I am using the following code to test the effect of flushing the cache after initialization on the runtime a daxpy routine (the full code with the fill() and wall_time() routines is here: http://codepad.org/QuLT3cbD - it is 150 lines):

```
#define KB 1024
int main()
{
int cache_size = 32*KB;
double alpha = 42.5;
int operand_size = cache_size/(sizeof(double)*2);
double* X = new double[operand_size];
double* Y = new double[operand_size];
//95% confidence interval
double max_risk = 0.05;
//Interval half width
double w;
int n_iterations = 100;
students_t dist(n_iterations-1);
double T = boost::math::quantile(complement(dist,max_risk/2));
accumulator_set<double, stats<tag::mean,tag::variance> > unflushed_acc;
for(int i = 0; i < n_iterations; ++i)
{
fill(X,operand_size);
fill(Y,operand_size);
double seconds = wall_time();
daxpy(alpha,X,Y,operand_size);
seconds = wall_time() - seconds;
unflushed_acc(seconds);
}
w = T*sqrt(variance(unflushed_acc))/sqrt(count(unflushed_acc));
printf("Without flush: time=%g +/- %g ns\n",mean(unflushed_acc)*1e9,w*1e9);
//Using clflush instruction
//We need to put the operands back in cache
accumulator_set<double, stats<tag::mean,tag::variance> > clflush_acc;
for(int i = 0; i < n_iterations; ++i)
{
fill(X,operand_size);
fill(Y,operand_size);
flush_array(X,operand_size);
flush_array(Y,operand_size);
double seconds = wall_time();
daxpy(alpha,X,Y,operand_size);
seconds = wall_time() - seconds;
clflush_acc(seconds);
}
w = T*sqrt(variance(clflush_acc))/sqrt(count(clflush_acc));
printf("With clflush: time=%g +/- %g ns\n",mean(clflush_acc)*1e9,w*1e9);
return 0;
}
```

When I run this code, it reports these numbers for the rate and uncertainty therein (at the 95% confidence level):

Without flush: time=3103.75 +/- 0.524506 ns With clflush: time=4651.72 +/- 201.25 ns

Why does flushing the operands X and Y from cache with clflush increase the noise in the measurements by over 100x?