34,168 research outputs found
Low Latency Datacenter Networking: A Short Survey
Datacenters are the cornerstone of the big data infrastructure supporting
numerous online services. The demand for interactivity, which significantly
impacts user experience and provider revenue, is translated into stringent
timing requirements for flows in datacenter networks. Thus low latency
networking is becoming a major concern of both industry and academia.
We provide a short survey of recent progress made by the networking community
for low latency datacenter networks. We propose a taxonomy to categorize
existing work based on four main techniques, reducing queue length,
accelerating retransmissions, prioritizing mice flows, and exploiting
multi-path. Then we review select papers, highlight the principal ideas, and
discuss their pros and cons. We also present our perspectives of the research
challenges and opportunities, hoping to aspire more future work in this space.Comment: 6 page
An Abstract Stabilization Method with Applications to Nonlinear Incompressible Elasticity
In this paper, we propose and analyze an abstract stabilized mixed finite
element framework that can be applied to nonlinear incompressible elasticity
problems. In the abstract stabilized framework, we prove that any mixed finite
element method that satisfies the discrete inf-sup condition can be modified so
that it is stable and optimal convergent as long as the mixed continuous
problem is stable. Furthermore, we apply the abstract stabilized framework to
nonlinear incompressible elasticity problems and present numerical experiments
to verify the theoretical results
Ab initio calculation of the local magnetic moment in titanium doped zinc oxide with a corrected-band-gap scheme
The local magnetic moment of Ti:ZnO is calculated from first principles by
using the corrected-band-gap scheme (CBGS). The results shows that the system
is magnetic with the magnetization of 0.699 per dopant. The origin of
the local magnetic moment is considered to be the impurity band partially
occupied by the donor electrons in the conduction band. Further, the impacts of
applying Hubbard U to Ti-d orbital on the magnetic moment have been
investigated
Compare Contact Model-based Control and Contact Model-free Learning: A Survey of Robotic Peg-in-hole Assembly Strategies
In this paper, we present an overview of robotic peg-in-hole assembly and
analyze two main strategies: contact model-based and contact model-free
strategies. More specifically, we first introduce the contact model control
approaches, including contact state recognition and compliant control two
steps. Additionally, we focus on a comprehensive analysis of the whole robotic
assembly system. Second, without the contact state recognition process, we
decompose the contact model-free learning algorithms into two main subfields:
learning from demonstrations and learning from environments (mainly based on
reinforcement learning). For each subfield, we survey the landmark studies and
ongoing research to compare the different categories. We hope to strengthen the
relation between these two research communities by revealing the underlying
links. Ultimately, the remaining challenges and open questions in the field of
robotic peg-in-hole assembly community is discussed. The promising directions
and potential future work are also considered
Multi-view Vector-valued Manifold Regularization for Multi-label Image Classification
In computer vision, image datasets used for classification are naturally
associated with multiple labels and comprised of multiple views, because each
image may contain several objects (e.g. pedestrian, bicycle and tree) and is
properly characterized by multiple visual features (e.g. color, texture and
shape). Currently available tools ignore either the label relationship or the
view complementary. Motivated by the success of the vector-valued function that
constructs matrix-valued kernels to explore the multi-label structure in the
output space, we introduce multi-view vector-valued manifold regularization
(MVMR) to integrate multiple features. MVMR exploits
the complementary property of different features and discovers the intrinsic
local geometry of the compact support shared by different features under the
theme of manifold regularization. We conducted extensive experiments on two
challenging, but popular datasets, PASCAL VOC' 07 (VOC) and MIR Flickr (MIR),
and validated the effectiveness of the proposed MVMR for image
classification
Numerical analysis of the production of , and their partners through the semileptonic decays of mesons in terms of the light-front quark model
Inspired by the newly observed , and states, in
this work we study the production of , and their
partners through the semileptonic decays of mesons, where the
light-front Quark model is applied to the whole calculation. Our numerical
results indicate that the semileptonic decays into the states of
the charmed or charmed-strange meson family have considerable branching ratios,
which shows that these semileptonic decays can be accessible at future
experiments, especially LHCb and the forthcoming Belle II.Comment: 12 pages, 1 figure, and 6 tables. More discussions added. Accepted by
Phys. Rev.
Time-domain global similarity method for automatic data cleaning for multi-channel measurement systems in magnetic confinement fusion devices
To guarantee the availability and reliability of data source in Magnetic
Confinement Fusion (MCF) devices, incorrect diagnostic data, which cannot
reflect real physical properties of measured objects, should be sorted out
before further analysis and study. Traditional data sorting cannot meet the
growing demand of MCF research because of the low-efficiency, time-delay, and
lack of objective criteria. In this paper, a Time-Domain Global Similarity
(TDGS) method based on machine learning technologies is proposed for the
automatic data cleaning of MCF devices. Traditional data sorting aims to the
classification of original diagnostic data sequences, which are different in
both length and evolution properties under various discharge parameters. Hence
the classification criteria are affected by many discharge parameters and vary
shot by shot. The focus of TDGS method is turned to the physical similarity
between data sequences from different channels, which are more essential and
independent of discharge parameters. The complexity arisen from real discharge
parameters during data cleaning is avoided in the TDGS method by transforming
the general data sorting problem into a binary classification problem about the
physical similarity between data sequences. As a demonstration of its
application to multi-channel measurement systems, the TDGS method is applied to
the EAST POlarimeter-INterferomeTer (POINT) system. The optimized performance
of the method has reached 0.9871
Substation One-Line Diagram Automatic Generation and Visualization
In Energy Management System (EMS) applications and many other off-line
planning and study tools, one-line diagram (OLND) of the whole system and
stations is a straightforward view for planners and operators to design,
monitor, analyze, and control the power system. Large-scale power system OLND
is usually manually developed and maintained. The work is tedious,
time-consuming and ease to make mistake. Meanwhile, the manually created
diagrams are hard to be shared among the on-line and off-line systems. To save
the time and efforts to draw and maintain OLNDs, and provide the capability to
share the OLNDs, a tool to automatically develop substation based upon Common
Information Model (CIM) standard is needed. Currently, there is no standard
rule to draw the substation OLND. Besides, the substation layouts can be
altered from the typical formats in textbooks based on factors of economy,
efficiency, engineering practice, etc. This paper presents a tool on substation
OLND automatic generation and visualization. This tool takes the substation
CIM/E model as input, then automatically computes the coordinates of all
components and generates the substation OLND based on its components attributes
and connectivity relations. Evaluation of the proposed approach is presented
using a real provincial power system. Over 95\% of substation OLNDs are
decently presented and the rest are corner cases, needing extra effort to do
specific reconfiguration.Comment: 6 pages, 6 figures, 1 table, accepted by 2019 IEEE PES ISGT ASI
Ab initio study of magnetic anisotropy in cobalt doped zinc oxide with electron-filling
Based on first-principles calculation, it has been predicted that the
magnetic anisotropy energy (MAE) in Co-doped ZnO (Co:ZnO) depends on
electron-filling. Results show that the charge neutral Co:ZnO presents a "easy
plane" magnetic state. While modifying the total number of electrons, the easy
axis rotates from in-plane to out-of-plane. The alternation of the MAE is
considered to be the change of the ground state of Co ion, resulting from the
relocating of electrons on Co d-orbitals with electron-filling.Comment: 3 pages, 4 figure
RepNet: Cutting Tail Latency in Data Center Networks with Flow Replication
Data center networks need to provide low latency, especially at the tail, as
demanded by many interactive applications. To improve tail latency, existing
approaches require modifications to switch hardware and/or end-host operating
systems, making them difficult to be deployed. We present the design,
implementation, and evaluation of RepNet, an application layer transport that
can be deployed today. RepNet exploits the fact that only a few paths among
many are congested at any moment in the network, and applies simple flow
replication to mice flows to opportunistically use the less congested path.
RepNet has two designs for flow replication: (1) RepSYN, which only replicates
SYN packets and uses the first connection that finishes TCP handshaking for
data transmission, and (2) RepFlow which replicates the entire mice flow. We
implement RepNet on {\tt node.js}, one of the most commonly used platforms for
networked interactive applications. {\tt node}'s single threaded event-loop and
non-blocking I/O make flow replication highly efficient. Performance evaluation
on a real network testbed and in Mininet reveals that RepNet is able to reduce
the tail latency of mice flows, as well as application completion times, by
more than 50\%
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