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  • As the COVID-19 pandemic marches around the globe, educators have to face a challenge that is teaching in a completely online environment. Educators in post-secondary settings in China have started teaching in a completely online environment since early February 2020, when we started collecting teaching reflections on ScienceNet.cn, which is the most visible professional blog service for educators in post-secondary settings in China. Till the end of March 2020, we have collected 54 teaching reflections written by 35 educators on ScienceNet.cn. The dataset contains the urls to the 54 teaching reflections.
    Data Types:
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  • Data set of DLV code and simulation algorithms of ProPrivacy
    Data Types:
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    • Dataset
    • File Set
  • Data for article, Decay heat analysis of system-integrated modular advanced reactor (SMART) using SCALE 6, Progress in Nuclear Energy, Volume 124, 2020, 103336, ISSN 0149-1970, https://doi.org/10.1016/j.pnucene.2020.103336 The energy generated from radionuclides in the form of decay heat in the SMART reactor in W/MTHM Radionuclides are classified according to ORIGEN-S libraries. Appendix 1A: Light elements and activation products Appendix 1B: Fission products Appendix 1C: Actinides
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  • This data-set contains results from pull-out experiments on small-scale Salix cuttings. The folder "uprooting tests" contains the values of the uprooting force recorded over time. Values of the total root length of each sample are illustrated in an excel file: "max_uprooting_force-root length". The values of the total root surface area of each sample can be found in the folder: "root surface area". Data are divided according to the uprooting time. Data about the above-ground biomass of the samples can be found in the files excel: "cuttings_growth" and "stem_length-volume".
    Data Types:
    • Dataset
    • File Set
  • I had been trying to get followers from a very long time nevertheless it wasn’t Doing work out for me. So I attempted the free version and received instantaneous followers and now I acquired the entire Model and they all over again got me large number of followers and that too the genuine follower who make me glimpse https://socialpave.com really amazing and awesome. I wished to do this and find out if it truly performs. Once I entered my particulars, I promptly obtained 10 followers. It did not just take much time whatsoever. Use a photograph editing Software like Aviary to crop your photos, add frames or outcomes, or to just commonly make your photographs pop!
    Data Types:
    • Image
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  • Amphiphile-based aggregates are extensively used in numerous applications for encapsulation, storage, transport and delivery of toxic, active molecules due to the structural properties of the aggregates. The properties of the aggregates in turn are dictated by the molecular architecture of the amphiphiles. A complete understanding of the multiscale architecture–structure–function relationship for amphiphile-based aggregates requires the simultaneous resolution of the self-assembly of amphiphilic molecules along with an understanding of the role of various long range physical interactions including hydrodynamics. A multiscale computational approach such as the hybrid Molecular Dynamics–Lattice Boltzmann technique is able to fulfill most of those requirements. However, existing implementations only account for static coupling between the Molecular Dynamics technique and the Lattice Boltzmann method, and hence are unable to resolve the changes in the solvent-amphiphile interface during processes such as self-assembly and interfacial adsorption. In this study, a new implementation incorporating a dynamic coupling scheme between the Molecular Dynamics technique and the Lattice Boltzmann method is introduced so as to resolve dynamical changes in interfaces. The application of the new implementation to the self-assembly of phospholipids yields results which are in good agreement with computation, experiments and theory. In particular, we found the scaling exponent α of the cluster number (N(t) = C t^α) to be ~1. The previous version of this program (AEPH_v1_0) may be found at http://dx.doi.org/10.1016/j.cpc.2013.03.024.
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    • File Set
  • Raw data set for: Quantification and characterization of bull trout annually entrained in the major irrigation canal on the St. Mary River, Montana, USA, and identification of operations changes that would reduce that loss. This is an Excel data sheet with described data. Please contact the senior author if more information is required.
    Data Types:
    • Tabular Data
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  • See the paper related to these dataset
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  • 1001个FRP抗剪加固试件统计
    Data Types:
    • Tabular Data
    • Dataset
    • Document