Tech Showcase: Project Fiddle
- Amar Phanishayee
The goal of Project Fiddle is to build systems infrastructure to systematically speed-up distributed deep neural network (DNN) training while eking out the most from the resources used. Specifically, we are aiming for 100x more efficient training. To achieve this goal, we take a broad view of training: from a single GPU, to multiple GPUs on a machine, all the way to multiple machines in a cluster. Our innovations cut across the systems stack from the memory subsystem, to structuring parallel computation, and interconnects between GPUs and machines. Our work has generated interest and led to collaborations with product groups such as Cognitive Toolkit and Cloud Server Infrastructure.
发言人详细信息
Amar Phanishayee is a Ph.D. candidate at Carnegie Mellon’s Computer Science Department. The goal of his research is to enable the creation of high-performance, efficient networked systems for large-scale data-intensive computing. His research so far has addressed problems across the distributed systems stack: from new hardware to techniques to use it efficiently; from network protocols to distributed systems & consistency protocols. Amar was awarded an IBM Research Fellowship (2009, 2010), a ThinkSwiss Research Scholarship, and a SOSP Best Paper Award in 2009.
-
-
Amar Phanishayee
Senior Principal Researcher
-
-
系列: Microsoft Research Faculty Summit
-
-
-
Cars, Computing and the Future of Work: Specific topics of mutual interest
- Linda Boyle,
- Ed Doran,
- John Lee
-
-
-
Crowd, Cloud and the Future of Work: Updates from human AI computation
- Pietro Michelucci,
- Lucy Fortson,
- Franco Pestilli
-
-
Cars, Computing and the Future of Work: A UW & MSR Workshop: Welcome and Overview of Projects
- Linda Boyle,
- Ed Doran,
- Eric Horvitz
-
-
Crowd, Cloud and the Future of Work: Welcome and Updates
- Besmira Nushi,
- Ece Kamar,
- Kori Inkpen
-
Empowering People to Achieve More: How Useful a Concept is Productivity?
- Brendan Murphy,
- Yvonne Rogers,
- Steve Whittaker
-
Keynote - The Future of Work And the Power of Data
- Johannes Gehrke
-
Productivity in Software Development
- Neel Sundaresan,
- Margaret-Anne Storey,
- Prem Kumar Devanbu
-
Artificial Emotional Intelligence, Social Systems, and the Future of Collaboration
- Mary Czerwinski,
- Mark Ackerman,
- Gloria Mark
-
Workers of the World, Connect! Tech Innovations and Organizational Change for the Future of Work(ers)
- Mary Gray,
- Jamie Woodcock,
- Louise Hickman
-
Increasing AI Programmer Productivity
- Markus Weimer,
- Sarah Bird,
- Ce Zhang
-
Human-AI Collaboration for Decision-Making
- Besmira Nushi,
- Ayanna Howard,
- Jon Kleinberg
-
Future of Spreadsheeting
- Ben Zorn,
- Felienne Hermans,
- Daniel Barowy
-
Program Synthesis meets Notebooks
- Sumit Gulwani
-
Accessible Virtual Reality
- Eyal Ofek
-
Calendar.help: A Virtual Meeting Scheduling Assistant
- Pamela Bhattacharya
-
Visual Studio IntelliCode
- Mark Wilson-Thomas
-
Microsoft Teams: Collaborate with Any Researcher Anywhere
- Jethro Seghers
-
Project Alava: Programming Webs of Microcontrollers
- James Devine,
- Teddy Seyed
-
AI in PowerPoint
- Kostas Seleskerov