亚洲无码午夜福利视频|日韩国产高清一区二区|欧美老熟妇XB水多毛多|狠狠色成人一区二区三区|在线观看国产精品露脸网站|在线观看一区二区三区视频|激情性无码视频在线观看动漫|99国产精品久久久久久久成人

您的位置:中國博士人才網(wǎng) > 博士后招收 > 海外博士后招收 > 英國諾丁漢大學2020年招聘博士后(數(shù)據(jù)建模)

關注微信

英國諾丁漢大學2020年招聘博士后(數(shù)據(jù)建模)

時間:2020-06-01來源:中國博士人才網(wǎng) 作者:佚名

英國諾丁漢大學2020年招聘博士后(數(shù)據(jù)建模)

We are looking to appoint a Senior Research Fellow (Modelling) with post- doctoral or equivalent professional experience to join a multidisciplinary and international team for a project that aims to deliver web-based tools to support policy, management and other interventions to reduce risks of micronutrient deficiency in the global south.

The MAPS project (Micronutrient Action Policy Support), a major investment by the Bill & Melinda Gates Foundation (BMGF), aims to develop an online tool to enable a range of stakeholders to engage with data on human dietary micronutrient supply and status, and the factors that influence risk of deficiency. The tool will allow exploration of spatial variations in these factors at whatever spatial scale the available data will support, and the linking of data with other modelling tools to allow the assessment of policies and interventions.

This role is for a statistical modeller to support this project, and to work with colleagues in nutrition, agricultural and environmental sciences, system development, intervention modelling and data management. The role holder will develop tools, for the R platform, which can be used within the MAPS framework to address its objectives, and will contribute to the wider project through tasks such as the evaluation of available data streams, the use of elicitation methods to engage with stakeholders, and the development of innovative and flexible approaches to the visualization and communication of uncertain information.

All this work will entail collaboration with system developers and with specialists in nutrition, agricultural science, geochemistry and food systems. A capacity to communicate with collaborators and to contribute proactively to the project goals is critical, along with a willingness to engage with stakeholders. At the same time the project will offer the opportunity to undertake research, to develop novel ideas and to publish these collaboratively.

Candidates must have:

Excellent skills in statistical modelling with data, including those from probability samples in a design-based setting, and the use of model-based spatial statistical methods.

Experience of coding for the R platform, beyond the use of standard packages, including the development of functions to implement new methods.

Excellent team-working skills, particularly in a cross-disciplinary setting.

Excellent written and spoken language skills (English).

Experience of cross-disciplinary working.

PhD in relevant discipline (or equivalent professional experience).

Ability to travel overseas

Experience in the following would be advantageous:

Developing approaches to visualization and communication of statistical results

Collaboration in key areas of the project including nutrition, public health and agricultural and environmental sciences

The process of eliciting quantitative information from experts by formal methods.

This full-time (36.25 hours per week) post is fixed-term until 31 October 2023. Job share arrangements may be considered.

Informal enquiries may be addressed to Prof Murray Lark, email: sbzml11@nottingham.ac.uk. Please note that applications sent directly to this email address will not be accepted.

Our University has always been a supportive, inclusive, caring and positive community. We warmly welcome those of different cultures, ethnicities and beliefs – indeed this very diversity is vital to our success, it is fundamental to our values and enriches life on campus. We welcome applications from UK, Europe and from across the globe. For more information on the support we offer our international colleagues, visit; https: // www. nottingham.ac.uk/jobs/applyingfromoverseas/index2.aspx

Job Description/Role Profile

Additional Information

Information for candidates ( pdf doc )

Apply Online

為防止簡歷投遞丟失請抄送一份至:boshijob@126.com(郵件標題格式:應聘職位名稱+姓名+學歷+專業(yè)+中國博士人才網(wǎng))

中國-博士人才網(wǎng)發(fā)布

聲明提示:凡本網(wǎng)注明“來源:XXX”的文/圖等稿件,本網(wǎng)轉載出于傳遞更多信息及方便產業(yè)探討之目的,并不意味著本站贊同其觀點或證實其內容的真實性,文章內容僅供參考。