


default search action
26th HiPC 2019: Hyderabad, India
- 26th IEEE International Conference on High Performance Computing, Data, and Analytics, HiPC 2019, Hyderabad, India, December 17-20, 2019. IEEE 2019, ISBN 978-1-7281-4535-8

Keynote 1
- Vivek Sarkar:

Data Flow Execution Models - A Third Opinion. 1
Technical Session 1: Algorithms for Graphs and Emerging Platforms
- Anwesha Bhowmik, Sathish Vadhiyar:

HyDetect: A Hybrid CPU-GPU Algorithm for Community Detection. 2-11 - Thomas Gilray, Sidharth Kumar:

Distributed Relational Algebra at Scale. 12-22 - Khaled Z. Ibrahim:

Optimizing Breadth-First Search at Scale Using Hardware-Accelerated Space Consistency. 23-33 - Apurba Das, Srikanta Tirthapura:

Shared-Memory Parallel Maximal Biclique Enumeration. 34-43 - Soumendu Ghorui, Sabyasachee Banerjee

, Subhashis Majumder:
A Deterministic Multi-layered Partitioning Tool for Wire-Length Reduction of Monolithic 3D-IC. 44-51 - Arif M. Khan, Mahantesh Halappanavar, Tobias Hagge

, Karol Kowalski, Alex Pothen
, Sriram Krishnamoorthy
:
Mapping Arbitrarily Sparse Two-Body Interactions on One-Dimensional Quantum Circuits. 52-62
Technical Session 2: Data Management and Visualization
- Bheekya Dharamsotu

, K. Swarupa Rani
, Salman Abdul Moiz
, C. Raghavendra Rao:
k-NN Sampling for Visualization of Dynamic Data Using LION-tSNE. 63-72 - Richard Warren, Jérome Soumagne

, Jingqing Mu, Houjun Tang
, Suren Byna
, Bin Dong, Quincey Koziol:
Analysis in the Data Path of an Object-Centric Data Management System. 73-82 - Wei Zhang

, Suren Byna
, Chenxu Niu
, Yong Chen
:
Exploring Metadata Search Essentials for Scientific Data Management. 83-92 - Pouya Kousha

, Bharath Ramesh, Kaushik Kandadi Suresh, Ching-Hsiang Chu, Arpan Jain, Nick Sarkauskas, Hari Subramoni
, Dhabaleswar K. Panda:
Designing a Profiling and Visualization Tool for Scalable and In-depth Analysis of High-Performance GPU Clusters. 93-102 - Houjun Tang

, Suren Byna
, Stephen Bailey, Zarija Lukic, Jialin Liu, Quincey Koziol, Bin Dong:
Tuning Object-Centric Data Management Systems for Large Scale Scientific Applications. 103-112 - Lalit Purohit

, Sandeep Kumar
:
Replaceability Based Web Service Selection Approach. 113-122
Technical Session 3: Applications and Learning
- Ioannis Sakiotis

, Kamesh Arumugam, Desh Ranjan, Balsa Terzic, Mohammad Zubair:
Efficient Parallel Multi-bunch Beam-Beam Simulation in Particle Colliders. 123-130 - Elnaz Tavakoli Yazdi, Ankur Limaye

, Ali Akoglu
, Tosiron Adegbija, Adam Buntzman
:
Bit-Wise and Multi-GPU Implementations of the DNA Recombination Algorithm. 131-140 - Yiming Liu, Jie Yang

, Satish Puri
:
Hierarchical Filter and Refinement System Over Large Polygonal Datasets on CPU-GPU. 141-151 - Sameh Abdulah

, Hatem Ltaief
, Ying Sun, Marc G. Genton, David E. Keyes:
Geostatistical Modeling and Prediction Using Mixed Precision Tile Cholesky Factorization. 152-162 - Shreenivas Bharadwaj Venkataramanan, Rahul Garg, Yogish Sabharwal:

Acceleration of Sparse Vector Autoregressive Modeling Using GPUs. 163-172 - Udit Gupta

, Sathish Vadhiyar:
Fast and Accurate Learning of Knowledge Graph Embeddings at Scale. 173-182
Keynote 2
- Ramesh Hariharan:

Genome Sequencing for Disease Diagnosis: The Confluence of Biology and Computing. 183
Technical Session 4: Accelerated Learning
- Eliza Wszola, Celestine Mendler-Dünner, Martin Jaggi, Markus Püschel:

On Linear Learning with Manycore Processors. 184-194 - Yue Niu, Hanqing Zeng, Ajitesh Srivastava, Kartik Lakhotia, Rajgopal Kannan, Yanzhi Wang, Viktor K. Prasanna:

SPEC2: SPECtral SParsE CNN Accelerator on FPGAs. 195-204 - Jihyun Ryoo, Mengran Fan, Xulong Tang

, Huaipan Jiang, Meena Arunachalam, Sharada Naveen, Mahmut T. Kandemir:
Architecture-Centric Bottleneck Analysis for Deep Neural Network Applications. 205-214 - Dharma Teja Vooturi, Kishore Kothapalli:

Efficient Sparse Neural Networks Using Regularized Multi Block Sparsity Pattern on a GPU. 215-224 - Swagath Venkataramani, Vijayalakshmi Srinivasan, Jungwook Choi, Philip Heidelberger, Leland Chang, Kailash Gopalakrishnan:

Memory and Interconnect Optimizations for Peta-Scale Deep Learning Systems. 225-234 - Chih-Chieh Yang, Guojing Cong:

Accelerating Data Loading in Deep Neural Network Training. 235-245
Keynote 3
- Mark Papermaster:

Delivering the Future of High-Performance Computing. 246
Technical Session 5: Storage and Communication
- Heerak Lim, Hwajung Kim, Kihyeon Myung, Heon Young Yeom, Yongseok Son:

IsoKV: An Isolation Scheme for Key-Value Stores by Exploiting Internal Parallelism in SSD. 247-256 - Dipti Shankar, Xiaoyi Lu, Dhabaleswar K. Panda:

SCOR-KV: SIMD-Aware Client-Centric and Optimistic RDMA-Based Key-Value Store for Emerging CPU Architectures. 257-266 - Ching-Hsiang Chu, Jahanzeb Maqbool Hashmi, Kawthar Shafie Khorassani, Hari Subramoni, Dhabaleswar K. Panda:

High-Performance Adaptive MPI Derived Datatype Communication for Modern Multi-GPU Systems. 267-276 - Reza Salkhordeh, André Brinkmann:

Online Management of Hybrid DRAM-NVMM Memory for HPC. 277-289 - Derek Schafer

, Sheikh K. Ghafoor, Daniel J. Holmes, Martin Ruefenacht, Anthony Skjellum:
User-Level Scheduled Communications for MPI. 290-300 - Giorgis Georgakoudis

, Nikhil Jain, Takatsugu Ono, Koji Inoue, Shinobu Miwa, Abhinav Bhatele:
Evaluating the Impact of Energy Efficient Networks on HPC Workloads. 301-310
Keynote 4
- José Roberto Alvarez:

The New World of Heterogeneous AI/ML High Performance Computing with Intel FPGAs Mark. 311
Technical Session 6: Storage, Fault tolerance, and Resilience
- Tariq Alturkestani, Thierry Tonellot, Hatem Ltaief

, Rached Abdelkhalak, Étienne Vincent, David E. Keyes
:
MLBS: Transparent Data Caching in Hierarchical Storage for Out-of-Core HPC Applications. 312-322 - Alvaro Frank, Dai Yang, André Brinkmann, Martin Schulz

, Tim Süß:
Reducing False Node Failure Predictions in HPC. 323-332 - Burcu Ozcelik Mutlu

, Gokcen Kestor, Adrián Cristal, Osman S. Unsal, Sriram Krishnamoorthy:
Ground-Truth Prediction to Accelerate Soft-Error Impact Analysis for Iterative Methods. 333-344 - Arun Abraham

, Manas Sahni, Akshay Parashar:
Efficient Memory Pool Allocation Algorithm for CNN Inference. 345-352 - Aleix Roca Nonell

, Samuel Rodríguez, Albert Segura, Kevin Marquet, Vicenç Beltran:
A Linux Kernel Scheduler Extension for Multi-core Systems. 353-362 - Sergio Rivas-Gomez, Alessandro Fanfarillo, Sébastien Valat, Christophe Laferriere, Philippe Couvée, Sai Narasimhamurthy, Stefano Markidis:

uMMAP-IO: User-Level Memory-Mapped I/O for HPC. 363-372
Technical Session 7: Parallel and Data Frameworks
- Md. Afibuzzaman, Fazlay Rabbi, M. Yusuf Özkaya, Hasan Metin Aktulga

, Ümit V. Çatalyürek:
DeepSparse: A Task-Parallel Framework for SparseSolvers on Deep Memory Architectures. 373-382 - Marcos Maronas, Kevin Sala

, Sergi Mateo, Eduard Ayguadé, Vicenç Beltran:
Worksharing Tasks: An Efficient Way to Exploit Irregular and Fine-Grained Loop Parallelism. 383-394 - Anshuj Garg

, Purushottam Kulkarni, Uday Kurkure, Hari Sivaraman, Lan Vu:
Empirical Analysis of Hardware-Assisted GPU Virtualization. 395-405

manage site settings
To protect your privacy, all features that rely on external API calls from your browser are turned off by default. You need to opt-in for them to become active. All settings here will be stored as cookies with your web browser. For more information see our F.A.Q.


Google
Google Scholar
Semantic Scholar
Internet Archive Scholar
CiteSeerX
ORCID














