The Journal of Physical Chemistry A,
Journal Year:
2025,
Volume and Issue:
unknown
Published: March 25, 2025
Machine
learning
has
recently
been
introduced
into
the
arsenal
of
tools
that
are
available
to
computational
chemists.
In
past
few
years,
we
have
seen
an
increase
in
applicability
these
on
a
plethora
applications,
including
automated
exploration
large
fraction
chemical
space,
reduction
repetitive
tasks,
detection
outliers
databases,
and
acceleration
molecular
simulations.
An
attractive
application
machine
electronic
structure
theory
is
"recycling"
wave
functions
for
faster
more
accurate
completion
complex
quantum
calculations.
Along
lines,
developed
hybrid
chemical/machine
workflows
utilize
information
from
low-level
prediction
higher-level
functions.
The
data-driven
coupled-cluster
(DDCC)
family
methods
discussed
this
article
together
with
importance
inclusion
physical
properties
such
workflows.
After
short
introduction
philosophy
capabilities
DDCC,
present
our
recent
progress
extending
its
larger
structures
data
sets.
A
significant
advantage
offered
by
DDCC
transferability,
respect
different
systems
excitation
levels.
As
show
here,
predicted
at
singles
doubles
level
can
be
used
perturbative
triples
CCSD(T)
scheme.
We
conclude
some
personal
considerations
future
directions
related
development
next
generation
models.
Artificial Intelligence Chemistry,
Journal Year:
2024,
Volume and Issue:
2(1), P. 100049 - 100049
Published: Jan. 19, 2024
Artificial
intelligence
(AI)
is
driving
a
revolution
in
chemistry,
reshaping
the
landscape
of
molecular
design.
This
review
explores
AI's
pivotal
roles
field
organic
synthesis
applications.
AI
accurately
predicts
reaction
outcomes,
controls
chemical
selectivity,
simplifies
planning,
accelerates
catalyst
discovery,
and
fuels
material
innovation
so
on.
It
seamlessly
integrates
data-driven
algorithms
with
intuition
to
redefine
As
chemistry
advances,
it
promises
accelerated
research,
sustainability,
innovative
solutions
chemistry's
pressing
challenges.
The
fusion
poised
shape
field's
future
profoundly,
offering
new
horizons
precision
efficiency.
encapsulates
transformation
marking
moment
where
data
converge
revolutionize
world
molecules.
Science Advances,
Journal Year:
2024,
Volume and Issue:
10(3)
Published: Jan. 17, 2024
Data
science
is
assuming
a
pivotal
role
in
guiding
reaction
optimization
and
streamlining
experimental
workloads
the
evolving
landscape
of
synthetic
chemistry.
A
discipline-wide
goal
development
workflows
that
integrate
computational
chemistry
data
tools
with
high-throughput
experimentation
as
it
provides
experimentalists
ability
to
maximize
success
expensive
campaigns.
Here,
we
report
an
end-to-end
data-driven
process
effectively
predict
how
structural
features
coupling
partners
ligands
affect
Cu-catalyzed
C–N
reactions.
The
established
workflow
underscores
limitations
posed
by
substrates
while
also
providing
systematic
ligand
prediction
tool
uses
probability
assess
when
will
be
successful.
This
platform
strategically
designed
confront
intrinsic
unpredictability
frequently
encountered
deployment.
Science Advances,
Journal Year:
2025,
Volume and Issue:
11(1)
Published: Jan. 1, 2025
The
application
of
statistical
modeling
in
organic
chemistry
is
emerging
as
a
standard
practice
for
probing
structure-activity
relationships
and
predictive
tool
many
optimization
objectives.
This
review
aimed
tutorial
those
entering
the
area
chemistry.
We
provide
case
studies
to
highlight
considerations
approaches
that
can
be
used
successfully
analyze
datasets
low
data
regimes,
common
situation
encountered
given
experimental
demands
Statistical
hinges
on
(what
being
modeled),
descriptors
(how
are
represented),
algorithms
modeled).
Herein,
we
focus
how
various
reaction
outputs
(e.g.,
yield,
rate,
selectivity,
solubility,
stability,
turnover
number)
structures
binned,
heavily
skewed,
distributed)
influence
choice
algorithm
constructing
chemically
insightful
models.
Journal of the American Chemical Society,
Journal Year:
2023,
Volume and Issue:
145(38), P. 20959 - 20967
Published: Sept. 1, 2023
New
methods
for
the
general
asymmetric
synthesis
of
sulfonimidamides
are
great
interest
due
to
their
applications
in
medicinal
chemistry,
agrochemical
discovery,
and
academic
research.
We
report
a
palladium-catalyzed
cross-coupling
method
enantioselective
aryl-carbonylation
sulfonimidamides.
Using
data
science
techniques,
virtual
library
calculated
bisphosphine
ligand
descriptors
was
used
guide
reaction
optimization
by
effectively
sampling
catalyst
chemical
space.
The
optimized
conditions
identified
using
this
approach
provided
desired
product
excellent
yield
enantioselectivity.
As
next
step,
science-driven
strategy
also
explore
diverse
set
aryl
heteroaryl
iodides,
providing
key
information
about
scope
limitations
method.
Furthermore,
we
tested
range
racemic
compatibility
coupling
partner.
developed
offers
efficient
accessing
enantioenriched
sulfonimidamides,
which
should
facilitate
application
industrial
settings.
Journal of the American Chemical Society,
Journal Year:
2023,
Volume and Issue:
145(31), P. 17367 - 17376
Published: July 31, 2023
The
borylation
of
aryl
and
heteroaryl
C–H
bonds
is
valuable
for
the
site-selective
functionalization
in
complex
molecules.
Iridium
catalysts
ligated
by
bipyridine
ligands
catalyze
bond
that
most
acidic
least
sterically
hindered
an
arene,
but
predicting
site
molecules
containing
multiple
arenes
difficult.
To
address
this
challenge,
we
report
a
hybrid
computational
model
predicts
Site
Borylation
(SoBo)
SoBo
combines
density
functional
theory,
semiempirical
quantum
mechanics,
cheminformatics,
linear
regression,
machine
learning
to
predict
selectivity
extrapolate
these
predictions
new
chemical
space.
Experimental
validation
showed
major
pharmaceutical
intermediates
with
higher
accuracy
than
prior
machine-learning
models
or
human
experts,
demonstrating
will
be
useful
guide
experiments
specific
C(sp2)–H
during
development.
ChemPlusChem,
Journal Year:
2024,
Volume and Issue:
89(7)
Published: Jan. 26, 2024
In
the
past
decade,
computational
tools
have
become
integral
to
catalyst
design.
They
continue
offer
significant
support
experimental
organic
synthesis
and
catalysis
researchers
aiming
for
optimal
reaction
outcomes.
More
recently,
data-driven
approaches
utilizing
machine
learning
garnered
considerable
attention
their
expansive
capabilities.
This
Perspective
provides
an
overview
of
diverse
initiatives
in
realm
design
introduces
our
automated
tailored
high-throughput
silico
exploration
chemical
space.
While
valuable
insights
are
gained
through
methods
analysis
space,
degree
automation
modularity
key.
We
argue
that
integration
data-driven,
modular
workflows
is
key
enhancing
homogeneous
on
unprecedented
scale,
contributing
advancement
research.
ChemCatChem,
Journal Year:
2024,
Volume and Issue:
16(10)
Published: Jan. 5, 2024
Abstract
Significant
progress
has
been
made
in
recent
years
the
use
of
AI
and
Machine
Learning
(ML)
for
catalyst
discovery
optimisation.
The
effectiveness
ML
data
science
techniques
was
demonstrated
predicting
optimising
enantioselectivity
regioselectivity
catalytic
reactions
through
optimisation
ligands,
counterions
reaction
conditions.
Direct
new
catalysts/reactions
is
more
difficult
requires
efficient
exploration
transition
metal
chemical
space.
A
range
computational
descriptor
generation,
ranging
from
molecular
mechanics
to
DFT
methods,
have
successfully
demonstrated,
often
conjunction
with
reduce
cost
associated
TS
calculations.
Complex
aspects
reactions,
such
as
solvent,
temperature,
etc.,
also
incorporated
into
workflow.
Nature Chemistry,
Journal Year:
2024,
Volume and Issue:
16(8), P. 1286 - 1294
Published: June 11, 2024
Abstract
Conjugated
organic
photoredox
catalysts
(OPCs)
can
promote
a
wide
range
of
chemical
transformations.
It
is
challenging
to
predict
the
catalytic
activities
OPCs
from
first
principles,
either
by
expert
knowledge
or
using
priori
calculations,
as
catalyst
activity
depends
on
complex
interrelated
properties.
Organic
photocatalysts
and
other
systems
have
often
been
discovered
mixture
design
trial
error.
Here
we
report
two-step
data-driven
approach
targeted
synthesis
subsequent
reaction
optimization
for
metallophotocatalysis,
demonstrated
decarboxylative
sp
3
–
2
cross-coupling
amino
acids
with
aryl
halides.
Our
uses
Bayesian
strategy
coupled
encoding
key
physical
properties
molecular
descriptors
identify
promising
virtual
library
560
candidate
molecules.
This
led
OPC
formulations
that
are
competitive
iridium
exploring
just
2.4%
available
formulation
space
(107
4,500
possible
conditions).
Journal of the American Chemical Society,
Journal Year:
2023,
Volume and Issue:
145(21), P. 11781 - 11788
Published: May 19, 2023
Dihydropyridines
are
versatile
building
blocks
for
the
synthesis
of
pyridines,
tetrahydropyridines,
and
piperidines.
Addition
nucleophiles
to
activated
pyridinium
salts
allows
1,2-,
1,4-,
or
1,6-dihydropyridines;
however,
this
process
often
leads
a
mixture
constitutional
isomers.
Catalyst-controlled
regioselective
addition
pyridiniums
has
potential
solve
problem.
Herein,
we
report
that
boron-based
can
be
accomplished
by
choice
Rh
catalyst.