Jameson, You wrote that the compiler can already tell whether or not a function modifies one of its mutable arguments. Say that the function is f, the mutable argument is x, and that f contains a call like g(x), where g is another function. Then apparently in order to analyze f the compiler would have to know whether or not g modifies its argument. But how can it tell, since in Julia the function g might not even have been parsed until that statement is encountered?
With regard to your other point, I agree with you that aliasing is a significant loophole. Although this is getting off topic, it seems to me that the Julia community should simply declare that aliasing between read/write function arguments (or write/write) is not allowed in Julia. The C community did not have that luxury because of legacy tricks with the memcpy function, and neither did the Fortran community because of the legacy trick of equivalencing many smaller arrays on top of one big one. Since Julia gets to start with a clean slate, why not forbid aliasing? -- Steve On Tuesday, August 5, 2014 5:38:17 PM UTC-4, [email protected] wrote: > > Dear Julia users, > > It seems to me that Julia's distinction between a 'type' and an > 'immutable' conflates two independent properties; the consequence of this > conflation is a needless loss of performance. In more detail, the > differences between a 'type' struct and 'immutable' struct in Julia are: > > 1. Assignment of 'type' struct copies a pointer; assignment of an > 'immutable' struct copies the data. > > 2. An array of type structs is an array of pointers, while an array of > immutables is an array of data. > > 3. Type structs are refcounted, whereas immutables are not. (This is not > documented; it is my conjecture.) > > 4. Fields in type structs can be modified, but fields in immutables cannot. > > Clearly #1-#3 are related concepts. As far as I can see, #4 is completely > independent from #1-#3, and there is no obvious reason why it is forbidden > to modify fields in immutables. There is no analogous restriction in C/C++. > > This conflation causes a performance hit. Consider: > > type floatbool > a::Float64 > b:Bool > end > > If t is of type Array{floatbool,1} and I want to update the flag b in > t[10] to 'true', I say 't[10].b=true' (call this 'fast'update). But if > instead of 'type floatbool' I had said 'immutable floatbool', then to set > flag b in t[10] I need the more complex code t[10] = > floatbool(t[10].a,true) (call this 'slow' update). > > To document the performance hit, I wrote five functions below. The first > three use 'type' and either no update, fast update, or slow update; the > last two use 'immutable' and either no update or slow update. You can see > a HUGE hit on performance between slow and fast update for `type'; for > immutable there would presumably also be a difference, although apparently > smaller. (Obviously, I can't test fast update for immutable; this is the > point of my message!) > > So why does Julia impose this apparently needless restriction on immutable? > > -- Steve Vavasis > > > julia> @time testimmut.type_upd_none() > @time testimmut.type_upd_none() > elapsed time: 0.141462422 seconds (48445152 bytes allocated) > > julia> @time testimmut.type_upd_fast() > @time testimmut.type_upd_fast() > elapsed time: 0.618769232 seconds (48247072 bytes allocated) > > julia> @time testimmut.type_upd_slow() > @time testimmut.type_upd_slow() > elapsed time: 4.511306586 seconds (4048268640 bytes allocated) > > julia> @time testimmut.immut_upd_none() > @time testimmut.immut_upd_none() > elapsed time: 0.04480173 seconds (32229468 bytes allocated) > > julia> @time testimmut.immut_upd_slow() > @time testimmut.immut_upd_slow() > elapsed time: 0.351634871 seconds (32000096 bytes allocated) > > module testimmut > > type xytype > x::Int > y::Float64 > z::Float64 > summed::Bool > end > > immutable xyimmut > x::Int > y::Float64 > z::Float64 > summed::Bool > end > > myfun(x) = x * (x + 1) * (x + 2) > > function type_upd_none() > n = 1000000 > a = Array(xytype, n) > for i = 1 : n > a[i] = xytype(div(i,2), 0.0, 0.0, false) > end > numtri = 100 > for tri = 1 : numtri > sum = 0 > for i = 1 : n > @inbounds x = a[i].x > sum += myfun(x) > end > end > end > > > function type_upd_fast() > n = 1000000 > a = Array(xytype, n) > for i = 1 : n > a[i] = xytype(div(i,2), 0.0, 0.0, false) > end > numtri = 100 > for tri = 1 : numtri > sum = 0 > for i = 1 : n > @inbounds x = a[i].x > sum += myfun(x) > @inbounds a[i].summed = true > end > end > end > > function type_upd_slow() > n = 1000000 > a = Array(xytype, n) > for i = 1 : n > a[i] = xytype(div(i,2), 0.0, 0.0, false) > end > numtri = 100 > for tri = 1 : numtri > sum = 0 > for i = 1 : n > @inbounds x = a[i].x > sum += myfun(x) > @inbounds a[i] = xytype(a[i].x, a[i].y, a[i].z, true) > end > end > end > > > function immut_upd_none() > n = 1000000 > a = Array(xyimmut, n) > for i = 1 : n > a[i] = xyimmut(div(i,2), 0.0, 0.0, false) > end > numtri = 100 > for tri = 1 : numtri > sum = 0 > for i = 1 : n > @inbounds x = a[i].x > sum += myfun(x) > end > end > end > > function immut_upd_slow() > n = 1000000 > a = Array(xyimmut, n) > for i = 1 : n > a[i] = xyimmut(div(i,2), 0.0, 0.0, false) > end > numtri = 100 > for tri = 1 : numtri > sum = 0 > for i = 1 : n > @inbounds x = a[i].x > sum += myfun(x) > @inbounds a[i] = xyimmut(a[i].x, a[i].y, a[i].z, true) > end > end > end > > end > > > >
