Skip to content
/ mops Public

Mathematical operations with GPU acceleration

License

Notifications You must be signed in to change notification settings

lab-cosmo/mops

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

44 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Mops

Mathematical operations to extract all the performance juice from your hardware!

Getting the code

git clone https://github.com/lab-cosmo/mops
cd mops

# Builds the code and run all tests
tox

# Installs the Python package
pip install .

Planned operations

Some common motifs of vector, matrix and tensor operations that appear in science and engineering are planned to be implemented here for CPUs and GPUs. These include:

1. Homogeneous Polynomial Evaluation

Mathematical notation

$$ O_i = \sum_{j=1}^J C_j \prod_{k=1}^K A_{iP_{jk}} $$

Inputs

  • $A$ is a 2D array of floats, of size $I \times N_{A,2}$. It contains the individual factors in the monomials that make up the polynomial.

  • $C$ is a vector of float multipliers of size $J$. They represent the coefficients of each monomial in the polynomial, so that $J$ is the number of monomials in the polynomial.

  • $P$ is a 2D array of integers which represents the positions of the individual factors for each monomial in the second dimension of the $A$ array. In particular, the $k$-th factor of monomial $j$ will be found in the $P_{jk}$-th position of the second dimension of $A$.

Output

$O$ is a dense 1D array of floats, which only contains a batch dimension of size $I$.

Calculation

The calculation consists in a batched evaluation of homogeneous polynomials of degree $K$, where the monomials are given by $C[j] * A[:, P_1[j, 1]] * A[:, P_2[j, 2]] * \dots$, as follows:

for j in range(J):
    O[:] += C[j] * A[:, P_1[j, 1]] * A[:, P_2[j, 2]] * ...

2. Sparse Accumulation of Products

Mathematical notation

$$ O_{iP_k^O} = \sum_{k \in {k'|P^O_{k'}=P^O_k}} C_k A_{iP_k^A} B_{iP_k^B} $$

Inputs

  • $A$ and $B$ are 2D arrays of floats whose first dimension is a batch dimension that has the same size for both.

  • $C$ is a 1D array of floats which contains the weights of the products of elements of $A$ and $B$ to be accumulated.

  • $P^A$, $P^B$ are 1D arrays fo integers of the same size which contain the positions along the second dimensions of $A$ and $B$, respectively, of the factors that constitute the products.

  • $P^O$ is a 1D array of integers of the same length as $P^A$ and $P^B$ which contains the positions in the second dimension of the output tensor where the different products of $A$ and $B$ are accumulated.

Output

$O$ is a 2D array of floats where the first dimension is a batch dimension (the same as in $A$ and $B$) and the second dimension contains the scattered products of $A$ and $B$.

Calculation

The weighted products of $A$ and $B$ are accumulated into $O$ as follows:

for k in range(K):
    O[:, P_O[k]] += C[k] * A[:, P_A[k]] * B[:, P_B[k]]

3. Outer Product Scatter-Add

Math notation

$$ O_{ikl} = \sum_{j=1}^J A_{jk} B_{jl} \delta_{iP_j} \hspace{1cm} \mathrm{or} \hspace{1cm} O_{ikl} = \sum_{j \in {j'|P_{j'}=i}} A_{jk} B_{jl} $$

Inputs

  • $A$ is a dense matrix of floats, expected to be large in one dimension (size $J$), and smaller in the the other (size $K$).

  • $B$ is a dense matrix of floats, expected to be large in one dimension (size $J$), and smaller in the the other (size $L$).

  • $P$ is a large vector of integers (of size $J$) which maps the dimension $j$ of $A$ and $B$ into the dimension $i$ of $O$. In other words, it contains the position within $O$ where each $AB$ product needs to be summed.

  • $n_O$ is the size of the output array along its first dimension. It must be grater or equal than the larger element in $P$ plus one.

Output

$O$ is a 3D array of floats of dimensions $I \times K \times L$, which contains the accumulated products of the elements of $A$ and $B$.

Calculation

For each $j$, an outer product of $A[j, :]$ and $B[j, :]$ is calculated, and it is summed to $O[P[j], :, :]$:

for j in range(J):
    O[P[j], :, :] += A[j, :, None] * B[j, None, :]

4. Outer product Scatter-Add with Weights

Math notation

$$ O_{ikl} = \sum_{j \in {j'|P_{j'}=i}} A_{jk} B_{jl} W_{{PW_j}l} $$

Inputs

  • $A$ is a 2D array of floats
  • $R$ is a 2D array of floats
  • $X$ is a 2D array of floats
  • $I$ is a 1D array of integers
  • $J$ is a 1D array of integers

Outputs

  • $O$ is a 3D array of floats

Calculation

for j in range(J):
    O[PO[j], :, :] += A[j, :, None] * B[j, None, :] * W[PW[j], None, :]

5. Sparse Accumulation Scatter-Add with Weights

Math notation

$$ O_{i{m_3}k} = \sum_{e \in {e'|I_{e'}=i}} R_{ek} \sum_{n \in {n'|M^3_{n'}=m_3}} C_n A_{e{M_n^1}} X_{{J_e}{M_n^2}k} $$

Inputs

Inputs

  • $A$ is a 2D array of floats
  • $R$ is a 2D array of floats
  • $X$ is a 3D array of floats
  • $C$ is a 1D array of floats
  • $I$ is a 1D array of integers
  • $J$ is a 1D array of integers
  • $M^1$ is a 1D array of integers
  • $M^2$ is a 1D array of integers
  • $M^3$ is a 1D array of integers

Outputs

  • $O$ is a 3D array of floats

Outputs

Calculation

for j in range(J):
    for n in range(N):
        O[PO1[e], PO2[n], :] += A[e, PA[n]] * B[e, :] * C[n] * W[PW1[e], PW2[n], :]

About

Mathematical operations with GPU acceleration

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 4

  •  
  •  
  •  
  •