src/measures/discrete.rs

Sun, 25 Sep 2022 21:45:56 +0300

author
Tuomo Valkonen <tuomov@iki.fi>
date
Sun, 25 Sep 2022 21:45:56 +0300
changeset 4
5aa5c279e341
parent 0
eb3c7813b67a
permissions
-rw-r--r--

Attempt at directly referring to measure masses as SliceStorageMut

//! This module implementes discrete measures.

use std::ops::{
    Div,Mul,DivAssign,MulAssign,Neg,
    Add,Sub,AddAssign,SubAssign,
    Index,IndexMut,
};
use std::iter::Sum;
use serde::ser::{Serializer, Serialize, SerializeSeq};
use nalgebra::{
    DVector,
    DVectorSliceMut,
    Dynamic,
    Const,
    SliceStorageMut,
    Matrix,
};

use alg_tools::norms::Norm;
use alg_tools::tabledump::TableDump;
use alg_tools::linops::{Apply, Linear};
use alg_tools::iter::{MapF,Mappable};
use alg_tools::nalgebra_support::ToNalgebraRealField;

use crate::types::*;
use super::base::*;
use super::delta::*;

/// Representation of a discrete measure.
///
/// This is the measure $μ = ∑_{k=1}^n α_k δ_{x_k}$, consisting of several
/// [`DeltaMeasure`], i.e., “spikes” $α_k δ_{x_k}$ with weights $\alpha_k$ in `F` at locations
/// $x_k$ in `Domain`.
#[derive(Clone,Debug)]
pub struct DiscreteMeasure<Domain, F : Num> {
    pub(super) spikes : Vec<DeltaMeasure<Domain, F>>,
}

/// Iterator over the [`DeltaMeasure`] spikes of a [`DiscreteMeasure`].
pub type SpikeIter<'a, Domain, F> = std::slice::Iter<'a, DeltaMeasure<Domain, F>>;

/// Iterator over mutable [`DeltaMeasure`] spikes of a [`DiscreteMeasure`].
pub type SpikeIterMut<'a, Domain, F> = std::slice::IterMut<'a, DeltaMeasure<Domain, F>>;

/// Iterator over the locations of the spikes of a [`DiscreteMeasure`].
pub type LocationIter<'a, Domain, F>
    = std::iter::Map<SpikeIter<'a, Domain, F>, fn(&'a DeltaMeasure<Domain, F>) -> &'a Domain>;

/// Iterator over the masses of the spikes of a [`DiscreteMeasure`].
pub type MassIter<'a, Domain, F>
    = std::iter::Map<SpikeIter<'a, Domain, F>, fn(&'a DeltaMeasure<Domain, F>) -> F>;

/// Iterator over the mutable locations of the spikes of a [`DiscreteMeasure`].
pub type MassIterMut<'a, Domain, F>
    = std::iter::Map<SpikeIterMut<'a, Domain, F>, for<'r> fn(&'r mut DeltaMeasure<Domain, F>) -> &'r mut F>;

impl<Domain, F : Num> DiscreteMeasure<Domain, F> {
    /// Create a new zero measure (empty spike set).
    pub fn new() -> Self {
        DiscreteMeasure{ spikes : Vec::new() }
    }

    /// Number of [`DeltaMeasure`] spikes in the measure
    #[inline]
    pub fn len(&self) -> usize {
        self.spikes.len()
    }

    /// Iterate over (references to) the [`DeltaMeasure`] spikes in this measure
    #[inline]
    pub fn iter_spikes(&self) -> SpikeIter<'_, Domain, F> {
        self.spikes.iter()
    }

    /// Iterate over mutable references to the [`DeltaMeasure`] spikes in this measure
    #[inline]
    pub fn iter_spikes_mut(&mut self) -> SpikeIterMut<'_, Domain, F> {
        self.spikes.iter_mut()
    }

    /// Iterate over the location of the spikes in this measure
    #[inline]
    pub fn iter_locations(&self) -> LocationIter<'_, Domain, F> {
        self.iter_spikes().map(DeltaMeasure::get_location)
    }

    /// Iterate over the masses of the spikes in this measure
    #[inline]
    pub fn iter_masses(&self) -> MassIter<'_, Domain, F> {
        self.iter_spikes().map(DeltaMeasure::get_mass)
    }

    /// Iterate over the masses of the spikes in this measure
    #[inline]
    pub fn iter_masses_mut(&mut self) -> MassIterMut<'_, Domain, F> {
        self.iter_spikes_mut().map(DeltaMeasure::get_mass_mut)
    }

    /// Update the masses of all the spikes to those produced by an iterator.
    #[inline]
    pub fn set_masses<I : Iterator<Item=F>>(&mut self, iter : I) {
        self.spikes.iter_mut().zip(iter).for_each(|(δ, α)| δ.set_mass(α));
    }

    // /// Map the masses of all the spikes using a function and an iterator
    // #[inline]
    // pub fn zipmap_masses<
    //     I : Iterator<Item=F>,
    //     G : Fn(F, I::Item) -> F
    // > (&mut self, iter : I, g : G) {
    //     self.spikes.iter_mut().zip(iter).for_each(|(δ, v)| δ.set_mass(g(δ.get_mass(), v)));
    // }

    /// Prune all spikes with zero mass.
    #[inline]
    pub fn prune(&mut self) {
        self.spikes.retain(|δ| δ.α != F::ZERO);
    }
}

impl<Domain : Clone, F : Float> DiscreteMeasure<Domain, F> {
    /// Computes `μ1 ← θ * μ1 - ζ * μ2`, pruning entries where both `μ1` (`self`) and `μ2` have
    // zero weight. `μ2` will contain copy of pruned original `μ1` without arithmetic performed.
    /// **This expects `self` and `μ2` to have matching coordinates in each index**.
    // `μ2` can be than `self`, but not longer.
    pub fn pruning_sub(&mut self, θ : F, ζ : F, μ2 : &mut Self) {
        let mut μ2_get = 0;
        let mut μ2_insert = 0;
        self.spikes.drain_filter(|&mut DeltaMeasure{ α : ref mut α_ref, ref x }| {
            // Get weight of spike in μ2, zero if out of bounds.
            let β = μ2.spikes.get(μ2_get).map_or(F::ZERO, DeltaMeasure::get_mass);
            μ2_get += 1;

            if *α_ref == F::ZERO && β == F::ZERO {
                // Prune
                true
            } else {
                // Save self weight
                let α = *α_ref;
                // Modify self
                *α_ref = θ * α - ζ * β;
                // Make copy of old self weight in μ2
                let δ = DeltaMeasure{ α, x : x.clone() };
                match μ2.spikes.get_mut(μ2_insert) {
                    Some(replace) => {
                        *replace = δ;
                    },
                    None => {
                        debug_assert_eq!(μ2.len(), μ2_insert);
                        μ2.spikes.push(δ);
                    },
                }
                μ2_insert += 1;
                // Keep
                false
            }
        });
        // Truncate μ2 to same length as self.
        μ2.spikes.truncate(μ2_insert);
        debug_assert_eq!(μ2.len(), self.len());
    }
}

impl<Domain, F : Float> DiscreteMeasure<Domain, F> {
    /// Prune all spikes with mass absolute value less than the given `tolerance`.
    #[inline]
    pub fn prune_approx(&mut self, tolerance : F) {
        self.spikes.retain(|δ| δ.α.abs() > tolerance);
    }
}

impl<Domain, F : Float + ToNalgebraRealField> DiscreteMeasure<Domain, F> {
    /// Extracts the masses of the spikes as a [`DVector`].
    pub fn masses_dvector(&self) -> DVector<F::MixedType> {
        DVector::from_iterator(self.len(),
                               self.iter_masses()
                                   .map(|α| α.to_nalgebra_mixed()))
    }

    /// Sets the masses of the spikes from the values of a [`DVector`].
    pub fn set_masses_dvector(&mut self, x : &DVector<F::MixedType>) {
        self.set_masses(x.iter().map(|&α| F::from_nalgebra_mixed(α)));
    }
}

impl<Domain, F : Float + ToNalgebraRealField<MixedType=F>> DiscreteMeasure<Domain, F> {
    pub fn masses_mut(&mut self) -> DVectorSliceMut<'_, F::MixedType, Dynamic> {
        let n = self.spikes.len();
        unsafe {
            let start = self.spikes.as_mut_ptr();
            let next = start.add(1);
            let ptr = &mut (*start).α as *mut F;
            let ptrnext = &mut (*next).α as *mut F;
            let stride = ptrnext.offset_from(ptr);
            assert_eq!(start.add(stride as usize), next);
            Matrix::from_data(SliceStorageMut::from_raw_parts(
                ptr,
                (Dynamic::new(n), Const),
                (Dynamic::new(stride as usize), Dynamic::new(0))
            ))
        }
    }
}

impl<Domain, F :Num> Index<usize> for DiscreteMeasure<Domain, F> {
    type Output = DeltaMeasure<Domain, F>;
    #[inline]
    fn index(&self, i : usize) -> &Self::Output {
        self.spikes.index(i)
    }
}

impl<Domain, F :Num> IndexMut<usize> for DiscreteMeasure<Domain, F> {
    #[inline]
    fn index_mut(&mut self, i : usize) -> &mut Self::Output {
        self.spikes.index_mut(i)
    }
}

impl<Domain, F : Num, D : Into<DeltaMeasure<Domain, F>>, const K : usize> From<[D; K]>
for DiscreteMeasure<Domain, F> {
    #[inline]
    fn from(list : [D; K]) -> Self {
        list.into_iter().collect()
    }
}

impl<Domain, F : Num, D : Into<DeltaMeasure<Domain, F>>> FromIterator<D>
for DiscreteMeasure<Domain, F> {
    #[inline]
    fn from_iter<T>(iter : T) -> Self
    where T : IntoIterator<Item=D> {
        DiscreteMeasure{
            spikes : iter.into_iter().map(|m| m.into()).collect()
        }
    }
}

impl<'a, F : Num, const N : usize> TableDump<'a>
for DiscreteMeasure<Loc<F, N>,F>
where DeltaMeasure<Loc<F, N>, F> : Serialize + 'a {
    type Iter = std::slice::Iter<'a, DeltaMeasure<Loc<F, N>, F>>;

    // fn tabledump_headers(&'a self) -> Vec<String> {
    //     let mut v : Vec<String> = (0..N).map(|i| format!("x{}", i)).collect();
    //     v.push("weight".into());
    //     v
    // }

    fn tabledump_entries(&'a self) -> Self::Iter {
        // Ensure order matching the headers above
        self.spikes.iter()
    }
}

// Need to manually implement serialisation for DeltaMeasure<Loc<F, N>, F> [`csv`] writer fails on
// structs with nested arrays as well as with #[serde(flatten)].
// Then derive no longer works for DiscreteMeasure
impl<F : Num, const N : usize> Serialize for DiscreteMeasure<Loc<F, N>, F>
where
    F: Serialize,
{
    fn serialize<S>(&self, serializer: S) -> Result<S::Ok, S::Error>
    where
        S: Serializer,
    {
        let mut s = serializer.serialize_seq(Some(self.spikes.len()))?;
        for δ in self.spikes.iter() {
            s.serialize_element(δ)?;
        }
        s.end()
    }
}

impl<Domain : PartialEq, F : Float> Measure<F> for DiscreteMeasure<Domain, F> {
    type Domain = Domain;
}

impl<Domain : PartialEq, F : Float> Norm<F, Radon> for DiscreteMeasure<Domain, F>
where DeltaMeasure<Domain, F> : Norm<F, Radon> {
    #[inline]
    fn norm(&self, _ : Radon) -> F {
        self.spikes.iter().map(|m| m.norm(Radon)).sum()
    }
}

impl<Domain, G, F : Num, Y : Sum + Mul<F, Output=Y>> Apply<G> for DiscreteMeasure<Domain, F>
where G: for<'a> Apply<&'a Domain, Output = Y> {
    type Output = Y;
    #[inline]
    fn apply(&self, g : G) -> Y {
        self.spikes.iter().map(|m| g.apply(&m.x) * m.α).sum()
    }
}

impl<Domain, G, F : Num, Y : Sum + Mul<F, Output=Y>> Linear<G> for DiscreteMeasure<Domain, F>
where G : for<'a> Apply<&'a Domain, Output = Y> {
    type Codomain = Y;
}


/// Helper trait for constructing arithmetic operations for combinations
/// of [`DiscreteMeasure`] and [`DeltaMeasure`], and their references.
trait Lift<F : Num, Domain> {
    type Producer : Iterator<Item=DeltaMeasure<Domain, F>>;

    /// Lifts `self` into a [`DiscreteMeasure`].
    fn lift(self) -> DiscreteMeasure<Domain, F>;

    /// Lifts `self` into a [`DiscreteMeasure`], apply either `f` or `f_mut` whether the type
    /// this method is implemented for is a reference or or not.
    fn lift_with(self,
                 f : impl Fn(&DeltaMeasure<Domain, F>) -> DeltaMeasure<Domain, F>,
                 f_mut : impl FnMut(&mut DeltaMeasure<Domain, F>))
                 -> DiscreteMeasure<Domain, F>;

    /// Extend `self` into a [`DiscreteMeasure`] with the spikes produced by `iter`.
    fn lift_extend<I : Iterator<Item=DeltaMeasure<Domain, F>>>(
        self,
        iter : I
    ) -> DiscreteMeasure<Domain, F>;

    /// Returns an iterator for producing copies of the spikes of `self`.
    fn produce(self) -> Self::Producer;
}

impl<F : Num, Domain> Lift<F, Domain> for DiscreteMeasure<Domain, F> {
    type Producer = std::vec::IntoIter<DeltaMeasure<Domain, F>>;

    #[inline]
    fn lift(self) -> DiscreteMeasure<Domain, F> { self }

    fn lift_with(mut self,
                 _f : impl Fn(&DeltaMeasure<Domain, F>) -> DeltaMeasure<Domain, F>,
                 f_mut : impl FnMut(&mut DeltaMeasure<Domain, F>))
                 -> DiscreteMeasure<Domain, F> {
        self.spikes.iter_mut().for_each(f_mut);
        self
    }

    #[inline]
    fn lift_extend<I : Iterator<Item=DeltaMeasure<Domain, F>>>(
        mut self,
        iter : I
    ) -> DiscreteMeasure<Domain, F> {
        self.spikes.extend(iter);
        self
    }

    #[inline]
    fn produce(self) -> Self::Producer {
        self.spikes.into_iter()
    }
}

impl<'a, F : Num, Domain : Clone> Lift<F, Domain> for &'a DiscreteMeasure<Domain, F> {
    type Producer = MapF<std::slice::Iter<'a, DeltaMeasure<Domain, F>>, DeltaMeasure<Domain, F>>;
    
    #[inline]
    fn lift(self) -> DiscreteMeasure<Domain, F> { self.clone() }

    fn lift_with(self,
                 f : impl Fn(&DeltaMeasure<Domain, F>) -> DeltaMeasure<Domain, F>,
                 _f_mut : impl FnMut(&mut DeltaMeasure<Domain, F>))
                 -> DiscreteMeasure<Domain, F> {
        DiscreteMeasure{ spikes : self.spikes.iter().map(f).collect() }
    }

    #[inline]
    fn lift_extend<I : Iterator<Item=DeltaMeasure<Domain, F>>>(
        self,
        iter : I
    ) -> DiscreteMeasure<Domain, F> {
        let mut res = self.clone();
        res.spikes.extend(iter);
        res
    }

    #[inline]
    fn produce(self) -> Self::Producer {
        // TODO: maybe not optimal to clone here and would benefit from
        // a reference version of lift_extend.
        self.spikes.iter().mapF(Clone::clone)
    }
}

impl<F : Num, Domain> Lift<F, Domain> for DeltaMeasure<Domain, F> {
    type Producer = std::iter::Once<DeltaMeasure<Domain, F>>;

    #[inline]
    fn lift(self) -> DiscreteMeasure<Domain, F> { DiscreteMeasure { spikes : vec![self] } }

    #[inline]
    fn lift_with(mut self,
                 _f : impl Fn(&DeltaMeasure<Domain, F>) -> DeltaMeasure<Domain, F>,
                 mut f_mut : impl FnMut(&mut DeltaMeasure<Domain, F>))
                 -> DiscreteMeasure<Domain, F> {
        f_mut(&mut self);
        DiscreteMeasure{ spikes : vec![self] }
    }

    #[inline]
    fn lift_extend<I : Iterator<Item=DeltaMeasure<Domain, F>>>(
        self,
        iter : I
    ) -> DiscreteMeasure<Domain, F> {
        let mut spikes = vec![self];
        spikes.extend(iter);
        DiscreteMeasure{ spikes : spikes }
    }

    #[inline]
    fn produce(self) -> Self::Producer {
        std::iter::once(self)
    }
}

impl<'a, F : Num, Domain : Clone> Lift<F, Domain> for &'a DeltaMeasure<Domain, F> {
    type Producer = std::iter::Once<DeltaMeasure<Domain, F>>;

    #[inline]
    fn lift(self) -> DiscreteMeasure<Domain, F> { DiscreteMeasure { spikes : vec![self.clone()] } }

    #[inline]
    fn lift_with(self,
                 f : impl Fn(&DeltaMeasure<Domain, F>) -> DeltaMeasure<Domain, F>,
                 _f_mut : impl FnMut(&mut DeltaMeasure<Domain, F>))
                 -> DiscreteMeasure<Domain, F> {
        DiscreteMeasure{ spikes : vec![f(self)] }
    }

    #[inline]
    fn lift_extend<I : Iterator<Item=DeltaMeasure<Domain, F>>>(
        self,
        iter : I
    ) -> DiscreteMeasure<Domain, F> {
        let mut spikes = vec![self.clone()];
        spikes.extend(iter);
        DiscreteMeasure{ spikes : spikes }
    }

    #[inline]
    fn produce(self) -> Self::Producer {
        std::iter::once(self.clone())
    }
}

macro_rules! make_discrete_addsub_assign {
    ($rhs:ty) => {
        // Discrete += (&)Discrete
        impl<'a, F : Num, Domain : Clone> AddAssign<$rhs>
        for DiscreteMeasure<Domain, F> {
            fn add_assign(&mut self, other : $rhs) {
                self.spikes.extend(other.produce());
            }
        }

        impl<'a, F : Num + Neg<Output=F>, Domain : Clone> SubAssign<$rhs>
        for DiscreteMeasure<Domain, F> {
            fn sub_assign(&mut self, other : $rhs) {
                self.spikes.extend(other.produce().map(|δ| -δ));
            }
        }
    }
}

make_discrete_addsub_assign!(DiscreteMeasure<Domain, F>);
make_discrete_addsub_assign!(&'a DiscreteMeasure<Domain, F>);
make_discrete_addsub_assign!(DeltaMeasure<Domain, F>);
make_discrete_addsub_assign!(&'a DeltaMeasure<Domain, F>);

macro_rules! make_discrete_addsub {
    ($lhs:ty, $rhs:ty, $alt_order:expr) => {
        impl<'a, 'b, F : Num, Domain : Clone> Add<$rhs> for $lhs {
            type Output = DiscreteMeasure<Domain, F>;
            fn add(self, other : $rhs) -> DiscreteMeasure<Domain, F> {
                if !$alt_order {
                    self.lift_extend(other.produce())
                } else {
                    other.lift_extend(self.produce())
                }
            }
        }

        impl<'a, 'b, F : Num + Neg<Output=F>, Domain : Clone> Sub<$rhs> for $lhs {
            type Output = DiscreteMeasure<Domain, F>;
            fn sub(self, other : $rhs) -> DiscreteMeasure<Domain, F> {
                self.lift_extend(other.produce().map(|δ| -δ))
            }
        }
    };
}

make_discrete_addsub!(DiscreteMeasure<Domain, F>,     DiscreteMeasure<Domain, F>,     false);
make_discrete_addsub!(DiscreteMeasure<Domain, F>,     &'b DiscreteMeasure<Domain, F>, false);
make_discrete_addsub!(&'a DiscreteMeasure<Domain, F>, DiscreteMeasure<Domain, F>,     true);
make_discrete_addsub!(&'a DiscreteMeasure<Domain, F>, &'b DiscreteMeasure<Domain, F>, false);
make_discrete_addsub!(DeltaMeasure<Domain, F>,        DiscreteMeasure<Domain, F>,     false);
make_discrete_addsub!(DeltaMeasure<Domain, F>,        &'b DiscreteMeasure<Domain, F>, false);
make_discrete_addsub!(&'a DeltaMeasure<Domain, F>,    DiscreteMeasure<Domain, F>,     true);
make_discrete_addsub!(&'a DeltaMeasure<Domain, F>,    &'b DiscreteMeasure<Domain, F>, false);
make_discrete_addsub!(DiscreteMeasure<Domain, F>,     DeltaMeasure<Domain, F>,        false);
make_discrete_addsub!(DiscreteMeasure<Domain, F>,     &'b DeltaMeasure<Domain, F>,    false);
make_discrete_addsub!(&'a DiscreteMeasure<Domain, F>, DeltaMeasure<Domain, F>,        false);
make_discrete_addsub!(&'a DiscreteMeasure<Domain, F>, &'b DeltaMeasure<Domain, F>,    false);
make_discrete_addsub!(DeltaMeasure<Domain, F>,        DeltaMeasure<Domain, F>,        false);
make_discrete_addsub!(DeltaMeasure<Domain, F>,        &'b DeltaMeasure<Domain, F>,    false);
make_discrete_addsub!(&'a DeltaMeasure<Domain, F>,    DeltaMeasure<Domain, F>,        false);
make_discrete_addsub!(&'a DeltaMeasure<Domain, F>,    &'b DeltaMeasure<Domain, F>,    false);

macro_rules! make_discrete_scalarop_rhs {
    ($trait:ident, $fn:ident, $trait_assign:ident, $fn_assign:ident) => {
        make_discrete_scalarop_rhs!(@assign DiscreteMeasure<Domain, F>, F, $trait_assign, $fn_assign);
        make_discrete_scalarop_rhs!(@assign DiscreteMeasure<Domain, F>, &'a F, $trait_assign, $fn_assign);
        make_discrete_scalarop_rhs!(@new DiscreteMeasure<Domain, F>, F, $trait, $fn, $fn_assign);
        make_discrete_scalarop_rhs!(@new DiscreteMeasure<Domain, F>, &'a F, $trait, $fn, $fn_assign);
        make_discrete_scalarop_rhs!(@new &'b DiscreteMeasure<Domain, F>, F, $trait, $fn, $fn_assign);
        make_discrete_scalarop_rhs!(@new &'b DiscreteMeasure<Domain, F>, &'a F, $trait, $fn, $fn_assign);
    };

    (@assign $lhs:ty, $rhs:ty, $trait_assign:ident, $fn_assign:ident) => {
        impl<'a, 'b, F : Num, Domain> $trait_assign<$rhs> for $lhs {
            fn $fn_assign(&mut self, b : $rhs) {
                self.spikes.iter_mut().for_each(|δ| δ.$fn_assign(b));
            }
        }
    };
    (@new $lhs:ty, $rhs:ty, $trait:ident, $fn:ident, $fn_assign:ident) => {
        impl<'a, 'b, F : Num, Domain : Clone> $trait<$rhs> for $lhs {
            type Output = DiscreteMeasure<Domain, F>;
            fn $fn(self, b : $rhs) -> Self::Output {
                self.lift_with(|δ| δ.$fn(b), |δ| δ.$fn_assign(b))
            }
        }
    };
}

make_discrete_scalarop_rhs!(Mul, mul, MulAssign, mul_assign);
make_discrete_scalarop_rhs!(Div, div, DivAssign, div_assign);

macro_rules! make_discrete_unary {
    ($trait:ident, $fn:ident, $type:ty) => {
        impl<'a, F : Num + Neg<Output=F>, Domain : Clone> Neg for $type {
            type Output = DiscreteMeasure<Domain, F>;
            fn $fn(self) -> Self::Output {
                self.lift_with(|δ| δ.$fn(), |δ| δ.α = δ.α.$fn())
            }
        }
    }
}

make_discrete_unary!(Neg, neg, DiscreteMeasure<Domain, F>);
make_discrete_unary!(Neg, neg, &'a DiscreteMeasure<Domain, F>);

// impl<F : Num, Domain> Neg for DiscreteMeasure<Domain, F> {
//     type Output = Self;
//     fn $fn(mut self, b : F) -> Self {
//         self.lift().spikes.iter_mut().for_each(|δ| δ.neg(b));
//         self
//     }
// }

macro_rules! make_discrete_scalarop_lhs {
    ($trait:ident, $fn:ident; $($f:ident)+) => { $(
        impl<Domain> $trait<DiscreteMeasure<Domain, $f>> for $f {
            type Output = DiscreteMeasure<Domain, $f>;
            fn $fn(self, mut v : DiscreteMeasure<Domain, $f>) -> Self::Output {
                v.spikes.iter_mut().for_each(|δ| δ.α = self.$fn(δ.α));
                v
            }
        }

        impl<'a, Domain : Copy> $trait<&'a DiscreteMeasure<Domain, $f>> for $f {
            type Output = DiscreteMeasure<Domain, $f>;
            fn $fn(self, v : &'a DiscreteMeasure<Domain, $f>) -> Self::Output {
                DiscreteMeasure{
                    spikes : v.spikes.iter().map(|δ| self.$fn(δ)).collect()
                }
            }
        }

        impl<'b, Domain> $trait<DiscreteMeasure<Domain, $f>> for &'b $f {
            type Output = DiscreteMeasure<Domain, $f>;
            fn $fn(self, mut v : DiscreteMeasure<Domain, $f>) -> Self::Output {
                v.spikes.iter_mut().for_each(|δ| δ.α = self.$fn(δ.α));
                v
            }
        }

        impl<'a, 'b, Domain : Copy> $trait<&'a DiscreteMeasure<Domain, $f>> for &'b $f {
            type Output = DiscreteMeasure<Domain, $f>;
            fn $fn(self, v : &'a DiscreteMeasure<Domain, $f>) -> Self::Output {
                DiscreteMeasure{
                    spikes : v.spikes.iter().map(|δ| self.$fn(δ)).collect()
                }
            }
        }
    )+ }
}

make_discrete_scalarop_lhs!(Mul, mul; f32 f64 i8 i16 i32 i64 isize u8 u16 u32 u64 usize);
make_discrete_scalarop_lhs!(Div, div; f32 f64 i8 i16 i32 i64 isize u8 u16 u32 u64 usize);

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