Cognitive on Cloud

Cloud Computing and the Process Integration Era

By G C Network | December 17, 2008

The Industry Advisory Council (IAC) is a non-profit, non-partisan organization dedicated to fostering improved communications and understanding between government and industry. through its affiliation with the American Council for Technology…

The Tactical Cloud

By G C Network | December 16, 2008

When cloud computing first came in vogue, there was a rather serious discussion about the private cloud concept. The whole idea of cloud computing seemed to argue against implementing such…

“Cloud Musings” Now on SYS-CON Media “Cloud Computing Journal” !!

By G C Network | December 15, 2008

I’m happy to announce that a recent “Cloud Musings” article, “Commercial vs Federal Cloud Computing ” has been reposted on SYS-CON Media’s “Cloud Computing Journal“. Thank you SYS-CON for making…

How to make clouds interoperable and standard !!

By G C Network | December 12, 2008

This has been a huge part of my life over the past few weeks! This is my personal view. WARNING: DON’T EXPECT THE ANSWER TO BE FOUND BELOW !!! There…

The Tension between Public and Private Clouds

By G C Network | December 11, 2008

Last week, during discussion on cloud interoperability and standards in Israel, I saw for the first time a real dichotomy in the value of public (external) and private (internal) clouds.…

Cloud Computing for Continuity of Operations (COOP)

By G C Network | December 10, 2008

Recently, I’ve been focusing on cloud computing for COOP. The way I looked at it, many government agencies are already using commercial shared facilities as COOP sites and that the…

NCOIC Plenary Session

By G C Network | December 9, 2008

Hopping a plane to the west coast today to attend the NCOIC Plenary in Costa Mesa, California. First day “Cloud Computing for Net-Centric Operations” agenda includes: David Ryan, Chief Architect…

Dataline named “Top 100 Cloud Computing Company”

By G C Network | December 9, 2008

SYS-CON’s Cloud Computing Journal included Dataline in its expanded list of the most active players in the cloud ecosystem. In adding Dataline to the “Top 100” list, Jeremy Geelan noted…

Autoscaling into the cloud- Good or Bad?

By G C Network | December 8, 2008

I always thought saw the ability to autoscale into a cloud infrastructure as a good thing. George Reese presented a differing view on the O’Reilly blog recently. “Auto-scaling is the…

Cloudera must be reading the script!

By G C Network | December 4, 2008

“Cloud computing leapt out as the most obvious way to address enterprise large data problems” – Ken Pierce, IT Specialist, DIA-DS/C4ISR “We view Hadoop as the key enabler…[in] optimizing the…

Photo credit: Shutterstock

According to the IBM Institute for Business Value the market will see a rapid adoption of initial cognitive systems. The most likely candidates have moved beyond descriptive and diagnostic, predictive and routine industry-specific capabilities. 70 percent of survey respondents are currently using advanced programmatic analytics in three or more departments. In fact, the widespread adoption of cognitive systems and artificial intelligence (AI) across various industries is expected to drive worldwide revenues from nearly US$8.0 billion in 2016 to more than US$47 billion in 2020.

The analyst firm IDC predictsthat the banking, retail, healthcare and discrete manufacturing industries will generate more than 50% of all worldwide cognitive/ AI revenues in 2016. Banking and retail will each deliver nearly US$1.5 billion, while healthcare and discrete manufacturing will deliver the greatest revenue growth over the 2016-2020 forecast period, with CAGRs of 69.3% and 61.4%, respectively. Education and process manufacturing will also experience significant growth over the forecast period.



Figure 1– Credit Cognitive Scale Inc.

So what can cognitive computing really do? Three amazing examples of this burgeoning computing model include:

·         DeepMind from Google that can mirror some of the brain’s short-term memory properties. This computer is built with a neural network capable of interacting with external memory. DeepMind can “remember” using this external memory and use it to understand new information and perform tasks beyond what it was programmed to do. The brain-like abilities of DeepMind mean that analysts can rely on commands and information, which the program can compare with past data queries and respond to without constant oversight.
·         IBM Watson which has a built-in natural language processor and hypothesis generator that it uses to perform evaluations and accomplish dynamic learning. This system is a lot more advanced than the digital assistants on our smartphones and allows users to ask questions in plain language, which Watson then translates into data language for querying.
·         The Qualcomm Zeroth Cognitive Computing Platform that relies on visual and auditory cognitive computing in to reflect human-like thinking and actions. A device running the platform can recognize objects, read handwriting, identify people and understand the overall context of a setting. Zero
th’s ability to replicate intuitive experiences provides a number of opportunities within sentiment analysis. With its ability to understand scenes and context, it can decipher how people are feeling based off facial expressions or voice stress levels.
This shift to cognitive computing will occur within the next 12 to 14 months for many organizations and cognitive era success requires data centric management culture, a common requisite for secure cloud computing. This similarity should not be surprising because both computing models:
  • Need robust and simplified data classification processes in order to more easily deliver industry and business model specific value;
  • Require the implementation of information technology security controls that are driven by data value and role based access control paradigms; and
  • Leverage software applications that should be developed using ISO 27034 which is a multi-part standard on specifying, designing/selecting and implementing information security controls through a set of processes integrated throughout an organization’s Systems Development Life Cycle/s (SDLC).
Companies that are leveraging cloud today must also prepare for the cognitive computing era. This blend of cloud and cognitive has, in fact, created a brand new application development model.

Referred to as Cognitive on cloud”, this model delivers cognitive services running in the cloud that are consumable via representational state transfer (REST) APIs. These services are available as part of platform-as-a-service (PaaS) offerings such as Bluemix and can be easily bound to an application while coding.

Using this approach, cognitive analytics such as voice (tone analyzer, speech-to-text) and video (face detection, visual recognition) capabilities enables quick analysis of petabytes of unstructured data. Developing cognitive applications to run on mobile devices has provided new insights which help organizations create totally new revenue streams. When selecting a cloud service provider however cognitive on cloud ROI requires more than just a total cost of ownership comparison. In addition to this basic analysis, an organization must consider which cloud is cognitive enabled at the Platform-as-a-Service (PaaS) layer. The convergence of cognitive computing and cloud is driving this cognitive-oriented digital economy and the potential return is seemingly unlimited.

This post was brought to you by IBM Global Technology Services. For more content like this, visit IT Biz Advisor.

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