content, or for any actions taken in reliance thereon.

Latest Stories from Big Data Journal
Technology is enabling a new approach to collecting and using data. This approach, commonly referred to as the “Internet of Things” (IoT), enables businesses to use real-time data from all sorts of things including machines, devices and sensors to make better decisions, improve customer service, and lower the risk in the creation of new revenue opportunities. In his session at Internet of @ThingsExpo, Dave Wagstaff, Vice President and Chief Architect at BSQUARE Corporation, will discuss the real...
Cisco on Wedesday announced its intent to acquire privately held Metacloud. Based in Pasadena, Calif., Metacloud deploys and operates private clouds for global organizations with a unique OpenStack-as-a-Service model that delivers and remotely operates production-ready private clouds in a customer's data center. Metacloud's OpenStack-based cloud platform will accelerate Cisco's strategy to build the world's largest global Intercloud, a network of clouds, together with key partners to address cu...
IoT is still a vague buzzword for many people. In his session at Internet of @ThingsExpo, Mike Kavis, Vice President & Principal Cloud Architect at Cloud Technology Partners, will discuss the business value of IoT that goes far beyond the general public's perception that IoT is all about wearables and home consumer services. The presentation will also discuss how IoT is perceived by investors and how venture capitalist access this space. Other topics to discuss are barriers to success, what is n...
When one expects instantaneous response from video generated on the internet, lots of invisible problems have to be overcome. In his session at 6th Big Data Expo®, Tom Paquin, EVP and Chief Technology Officer at OnLive, to discuss how to overcome these problems. A Silicon Valley veteran, Tom Paquin provides vision, expertise and leadership to the technology research and development effort at OnLive as EVP and Chief Technology Officer. With more than 20 years of management experience at lead...
BlueData aims to “democratize Big Data” with its launch of EPIC Enterprise, which it calls “the industry’s first Big Data software to enable enterprises to create a self-service cloud experience on premise.” This self-service private cloud allows enterprises to create 100-node Hadoop and Spark clusters in less than 10 minutes. The company is also offering a Community Edition via free download. We had a few questions for BlueData CEO Kumar Sreekanti about all this, and here's what he had to s...
Labor market analytics firm Wanted Analytics recently assessed the market for technology professionals and found that demand for people with proficient levels of Hadoop expertise had skyrocketed by around 33% since last year – it is true, Hadoop is hard technology to master and the labor market is not exactly flooded with an over-abundance of skilled practitioners. Hadoop has been called a foundational technology, rather than ‘just’ a database by some commentators – this almost pushes it towards...
The cloud provides an easy onramp to building and deploying Big Data solutions. Transitioning from initial deployment to large-scale, highly performant operations may not be as easy. In his session at 15th Cloud Expo, Harold Hannon, Sr. Software Architect at SoftLayer, will discuss the benefits, weaknesses, and performance characteristics of public and bare metal cloud deployments that can help you make the right decisions.
Where historically app development would require developers to manage device functionality, application environment and application logic, today new platforms are emerging that are IoT focused and arm developers with cloud based connectivity and communications, development, monitoring, management and analytics tools. In her session at Internet of @ThingsExpo, Seema Jethani, Director of Product Management at Basho Technologies, will explore how to rapidly prototype using IoT cloud platforms and c...
Amazon, Google and Facebook are household names in part because of their mastery of Big Data. But what about organizations without billions of dollars to spend on Big Data tools - how can they extract value from their data? Ion Stoica is co-founder and CEO of Databricks, a company working to revolutionize Big Data analysis through the Apache Spark platform. He also serves as a professor of computer science at the University of California, Berkeley. Ion previously co-founded Conviva to commercial...
Due of the rise of Hadoop, many enterprises are now deploying their first small clusters of 10 to 20 servers. At this small scale, the complexity of operating the cluster looks and feels like general data center servers. It is not until the clusters scale, as they inevitably do, when the pain caused by the exponential complexity becomes apparent. We've seen this problem occur time and time again.