| |||||||||||||||
FastPath 2020 : FastPath 2020: International Workshop on Performance Analysis of Machine Learning Systems (An ISPASS Workshop under the auspices of IEEE) | |||||||||||||||
Link: https://fastpath2020.github.io | |||||||||||||||
| |||||||||||||||
Call For Papers | |||||||||||||||
April 5, 2020 - Boston, Massachusetts, United States
https://fastpath2020.github.io in conjunction with ISPASS 2020: http://www.ispass.org/ispass2020 SUMMARY FastPath 2019 brings together researchers and practitioners involved in crossstack hardware/software performance analysis, modeling, and evaluation for efficient machine learning systems. Machine learning demands tremendous amount of computing. Current machine learning systems are diverse, including cellphones, high performance computing systems, database systems, self-driving cars, robotics, and in-home appliances. Many machine-learning systems have customized hardware and/or software. 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. Designing efficient machine learning systems poses several challenges. These include distributed training on big data, hyper-parameter tuning for models, emerging accelerators, fast I/O for random inputs, approximate computing for training and inference, programming models for a diverse machine-learning workloads, high-bandwidth interconnect, efficient mapping of processing logic on hardware, and cross system stack performance optimization. Emerging infrastructure supporting big data analytics, cognitive computing, large-scale machine learning, mobile computing, and internet-of-things, exemplify system designs optimized for machine learning at large. TOPICS FastPath seeks to facilitate the exchange of ideas on performance optimization of machine learning/AI systems and seeks papers on a wide range of topics including, but not limited to: - Workload characterization, performance modeling and profiling of machine learning applications - GPUs, FPGAs, ASIC accelerators - Memory, I/O, storage, network accelerators - Hardware/software co-design - Efficient machine learning algorithms - Approximate computing in machine learning - Power/Energy and learning acceleration - Software, library, and runtime for machine learning systems - Workload scheduling and orchestration - Machine learning in cloud systems - Large-scale machine learning systems - Emerging intelligent/cognitive system - Converged/integrated infrastructure - Machine learning systems for specific domains, e.g., financial, biological, education, commerce, healthcare SUBMISSION Prospective authors must submit a 2-4 page extended abstract: https://easychair.org/conferences/?conf=fastpath2020 Authors of selected abstracts will be invited to give a 30-min presentation at the workshop. KEY DATES Submission: February 21, 2020 Notification: March 2, 2020 Final Materials / Workshop: April 5, 2020 ORGANIZERS General Chair: Erik Altman Program Committee Chairs: Parijat Dube, Vijay Janapa Reddi PROGRAM COMMITTEE Christophe Dubach McGill University Christopher Fletcher University of Illinois at Urbana-Champaign Jangwoo Kim Seoul National University Tushar Krishna Georgia Tech Gennady Pekhimenko University of Toronto Brandon Reagan NYU / Facebook CONFIRMED SPEAKERS Colby Banbury (Harvard) Grigori Fursin (CTuning) Leopold Grinberg (IBM) |
|