
CUTLASS 2.0 Substantially refactored for - Better performance, particularly for native Turing Tensor Cores - Robust and durable templates spanning the design space - Encapsulated functionality embodying modern C++11 programming techniques - Optimized containers and data types for efficient, generic, portable device code Updates to: - Quick start guide - Documentation - Utilities - CUTLASS Profiler Native Turing Tensor Cores - Efficient GEMM kernels targeting Turing Tensor Cores - Mixed-precision floating point, 8-bit integer, 4-bit integer, and binarized operands Coverage of existing CUTLASS functionality: - GEMM kernels targeting CUDA and Tensor Cores in NVIDIA GPUs - Volta Tensor Cores through native mma.sync and through WMMA API - Optimizations such as parallel reductions, threadblock rasterization, and intra-threadblock reductions - Batched GEMM operations - Complex-valued GEMMs Note: this commit and all that follow require a host compiler supporting C++11 or greater.
7 lines
404 B
JavaScript
7 lines
404 B
JavaScript
var searchData=
|
|
[
|
|
['opcodeclassid',['OpcodeClassID',['../namespacecutlass_1_1library.html#a6e7f08a7db0273b3da7cc7ec6188b95e',1,'cutlass::library']]],
|
|
['operand',['Operand',['../namespacecutlass_1_1gemm.html#a34338284023da7403c9ecbd3f406b2a6',1,'cutlass::gemm']]],
|
|
['operationkind',['OperationKind',['../namespacecutlass_1_1library.html#ae609b16f8fa78f39136fc0a9802e4459',1,'cutlass::library']]]
|
|
];
|