Molecular Systems Design & Engineering,
Journal Year:
2024,
Volume and Issue:
unknown
Published: Jan. 1, 2024
We
report
the
use
of
a
multiagent
generative
artificial
intelligence
framework,
X-LoRA-Gemma
large
language
model
(LLM),
to
analyze,
design
and
test
molecular
design.
The
model,
inspired
by
biological...
Advanced Functional Materials,
Journal Year:
2024,
Volume and Issue:
unknown
Published: Sept. 5, 2024
Abstract
Cephalo
is
presented
as
a
series
of
multimodal
vision
large
language
models
(V‐LLMs)
designed
for
materials
science
applications,
integrating
visual
and
linguistic
data
enhanced
understanding.
A
key
innovation
its
advanced
dataset
generation
method.
trained
on
integrated
image
text
from
thousands
scientific
papers
science‐focused
Wikipedia
demonstrates
it
can
interpret
complex
scenes,
generate
precise
descriptions,
answer
queries
about
images
effectively.
The
combination
encoder
with
an
autoregressive
transformer
supports
natural
understanding,
which
be
coupled
other
generative
methods
to
create
image‐to‐text‐to‐3D
pipeline.
To
develop
more
capable
smaller
ones,
both
mixture‐of‐expert
model
merging
are
reported.
examined
in
diverse
use
cases
that
incorporate
biological
materials,
fracture
engineering
analysis,
protein
biophysics,
bio‐inspired
design
based
insect
behavior.
Generative
applications
include
designs,
including
pollen‐inspired
architected
well
the
synthesis
material
microstructures
photograph
solar
eclipse.
Additional
fine‐tuning
molecular
dynamics
results
demonstrate
Cephalo's
capabilities
accurately
predict
statistical
features
stress
atomic
energy
distributions,
crack
damage
materials.
Vicinagearth.,
Journal Year:
2024,
Volume and Issue:
1(1)
Published: Oct. 8, 2024
Abstract
The
pursuit
of
more
intelligent
and
credible
autonomous
systems,
akin
to
human
society,
has
been
a
long-standing
endeavor
for
humans.
Leveraging
the
exceptional
reasoning
planning
capabilities
large
language
models
(LLMs),
LLM-based
agents
have
proposed
achieved
remarkable
success
across
wide
array
tasks.
Notably,
multi-agent
systems
(MAS)
are
considered
promising
pathway
towards
realizing
general
artificial
intelligence
that
is
equivalent
or
surpasses
human-level
intelligence.
In
this
paper,
we
present
comprehensive
survey
these
studies,
offering
systematic
review
MAS.
Adhering
workflow
synthesize
structure
encompassing
five
key
components:
profile,
perception,
self-action,
mutual
interaction,
evolution.
This
unified
framework
encapsulates
much
previous
work
in
field.
Furthermore,
illuminate
extensive
applications
MAS
two
principal
areas:
problem-solving
world
simulation.
Finally,
discuss
detail
several
contemporary
challenges
provide
insights
into
potential
future
directions
domain.
Journal of Chemical Information and Modeling,
Journal Year:
2024,
Volume and Issue:
64(20), P. 7895 - 7904
Published: Oct. 8, 2024
The
advent
of
generative
Large
Language
Models
(LLMs)
has
greatly
impacted
the
field
Natural
Processing.
However,
it
is
inconclusive
how
LLMs
perform
on
domain-specific
information
extraction
tasks.
This
study
compares
performance
GPT-4
and
a
rule-based
method
based
ChemDataExtractor
band
gap
extraction,
task
that
important
implications
for
materials
science
domain.
No
training
data
required
either
method,
which
desirable
because
there
lack
in
domain
compared
with
variety
material
interest.
Manual
evaluation
415
randomly
selected
articles
showed
model
achieved
higher
level
accuracy
extracting
materials'
than
(Correctness
87.95%
vs
51.08%,
Partial
correctness
11.33%
36.87%,
incorrectness
0.72%
12.05%).
Further
analysis
errors
reveals
strengths
weaknesses
to
method.
shows
stronger
interdependency
resolution
complicated
name
recognition,
while
also
hallucination,
identifying
values,
types.
Revised
prompt
error
leads
improved
GPT-4.
To
best
our
knowledge,
this
first
compare
task.
provides
evidence
support
using
Aging,
Journal Year:
2025,
Volume and Issue:
unknown
Published: Jan. 16, 2025
With
the
global
population
aging
at
an
unprecedented
rate,
there
is
a
need
to
extend
healthy
productive
life
span.
This
review
examines
how
Deep
Learning
(DL)
and
Generative
Artificial
Intelligence
(GenAI)
are
used
in
biomarker
discovery,
deep
clock
development,
geroprotector
identification
generation
of
dual-purpose
therapeutics
targeting
disease.
The
paper
explores
emergence
multimodal,
multitasking
research
systems
highlighting
promising
future
directions
for
GenAI
human
animal
research,
as
well
clinical
application
longevity
medicine.
Proceedings of the National Academy of Sciences,
Journal Year:
2025,
Volume and Issue:
122(4)
Published: Jan. 24, 2025
The
design
of
new
alloys
is
a
multiscale
problem
that
requires
holistic
approach
involves
retrieving
relevant
knowledge,
applying
advanced
computational
methods,
conducting
experimental
validations,
and
analyzing
the
results,
process
typically
slow
reserved
for
human
experts.
Machine
learning
can
help
accelerate
this
process,
instance,
through
use
deep
surrogate
models
connect
structural
chemical
features
to
material
properties,
or
vice
versa.
However,
existing
data-driven
often
target
specific
objectives,
offering
limited
flexibility
integrate
out-of-domain
knowledge
cannot
adapt
new,
unforeseen
challenges.
Here,
we
overcome
these
limitations
by
leveraging
distinct
capabilities
multiple
AI
agents
collaborate
autonomously
within
dynamic
environment
solve
complex
materials
tasks.
proposed
physics-aware
generative
platform,
AtomAgents,
synergizes
intelligence
large
language
(LLMs)
collaboration
among
with
expertise
in
various
domains,
including
retrieval,
multimodal
data
integration,
physics-based
simulations,
comprehensive
results
analysis
across
modalities.
concerted
effort
multiagent
system
allows
addressing
problems,
as
demonstrated
examples
include
designing
metallic
enhanced
properties
compared
their
pure
counterparts.
Our
enable
accurate
prediction
key
characteristics
highlight
crucial
role
solid
solution
alloying
steer
development
alloys.
framework
enhances
efficiency
multiobjective
tasks
opens
avenues
fields
such
biomedical
engineering,
renewable
energy,
environmental
sustainability.
Science Advances,
Journal Year:
2025,
Volume and Issue:
11(13)
Published: March 26, 2025
Peptides
are
ubiquitous
and
important
biomolecules
that
self-assemble
into
diverse
structures.
Although
extensive
research
has
explored
the
effects
of
chemical
composition
exterior
conditions
on
self-assembly,
a
systematic
study
consolidating
these
data
to
uncover
global
rules
is
lacking.
In
this
work,
we
curate
peptide
assembly
database
through
combination
manual
processing
by
human
experts
large
language
model–assisted
literature
mining.
As
result,
collect
over
1000
experimental
entries
with
information
about
sequence,
conditions,
corresponding
self-assembly
phases.
Using
data,
machine
learning
models
developed,
demonstrating
excellent
accuracy
(>80%)
in
phase
classification.
Moreover,
fine-tune
GPT
model
for
mining
developed
dataset,
which
markedly
outperforms
pretrained
extracting
from
academic
publications.
This
workflow
can
improve
efficiency
when
exploring
potential
self-assembling
candidates,
guiding
while
also
deepening
our
understanding
governing
mechanisms.
BioScience,
Journal Year:
2025,
Volume and Issue:
unknown
Published: March 28, 2025
Abstract
Natural
history
collections
play
a
crucial
role
in
our
understanding
of
biodiversity,
informing
research,
management,
and
policy
areas
such
as
biosecurity,
conservation,
climate
change,
food
security.
However,
the
growing
volume
specimens
associated
data
presents
significant
challenges
for
curation
management.
By
leveraging
human–AI
collaborations,
we
aim
to
transform
way
biological
are
curated
managed,
realizing
their
full
potential
addressing
global
challenges.
In
this
article,
discuss
vision
improving
management
using
collaboration.
We
explore
rationale
behind
approach,
faced
general
problems,
benefits
that
could
be
derived
from
incorporating
AI-based
assistants
collection
teams.
Finally,
examine
future
possibilities
collaborations
between
human
digital
curators
collection-based
research.
Advanced Materials,
Journal Year:
2024,
Volume and Issue:
unknown
Published: Dec. 18, 2024
Abstract
A
key
challenge
in
artificial
intelligence
(AI)
is
the
creation
of
systems
capable
autonomously
advancing
scientific
understanding
by
exploring
novel
domains,
identifying
complex
patterns,
and
uncovering
previously
unseen
connections
vast
data.
In
this
work,
SciAgents,
an
approach
that
leverages
three
core
concepts
presented:
(1)
large‐scale
ontological
knowledge
graphs
to
organize
interconnect
diverse
concepts,
(2)
a
suite
large
language
models
(LLMs)
data
retrieval
tools,
(3)
multi‐agent
with
in‐situ
learning
capabilities.
Applied
biologically
inspired
materials,
SciAgents
reveals
hidden
interdisciplinary
relationships
were
considered
unrelated,
achieving
scale,
precision,
exploratory
power
surpasses
human
research
methods.
The
framework
generates
refines
hypotheses,
elucidating
underlying
mechanisms,
design
principles,
unexpected
material
properties.
By
integrating
these
capabilities
modular
fashion,
system
yields
discoveries,
critiques
improves
existing
retrieves
up‐to‐date
about
research,
highlights
strengths
limitations.
This
achieved
harnessing
“swarm
intelligence”
similar
biological
systems,
providing
new
avenues
for
discovery.
How
model
accelerates
development
advanced
materials
unlocking
Nature's
resulting
biocomposite
enhanced
mechanical
properties
improved
sustainability
through
energy‐efficient
production
shown.