cancel
Showing results for 
Show  only  | Search instead for 
Did you mean: 
Check out the JMP® Marketplace featured Capability Explorer add-in
Choose Language Hide Translation Bar
Robbb
Level III

Parallel Assign() is slow on certain devices

Hi everybody,

 

there seems to be a problem with Parallel Assign() in combination with certain systems.

I have got access to 3 Windows 10 PCs with JMP 16.1.:

  1. Laptop: Core i5-8350U (4 cores) @ 1.9 GHz, 16GB Ram
  2. Old Workstation: Xeon E5-1660 v4 (8cores) @ 3.2 GHz, 256GB Ram
  3. New Workstation Xeon W-2145 (8 cores) @3.7 GHz, 128GB Ram

I compared the performance of the parallel and the sequential version of my test script using different problem sizes on all systems (scipt below).

The result was surprisingly bad. Only on my laptop the parallel version is slightly faster than the sequential version, but up to more than 2 times slower on the workstations.

Did anyone experience similar performance issues with Parallel Assign()? Or am I using it wrong? What is going on here?

 

Rob

Robbb_0-1634651585833.pngRobbb_1-1634651710129.png

n_different_ids = 100000;

// Just generate random data. Every 15 rows must be processed at the same time. DT_Data = J( 15*n_different_ids, 9, 0 ); For ( i = 1, i <= n_different_ids, i++, DT_Data[15*(i-1)+(1::15),0] = i + J( 15, 9, Random Normal() ); );
// some function F_percentile = Function( {x , p}, x = Sort Ascending(x); n = N Rows(x); index = 1 + (n - 1) * p; index_ibelow = Floor(index); index_iabove = Ceiling(index); h = index - index_ibelow; result = (1 - h) * x[index_ibelow] + h * x[index_iabove]; result; );
// parallel version DT_Features = J( n_different_ids, 16, 0 ); start=tick seconds(); Parallel Assign( { DT_Data = DT_Data, F_percentile = Name Expr( F_percentile ) }, DT_Features[i,j] = ( i_same_group = Loc(DT_Data[15*(i-1)+(1::15), 1]); data = DT_Data[15*(i-1)+i_same_group, 1+Ceiling(j/2)]; If (mod(j,2), result = F_percentile(data, 0.95); , result = F_percentile(data, 0.05); ); result; ) ); time_parallel = tick seconds()-start; Show(time_parallel); Wait(0.1);
// sequential version DT_Features = J( n_different_ids, 16, 0 ); start=tick seconds(); for(i=1,i<=n_different_ids,i++, for(j=1,j<=16,j++, i_same_group = Loc(DT_Data[15*(i-1)+(1::15), 1]); data = DT_Data[15*(i-1)+i_same_group, 1+Ceiling(j/2)]; If (mod(j,2), result = F_percentile(data, 0.95); , result = F_percentile(data, 0.05); ); DT_Features[i,j] =result; ); ); time_sequential = tick seconds()-start; Show(time_sequential);

 

 

10 REPLIES 10
Robbb
Level III

Re: Parallel Assign() is slow on certain devices

I followed Craiges advice and contacted tech support two weeks ago. After some queries about my PCs I got the response today that developers have been involved to investigate the behavior and fix problems in a future JMP version.

 

Nevertheless, thanks again Evan for speeding up this specific script.