I tried the following codes but the performance is extremely different among codes. I heard that codes at the top level are not suited for numerical computation, but the performance also seems to depend on whether top-level variables (here, N) appear in the range of for-loops. Is it always better to avoid such top-level variables?

```
N = 10000000
# case1 (slow)
x = 0.0
@time for k = 1:N
x += float( k )
end
# case2 (slow)
@time let
y = 0.0
for j = 1:N
y += float( j )
end
end
# case3 (very fast)
@time let
n::Int64
n = N
z = 0.0
for m = 1:n
z += float( m )
end
end
# case 4 (slow)
function func1()
c = 0.0
for i = 1:N
c += float( i )
end
end
# case 5 (fast)
function func2( n )
c = 0.0
for i = 1:n
c += float( i )
end
end
# case 6 (fast)
function func3()
n::Int
n = N
c = 0.0
for i = 1:n
c += float( i )
end
end
# case 7 (slow)
function func4()
n = N # n = int( N ) is also slow
c = 0.0
for i = 1:n
c += float( i )
end
end
@time func1()
@time func2( N )
@time func3()
@time func4()
```

The result obtained with Julia 0.3.7 (on Linux x86_64) is

```
elapsed time: 2.595440598 seconds (959985496 bytes allocated, 10.70% gc time)
elapsed time: 2.469471127 seconds (959983688 bytes allocated, 11.49% gc time)
elapsed time: 1.608e-6 seconds (16 bytes allocated)
elapsed time: 2.535243279 seconds (960021976 bytes allocated, 11.21% gc time)
elapsed time: 0.002601149 seconds (75592 bytes allocated)
elapsed time: 0.003471583 seconds (84456 bytes allocated)
elapsed time: 2.480343146 seconds (960020752 bytes allocated, 11.48% gc time)
```

`code_native`

and`code_lllvm`

functions are useful to check). – Isaiah Norton Apr 26 '15 at 13:38