Chris Jermaine
· Computer ScienceRice University · Electrical and Computer Engineering
Active 1999–2024
Research topics
- Machine Learning
- Computer Science
- Artificial Intelligence
- Distributed computing
- Engineering
- Computer network
Selected publications
Distributed learning of fully connected neural networks using independent subnet training
Proceedings of the VLDB Endowment · 2022 · 30 citations
Senior authorCorresponding- Computer Science
- Computer Science
- Artificial Intelligence
Distributed machine learning (ML) can bring more computational resources to bear than single-machine learning, thus enabling reductions in training time. Distributed learning partitions models and data over many machines, allowing model and dataset sizes beyond the available compute power and memory of a single machine. In practice though, distributed ML is challenging when distribution is mandatory, rather than chosen by the practitioner. In such scenarios, data could unavoidably be separated among workers due to limited memory capacity per worker or even because of data privacy issues. There, existing distributed methods will utterly fail due to dominant transfer costs across workers, or do not even apply. We propose a new approach to distributed fully connected neural network learning, called independent subnet training (IST), to handle these cases. In IST, the original network is decomposed into a set of narrow subnetworks with the same depth. These subnetworks are then trained locally before parameters are exchanged to produce new subnets and the training cycle repeats. Such a naturally "model parallel" approach limits memory usage by storing only a portion of network parameters on each device. Additionally, no requirements exist for sharing data between workers (i.e., subnet training is local and independent) and communication volume and frequency are reduced by decomposing the original network into independent subnets. These properties of IST can cope with issues due to distributed data, slow interconnects, or limited device memory, making IST a suitable approach for cases of mandatory distribution. We show experimentally that IST results in training times that are much lower than common distributed learning approaches.
2021 IEEE/CVF International Conference on Computer Vision (ICCV) · 2021 · 33 citations
Senior authorCorresponding- Computer Science
- Computer Science
- Artificial Intelligence
Recent papers have suggested that transfer learning can outperform sophisticated meta-learning methods for few-shot image classification. We take this hypothesis to its logical conclusion, and suggest the use of an ensemble of high-quality, pre-trained feature extractors for few-shot image classification. We show experimentally that a library of pre-trained feature extractors combined with a simple feed-forward network learned with an L2-regularizer can be an excellent option for solving cross-domain few-shot image classification. Our experimental results suggest that this simple approach far outperforms several well-established meta-learning algorithms.
Recent grants
SEI: Data Mining for Multiple Antibiotic Resistance
NSF · $595k · 2006–2010
Expeditions: Collaborative Research: Understanding the World Through Code
NSF · $1.2M · 2020–2027
ABI Innovation: Algorithms and Models for Distributed Computation of Bayesian Phylogenetics
NSF · $1.2M · 2014–2019
III: Medium: Collaborative Research: Data Mining and Cleaning for Medical Data Warehouses
NSF · $600k · 2010–2015
CAREER: New Technologies for Online Aggregation
NSF · $440k · 2004–2010
Frequent coauthors
- 19 shared
Swarat Chaudhuri
- 17 shared
Binhang Yuan
- 15 shared
Jia Zou
Arizona State University
- 14 shared
Dimitrije Jankov
- 10 shared
Shangyu Luo
- 8 shared
Mingxi Wu
Bozhou People's Hospital
- 7 shared
Zekai J. Gao
- 6 shared
Dipak Chaudhari
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