ACM SIGEnergy Energy Informatics Review,
Journal Year:
2024,
Volume and Issue:
4(4), P. 226 - 237
Published: Oct. 1, 2024
There
is
a
great
need
for
high-quality
and
comprehensive
data
in
the
energy
sector.
This
collected
preprocessed
at
considerable
expense
not
only
required
research,
but
also
by
planning
offices
other
industries
connection
with
activities,
such
as
creation
of
municipal
heat
planning.
The
NEED
ecosystem
will
accelerate
these
processes
establishing
an
efficient,
robust,
scalable
ecosystem.
Heterogeneous
energy-related
sources
be
brought
together
automatically
linked
consistently
across
different
sectors
well
temporal
spatial
levels.
In
this
context,
existing
replaced
rather
integrated
into
dedicated
including
semantic
description
on
how
to
utilize
them.
addition
conventional
from
various
levels,
we
envision
quality
assessment
scheme
based
FAIR
criteria.
reality,
are
often
faced
missing
data,
too.
To
close
gap
explore
data-driven,
model-driven,
AI-based,
tool-driven
generation
synthetic
data.
These
heterogeneous
interlinked
using
ontology
modules
which
represented
knowledge
graph.
Via
API,
queries
generated
identify
sources,
orchestrated
provide
needed.
enable
researchers,
planners,
others
their
tools
interact
ecosystem,
while
tool
proxy
able
translate
resulting
proprietary
formats,
some
operate.
planned
easy-to-maintain,
flexible
infrastructure
enhance
measures
levels
time
horizons.
We
evaluate
our
approach
transparent
provision
integrating
relevant
microservices,
definition
analysis
application
scenarios
domain,
integration
purposes.
With
elements,
quantify
efficiency
procurement
demonstrate
functionality
practical
use
cases.
Nature Communications,
Journal Year:
2024,
Volume and Issue:
15(1)
Published: Jan. 23, 2024
Abstract
The
ability
to
integrate
resources
and
share
knowledge
across
organisations
empowers
scientists
expedite
the
scientific
discovery
process.
This
is
especially
crucial
in
addressing
emerging
global
challenges
that
require
solutions.
In
this
work,
we
develop
an
architecture
for
distributed
self-driving
laboratories
within
World
Avatar
project,
which
seeks
create
all-encompassing
digital
twin
based
on
a
dynamic
graph.
We
employ
ontologies
capture
data
material
flows
design-make-test-analyse
cycles,
utilising
autonomous
agents
as
executable
components
carry
out
experimentation
workflow.
Data
provenance
recorded
ensure
its
findability,
accessibility,
interoperability,
reusability.
demonstrate
practical
application
of
our
framework
by
linking
two
robots
Cambridge
Singapore
collaborative
closed-loop
optimisation
pharmaceutically-relevant
aldol
condensation
reaction
real-time.
graph
autonomously
evolves
toward
scientist’s
research
goals,
with
effectively
generating
Pareto
front
cost-yield
three
days.
Globalization and Health,
Journal Year:
2024,
Volume and Issue:
20(1)
Published: May 21, 2024
The
advancement
of
artificial
intelligence
(AI),
algorithm
optimization
and
high-throughput
experiments
has
enabled
scientists
to
accelerate
the
discovery
new
chemicals
materials
with
unprecedented
efficiency,
resilience
precision.
Over
recent
years,
so-called
autonomous
experimentation
(AE)
systems
are
featured
as
key
AI
innovation
enhance
research
development
(R&D).
Also
known
self-driving
laboratories
or
acceleration
platforms,
AE
digital
platforms
capable
running
a
large
number
autonomously.
Those
rapidly
impacting
biomedical
clinical
innovation,
in
areas
such
drug
discovery,
nanomedicine,
precision
oncology,
others.
As
it
is
expected
that
will
impact
healthcare
from
local
global
levels,
its
implications
for
science
technology
emerging
economies
should
be
examined.
By
examining
increasing
relevance
contemporary
R&D
activities,
this
article
aims
explore
health
highlighting
implications,
challenges
opportunities
economies.
presents
an
opportunity
stakeholders
co-produce
knowledge
landscape
health.
However,
asymmetries
capabilities
acknowledged
since
suffers
inadequacies
discontinuities
resources
funding.
establishment
decentralized
infrastructures
could
support
overcome
restrictions
opens
venues
more
culturally
diverse,
equitable,
trustworthy
health-related
through
meaningful
partnerships
engagement.
Collaborations
innovators
facilitate
anticipation
fiscal
pressures
policies,
obsolescence
infrastructures,
ethical
regulatory
policy
lag,
other
issues
present
Global
South.
Also,
improving
cultural
geographical
representativeness
contributes
foster
diffusion
acceptance
worldwide.
Institutional
preparedness
critical
enable
navigate
coming
years.
Pharmacological Research,
Journal Year:
2024,
Volume and Issue:
200, P. 107078 - 107078
Published: Jan. 21, 2024
Substance
use
disorders
(SUDs)
and
drug
overdose
are
a
public
health
emergency
safe
effective
treatments
urgently
needed.
Developing
new
medications
to
treat
them
is
expensive,
time-consuming,
the
probability
of
compound
progressing
clinical
trials
obtaining
FDA-approval
low.
The
small
number
FDA-approved
for
SUDs
reflects
low
interest
pharmaceutical
companies
invest
in
this
area
due
market
forces,
characteristics
population
(e.g.,
stigma,
socio-economic
legal
disadvantages),
high
bar
regulatory
agencies
set
medication
approval.
In
consequence,
most
research
on
funded
by
government
agencies,
such
as
National
Institute
Drug
Abuse
(NIDA).
Multiple
scientific
opportunities
emerging
that
can
accelerate
discovery
development
SUDs.
These
include
fast
efficient
tools
screen
molecules,
discover
targets,
big
data
explore
large
sets
artificial
intelligence
(AI)
applications
make
predictions,
precision
medicine
individualize
optimize
treatments.
This
review
provides
general
description
these
strategies
with
emphasis
gaps
opportunities.
It
includes
brief
overview
rising
toll
SUDs;
justification,
challenges,
develop
medications;
discussion
treatment
endpoints
being
evaluated
support
from
NIDA.
Deleted Journal,
Journal Year:
2024,
Volume and Issue:
1(1), P. 100004 - 100004
Published: Feb. 5, 2024
To
substantially
expedite
scientific
discovery,
research
laboratories
need
to
be
further
automated.
In
this
regard,
the
community
envisions
an
'AI
scientist'
capable
of
planning,
conducting,
and
assessing
experiments
based
on
higher-order
goals
reasoning
capabilities.
We
argue
that
a
paradigm
shift
is
necessary
bridge
gap
between
current
trajectory
lab
automation
vision.
Adopting
systems
perspective
reveals
several
key
challenges
must
addressed.
achieving
holistic
requires
network
comprehensive
distributed
digital
twins
grounded
in
universal
knowledge
model.
Dynamic
graphs
are
expected
play
important
role,
we
introduce
framework
encompassing
all
aspects
experimental
research,
including
infrastructure
peripheries.
Our
considers
human-machine
interactions
from
outset
empower
goal-driven
approach
brings
autonomy.
ACS Omega,
Journal Year:
2024,
Volume and Issue:
9(12), P. 13883 - 13896
Published: March 12, 2024
In
this
study,
we
present
a
question
answering
(QA)
system
for
chemistry,
named
Marie,
with
the
use
of
text-to-text
pretrained
language
model
to
attain
accurate
data
retrieval.
The
underlying
store
is
"The
World
Avatar"
(TWA),
general
world
consisting
knowledge
graph
that
evolves
over
time.
TWA
includes
information
about
chemical
species
such
as
their
and
physical
properties,
applications,
classifications.
Building
upon
our
previous
work
on
KGQA
advanced
version
Marie
leverages
fine-tuned
Flan-T5
seamlessly
translate
natural
questions
into
SPARQL
queries
no
separate
components
entity
relation
linking.
developed
QA
demonstrates
competence
in
providing
results
complex
involve
many
hops
well
showcasing
ability
balance
correctness
speed
real-world
usage.
This
new
approach
offers
significant
advantages
prior
implementation
relied
embedding.
Specifically,
updated
boasts
high
accuracy
great
flexibility
accommodating
changes
evolution
stored
without
necessitating
retraining.
Our
evaluation
underscore
efficacy
improved
system,
highlighting
its
superior
compared
predecessor.
Research Square (Research Square),
Journal Year:
2023,
Volume and Issue:
unknown
Published: July 25, 2023
Abstract
The
ability
to
integrate
resources
and
share
knowledge
across
organisations
empowers
scientists
expedite
the
scientific
discovery
process.
This
is
especially
crucial
in
addressing
emerging
global
challenges
that
require
solutions.
In
this
work,
we
develop
an
architecture
enable
distributed
self-driving
laboratories
as
part
of
World
Avatar
project,
which
seeks
demonstrate
how
create
all-encompassing
digital
twin
based
on
a
dynamic
graph.
Our
approach
utilises
ontologies
capture
data
material
flows
involved
design-make-test-analyse
cycles,
employs
autonomous
agents
executable
components
carry
out
experimentation
workflow.
All
provenance
recorded
following
FAIR
principles,
ensuring
its
accessibility
interoperability.
We
practical
application
our
framework
by
linking
two
robots
Cambridge
Singapore
achieve
collaborative
closed-loop
optimisation
for
pharmaceutically-relevant
aldol
condensation
reaction
real
time.
graph
evolves
autonomously
while
progressing
towards
research
goals
set
scientist.
effectively
produced
Pareto
front
cost-yield
problem
over
course
three
days
operation.
ACS Omega,
Journal Year:
2023,
Volume and Issue:
8(36), P. 33039 - 33057
Published: Aug. 25, 2023
This
paper
presents
a
novel
knowledge
graph
question
answering
(KGQA)
system
for
chemistry,
which
is
implemented
on
hybrid
embeddings,
aiming
to
provide
fact-oriented
information
retrieval
chemistry-related
research
and
industrial
applications.
Unlike
other
existing
designs,
the
operates
multiple
embedding
spaces,
use
various
methods
queries
spaces
in
parallel.
With
answers
returned
from
leverages
score
alignment
model
adjust
answer
scores
rerank
answers.
Further,
implements
an
algorithm
derive
implicit
multihop
relations
handle
complexities
of
deep
ontologies
improve
answering.
The
also
BERT-based
bidirectional
entity-linking
enhance
robustness
accuracy
module.
uses
joint
numerical
efficiently
filtering
questions.
it
can
invoke
semantic
agents
perform
dynamic
calculations
autonomously.
Finally,
KGQA
handles
numerous
chemical
reaction
mechanisms
using
parsing
supported
by
Linked
Data
Fragment
server.
evaluates
each
module
within
with
chemistry
data
set.
Chem,
Journal Year:
2024,
Volume and Issue:
10(4), P. 1071 - 1083
Published: Jan. 26, 2024
The
pressing
challenge
of
decarbonization
encompasses
a
vast
combinatorial
space
interlinked
technologies,
thus
necessitating
an
increased
reliance
on
artificial
intelligence
(AI)-assisted
molecular
modeling
and
data
analytics.
Our
backcasting
analysis
proposes
future
rich
in
efficient
such
as
sustainable
fuels
for
aviation
shipping,
well
carbon
capture
utilization.
We
then
retrace
the
path
to
this
proposed
with
guidance
two
constraints:
maximization
scientists'
creative
capacities
evolution
world-centric
AI.
exploration
leads
us
concept
"CreatorSpace,"
distributed
digital
system
resembling
existing
hackerspaces
makerspaces
known
accelerating
prototyping
new
technologies
worldwide.
CreatorSpace
serves
virtual,
semantic
platform
where
chemists,
engineers,
materials
scientists
can
freely
collaborate,
integrating
chemical
knowledge
cross-scale,
cross-technology
tools,
operations.
This
streamlined
molecular-to-process-design
pathway
facilitates
diverse
array
solutions
other
sustainability
technologies.
Journal of Chemical Information and Modeling,
Journal Year:
2024,
Volume and Issue:
unknown
Published: Sept. 20, 2024
A
knowledge
graph
(KG)
is
a
technique
for
modeling
entities
and
their
interrelations.
Knowledge
embedding
(KGE)
translates
these
relationships
into
continuous
vector
space
to
facilitate
dense
efficient
representations.
In
the
domain
of
chemistry,
applying
KG
KGE
techniques
integrates
heterogeneous
chemical
information
coherent
user-friendly
framework,
enhances
representation
data
features,
beneficial
downstream
tasks,
such
as
property
prediction.
This
paper
begins
with
comprehensive
review
classical
contemporary
methodologies,
including
distance-based
models,
semantic
matching
neural
network-based
approaches.
We
then
catalogue
primary
databases
employed
in
chemistry
biochemistry
that
furnish
KGs
essential
data.
Subsequently,
we
explore
latest
applications
focusing
on
risk
assessment,
prediction,
drug
discovery.
Finally,
discuss
current
challenges
provide
perspective
potential
future
developments.