This is the Windows app named DeepGEMM whose latest release can be downloaded as Stablereleasev2.1.0sourcecode.tar.gz. It can be run online in the free hosting provider OnWorks for workstations.
Download and run online this app named DeepGEMM with OnWorks for free.
Ikuti petunjuk ini untuk menjalankan aplikasi ini:
- 1. Download aplikasi ini di PC Anda.
- 2. Masuk ke file manager kami https://www.onworks.net/myfiles.php?username=XXXXX dengan username yang anda inginkan.
- 3. Upload aplikasi ini di filemanager tersebut.
- 4. Mulai emulator online OS OnWorks apa pun dari situs web ini, tetapi emulator online Windows yang lebih baik.
- 5. Dari OS Windows OnWorks yang baru saja Anda mulai, buka file manager kami https://www.onworks.net/myfiles.php?username=XXXXX dengan nama pengguna yang Anda inginkan.
- 6. Unduh aplikasi dan instal.
- 7. Unduh Wine dari repositori perangkat lunak distribusi Linux Anda. Setelah terinstal, Anda kemudian dapat mengklik dua kali aplikasi untuk menjalankannya dengan Wine. Anda juga dapat mencoba PlayOnLinux, antarmuka mewah di atas Wine yang akan membantu Anda menginstal program dan game Windows populer.
Wine adalah cara untuk menjalankan perangkat lunak Windows di Linux, tetapi tidak memerlukan Windows. Wine adalah lapisan kompatibilitas Windows sumber terbuka yang dapat menjalankan program Windows secara langsung di desktop Linux apa pun. Pada dasarnya, Wine mencoba untuk mengimplementasikan kembali Windows dari awal sehingga dapat menjalankan semua aplikasi Windows tersebut tanpa benar-benar membutuhkan Windows.
Tangkapan layar
Ad
DeepGEMM
DESKRIPSI
DeepGEMM is a specialized CUDA library for efficient, high-performance general matrix multiplication (GEMM) operations, with particular focus on low-precision formats such as FP8 (and experimental support for BF16). The library is designed to work cleanly and simply, avoiding overly templated or heavily abstracted code, while still delivering performance that rivals expert-tuned libraries. It supports both standard and “grouped” GEMMs, which is useful for architectures like Mixture of Experts (MoE) that require segmented matrix multiplications. One distinguishing aspect is that DeepGEMM compiles its kernels at runtime (via a lightweight Just-In-Time (JIT) module), so users don’t need to precompile CUDA kernels before installation. Despite its lean design, it includes scaling strategies (fine-grained scaling) and optimizations inspired by cutting edge systems (drawing from ideas in CUTLASS, CuTe) but in a more streamlined form.
Fitur
- High-performance GEMM kernels focused on FP8 precision, with optional BF16 support
- Support for grouped GEMM (segmented matrix operations) useful for MoE scenarios
- Runtime JIT compilation of kernels (no heavy ahead-of-time kernel compilation needed)
- Clean, modular code structure (less dependence on heavy template programming)
- Fine-grained scaling strategies (to adapt precision dynamically)
- Benchmark and test suite (e.g. test_fp8.py), performance monitoring, and ongoing issue tracking
Bahasa Pemrograman
C + +
KATEGORI
This is an application that can also be fetched from https://sourceforge.net/projects/deepgemm.mirror/. It has been hosted in OnWorks in order to be run online in an easiest way from one of our free Operative Systems.