412 research outputs found
Families of complete non-compact Spin(7) holonomy manifolds
We consider complete non-compact Spin(7)-manifolds which are either asymptotically locally conical (ALC) or asymptotically conical (AC). The thesis consists of two parts. In the first part we develop the deformation theory of AC Spin(7)-manifolds. We show that the moduli space of torsion-free AC Spin(7)-structures on a given 8-manifold M asymptotic to a fixed Spin(7)-cone is an orbifold for generic decay rates in the non-L² regime. Furthermore, we derive a formula for the dimension of the moduli space, which has contributions from the topology of M and from solutions of a first order PDE system on the link of the asymptotic cone. In the second part we prove existence results of cohomogeneity one Spin(7) holonomy metrics for which a generic orbit is isomorphic to the AloffâWallach space N(1, â1) âź= SU(3)/U(1). The unique non-trivial rank 3 vector bundle over the 5-sphere and the universal quotient bundle of CP² each carry a 1-parameter family (up to scale) of such metrics. We show that these families share a common behaviour: a generic member of these families belongs to one of two open intervals, of which one consists of ALC Spin(7) holonomy metrics and the other one of incomplete metrics. These two intervals are separated by a distinguished parameter which gives rise to an AC Spin(7) holonomy metric. Another interesting phenomenon occurs at the other endpoint of the open interval of ALC metrics, where the family collapses to the BryantâSalamon AC Gâ holonomy metric on β_CP². Notable is the existence of the two AC spaces. These are the first examples of smooth AC Spin(7) holonomy manifolds known to exist since Bryant Salamonâs original example on Sâ(Sâ´) in 1989. Furthermore, they provide a Spin(7) analogue of the well-known conifold transition in the setting of CalabiâYau 3-folds
The design and synthesis of inhibitors of Mycobacterium tuberculosis thymidylate kinase (MtTMPK)
Thymidylate kinase (TMPK) phosphorylates thymidine 5â-monophosphate (dTMP) and has been proposed as an attractive target for Mycobacterium tuberculosis (Mt).1 By mimicking the structure of the substrate (dTMP), we have previously discovered different series of nucleoside analogues with MtTMPK inhibitory activities in a micromole range.2 Based on recently reported potent piperidin-3-yl-thymine inhibitors of Gram-positive bacterial TMPK,3 we report a series of isomeric N-benzyl-substituted piperidin-4-yl-thymine analogues, some of which demonstrate potent Mt TMPK inhibitory activity. Towards this end a convenient and high-yield synthesis was developed to access 1-substitued thymine derivatives
Detection of X-ray emission from the host clusters of 3CR quasars
We report the detection of extended X-ray emission around several powerful
3CR quasars with redshifts out to 0.73. The ROSAT HRI images of the quasars
have been corrected for spacecraft wobble and compared with an empirical
point-spread function. All the quasars examined show excess emission at radii
of 15 arcsec and more; the evidence being strong for the more distant objects
and weak only for the two nearest ones, which are known from other wavelengths
not to lie in strongly clustered environments. The spatial profiles of the
extended component is consistent with thermal emission from the intracluster
medium of moderately rich host clusters to the quasars. The total luminosities
of the clusters are in the range 4x10^44 - 3x10^45 erg/s, assuming a
temperature of 4keV. The inner regions of the intracluster medium are, in all
cases, dense enough to be part of a cooling flow.Comment: 21 pages including 4 figures and 4 tables. To be published in MNRA
The X-ray Background and AGNs
Deep X-ray surveys have shown that the cosmic X-ray background (XRB) is
largely due to the accretion onto supermassive black holes, integrated over the
cosmic time. These surveys have resolved more than 80% of the 0.1-10 keV X-ray
background into discrete sources. Optical spectroscopic identifications show
that the sources producing the bulk of the X-ray background are a mixture of
unobscured (type-1) and obscured (type-2) AGNs, as predicted by the XRB
population synthesis models. A class of highly luminous type-2 AGN, so called
QSO-2s, has been detected in the deepest Chandra and XMM-Newton surveys. The
new Chandra AGN redshift distribution peaks at much lower redshifts (z~0.7)
than that based on ROSAT data, and the new X-ray luminosity function indicates
that the space density of Seyfert galaxies peaks at significantly lower
redshifts than that of QSOs. It is shown here, that the low redshift peak
applies both to absorbed and unabsorbed AGN and is also seen in the 0.5-2 keV
band alone. Previous findings of a strong dependence of the fraction of type-2
AGN on luminosity are confirmed with better statistics here. Preliminary
results from an 800 ksec XMM-Newton observation of the Lockman Hole are
discussed.Comment: Proceedings of the conference: "The restless high energy universe",
held in Amsterdam, May 2003. To be published in: Nucl. Physics B. Suppl.
Ser., E.P.J. van den Heuvel, J.J.M. in 't Zand, and R.A.M.J. Wijers (eds.).
10 pages, 5 figure
How Workflow Engines Should Talk to Resource Managers: A Proposal for a Common Workflow Scheduling Interface
Scientific workflow management systems (SWMSs) and resource managers together
ensure that tasks are scheduled on provisioned resources so that all
dependencies are obeyed, and some optimization goal, such as makespan
minimization, is fulfilled. In practice, however, there is no clear separation
of scheduling responsibilities between an SWMS and a resource manager because
there exists no agreed-upon separation of concerns between their different
components. This has two consequences. First, the lack of a standardized API to
exchange scheduling information between SWMSs and resource managers hinders
portability. It incurs costly adaptations when a component should be replaced
by another one (e.g., an SWMS with another SWMS on the same resource manager).
Second, due to overlapping functionalities, current installations often
actually have two schedulers, both making partial scheduling decisions under
incomplete information, leading to suboptimal workflow scheduling.
In this paper, we propose a simple REST interface between SWMSs and resource
managers, which allows any SWMS to pass dynamic workflow information to a
resource manager, enabling maximally informed scheduling decisions. We provide
an exemplary implementation of this API for Nextflow as an SWMS and Kubernetes
as a resource manager. Our experiments with nine real-world workflows show that
this strategy reduces makespan by up to 25.1% and 10.8% on average compared to
the standard Nextflow/Kubernetes configuration. Furthermore, a more widespread
implementation of this API would enable leaner code bases, a simpler exchange
of components of workflow systems, and a unified place to implement new
scheduling algorithms.Comment: Paper accepted in: 2023 23rd IEEE International Symposium on Cluster,
Cloud and Internet Computing (CCGrid
Lotaru: Locally Predicting Workflow Task Runtimes for Resource Management on Heterogeneous Infrastructures
Many resource management techniques for task scheduling, energy and carbon
efficiency, and cost optimization in workflows rely on a-priori task runtime
knowledge. Building runtime prediction models on historical data is often not
feasible in practice as workflows, their input data, and the cluster
infrastructure change. Online methods, on the other hand, which estimate task
runtimes on specific machines while the workflow is running, have to cope with
a lack of measurements during start-up. Frequently, scientific workflows are
executed on heterogeneous infrastructures consisting of machines with different
CPU, I/O, and memory configurations, further complicating predicting runtimes
due to different task runtimes on different machine types.
This paper presents Lotaru, a method for locally predicting the runtimes of
scientific workflow tasks before they are executed on heterogeneous compute
clusters. Crucially, our approach does not rely on historical data and copes
with a lack of training data during the start-up. To this end, we use
microbenchmarks, reduce the input data to quickly profile the workflow locally,
and predict a task's runtime with a Bayesian linear regression based on the
gathered data points from the local workflow execution and the microbenchmarks.
Due to its Bayesian approach, Lotaru provides uncertainty estimates that can be
used for advanced scheduling methods on distributed cluster infrastructures.
In our evaluation with five real-world scientific workflows, our method
outperforms two state-of-the-art runtime prediction baselines and decreases the
absolute prediction error by more than 12.5%. In a second set of experiments,
the prediction performance of our method, using the predicted runtimes for
state-of-the-art scheduling, carbon reduction, and cost prediction, enables
results close to those achieved with perfect prior knowledge of runtimes
Neural Score Matching for High-Dimensional Causal Inference
Traditional methods for matching in causal
inference are impractical for high-dimensional
datasets. They suffer from the curse of dimensionality: exact matching and coarsened exact
matching find exponentially fewer matches
as the input dimension grows, and propensity score matching may match highly unrelated units together. To overcome this problem, we develop theoretical results which motivate the use of neural networks to obtain
non-trivial, multivariate balancing scores of a
chosen level of coarseness, in contrast to the
classical, scalar propensity score. We leverage
these balancing scores to perform matching
for high-dimensional causal inference and call
this procedure neural score matching. We
show that our method is competitive against
other matching approaches on semi-synthetic
high-dimensional datasets, both in terms of
treatment effect estimation and reducing imbalanc
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