Abbrevation
FastPath
City
Madison
Country
United States
Deadline Paper
Start Date
End Date
Abstract

FastPath 2019 brings together researchers and practitioners involved in cross&#8211;stack hardware/software performance analysis, modeling, and evaluation for efficient machine learning systems&#046; Machine learning demands tremendous amount of computing&#046; Current machine learning systems are diverse, including cellphones, high performance computing systems, database systems, self&#8211;driving cars, robotics, and in&#8211;home appliances&#046; Many machine&#8211;learning systems have customized hardware and/or software&#046; The types and components of such systems vary, but a partial list includes traditional CPUs assisted with accelerators (ASICs, FPGAs, GPUs), memory accelerators, I/O accelerators, hybrid systems, converged infrastructure, and IT appliances&#046; Designing efficient machine learning systems poses several challenges&#046;<br>These include distributed training on big data, hyper&#8211;parameter tuning for models, emerging accelerators, fast I/O for random inputs, approximate computing for training and inference, programming models for a diverse machine&#8211;learning workloads, high&#8211;bandwidth interconnect, efficient mapping of processing logic on hardware, and cross system stack performance optimization&#046; Emerging infrastructure supporting big data analytics, cognitive computing, large&#8211;scale machine learning, mobile computing, and internet&#8211;of&#8211;things, exemplify system designs optimized for machine learning at large&#046;<br><div>Topics<br></div><div><br></div>FastPath seeks to facilitate the exchange of ideas on performance analysis and evaluation of machine learning/AI systems and seeks papers on a wide range of topics including, but not limited to:<br>Workload characterization, performance modeling and profiling of machine<br>learning applications<br>GPUs, FPGAs, ASIC accelerators<br>Memory, I/O, storage, network accelerators<br>Hardware/software co&#8211;design<br>Efficient machine learning algorithms<br>Approximate computing in machine learning<br>Power/Energy and learning acceleration<br>Software, library, and runtime for machine learning systems<br>Workload scheduling and orchestration<br>Machine learning in cloud systems<br>Large&#8211;scale machine learning systems<br>Emerging intelligent/cognitive systems<br>Converged/integrated infrastructure<br>Machine learning systems for specific domains, e&#046;g&#046;, financial, biological, education, commerce, healthcare