# Linked Questions

12 questions linked to/from How does BLAS get such extreme performance?

**175**

votes

**12**answers

50k views

### Why is MATLAB so fast in matrix multiplication?

I am making some benchmarks with CUDA, C++, C#, and Java, and using MATLAB for verification and matrix generation. But when I multiply with MATLAB, 2048x2048 and even bigger matrices are almost ...

**10**

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**3**answers

2k views

### How to write a matrix matrix product that can compete with Eigen?

Below is the C++ implementation comparing the time taken by Eigen and For Loop to perform matrix-matrix products. The For loop has been optimised to minimise cache misses. The for loop is faster than ...

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**4**answers

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### how to optimize matrix multiplication (matmul) code to run fast on a single processor core

I am working on parallel programming concepts and trying to optimize matrix multiplication example on single core. The fastest implementation I came up so far is the following:
/* This routine ...

**0**

votes

**1**answer

493 views

### Matrix Multiplication of size 100*100 using SSE Intrinsics

int MAX_DIM = 100;
float a[MAX_DIM][MAX_DIM]__attribute__ ((aligned(16)));
float b[MAX_DIM][MAX_DIM]__attribute__ ((aligned(16)));
float d[MAX_DIM][MAX_DIM]__attribute__ ((aligned(16)...

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vote

**3**answers

212 views

### SIMD Intel Instruction Sets for 2D Matrix

I am developing high performance algorithms based on the Intel instruction sets (AVX, FMA, ...). My algorithms (my kernels) are working pretty well when the data is stored sequentially. However, now I ...

**0**

votes

**1**answer

335 views

### Poor maths performance in C vs Python/numpy

Near-duplicate / related:
How does BLAS get such extreme performance? (If you want fast matmul in C, seriously just use a good BLAS library unless you want to hand-tune your own asm version.) But ...

**2**

votes

**1**answer

302 views

### Optimize gemm (matrix multiplication) with Neon aarch64

I have a matrix multiplication which looks like this:
void gemm_nn(int N, int K, float *A, float *B, float *C) {
int j, k;
for (k = 0; k < K; k++)
for (j = 0; j < N; j++)
...

**0**

votes

**0**answers

327 views

### MIPS Assembly - Matrix Multiplication Arithmetic Overflow Errors?

Down below is my code from a MIPS hw assignment where we have to multiply two matrixes. Our task was to implement the matrix_multiply function and matrix_print function
.data
matrix_a: .word 1, 2,...

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votes

**1**answer

149 views

### matrix optimization - segmentation fault when using intrinsics and loop unrolling

I'm currently trying to optimize matrix operations with intrinsics and loop unrolling. There was segmentation fault which I couldn't figure out. Here is the code I made change:
const int UNROLL = 4;
...

**1**

vote

**2**answers

120 views

### how to optimize and speed up the multiplication of matrix in c++?

this is optimized implementation of matrix multiplication and this routine performs a matrix multiplication operation.
C := C + A * B (where A, B, and C are n-by-n matrices stored in column-major ...

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votes

**0**answers

41 views

### Eigen3 Matrix-Matrix Multiplication 30 times faster than own openmp parallelized code

I compiled the code below on VS C++ 2017 with /openmp /O2 /arch::AVX.
When running with 8 threads the output is:
dt_loops = 1562ms
dt_eigen = 26 ms
I expected the A * B to be faster than my own ...

**0**

votes

**0**answers

23 views

### Vectorisation - Intel instruction that returns a single variable from adding two vectors?

So I'm trying my hand at optimising some code, and have run into some issues trying to vectorise the code.
I essentially have a nested loop as such:
for(int i = 0; i<N; i++)
{
for(int j = 0; j&...