# Why does padding the shared memory array by one column increase the speed of the kernel by 40%?

Why is this matrix transpose kernel faster, when the shared memory array is padded by one column?

I found the kernel at PyCuda/Examples/MatrixTranspose.

Source

``````import pycuda.gpuarray as gpuarray
import pycuda.autoinit
from pycuda.compiler import SourceModule
import numpy

block_size = 16

def _get_transpose_kernel(offset):
mod = SourceModule("""
#define BLOCK_SIZE %(block_size)d
#define A_BLOCK_STRIDE (BLOCK_SIZE * a_width)
#define A_T_BLOCK_STRIDE (BLOCK_SIZE * a_height)

__global__ void transpose(float *A_t, float *A, int a_width, int a_height)
{
// Base indices in A and A_t
int base_idx_a   = blockIdx.x * BLOCK_SIZE +
blockIdx.y * A_BLOCK_STRIDE;
int base_idx_a_t = blockIdx.y * BLOCK_SIZE +
blockIdx.x * A_T_BLOCK_STRIDE;

// Global indices in A and A_t

/** why does the +1 offset make the kernel faster? **/
__shared__ float A_shared[BLOCK_SIZE][BLOCK_SIZE+%(offset)d];

// Store transposed submatrix to shared memory

// Write transposed submatrix to global memory
}
"""% {"block_size": block_size, "offset": offset})

kernel = mod.get_function("transpose")
kernel.prepare("PPii", block=(block_size, block_size, 1))
return kernel

def transpose(tgt, src,offset):
krnl = _get_transpose_kernel(offset)
w, h = src.shape
assert tgt.shape == (h, w)
assert w % block_size == 0
assert h % block_size == 0
krnl.prepared_call((w / block_size, h /block_size), tgt.gpudata, src.gpudata, w, h)

def run_benchmark():
from pycuda.curandom import rand
print pycuda.autoinit.device.name()
print "time\tGB/s\tsize\toffset\t"
for offset in [0,1]:
for size in [2048,2112]:

source = rand((size, size), dtype=numpy.float32)
target = gpuarray.empty((size, size), dtype=source.dtype)

start = pycuda.driver.Event()
stop = pycuda.driver.Event()

warmup = 2
for i in range(warmup):
transpose(target, source,offset)

pycuda.driver.Context.synchronize()
start.record()

count = 10
for i in range(count):
transpose(target, source,offset)

stop.record()
stop.synchronize()

elapsed_seconds = stop.time_since(start)*1e-3
mem_bw = source.nbytes / elapsed_seconds * 2 * count /1024/1024/1024

print "%6.4fs\t%6.4f\t%i\t%i" %(elapsed_seconds,mem_bw,size,offset)

run_benchmark()
``````

Output

``````Quadro FX 580
time    GB/s    size    offset
0.0802s 3.8949  2048    0
0.0829s 4.0105  2112    0
0.0651s 4.7984  2048    1
0.0595s 5.5816  2112    1
``````

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Adding the extra column probably reduces contention in shared memory. –  Paul R Aug 11 '11 at 10:43
Contention? Never heard of it in the CUDA context. Do you have some links to read about it? –  Framester Aug 11 '11 at 10:48
Does it, by any chance, pad the row's size to a power of 2? –  Piskvor Aug 11 '11 at 10:50
Hi Piskor, I was thinking the same, but the block_size (see top) is 16 and it is changed to 17. Also adding the padding to the row instead of the column, does not increase the speed... –  Framester Aug 11 '11 at 10:54
Contention = bank conflicts –  Paul R Aug 11 '11 at 22:01