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abstractarray.jl
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abstractarray.jl
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# This file is a part of Julia. License is MIT: https://julialang.org/license
## Basic functions ##
"""
AbstractArray{T,N}
Supertype for `N`-dimensional arrays (or array-like types) with elements of type `T`.
[`Array`](@ref) and other types are subtypes of this. See the manual section on the
[`AbstractArray` interface](@ref man-interface-array).
"""
AbstractArray
convert(::Type{T}, a::T) where {T<:AbstractArray} = a
convert(::Type{T}, a::AbstractArray) where {T<:AbstractArray} = T(a)
if nameof(@__MODULE__) === :Base # avoid method overwrite
# catch undefined constructors before the deprecation kicks in
# TODO: remove when deprecation is removed
function (::Type{T})(arg) where {T<:AbstractArray}
throw(MethodError(T, (arg,)))
end
end
"""
size(A::AbstractArray, [dim...])
Return a tuple containing the dimensions of `A`. Optionally you can specify the
dimension(s) you want the length of, and get the length of that dimension, or a tuple of the
lengths of dimensions you asked for.
# Examples
```jldoctest
julia> A = fill(1, (2,3,4));
julia> size(A, 2)
3
julia> size(A, 3, 2)
(4, 3)
```
"""
size(t::AbstractArray{T,N}, d) where {T,N} = d <= N ? size(t)[d] : 1
size(x, d1::Integer, d2::Integer, dx::Vararg{Integer, N}) where {N} =
(size(x, d1), size(x, d2), ntuple(k->size(x, dx[k]), Val(N))...)
"""
axes(A, d)
Return the valid range of indices for array `A` along dimension `d`.
# Examples
```jldoctest
julia> A = fill(1, (5,6,7));
julia> axes(A, 2)
Base.OneTo(6)
```
"""
function axes(A::AbstractArray{T,N}, d) where {T,N}
@_inline_meta
d <= N ? axes(A)[d] : OneTo(1)
end
"""
axes(A)
Return the tuple of valid indices for array `A`.
# Examples
```jldoctest
julia> A = fill(1, (5,6,7));
julia> axes(A)
(Base.OneTo(5), Base.OneTo(6), Base.OneTo(7))
```
"""
function axes(A)
@_inline_meta
map(OneTo, size(A))
end
# Performance optimization: get rid of a branch on `d` in `axes(A, d)`
# for d=1. 1d arrays are heavily used, and the first dimension comes up
# in other applications.
indices1(A::AbstractArray{<:Any,0}) = OneTo(1)
indices1(A::AbstractArray) = (@_inline_meta; axes(A)[1])
indices1(iter) = OneTo(length(iter))
unsafe_indices(A) = axes(A)
unsafe_indices(r::AbstractRange) = (OneTo(unsafe_length(r)),) # Ranges use checked_sub for size
"""
linearindices(A)
Return a `UnitRange` specifying the valid range of indices for `A[i]`
where `i` is an `Int`. For arrays with conventional indexing (indices
start at 1), or any multidimensional array, this is `1:length(A)`;
however, for one-dimensional arrays with unconventional indices, this
is `axes(A, 1)`.
Calling this function is the "safe" way to write algorithms that
exploit linear indexing.
# Examples
```jldoctest
julia> A = fill(1, (5,6,7));
julia> b = linearindices(A);
julia> extrema(b)
(1, 210)
```
"""
linearindices(A::AbstractArray) = (@_inline_meta; OneTo(_length(A)))
linearindices(A::AbstractVector) = (@_inline_meta; indices1(A))
keys(a::AbstractArray) = CartesianIndices(axes(a))
keys(a::AbstractVector) = linearindices(a)
prevind(::AbstractArray, i::Integer) = Int(i)-1
nextind(::AbstractArray, i::Integer) = Int(i)+1
eltype(::Type{<:AbstractArray{E}}) where {E} = @isdefined(E) ? E : Any
elsize(::AbstractArray{T}) where {T} = sizeof(T)
"""
ndims(A::AbstractArray) -> Integer
Return the number of dimensions of `A`.
# Examples
```jldoctest
julia> A = fill(1, (3,4,5));
julia> ndims(A)
3
```
"""
ndims(::AbstractArray{T,N}) where {T,N} = N
ndims(::Type{AbstractArray{T,N}}) where {T,N} = N
ndims(::Type{T}) where {T<:AbstractArray} = ndims(supertype(T))
"""
length(collection) -> Integer
Return the number of elements in the collection.
Use [`endof`](@ref) to get the last valid index of an indexable collection.
# Examples
```jldoctest
julia> length(1:5)
5
julia> length([1, 2, 3, 4])
4
julia> length([1 2; 3 4])
4
```
"""
length(t::AbstractArray) = (@_inline_meta; prod(size(t)))
_length(A::AbstractArray) = (@_inline_meta; prod(map(unsafe_length, axes(A)))) # circumvent missing size
_length(A) = (@_inline_meta; length(A))
"""
endof(collection) -> Integer
Return the last index of the collection.
# Examples
```jldoctest
julia> endof([1,2,4])
3
```
"""
endof(a::AbstractArray) = (@_inline_meta; last(linearindices(a)))
first(a::AbstractArray) = a[first(eachindex(a))]
"""
first(coll)
Get the first element of an iterable collection. Return the start point of an
`AbstractRange` even if it is empty.
# Examples
```jldoctest
julia> first(2:2:10)
2
julia> first([1; 2; 3; 4])
1
```
"""
function first(itr)
state = start(itr)
done(itr, state) && throw(ArgumentError("collection must be non-empty"))
next(itr, state)[1]
end
"""
last(coll)
Get the last element of an ordered collection, if it can be computed in O(1) time. This is
accomplished by calling [`endof`](@ref) to get the last index. Return the end
point of an `AbstractRange` even if it is empty.
# Examples
```jldoctest
julia> last(1:2:10)
9
julia> last([1; 2; 3; 4])
4
```
"""
last(a) = a[end]
"""
strides(A)
Return a tuple of the memory strides in each dimension.
# Examples
```jldoctest
julia> A = fill(1, (3,4,5));
julia> strides(A)
(1, 3, 12)
```
"""
function strides end
"""
stride(A, k::Integer)
Return the distance in memory (in number of elements) between adjacent elements in dimension `k`.
# Examples
```jldoctest
julia> A = fill(1, (3,4,5));
julia> stride(A,2)
3
julia> stride(A,3)
12
```
"""
stride(A::AbstractArray, k::Integer) = strides(A)[k]
@inline size_to_strides(s, d, sz...) = (s, size_to_strides(s * d, sz...)...)
size_to_strides(s, d) = (s,)
size_to_strides(s) = ()
function isassigned(a::AbstractArray, i::Int...)
try
a[i...]
true
catch e
if isa(e, BoundsError) || isa(e, UndefRefError)
return false
else
rethrow(e)
end
end
end
# used to compute "end" for last index
function trailingsize(A, n)
s = 1
for i=n:ndims(A)
s *= size(A,i)
end
return s
end
function trailingsize(inds::Indices, n)
s = 1
for i=n:length(inds)
s *= unsafe_length(inds[i])
end
return s
end
# This version is type-stable even if inds is heterogeneous
function trailingsize(inds::Indices)
@_inline_meta
prod(map(unsafe_length, inds))
end
## Traits for array types ##
abstract type IndexStyle end
struct IndexLinear <: IndexStyle end
struct IndexCartesian <: IndexStyle end
"""
IndexStyle(A)
IndexStyle(typeof(A))
`IndexStyle` specifies the "native indexing style" for array `A`. When
you define a new `AbstractArray` type, you can choose to implement
either linear indexing or cartesian indexing. If you decide to
implement linear indexing, then you must set this trait for your array
type:
Base.IndexStyle(::Type{<:MyArray}) = IndexLinear()
The default is `IndexCartesian()`.
Julia's internal indexing machinery will automatically (and invisibly)
convert all indexing operations into the preferred style. This allows users
to access elements of your array using any indexing style, even when explicit
methods have not been provided.
If you define both styles of indexing for your `AbstractArray`, this
trait can be used to select the most performant indexing style. Some
methods check this trait on their inputs, and dispatch to different
algorithms depending on the most efficient access pattern. In
particular, [`eachindex`](@ref) creates an iterator whose type depends
on the setting of this trait.
"""
IndexStyle(A::AbstractArray) = IndexStyle(typeof(A))
IndexStyle(::Type{Union{}}) = IndexLinear()
IndexStyle(::Type{<:AbstractArray}) = IndexCartesian()
IndexStyle(::Type{<:Array}) = IndexLinear()
IndexStyle(::Type{<:AbstractRange}) = IndexLinear()
IndexStyle(A::AbstractArray, B::AbstractArray) = IndexStyle(IndexStyle(A), IndexStyle(B))
IndexStyle(A::AbstractArray, B::AbstractArray...) = IndexStyle(IndexStyle(A), IndexStyle(B...))
IndexStyle(::IndexLinear, ::IndexLinear) = IndexLinear()
IndexStyle(::IndexStyle, ::IndexStyle) = IndexCartesian()
## Bounds checking ##
# The overall hierarchy is
# `checkbounds(A, I...)` ->
# `checkbounds(Bool, A, I...)` ->
# `checkbounds_indices(Bool, IA, I)`, which recursively calls
# `checkindex` for each dimension
#
# See the "boundscheck" devdocs for more information.
#
# Note this hierarchy has been designed to reduce the likelihood of
# method ambiguities. We try to make `checkbounds` the place to
# specialize on array type, and try to avoid specializations on index
# types; conversely, `checkindex` is intended to be specialized only
# on index type (especially, its last argument).
"""
checkbounds(Bool, A, I...)
Return `true` if the specified indices `I` are in bounds for the given
array `A`. Subtypes of `AbstractArray` should specialize this method
if they need to provide custom bounds checking behaviors; however, in
many cases one can rely on `A`'s indices and [`checkindex`](@ref).
See also [`checkindex`](@ref).
# Examples
```jldoctest
julia> A = rand(3, 3);
julia> checkbounds(Bool, A, 2)
true
julia> checkbounds(Bool, A, 3, 4)
false
julia> checkbounds(Bool, A, 1:3)
true
julia> checkbounds(Bool, A, 1:3, 2:4)
false
```
"""
function checkbounds(::Type{Bool}, A::AbstractArray, I...)
@_inline_meta
checkbounds_indices(Bool, axes(A), I)
end
# Linear indexing is explicitly allowed when there is only one (non-cartesian) index
function checkbounds(::Type{Bool}, A::AbstractArray, i)
@_inline_meta
checkindex(Bool, linearindices(A), i)
end
# As a special extension, allow using logical arrays that match the source array exactly
function checkbounds(::Type{Bool}, A::AbstractArray{<:Any,N}, I::AbstractArray{Bool,N}) where N
@_inline_meta
axes(A) == axes(I)
end
"""
checkbounds(A, I...)
Throw an error if the specified indices `I` are not in bounds for the given array `A`.
"""
function checkbounds(A::AbstractArray, I...)
@_inline_meta
checkbounds(Bool, A, I...) || throw_boundserror(A, I)
nothing
end
"""
checkbounds_indices(Bool, IA, I)
Return `true` if the "requested" indices in the tuple `I` fall within
the bounds of the "permitted" indices specified by the tuple
`IA`. This function recursively consumes elements of these tuples,
usually in a 1-for-1 fashion,
checkbounds_indices(Bool, (IA1, IA...), (I1, I...)) = checkindex(Bool, IA1, I1) &
checkbounds_indices(Bool, IA, I)
Note that [`checkindex`](@ref) is being used to perform the actual
bounds-check for a single dimension of the array.
There are two important exceptions to the 1-1 rule: linear indexing and
CartesianIndex{N}, both of which may "consume" more than one element
of `IA`.
See also [`checkbounds`](@ref).
"""
function checkbounds_indices(::Type{Bool}, IA::Tuple, I::Tuple)
@_inline_meta
checkindex(Bool, IA[1], I[1]) & checkbounds_indices(Bool, tail(IA), tail(I))
end
function checkbounds_indices(::Type{Bool}, ::Tuple{}, I::Tuple)
@_inline_meta
checkindex(Bool, OneTo(1), I[1]) & checkbounds_indices(Bool, (), tail(I))
end
checkbounds_indices(::Type{Bool}, IA::Tuple, ::Tuple{}) = (@_inline_meta; all(x->unsafe_length(x)==1, IA))
checkbounds_indices(::Type{Bool}, ::Tuple{}, ::Tuple{}) = true
throw_boundserror(A, I) = (@_noinline_meta; throw(BoundsError(A, I)))
# check along a single dimension
"""
checkindex(Bool, inds::AbstractUnitRange, index)
Return `true` if the given `index` is within the bounds of
`inds`. Custom types that would like to behave as indices for all
arrays can extend this method in order to provide a specialized bounds
checking implementation.
# Examples
```jldoctest
julia> checkindex(Bool, 1:20, 8)
true
julia> checkindex(Bool, 1:20, 21)
false
```
"""
checkindex(::Type{Bool}, inds::AbstractUnitRange, i) =
throw(ArgumentError("unable to check bounds for indices of type $(typeof(i))"))
checkindex(::Type{Bool}, inds::AbstractUnitRange, i::Real) = (first(inds) <= i) & (i <= last(inds))
checkindex(::Type{Bool}, inds::AbstractUnitRange, ::Colon) = true
checkindex(::Type{Bool}, inds::AbstractUnitRange, ::Slice) = true
function checkindex(::Type{Bool}, inds::AbstractUnitRange, r::AbstractRange)
@_propagate_inbounds_meta
isempty(r) | (checkindex(Bool, inds, first(r)) & checkindex(Bool, inds, last(r)))
end
checkindex(::Type{Bool}, indx::AbstractUnitRange, I::AbstractVector{Bool}) = indx == indices1(I)
checkindex(::Type{Bool}, indx::AbstractUnitRange, I::AbstractArray{Bool}) = false
function checkindex(::Type{Bool}, inds::AbstractUnitRange, I::AbstractArray)
@_inline_meta
b = true
for i in I
b &= checkindex(Bool, inds, i)
end
b
end
# See also specializations in multidimensional
## Constructors ##
# default arguments to similar()
"""
similar(array, [element_type=eltype(array)], [dims=size(array)])
Create an uninitialized mutable array with the given element type and size, based upon the
given source array. The second and third arguments are both optional, defaulting to the
given array's `eltype` and `size`. The dimensions may be specified either as a single tuple
argument or as a series of integer arguments.
Custom AbstractArray subtypes may choose which specific array type is best-suited to return
for the given element type and dimensionality. If they do not specialize this method, the
default is an `Array{element_type}(uninitialized, dims...)`.
For example, `similar(1:10, 1, 4)` returns an uninitialized `Array{Int,2}` since ranges are
neither mutable nor support 2 dimensions:
```julia-repl
julia> similar(1:10, 1, 4)
1×4 Array{Int64,2}:
4419743872 4374413872 4419743888 0
```
Conversely, `similar(trues(10,10), 2)` returns an uninitialized `BitVector` with two
elements since `BitArray`s are both mutable and can support 1-dimensional arrays:
```julia-repl
julia> similar(trues(10,10), 2)
2-element BitArray{1}:
false
false
```
Since `BitArray`s can only store elements of type [`Bool`](@ref), however, if you request a
different element type it will create a regular `Array` instead:
```julia-repl
julia> similar(falses(10), Float64, 2, 4)
2×4 Array{Float64,2}:
2.18425e-314 2.18425e-314 2.18425e-314 2.18425e-314
2.18425e-314 2.18425e-314 2.18425e-314 2.18425e-314
```
"""
similar(a::AbstractArray{T}) where {T} = similar(a, T)
similar(a::AbstractArray, ::Type{T}) where {T} = similar(a, T, to_shape(axes(a)))
similar(a::AbstractArray{T}, dims::Tuple) where {T} = similar(a, T, to_shape(dims))
similar(a::AbstractArray{T}, dims::DimOrInd...) where {T} = similar(a, T, to_shape(dims))
similar(a::AbstractArray, ::Type{T}, dims::DimOrInd...) where {T} = similar(a, T, to_shape(dims))
similar(a::AbstractArray, ::Type{T}, dims::NeedsShaping) where {T} = similar(a, T, to_shape(dims))
# similar creates an Array by default
similar(a::AbstractArray, ::Type{T}, dims::Dims{N}) where {T,N} = Array{T,N}(uninitialized, dims)
to_shape(::Tuple{}) = ()
to_shape(dims::Dims) = dims
to_shape(dims::DimsOrInds) = map(to_shape, dims)::DimsOrInds
# each dimension
to_shape(i::Int) = i
to_shape(i::Integer) = Int(i)
to_shape(r::OneTo) = Int(last(r))
to_shape(r::AbstractUnitRange) = r
"""
similar(storagetype, indices)
Create an uninitialized mutable array analogous to that specified by
`storagetype`, but with `indices` specified by the last
argument. `storagetype` might be a type or a function.
**Examples**:
similar(Array{Int}, axes(A))
creates an array that "acts like" an `Array{Int}` (and might indeed be
backed by one), but which is indexed identically to `A`. If `A` has
conventional indexing, this will be identical to
`Array{Int}(uninitialized, size(A))`, but if `A` has unconventional indexing then the
indices of the result will match `A`.
similar(BitArray, (axes(A, 2),))
would create a 1-dimensional logical array whose indices match those
of the columns of `A`.
similar(dims->zeros(Int, dims), axes(A))
would create an array of `Int`, initialized to zero, matching the
indices of `A`.
"""
similar(f, shape::Tuple) = f(to_shape(shape))
similar(f, dims::DimOrInd...) = similar(f, dims)
"""
empty(v::AbstractVector, [eltype])
Create an empty vector similar to `v`, optionally changing the `eltype`.
# Examples
```jldoctest
julia> empty([1.0, 2.0, 3.0])
0-element Array{Float64,1}
julia> empty([1.0, 2.0, 3.0], String)
0-element Array{String,1}
```
"""
empty(a::AbstractVector{T}, ::Type{U}=T) where {T,U} = Vector{U}()
# like empty, but should return a mutable collection, a Vector by default
emptymutable(a::AbstractVector{T}, ::Type{U}=T) where {T,U} = Vector{U}()
emptymutable(itr, ::Type{U}) where {U} = Vector{U}()
## from general iterable to any array
function copyto!(dest::AbstractArray, src)
destiter = eachindex(dest)
state = start(destiter)
for x in src
i, state = next(destiter, state)
dest[i] = x
end
return dest
end
function copyto!(dest::AbstractArray, dstart::Integer, src)
i = Int(dstart)
for x in src
dest[i] = x
i += 1
end
return dest
end
# copy from an some iterable object into an AbstractArray
function copyto!(dest::AbstractArray, dstart::Integer, src, sstart::Integer)
if (sstart < 1)
throw(ArgumentError(string("source start offset (",sstart,") is < 1")))
end
st = start(src)
for j = 1:(sstart-1)
if done(src, st)
throw(ArgumentError(string("source has fewer elements than required, ",
"expected at least ",sstart,", got ",j-1)))
end
_, st = next(src, st)
end
dn = done(src, st)
if dn
throw(ArgumentError(string("source has fewer elements than required, ",
"expected at least ",sstart,", got ",sstart-1)))
end
i = Int(dstart)
while !dn
val, st = next(src, st)
dest[i] = val
i += 1
dn = done(src, st)
end
return dest
end
# this method must be separate from the above since src might not have a length
function copyto!(dest::AbstractArray, dstart::Integer, src, sstart::Integer, n::Integer)
n < 0 && throw(ArgumentError(string("tried to copy n=", n, " elements, but n should be nonnegative")))
n == 0 && return dest
dmax = dstart + n - 1
inds = linearindices(dest)
if (dstart ∉ inds || dmax ∉ inds) | (sstart < 1)
sstart < 1 && throw(ArgumentError(string("source start offset (",sstart,") is < 1")))
throw(BoundsError(dest, dstart:dmax))
end
st = start(src)
for j = 1:(sstart-1)
if done(src, st)
throw(ArgumentError(string("source has fewer elements than required, ",
"expected at least ",sstart,", got ",j-1)))
end
_, st = next(src, st)
end
i = Int(dstart)
while i <= dmax && !done(src, st)
val, st = next(src, st)
@inbounds dest[i] = val
i += 1
end
i <= dmax && throw(BoundsError(dest, i))
return dest
end
## copy between abstract arrays - generally more efficient
## since a single index variable can be used.
copyto!(dest::AbstractArray, src::AbstractArray) =
copyto!(IndexStyle(dest), dest, IndexStyle(src), src)
function copyto!(::IndexStyle, dest::AbstractArray, ::IndexStyle, src::AbstractArray)
destinds, srcinds = linearindices(dest), linearindices(src)
isempty(srcinds) || (first(srcinds) ∈ destinds && last(srcinds) ∈ destinds) ||
throw(BoundsError(dest, srcinds))
@inbounds for i in srcinds
dest[i] = src[i]
end
return dest
end
function copyto!(::IndexStyle, dest::AbstractArray, ::IndexCartesian, src::AbstractArray)
destinds, srcinds = linearindices(dest), linearindices(src)
isempty(srcinds) || (first(srcinds) ∈ destinds && last(srcinds) ∈ destinds) ||
throw(BoundsError(dest, srcinds))
i = 0
@inbounds for a in src
dest[i+=1] = a
end
return dest
end
function copyto!(dest::AbstractArray, dstart::Integer, src::AbstractArray)
copyto!(dest, dstart, src, first(linearindices(src)), _length(src))
end
function copyto!(dest::AbstractArray, dstart::Integer, src::AbstractArray, sstart::Integer)
srcinds = linearindices(src)
sstart ∈ srcinds || throw(BoundsError(src, sstart))
copyto!(dest, dstart, src, sstart, last(srcinds)-sstart+1)
end
function copyto!(dest::AbstractArray, dstart::Integer,
src::AbstractArray, sstart::Integer,
n::Integer)
n == 0 && return dest
n < 0 && throw(ArgumentError(string("tried to copy n=", n, " elements, but n should be nonnegative")))
destinds, srcinds = linearindices(dest), linearindices(src)
(dstart ∈ destinds && dstart+n-1 ∈ destinds) || throw(BoundsError(dest, dstart:dstart+n-1))
(sstart ∈ srcinds && sstart+n-1 ∈ srcinds) || throw(BoundsError(src, sstart:sstart+n-1))
@inbounds for i = 0:(n-1)
dest[dstart+i] = src[sstart+i]
end
return dest
end
function copy(a::AbstractArray)
@_propagate_inbounds_meta
copymutable(a)
end
function copyto!(B::AbstractVecOrMat{R}, ir_dest::AbstractRange{Int}, jr_dest::AbstractRange{Int},
A::AbstractVecOrMat{S}, ir_src::AbstractRange{Int}, jr_src::AbstractRange{Int}) where {R,S}
if length(ir_dest) != length(ir_src)
throw(ArgumentError(string("source and destination must have same size (got ",
length(ir_src)," and ",length(ir_dest),")")))
end
if length(jr_dest) != length(jr_src)
throw(ArgumentError(string("source and destination must have same size (got ",
length(jr_src)," and ",length(jr_dest),")")))
end
@boundscheck checkbounds(B, ir_dest, jr_dest)
@boundscheck checkbounds(A, ir_src, jr_src)
jdest = first(jr_dest)
for jsrc in jr_src
idest = first(ir_dest)
for isrc in ir_src
B[idest,jdest] = A[isrc,jsrc]
idest += step(ir_dest)
end
jdest += step(jr_dest)
end
return B
end
"""
copymutable(a)
Make a mutable copy of an array or iterable `a`. For `a::Array`,
this is equivalent to `copy(a)`, but for other array types it may
differ depending on the type of `similar(a)`. For generic iterables
this is equivalent to `collect(a)`.
# Examples
```jldoctest
julia> tup = (1, 2, 3)
(1, 2, 3)
julia> Base.copymutable(tup)
3-element Array{Int64,1}:
1
2
3
```
"""
function copymutable(a::AbstractArray)
@_propagate_inbounds_meta
copyto!(similar(a), a)
end
copymutable(itr) = collect(itr)
zero(x::AbstractArray{T}) where {T} = fill!(similar(x), zero(T))
## iteration support for arrays by iterating over `eachindex` in the array ##
# Allows fast iteration by default for both IndexLinear and IndexCartesian arrays
# While the definitions for IndexLinear are all simple enough to inline on their
# own, IndexCartesian's CartesianIndices is more complicated and requires explicit
# inlining.
start(A::AbstractArray) = (@_inline_meta; itr = eachindex(A); (itr, start(itr)))
next(A::AbstractArray, i) = (@_propagate_inbounds_meta; (idx, s) = next(i[1], i[2]); (A[idx], (i[1], s)))
done(A::AbstractArray, i) = (@_propagate_inbounds_meta; done(i[1], i[2]))
# `eachindex` is mostly an optimization of `keys`
eachindex(itrs...) = keys(itrs...)
# eachindex iterates over all indices. IndexCartesian definitions are later.
eachindex(A::AbstractVector) = (@_inline_meta(); indices1(A))
"""
eachindex(A...)
Create an iterable object for visiting each index of an AbstractArray `A` in an efficient
manner. For array types that have opted into fast linear indexing (like `Array`), this is
simply the range `1:length(A)`. For other array types, return a specialized Cartesian
range to efficiently index into the array with indices specified for every dimension. For
other iterables, including strings and dictionaries, return an iterator object
supporting arbitrary index types (e.g. unevenly spaced or non-integer indices).
If you supply more than one `AbstractArray` argument, `eachindex` will create an
iterable object that is fast for all arguments (a `UnitRange`
if all inputs have fast linear indexing, a [`CartesianIndices`](@ref)
otherwise).
If the arrays have different sizes and/or dimensionalities, `eachindex` will return an
iterable that spans the largest range along each dimension.
# Examples
```jldoctest
julia> A = [1 2; 3 4];
julia> for i in eachindex(A) # linear indexing
println(i)
end
1
2
3
4
julia> for i in eachindex(view(A, 1:2, 1:1)) # Cartesian indexing
println(i)
end
CartesianIndex(1, 1)
CartesianIndex(2, 1)
```
"""
eachindex(A::AbstractArray) = (@_inline_meta(); eachindex(IndexStyle(A), A))
function eachindex(A::AbstractArray, B::AbstractArray)
@_inline_meta
eachindex(IndexStyle(A,B), A, B)
end
function eachindex(A::AbstractArray, B::AbstractArray...)
@_inline_meta
eachindex(IndexStyle(A,B...), A, B...)
end
eachindex(::IndexLinear, A::AbstractArray) = linearindices(A)
function eachindex(::IndexLinear, A::AbstractArray, B::AbstractArray...)
@_inline_meta
indsA = linearindices(A)
_all_match_first(linearindices, indsA, B...) || throw_eachindex_mismatch(IndexLinear(), A, B...)
indsA
end
function _all_match_first(f::F, inds, A, B...) where F<:Function
@_inline_meta
(inds == f(A)) & _all_match_first(f, inds, B...)
end
_all_match_first(f::F, inds) where F<:Function = true
isempty(a::AbstractArray) = (_length(a) == 0)
# keys with an IndexStyle
keys(s::IndexStyle, A::AbstractArray, B::AbstractArray...) = eachindex(s, A, B...)
"""
of_indices(x, y)
Represents the array `y` as an array having the same indices type as `x`.
"""
of_indices(x, y) = similar(dims->y, oftype(axes(x), axes(y)))
## range conversions ##
map(::Type{T}, r::StepRange) where {T<:Real} = T(r.start):T(r.step):T(last(r))
map(::Type{T}, r::UnitRange) where {T<:Real} = T(r.start):T(last(r))
map(::Type{T}, r::StepRangeLen) where {T<:AbstractFloat} = convert(StepRangeLen{T}, r)
function map(::Type{T}, r::LinSpace) where T<:AbstractFloat
LinSpace(T(r.start), T(r.stop), length(r))
end
## unsafe/pointer conversions ##
# note: the following type definitions don't mean any AbstractArray is convertible to
# a data Ref. they just map the array element type to the pointer type for
# convenience in cases that work.
pointer(x::AbstractArray{T}) where {T} = unsafe_convert(Ptr{T}, x)
function pointer(x::AbstractArray{T}, i::Integer) where T
@_inline_meta
unsafe_convert(Ptr{T}, x) + (i - first(linearindices(x)))*elsize(x)
end
## Approach:
# We only define one fallback method on getindex for all argument types.
# That dispatches to an (inlined) internal _getindex function, where the goal is
# to transform the indices such that we can call the only getindex method that
# we require the type A{T,N} <: AbstractArray{T,N} to define; either:
# getindex(::A, ::Int) # if IndexStyle(A) == IndexLinear() OR
# getindex(::A{T,N}, ::Vararg{Int, N}) where {T,N} # if IndexCartesian()
# If the subtype hasn't defined the required method, it falls back to the
# _getindex function again where an error is thrown to prevent stack overflows.
"""
getindex(A, inds...)
Return a subset of array `A` as specified by `inds`, where each `ind` may be an
`Int`, an `AbstractRange`, or a [`Vector`](@ref). See the manual section on
[array indexing](@ref man-array-indexing) for details.
# Examples
```jldoctest
julia> A = [1 2; 3 4]
2×2 Array{Int64,2}:
1 2
3 4
julia> getindex(A, 1)
1
julia> getindex(A, [2, 1])
2-element Array{Int64,1}:
3
1
julia> getindex(A, 2:4)
3-element Array{Int64,1}:
3
2
4
```
"""
function getindex(A::AbstractArray, I...)
@_propagate_inbounds_meta
error_if_canonical_indexing(IndexStyle(A), A, I...)
_getindex(IndexStyle(A), A, to_indices(A, I)...)
end
function unsafe_getindex(A::AbstractArray, I...)
@_inline_meta
@inbounds r = getindex(A, I...)
r
end
error_if_canonical_indexing(::IndexLinear, A::AbstractArray, ::Int) =
error("indexing not defined for ", typeof(A))
error_if_canonical_indexing(::IndexCartesian, A::AbstractArray{T,N}, ::Vararg{Int,N}) where {T,N} =
error("indexing not defined for ", typeof(A))
error_if_canonical_indexing(::IndexStyle, ::AbstractArray, ::Any...) = nothing
## Internal definitions
_getindex(::IndexStyle, A::AbstractArray, I...) =
error("indexing $(typeof(A)) with types $(typeof(I)) is not supported")
## IndexLinear Scalar indexing: canonical method is one Int
_getindex(::IndexLinear, A::AbstractArray, i::Int) = (@_propagate_inbounds_meta; getindex(A, i))
function _getindex(::IndexLinear, A::AbstractArray, I::Vararg{Int,M}) where M
@_inline_meta
@boundscheck checkbounds(A, I...) # generally _to_linear_index requires bounds checking
@inbounds r = getindex(A, _to_linear_index(A, I...))
r
end
_to_linear_index(A::AbstractArray, i::Int) = i
_to_linear_index(A::AbstractVector, i::Int, I::Int...) = i
_to_linear_index(A::AbstractArray) = 1
_to_linear_index(A::AbstractArray, I::Int...) = (@_inline_meta; _sub2ind(A, I...))
## IndexCartesian Scalar indexing: Canonical method is full dimensionality of Ints
function _getindex(::IndexCartesian, A::AbstractArray, I::Vararg{Int,M}) where M
@_inline_meta
@boundscheck checkbounds(A, I...) # generally _to_subscript_indices requires bounds checking
@inbounds r = getindex(A, _to_subscript_indices(A, I...)...)
r
end
function _getindex(::IndexCartesian, A::AbstractArray{T,N}, I::Vararg{Int, N}) where {T,N}
@_propagate_inbounds_meta
getindex(A, I...)
end
_to_subscript_indices(A::AbstractArray, i::Int) = (@_inline_meta; _unsafe_ind2sub(A, i))
_to_subscript_indices(A::AbstractArray{T,N}) where {T,N} = (@_inline_meta; fill_to_length((), 1, Val(N)))
_to_subscript_indices(A::AbstractArray{T,0}) where {T} = ()
_to_subscript_indices(A::AbstractArray{T,0}, i::Int) where {T} = ()
_to_subscript_indices(A::AbstractArray{T,0}, I::Int...) where {T} = ()
function _to_subscript_indices(A::AbstractArray{T,N}, I::Int...) where {T,N}
@_inline_meta
J, Jrem = IteratorsMD.split(I, Val(N))
_to_subscript_indices(A, J, Jrem)
end
_to_subscript_indices(A::AbstractArray, J::Tuple, Jrem::Tuple{}) =
__to_subscript_indices(A, axes(A), J, Jrem)
function __to_subscript_indices(A::AbstractArray,
::Tuple{AbstractUnitRange,Vararg{AbstractUnitRange}}, J::Tuple, Jrem::Tuple{})
@_inline_meta
(J..., map(first, tail(_remaining_size(J, axes(A))))...)
end
_to_subscript_indices(A, J::Tuple, Jrem::Tuple) = J # already bounds-checked, safe to drop
_to_subscript_indices(A::AbstractArray{T,N}, I::Vararg{Int,N}) where {T,N} = I
_remaining_size(::Tuple{Any}, t::Tuple) = t
_remaining_size(h::Tuple, t::Tuple) = (@_inline_meta; _remaining_size(tail(h), tail(t)))
_unsafe_ind2sub(::Tuple{}, i) = () # _ind2sub may throw(BoundsError()) in this case
_unsafe_ind2sub(sz, i) = (@_inline_meta; _ind2sub(sz, i))
## Setindex! is defined similarly. We first dispatch to an internal _setindex!
# function that allows dispatch on array storage
"""
setindex!(A, X, inds...)
Store values from array `X` within some subset of `A` as specified by `inds`.
"""