For IBM, a world leader in AI, as their Watson project has demonstrated, applying intelligence to storage is a natural. We’re facing a data onslaught like never before. We’ll be generating more data than we have capacity to store once IoT gets rolling.
Just as any software problem can be solved by adding a layer of indirection, any analytics problem can be solved by adding a layer of intelligence. Of course, we know a lot more about indirection than we do intelligence.
WHEAT VS CHAFF
IBM researchers are demoing an intelligent storage system that works something like your brain: It’s easier to remember something important, like a beautiful sunset over the Grand Canyon, than the last time you waited for a traffic light.
In Cognitive Storage for Big Data (paywall), IBM researchers Giovanni Cherubini, Jens Jelitto, and Vinodh Venkatesan, of IBM Research-Zurich, describe their prototype system. The key is using machine learning to determine data value.
If you’re processing IoT data sets, the storage system’s AI would “know” what is important about prior data sets and apply those criteria – access frequency, protection level, divergence from norms, time value, etc. – to incoming data. As the system watches human interaction with the data set, it learns what is important to users and tiers, protects and stores data according to user needs.
EXPERIMENTAL RESULTS
The researchers used a learning algorithm known as the “Information Bottleneck” (IB):
. . . a supervised learning technique that has been used in the closely related context of document classication, where it has been shown to have lower complexity and higher robustness than other learning methods.
IB, essentially, correlates the information’s metadata values to cognitive relevance values with the goal of preserving the mutual information between the two. The greater the mutual information, the more valuable the data and, hence, the higher the level of protection, access, and so on.
THE STORAGE BITS TAKE
Enabling machine intelligence to delete less valuable data is an essential feature. And it’s the capability most likely to frighten users. Establishing human trust in machine intelligence is a major domain problem – see Will Smith’s character in I, Robot.
Sure, you can schlep unlikely-to-be-needed data off to low cost tape – IBM is a leading tape drive vendor – but the “store everything forever” algorithm doesn’t scale – and if something can’t go on forever, it won’t.
Another issue – which is beyond the scope of the paper – is also scale-related: how large will the storage system need to be to justify the cost and overhead of cognition? Enterprise scale or purely web-scale?
There have been many attempts to add intelligence to storage systems. They’ve failed because the intelligence cost more than additional storage. Storage costs continue to fall faster than computational costs, creating a difficult economic dynamic for cognitive storage. Time for some algorithmic magic!
Nonetheless, the IBM team is doing important work. While the applications of machine intelligence are many, they aren’t infinite. Understanding its limits with respect to the foundation of any digital civilization – storage – is critical to our cultural legacy.
This article was originally published on www.zdnet.com and can be viewed in full


Archive
- October 2024(44)
- September 2024(94)
- August 2024(100)
- July 2024(99)
- June 2024(126)
- May 2024(155)
- April 2024(123)
- March 2024(112)
- February 2024(109)
- January 2024(95)
- December 2023(56)
- November 2023(86)
- October 2023(97)
- September 2023(89)
- August 2023(101)
- July 2023(104)
- June 2023(113)
- May 2023(103)
- April 2023(93)
- March 2023(129)
- February 2023(77)
- January 2023(91)
- December 2022(90)
- November 2022(125)
- October 2022(117)
- September 2022(137)
- August 2022(119)
- July 2022(99)
- June 2022(128)
- May 2022(112)
- April 2022(108)
- March 2022(121)
- February 2022(93)
- January 2022(110)
- December 2021(92)
- November 2021(107)
- October 2021(101)
- September 2021(81)
- August 2021(74)
- July 2021(78)
- June 2021(92)
- May 2021(67)
- April 2021(79)
- March 2021(79)
- February 2021(58)
- January 2021(55)
- December 2020(56)
- November 2020(59)
- October 2020(78)
- September 2020(72)
- August 2020(64)
- July 2020(71)
- June 2020(74)
- May 2020(50)
- April 2020(71)
- March 2020(71)
- February 2020(58)
- January 2020(62)
- December 2019(57)
- November 2019(64)
- October 2019(25)
- September 2019(24)
- August 2019(14)
- July 2019(23)
- June 2019(54)
- May 2019(82)
- April 2019(76)
- March 2019(71)
- February 2019(67)
- January 2019(75)
- December 2018(44)
- November 2018(47)
- October 2018(74)
- September 2018(54)
- August 2018(61)
- July 2018(72)
- June 2018(62)
- May 2018(62)
- April 2018(73)
- March 2018(76)
- February 2018(8)
- January 2018(7)
- December 2017(6)
- November 2017(8)
- October 2017(3)
- September 2017(4)
- August 2017(4)
- July 2017(2)
- June 2017(5)
- May 2017(6)
- April 2017(11)
- March 2017(8)
- February 2017(16)
- January 2017(10)
- December 2016(12)
- November 2016(20)
- October 2016(7)
- September 2016(102)
- August 2016(168)
- July 2016(141)
- June 2016(149)
- May 2016(117)
- April 2016(59)
- March 2016(85)
- February 2016(153)
- December 2015(150)