您现在的位置:首页 > 事业单位招聘信息 > 高校招聘 > 招聘信息列表

英国牛津大学2022年招聘博士后职位(机器学习)

来源:今日招聘 | 发布时间:2022-09-20 17:51:29 |  访问:196

research associate

university of oxford

description

research associate

department of biology, 11a mansfield road, oxford, ox1 3sz and department of statistics, 24-29 st giles', oxford, ox1 3lb

we are seeking to appoint a research associate in machine learning with a specialism in natural language understanding or information retrieval. the research associate will engage in internationally leading research in the analysis of heterogeneous text-based data at scale; he/she will bring state of the art machine learning to the heart of nature recovery, specifically to track the rapidly evolving field via published scientific articles or web- based text reports. the researcher will achieve this by advancing state-of-the art deep learning techniques for text analysis and summarization.

the researcher will work in a team of machine learning experts within the leverhulme centre for nature recovery. the leverhulme centre for nature recovery (lcnr) is being established to address the challenges of deploying nature-based solutions and delivering effective nature recovery at scale in a way that addresses climate change, supports biodiversity and enhances human wellbeing. in particular, as a research associate in machine learning for nature recovery working closely with the nature-based solutions initiative (department of biology), you will be collaborating with a team of multidisciplinary researchers to mine the evidence base for the effectiveness of nature-based solutions to climate change mitigation and adaptation (see www. naturebasedsolutionsevidence.info). your work will produce state-of-the- art methodologies and algorithms that identify effective ways of working with natural ecosystems within the published literature, track sentiment towards restoration initiatives and filter key scientific reports. outputs will form the basis of guidance and tools for decision-makers and land managers. currently, it is hard for decision makers to access the best evidence, partly because that evidence is scattered among 1000s of journals and across several disciplines. manual systematic reviews are extremely time-consuming and, as a result, poor decisions are being made that affect our futures. deployment of ml approaches to speed up this process is urgently needed.

you will prepare and publish in high quality academic publications and regularly write and publish articles in peer-reviewed journals and conferences. you will participate actively in research within the lcnr and the nature-based solutions initiative, developing collaborations with others. you will contribute to teaching, including undergraduate and msc/mphil courses within the department of statistics.

the successful candidate must hold, or be close to completion of, a relevant phd/dphil with, ideally, post-qualification research experience in machine learning or statistics with a specialism in natural language understanding or information retrieval. you must have a strong academic publication record concomitant with your experience, and familiarity with the existing literature and research in natural language understanding machine learning. you will have sufficient specialist knowledge to develop novel research questions and methodologies.

the university of oxford is committed to equality and valuing diversity. all applicants will be judged on merit, according to the selection criteria.

this post is full time and available immediately.

the closing date for applications is 12.00 noon on 28th october 2022, interviews are likely to be scheduled for the week commencing 21st november 2022.

contact person: hr vacancy id: 159809 contact phone: closing date &time: 28-oct-2022 12:00 pay scale: standard grade 7 contact email: hr@biology.ox.ac.uk salary (£): grade 7: £34,308 - £42,155 per annum

158

推荐:更多英国牛津大学2022年招聘博士后职位(机器学习) 请关注 今日招聘官方微信公众号

注:本站稿件未经许可不得转载,转载请保留出处及源文件地址。

【 责任编辑:今日招聘 】

版权与免责声明

【1】凡本网注明"来源:今日招聘"的所有文字、图片和音视频稿件,版权均属于今日招聘网,转载请必须注明今日招聘网,违反者本网将追究相关法律责任。

【2】本网转载并注明自其它来源的作品,是本着为求职者传递更多信息之目的,并不代表本网赞同其观点或证实其内容的真实性,不承担此类作品侵权行为的直接责任及连带责任。其他媒体、网站或个人从本网转载时,必须保留本网注明的作品来源,并自负版权等法律责任。

【3】如涉及作品内容、版权等问题,请在作品发表之日起一周内与本网联系。

未经招聘网同意,不得转载本网站之所有招工招聘信息及作品 | 招聘网版权所有 2007-2018 |浙公网安备 33010802002895号

网站经营许可证:浙B2-20080178-14 公司招聘招人好网站,就在招聘网 人力资源服务许可证 备案号:浙B2-20080178-14