13 research outputs found

    Towards Seamless Configuration Tuning of Big Data Analytics

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    ProvMark:A Provenance Expressiveness Benchmarking System

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    System level provenance is of widespread interest for applications such as security enforcement and information protection. However, testing the correctness or completeness of provenance capture tools is challenging and currently done manually. In some cases there is not even a clear consensus about what behavior is correct. We present an automated tool, ProvMark, that uses an existing provenance system as a black box and reliably identifies the provenance graph structure recorded for a given activity, by a reduction to subgraph isomorphism problems handled by an external solver. ProvMark is a beginning step in the much needed area of testing and comparing the expressiveness of provenance systems. We demonstrate ProvMark's usefuless in comparing three capture systems with different architectures and distinct design philosophies.Comment: To appear, Middleware 201

    Improving the Visualization of Electron-Microscopy Data Through Optical Flow Interpolation

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    Technical developments in neurobiology have reached a point where the acquisition of high resolution images representing individual neurons and synapses becomes possible. For this, the brain tissue samples are sliced using a diamond knife and imaged with electron-microscopy (EM). However, the technique achieves a low resolution in the cutting direction, due to limitations of the mechanical process, making a direct visualization of a dataset difficult. We aim to increase the depth resolution of the volume by adding new image slices interpolated from the existing ones, without requiring modifications to the EM image-capturing method. As classical interpolation methods do not provide satisfactory results on this type of data, the current paper proposes a re-framing of the problem in terms of motion volumes, considering the depth axis as a temporal axis. An optical flow method is adapted to estimate the motion vectors of pixels in the EM images, and this information is used to compute and insert multiple new images at certain depths in the volume. We evaluate the visualization results in comparison with interpolation methods currently used on EM data, transforming the highly anisotropic original dataset into a dataset with a larger depth resolution. The interpolation based on optical flow better reveals neurite structures with realistic undistorted shapes, and helps to easier map neuronal connections

    IPAPI: Designing an Improved Provenance API

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    Abstract We investigate the main limitations imposed by existing provenance systems in the development of provenanceaware applications. In the case of disclosed provenance APIs, most of those limitations can be traced back to the inability to integrate provenance from different sources, layers and of different granularities into a coherent view of data production. We consider possible solutions in the design of an Improved Provenance API (IPAPI), based on a general model of how different system entities interact to generate, accumulate or propagate provenance. The resulting architecture enables a whole new range of provenance capture scenarios, for which available APIs do not provide adequate support

    Research data supporting: "Shadow Kernels: A General Mechanism For Kernel Specialization in Existing Operating Systems"

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    Research data supporting "Shadow Kernels: A General Mechanism For Kernel Specialization in Existing Operating Systems".This work was supported by the EPSRC [grant number EP/K503009/1]
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