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<div> '''Description''' </div>
<div> '''Description''' </div>
<div>The laboratory of Dr. Xiangfeng Wang invites applications for post-doc positions in School of Plant Sciences at University of Arizona. The research interests in the Lab focus on developing computational models to facilitate high-throughput sequencing-based analysis of genomics, epigenomics in plants. Two prospective ongoing directions the candidates may be interested:</div>
<div>The laboratory of Dr. Xiangfeng Wang invites applications for post-doc positions in School of Plant Sciences at University of Arizona. The research interests in the Lab focus on developing computational models and bioinformatic tools to interpret and integrate various epigenome and transcriptome next-generation sequencing data in plants, mainly in maize and rice. The successful candidate will be expected to utilize bioinformatic tools and develop original algorithms for a better understanding of the epigenetic mechanisms underlying the plant seed and endosperm development. The recruited postdocs will participate in two ongoing projects:</div>
 
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<div>'''1. Identification of transcription factors in maize seed development'''</div>
<div>'''1. Identification of transcription factors in maize seed development'''</div>
<div>We are currently using Illumina RNA-seq to profile the transcriptome in maize seeds. The goal is to identify the important transcription factors controlling the endosperm development. The significance of this project is to fundamentally improve the seed yield, human nutrition, biomass and bioenergy production. From the methodological perspective, the candidate will design algorithms to module the regulatory network using integrative gene expression and epigenomic data and to discover novel TF motifs. For details, please check “Research” in Wang Lab website.</div>
<div>We are currently using Illumina RNA-seq to profile the transcriptome in maize seeds. The goal is to identify the important transcription factors controlling the endosperm development. The significance of this project is to fundamentally improve the seed yield, human nutrition, biomass and bioenergy production. From the methodological perspective, the candidate will design algorithms to module the regulatory network by integrating the gene expression data and epigenomic data. We will use nucleosome dynamics to improve the discovery of novel TF and regulatory motifs.</div>
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<div>'''2. Epigenomic regulation of maize endosperm development'''</div>
<div>'''2. Epigenomic regulation of maize endosperm development'''</div>
<div>We are also producing ChIP-Seq data of an array of epigenetic marks in maize endosperm. The goal is to understand the epigenetic mechanism underline the endosperm development. We are currently working on a new computational approach to genome-wide search for the epigenetically imprinted genes. The methods will be expended to other plant organisms. For details, please check “Research” in Wang Lab website.</div>
<div>We are also producing ChIP-Seq data for a combination of activating and silencing epigenetic marks in maize endosperm development. In addition to the biological aim of understanding the epigenetic mechanism underlying the endosperm development, we are also interested on developing new computational approaches to: 1) improve gene prediction using activating epigenetic marks; 2) genome-wide search for the epigenetically imprinted genes by an innovative strategy. The original algorithms will be finally implemented as bioinformatic tools and database resources for the gene imprinting research in other plant organisms. For details, please check “Research” in Wang Lab website.</div>
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<div>'''Requirements'''</div>
<div>'''Requirements'''</div>
<div>The ideal applicants should:</div>
<div>The ideal applicants should:</div>
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<div>Have strong programming skills on Python, Perl and R.</div>
<div>Have strong programming skills on Python, Perl and R.</div>
<div>Have experiences in analyzing microarray, ChIP-Chip, ChIP-Seq and RNA-Seq data or relevant computational genomics experiences.</div>
<div>Have experiences in analyzing microarray, ChIP-Chip, ChIP-Seq and RNA-Seq data or relevant computational genomics experiences.</div>
 
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<div>The interested applicants should send his C.V, available date joining the Lab, reprints of first author publications and names of three references to xwang1@cals.arizona.edu</div>
<div>'''How to apply'''</div>
<div>The interested applicants could send his C.V, reprints of first author publications, and names of three references to xwang1@cals.arizona.edu. At the same time, the applicant should also apply online at http://www.hr.arizona.edu/ by searching the job number 46179. More information about the Lab is available at http://xwang.openwetware.org/.</div>


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Latest revision as of 08:23, 29 March 2011

Post-doc Positions in Computational Biology at University of Arizona

Description
The laboratory of Dr. Xiangfeng Wang invites applications for post-doc positions in School of Plant Sciences at University of Arizona. The research interests in the Lab focus on developing computational models and bioinformatic tools to interpret and integrate various epigenome and transcriptome next-generation sequencing data in plants, mainly in maize and rice. The successful candidate will be expected to utilize bioinformatic tools and develop original algorithms for a better understanding of the epigenetic mechanisms underlying the plant seed and endosperm development. The recruited postdocs will participate in two ongoing projects:
.
1. Identification of transcription factors in maize seed development
We are currently using Illumina RNA-seq to profile the transcriptome in maize seeds. The goal is to identify the important transcription factors controlling the endosperm development. The significance of this project is to fundamentally improve the seed yield, human nutrition, biomass and bioenergy production. From the methodological perspective, the candidate will design algorithms to module the regulatory network by integrating the gene expression data and epigenomic data. We will use nucleosome dynamics to improve the discovery of novel TF and regulatory motifs.
.
2. Epigenomic regulation of maize endosperm development
We are also producing ChIP-Seq data for a combination of activating and silencing epigenetic marks in maize endosperm development. In addition to the biological aim of understanding the epigenetic mechanism underlying the endosperm development, we are also interested on developing new computational approaches to: 1) improve gene prediction using activating epigenetic marks; 2) genome-wide search for the epigenetically imprinted genes by an innovative strategy. The original algorithms will be finally implemented as bioinformatic tools and database resources for the gene imprinting research in other plant organisms. For details, please check “Research” in Wang Lab website.
.
Requirements
The ideal applicants should:
Have Ph.D in Bioinformatics, Computer Science, Biology or other related fields
Have strong programming skills on Python, Perl and R.
Have experiences in analyzing microarray, ChIP-Chip, ChIP-Seq and RNA-Seq data or relevant computational genomics experiences.
.
How to apply
The interested applicants could send his C.V, reprints of first author publications, and names of three references to xwang1@cals.arizona.edu. At the same time, the applicant should also apply online at http://www.hr.arizona.edu/ by searching the job number 46179. More information about the Lab is available at http://xwang.openwetware.org/.