Skip to content
forked from ROCm/hipBLASLt

hipBLASLt is a library that provides general matrix-matrix operations with a flexible API and extends functionalities beyond a traditional BLAS library

License

Notifications You must be signed in to change notification settings

ellosel/hipBLASLt

 
 

Repository files navigation

hipBLASLt

hipBLASLt is a library that provides general matrix-matrix operations. It has a flexible API that extends functionalities beyond a traditional BLAS library, such as adding flexibility to matrix data layouts, input types, compute types, and algorithmic implementations and heuristics.

Note

The published hipBLASLt documentation is available at hipBLASLt in an organized, easy-to-read format, with search and a table of contents. The documentation source files reside in the hipBLASLt/docs folder of this repository. As with all ROCm projects, the documentation is open source. For more information, see Contribute to ROCm documentation.

hipBLASLt uses the HIP programming language with an underlying optimized generator as its backend kernel provider.

After you specify a set of options for a matrix-matrix operation, you can reuse these for different inputs. The general matrix-multiply (GEMM) operation is performed by the hipblasLtMatmul API.

The equation is:

$$D = Activation(alpha \cdot op(A) \cdot op(B) + beta \cdot op(C) + bias)$$

Where op( ) refers to in-place operations, such as transpose and non-transpose, and alpha and beta are scalars.

The activation function supports GELU and ReLU. the bias vector matches matrix D rows and broadcasts to all D columns.

The following table provides data type support. Note that fp8 and bf8 are only supported on the gfx94x platform.

A B C D Compute(Scale)
fp32 fp32 fp32 fp32 fp32
fp16 fp16 fp16 fp16 fp32
fp16 fp16 fp16 fp32 fp32
bf16 bf16 bf16 bf16 fp32
fp8/bf8 fp8/bf8 fp32 fp32 fp32
fp8/bf8 fp8/bf8 fp16 fp16 fp32
fp8/bf8 fp8/bf8 bf16 bf16 fp32
fp8/bf8 fp8/bf8 fp8 fp8 fp32
fp8/bf8 fp8/bf8 bf8 bf8 fp32
int8 int8 int8 int8 int32

Documentation

Full documentation for hipBLASLt is available at rocm.docs.amd.com/projects/hipBLASLt.

Run the steps below to build documentation locally.

cd docs

pip3 install -r sphinx/requirements.txt

python3 -m sphinx -T -E -b html -d _build/doctrees -D language=en . _build/html

Alternatively, build with CMake:

cmake -DBUILD_DOCS=ON ...

Requirements

To install hipBLASLt, you must meet the following requirements:

Required hardware:

  • gfx90a card
  • gfx94x card
  • gfx110x card

Required software:

Build and install

You can build hipBLASLt using the install.sh script:

# Clone hipBLASLt using git
git clone https://github.com/ROCmSoftwarePlatform/hipBLASLt

# Go to hipBLASLt directory
cd hipBLASLt

# Run install.sh script
# Command line options:
#   -h|--help         - prints help message
#   -i|--install      - install after build
#   -d|--dependencies - install build dependencies
#   -c|--clients      - build library clients too (combines with -i & -d)
#   -g|--debug        - build with debug flag
./install.sh -idc

NOTE: To build hipBLASLt for ROCm <= 6.2, pass the --legacy_hipblas_direct flag to install.sh

Unit tests

All unit tests are located in build/release/clients/staging/. To build these tests, you must build hipBLASLt with --clients.

You can find more information at the following links:

Contribute

If you want to submit an issue, you can do so on GitHub.

To contribute to our repository, you can create a GitHub pull request.

About

hipBLASLt is a library that provides general matrix-matrix operations with a flexible API and extends functionalities beyond a traditional BLAS library

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Assembly 93.0%
  • C++ 3.9%
  • Python 2.9%
  • CMake 0.1%
  • C 0.1%
  • Shell 0.0%