289 research outputs found

    Du colinguisme dans nos dictionnaires de la langue russe et de l’influence de la langue arabe dans la langue française

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    L'article traite du problĂšme du colinguisme dans les dictionnaires de la langue russe publiĂ©s en France. Il explore les emprunts en français Ă  partir de l'arabe, ainsi que la maĂźtrise de la langue française des mots russes dans le domaine de la politique, du mode de vie et de la conquĂȘte de l'espac

    Plant pathogenic bacteria

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    Superconductivity in Li3Ca2C6 intercalated graphite

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    In this letter, we report the discovery of superconductivity in Li3Ca2C6. Several graphite intercalation compounds (GICs) with electron donors, are well known as superconductors. It is probably not astonishing, since it is generally admitted that low dimensionality promotes high superconducting transition temperatures. Superconductivity is lacking in pristine graphite, but after charging the graphene planes by intercalation, its electronic properties change considerably and superconducting behaviour can appear. Li3Ca2C6 is a ternary GIC, for which the intercalated sheets are very thick and poly-layered (five lithium layers and two calcium ones). It contains a great amount of metal (five metallic atoms for six carbon ones). Its critical temperature of 11.15 K is very close to that of CaC6 GIC (11.5 K). Both CaC6 and Li3Ca2C6 GICs possess currently the highest transition temperatures among all the GICs.Comment: 5 pages, 3 figure

    Décomposition en valeurs singuliÚres randomisée et positionnement multidimensionel à base de tùches

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    The multidimensional scaling (MDS) is an important and robust algorithm for representing individual cases of a dataset out of their respective dissimilarities. However, heuristics, possibly trading-off with robustness, are often preferred in practice due to the potentially prohibitive memory and computational costs of the MDS. The recent introduction of random projection techniques within the MDS allowed it to be become competitive on larger testcases. The goal of this manuscript is to propose a high-performance distributed-memory MDS based on random projection for processing data sets of even larger size (up to one million items). We propose a task-based design of the whole algorithm and we implement it within an efficient software stack including state-of-the-art numerical solvers, runtime systems and communication layers. The outcome is the ability to efficiently apply robust MDS to large datasets on modern supercomputers. We assess the resulting algorithm and software stack to the point cloud visualization for analyzing distances between sequencesin metabarcoding.Le positionnement multidimensionnel (MDS) est un algorithme important et robuste pour reprĂ©senter les cas individuels d’un ensemble de donnĂ©es en fonction de leurs dissimilaritĂ©s respectives. Cependant, les heuristiques, qui peuvent ĂȘtre un compromis avec la robustesse, sont souvent prĂ©fĂ©rĂ©es en pratique en raison de sa consommation mĂ©moire et de ses coĂ»ts potentiellement prohibitifs. L’introduction rĂ©cente de techniques de projection alĂ©atoire dans le MDS lui a permis de devenir compĂ©titif sur des cas test plus importants. L’objectif de ce manuscrit est de proposer un MDS haute performance basĂ© sur la projection alĂ©atoire pour le traitement d’ensembles de donnĂ©es de taille encore plus grande (jusqu’à un million d’élĂ©ments). Nous proposons une conception de l’algorithme et nous l’implĂ©mentons dans une pile logicielle efficace, comprenant des solveurs numĂ©riques de pointe ainsi des systĂšmes d’exĂ©cution et des couches de communication optimisĂ©s. L’aboutissement de ce travail rĂ©sultat est la capacitĂ© d’appliquer efficacement le MDS robuste Ă  de grands ensembles de donnĂ©es sur des super-ordinateurs modernes. Nous Ă©valuons l’algorithme etla pile logicielle rĂ©sultants Ă  la visualisation de nuages de points pour l’analyse des distances entre sĂ©quences de metabarcoding
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