Commit Graph

12 Commits

Author SHA1 Message Date
Vijay Thakkar
be60a0b272
CUTLASS 3.5.1 (#1623)
* CUTLASS 3.5.1

* updates, optimizations, fixes
2024-07-29 08:46:24 -04:00
ANIKET SHIVAM
751eb9a885
Update license year (#1306) 2024-01-16 14:37:22 -05:00
Alexander Pivovarov
7e370c9637
Fix typos 2 (#842)
Co-authored-by: Haicheng Wu <57973641+hwu36@users.noreply.github.com>
2023-03-09 23:22:56 -05:00
ANIKET SHIVAM
66d9cddc83
New updates for 2.11 (#775)
* New updates.

* Minor profiler updates

Co-authored-by: Aniket Shivam <ashivam@nvidia.com>
2023-01-20 16:32:57 -05:00
Andrew Kerr
12f4108ac2
CUTLASS 2.9 (#468) 2022-04-23 15:02:38 -04:00
Manish Gupta
1ac4559d12
Cutlass 2.6 Update 1 (#301)
* cutlass 2.6 update

* remove debug prints
2021-07-27 17:58:30 -07:00
Manish Gupta
e5d51840e8
CUTLASS 2.6 (#298)
CUTLASS 2.6
2021-07-23 00:40:53 -04:00
Andrew Kerr
0e13748649 CUTLASS 2.5 2021-02-26 09:58:26 -05:00
Andrew Kerr
1ab1027954
Updated mma_sm80.h to avoid perf penalty due to reinterpret_cast<>. (#100)
- Updated mma_sm80.h to avoid perf penalty due to reinterpret_cast<>.
- Enhancement to CUTLASS Utility Library's HostTensorPlanarComplex template to support copy-in and copy-out
- Added test_examples target to build and test all CUTLASS examples
- Minor edits to documentation to point to GTC 2020 webinar
2020-06-15 10:47:01 -07:00
Andrew Kerr
86931fef85
CUTLASS 2.2 (#96)
Adds support for NVIDIA Ampere Architecture features. CUDA 11 Toolkit recommended.
2020-06-08 16:17:35 -07:00
Andrew Kerr
96dab34ad9
CUTLASS 2.1 (#83)
CUTLASS 2.1 contributes:
- BLAS-style host-side API added to CUTLASS Library
- Planar Complex GEMM kernels targeting Volta and Turing Tensor Cores
- Minor enhancements and bug fixes
2020-04-07 13:51:25 -07:00
Andrew Kerr
fb335f6a5f
CUTLASS 2.0 (#62)
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.
2019-11-19 16:55:34 -08:00