Cloud Computing has become another buzzword after Web 2.0. However, there are
dozens of different definitions for Cloud Computing and there seems to be no
consensus on what a Cloud is. On the other hand, Cloud Computing is not a
completely new concept; it has intricate connection to the relatively new but
thirteen-year established Grid Computing paradigm, and other relevant
technologies such as utility computing, cluster computing, and distributed
systems in general. This paper strives to compare and contrast Cloud Computing
with Grid Computing from various angles and give insights into the essential
characteristics of both.Comment: IEEE Grid Computing Environments (GCE08) 200
We present Swift, a system that combines a novel scripting language called SwiftScript with a powerful runtime system based on CoG Karajan, Falkon, and Globus to allow for the concise specification, and reliable and efficient execution, of large loosely coupled computations. Swift adopts and adapts ideas first explored in the GriPhyN virtual data system, improving on that system in many regards. We describe the SwiftScript language and its use of XDTM to describe the logical structure of complex file system structures. We also present the Swift runtime system and its use of CoG Karajan, Falkon, and Globus services to dispatch and manage the execution of many tasks in parallel and Grid environments. We describe application experiences and performance experiments that quantify the cost of Swift operations.
SUMMARYThe first Provenance Challenge was set up in order to provide a forum for the community to understand the capabilities of different provenance systems and the expressiveness of their provenance representations. To this end, a functional magnetic resonance imaging workflow was defined, which participants had to either simulate or run in order to produce some provenance representation, from which a set of identified queries had to be implemented and executed. Sixteen teams responded to the challenge, and submitted their inputs. In this paper, we present the challenge workflow and queries, and summarize the participants' contributions.
A new type of End-to-End system for text-dependent speaker verification is presented in this paper. Previously, using the phonetic/speaker discriminative DNNs as feature extractors for speaker verification has shown promising results. The extracted frame-level (DNN bottleneck, posterior or d-vector) features are equally weighted and aggregated to compute an utterance-level speaker representation (d-vector or i-vector). In this work we use speaker discriminative CNNs to extract the noise-robust frame-level features. These features are then combined to form an utterance-level speaker vector through an attention mechanism. The proposed attention model takes the speaker discriminative information and the phonetic information to learn the weights. The whole system, including the CNN and attention model, is joint optimized using an end-toend criterion. The training algorithm imitates exactly the evaluation process -directly mapping a test utterance and a few target speaker utterances into a single verification score. The algorithm can automatically select the most similar impostor for each target speaker to train the network. We demonstrated the effectiveness of the proposed end-to-end system on Windows 10 "Hey Cortana" speaker verification task.
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