May 10, 2012

ASYNC 2012: A Digital Neurosynaptic Core Using Event-Driven QDI Circuits

Building on recently published cognitive computing chip technology, this week at ASYNC 2012: IEEE International Symposium on Asynchronous Circuits and Systems Cornell-IBM team published a new paper that won the Best Paper Award.  

TITLE: A Digital Neurosynaptic Core Using Event-Driven QDI Circuits

AUTHORS: Nabil Imam, Filipp Akopyan, John Arthur, Paul Merolla, Rajit Manohar, Dharmendra S Modha

ABSTRACT: We design and implement a key building block of a scalable neuromorphic architecture capable of running spiking neural networks in compact and low-power hardware. Our innovation is a configurable neurosynaptic core that combines 256 integrate-and-fire neurons, 1024 input axons, and 1024x256 synapses in 4.2mm2 of silicon using a 45nm SOI process. We are able to achieve ultra-low energy consumption 1) at the circuit-level by using an asynchronous design where circuits only switch while performing neural updates; 2) at the core-level by implementing a 256 neural fanout in a single operation using a crossbar memory; and 3) at the architecture level by restricting core-to-core communication to spike events, which occur relatively sparsely in time. Our implementation is purely digital, resulting in reliable and deterministic operation that achieves for the first time one-to-one correspondence with a software simulator. At 45pJ per spike, our core is readily scalable and provides a platform for implementing a wide array of real-time computations. As an example, we demonstrate a sound localization system using coincidence-detecting neurons.

April 08, 2012

The Geometric Structure of the Brain Fiber Pathways

Recently, Science published a very interesting article:

ABSTRACT: The structure of the brain as a product of morphogenesis is difficult to reconcile with the observed complexity of cerebral connectivity. We therefore analyzed relationships of adjacency and crossing between cerebral fiber pathways in four nonhuman primate species and in humans by using diffusion magnetic resonance imaging. The cerebral fiber pathways formed a rectilinear three-dimensional grid continuous with the three principal axes of development. Cortico-cortical pathways formed parallel sheets of interwoven paths in the longitudinal and medio-lateral axes, in which major pathways were local condensations. Cross-species homology was strong and showed emergence of complex gyral connectivity by continuous elaboration of this grid structure. This architecture naturally supports functional spatio-temporal coherence, developmental path-finding, and incremental rewiring with correlated adaptation of structure and function in cerebral plasticity and evolution.

Interesting fragments from the paper:

"Geometrically, this configuration is highly exceptional ... This sheet structure was found throughout cerebral white matter and in all species, orientations, and curvatures. Moreover, no brain pathways were observed without sheet structure."

"Grid structure should restrict and simplify axonal path-finding compared with models that allow less constrained and less correlated connectivity within and between cerebral areas."

"Thus, the grid organization of cerebral pathways may represent a "default connectivity," on which adaptation of structure and function can both occur incrementally in evolution and development, plasticity, and function."  

February 04, 2012

What It'll Take To Go Exascale

January 27, 2012 issue of Science published a very interesting NEWSFOCUS on "What It'll Take To Go Exascale". Here is the abstract:

To accurately simulate global climate, researchers will need supercomputers more powerful than any yet designed. These so-called exascale computers would be capable of carrying out 10^18 floating point operations per second, or an exaflops. That's nearly 100 times more powerful than today's biggest supercomputer, Japan's "K Computer," which achieves 11.3 petaflops (1015 flops), and 1000 times faster than the Hopper supercomputer. The United States now appears poised to reach for the exascale, as do China, Japan, Russia, India, and the European Union. Advances in supercomputers have come at a steady pace over the past 20 years, enabled by the continual improvement in computer chip manufacturing. But this evolutionary approach won't cut it in getting to the exascale. Instead, computer scientists must first figure out ways to make future machines far more energy efficient and tolerant of errors, and find novel ways to program them.

December 13, 2011

The Best Innovation Moments of 2011 - The Washington Post

The Washington Post says:

"IBM researchers on Aug. 18, 2011 unveiled a new generation of experimental computer chips designed to emulate the brain’s abilities for perception, action and cognition. The cognitive computing chips, informally referred to as the “brain chip,” could yield many orders of magnitude less power consumption and space than used in today’s computers."

December 12, 2011

Scientific American: A Computer Chip That Thinks

December 2011 issue of Scientific American chronicles "10 World Changing Ideas" and amongst them is "A Computer Chip That Thinks - Neuron-based chips could solve unconventional problems" featuring IBM team's work on SyNAPSE / Cognitive Computing.

Scientific American - Cover

December 09, 2011

Creating Artificial Intelligence Based on the Real Thing

On December 6, 2011, The New York Times ran a series of articles on "Future of Computing" which included an in-depth profile of DARPA SyNAPSE project by Steve Lohr with quotes from Dr. Todd Hylton, Professor Rajit Manohar, Professor Giulio Tononi, Professor Chris Kello, and myself.

Here is a link.

October 06, 2011

Cognitive Computing Chip Papers

Paul Merolla, John Arthur, Filipp Akopyan, Nabil Imam, Rajit Manohar, Dharmendra S. Modha,
"A Digital Neurosynaptic Core using Embedded Crossbar Memory with 45pJ per spike in 45nm,"
IEEE Custom Integrated Circuits Conference, September 2011.

ABSTRACT: The grand challenge of neuromorphic computation is to develop a flexible brain-like architecture capable of a wide array of real-time applications, while striving towards the ultra-low power consumption and compact size of the human brain—within the constraints of existing silicon and post-silicon technologies. To this end, we fabricated a key building block of a modular neuromorphic architecture, a neurosynaptic core, with 256 digital integrate-and-fire neurons and a 1024x256 bit SRAM crossbar memory for synapses using IBM’s 45nm SOI process. Our fully digital implementation is able to leverage favorable CMOS scaling trends, while ensuring one-to-one correspondence between hardware and software. In contrast to a conventional von Neumann architecture, our core tightly integrates computation (neurons) alongside memory (synapses), which allows us to implement efficient fan-out (communication) in a naturally parallel and event-driven manner, leading to ultra-low active power consumption of 45pJ/spike. The core is fully configurable in terms of neuron parameters, axon types, and synapse states and is thus  amenable to a wide range of applications. As an example, we trained a restricted Boltzmann machine offline to perform a visual digit recognition task, and mapped the learned weights to our chip.


Jae-sun Seo, Bernard Brezzo, Yong Liu, Benjamin D. Parker, Steven K. Esser, Robert K. Montoye, Bipin Rajendran, Jose A. Tierno, Leland Chang, Dharmendra S. Modha, and Daniel J. Friedman,
"A 45nm CMOS Neuromorphic Chip with a Scalable Architecture for Learning in Networks of Spiking Neurons,"
IEEE Custom Integrated Circuits Conference, September 2011.

ABSTRACT: Efforts to achieve the long-standing dream of realizing scalable learning algorithms for networks of spiking neurons in silicon have been hampered by (a) the limited scalability of analog neuron circuits; (b) the enormous area overhead of learning circuits, which grows with the number of synapses; and (c) the need to implement all inter-neuron communication via off-chip address-events. In this work, a new architecture is proposed to overcome these challenges by combining innovations in computation, memory, and communication, respectively, to leverage (a) robust digital neuron circuits; (b) novel transposable SRAM arrays that share learning circuits, which grow only with the number of neurons; and (c) crossbar fan-out for efficient on-chip inter-neuron communication. Through tight integration of memory (synapses) and computation (neurons), a highly configurable chip comprising 256 neurons and 64K binary synapses with on-chip learning based on spike-timing dependent plasticity is demonstrated in 45nm SOI-CMOS. Near-threshold, event-driven operation at 0.53V is demonstrated to maximize power efficiency for real-time pattern classification, recognition, and associative memory tasks. Future scalable systems built from the foundation provided by this work will open up possibilities for ubiquitous ultra-dense, ultra-low power brain-like cognitive computers.

October 05, 2011

THINK: A Forum on the Future of Leadership

As part of IBM's centennial, IBM organized "THINK: A Forum on the Future of Leadership" on September 20-21, 2011 that I attended.

Our long-distance wiring diagram of the macaque monkey brain was merged with IBM’s signature word “THINK” to create a logo for this distinguished event.

Brain_THINK

Steve Hamm, co-author of Making the World Work Better: The Ideas That Shaped a Century and a Company, interviewed me on the challenge of bringing together a multi-year, multi-disciplinary, multi-institutional collaboration.  The video is here.

The postings on this site are my own and don’t necessarily represent IBM’s positions, strategies or opinions.