{NetScatter}: Enabling {Large-Scale} Backscatter Networks Hessar M, Najafi A, Gollakota S. 2019. {NetScatter}: Enabling {Large-Scale} Backscatter Networks. 16th USENIX Symposium on Networked Systems Design and Implementation (NSDI 19). :271--284. Read more about {NetScatter}: Enabling {Large-Scale} Backscatter NetworksDBLPLog in to post commentsGoogle ScholarBibTeX
Riverbed: Enforcing User-defined Privacy Constraints in Distributed Web Services Wang F, Ko R, Mickens J. 2019. Riverbed: Enforcing User-defined Privacy Constraints in Distributed Web Services. 16th USENIX Symposium on Networked Systems Design and Implementation (NSDI 19). :615--630. Read more about Riverbed: Enforcing User-defined Privacy Constraints in Distributed Web ServicesDBLPLog in to post commentsGoogle ScholarBibTeX
{BLAS-on-flash}: An Efficient Alternative for Large Scale {ML} Training and Inference? Subramanya SJayaram, Simhadri HVardhan, Garg S, Kag A, Balasubramanian V. 2019. {BLAS-on-flash}: An Efficient Alternative for Large Scale {ML} Training and Inference? 16th USENIX Symposium on Networked Systems Design and Implementation (NSDI 19). :469--484. Read more about {BLAS-on-flash}: An Efficient Alternative for Large Scale {ML} Training and Inference?DBLPLog in to post commentsGoogle ScholarBibTeX
Zeno: Diagnosing Performance Problems with Temporal Provenance Wu Y, Chen A, Phan LThi Xuan. 2019. Zeno: Diagnosing Performance Problems with Temporal Provenance. 16th USENIX Symposium on Networked Systems Design and Implementation (NSDI 19). :395--420. Read more about Zeno: Diagnosing Performance Problems with Temporal ProvenanceDBLPLog in to post commentsGoogle ScholarBibTeX
Hydra: a federated resource manager for data-center scale analytics Curino C, Krishnan S, Karanasos K, Rao S, Fumarola GM, Huang B, Chaliparambil K, Suresh A, Chen Y, Heddaya S et al.. 2019. Hydra: a federated resource manager for data-center scale analytics. 16th USENIX Symposium on Networked Systems Design and Implementation (NSDI 19). :177--192. Read more about Hydra: a federated resource manager for data-center scale analyticsDBLPLog in to post commentsGoogle ScholarBibTeX
Surfing the Memory Channel: When Memory and Storage Become One {I/O} Bottlenecks Disappear [Anonymous]. 2018. Surfing the Memory Channel: When Memory and Storage Become One {I/O} Bottlenecks Disappear. Read more about Surfing the Memory Channel: When Memory and Storage Become One {I/O} Bottlenecks DisappearDBLPLog in to post commentsGoogle ScholarBibTeX
Metadata and Rules for Large Scale File Systems and Object Stores [Anonymous]. 2018. Metadata and Rules for Large Scale File Systems and Object Stores. Read more about Metadata and Rules for Large Scale File Systems and Object StoresDBLPLog in to post commentsGoogle ScholarBibTeX
Eliminating {SSD} Bottlenecks: A Case Study Based on {ZFS} [Anonymous]. 2018. Eliminating {SSD} Bottlenecks: A Case Study Based on {ZFS}. Read more about Eliminating {SSD} Bottlenecks: A Case Study Based on {ZFS}DBLPLog in to post commentsGoogle ScholarBibTeX
Surviving Moore's Law: Security, {AI}, and Last Mover Advantage Kocher P. 2006. Surviving Moore's Law: Security, {AI}, and Last Mover Advantage. 15th USENIX Security Symposium (USENIX Security 06). Read more about Surviving Moore's Law: Security, {AI}, and Last Mover AdvantageDBLPLog in to post commentsGoogle ScholarBibTeX
Pergamum: Replacing Tape with Energy Efficient, Reliable, {Disk-Based} Archival Storage Storer MW, Greenan KM, Miller EL, Voruganti K. 2008. Pergamum: Replacing Tape with Energy Efficient, Reliable, {Disk-Based} Archival Storage. 6th USENIX Conference on File and Storage Technologies (FAST 08). Read more about Pergamum: Replacing Tape with Energy Efficient, Reliable, {Disk-Based} Archival StorageDBLPLog in to post commentsGoogle ScholarBibTeX