1,589 research outputs found
Cycloaddition of Aryldiazoacetates With Terminal Alkynes and Nitriles via a Bioinspired Cobalt Complex
In this study, we present a novel method for the efficient cycloaddition of aryl diazoacetates with both terminal alkynes and nitriles, employing a bioinspired cobalt complex as a catalyst. Our findings indicate that terminal alkynes react with aryl diazoacetates to yield a cyclopropenation product through a 2+1 cycloaddition reaction. Meanwhile, nitriles react with aryl diazoacetates to produce an oxazole product via a 2+3 cycloaddition reaction. These results have significant implications for the development of new synthetic routes towards cyclopropenation and oxazole compounds
Ig Superfamily Ligand and Receptor Pairs Expressed in Synaptic Partners in Drosophila
Information processing relies on precise patterns of
synapses between neurons. The cellular recognition
mechanisms regulating this specificity are poorly understood. In the medulla of the Drosophila visual system,
different neurons form synaptic connections in different layers. Here, we sought to identify candidate cell recognition molecules underlying this specificity.
Using RNA sequencing (RNA-seq), we show that neurons with different synaptic specificities express unique combinations of mRNAs encoding hundreds of cell surface and secreted proteins. Using RNA-seq and protein tagging, we demonstrate that 21 paralogs of the Dpr family, a subclass of immunoglobulin (Ig)-domain containing proteins, are expressed in unique combinations in homologous neurons with
different layer-specific synaptic connections. Dpr interacting proteins (DIPs), comprising nine paralogs
of another subclass of Ig-containing proteins, are expressed
in a complementary layer-specific fashion in a subset of synaptic partners. We propose that pairs of Dpr/DIP paralogs contribute to layer-specific patterns
of synaptic connectivity
Promptus: Can Prompts Streaming Replace Video Streaming with Stable Diffusion
With the exponential growth of video traffic, traditional video streaming
systems are approaching their limits in compression efficiency and
communication capacity. To further reduce bitrate while maintaining quality, we
propose Promptus, a disruptive novel system that streaming prompts instead of
video content with Stable Diffusion, which converts video frames into a series
of "prompts" for delivery. To ensure pixel alignment, a gradient descent-based
prompt fitting framework is proposed. To achieve adaptive bitrate for prompts,
a low-rank decomposition-based bitrate control algorithm is introduced. For
inter-frame compression of prompts, a temporal smoothing-based prompt
interpolation algorithm is proposed. Evaluations across various video domains
and real network traces demonstrate Promptus can enhance the perceptual quality
by 0.111 and 0.092 (in LPIPS) compared to VAE and H.265, respectively, and
decreases the ratio of severely distorted frames by 89.3% and 91.7%. Moreover,
Promptus achieves real-time video generation from prompts at over 150 FPS. To
the best of our knowledge, Promptus is the first attempt to replace video
codecs with prompt inversion and the first to use prompt streaming instead of
video streaming. Our work opens up a new paradigm for efficient video
communication beyond the Shannon limit
Solving dynamic multi-objective optimization problems via support vector machine
Dynamic Multi-objective Optimization Problems (DMOPs) refer to optimization
problems that objective functions will change with time. Solving DMOPs implies
that the Pareto Optimal Set (POS) at different moments can be accurately found,
and this is a very difficult job due to the dynamics of the optimization
problems. The POS that have been obtained in the past can help us to find the
POS of the next time more quickly and accurately. Therefore, in this paper we
present a Support Vector Machine (SVM) based Dynamic Multi-Objective
Evolutionary optimization Algorithm, called SVM-DMOEA. The algorithm uses the
POS that has been obtained to train a SVM and then take the trained SVM to
classify the solutions of the dynamic optimization problem at the next moment,
and thus it is able to generate an initial population which consists of
different individuals recognized by the trained SVM. The initial populuation
can be fed into any population based optimization algorithm, e.g., the
Nondominated Sorting Genetic Algorithm II (NSGA-II), to get the POS at that
moment. The experimental results show the validity of our proposed approach
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