34 research outputs found
Capturing the "Whole Tale" of Computational Research: Reproducibility in Computing Environments
We present an overview of the recently funded "Merging Science and
Cyberinfrastructure Pathways: The Whole Tale" project (NSF award #1541450). Our
approach has two nested goals: 1) deliver an environment that enables
researchers to create a complete narrative of the research process including
exposure of the data-to-publication lifecycle, and 2) systematically and
persistently link research publications to their associated digital scholarly
objects such as the data, code, and workflows. To enable this, Whole Tale will
create an environment where researchers can collaborate on data, workspaces,
and workflows and then publish them for future adoption or modification.
Published data and applications will be consumed either directly by users using
the Whole Tale environment or can be integrated into existing or future domain
Science Gateways
Advanced Quantum Poisson Solver in the NISQ era
The Poisson equation has many applications across the broad areas of science
and engineering. Most quantum algorithms for the Poisson solver presented so
far, either suffer from lack of accuracy and/or are limited to very small sizes
of the problem, and thus have no practical usage. Here we present an advanced
quantum algorithm for solving the Poisson equation with high accuracy and
dynamically tunable problem size. After converting the Poisson equation to the
linear systems through the finite difference method, we adopt the
Harrow-Hassidim-Lloyd (HHL) algorithm as the basic framework. Particularly, in
this work we present an advanced circuit that ensures the accuracy of the
solution by implementing non-truncated eigenvalues through eigenvalue
amplification as well as by increasing the accuracy of the controlled rotation
angular coefficients, which are the critical factors in the HHL algorithm. We
show that our algorithm not only increases the accuracy of the solutions, but
also composes more practical and scalable circuits by dynamically controlling
problem size in the NISQ devices. We present both simulated and experimental
solutions, and conclude that overall results on the quantum hardware are
dominated by the error in the CNOT gates.Comment: Quantum Week QCE 2022, poster pape
Advancing Algorithm to Scale and Accurately Solve Quantum Poisson Equation on Near-term Quantum Hardware
The Poisson equation has many applications across the broad areas of science
and engineering. Most quantum algorithms for the Poisson solver presented so
far either suffer from lack of accuracy and/or are limited to very small sizes
of the problem, and thus have no practical usage. Here we present an advanced
quantum algorithm for solving the Poisson equation with high accuracy and
dynamically tunable problem size. After converting the Poisson equation to a
linear system through the finite difference method, we adopt the HHL algorithm
as the basic framework. Particularly, in this work we present an advanced
circuit that ensures the accuracy of the solution by implementing non-truncated
eigenvalues through eigenvalue amplification, as well as by increasing the
accuracy of the controlled rotation angular coefficients, which are the
critical factors in the HHL algorithm. Consequently, we are able to drastically
reduce the relative error in the solution while achieving higher success
probability as the amplification level is increased. We show that our algorithm
not only increases the accuracy of the solutions but also composes more
practical and scalable circuits by dynamically controlling problem size in NISQ
devices. We present both simulated and experimental results and discuss the
sources of errors. Finally, we conclude that though overall results on the
existing NISQ hardware are dominated by the error in the CNOT gates, this work
opens a path to realizing a multidimensional Poisson solver on near-term
quantum hardware.Comment: 13 pages, 11 figures, 1 tabl
VEuPathDB: the eukaryotic pathogen, vector and host bioinformatics resource center
The Eukaryotic Pathogen, Vector and Host Informatics Resource (VEuPathDB, https://veupathdb.org) represents the 2019 merger of VectorBase with the EuPathDB projects. As a Bioinformatics Resource Center funded by the National Institutes of Health, with additional support from the Welllcome Trust, VEuPathDB supports >500 organisms comprising invertebrate vectors, eukaryotic pathogens (protists and fungi) and relevant free-living or non-pathogenic species or hosts. Designed to empower researchers with access to Omics data and bioinformatic analyses, VEuPathDB projects integrate >1700 pre-analysed datasets (and associated metadata) with advanced search capabilities, visualizations, and analysis tools in a graphic interface. Diverse data types are analysed with standardized workflows including an in-house OrthoMCL algorithm for predicting orthology. Comparisons are easily made across datasets, data types and organisms in this unique data mining platform. A new site-wide search facilitates access for both experienced and novice users. Upgraded infrastructure and workflows support numerous updates to the web interface, tools, searches and strategies, and Galaxy workspace where users can privately analyse their own data. Forthcoming upgrades include cloud-ready application architecture, expanded support for the Galaxy workspace, tools for interrogating host-pathogen interactions, and improved interactions with affiliated databases (ClinEpiDB, MicrobiomeDB) and other scientific resources, and increased interoperability with the Bacterial & Viral BRC
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