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ParLearning 2018 : The 7th International Workshop on Parallel and Distributed Computing for Large Scale Machine Learning and Big Data Analytics | |||||||||||||||
Link: http://parlearning.ecs.fullerton.edu | |||||||||||||||
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Call For Papers | |||||||||||||||
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The 7th International Workshop on Parallel and Distributed Computing for Large Scale Machine Learning and Big Data Analytics http://parlearning.ecs.fullerton.edu May 21, 2018 In Conjunction with The 32nd IEEE International Parallel & Distributed Processing Symposium http://www.ipdps.org May 21 - May 25, 2018 JW Marriott Parq Vancouver Vancouver, British Columbia, Canada ************************************************************************** Call for Papers Scaling up machine-learning (ML), data mining (DM) and reasoning algorithms from Artificial Intelligence (AI) for massive datasets is a major technical challenge in the time of "Big Data". The past ten years have seen the rise of multi-core and GPU based computing. In parallel and distributed computing, several frameworks such as OpenMP, OpenCL, and Spark continue to facilitate scaling up ML/DM/AI algorithms using higher levels of abstraction. We invite novel works that advance the trio-fields of ML/DM/AI through development of scalable algorithms or computing frameworks. Ideal submissions should describe methods for scaling up X using Y on Z, where potential choices for X, Y and Z are provided below. Scaling up Recommender systems Optimization algorithms (gradient descent, Newton methods) Deep learning Sampling/sketching techniques Clustering (agglomerative techniques, graph clustering, clustering heterogeneous data) Classification (SVM and other classifiers) SVD and other matrix computations Probabilistic inference (Bayesian networks) Logical reasoning Graph algorithms/graph mining and knowledge graphs Semi-supervised learning Online/streaming learning Generative adversarial networks Using Parallel architectures/frameworks (OpenMP, OpenCL, OpenACC, Intel TBB) Distributed systems/frameworks (GraphLab, Hadoop, MPI, Spark) Machine learning frameworks (TensorFlow, PyTorch, Theano, Caffe) On Clusters of conventional CPUs Many-core CPU (e.g. Xeon Phi) FPGA Specialized ML accelerators (e.g. GPU and TPU) Proceedings of the Parlearning workshop will be distributed at the conference and will be submitted for inclusion in the IEEE Xplore Digital Library after the conference. Awards Best Paper Award: The program committee will nominate a paper for the Best Paper award. In past years, the Best Paper award included a cash prize. Stay tuned for this year! Travel awards: Students with accepted papers have a chance to apply for a travel award. Please find details on the IEEE IPDPS web page. Important Dates o Paper submission: Feb 16, 2018 (Anywhere on Earth) o Author notification: March 9, 2018 o Camera-ready version: March 15, 2018 Paper Guidelines Submitted manuscripts should be upto 10 single-spaced double-column pages using 10-point size font on 8.5x11 inch pages (IEEE conference style), including figures, tables, and references. Format requirements are posted on the IEEE IPDPS web page. All submissions must be uploaded electronically on https://www.easychair.org/conferences/?conf=parlearning2018. Organization General Chairs: Henri Bal (Vrije Universiteit, The Netherlands) and Arindam Pal (TCS Research and Innovation, India) Technical Program Chairs: Azalia Mirhoseini (Google Brain, USA) and Thomas Parnell (IBM Research – Zurich, Switzerland) Publicity Chair: Yanik Ngoko (Université Paris XIII, France) Steering Committee Chairs: Sutanay Choudhury (Pacific Northwest National Laboratory, USA), Anand Panangadan (California State University, Fullerton, USA), and Yinglong Xia (Huawei Research America, USA) Technical Program Committee Vito Giovanni Castellana, Pacific Northwest National Laboratory, USA Tanmoy Chakraborty, IIIT Delhi, India Daniel Gerardo Chavarria, Pacific Northwest National Laboratory, USA Sutanay Choudhury, Pacific Northwest National Laboratory, USA Zhihui Du, Tsinghua University, China Anand Eldawy, University of Minnesota, USA Erich Elsen, Google Brain, USA Dinesh Garg, IIT Gandhinagar and IBM Research, India Kripabandhu Ghosh, IIT Kanpur, India Saptarshi Ghosh, IIT Kharagpur, India Kazuaki Ishizaki, IBM Research - Tokyo, Japan Farinaz Koushanfar, UCSD, USA Gwo Giun (Chris) Lee, National Cheng Kung University, Taiwan Carson Leung, University of Manitoba, Canada Animesh Mukherjee, IIT Kharagpur, India Debnath Mukherjee, TCS Research, India Francesco Parisi, University of Calabria, Italy Saurabh Paul, PayPal, USA Lijun Qian, Prairie View A&M University, USA Lingfei Wu, IBM T. J. Watson Research Center, USA Jianting Zhang, City College of New York, USA |
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