Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am applying some vectorization to algorithms, running on ARM-Android. I begin development with my own phone (HTC Desire S, CPU Snapdragon MSM8255). I have vectorized 2 algorithms. First works with short integers, and vectorized version almost 2-times faster than scalar.(~4-5 ms against 9-10 ms) Second works with floats and vectorized version almost 3-times faster than scalar(12-13 ms against 30 ms).

After that i moved to ASUS Transformer Prime(CPU Tegra 3). There are almost no acceleration in vectorized version. First - (4.9 ms vs 5.1 ms), and second - (12-13 ms vs 15-16 ms).

Can anybody describe source of this situation? Vectorization is useless on Tegra 3 or something different?

UPDATE:

Algorithm go through 2 arrays, make copy or zeroing and some counting according to checks.

Scalar version of algorithm:

    ...
    count0 = 0;
    count1 = 0;
    count2 = 0;

    ushort *ptr0 = (ushort*) buf0;
    const ushort *ptr1 = (ushort*) buf1;
    const ushort *end2 = ptr1 + SIZE;
    ushort *ptr2 = (ushort*) buf2;

    while (ptr1 < end2) {
        if (*ptr0 > *ptr1) {
            count0++;
            *ptr2 = *ptr1;
        } else if (*ptr0 < *ptr1 - thr ) {
            count2++;
            *ptr2 = 0;
        } else {
            count1++;
            *ptr2 = 0;
        }
        ptr1++;
        ptr0++;
        ptr2++;
    }
    ...

Vector version of algorithm:

        ...
    count0 = 0;
    count1 = 0;
    count2 = 0;
    ushort *ptr0 = (ushort*) buf0;
    const ushort *ptr1 = (ushort*) buf1;
    const ushort *end2 = ptr1 + SIZE;
    ushort *ptr2 = (ushort*) buf2;
    uint16x8_t vbuf0,vbuf1,vcmp0, vcmp1,vthr=vdupq_n_u16(thr),
           vtemp0, vzero=vdupq_n_u16(0),vcnt2=vdupq_n_u16(0),vcnt0=vdupq_n_u16(0),vcnt1=vdupq_n_u16(0),vtemp1;
    register uint32_t temp0;
    uint32x2_t dreg;
    while (ptr1 < end2) {
        vbuf0 = vld1q_u16(ptr0);
        vbuf1 = vld1q_u16(ptr1);
        vcmp0 = vcgtq_u16(vbuf0,vbuf1);
        vtemp0 = vminq_u16(vcmp0,vbuf1);
        vst1q_u16 (ptr2, vtemp0);
        vtemp0 = vreinterpretq_u16_u8(vcntq_u8(vreinterpretq_u8_u16(vcmp0)));
        vtemp0 = vpaddlq_u8(vreinterpretq_u8_u16(vtemp0));
        vtemp0 = vreinterpretq_u16_u32(vpaddlq_u16(vtemp0));
        vcnt0 = vreinterpretq_u16_u32(vaddq_u32(vreinterpretq_u32_u16(vcnt0),vreinterpretq_u32_u16(vtemp0)));
        vtemp0 = vsubq_u16(vbuf1,vthr);
        vcmp1 = vcltq_u16(vbuf0,vtemp0);
        vtemp0 = vbicq_u16(vcmp1,vcmp0);
        vtemp1 = vmvnq_u16(vcmp1);
        vtemp1 = vbicq_u16(vtemp1,vcmp0);
        vtemp0 = vreinterpretq_u16_u8(vcntq_u8(vreinterpretq_u8_u16(vtemp0)));
        vtemp0 = vpaddlq_u8(vreinterpretq_u8_u16(vtemp0));
        vtemp0 = vreinterpretq_u16_u32(vpaddlq_u16(vtemp0));
        vcnt2 = vreinterpretq_u16_u32(vaddq_u32(vreinterpretq_u32_u16(vcnt2),vreinterpretq_u32_u16(vtemp0)));
        vtemp0 = vreinterpretq_u16_u8(vcntq_u8(vreinterpretq_u8_u16(vtemp1)));
        vtemp0 = vpaddlq_u8(vreinterpretq_u8_u16(vtemp0));
        vtemp0 = vreinterpretq_u16_u32(vpaddlq_u16(vtemp0));
        vcnt1 = vreinterpretq_u16_u32(vaddq_u32(vreinterpretq_u32_u16(vcnt1),vreinterpretq_u32_u16(vtemp0)));
        ptr1+=8;
        ptr0+=8;
        ptr2+=8;
    }
    vcnt0 = vreinterpretq_u16_u64(vpaddlq_u32(vreinterpretq_u32_u16(vcnt0)));
    dreg = vmovn_u64(vreinterpretq_u64_u16(vcnt0));
    dreg = vreinterpret_u32_u64(vpaddl_u32(dreg));
    count0 += vget_lane_u32(dreg,0)>>4;
    vcnt2 = vreinterpretq_u16_u64(vpaddlq_u32(vreinterpretq_u32_u16(vcnt2)));
    dreg = vmovn_u64(vreinterpretq_u64_u16(vcnt2));
    dreg = vreinterpret_u32_u64(vpaddl_u32(dreg));
    count2 += vget_lane_u32(dreg,0)>>4;
    vcnt1 = vreinterpretq_u16_u64(vpaddlq_u32(vreinterpretq_u32_u16(vcnt1)));
    dreg = vmovn_u64(vreinterpretq_u64_u16(vcnt1));
    dreg = vreinterpret_u32_u64(vpaddl_u32(dreg));
    count1 += vget_lane_u32(dreg,0)>>4;
        ...

Vector version almost 2-times faster than scalar on Snapdragon MSM8255 and almost not faster on Tegra 3.

share|improve this question
1  
It could be related to vector size (double vs quad). Check the objdump / assembly also you may want to add a simple example to the question. They are different cores and memory bandwidth differences can count for it a lot. –  auselen Apr 10 '13 at 9:19
    
Also, the compiler options may be relevant. Qualcomm ARMv7/Cortex-A8? versus Tegra Cortex-A9. Qualcomm is an architecture licensee, and they have completely re-written the cores. I imagine that pipe lining is a major factor as well, but showing the code is the only way for anyone to say definitively. –  artless noise Apr 10 '13 at 13:55
    
I will post source code tomorrow –  exbluesbreaker Apr 10 '13 at 14:31
2  
The Qualcomm SIMD engine is called VeNum. It is a non-standard NEON implementation. –  artless noise Apr 10 '13 at 15:01

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Browse other questions tagged or ask your own question.