Programming Models and Systems Design for Deep Learning
We have witnessed emergence of many deep learning systems; each comes with its own unique features. While most system will evolve and getting better, there are some fundamental design choices behind the system that will affect the how far this system can get at in terms of flexibility and performance. In this talk, I will discuss the design of deep learning system from this perspective. Specifically, I am going to talk about declarative (symbolic) and imperative programming for deep learning models and the advantage/disadvantages of each approach. I will motivate the usage of mixed design, which results in mxnet – our system that support mixed declarative and imperative programming to achieve maximum flexibility and performance. I will also talk about systems for automatic task scheduling and memory optimization for the mixed programming model.
- Series:
- Microsoft Research Talks
- Date:
- Speakers:
- Tianqi Chen, Junyuan Xie
- Affiliation:
- University of Washington
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Kenneth Tran
Principal Research Software Engineer
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Series: Microsoft Research Talks
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- Phil Bernstein
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Improving text prediction accuracy using neurophysiology
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DIABLo: a Deep Individual-Agnostic Binaural Localizer
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Recent Efforts Towards Efficient And Scalable Neural Waveform Coding
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From SqueezeNet to SqueezeBERT: Developing Efficient Deep Neural Networks
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Hope Speech and Help Speech: Surfacing Positivity Amidst Hate
Speakers:- Monojit Choudhury
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'F' to 'A' on the N.Y. Regents Science Exams: An Overview of the Aristo Project
Speakers:- Peter Clark
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Checkpointing the Un-checkpointable: the Split-Process Approach for MPI and Formal Verification
Speakers:- Gene Cooperman
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Learning Structured Models for Safe Robot Control
Speakers:- Ashish Kapoor
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