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Field
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dissection Cultivation of various cell types FACS and cell sorting Molecular techniques such as genotyping, RNA sequencing, ATAC-seq — depending on project requirements Data analysis Additional
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(or at all) by previous and ongoing genome sequencing efforts. The aim is to generate the first reasonably unbiased view of the insect tree of life, based on a backbone of some 5,000 genomes ‘decorated’ with
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. The research involves: Microbiome sequencing and metagenomic mining to identify novel CIS candidates from diverse ecological niches (skin, gut, insect microbiomes) Recombinant expression and purification of CIS
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involves collecting clinical data on the effects of childhood cancer treatment, bioinformatically handling sequence data and developing prediction models, as well as conducting Single Cell RNASeq studies and
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sequence data (e.g., 16S and 18S data), as well as knowledge in bioinformatics. In addition, the postdoc should have a high proficiency in written and spoken English, be able to solve problems, and the
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holder will have the opportunity to gain qualifications are: Data collection and curation. Whole genome sequence and annotation (coding and non-coding) from diverse plant species have been prepared, while
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genetically manipulated using CRISPR technology, in vitro. They will analyze cells and tumors through imaging, next generation DNA sequencing, single cell RNA sequencing, and other molecular techniques
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from various tissue types, including specialized tissues (e.g., sperm), as well as quality control and library preparation for next-generation sequencing. Experience with advanced molecular and cellular
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evolutionary analysis. A central component of the research will be to develop machine learning and deep learning methods trained on coding sequences and protein structure to extract patterns in data and to draw
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-throughput sequencing of genomes and biomes, continuous recording of video and audio in the wild, high-throughput imaging of biological specimens, and large-scale remote monitoring of organisms or habitats