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David A. Rand

Researcher at University of Warwick

Publications -  225
Citations -  13322

David A. Rand is an academic researcher from University of Warwick. The author has contributed to research in topics: Lead–acid battery & Battery (electricity). The author has an hindex of 57, co-authored 223 publications receiving 12157 citations. Previous affiliations of David A. Rand include University of St Andrews & University of California, Santa Barbara.

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High-Resolution Temporal Profiling of Transcripts during Arabidopsis Leaf Senescence Reveals a Distinct Chronology of Processes and Regulation

TL;DR: Analysis of motif enrichment, as well as comparison of transcription factor families showing altered expression over the time course, identify clear groups of TFs active at different stages of leaf development and senescence, which will underpin the development of network models to elucidate the process of Senescence.
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Pulsatile Stimulation Determines Timing and Specificity of NF-κB-Dependent Transcription

TL;DR: Altering the stimulation intervals gave different patterns of NF-κB–dependent gene expression, which supports the idea that oscillation frequency has a functional role in nuclear factor κB regulation.
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One-Dimensional Schrödinger Equation with an Almost Periodic Potential

TL;DR: In this article, a special tight-binding model is solved exactly by a renormalization group whose fixed points determine the scaling properties of both the energy spectrum and certain features of the eigenstates.
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Energy storage — a key technology for global energy sustainability

TL;DR: In this paper, the authors examined the present global use of energy in its various forms, and considered projections for the year 2020 with particular attention to the harnessing of "clean" and renewable forms of energy for electricity generation and road transportation.
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Measurement of single-cell dynamics.

TL;DR: Multiparameter experimental and computational methods that integrate quantitative measurement and mathematical simulation of these noisy and complex processes are required to understand the highly dynamic mechanisms that control cell plasticity and fate.