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The Tensor Algebra Compiler (taco) computes sparse tensor expressions on CPUs and GPUs

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The Tensor Algebra Compiler (taco) is a C++ library that computes tensor algebra expressions on sparse and dense tensors. It uses novel compiler techniques to get performance competitive with hand-optimized kernels in widely used libraries for both sparse tensor algebra and sparse linear algebra.

You can use taco as a C++ library that lets you load tensors, read tensors from files, and compute tensor expressions. You can also use taco as a code generator that generates C functions that compute tensor expressions.

Learn more about taco at tensor-compiler.org, in the paper The Tensor Algebra Compiler, or in this talk. To learn more about where taco is going in the near-term, see the technical reports on optimization and formats.

You can also subscribe to the taco-announcements email list where we post announcements, RFCs, and notifications of API changes, or the taco-discuss email list for open discussions and questions.

TL;DR build taco using CMake. Run make test.

Build and test

Build and Test

Build taco using CMake 3.4.0 or greater:

cd <taco-directory>
mkdir build
cd build
cmake -DCMAKE_BUILD_TYPE=Release ..
make -j8

Building taco requires gcc 5.0 or newer, or clang 3.9 or newer. You can use a specific compiler or version by setting the CC and CXX environment variables before running cmake.

Building Python API

To build taco with the Python API (pytaco), add -DPYTHON=ON to the cmake line above. For example:

cmake -DCMAKE_BUILD_TYPE=Release -DPYTHON=ON ..

You will then need to add the pytaco module to PYTHONPATH:

export PYTHONPATH=<taco-directory>/build/lib:$PYTHONPATH

This requires Python 3.x and some development libraries. It also requires NumPy and SciPy to be installed. For Debian/Ubuntu, the following packages are needed: python3 libpython3-dev python3-distutils python3-numpy python3-scipy.

Building for OpenMP

To build taco with support for parallel execution (using OpenMP), add -DOPENMP=ON to the cmake line above. For example:

cmake -DCMAKE_BUILD_TYPE=Release -DOPENMP=ON ..

If you are building with the clang compiler, you may need to ensure that the libomp development headers are installed. For Debian/Ubuntu, this is provided by libomp-dev, One of the more specific versions like libomp-13-dev may also work.

Building for CUDA

To build taco for NVIDIA CUDA, add -DCUDA=ON to the cmake line above. For example:

cmake -DCMAKE_BUILD_TYPE=Release -DCUDA=ON ..

Please also make sure that you have CUDA installed properly and that the following environment variables are set correctly:

export PATH=/usr/local/cuda/bin:$PATH
export LD_LIBRARY_PATH=/usr/local/cuda/lib64:$LD_LIBRARY_PATH
export LIBRARY_PATH=/usr/local/cuda/lib64:$LIBRARY_PATH

If you do not have CUDA installed, you can still use the taco cli to generate CUDA code with the -cuda flag.

The generated CUDA code will require compute capability 6.1 or higher to run.

Generating documentation

To generate documentation for the Python API:

cd <taco-directory>/python_bindings
make html

Before generating the documentation, you must have built the Python API (by following the instructions above) as well as installed the following dependencies:

pip install sphinx
pip install numpydoc
pip install sphinx-rtd-theme

Running tests

To run all tests:

cd <taco-directory>/build
make test

Tests can be run in parallel by setting CTEST_PARALLEL_LEVEL=<n> in the environment (which runs <n> tests in parallel).

To run the C++ test suite individually:

cd <taco-directory>
./build/bin/taco-test

To run the Python test suite individually:

cd <taco-directory>
python3 build/python_bindings/unit_tests.py

Code coverage analysis

To enable code coverage analysis, configure with -DCOVERAGE=ON. This requires the gcovr tool to be installed in your PATH.

For best results, the build type should be set to Debug. For example:

cmake -DCMAKE_BUILD_TYPE=Debug -DCOVERAGE=ON ..

Then to run code coverage analysis:

make gcovr

This will run the test suite and produce some coverage analysis. This process requires that the tests pass, so any failures must be fixed first. If all goes well, coverage results will be output to the coverage/ folder. See coverage/index.html for a high level report, and click individual files to see the line-by-line results.

Library example

The following sparse tensor-times-vector multiplication example in C++ shows how to use the taco library.

// Create formats
Format csr({Dense,Sparse});
Format csf({Sparse,Sparse,Sparse});
Format  sv({Sparse});

// Create tensors
Tensor<double> A({2,3},   csr);
Tensor<double> B({2,3,4}, csf);
Tensor<double> c({4},     sv);

// Insert data into B and c
B.insert({0,0,0}, 1.0);
B.insert({1,2,0}, 2.0);
B.insert({1,2,1}, 3.0);
c.insert({0}, 4.0);
c.insert({1}, 5.0);

// Pack inserted data as described by the formats
B.pack();
c.pack();

// Form a tensor-vector multiplication expression
IndexVar i, j, k;
A(i,j) = B(i,j,k) * c(k);

// Compile the expression
A.compile();

// Assemble A's indices and numerically compute the result
A.assemble();
A.compute();

std::cout << A << std::endl;

Code generation tools

If you just need to compute a single tensor kernel you can use the taco online tool to generate a custom C library. You can also use the taco command-line tool to the same effect:

cd <taco-directory>
./build/bin/taco
Usage: taco [options] <index expression>

Examples:
  taco "a(i) = b(i) + c(i)"                            # Dense vector add
  taco "a(i) = b(i) + c(i)" -f=b:s -f=c:s -f=a:s       # Sparse vector add
  taco "a(i) = B(i,j) * c(j)" -f=B:ds                  # SpMV
  taco "A(i,l) = B(i,j,k) * C(j,l) * D(k,l)" -f=B:sss  # MTTKRP

Options:
  ...

For more information, see our paper on the taco tools taco: A Tool to Generate Tensor Algebra Kernels.

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