サクサク読めて、アプリ限定の機能も多数!
トップへ戻る
iPhone 16
www.pdl.cmu.edu
Datacenter Computers modern challenges in CPU design Dick Sites Google Inc. February 2015 February 2015 2 Thesis: Servers and desktops require different design emphasis February 2015 3 Goals • Draw a vivid picture of a computing environment that may be foreign to your experience so far • Expose some ongoing research problems • Perhaps inspire contributions in this area February 2015 4 Analogy (S.A
YCSB++ In today's cloud computing world, we have seen an explosion in the number of cloud table stores developed for serving cloud data. These table stores are typically designed for high scalablility by using semi-structured data format and weak semantics, and optimized for different priorities such as query speed, ingest speed, availability, and interactivity. Further, as these systems mature, l
An Analysis of Traces from a Production MapReduce Cluster Soila Kavulya∗, Jiaqi Tan†, Rajeev Gandhi∗ and Priya Narasimhan∗ ∗Carnegie Mellon University, Pittsburgh, PA 15213 spertet@ece.cmu.edu,rgandhi@ece.cmu.edu, priya@cs.cmu.edu † DSO National Laboratories, Singapore 118230 tjiaqi@dso.org.sg Abstract—MapReduce is a programming paradigm for parallel processing that is increasingly being used for
incast Cluster-based storage systems are becoming an increasingly important target for both research and industry. These storage systems consist of a networked set of smaller storage servers, with data spread across these servers to increase performance and reliability. Building these systems using commodity TCP/IP and Ethernet networks is attractive because of their low cost and ease-of-use, and
[ People | Status | v4.0 Code Download | Mailing Lists ] THIS PAGE HAS MOVED. PLEASE UPDATE YOUR BOOKMARKS. IF YOU ARE NOT REDIRECTED IN A FEW SECONDS, PLEASE CLICK HERE TO GO TO OUR NEW PAGE. DiskSim v4.0 includes bug fixes and three primary additions: the DIXtrac disk characterization tool [Schindler99], a MEMS-based storage device model [Griffin00, Schlosser03], and a new layout model generic e
The PDL studies storage-related challenges, i.e., storage security, emerging technologies, disk characterization & modeling, efficient storage access, storage networking, & network-attached storage clusters.
このページを最初にブックマークしてみませんか?
『Parallel Data Lab』の新着エントリーを見る
j次のブックマーク
k前のブックマーク
lあとで読む
eコメント一覧を開く
oページを開く