TensorPrimitives.Dot Method
Definition
Important
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Overloads
Dot(ReadOnlySpan<Single>, ReadOnlySpan<Single>) |
Computes the dot product of two tensors containing single-precision floating-point numbers. |
Dot<T>(ReadOnlySpan<T>, ReadOnlySpan<T>) |
Computes the dot product of two tensors containing numbers. |
Dot(ReadOnlySpan<Single>, ReadOnlySpan<Single>)
- Source:
- TensorPrimitives.cs
- Source:
- TensorPrimitives.Single.cs
Computes the dot product of two tensors containing single-precision floating-point numbers.
public:
static float Dot(ReadOnlySpan<float> x, ReadOnlySpan<float> y);
public static float Dot (ReadOnlySpan<float> x, ReadOnlySpan<float> y);
static member Dot : ReadOnlySpan<single> * ReadOnlySpan<single> -> single
Public Shared Function Dot (x As ReadOnlySpan(Of Single), y As ReadOnlySpan(Of Single)) As Single
Parameters
The first tensor, represented as a span.
The second tensor, represented as a span.
Returns
The dot product.
Exceptions
Length of x
must be same as length of y
.
Remarks
This method effectively computes the equivalent of: Span<float> products = ...; TensorPrimitives.Multiply(x, y, products); float result = TensorPrimitives.Sum(products);
but without requiring additional temporary storage for the intermediate products. It corresponds to the dot
method defined by BLAS1
.
If any of the input elements is equal to NaN, the resulting value is also NaN.
This method may call into the underlying C runtime or employ instructions specific to the current architecture. Exact results may differ between different operating systems or architectures.
Applies to
Dot<T>(ReadOnlySpan<T>, ReadOnlySpan<T>)
- Source:
- TensorPrimitives.Dot.cs
Computes the dot product of two tensors containing numbers.
public:
generic <typename T>
where T : System::Numerics::IAdditionOperators<T, T, T>, System::Numerics::IAdditiveIdentity<T, T>, System::Numerics::IMultiplyOperators<T, T, T>, System::Numerics::IMultiplicativeIdentity<T, T> static T Dot(ReadOnlySpan<T> x, ReadOnlySpan<T> y);
public static T Dot<T> (ReadOnlySpan<T> x, ReadOnlySpan<T> y) where T : System.Numerics.IAdditionOperators<T,T,T>, System.Numerics.IAdditiveIdentity<T,T>, System.Numerics.IMultiplyOperators<T,T,T>, System.Numerics.IMultiplicativeIdentity<T,T>;
static member Dot : ReadOnlySpan<'T (requires 'T :> System.Numerics.IAdditionOperators<'T, 'T, 'T> and 'T :> System.Numerics.IAdditiveIdentity<'T, 'T> and 'T :> System.Numerics.IMultiplyOperators<'T, 'T, 'T> and 'T :> System.Numerics.IMultiplicativeIdentity<'T, 'T>)> * ReadOnlySpan<'T (requires 'T :> System.Numerics.IAdditionOperators<'T, 'T, 'T> and 'T :> System.Numerics.IAdditiveIdentity<'T, 'T> and 'T :> System.Numerics.IMultiplyOperators<'T, 'T, 'T> and 'T :> System.Numerics.IMultiplicativeIdentity<'T, 'T>)> -> 'T (requires 'T :> System.Numerics.IAdditionOperators<'T, 'T, 'T> and 'T :> System.Numerics.IAdditiveIdentity<'T, 'T> and 'T :> System.Numerics.IMultiplyOperators<'T, 'T, 'T> and 'T :> System.Numerics.IMultiplicativeIdentity<'T, 'T>)
Public Shared Function Dot(Of T As {IAdditionOperators(Of T, T, T), IAdditiveIdentity(Of T, T), IMultiplyOperators(Of T, T, T), IMultiplicativeIdentity(Of T, T)}) (x As ReadOnlySpan(Of T), y As ReadOnlySpan(Of T)) As T
Type Parameters
- T
Parameters
The first tensor, represented as a span.
The second tensor, represented as a span.
Returns
The dot product.
Exceptions
Length of x
must be same as length of y
.
Remarks
This method effectively computes the equivalent of: Span<T> products = ...; TensorPrimitives.Multiply(x, y, products); T result = TensorPrimitives.Sum(products);
but without requiring additional temporary storage for the intermediate products. It corresponds to the dot
method defined by BLAS1
.
If any of the input elements is equal to NaN, the resulting value is also NaN.
This method may call into the underlying C runtime or employ instructions specific to the current architecture. Exact results may differ between different operating systems or architectures.