Sustainability,
Год журнала:
2024,
Номер
16(24), С. 11244 - 11244
Опубликована: Дек. 21, 2024
This
exploratory
study
investigates
Generative
Artificial
Intelligence’s
(GenAI)
use
in
strategy
ideation
for
nanostores—i.e.,
small
independent
grocery
retailers—to
enhance
their
competitiveness
while
contributing
to
community
sustainability.
Nanostores,
particularly
emerging
countries,
face
intense
competition
and
rapidly
changing
trends.
These
stores
adopt
various
strategies
by
leveraging
proximity
consumers
neighbourhoods,
resulting
different
business
configurations.
While
the
existing
literature
highlights
broader
nanostores’
functions,
there
is
limited
research
on
how
they
may
develop
comprehensive
challenges.
By
employing
a
thing
ethnography
methodology,
this
work
proposes
GenAI
interviewing—i.e.,
with
ChatGPT
3.5
Microsoft
Copilot—through
incremental
prompting
explore
potential
practices.
Key
findings
suggest
conversations
can
aid
shopkeepers
through
human-like
written
language,
aligning
dynamics
structures.
proposition
results
framework
generation
definition.
Moreover,
technology
nanostore
sustainability
impact
enacting
improved
practices
stakeholder
engagements.
Accordingly,
work’s
main
contribution
underscores
GenAI-enabled
conversational
approach
facilitate
embedding
everyday
operations.
Future
must
address
limitations
further
investigate
GenAI’s
influence
human
understanding
technological
creation,
ideation,
adoption,
usability
nanostores.
Journal of Systems and Information Technology,
Год журнала:
2025,
Номер
unknown
Опубликована: Янв. 14, 2025
Purpose
The
purpose
of
this
study
is
to
investigate
the
primary
determinants
influencing
acceptance
generative
artificial
intelligence
(GAI)
adoption
within
Blockchain-enabled
environments.
Further
research
will
examine
impact
GAI
on
supply
chain
efficiency
(SCE)
through
enhancement
Blockchain.
Design/methodology/approach
Drawing
innovation
diffusion
theory
(IDT),
used
partial
least
square
structural
equation
modelling
(PLS-SEM)
look
into
hypotheses.
data
were
gathered
via
online
questionnaires
from
employers
Chinese
enterprises
that
have
already
integrated
Findings
findings
demonstrate
relative
advantages
(RAs),
compatibility,
trialability
and
observability
a
significant
positive
effect
adoption,
while
complexity
harms
adoption.
Above
all,
has
significantly
enhanced
Blockchain,
thus
effectively
improving
SCE.
Practical
implications
outcomes
furnish
organizations
with
valuable
insights
proficiently
integrate
Blockchain
capability,
optimize
management
bolster
market
competitiveness.
Also,
help
accelerate
successful
integration
business
processes
attain
Sustainability
Development
Goals
9,
industrial
growth
diversification.
Originality/value
To
extent
author’s
knowledge,
current
status
remains
largely
exploratory,
there
limited
empirical
evidence
integrating
capability
GAI.
This
bridges
knowledge
gap
by
fully
revealing
optimal
these
two
transformative
technologies
leverage
their
potential
in
management.
Asia-Pacific Journal of Business Administration,
Год журнала:
2024,
Номер
unknown
Опубликована: Ноя. 25, 2024
Purpose
In
this
research,
we
seek
to
understand
the
effects
of
artificial
intelligence
(AI)
and
knowledge
management
(KM)
processes
in
enhancing
proactive
green
innovation
(PGI)
within
oil
gas
organizations.
It
also
aims
investigate
moderator
role
trust
sustainability
these
relationships.
Design/methodology/approach
This
paper
employs
a
quantitative
analysis.
Surveys
have
been
gathered
from
middle-line
managers
twenty-four
government
organizations
evaluate
perceptions
towards
AI,
KM
processes,
trust,
measures
toward
innovation.
Analytical
statistical
tools
that
were
employed
study,
including
structural
equation
modeling
with
SmartPLSv3.9,
used
analyze
data
examine
measurement
models
study.
Findings
The
study
results
reveal
significant
positive
impact
AI
utilization,
PGI
Furthermore,
turn
out
be
viable
moderators
affecting,
influencing
strength
direction
particular,
higher
levels
more
substantial
commitments
enhance
on
outcomes.
Practical
implications
Understanding
KM,
offers
valuable
insights
for
organizational
leaders
policymakers
seeking
promote
industry.
Thus,
can
increase
efficiency
sustainable
product
development,
process
improvement
environmental
by
using
robust
technologies
effective
systems.
fostering
among
stakeholders
embedding
principles
into
culture
amplify
effectiveness
initiatives
driving
Originality/value
extends
current
assessing
effect
while
accounting
as
moderators.
Utilizing
methods
nuanced
understanding
complex
interactions
between
variables,
thereby
advancing
theoretical
fields
management,
behavior.
Additionally,
identification
specific
mechanisms
contextual
factors
enriches
practical
practitioners
striving
dynamics
complexities
an
AI-driven
era.
Sustainability,
Год журнала:
2025,
Номер
17(2), С. 789 - 789
Опубликована: Янв. 20, 2025
Purpose:
This
systematic
literature
review
analyzes
trends,
key
findings,
and
research
opportunities
in
manufacturing
sustainability
from
2019
to
2024,
with
a
focus
on
the
integration
of
emerging
technologies
socio-economic
dimensions.
Methodology:
181
publications
was
conducted,
emphasizing
technological
advancements,
gaps,
influence
global
events
sustainable
manufacturing.
Findings:
highlights:
(1)
shift
towards
advanced
like
AI-driven
circular
economy
solutions,
digital
twins,
blockchain,
which
have
demonstrated
potential
reduce
energy
consumption
by
30%
decrease
material
waste
20%,
significantly
enhancing
outcomes;
(2)
persistent
gaps
addressing
social,
policy,
regulatory
dimensions;
(3)
role
COVID-19
pandemic
accelerating
transformation
reshaping
priorities.
Key
findings
also
include
PT
Indocement
achieving
cumulative
35%
reduction
natural
gas
through
sustained
optimization
initiatives
12%
increase
adoption
among
SMEs
developing
regions.
Practical
implications:
strategic
recommendations
are
provided
for
industry,
policymakers,
academics
address
regional
disparities,
ensuring
50%
rates
inclusive
within
regions
over
next
five
years,
align
efforts
contexts.
Originality:
this
presents
comprehensive
analysis
current
actionable
insights,
critical
areas
future
research,
highlighting
that
organizations
adopting
AI
blockchain
report
up
25%
improvement
operational
sustainability.
Advances in educational technologies and instructional design book series,
Год журнала:
2025,
Номер
unknown, С. 287 - 320
Опубликована: Янв. 3, 2025
This
chapter
highlights
the
transformative
impact
of
Artificial
Intelligence
on
education
sector
in
Bangladesh,
reshaping
learning
experience
for
students.
It
emphasizes
how
AI
fosters
personalized
learning,
increases
access
to
resources,
and
enhances
skill
development,
while
also
addressing
challenges
like
infrastructural
limitations,
teacher
readiness,
societal
resistance.
The
discussion
includes
important
ethical
considerations,
such
as
data
privacy
algorithmic
fairness,
underscoring
need
responsible
integration.
By
synthesizing
existing
literature,
paper
clarifies
complex
relationship
between
suggests
avenues
further
research.
Collaboration
among
policymakers,
administrators,
students,
technology
developers
is
crucial
ensure
that
benefits
all
learners
Bangladesh.
research
some
key
issues
are
essence
inform
guidelines
developing
a
more
inclusive
operational
structure
Випробування та сертифікація,
Год журнала:
2025,
Номер
4(6), С. 69 - 78
Опубликована: Янв. 20, 2025
The
article
addresses
the
issue
of
generating
test
datasets
for
training
swarms
unmanned
aerial
vehicles
(UAVs)
under
complex
and
dynamic
operational
conditions,
which
are
in
constant
change.
study
emphasises
necessity
considering
various
factors,
including
presence
obstacles,
terrain
features,
challenges
associated
with
lack
a
stable
GPS
signal.
Proper
dataset
formation
ensures
swarm
reliability
combat
effectiveness
by
enabling
algorithms
to
pre-emptively
account
diverse
scenarios.
analysis
existing
methods
highlights
three
main
directions.
Firstly,
clustering
techniques
(e.g.
K-means,
DBSCAN)
enable
automatic
grouping
numerous
potential
scenarios,
identification
typical
rare
avoidance
data
duplication
that
does
not
contribute
broader
scenario
coverage.
Secondly,
application
genetic
facilitates
search
globally
optimal
parameter
configurations,
taking
into
multidimensional
nature
problem
(simultaneous
changes
UAV
positioning,
variability
weather
types
obstacles).
This
approach
helps
identify
critical
combinations
factors
often
overlooked
other
methods.
Thirdly,
machine
learning
(including
neural
networks,
support
vector
machines,
multi-agent
reinforcement
learning)
equip
ability
adaptively
'learn'
from
historical
data,
respond
new
threats,
predict
future
developments.
proposes
comprehensive
integrates
advantages
clustering,
algorithms,
learning.
Initially,
is
employed
structure
broad
range
categorising
them
simplest
most
conditions.
At
next
stage,
analyse
each
cluster,
identifying
key
parameters
could
reduce
performance.
Simultaneously,
development
adaptive
models
capable
promptly
adjusting
their
behaviour
based
on
obtained
results.
balanced
encompasses
both
non-trivial
cases,
thereby
facilitating
more
flexible
informed
configuration
control
systems.
practical
significance
this
lies
substantial
enhancement
readiness
swarms.
These
able
learn
perform
effectively
predictable
conditions
acquire
necessary
skills
operate
scenarios
limited
resources.
Future
research
will
focus
improving
process
forming
ensure
high
substantially
mitigate
risks
during
missions
maximise
challenging
rapidly
changing
environments.
Advances in business strategy and competitive advantage book series,
Год журнала:
2025,
Номер
unknown, С. 89 - 112
Опубликована: Янв. 31, 2025
In
today's
competitive
business
environment,
optimizing
employee
productivity
is
crucial
for
organizational
success.
Traditional
methods
of
management
often
fall
short
in
effectively
leveraging
the
vast
amount
data
available.
This
chapter
explores
application
Generative
AI
as
a
transformative
tool
enhancing
practices.
It
discusses
fundamental
concepts
and
its
diverse
applications
across
industries,
highlighting
potential
to
revolutionize
traditional
approaches
enhancement.
Key
benefits
using
are
examined,
including
case
studies
real-world
examples
illustrate
successful
implementations
AI,
demonstrating
tangible
impact
on
efficiency
performance.
The
also
addresses
challenges
limitations
associated
with
use
emerging
trends
future
directions,
predicting
how
will
continue
evolve
shape
optimization.
Computers,
Год журнала:
2025,
Номер
14(2), С. 59 - 59
Опубликована: Фев. 10, 2025
Strategic
cost
optimization
is
a
critical
challenge
for
businesses
aiming
to
maintain
competitiveness
in
dynamic
markets.
This
paper
introduces
Gen-Optimizer,
Generative
AI-based
framework
designed
analyze
and
optimize
business
costs
through
intelligent
decision
support.
The
employs
transformer-based
model
with
over
140
million
parameters,
fine-tuned
using
diverse
dataset
of
cost-related
scenarios.
By
leveraging
generative
capabilities,
Gen-Optimizer
minimizes
inefficiencies,
automates
analysis
tasks,
provides
actionable
insights
decision-makers.
proposed
achieves
exceptional
performance
metrics,
including
prediction
accuracy
93.2%,
precision
93.5%,
recall
93.1%,
an
F1-score
93.3%.
perplexity
score
20.17
demonstrates
the
model’s
superior
language
understanding
abilities.
was
tested
real-world
scenarios,
demonstrating
its
ability
reduce
operational
by
4.11%
across
key
functions.
Furthermore,
it
aligns
sustainability
objectives,
promoting
resource
efficiency
reducing
waste.
highlights
transformative
potential
AI
management,
paving
way
scalable,
intelligent,
cost-effective
solutions.
Benchmarking An International Journal,
Год журнала:
2025,
Номер
unknown
Опубликована: Март 24, 2025
Purpose
This
research
uses
a
mixed-methods
approach
to
identify
predictors
of
Generative
artificial
intelligence
(Gen-AI)
adoption
and
usage
among
academics
educational
researchers.
It
examines
drivers
barriers
based
on
the
diffusion
innovation
theory
(DIT)
planned
behaviour
(TPB).
Design/methodology/approach
A
qualitative
investigation
was
carried
out
by
conducting
interviews
academic
researchers
who
used
Gen-AI
tools
such
as
ChatGPT.
Based
DIT,
TPB
analysis
results,
an
integrated
model
proposed
tested
using
survey
data
collected
from
analysed
partial
least
squares-structural
equation
modelling
(PLS-SEM).
Findings
The
study
demonstrated
that
relative
advantages
observability
influence
attitude
subjective
norms,
these
in
turn
impact
behavioural
intentions.
Researchers'
perception
advantage
their
intentions
use
were
found
lead
positive
behaviours.
However,
technical
limitations
ethical
concerns
acted
key
moderators
between
intention
norms
intention,
respectively.
Mediation
effects
also
observed.
Research
limitations/implications
utilised
DIT
its
base
models,
future
could
incorporate
additional
constructs
other
technology
theories.
concentrated
had
subsequently
reported
significant
factors
affecting
usage.
Future
studies
should
consider
perspective
non-users
tools.
Further,
geographical
focus
India,
broaden
scope.
Practical
implications
community
must
unite
develop
guidelines
for
plagiarism
research.
be
emphasising
importance
highlights
need
establishing
standards,
comprehensive
transparently
within
framework.
Originality/value
results
can
greatly
enhance
understanding
researchers,
particularly
light
about
integrity
potential
negative
consequences