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BY2
Obsidian | Level 7 BY2
Obsidian | Level 7

Hi,

 

I am currently working on a project where i converted a simulation from excel file to SAS EG. I have reduced the running time from 12hours (Excel VBA) to approx. 8 hours (SAS EG). However, my goal is to have this program run successfully under 1 hour. 

 

Would like to know if this is possible? 

 

Below are my codes:

data a (drop=i);
do i = 1 to 1000000;
n = i;
output;
end;
run;
data a(drop=w x y af1 af2);
set a;
do until (w<1);
x = 2 *rand("Uniform") - 1;
y = 2 *rand("Uniform") - 1;
w = x**2 + y**2;
end;
w = Sqrt((-2 * (Log(w))) / w);
af1 = 1 * x * w + 0;
af2 = 1 * y * w + 0;
sim_1 = af1;
call symputx('sim_1'||left(n),sim_1,'g');
run;

%macro sim_2();
data source2 (keep= sim_ML sim_GL);
set source1;
do until (w_m<1);
x_m = 2 *rand("Uniform") - 1;
y_m = 2 *rand("Uniform") - 1;
w_m= x_m**2 + y_m**2;
end;
w_m = Sqrt((-2 * (Log(w_m))) / w_m);
af1_m = 1 * x_m * w_m + 0;
af2_m = 1 * y_m * w_m + 0;
sim_m1 = af1_m;
sim_m2 = af2_m;


if mod(n,2)=0 then do;
if r * ho * &&sim_1&i + sqrt(1-(r*ho)**2)*sim_m1 < P then sim_ML = E*L; else sim_ML = 0;
end;
else
if mod(n,2)=1 then do;
if r * ho * &&sim_1&i + sqrt(1-(r*ho)**2)*sim_m2 < P then sim_ML = E*L; else sim_ML = 0;
end;

do until (w<1);
x = 2 *rand("Uniform") - 1;
y = 2 *rand("Uniform") - 1;
w = x**2 + y**2;
end;
w = Sqrt((-2 * (Log(w))) / w);
af1 = 1 * x * w + 0;
af2 = 1 * y * w + 0;
sim_g1 = af1;
sim_g2 = af2;

if mod(n,2)=0 then do;
if r * ho * &&sim_1&i + sqrt(1-(r*ho)**2)*sim_g1 < P then sim_GLs = E*L; else sim_GL = 0;
end;
else
if mod(n,2)=1 then do;
if r * ho * &&sim_1&i + sqrt(1-(r*ho)**2)*sim_g2 < P then sim_GL = E*L; else sim_GL = 0;
end;
run;

%mend;

%macro mcarlo();
%do i = 1 %to 1000000;
%sim_2;

%if &i = 1 %then %do;
proc sql noprint;
create table sum_l_&i as select sum(sim_ML) as sum_ML, sum(sim_GL) as sum_GL, &i as n from source2;
quit;

%end;
%else %if &i > 1 %then %do;
proc sql noprint;
create view sum_l as select sum(sim_ML) as sum_ML, sum(sim_GL) as sum_GL, &i as n from source2;
quit;
proc append base=sum_l_1 data=sum_l;
run;
%end;

%end;
%mend;

 

Deeply appreciate for any help! Thank you. 

1 ACCEPTED SOLUTION

Accepted Solutions
yabwon
Onyx | Level 15

Hi,

 

@1) no there will be 1 dataset with million observations.

this loop:

 

do _I_ = 1 to 1000000;

repeats your simulations million times (i.e. it replaces the macro)

 

this loop:

 

do point = 1 to nobs;
    set source1 point = point nobs = nobs;

just loops through source1 dataset (as your macro %sim_2() was doing)

 

 

thisto lines:

 

sim_ML_final + sim_ML;
sim_GL_final + sim_GL;

are just "aggregators" and replaces proc sql.

 

@2) yes you need the call streaminit() [in fact also in the data step which generates dataset A]. The rand() function is random generator but if you don't set seed every time you run it you will get different results.

 

 

Here is test example of your code and the one proposed by me, on the example source1 dataset (with 9 elements). After running it 1000 times your approach run about 48.38 seconds and my code run about 0.055 sec.  [btw. you had extra "s" in ``` sim_GLs = E*L; ``` in your code]. Here is the code:

data source1; 
infile cards dlm = ",";
input ID $ P E L r n ho;
cards;
a1,0.5,10000,0.45,0.1,1,-0.3
a2,0.2,67795,0.55,0.6,2,0.55
a3,0.6,56781,0.66,-0.8,3,0.31
a4,0.5,10000,0.45,0.1,4,-0.3
a5,0.2,67795,0.55,0.6,5,0.55
a6,0.6,56781,0.66,-0.8,6,0.31
a7,0.5,10000,0.45,0.1,7,-0.3
a8,0.2,67795,0.55,0.6,8,0.55
a9,0.6,56781,0.66,-0.8,9,0.31
;
run;

/*
ID = Identity
P = range from 0 to 1
E = greater than 0
L = range from 0 to 1
r = range from -1 to 1
ho = range from  -5 to 5
n = row number
*/

/* "MACRO" approach */
%let number_of_iterations = 1000;

%let t = %sysfunc(time());
data a (drop=i);
  do i = 1 to &number_of_iterations.;
    n = i;
    output;
  end;
run;
data a(drop=w x y af1 af2);
  set a;
  call streaminit(12345); /* to make it reproducible */
  do until (w<1);
  x = 2 *rand("Uniform") - 1;
  y = 2 *rand("Uniform") - 1;
  w = x**2 + y**2;
  end;
  w = Sqrt((-2 * (Log(w))) / w);
  af1 = 1 * x * w + 0;
  af2 = 1 * y * w + 0;
  sim_1 = af1;
  call symputx('sim_1'||left(n),sim_1,'g');
run;


options nomprint;
%macro sim_2();
data source2 (keep= sim_ML sim_GL);
set source1;

call streaminit(12345); /* to make it reproducible */

do until (w_m<1);
x_m = 2 *rand("Uniform") - 1;
y_m = 2 *rand("Uniform") - 1;
w_m= x_m**2 + y_m**2;
end;
w_m = Sqrt((-2 * (Log(w_m))) / w_m);
af1_m = 1 * x_m * w_m + 0;
af2_m = 1 * y_m * w_m + 0;
sim_m1 = af1_m;
sim_m2 = af2_m;


if mod(n,2)=0 then do;
if r * ho * &&sim_1&i + sqrt(1-(r*ho)**2)*sim_m1 < P then sim_ML = E*L; else sim_ML = 0;
end;
else
if mod(n,2)=1 then do;
if r * ho * &&sim_1&i + sqrt(1-(r*ho)**2)*sim_m2 < P then sim_ML = E*L; else sim_ML = 0;
end;

do until (w<1);
x = 2 *rand("Uniform") - 1;
y = 2 *rand("Uniform") - 1;
w = x**2 + y**2;
end;
w = Sqrt((-2 * (Log(w))) / w);
af1 = 1 * x * w + 0;
af2 = 1 * y * w + 0;
sim_g1 = af1;
sim_g2 = af2;

if mod(n,2)=0 then do;
if r * ho * &&sim_1&i + sqrt(1-(r*ho)**2)*sim_g1 < P then sim_GL = E*L; else sim_GL = 0;
end;
else
if mod(n,2)=1 then do;
if r * ho * &&sim_1&i + sqrt(1-(r*ho)**2)*sim_g2 < P then sim_GL = E*L; else sim_GL = 0;
end;
run;

%mend;

%macro mcarlo();
%do i = 1 %to &number_of_iterations.;
%sim_2;

%if &i = 1 %then %do;
proc sql noprint;
create table sum_l_&i as select sum(sim_ML) as sum_ML, sum(sim_GL) as sum_GL, &i as n from source2;
quit;

%end;
%else %if &i > 1 %then %do;
proc sql noprint;
create view sum_l as select sum(sim_ML) as sum_ML, sum(sim_GL) as sum_GL, &i as n from source2;
quit;
proc append base=sum_l_1 data=sum_l;
run;
%end;

%end;
%mend;

%mcarlo()

%let t = %sysevalf( %sysfunc(time()) - &t. );
%put Macro version &=t.;


/* "DATA STEP" approach */
%let number_of_iterations = 1000;

%let t = %sysfunc(time());
data a (drop=i);
  do i = 1 to &number_of_iterations.;
    n = i;
    output;
  end;
run;
data a(drop=w x y af1 af2);
  set a;
  call streaminit(12345); /* to make it reproducible */
  do until (w<1);
  x = 2 *rand("Uniform") - 1;
  y = 2 *rand("Uniform") - 1;
  w = x**2 + y**2;
  end;
  w = Sqrt((-2 * (Log(w))) / w);
  af1 = 1 * x * w + 0;
  af2 = 1 * y * w + 0;
  sim_1 = af1;
  /*call symputx('sim_1'||left(n),sim_1,'g');*/
run;

%let t = %sysfunc(time());
data sum_l_Bart (keep= sim_ML_final sim_GL_final n);

array sim_[&number_of_iterations.] _temporary_;
do until(eof);
  set a end=eof;
  sim_[n] = sim_1;
end;

call streaminit(12345); /* to make it reproducible */

do _I_ = 1 to &number_of_iterations.;
  
  sim_ML_final = 0; 
  sim_GL_final = 0;

  do point = 1 to nobs;
    set source1 point = point nobs = nobs;
    do until (w_m<1);
    x_m = 2 *rand("Uniform") - 1;
    y_m = 2 *rand("Uniform") - 1;
    w_m= x_m**2 + y_m**2;
    end;
    w_m = Sqrt((-2 * (Log(w_m))) / w_m);
    af1_m = 1 * x_m * w_m + 0;
    af2_m = 1 * y_m * w_m + 0;
    sim_m1 = af1_m;
    sim_m2 = af2_m;


    if mod(n,2)=0 then do;
    if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_m1 < P then sim_ML = E*L; else sim_ML = 0;
    end;
    else
    if mod(n,2)=1 then do;
    if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_m2 < P then sim_ML = E*L; else sim_ML = 0;
    end;

    do until (w<1);
    x = 2 *rand("Uniform") - 1;
    y = 2 *rand("Uniform") - 1;
    w = x**2 + y**2;
    end;
    w = Sqrt((-2 * (Log(w))) / w);
    af1 = 1 * x * w + 0;
    af2 = 1 * y * w + 0;
    sim_g1 = af1;
    sim_g2 = af2;

    if mod(n,2)=0 then do;
    if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_g1 < P then sim_GL = E*L; else sim_GL = 0;
    end;
    else
    if mod(n,2)=1 then do;
    if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_g2 < P then sim_GL = E*L; else sim_GL = 0;
    end;

    sim_ML_final + sim_ML;
    sim_GL_final + sim_GL;
  end;
  n = _I_;
output;
end;

stop;
run;

%let t = %sysevalf( %sysfunc(time()) - &t. );
%put Datastep with loop &=t.;

 

 

Hope it help.

 

Bart

 

 

 

 

_______________
Polish SAS Users Group: www.polsug.com and communities.sas.com/polsug

"SAS Packages: the way to share" at SGF2020 Proceedings (the latest version), GitHub Repository, and YouTube Video.
Hands-on-Workshop: "Share your code with SAS Packages"
"My First SAS Package: A How-To" at SGF2021 Proceedings

SAS Ballot Ideas: one: SPF in SAS, two, and three
SAS Documentation



View solution in original post

20 REPLIES 20
yabwon
Onyx | Level 15

what is `source1`? any example? it's size?

 

Bart

_______________
Polish SAS Users Group: www.polsug.com and communities.sas.com/polsug

"SAS Packages: the way to share" at SGF2020 Proceedings (the latest version), GitHub Repository, and YouTube Video.
Hands-on-Workshop: "Share your code with SAS Packages"
"My First SAS Package: A How-To" at SGF2021 Proceedings

SAS Ballot Ideas: one: SPF in SAS, two, and three
SAS Documentation



BY2
Obsidian | Level 7 BY2
Obsidian | Level 7
source1 is the source data file. The size of source1 is not a huge data, around 4000 observations and 23 variables. The simulation that takes the most time is %macro mcarlo() and %sim_2() where it simulates 1 million random numbers.
yabwon
Onyx | Level 15

Could you share some example of source1? so we could test and play with your code

 

First thing I would consider to do would be moving it all into one data step loop without macro at all.

I would use an array for dataset A (it's only 16MB) to avoid generating a million macrovariables.

You could use SASFILE statement (it opens a SAS data set and allocates enough buffers to hold the entire file in memory).

 

Eventually I would consider running it in parallel (here is simple tutorial you may use to learn how to do it with systask: http://www.mini.pw.edu.pl/~bjablons/SASpublic/Parallel-processing-in-BASE-SAS.sas) but as I wrote first try to put it all into one data step.

 

Btw. 1 observation - you are using rand() function but I don't see call streaminit() what makes your exercise not reproducible.

 

Bart

_______________
Polish SAS Users Group: www.polsug.com and communities.sas.com/polsug

"SAS Packages: the way to share" at SGF2020 Proceedings (the latest version), GitHub Repository, and YouTube Video.
Hands-on-Workshop: "Share your code with SAS Packages"
"My First SAS Package: A How-To" at SGF2021 Proceedings

SAS Ballot Ideas: one: SPF in SAS, two, and three
SAS Documentation



BY2
Obsidian | Level 7 BY2
Obsidian | Level 7

An example of source1 will be something like this:

ID, P,E,L,r,n,ho

a1,0.5,10000,0.45,0.1,1,-0.3

a2,0.2,67795,0.55,0.6,2,0.55

a3,0.6,56781,0.66,-0.8,3,0.31

 

ID = Identity

P = range from 0 to 1

E = greater than 0

L = range from 0 to 1

r = range from -1 to 1

ho = range from  -5 to 5

n = row number

 

You may generate the data sample based on the criteria above. My 'source1' dataset is around 4,000 observations. Hope this helps. 

yabwon
Onyx | Level 15

one more thought, doing proc append million times doesn't seem to be very practical, maybe just create a milion of `sum_l_1 -- sum_l_1000000` and then combine them into 1 dataset by use SET statement option OPEN=DEFER, something like:

data ALL;
  set sum_l_: OPEN=DEFER;
run;

Bart

_______________
Polish SAS Users Group: www.polsug.com and communities.sas.com/polsug

"SAS Packages: the way to share" at SGF2020 Proceedings (the latest version), GitHub Repository, and YouTube Video.
Hands-on-Workshop: "Share your code with SAS Packages"
"My First SAS Package: A How-To" at SGF2021 Proceedings

SAS Ballot Ideas: one: SPF in SAS, two, and three
SAS Documentation



BY2
Obsidian | Level 7 BY2
Obsidian | Level 7

I have considered this method but i do not want to overload the storage by creating a million datasets. 

yabwon
Onyx | Level 15

Hi,

 

try this (but start with smaller scale, e.g. 100):

data a (drop=i);
do i = 1 to 1000000;
n = i;
output;
end;
run;
data a(drop=w x y af1 af2);
set a;
do until (w<1);
x = 2 *rand("Uniform") - 1;
y = 2 *rand("Uniform") - 1;
w = x**2 + y**2;
end;
w = Sqrt((-2 * (Log(w))) / w);
af1 = 1 * x * w + 0;
af2 = 1 * y * w + 0;
sim_1 = af1;
/*call symputx('sim_1'||left(n),sim_1,'g');*/
run;


data source2 (keep= sim_ML_final sim_GL_final);

array sim_[1000000] _temporary_;
do until(eof);
  set a end=eof;
  sim_[n] = sim_1;
end;

call streaminit(12345); /* to make it reproducible */

do _I_ = 1 to 1000000;
  
  sum_ML_final = 0; 
  sum_GL_final = 0;

  do point = 1 to nobs;
    set source1 point = point nobs = nobs;
    do until (w_m<1);
    x_m = 2 *rand("Uniform") - 1;
    y_m = 2 *rand("Uniform") - 1;
    w_m= x_m**2 + y_m**2;
    end;
    w_m = Sqrt((-2 * (Log(w_m))) / w_m);
    af1_m = 1 * x_m * w_m + 0;
    af2_m = 1 * y_m * w_m + 0;
    sim_m1 = af1_m;
    sim_m2 = af2_m;


    if mod(n,2)=0 then do;
    if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_m1 < P then sim_ML = E*L; else sim_ML = 0;
    end;
    else
    if mod(n,2)=1 then do;
    if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_m2 < P then sim_ML = E*L; else sim_ML = 0;
    end;

    do until (w<1);
    x = 2 *rand("Uniform") - 1;
    y = 2 *rand("Uniform") - 1;
    w = x**2 + y**2;
    end;
    w = Sqrt((-2 * (Log(w))) / w);
    af1 = 1 * x * w + 0;
    af2 = 1 * y * w + 0;
    sim_g1 = af1;
    sim_g2 = af2;

    if mod(n,2)=0 then do;
    if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_g1 < P then sim_GL = E*L; else sim_GL = 0;
    end;
    else
    if mod(n,2)=1 then do;
    if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_g2 < P then sim_GL = E*L; else sim_GL = 0;
    end;

    sim_ML_final + sim_ML;
    sim_GL_final + sim_GL;
  end;

output;
end;

stop;
run;

 

Bart

_______________
Polish SAS Users Group: www.polsug.com and communities.sas.com/polsug

"SAS Packages: the way to share" at SGF2020 Proceedings (the latest version), GitHub Repository, and YouTube Video.
Hands-on-Workshop: "Share your code with SAS Packages"
"My First SAS Package: A How-To" at SGF2021 Proceedings

SAS Ballot Ideas: one: SPF in SAS, two, and three
SAS Documentation



BY2
Obsidian | Level 7 BY2
Obsidian | Level 7

Thank you, will definitely try out this. Will keep you posted. 

BY2
Obsidian | Level 7 BY2
Obsidian | Level 7

1. By looking at the code, this will create 1 million of datasets, is that right? Is there any other method without create 1 million datasets and would speed up the process? 

2.  For this code particularly, do i need to add it to my data a since there is a rand() function?

call streaminit(12345); /* to make it reproducible */

3. I have replied to the response below which explains my ultimate goal of this simulation exercise. Kindly refer to the below. 

 

Appreciate your effort, Bart. 

yabwon
Onyx | Level 15

Hi,

 

@1) no there will be 1 dataset with million observations.

this loop:

 

do _I_ = 1 to 1000000;

repeats your simulations million times (i.e. it replaces the macro)

 

this loop:

 

do point = 1 to nobs;
    set source1 point = point nobs = nobs;

just loops through source1 dataset (as your macro %sim_2() was doing)

 

 

thisto lines:

 

sim_ML_final + sim_ML;
sim_GL_final + sim_GL;

are just "aggregators" and replaces proc sql.

 

@2) yes you need the call streaminit() [in fact also in the data step which generates dataset A]. The rand() function is random generator but if you don't set seed every time you run it you will get different results.

 

 

Here is test example of your code and the one proposed by me, on the example source1 dataset (with 9 elements). After running it 1000 times your approach run about 48.38 seconds and my code run about 0.055 sec.  [btw. you had extra "s" in ``` sim_GLs = E*L; ``` in your code]. Here is the code:

data source1; 
infile cards dlm = ",";
input ID $ P E L r n ho;
cards;
a1,0.5,10000,0.45,0.1,1,-0.3
a2,0.2,67795,0.55,0.6,2,0.55
a3,0.6,56781,0.66,-0.8,3,0.31
a4,0.5,10000,0.45,0.1,4,-0.3
a5,0.2,67795,0.55,0.6,5,0.55
a6,0.6,56781,0.66,-0.8,6,0.31
a7,0.5,10000,0.45,0.1,7,-0.3
a8,0.2,67795,0.55,0.6,8,0.55
a9,0.6,56781,0.66,-0.8,9,0.31
;
run;

/*
ID = Identity
P = range from 0 to 1
E = greater than 0
L = range from 0 to 1
r = range from -1 to 1
ho = range from  -5 to 5
n = row number
*/

/* "MACRO" approach */
%let number_of_iterations = 1000;

%let t = %sysfunc(time());
data a (drop=i);
  do i = 1 to &number_of_iterations.;
    n = i;
    output;
  end;
run;
data a(drop=w x y af1 af2);
  set a;
  call streaminit(12345); /* to make it reproducible */
  do until (w<1);
  x = 2 *rand("Uniform") - 1;
  y = 2 *rand("Uniform") - 1;
  w = x**2 + y**2;
  end;
  w = Sqrt((-2 * (Log(w))) / w);
  af1 = 1 * x * w + 0;
  af2 = 1 * y * w + 0;
  sim_1 = af1;
  call symputx('sim_1'||left(n),sim_1,'g');
run;


options nomprint;
%macro sim_2();
data source2 (keep= sim_ML sim_GL);
set source1;

call streaminit(12345); /* to make it reproducible */

do until (w_m<1);
x_m = 2 *rand("Uniform") - 1;
y_m = 2 *rand("Uniform") - 1;
w_m= x_m**2 + y_m**2;
end;
w_m = Sqrt((-2 * (Log(w_m))) / w_m);
af1_m = 1 * x_m * w_m + 0;
af2_m = 1 * y_m * w_m + 0;
sim_m1 = af1_m;
sim_m2 = af2_m;


if mod(n,2)=0 then do;
if r * ho * &&sim_1&i + sqrt(1-(r*ho)**2)*sim_m1 < P then sim_ML = E*L; else sim_ML = 0;
end;
else
if mod(n,2)=1 then do;
if r * ho * &&sim_1&i + sqrt(1-(r*ho)**2)*sim_m2 < P then sim_ML = E*L; else sim_ML = 0;
end;

do until (w<1);
x = 2 *rand("Uniform") - 1;
y = 2 *rand("Uniform") - 1;
w = x**2 + y**2;
end;
w = Sqrt((-2 * (Log(w))) / w);
af1 = 1 * x * w + 0;
af2 = 1 * y * w + 0;
sim_g1 = af1;
sim_g2 = af2;

if mod(n,2)=0 then do;
if r * ho * &&sim_1&i + sqrt(1-(r*ho)**2)*sim_g1 < P then sim_GL = E*L; else sim_GL = 0;
end;
else
if mod(n,2)=1 then do;
if r * ho * &&sim_1&i + sqrt(1-(r*ho)**2)*sim_g2 < P then sim_GL = E*L; else sim_GL = 0;
end;
run;

%mend;

%macro mcarlo();
%do i = 1 %to &number_of_iterations.;
%sim_2;

%if &i = 1 %then %do;
proc sql noprint;
create table sum_l_&i as select sum(sim_ML) as sum_ML, sum(sim_GL) as sum_GL, &i as n from source2;
quit;

%end;
%else %if &i > 1 %then %do;
proc sql noprint;
create view sum_l as select sum(sim_ML) as sum_ML, sum(sim_GL) as sum_GL, &i as n from source2;
quit;
proc append base=sum_l_1 data=sum_l;
run;
%end;

%end;
%mend;

%mcarlo()

%let t = %sysevalf( %sysfunc(time()) - &t. );
%put Macro version &=t.;


/* "DATA STEP" approach */
%let number_of_iterations = 1000;

%let t = %sysfunc(time());
data a (drop=i);
  do i = 1 to &number_of_iterations.;
    n = i;
    output;
  end;
run;
data a(drop=w x y af1 af2);
  set a;
  call streaminit(12345); /* to make it reproducible */
  do until (w<1);
  x = 2 *rand("Uniform") - 1;
  y = 2 *rand("Uniform") - 1;
  w = x**2 + y**2;
  end;
  w = Sqrt((-2 * (Log(w))) / w);
  af1 = 1 * x * w + 0;
  af2 = 1 * y * w + 0;
  sim_1 = af1;
  /*call symputx('sim_1'||left(n),sim_1,'g');*/
run;

%let t = %sysfunc(time());
data sum_l_Bart (keep= sim_ML_final sim_GL_final n);

array sim_[&number_of_iterations.] _temporary_;
do until(eof);
  set a end=eof;
  sim_[n] = sim_1;
end;

call streaminit(12345); /* to make it reproducible */

do _I_ = 1 to &number_of_iterations.;
  
  sim_ML_final = 0; 
  sim_GL_final = 0;

  do point = 1 to nobs;
    set source1 point = point nobs = nobs;
    do until (w_m<1);
    x_m = 2 *rand("Uniform") - 1;
    y_m = 2 *rand("Uniform") - 1;
    w_m= x_m**2 + y_m**2;
    end;
    w_m = Sqrt((-2 * (Log(w_m))) / w_m);
    af1_m = 1 * x_m * w_m + 0;
    af2_m = 1 * y_m * w_m + 0;
    sim_m1 = af1_m;
    sim_m2 = af2_m;


    if mod(n,2)=0 then do;
    if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_m1 < P then sim_ML = E*L; else sim_ML = 0;
    end;
    else
    if mod(n,2)=1 then do;
    if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_m2 < P then sim_ML = E*L; else sim_ML = 0;
    end;

    do until (w<1);
    x = 2 *rand("Uniform") - 1;
    y = 2 *rand("Uniform") - 1;
    w = x**2 + y**2;
    end;
    w = Sqrt((-2 * (Log(w))) / w);
    af1 = 1 * x * w + 0;
    af2 = 1 * y * w + 0;
    sim_g1 = af1;
    sim_g2 = af2;

    if mod(n,2)=0 then do;
    if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_g1 < P then sim_GL = E*L; else sim_GL = 0;
    end;
    else
    if mod(n,2)=1 then do;
    if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_g2 < P then sim_GL = E*L; else sim_GL = 0;
    end;

    sim_ML_final + sim_ML;
    sim_GL_final + sim_GL;
  end;
  n = _I_;
output;
end;

stop;
run;

%let t = %sysevalf( %sysfunc(time()) - &t. );
%put Datastep with loop &=t.;

 

 

Hope it help.

 

Bart

 

 

 

 

_______________
Polish SAS Users Group: www.polsug.com and communities.sas.com/polsug

"SAS Packages: the way to share" at SGF2020 Proceedings (the latest version), GitHub Repository, and YouTube Video.
Hands-on-Workshop: "Share your code with SAS Packages"
"My First SAS Package: A How-To" at SGF2021 Proceedings

SAS Ballot Ideas: one: SPF in SAS, two, and three
SAS Documentation



yabwon
Onyx | Level 15

And here is the log for million for 4000 obs:

1    data source0;
2    infile cards dlm = ",";
3    input ID $ P E L r n ho;
4    cards;

NOTE: The data set WORK.SOURCE0 has 10 observations and 7 variables.
NOTE: DATA statement used (Total process time):
      real time           0.00 seconds
      cpu time            0.00 seconds


15   ;
16   run;
17
18   data source1;
19     do _N_ = 1 to 400;
20       do point = 1 to nobs;
21         set source0 point = point nobs = nobs;
22         output;
23       end;
24     end;
25     stop;
26   run;

NOTE: The data set WORK.SOURCE1 has 4000 observations and 7 variables.
NOTE: DATA statement used (Total process time):
      real time           0.01 seconds
      cpu time            0.00 seconds


27
28
29   /*
30   ID = Identity
31   P = range from 0 to 1
32   E = greater than 0
33   L = range from 0 to 1
34   r = range from -1 to 1
35   ho = range from  -5 to 5
36   n = row number
37   */
38
39
40   %let number_of_iterations = 1000000;
41
42   %let t = %sysfunc(time());
43   data a (drop=i);
44     do i = 1 to &number_of_iterations.;
45       n = i;
46       output;
47     end;
48   run;

NOTE: The data set WORK.A has 1000000 observations and 1 variables.
NOTE: DATA statement used (Total process time):
      real time           0.04 seconds
      cpu time            0.04 seconds


49   data a(drop=w x y af1 af2);
50     set a;
51     call streaminit(12345); /* to make it reproducible */
52     do until (w<1);
53     x = 2 *rand("Uniform") - 1;
54     y = 2 *rand("Uniform") - 1;
55     w = x**2 + y**2;
56     end;
57     w = Sqrt((-2 * (Log(w))) / w);
58     af1 = 1 * x * w + 0;
59     af2 = 1 * y * w + 0;
60     sim_1 = af1;
61     /*call symputx('sim_1'||left(n),sim_1,'g');*/
62   run;

NOTE: There were 1000000 observations read from the data set WORK.A.
NOTE: The data set WORK.A has 1000000 observations and 2 variables.
NOTE: DATA statement used (Total process time):
      real time           0.20 seconds
      cpu time            0.20 seconds


63
64   %let t = %sysfunc(time());
65   data sum_l_Bart (keep= sim_ML_final sim_GL_final n);
66
67   array sim_[&number_of_iterations.] _temporary_;
68   do until(eof);
69     set a end=eof;
70     sim_[n] = sim_1;
71   end;
72
73   call streaminit(12345); /* to make it reproducible */
74
75   do _I_ = 1 to &number_of_iterations.;
76
77     sum_ML_final = 0;
78     sum_GL_final = 0;
79
80     do point = 1 to nobs;
81       set source1 point = point nobs = nobs;
82       do until (w_m<1);
83       x_m = 2 *rand("Uniform") - 1;
84       y_m = 2 *rand("Uniform") - 1;
85       w_m= x_m**2 + y_m**2;
86       end;
87       w_m = Sqrt((-2 * (Log(w_m))) / w_m);
88       af1_m = 1 * x_m * w_m + 0;
89       af2_m = 1 * y_m * w_m + 0;
90       sim_m1 = af1_m;
91       sim_m2 = af2_m;
92
93
94       if mod(n,2)=0 then do;
95       if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_m1 < P then sim_ML = E*L; else sim_ML = 0;
96       end;
97       else
98       if mod(n,2)=1 then do;
99       if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_m2 < P then sim_ML = E*L; else sim_ML = 0;
100      end;
101
102      do until (w<1);
103      x = 2 *rand("Uniform") - 1;
104      y = 2 *rand("Uniform") - 1;
105      w = x**2 + y**2;
106      end;
107      w = Sqrt((-2 * (Log(w))) / w);
108      af1 = 1 * x * w + 0;
109      af2 = 1 * y * w + 0;
110      sim_g1 = af1;
111      sim_g2 = af2;
112
113      if mod(n,2)=0 then do;
114      if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_g1 < P then sim_GL = E*L; else sim_GL = 0;
115      end;
116      else
117      if mod(n,2)=1 then do;
118      if r * ho * sim_[_I_] + sqrt(1-(r*ho)**2)*sim_g2 < P then sim_GL = E*L; else sim_GL = 0;
119      end;
120
121      sim_ML_final + sim_ML;
122      sim_GL_final + sim_GL;
123    end;
124    n = _I_;
125  output;
126  end;
127
128  stop;
129  run;

NOTE: There were 1000000 observations read from the data set WORK.A.
NOTE: The data set WORK.SUM_L_BART has 1000000 observations and 3 variables.
NOTE: DATA statement used (Total process time):
      real time           39:54.36
      cpu time            39:52.71


130
131  %let t = %sysevalf( %sysfunc(time()) - &t. );
132  %put Datastep with loop &=t.;
Datastep with loop T=2394.3770000934

Bart

_______________
Polish SAS Users Group: www.polsug.com and communities.sas.com/polsug

"SAS Packages: the way to share" at SGF2020 Proceedings (the latest version), GitHub Repository, and YouTube Video.
Hands-on-Workshop: "Share your code with SAS Packages"
"My First SAS Package: A How-To" at SGF2021 Proceedings

SAS Ballot Ideas: one: SPF in SAS, two, and three
SAS Documentation



BY2
Obsidian | Level 7 BY2
Obsidian | Level 7

Hi Bart,

 

I have tested out the code and it works fine except for one thing:

 

The output variables (sim_ML_final and sim_GL_final) increase as n increases. Can you explain the reason behind it? 

 

yabwon
Onyx | Level 15

Hi,

 

My fault, sorry for that, I put the code with spelling it was:

  sum_ML_final = 0; 
  sum_GL_final = 0;

and it should be:

  sim_ML_final = 0; 
  sim_GL_final = 0;

 

sorry for that. I've corrected the answer I posted.

 

Bart

_______________
Polish SAS Users Group: www.polsug.com and communities.sas.com/polsug

"SAS Packages: the way to share" at SGF2020 Proceedings (the latest version), GitHub Repository, and YouTube Video.
Hands-on-Workshop: "Share your code with SAS Packages"
"My First SAS Package: A How-To" at SGF2021 Proceedings

SAS Ballot Ideas: one: SPF in SAS, two, and three
SAS Documentation



yabwon
Onyx | Level 15
Just one question, in this part:
``` if mod(n,2)=0 then do; ```
is the "n" from source1?

Bart
_______________
Polish SAS Users Group: www.polsug.com and communities.sas.com/polsug

"SAS Packages: the way to share" at SGF2020 Proceedings (the latest version), GitHub Repository, and YouTube Video.
Hands-on-Workshop: "Share your code with SAS Packages"
"My First SAS Package: A How-To" at SGF2021 Proceedings

SAS Ballot Ideas: one: SPF in SAS, two, and three
SAS Documentation



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