856 research outputs found
Hierarchical structured graphene/metal oxide/porous carbon composites as anode materials for lithium-ion batteries
This work was financially supported by the Fundamental Research Funds for the Central Universities, and National Natural Science Foundation of China (21101014 and 21273022).As a novel anode material for lithium-ion batteries, CeO2 displays imperceptible volumetric and morphological changes during the lithium insertion and extraction processes, and thereby exhibits good cycling stability. However, the low theoretical capacity and poor electronic conductivity of CeO2 hinder its practical application. In contrast, Co3O4 possesses high theoretical capacity, but undergoes huge volume change during cycling. To overcome these issues, CeO2 and Co3O4 nanoparticles are formed inside the pores of CMK-3 and display various electrochemical behaviors due to the different morphological structures of CeO2 and Co3O4 within CMK-3. Moreover, the graphene/metal oxide/CMK-3 composites with a hierarchical structure are then prepared and exhibit better electrochemical performances than metal oxides with or without CMK-3. This novel synthesis strategy is hopefully employed in the electrode materials design for Li-ion batteries or other energy conversion and storage devices.PostprintPeer reviewe
In Search of netUnicorn: A Data-Collection Platform to Develop Generalizable ML Models for Network Security Problems
The remarkable success of the use of machine learning-based solutions for
network security problems has been impeded by the developed ML models'
inability to maintain efficacy when used in different network environments
exhibiting different network behaviors. This issue is commonly referred to as
the generalizability problem of ML models. The community has recognized the
critical role that training datasets play in this context and has developed
various techniques to improve dataset curation to overcome this problem.
Unfortunately, these methods are generally ill-suited or even counterproductive
in the network security domain, where they often result in unrealistic or
poor-quality datasets.
To address this issue, we propose an augmented ML pipeline that leverages
explainable ML tools to guide the network data collection in an iterative
fashion. To ensure the data's realism and quality, we require that the new
datasets should be endogenously collected in this iterative process, thus
advocating for a gradual removal of data-related problems to improve model
generalizability. To realize this capability, we develop a data-collection
platform, netUnicorn, that takes inspiration from the classic "hourglass" model
and is implemented as its "thin waist" to simplify data collection for
different learning problems from diverse network environments. The proposed
system decouples data-collection intents from the deployment mechanisms and
disaggregates these high-level intents into smaller reusable, self-contained
tasks.
We demonstrate how netUnicorn simplifies collecting data for different
learning problems from multiple network environments and how the proposed
iterative data collection improves a model's generalizability
2-Iodo-3-methoxy-6-methylpyridine
The title compound, C7H8INO, which crystallizes with three independent molecules in the asymmetric unit, was prepared by the reaction of 3-methoxy-6-methylpyridine with KI and I2 in tetrahydrofuran solution. In the crystal structure, the three independent molecules are arranged in a similar orientation with the three polar methoxy groups aligned on one side and the three non-polar methyl groups on the other side. The three molecules, excluding methyl H atoms, are essentially planar, with r.m.s. deviations of 0.0141 (1), 0.0081 (1) and 0.0066 (2)Å. The three pyridine rings make dihedral angles of 58.09 (3) 66.64 (4) and 71.5 (3)°. The crystal structure features rather weak intermolecular C—H⋯O hydrogen bonds, which link two molecules into dimers, and short I⋯N contacts [4.046 (3) Å]
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