MACSio
A Multi-purpose, Application-Centric, Scalable I/O Proxy Application
Install / Use
/learn @llnl/MACSioREADME
MACSio
A Multi-purpose, Application-Centric, Scalable I/O Proxy Application
MACSio is being developed to fill a long existing void in co-design proxy applications that allow for I/O performance testing and evaluation of tradeoffs in data models, I/O library interfaces and parallel I/O paradigms for multi-physics, HPC applications.
Two key design features of MACSio set it apart from existing I/O proxy applications and benchmarking tools. The first is the level of abstraction (LOA) at which MACSio is being designed to operate. The second is the degree of flexibility MACSio is being designed to provide in driving an HPC I/O workload through parameterized, user-defined data objects and a variety of parallel I/O paradigms and I/O interfaces.
Combined, these features allow MACSio to closely mimic I/O workloads for a wide variety of real applications and, in particular, multi-physics applications where data object distribution and composition vary dramatically both within and across parallel tasks. These data objects can then be marshaled using one or more I/O interfaces and parallel I/O paradigms, allowing for direct comparisons of software interfaces, parallel I/O paradigms, and file system technologies with the same set of customizable data objects.
We hope MACSio helps to put the MAX in scalable I/O performance ;)
The name "MACSio" is pronounced max-eee-oh.
Installing
The easiest way to get MACSio is to install using the Spack package manager (see https://spack.readthedocs.io).
Installing with Spack is as simple as spack install macsio.
Alternatively, see the INSTALLING file for manual installation instructions.
Release
MACSio is released under the terms of the GPL license. For full details see the LICENSE file.
LLNL-CODE-676051
Related Skills
node-connect
351.4kDiagnose OpenClaw node connection and pairing failures for Android, iOS, and macOS companion apps
frontend-design
110.7kCreate distinctive, production-grade frontend interfaces with high design quality. Use this skill when the user asks to build web components, pages, or applications. Generates creative, polished code that avoids generic AI aesthetics.
openai-whisper-api
351.4kTranscribe audio via OpenAI Audio Transcriptions API (Whisper).
qqbot-media
351.4kQQBot 富媒体收发能力。使用 <qqmedia> 标签,系统根据文件扩展名自动识别类型(图片/语音/视频/文件)。
