# Parallel for loop gives the wrong output

I'm trying to parallel a nested for loop using the foreach package. However, while the speed is much faster, it doesn't give the correct answer. The idea of this particular nested for loop is quite straightforward. The result (a number) of the most inside nested loop is added to the second layer loop, which is added to the third layer loop. Below is a reproducible data:

``````input <- data.frame(matrix(rnorm(100*100, 1, .5), ncol=100))
input[input <0] =0
input2 <- split(input, f=input\$X201)

d= 0
n= 0
j = 1
k = 1
f = 0
s= 0

cl <- parallel::makeCluster(20)
doParallel::registerDoParallel(cl)
tm1 <- system.time(

results2 <- foreach(h = (1:length(input2)),.combine = 'c')%dopar%{
return (   for (j in (1:nrow(input2[[h]]))){
for (k in (1:nrow(input2[[h]]))){
if (k != j) {

for (i in (2:ncol(input2[[h]]))){
if (input2[[h]][j,i] !=0){
n= n+ (input2[[h]][j,i] * input2[[h]][k, i])
d= d+ input2[[h]][j, i] * input2[[h]][j, i]
}else {
n= n
}

}
f= f+ n/d* input2[[h]][k, 1]

}

n= 0
d= 0
}

s= s+ f* input2[[h]][j,1]

k = 1
f = 0
}
)
}

)
parallel::stopCluster(cl)
registerDoSEQ()
print("Cluster stopped.")
results2
``````

The final output `results2` is Null. Additionally, after running the foreach loop, I found only i to be 8, h is 6 while k and j are 1 only, which seems wrong because I want k to be unequal to j at any time (as indicated in the code) and I expect h to be 10 (because there are 10 elements in the list). I also expect i to be 20 because within each element, there are 20 rows of dataframe. I wonder why I am wrong in the code.