VERSES AI Inc. (CBOE:VERS) (OTCQB:VRSSF) (“VERSES” or the
“Company”), a cognitive computing company specializing in next
generation intelligent systems announces that a team, led by Chief
Scientist, Dr. Karl Friston, has published a paper titled, “From
pixels to planning: scale-free active inference,” which introduces
an efficient alternative to deep learning, reinforcement learning
and generative AI called Renormalizing Generative Models (RGMs)
that address foundational problems in artificial intelligence (AI),
namely versatility, efficiency, explainability and accuracy, using
a physics based approach.
‘Active inference’ is a framework with origins in neuroscience
and physics that describes how biological systems, including the
human brain, continuously generate and refine predictions based on
sensory input with the objective of becoming increasingly accurate.
While the science behind active inference has been well established
and is considered to be a promising alternative to state of the art
AI, it has not yet demonstrated a viable pathway to scalable
commercial solutions until now. RGM’s accomplish this using a
“scale-free” technique that adjusts to any scale of data.
“RGMs are more than an evolution; they’re a fundamental shift in
how we think about building intelligent systems from first
principles that can model space and time dimensions like we do,”
said Gabriel René, CEO of VERSES. “This could be the ‘one method to
rule them all’; because it enables agents that can model physics
and learn the causal structure of information we can design
multimodal agents that can not only recognize objects, sounds and
activities but can also plan and make complex decisions based on
that real world understanding—all from the same underlying model.
This promises to dramatically scale AI development, expanding its
capabilities, while reducing its cost.”
The paper describes how Renormalized Generative Models using
active inference were effectively able to perform many of the
fundamental learning tasks that today require individual AI models,
such as object recognition, image classification, natural language
processing, content generation, file compression and more. RGMs are
a versatile “universal architecture” that can be configured and
reconfigured to perform any or all of the same tasks as today’s AI
but with far greater efficiency. The paper describes how an RGM
achieved 99.8% accuracy on a subset of the MNIST digit recognition
task, a common benchmark in machine learning, using only 10,000
training images (90% less data). Sample and compute efficiency
translates directly into cost savings and development speed for
businesses building and employing AI systems. Upcoming papers are
expected to further demonstrate the effective and efficient
learning of RGMs and related research applied to MNIST and other
industry standard benchmarks such as the Atari Challenge.
“The brain is incredibly efficient at learning and adapting and
the mathematics in the paper offer a proof of principle for a
scale-agnostic, algorithmic approach to replicating human-like
cognition in software,” said Dr. Friston. Instead of conventional
brute-force training on a massive number of examples, RGMs “grow”
by learning about the underlying structure and hidden causes of
their observations. “The inference process itself can be cast as
selecting (the right) actions that minimize the energy cost for an
optimal outcome,” Friston continued.
Your brain doesn't process and store every pixel independently;
instead it “coarse-grains” patterns, objects, and relationships
from a mental model of concepts - a door handle, a tree, a bicycle.
RGMs likewise break down complex data like images or sounds into
simpler, compact, hierarchical components and learn to predict
these components efficiently, reserving attention for the most
informative or unique details. For example, driving a car becomes
“second nature” when we’ve mastered it well enough such that the
brain is primarily looking for anomalies to our normal
expectations.
By way of analogy, Google Maps is made up of an enormous amount
of data, estimated at many thousands of terabytes, yet it renders
viewports in real time even as users zoom in and out to different
levels of resolution. Rather than render the entire data set at
once, Google Maps serves up a small portion at the appropriate
level of detail. Similarly, RGMs are designed to structure and
traverse data such that scale – that is, the amount, diversity, and
complexity of data – is not expected to be a limiting factor.
“Within Genius, developers will be able to create a variety of
composable RGM agents with diverse skills that can be fitted to any
sized problem space, from a single room to an entire supply
network, all from a single architecture,” says Hari Thiruvengada,
VERSES's Chief Product Officer.
Further validation of the findings in the paper is required and
expected to be presented in future papers slated for publication
this year. Thiruvengada adds, “We’re optimistic that RGMs are a
strong contender for replacing deep learning, reinforcement
learning, and generative AI.”
The full paper is expected to be published on arxiv.org later
this week. A webinar featuring Professor Karl Friston discussing
the landmark paper is expected to be announced in August.
About VERSES
VERSES is a cognitive computing company building next-generation
intelligent software systems modeled after the wisdom and genius of
Nature. Designed around first principles found in science, physics
and biology, our flagship product, Genius™, is a toolkit for
developers to generate intelligent software agents that enhance
existing applications with the ability to reason, plan, and learn.
Imagine a Smarter World that elevates human potential through
technology inspired by Nature. Learn more
at verses.ai, LinkedIn and X.
On behalf of the Company
Gabriel René, Founder & CEO, VERSES AI Inc. Press Inquiries:
press@verses.ai
Investor Relations Inquiries
U.S., Matthew Selinger, Partner, Integrous Communications,
mselinger@integcom.us 415-572-8152Canada, Leo Karabelas, President,
Focus Communications, info@fcir.ca 416-543-3120
Cautionary Note Regarding Forward-Looking
Statements
When used in this press release, the words "estimate",
"project", "belief", "anticipate", "intend", "expect", "plan",
"predict", "may" or "should" and the negative of these words or
such variations thereon or comparable terminology are intended to
identify forward-looking statements and information. Although
VERSES believes, in light of the experience of their respective
officers and directors, current conditions and expected future
developments and other factors that have been considered
appropriate, that the expectations reflected in the forward-looking
statements and information in this press release are reasonable,
undue reliance should not be placed on them because the parties can
give no assurance that such statements will prove to be correct.
The forward-looking statements and information in this press
release include, among others, current and future research
projects, benchmark testing, as well as the beta and launch of
Genius. Such statements and information reflect the current view of
VERSES.
There are risks and uncertainties that may cause actual results
to differ materially from those contemplated in those
forward-looking statements and information. In making the
forward-looking statements in this news release, the Company has
applied various material assumptions. By their nature,
forward-looking statements involve known and unknown risks,
uncertainties and other factors which may cause our actual results,
performance or achievements, or other future events, to be
materially different from any future results, performance or
achievements expressed or implied by such forward-looking
statements. There are a number of important factors that could
cause VERSES actual results to differ materially from those
indicated or implied by forward-looking statements and information.
Such factors include, among others: the ability of the Company to
use the proceeds of the Private Placement as announced or at all;
currency fluctuations; limited business history of the parties;
disruptions or changes in the credit or security markets; results
of operation activities and development of projects; project cost
overruns or unanticipated costs and expenses; and general
development, market and industry conditions. The Company undertakes
no obligation to comment on analyses, expectations or statements
made by third parties in respect of its securities or its financial
or operating results (as applicable).
VERSES cautions that the foregoing list of material factors is
not exhaustive. When relying on VERSES’ forward-looking statements
and information to make decisions, investors and others should
carefully consider the foregoing factors and other uncertainties
and potential events. VERSES has assumed that the material factors
referred to in the previous paragraph will not cause such
forward-looking statements and information to differ materially
from actual results or events. However, the list of these factors
is not exhaustive and is subject to change and there can be no
assurance that such assumptions will reflect the actual outcome of
such items or factors. The forward-looking information contained in
this press release represents the expectations of VERSES as of the
date of this press release and, accordingly, are subject to change
after such date. VERSES does not undertake to update this
information at any particular time except as required in accordance
with applicable laws.
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