ConstantTensorDescriptor.hip.hpp 18.2 KB
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#pragma once
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#include "common.hip.hpp"
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template <class Lengths>
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__host__ __device__ constexpr auto calculate_tensor_strides_packed(Lengths)
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{
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    return reverse_inclusive_scan_sequence(
               Lengths{}.PopFront(), mod_conv::multiplies<index_t>{}, Number<1>{})
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        .PushBack(Number<1>{});
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}

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template <class Lengths, index_t Align>
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__host__ __device__ constexpr auto calculate_tensor_strides_aligned(Lengths, Number<Align>)
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{
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    constexpr index_t L_back_align =
        Align * mod_conv::integer_divide_ceiler<index_t>{}(Lengths{}.Back(), Align);
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    return calculate_tensor_strides_packed(
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        Lengths{}.Modify(Number<Lengths{}.GetSize() - 1>{}, Number<L_back_align>{}));
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}

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template <class Lengths, class Strides>
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struct ConstantTensorDescriptor
{
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    using Type = ConstantTensorDescriptor;

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    static constexpr index_t nDim = Lengths::GetSize();
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    __host__ __device__ constexpr ConstantTensorDescriptor()
    {
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        static_assert(Lengths::GetSize() == Strides::GetSize(), "nDim not consistent");
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    }

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    __host__ __device__ static constexpr auto GetOriginalTensorDescriptor() { return Type{}; }

    template <index_t IDim>
    __host__ __device__ static constexpr auto GetContainedOriginalDimensions(Number<IDim>)
    {
        return Sequence<IDim>{};
    }

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    __host__ __device__ static constexpr index_t GetNumOfDimension() { return nDim; }
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    __host__ __device__ static constexpr auto GetLengths() { return Lengths{}; }
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    __host__ __device__ static constexpr auto GetStrides() { return Strides{}; }

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    template <index_t I>
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    __host__ __device__ static constexpr index_t GetLength(Number<I>)
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    {
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        return Lengths::Get(Number<I>{});
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    }

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    template <index_t I>
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    __host__ __device__ static constexpr index_t GetStride(Number<I>)
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    {
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        return Strides::Get(Number<I>{});
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    }

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    struct lambda_AreDimensionsContinuous
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    {
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        bool& is_continuous;
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        __host__ __device__ constexpr lambda_AreDimensionsContinuous(bool& is_continuous_)
            : is_continuous(is_continuous_)
        {
        }
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        template <index_t IDim_>
        __host__ __device__ constexpr void operator()(Number<IDim_>) const
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        {
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            constexpr auto IDim    = Number<IDim_>{};
            constexpr auto IDim_p1 = Number<IDim_ + 1>{};
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            is_continuous =
                is_continuous && (GetStride(IDim) >= GetStride(IDim_p1) &&
                                  GetStride(IDim) == GetStride(IDim_p1) * GetLength(IDim_p1));
        }
    };
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    __host__ __device__ static constexpr bool AreDimensionsContinuous()
    {
        bool is_continuous = true;

        static_for<0, nDim - 1, 1>{}(lambda_AreDimensionsContinuous(is_continuous));

        return is_continuous;
    }

    __host__ __device__ static constexpr bool IsPackedTensor()
    {
        return AreDimensionsContinuous() && GetStride(Number<nDim - 1>{}) == 1;
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    }

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    template <class T>
    __host__ __device__ static constexpr bool ContainMultipleOriginalDimensions(T)
    {
        return false;
    }

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    __host__ __device__ static constexpr index_t GetElementSize()
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    {
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        return accumulate_on_sequence(Lengths{}, mod_conv::multiplies<index_t>{}, Number<1>{});
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    }
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    template <class Align = Number<1>>
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    __host__ __device__ static constexpr index_t GetElementSpace(Align align = Align{})
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    {
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        // This is WRONG! align shouldbe applied to the last memory rank, not the last tensor
        // dimension
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        constexpr index_t element_space_unaligned = accumulate_on_sequence(
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            (GetLengths() - Number<1>{}) * GetStrides(), mod_conv::plus<index_t>{}, Number<1>{});
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        return align.Get() * ((element_space_unaligned + align.Get() - 1) / align.Get());
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    }
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    // emulate constexpr lambda
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    template <index_t NSize>
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    struct lambda_GetOffsetFromMultiIndex
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    {
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        Array<index_t, NSize>& multi_id;
        index_t& offset;
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        __host__
            __device__ constexpr lambda_GetOffsetFromMultiIndex(Array<index_t, NSize>& multi_id_,
                                                                index_t& offset_)
            : multi_id(multi_id_), offset(offset_)
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        {
        }

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        template <class X>
        __host__ __device__ constexpr void operator()(X IDim) const
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        {
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            offset += multi_id[IDim] * Type::GetStride(IDim);
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        }
    };

    template <index_t NSize>
    __host__ __device__ static constexpr index_t
    GetOffsetFromMultiIndex(Array<index_t, NSize> multi_id)
    {
        static_assert(NSize == nDim, "wrong! Dimension not consistent");

        index_t offset = 0;

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        static_for<0, nDim, 1>{}(lambda_GetOffsetFromMultiIndex<NSize>(multi_id, offset));
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        return offset;
    }
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    template <class... Is>
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    __host__ __device__ static constexpr index_t GetOffsetFromMultiIndex(Is... is)
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    {
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        return GetOffsetFromMultiIndex(Array<index_t, sizeof...(Is)>{is...});
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    }

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    template <index_t... Is>
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    __host__ __device__ static constexpr index_t GetOffsetFromMultiIndex(Sequence<Is...>)
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    {
        static_assert(sizeof...(Is) == nDim, "wrong! Dimension not consistent");

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        constexpr auto multi_id = Sequence<Is...>{};

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        return accumulate_on_sequence(
            multi_id * GetStrides(), mod_conv::plus<index_t>{}, Number<0>{});
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    }

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    // emulate constexpr lambda
    template <class PackedStrides>
    struct lambda_GetMultiIndexFrom1dIndex
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    {
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        index_t& id;
        Array<index_t, nDim>& multi_id;
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        __host__
            __device__ constexpr lambda_GetMultiIndexFrom1dIndex(index_t& id_,
                                                                 Array<index_t, nDim>& multi_id_)
            : id(id_), multi_id(multi_id_)
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        {
        }

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        template <class IDim_>
        __host__ __device__ constexpr void operator()(IDim_) const
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        {
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            constexpr auto IDim      = IDim_{};
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            constexpr index_t stride = PackedStrides::Get(IDim);
            multi_id.Set(IDim, id / stride);
            id -= multi_id[IDim] * stride;
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        }
    };

    __host__ __device__ static constexpr Array<index_t, nDim> GetMultiIndexFrom1dIndex(index_t id)
    {
        Array<index_t, nDim> multi_id;

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        using PackedStrides = decltype(calculate_tensor_strides_packed(GetLengths()));
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        // calculate index in each of the dimensions in the order of their dimension
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        static_for<0, nDim - 1, 1>{}(lambda_GetMultiIndexFrom1dIndex<PackedStrides>(id, multi_id));
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        multi_id.Set(Number<nDim - 1>{}, id / PackedStrides::Get(Number<nDim - 1>{}));
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        return multi_id;
    }
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    __host__ __device__ static constexpr auto
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    GetOriginalMultiIndexFromMultiIndex(Array<index_t, nDim> multi_id)
    {
        return multi_id;
    }

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    // This function doesn't do carry check on the highest dimension for positive stepping (or
    // borrow check on the lowest dimension for negative stepping) , for performance reason. It is
    // the user's responsibility to make sure the result "new_mutli_id" is not out-of-bound on the
    // highest dimension for positive stepping (or on the lowest dimension for negative stepping)
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    template <bool PositiveDirection>
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    __host__ __device__ static Array<index_t, nDim>
    UpdateMultiIndexGivenStepSizeOf1dIndex(Array<index_t, nDim> old_multi_id,
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                                           index_t step_size_of_1d_index,
                                           integral_constant<bool, PositiveDirection>)
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    {
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        Array<index_t, nDim> new_multi_id;

        const auto step_sizes = GetMultiIndexFrom1dIndex(step_size_of_1d_index);

        static_if<PositiveDirection>{}([&](auto) {
            new_multi_id = old_multi_id + step_sizes;

            bool carry = false;

            // do carry check in reversed order, starting from lowest dimension
            // don't check the highest dimension
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            static_for<0, nDim, 1>{}([&](auto IDimReverse) {
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                constexpr index_t idim = nDim - 1 - IDimReverse.Get();
                constexpr auto IDim    = Number<idim>{};

                if(carry)
                {
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                    ++new_multi_id(idim);
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                }

                carry = false;

                if(new_multi_id[idim] >= GetLength(IDim))
                {
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                    new_multi_id(idim) -= GetLength(IDim);
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                    carry = true;
                }
            });
        }).Else([&](auto) {
            // shift up multi-id to avoid unsigned integer underflow during intermediate
            // calculations. After the shift, should have new_multi_id[...] >= 1
            new_multi_id = old_multi_id + (GetLengths() - step_sizes);

            bool borrow = false;

            // do borrow check in reversed order, starting from lowest dimension
            // don't check the highest dimension
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            static_for<0, nDim, 1>{}([&](auto IDimReverse) {
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                constexpr index_t idim = nDim - 1 - IDimReverse.Get();
                constexpr auto IDim    = Number<idim>{};

                if(borrow)
                {
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                    --new_multi_id(idim);
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                }

                borrow = false;

                if(new_multi_id[idim] < GetLength(IDim))
                {
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                    new_multi_id(idim) += GetLength(IDim);
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                    borrow = true;
                }
            });

            // shift back down multi-id
            // here, should have new_multi_id[...] >= GetLengths()
            new_multi_id = new_multi_id - GetLengths();
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        });

        return new_multi_id;
    }

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    template <index_t... IDims>
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    __host__ __device__ static constexpr auto Extract(Number<IDims>... extract_dims)
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    {
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        static_assert(sizeof...(IDims) <= GetNumOfDimension(),
                      "wrong! too many number of dimensions to be extracted");
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        using extract_lengths = decltype(Lengths::Extract(extract_dims...));
        using extract_strides = decltype(Strides::Extract(extract_dims...));
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        return ConstantTensorDescriptor<extract_lengths, extract_strides>{};
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    }

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    template <index_t... IDims>
    __host__ __device__ static constexpr auto Extract(Sequence<IDims...>)
    {
        return Extract(Number<IDims>{}...);
    }

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    template <class... Ts>
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    __host__ __device__ static constexpr auto Embed(ConstantTensorDescriptor<Ts...>)
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    {
        using leaf_tensor = ConstantTensorDescriptor<Ts...>;

        return ConstantTensorDescriptor<decltype(GetLengths().Append(leaf_tensor::GetLengths())),
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                                        decltype(GetStrides().Append(leaf_tensor::GetStrides()))>{};
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    }

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    template <index_t IDim, index_t SliceLen>
    __host__ __device__ static constexpr auto Slice(Number<IDim>, Number<SliceLen>)
    {
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        using slice_lengths = decltype(Lengths{}.Modify(Number<IDim>{}, Number<SliceLen>{}));

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        return ConstantTensorDescriptor<slice_lengths, Strides>{};
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    }

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    template <index_t IDim, index_t... FoldIntervals>
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    __host__ __device__ static constexpr auto Fold(Number<IDim>, Number<FoldIntervals>...)
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    {
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        constexpr auto fold_intervals = Sequence<FoldIntervals...>{};

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        constexpr index_t fold_intervals_product =
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            accumulate_on_sequence(fold_intervals, mod_conv::multiplies<index_t>{}, Number<1>{});
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        constexpr auto unfold_length = GetLength(Number<IDim>{});
        constexpr auto unfold_stride = GetStride(Number<IDim>{});

        // length of the dimension to be folded needs to be dividable by fold_interval_product,
        // otherwise, folding is invalid
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        static_assert(unfold_length % fold_intervals_product == 0,
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                      "wrong! length on the dimension to be folded cannot be evenly divided!");

        // folded lengths
        constexpr auto fold_lengths =
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            Sequence<unfold_length / fold_intervals_product>{}.Append(fold_intervals);
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        // folded strides
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        constexpr auto fold_strides =
            Number<unfold_stride>{} *
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            reverse_inclusive_scan_sequence(
                fold_intervals.PushBack(Number<1>{}), mod_conv::multiplies<index_t>{}, Number<1>{});
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        // left and right
        constexpr auto left = typename arithmetic_sequence_gen<0, IDim, 1>::SeqType{};
        constexpr auto right =
            typename arithmetic_sequence_gen<IDim + 1, GetNumOfDimension(), 1>::SeqType{};

        constexpr auto new_lengths =
            GetLengths().Extract(left).Append(fold_lengths).Append(GetLengths().Extract(right));
        constexpr auto new_strides =
            GetStrides().Extract(left).Append(fold_strides).Append(GetStrides().Extract(right));

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        return ConstantTensorDescriptor<decltype(new_lengths), decltype(new_strides)>{};
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    }

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    // this function unfold dimension [FirstUnfoldDim, ..., LastUnfoldDim] into 1 dimension
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    template <index_t FirstUnfoldDim, index_t LastUnfoldDim>
    __host__ __device__ static constexpr auto Unfold(Number<FirstUnfoldDim>, Number<LastUnfoldDim>)
    {
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        static_assert(FirstUnfoldDim >= 0 && LastUnfoldDim < nDim &&
                          FirstUnfoldDim <= LastUnfoldDim,
                      "wrong! should have FirstUnfoldDim <= LastUnfoldDim!");

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        // left and right
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        constexpr auto left = typename arithmetic_sequence_gen<0, FirstUnfoldDim, 1>::SeqType{};
        constexpr auto middle =
            typename arithmetic_sequence_gen<FirstUnfoldDim, LastUnfoldDim + 1, 1>::SeqType{};
        constexpr auto right =
            typename arithmetic_sequence_gen<LastUnfoldDim + 1, GetNumOfDimension(), 1>::SeqType{};

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        // dimensions to be unfolded need to be continuous
        static_assert(Type::Extract(middle).AreDimensionsContinuous(), "wrong! not unfoldable");

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        // unfolded length, stride
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        constexpr index_t unfold_length = accumulate_on_sequence(
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            GetLengths().Extract(middle), mod_conv::multiplies<index_t>{}, Number<1>{});
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        constexpr index_t unfold_stride = GetStride(Number<LastUnfoldDim>{});

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        // new lengths, strides
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        constexpr auto new_lengths = GetLengths()
                                         .Extract(left)
                                         .PushBack(Number<unfold_length>{})
                                         .Append(GetLengths().Extract(right));

        constexpr auto new_strides = GetStrides()
                                         .Extract(left)
                                         .PushBack(Number<unfold_stride>{})
                                         .Append(GetStrides().Extract(right));

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        return ConstantTensorDescriptor<decltype(new_lengths), decltype(new_strides)>{};
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    }

    template <class MapNew2Old>
    __host__ __device__ static constexpr auto ReorderGivenNew2Old(MapNew2Old)
    {
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        return ConstantTensorDescriptor<decltype(Lengths::ReorderGivenNew2Old(MapNew2Old{})),
                                        decltype(Strides::ReorderGivenNew2Old(MapNew2Old{}))>{};
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    }

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#if 0 // require sequence_sort, which is not implemented yet
    template <class MapOld2New>
    __host__ __device__ static constexpr auto ReorderGivenOld2New(MapOld2New)
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    {
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        return ConstantTensorDescriptor<decltype(Lengths::ReorderGivenOld2New(MapOld2New{})),
                                        decltype(Strides::ReorderGivenOld2New(MapOld2New{}))>{}
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    }
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#endif
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};
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template <class Lengths>
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__host__ __device__ constexpr auto make_ConstantTensorDescriptor_packed(Lengths)
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{
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    using Strides = decltype(calculate_tensor_strides_packed(Lengths{}));
    return ConstantTensorDescriptor<Lengths, Strides>{};
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}

template <class Lengths, class Strides>
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__host__ __device__ constexpr auto make_ConstantTensorDescriptor(Lengths, Strides)
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{
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    return ConstantTensorDescriptor<Lengths, Strides>{};
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}

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template <class Lengths, index_t Align>
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__host__ __device__ constexpr auto make_ConstantTensorDescriptor_aligned(Lengths, Number<Align>)
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{
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    using Strides = decltype(calculate_tensor_strides_aligned(Lengths{}, Number<Align>{}));
    return ConstantTensorDescriptor<Lengths, Strides>{};
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}

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template <index_t... Lengths, index_t... Strides>
__host__ __device__ void
print_ConstantTensorDescriptor(const char* s,
                               ConstantTensorDescriptor<Sequence<Lengths...>, Sequence<Strides...>>)
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{
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    constexpr index_t ndim = sizeof...(Lengths);
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    static_assert(ndim > 0 && ndim <= 10, "wrong!");
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    static_if<ndim == 1>{}([&](auto) {
        printf("%s dim %u, lengths {%u}, strides {%u}\n", s, ndim, Lengths..., Strides...);
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    });
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    static_if<ndim == 2>{}([&](auto) {
        printf("%s dim %u, lengths {%u %u}, strides {%u %u}\n", s, ndim, Lengths..., Strides...);
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    });

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    static_if<ndim == 3>{}([&](auto) {
        printf(
            "%s dim %u, lengths {%u %u %u}, strides {%u %u %u}\n", s, ndim, Lengths..., Strides...);
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    });

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    static_if<ndim == 4>{}([&](auto) {
        printf("%s dim %u, lengths {%u %u %u %u}, strides {%u %u %u %u}\n",
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               s,
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               ndim,
               Lengths...,
               Strides...);
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    });

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    static_if<ndim == 5>{}([&](auto) {
        printf("%s dim %u, lengths {%u %u %u %u %u}, strides {%u %u %u %u %u}\n",
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               s,
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               ndim,
               Lengths...,
               Strides...);
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    });

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    static_if<ndim == 6>{}([&](auto) {
        printf("%s dim %u, lengths {%u %u %u %u %u %u}, strides {%u %u %u %u %u %u}\n",
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               s,
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               ndim,
               Lengths...,
               Strides...);
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    });

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    static_if<ndim == 7>{}([&](auto) {
        printf("%s dim %u, lengths {%u %u %u %u %u %u %u}, strides {%u %u %u %u %u %u %u}\n",
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               s,
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               ndim,
               Lengths...,
               Strides...);
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    });

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    static_if<ndim == 8>{}([&](auto) {
        printf("%s dim %u, lengths {%u %u %u %u %u %u %u %u}, strides {%u %u %u %u %u %u %u %u}\n",
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               s,
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               ndim,
               Lengths...,
               Strides...);
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    });

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    static_if<ndim == 9>{}([&](auto) {
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        printf("%s dim %u, lengths {%u %u %u %u %u %u %u %u %u}, strides {%u %u %u %u %u %u %u %u "
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               "%u}\n",
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               s,
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               ndim,
               Lengths...,
               Strides...);
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    });

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    static_if<ndim == 10>{}([&](auto) {
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        printf("%s dim %u, lengths {%u %u %u %u %u %u %u %u %u %u}, strides {%u %u %u %u %u %u %u "
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               "%u %u %u}\n",
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               s,
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               ndim,
               Lengths...,
               Strides...);
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    });
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}